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Effects of kiwifruit extracts on colonic gene and protein expression levels in IL-10 gene-deficient mice

Published online by Cambridge University Press:  09 December 2011

Shelley J. Edmunds
Affiliation:
Food Innovation, Plant and Food Research Limited, Private Bag 92169, Auckland1142, New Zealand School of Biological Sciences, University of Auckland, Auckland, New Zealand
Nicole C. Roy
Affiliation:
Food and Textiles Group, AgResearch Grasslands, Palmerston North, New Zealand The Riddet Institute, Massey University, Palmerston North, New Zealand
Marcus Davy
Affiliation:
Sustainable Production Group, Plant and Food Research Limited, Hamilton, New Zealand
Janine M. Cooney
Affiliation:
Food Innovation, Plant and Food Research Limited, Private Bag 92169, Auckland1142, New Zealand
Matthew P. G. Barnett
Affiliation:
Food and Textiles Group, AgResearch Grasslands, Palmerston North, New Zealand
Shuotun Zhu
Affiliation:
Department of Nutrition, University of Auckland, Auckland, New Zealand
Zaneta Park
Affiliation:
Bioinformatics, Mathematics and Statistics Section, AgResearch Grasslands, Palmerston North, New Zealand
Donald R. Love
Affiliation:
School of Biological Sciences, University of Auckland, Auckland, New Zealand
William A. Laing*
Affiliation:
Food Innovation, Plant and Food Research Limited, Private Bag 92169, Auckland1142, New Zealand
*
*Corresponding author: Dr W. A. Laing, fax +64 99258628, email [email protected]
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Abstract

Inflammatory bowel disease (IBD) is a collective term for conditions characterised by chronic inflammation of the gastrointestinal tract involving an inappropriate immune response to commensal micro-organisms in a genetically susceptible host. Previously, aqueous and ethyl acetate extracts of gold kiwifruit (Actinidia chinensis) or green kiwifruit (A. deliciosa) have demonstrated anti-inflammatory activity using in vitro models of IBD. The present study examined whether these kiwifruit extracts (KFE) had immune-modulating effects in vivo against inflammatory processes that are known to be increased in patients with IBD. KFE were used as a dietary intervention in IL-10-gene-deficient (Il10− / −) mice (an in vivo model of IBD) and the C57BL/6J background strain in a 3 × 2 factorial design. While all Il10− / − mice developed significant colonic inflammation compared with C57BL/6J mice, this was not affected by the inclusion of KFE in the diet. These findings are in direct contrast to our previous study where KFE reduced inflammatory signalling in primary cells isolated from Il10− / − and C57BL/6J mice. Whole-genome gene and protein expression level profiling indicated that KFE influenced immune signalling pathways and metabolic processes within the colonic tissue; however, the effects were subtle. In particular, expression levels across gene sets related to adaptive immune pathways were significantly reduced using three of the four KFE in C57BL/6J mice. The present study highlights the importance of investigating food components identified by cell-based assays with appropriate in vivo models before making dietary recommendations, as a food that looks promising in vitro may not be effective in vivo.

Type
Full Papers
Copyright
Copyright © The Authors 2011

Inflammatory bowel disease (IBD) is a term describing chronic inflammatory conditions of the gastrointestinal tract consisting of two main subtypes, Crohn's disease and ulcerative colitis, with differing pathology and immunopathogenesis(Reference Podolsky1). The pathogenesis of IBD is complex, involving both genetic and environmental components that may differ among patients. While diet is thought to be an important factor in IBD, there is little evidence at present for the involvement of specific food components in either aetiology or treatment. This may be because of variability in the response to food components among IBD patients, where each patient tolerates, or is sensitive to, a range of foods such that no single food is associated with all patients(Reference Ballegaard, Bjergstrøm and Brøndum2, Reference Ferguson, Shelling and Browning3).

Kiwifruit, the fruit of the Actinidia genus, contain a number of nutritionally important compounds, including vitamin C, folate, K, Mg and fibre(Reference Ferguson and Ferguson4, Reference Nishiyama and Steve5), as well as many plant secondary compounds such as carotenoids, polyphenols and terpenoids(Reference Dawes and Keene6Reference McGhie and Ainge8). Several health benefits have been demonstrated for kiwifruit, including protection against carcinogenesis(Reference Motohashi, Shirataki and Kawase9), protection against oxidative stress and DNA damage(Reference Rush, Ferguson and Cumin10Reference Iwasawa, Morita and Ueda12), enhanced adaptive immune response(Reference Shu, Mendis De Silva and Chen13, Reference Hunter, Denis and Parlane14) and improved laxity(Reference Rush, Patel and Plank15, Reference Chan, Leung and Tong16). In addition, extracts from gold kiwifruit (Actinidia chinensis ‘Hort16A’) and green kiwifruit (A. deliciosa ‘Hayward’) have been reported to suppress Toll-like receptor (TLR) signalling by innate immune cells in vitro, reducing the secretion of pro-inflammatory mediators such as NO or cytokines after cellular activation by bacterial antigens(Reference Iwasawa, Morita and Ueda12, Reference Murakami, Ishida and Kobo17Reference Edmunds, Roy and Love19).

The IL-10-gene deficient (Il10 − / −) mouse develops Crohn's disease-like colitis when exposed to commensal microbiota and is extensively used as a model for IBD(Reference Kuhn, Lohler and Rennick20, Reference Sellon, Tonkonogy and Schultz21). Inflammation develops in discontinuous, transmural lesions along the length of the intestine, with infiltration of the lamina propria by large numbers of activated macrophages and increased differentiation of Th1 and Th17 cells(Reference Kuhn, Lohler and Rennick20, Reference Kamada, Hisamatsu and Okamoto22Reference Montufar-Solis, Schaefer and Hicks24). In addition, the molecular changes within the inflamed colon of the Il10 − / − mouse have been characterised(Reference Roy, Barnett and Knoch25Reference Knoch, Barnett and Cooney27).

In a previous paper, we used primary cells isolated from Il10 − / − and the C57BL/6J background strain to test the in vitro activity of kiwifruit extracts (KFE)(Reference Edmunds, Roy and Love19). Anti-inflammatory activity was observed against TLR-driven activation of both macrophages and intestinal epithelial cells, which is a cellular process known to play a key role in the development of colitis in IBD patients(Reference Edmunds, Roy and Love19, Reference Kamada, Hisamatsu and Okamoto22, Reference Cario and Podolsky28). Significant activity was observed in cells isolated from Il10 − / − as well as wild-type mice(Reference Edmunds, Roy and Love19), suggesting that IL-10 is not required for KFE anti-inflammatory activity. Cell-based assays play an important role in nutrition research, as they allow the rapid identification of potentially beneficial food components from a very large pool of candidates(Reference Anderson, Roy and Barnett29); however, further in vivo testing is necessary to investigate whether beneficial activity persists in the whole animal. Given the positive in vitro results, we progressed to the Il10 − / − mouse as a suitable in vivo model for investigating KFE anti-inflammatory activity, particularly with regard to the genes and pathways involved in the chronic inflammation of IBD. Our hypothesis was that consumption of diets containing KFE would suppress cellular activation in vivo, leading to a reduction in colitis and immune signalling. Therefore, we investigated the effects of KFE consumption by Il10 − / − and C57BL/6J background strain mice on weight gain, colonic inflammation, and colonic gene and protein expression levels.

Methods and materials

The study was reviewed and approved by the AgResearch Ruakura Animal Ethics Committee, Hamilton, New Zealand according to the New Zealand Animal Welfare Act 1999.

Animals and diets

A total of seventy-five male Il10 − / − mice (B6·129P2.Il10 < tm1Cgn>/J) and forty-four C57BL/6J control mice were purchased from The Jackson Laboratories (Bar Harbor, ME, USA) at 4–6 weeks of age. Mice were housed singly in shoebox-style cages (332 × 150 × 130 mm) containing Alpha-Dri litter (Shepherd Specialty Papers Inc., Kalamazoo, MI, USA) and a plastic tube for environmental enrichment. The animals were maintained in a temperature- and humidity-controlled room with a 12 h light–12 h dark cycle.

KFE were prepared as described previously(Reference Edmunds, Roy and Love19), and incorporated into powdered AIN-76A diets prepared in-house following the standard recipe(Reference Reeves30, Reference Reeves31). A proportion of the sugar was replaced with appropriate amounts of KFE, as shown in Table 1. All diets used in the present study were shown to be palatable and non-toxic to C57BL/6J mice under these experimental conditions (SJ Edmonds, unpublished results).

Table 1 Treatment groups and mouse numbers*

%Diet, percentage of diet.

* The base diet consisted of AIN-76A prepared in-house following the standard recipe(Reference Reeves30, Reference Reeves31). Kiwifruit extracts were prepared as described previously(Reference Edmunds, Roy and Love19).

The following experiments were conducted: Expt 1 tested diets supplemented with gold KFE and Expt 2 tested diets supplemented with green KFE (Table 1). Before each experimental period, Il10 − / − and C57BL/6J mice were assigned to treatment groups in a randomised block design. After a 3 d acclimatisation period, all mice were inoculated with a combination of twelve strains of Enterococcus faecium or E. faecalis and intestinal flora derived from C57BL/6 mice raised under conventional conditions, as described previously(Reference Roy, Barnett and Knoch25, Reference Barnett, McNabb and Cookson26).

Mice were offered fresh food daily and the average food intake was estimated by the collection and weighing of uneaten food. Leftover food was removed from the feeder and the bedding was strained using a standard kitchen sieve to collect any waste food scattered throughout the cage. This ensured the collection and measurement of all uneaten food allowing consistent estimation of food intake regardless of animal activity. Food was supplied ad libitum for the first 20 d, and then for the remainder of the experimental period, the food offered was adjusted to equal the mean amount of food consumed by Il10 − / − mice fed plain AIN-76A during the previous week. Water was provided ad libitum. Mice were weighed three times per week to determine body-weight changes, and their overall condition assessed and a general health score(Reference Gill, Shu and Lin32) determined 6 d/week.

Tissue sampling

A final body-weight measurement was taken 41 d after inoculation. Tissue sampling was carried out on days 42–44. Before euthanasia, mice were fasted overnight for 14 h, fed for 2 h, and then fasted again for 2 h to reduce variation in timing of the last food intake for each animal before tissue collection(Reference Park, Paisley and Mangian33). Animals were euthanised by CO2 asphyxiation followed by cervical dislocation. Blood was collected by cardiac puncture (0·5–1 ml), anticoagulated with 0·5 m-EDTA (Invitrogen, Carlsbad, CA, USA); the plasma was separated by centrifugation (4 min, 3000 g, 4°C), frozen in liquid N2 and stored at − 80°C for cytokine analysis.

The gastrointestinal tract was removed, cut open lengthwise and flushed with 0·9 % NaCl to remove any traces of digesta. Sections of the colon were rapidly frozen in liquid N2 before storage at − 80°C. A subsample from each colon was fixed in 10 % phosphate-buffered formalin immediately after dissection and stored at room temperature until histological evaluation.

Histology

The formalin-fixed samples from each colon were embedded in a paraffin block, cut into 5 μm sections and then stained with haematoxylin and eosin for light microscopic examination. Each tissue was scored for the aspects of inflammation related to inflammatory lesions, tissue destruction or tissue reparation, and a total histological injury score (HIS) was calculated as described previously(Reference Roy, Barnett and Knoch25). The total HIS of intestinal sections collected from Il10 − / − mice has been shown to correlate with validated measures of intestinal inflammation, thus providing a quantitative measure of colitis(Reference Kennedy, Hoper and Deodhar34).

Plasma IL-6

IL-6 levels in plasma were determined as a biomarker of inflammation using Ready-Set-Go!® pre-coated mouse IL6 ELISA plates (88-7964-29; eBioscience, San Diego, CA, USA), following the manufacturer's protocol.

Statistical analysis

Statistical analyses of body-weight change, food intake, colon HIS and plasma IL-6 concentration were performed in GenStat (Tenth Edition; VSN International, Hemel Hempstead, UK, 2005). All results are expressed as means with their standard errors of the mean. Mouse weight gain and average daily food intake were assessed using two-way ANOVA. The initial weight of the mouse was used as a covariate for weight-gain data. Diet, strain and interaction means were obtained for the average values of each parameter being tested, and were compared using the appropriate least significant difference (at the 5 % significance level) between means.

The effects of the diet on average colon HIS or plasma IL-6 concentration were assessed for Il10 − / − mice using one-way ANOVA based on log-transformed values. Within-diet means were obtained and compared using the appropriate least significant difference (at the 5 % significance level) between means. C57BL/6J mice were not analysed for these measures because of the high proportion of zero values across all dietary treatment groups.

mRNA preparation

mRNA was isolated from each colon tissue sample using the standard TRIzol protocol (Invitrogen). The extracted mRNA was dissolved in 20 μl RNase-free water and then purified using the Qiagen RNeasy Mini Kit (Qiagen, San Diego, CA, USA). Reference RNA was prepared from equal amounts of total purified RNA extracted from several organ tissues (small intestine, colon, kidney, liver and fetuses) of healthy Swiss mice to include transcripts for most of the probes that are present on the array. mRNA concentration and purity (A260:A280 ratio) were determined using a Nanodrop ND-1000 spectrophotometer (Nanodrop Technologies, Wilmington, DE, USA) and overall RNA quality was assessed using an Agilent 2100 Bioanalyser (RNA 6000 Nanochip; Agilent Technologies, Santa Clara, CA, USA). Only mRNA with an A260:A280 ratio >2·0 and Bioanalyser RNA integrity number >8·0 was used for microarray hybridisation or quantitative RT-PCR (qRT-PCR) analysis.

Microarrays

RNA from samples and the reference pool was amplified and labelled using Agilent's Low RNA Input Linear Amplification Kit PLUS (Agilent Technologies), according to the manufacturer's instructions. Briefly, 500 ng of purified total RNA from each sample were reverse transcribed into complementary DNA using T7 RNA polymerase, which was subsequently labelled with either cyanine 3-CTP (sample) or cyanine 5-CTP (reference) dyes (10 mm; Perkin-Elmer/NEN Life Science, Boston, MA, USA). The fluorescently labelled cRNA was hybridised onto Agilent Technologies Whole Mouse Genome 60 mer Oligo 4 × 44K microarrays using the Agilent Gene Expression Hybridization Kit in accordance with the manufacturer's instructions. A reference design (without dye swap) was used whereby one sample and a common reference were hybridised on to each two-colour array.

Hybridised arrays were scanned using an Agilent microarray scanner and the resulting data with Agilent feature extraction software version 9.5.1 (Agilent Technologies). The microarray data are available as accession GSE27684 in the Gene Expression Omnibus repository at the National Center for Biotechnology Information (http://www.ncbi.nlm.nih.gov/geo/info/linking.html).

Data preprocessing and analysis of differential expression were conducted using Bioconductor(Reference Gentleman, Carey and Bates35) under R 2.9.2. The quality of the microarray data was assessed by diagnostic plots (box plots and density plots), and spatial images were generated using the arrayQuality (version 1.24.0) and arrayQualityMetrics (version 2.4.3) packages from Bioconductor. Data were normalised within each array using local polynomial regression fitting normalisation, and then between arrays using quantile normalisation of the red channel containing the common reference RNA sample(Reference Smyth and Speed36), as described previously(Reference Zahurak, Parmigiani and Yu37). Background subtraction was unnecessary because of homogeneous hybridisation.

Differentially expressed genes were identified using the limma (version 3.2.2) package (http://www.bioconductor.org/packages/2.8/bioc/html/limma.html)(Reference Smyth, Gentleman, Carey, Dudoit, Irizarry and Huber38, Reference Smyth39) and cut-off thresholds of adjusted P value ≤ 0·05 and fold change (FC) ≥ |1·5| were used to determine significance.

Gene set enrichment analysis (GSEA) was conducted using the GSEA-P Java Application version 2.0.5 (http://www.broadinstitute.org/gsea/)(Reference Subramanian, Kuehn and Gould40) to identify functionally related groups of genes (gene sets) that have statistically significant, concordant differences between two biological states(Reference Subramanian, Tamayo and Mootha41, Reference Mootha, Lindgren and Eriksson42). All gene sets tested were downloaded from the MSigDB database version 2.5 (http://www.broadinstitute.org/gsea/msigdb/index.jsp)(Reference Subramanian, Kuehn and Gould40). Because of the low replicate numbers within each treatment group (n < 7), gene_set permutations were used and gene sets were considered significantly enriched when the false discovery rate q value was ≤ 0·05 and Fisher's exact test nominal P value was ≤ 0·01, as suggested in the GSEA-P user instructions.

Quantitative RT-PCR

The following genes were selected for validation: matrix metallopeptidase 13 (Mmp13); matrix metallopeptidase 10 (Mmp10); S100 calcium-binding protein A8 (S100a8); defensin, alpha, 21 (Defa21); sulfotransferase family 1D, member 1 (Sult1d1); regenerating islet-derived 3 beta (Reg3b); mitogen-activated protein kinase 13 (Mapk13); insulin-like growth factor binding protein 5 (Igfbp5) and fatty acid-binding protein 2 (Fabp2). Expression levels of these genes were established using qRT-PCR. Complementary DNA was synthesised from the same total mRNA samples used for the microarray analysis using the SuperScript VILO cDNA Synthesis Kit (Invitrogen). Reverse transcription was performed using 0·9 μg total RNA and oligo-dT primers, according to the manufacturer's instructions.

Data were normalised against three reference genes, calnexin (Canx), MON2 homologue (yeast) (Mon2) and mitogen-activated protein kinase kinase 1 (Map2k1), using the method described by Vandesompele et al. (Reference Vandesompele, De Preter and Pattyn43). Expression levels of these genes were stable between the treatment groups when assessed by microarray analysis and qRT-PCR. Primers for Canx were designed using PrimerSelect software (DNASTAR Lasergene, Madison, WI, USA), as described previously(Reference Knoch, Barnett and Zhu44). Primers for the remaining genes were designed using Primer 3·0 software (http://primer3.sourceforge.net/)(Reference Rozen, Skaletsky, Misener and Krawetz45) and evaluated using the RTPrimerDB in silico assay evaluation to avoid primer secondary structures(Reference Pattyn, Robbrecht and De Paepe46). Primer sequences for reference or target genes are shown in Table 2. The specificities of all PCR were verified by melting curve analysis and agarose gel electrophoresis.

Table 2 Quantitative RT-PCR genes and primers

* National Center for Biotechnology Information Entrez Gene (http://www.ncbi.nlm.nih.gov/sites/entrez?db = gene).

The PCR conditions were as follows: 95°C for 5 min, forty-five cycles at 95°C for 15 s, 60°C for 10 s and 72°C for 15 s. Melting curve analyses were performed by increasing the temperature (1°C/s) from 65 to 95°C, with continuous fluorescence acquisition. Threshold cycle (C t) values were obtained in quadruplicate for each sample using a LightCycler 480 (Roche Diagnostics, Auckland, New Zealand) and LightCycler 480 SYBR Green I Master (Roche Diagnostics) in 10 μl reactions, according to the manufacturer's protocol. LightCycler 480 Relative Quantification Software (Roche, Auckland, New Zealand) was used to calculate mRNA concentration and normalised ratios (target:reference) based on standard curves generated using serial dilutions of pooled complementary DNA from all samples.

Protein preparation

Protein pellets were extracted from the same colon samples as mRNA using the combined TRIzol extraction, according to the manufacturer's protocol. The protein pellets were precipitated with 3 ml isopropanol, washed five times with 0·3 m-guanidine hydrochloride (Invitrogen) in 95 % ethanol, and then washed once in 100 % ethanol (BDH Absolute; Biolab Limited, Auckland, New Zealand) and allowed to dry. Each sample was solubilised as described previously(Reference Knoch, Barnett and Cooney27), and an aliquot of each sample was purified using the Amersham Biosciences 2-D Clean-Up Kit (GE Healthcare, Auckland, New Zealand), according to the manufacturer's instructions. The resulting pellet was resolubilised as described previously(Reference Knoch, Barnett and Cooney27), centrifuged briefly to remove insoluble protein, and the protein content of the supernatant determined using the Bio-Rad Protein Assay (BioRad, Gladesville, Australia) based on the Bradford reagent(Reference Bradford47).

Two-dimensional gel electrophoresis

Two-dimensional gel electrophoresis was undertaken according to a modified version of a previously described protocol(Reference Barraclough, Obenland and Laing48). According to this protocol, six biological replicates for each comparison were analysed using two gels, where each gel contained pooled samples from three individual mice within the same treatment group (16·67 μg protein/mouse, 50 μg protein total). Pooling was necessary to reduce individual noise between mice and increase the amount of protein available for analysis within each comparison.

Treatment and control sample pools were labelled with 200 pmol cyanine-2 and cyanine-5 dyes (GE Healthcare, Uppsala, Sweden), respectively, as described by the manufacturer. The labelled pools for each gel were combined to give 100 μg protein, and then prepared, loaded and isoelectrically focused on commercially available precast immobilised pH gradient (IPG) strips (18 cm) with a non-linear pH 3–11 gradient, as described previously(Reference Knoch, Barnett and Cooney27, Reference Barraclough, Obenland and Laing48). IPG strips were equilibrated and proteins separated in the second dimension by SDS-PAGE using vertical 10 % SDS-PAGE gels (200 × 160 × 1·5 mm), as described previously(Reference Knoch, Barnett and Cooney27, Reference Barraclough, Obenland and Laing48). Precision Plus protein standard plugs (Bio-Rad Laboratories, Auckland, New Zealand) were used as molecular weight markers.

Immediately after electrophoresis, the gels were rinsed in reverse osmosis water and then scanned using a Typhoon 9400 imager (Amersham BioSciences, GE Healthcare). Scan settings were as follows: 100 μm resolution; differential in-gel electrophoresis (DIGE) file naming format selected; Cy5 scanned using a 488 nm laser and a 520 nm bandpass 40 nm emission filter, PMT 520 V; Cy2 scanned using a 633 nm laser and a 670 nm bandpass 30 nm emission filter, PMT 490 V. Spot patterns between gel images were analysed using Shimadzu 2D Evolution version 2005 software (Nonlinear Dynamics Limited, Newcastle upon Tyne, UK) to find differentially expressed spots between samples within each gel. Differential expression of a spot was considered to be significant where the abundance FC for each biological replicate changed within the same direction, and |FC| was ≥ 2·0 in one replicate and ≥ 1·3 in the second replicate in the same direction.

Once the gel image was captured, each gel was stained with Sypro Ruby (Invitrogen), followed by overstaining with Colloidal Coomassie Blue stain, as described previously(Reference Barraclough, Obenland and Laing48), to visualise spots for later removal and identification. Gels were dried between cellophane layers on glass plates at room temperature for long-term storage.

Protein spot identification

The spots corresponding to each protein of interest were located visually on each gel and one replicate was chosen for identification. Each of the chosen spots was excised using a razor blade and placed into an individual 1·5 ml microcentrifuge tube. A similarly sized piece of gel was excised from a protein-free region of the gel to identify trypsin autoproteolysis products. All gel pieces were rehydrated in deionised water and digested with trypsin, as described previously(Reference Knoch, Barnett and Cooney27). The resulting tryptic peptides were separated and analysed using an Ettan multidimensional liquid chromatography system (GE Healthcare) coupled to an linear trap quadrupole (LTQ) linear ion trap mass spectrometer with a nanospray ionisation interface (ThermoQuest, San Jose, CA, USA), as described previously(Reference Knoch, Barnett and Cooney27).

Results

Food intake and body weight

During the early stages of the experimental period, only one Il10 − / − mouse in Expt 1 developed an infected eye. As this may have influenced the overall inflammatory state and general health of this animal, it was withdrawn from all subsequent analysis. This left a final group size of fourteen for the Il10 − / − aqueous gold KFE group.

Due to issues with animal supply, the average body weights of mice at the start of the experimental period were significantly different between genotypes for Expt 1, but not for Expt 2, despite all animals within each experiment being the same age at delivery. After randomisation, the average initial body weights of mice assigned to each dietary group were not significantly different within genotypes (Table 3).

Table 3 Animal characteristics per genotype and diet for Expt 1 and Expt 2

KFE, kiwifruit extract; SED, average standard error of difference between two means; df, residual degrees of freedom for the test of significance of each term; GHS, general health score(32); HIS, histology injury score(Reference Roy, Barnett and Knoch25).

* Values were significantly different (P < 0·05).

Mouse body weight on day 1 of the experimental period.

Covariate = body weight on day 1.

§ One-way ANOVA using data from Il10 − / − mice only.

Interaction not measured because of the large number of zero values in the C57BL/6J data.

Expressed as ng IL-6/ml plasma per mg final mouse body weight.

A covariate analysis found that initial mouse weight had a significant effect on weight gain in Expt 1 (coefficient = − 0·33, P < 0·001) but not in Expt 2 (coefficient = 5·99, P = 0·08), with a negative coefficient indicating that, in general, the higher the initial weight, the smaller the total weight gain. However, the body-weight gain was significantly lower for Il10 − / − mice than for age-matched C57BL/6J mice in both experiments (P < 0·001) regardless of covariate adjustment, indicating a reduced growth rate for Il10 − / − mice. This was accompanied by a deterioration in health and overall condition of Il10 − / −, but not C57BL/6J, mice by the end of the experimental period.

There were no differences in general health score, overall condition or total weight gain when comparing each KFE treatment diet with the appropriate control diet within each genotype (Table 2). However, there were significant differences between genotypes within each diet, with C57BL/6J mice gaining more weight than Il10 − / − mice fed the same diet. This was confirmed by two-way ANOVA for each experiment, which detected a significant difference between genotypes, but not between diets, and no diet × genotype interaction. Therefore, the KFE-supplemented diet had no effect on food intake, animal weight gain or overall animal health.

In Expt 1, there were no significant differences in food intake between genotypes or diets, and no diet × genotype interaction. However, in Expt 2, the daily food intake of Il10 − / − mice dropped after day 20. Therefore, the amount of food offered to C57BL/6J mice in this experiment was reduced, with the aim of preventing C57BL/6J mice from consuming more food than their Il10 − / − counterparts. Two-way ANOVA assessing average daily food intake indicated that this was not successful, with a significant difference in food intake between genotypes, but not diets, detected for this experiment (Table 3).

Colonic and systemic inflammation

Histological sections from colon samples were examined and a colon HIS was assigned to each animal (Table 3). A colon HIS was unable to be assigned to one Il10 − / − mouse in the ethyl acetate gold KFE dietary group because of incorrect sampling, where tissue was taken from the wrong part of the colon. Therefore, histology data from this animal were omitted from further analysis. There was no colonic inflammation present in C57BL/6J mice, with all HIS being 1·0 or below. In contrast, all Il10 − / − mice displayed medium to high inflammation, with HIS values ranging between 3·5 and 11·5. However, there were no significant differences in colon HIS between diets within Il10 − / − mice.

The absence of any effect of KFE on colon inflammation in Il10 − / − mice was supported by plasma IL-6 concentrations (Table 3). Plasma IL-6 was significantly increased in Il10 − / − mice compared with C57Bl/6J mice (P < 0·001), indicating a significant increase in systemic inflammation; however, there were no significant dietary effects and or diet × genotype interactions in either experiment.

Changes in colonic gene expression levels

Box plots of the log 2 (intensities) generated by the array quality metrics package indicated quality issues with two arrays, one from each experiment, and they were removed from all further statistical analysis. The remaining seventy arrays passed quality inspection and were analysed.

LIMMA analysis of colonic gene expression levels detected no significantly differentially expressed genes for any KFE-supplemented diet when compared with the control diet within each genotype. GSEA assessment detected a total of 159 significantly enriched gene sets, with between two and sixty-four sets identified within each comparison (Table 4).

Table 4 Gene set enrichment analysis (GSEA) of pathways up- or down-regulated in the mouse colon by the kiwifruit extract (KFE)-supplemented diets*

ES, enrichment score assigned to reflect the degree to which a gene set was over-represented in the top or bottom of the ranked list; NES, enrichment score normalised for differences in gene set size; FDR q-value, false discovery rate; FE P value, Fisher's exact test significance level; MAP, mitogen-activated protein.

* GSEA was applied as described(Reference Subramanian, Kuehn and Gould40) to identify up- and down-regulated processes after feeding a diet supplemented with KFE compared with a control diet.

All gene sets were downloaded from the MSigDB database version 2.5 on 29 November 2009 (http://www.broadinstitute.org/gsea/msigdb/)(Reference Subramanian, Tamayo and Mootha41).

NES>0 is associated with the control diet; NES < 0 is associated with the KFE-supplemented diet.

§ Gene set enrichment was considered significant when FDR q value ≤ 0·05 and FE P value ≤ 0·01.

Original gene set source as listed by MSigDB: Gene Ontology.

Original gene set source as listed by MSigDB: KEGG (Kyoto Encyclopedia of Genes and Genomes; http://www.genome.jp/kegg/).

** Original gene set source as listed by MSigDB: Wiki Pathways.

†† Original gene set source as listed by MSigDB: BioCarta; Gene arrays.

‡‡ Original gene set source as listed by MSigDB: Super Array.

§§ Original gene set source as listed by MSigDB: Sigma-Aldrich.

GSEA results for gold and green aqueous KFE were similar (Table 4). Expression levels across gene sets related to T-cell activation and adaptive immunity were increased in the colon samples from C57Bl/6J mice fed these extracts when compared with those fed the control diet, while expression levels across gene sets related to carbohydrate and energy metabolism were decreased in the colon samples from Il10 − / − mice fed the same diets. However, the protein degradation pathway appeared to be differently regulated between the gold and green aqueous KFE, with increased expression in gene sets related to ubiquitination and degradation in colon samples from Il10 − / − mice fed the gold aqueous KFE diet, but decreased expression levels across gene sets related to the proteasome in colon samples from Il10 − / − mice fed the green aqueous KFE diet.

Colon samples from Il10 − / − mice fed the gold ethyl acetate extract showed increased expression levels across gene sets related to inflammation and eicosanoid synthesis when compared with those from mice fed the control diet. This was accompanied by decreased expression levels across gene sets related to carbohydrate, amino acid and lipid metabolism, as well as a range of signalling pathways such as G-protein-coupled and G-protein-coupled receptor signalling, cell adhesion, growth factor, mitogen-activated protein kinase (MAPK) and lipid kinase signalling.

Expression levels across gene sets related to immune and inflammatory signalling were decreased in colon samples from both C57BL/6J and Il10 − / − mice fed the green ethyl acetate extract when compared with samples from mice fed the control diet. The pathways associated with gene sets enriched in C57BL/6J colon samples included T-cell and dendritic cell signalling, antigen processing, and the IL12 pathway, whereas those within the Il10 − / − colon samples were associated with cytokine signalling.

All genes chosen for qRT-PCR validation of relative expression between the treatment groups showed similar FC in both microarray and qRT-PCR analyses (Fig. 1). Expression levels of four genes involved in the inflammatory processes present within the colon (Mmp10, Mmp13, Reg3b and S100a8) were increased in colon samples from Il10 − / − mice compared with those of C57BL/6J mice for both experiments. In addition, small but significant increases in the expression of these four genes were detected by qRT-PCR, but not microarray analysis, in colon samples from Il10 − / − mice fed the ethyl acetate gold KFE-supplemented diet compared with those fed the control diet. Reduced expression of a gene involved in xenobiotic metabolism (Sult1d1) in colon samples from Il10 − / − compared with C57BL/6J mice in each experiment was confirmed by qRT-PCR. Only two genes (Mapk13 and Defa21) were chosen that were not differentially expressed between the treatment groups when measured by microarray analysis, and the absence of differential expression was confirmed by qRT-PCR.

Fig. 1 Quantitative RT-PCR (□) validation of gene expression results from microarray () analysis. The relative expressions of (a) matrix metallopeptidase 10 (Mmp10), (b) matrix metallopeptidase 13 (Mmp13), (c) regenerating islet-derived 3 beta (Reg3b), (d) S100 calcium-binding protein A8 (S100a8), (e) defensin, alpha, 21 (Defa21), (f) mitogen-activated protein kinase 13 (Mapk13) and (g) sulfotransferase family 1D, member 1 (Sult1d1) were determined. Results for the differentially expressed genes were normalised against the geometric mean of Canx, Mon2 and Map2k1. * There was a significant difference in gene expression for the comparison of interest (P < 0·05). KFE, kiwifruit extract.

Changes in colonic protein abundances

Images from thirteen of the sixteen gels were captured successfully and relative expression levels were analysed using DIGE, where the two protein samples were directly compared within each gel. The data from two gels comparing l10 − / − mice fed the aqueous gold KFE diet with those fed the gold control diet and from one gel comparing C57BL/6J mice fed the ethyl acetate green KFE diet with those fed the green control diet could not be used because of technical error. Therefore, these comparisons were conducted between the appropriate samples in different gels. Image warping ensured that protein spots were compared correctly between gels and false positive results were unlikely. However, as this analysis is less sensitive, there was an increased chance of a false negative result where a differentially expressed protein would not appear to have a significant FC.

A total of sixty-one protein spots were identified as differentially expressed as a result of the inclusion of KFE in the diet (Table 5), with gel locations indicated for differentially expressed proteins in the C57BL/6J and Il10 − / − samples (Fig. 2). Of these, forty-eight spots were successfully identified by MS as corresponding to a single protein and two spots were identified by MS as having two possible protein matches (see Table S1 of the supplementary material, available online at http://www.journals.cambridge.org/bjn). For the latter two spots, the two possible proteins had similar functions; therefore, both identifications were retained. A further eleven spots were identified by comparison with a reference gel image compiled from previous experiments by our research group, which used Il10 − / − and C57BL/6J mice fed an AIN-76A control diet (see Table S2 of the supplementary material, available online at http://www.journals.cambridge.org/bjn). In many cases, the same protein ID was matched to more than one spot, indicating that different isoforms of that protein were present, probably because of post-translational modification. The FC for all isoforms of each protein were in the same direction; however, not all isoforms were differentially expressed in the same comparisons.

Table 5 Proteins more or less abundant in the colon of mice fed the kiwifruit extract (KFE)-supplemented diets compared with mice fed a control diet

FC, fold change, LPS, lipopolysaccharide; TLR, Toll-like receptor.

* Differential expression was based on mean FC from two gels, representing six biological replicates. Differential expression was considered significant when one of two biological replicates |FC| >2·0 and the second replicate |FC| >1·3 in the same direction.

Refer to Fig. 2.

Mouse Genome Informatics (http://www.informatics.jax.org/). For a description of the full names of the proteins, see http://www.genecards.org/

Fig. 2 Gel images showing the differentially expressed spots, control diet v. kiwifruit extract-supplemented diet. (a) C57BL/6J, (b) Il10 − / −. Spot identities are listed in Table 5. MW, molecular weight; pI, pH of the protein's isoelectric point.

Abundances of negative acute-phase proteins were decreased in the colon samples from C57BL/6J and Il10 − / − mice fed the gold aqueous extract when compared with those fed the control diet (Table 5). This included transferrin, a protein known to be increased within the colon tissue during inflammation. In addition, decreased abundances of the molecular chaperone proteins, PDIA3, PPIA and CALR, and of proteins involved in carbohydrate metabolism were detected in the colon samples from Il10 − / − mice fed this extract. Decreased abundances of molecular chaperon proteins (HSPA8 and HSPD1), proteins involved in carbohydrate and energy metabolism, and cytoskeleton components were also detected in colon samples from Il10 − / − mice fed the green aqueous and green ethyl acetate extracts when compared with samples from mice fed the appropriate control diet.

Discussion

Effects of kiwifruit extracts on animal health and inflammation

The histological investigation of colon tissues collected from C57BL/6J and Il10 − / − mice after the dietary intervention studies indicates that Il10 − / − mice develop significant colitis 6 weeks after inoculation with a mixture of normal intestinal bacteria. This is supported by reduced weight gain, overall loss of condition and increased plasma concentrations of the acute-phase biomarker IL-6 in Il10 − / − mice. These findings are similar to previous reports using this inoculated model(Reference Roy, Barnett and Knoch25Reference Knoch, Barnett and Cooney27) and are also similar to the pathophysiology present in inflamed intestinal tissue in Crohn's disease patients(Reference Podolsky1).

As the addition of KFE to the diet of C57BL/6J or Il10 − / − mice does not alter inflammatory parameters, KFE do not appear to have an anti-inflammatory effect in this animal model. Therefore, the immune-suppressing activity previously demonstrated in vitro does not translate into this in vivo model of IBD. This may be due to the effects of the intestinal environment on the KFE. For example, potentially anti-inflammatory polyphenols present within the KFE often have low bioavailability in vivo (Reference Scalbert and Williamson49). However, Halliwell et al. (Reference Halliwell, Rafter and Jenner50) have shown that, while ingestion of polyphenols typically leads to low maximal plasma concentrations ( < 1 μmol/ml), a much higher concentration of polyphenols is present in the intestinal lumen where they can interact directly with the intestinal mucosa. This interaction is expected to negate any absence of systemic activity caused by low absorption across the intestinal mucosa. In addition, metabolites from the KFE were detected within the urine of all mice fed KFE-supplemented diets within these experiments(Reference Lin, Edmunds and Zhu51), indicating that at least some KFE compounds are digested, absorbed and metabolised by mice. Therefore, it is unlikely that the absence of anti-inflammatory activity is due to low bioavailability alone. As the physiological complexity present in vivo is not present in single-cell in vitro assays, the KFE compounds present in these animal models may be substantially different from those previously tested.

Molecular effects of kiwifruit extracts

Detailed investigations of the effects of the KFE intervention on gene or protein expression levels found the effects on both inflammatory signalling and other metabolic processes within colonic tissue collected from both C57BL/6J and Il10 − / − mice; however, these effects were subtle. While no significant changes in individual gene expression were identified by linear models for microarray data (LIMMA) analysis, GSEA analysis identified between two and sixty-four significantly enriched gene sets in each comparison. The aim of GSEA is to identify groups of functionally related genes with statistically significant, coordinated changes in expression even when no individual genes would be identified by individual gene analysis(Reference Nam and Kim52). The GSEA-P analysis tool (http://www.broadinstitute.org/gsea/index.jsp) was used by Mootha et al. (Reference Mootha, Lindgren and Eriksson42) to identify a specific set of genes related to oxidative phosphorylation as differentially regulated in muscle tissue from type 2 diabetics, a finding which was then validated in independent studies despite no significant differences in individual expression identified for these genes. Therefore, both significantly enriched gene sets and differentially expressed proteins will be discussed for each comparison.

Aqueous gold kiwifruit extract

The aqueous gold KFE appears to have an immune-suppressing effect within the colon of C57BL/6J, but not Il10 − / −, mice, with decreased expression levels across three sets of genes related to immune function and inflammation compared with levels found in mice fed a KFE-free control diet. This is supported by the reduced protein abundance of transferrin, an Fe transport protein that increases within the colon in response to inflammation, and of three molecular chaperone proteins associated with cellular stress and TLR signalling (PDIA3, PPIA and CALR), within these colon samples (Table 5). However, the absence of colon transcript changes or a reduction in colon HIS in Il10 − / − mice indicates that there is no anti-inflammatory effect within these animals.

While inflammation within the Il10 − / − mouse colon is not reduced by supplementation with the aqueous gold KFE, this extract appears to reduce the overall metabolic processes within these tissues compared with similar mice fed the control diet. Both transcriptomic and proteomic data indicate a reduction in carbohydrate and energy metabolism, coupled with decreases in gene set expression related to protein ubiquitination and degradation. The suppression of protein ubiquitination may be related to the reduced abundance of molecular chaperone proteins involved in facilitating protein folding within the endoplasmic reticulum. Under conditions of oxidative stress, such as that reported within the Il10 − / − mouse colon(Reference Shkoda, Ruiz and Daniel53), proteins may become misfolded to form non-functional protein aggregates(Reference Schröder and Kaufman54). The abnormal proteins are ubiquitinated and then degraded by the proteasome complex(Reference Goldberg55). As protein folding is linked to de novo expression(Reference Feldman and Frydman56), reduced protein expression due to decreased metabolic capacity may also reduce the need for molecular chaperones and protein degradation.

Aqueous green kiwifruit extract

Similar results were found for the aqueous green KFE to aqueous gold KFE, with decreased expression levels across sixteen gene sets related to the adaptive immune response and T-cell activation within colon samples from C57BL/6J, but not Il10 − / −, mice fed the KFE-supplemented diet. Other mouse studies have demonstrated that gold and green kiwifruit enhance the adaptive immune response to vaccination in otherwise healthy mice, including increased antigen-specific T-cell activation and Ig production(Reference Shu, Mendis De Silva and Chen13, Reference Hunter, Denis and Parlane14). A pilot human study investigating the effects of an aqueous extract of gold kiwifruit on ex vivo blood samples has found that incubation of blood cells with the KFE enhanced T-cell activation, phagocytosis, oxidative burst and natural killer cell activity(Reference Skinner, Loh and Hunter57). Together, these results suggest that the aqueous green KFE may influence immune signalling within the normal colonic tissue; however, the details of this effect are unclear.

Proteasome activity appears to be increased in the colon samples from Il10 − / − mice fed the aqueous green KFE when compared with those fed the control diet, with significantly enriched gene sets and increased protein abundances associated with this pathway. The abundances of two molecular chaperone proteins (heat shock protein 1 and heat shock protein 8) were also reduced in these colon samples, suggesting an overall reduction in cellular stress within these tissues. This would be expected to decrease proteasome activity, rather than molecular weight, the increase identified here. However, these proteins are also involved in TLR signalling(Reference Beg58) and may, instead, have been down-regulated in response to the reduced immune signalling also identified within these colon samples.

Ethyl acetate gold kiwifruit extract

In contrast to the anti-inflammatory effects proposed for both aqueous KFE, the transcriptomic results for Il10 − / − mice fed the ethyl acetate gold KFE suggest a pro-inflammatory effect within the colon. The expression levels of genes involved in inflammation (Reg3b and S100a8) or tissue destruction (Mmp10 and Mmp13) are increased within colon samples from Il10 − / − mice fed the ethyl acetate gold KFE-supplemented diet compared with the control diet (Fig. 1). Gene sets associated with inflammation, cytokine signalling and eicosanoid synthesis are also up-regulated within these mice (Table 4). These outcomes contradict the result of our previous in vitro study where TLR-activated signalling was almost completely inhibited in primary macrophages derived from both C57BL/6J and Il10 − / − mice after the gold ethyl acetate KFE treatment (Reference Edmunds, Roy and Love19). However, there were no changes to colon HIS, or protein abundances related to the inflammatory process in these colon samples, indicating that increases in pro-inflammatory immune signalling in Il10 − / − mice in response to ethyl acetate gold KFE supplementation do not result in increased colitis.

A range of signalling pathway gene sets were significantly enriched after the intervention with this KFE, including inflammatory signalling pathways, G-protein-coupled and G-protein-coupled receptor signalling, MAPK and lipid kinase signalling. This is supported by a significant increase in the expression of the key regulatory MAPK protein, p38delta (Mapk13), in Il10 − / − mice fed the ethyl acetate gold KFE when measured by qRT-PCR. These secondary signalling pathways are involved in the development of chronic inflammation within the Il10 − / − mouse colon(Reference Kontoyiannis, Kotlyarov and Carballo59) and may not be involved in the innate immune activation measured by our previous in vitro study. The regulation of these pathways may allow the ethyl acetate gold KFE to increase pro-inflammatory signalling in the colon regardless of their effect on TLR activity. Gene sets related to amino acid, carbohydrate and lipid metabolism show decreased expression levels, indicating lower overall metabolic capacity, potentially because of a reduction in growth factor activity caused by the suppression of these signalling pathways. These findings suggest that ethyl acetate gold KFE may influence the growth factor and inflammatory signalling pathways within the colon.

Ethyl acetate green kiwifruit extract

The colonic gene expression profiles of both C57BL/6J and Il10 − / − mice fed diets supplemented with the ethyl acetate green KFE showed reduced expression across sets of genes related to immune function and inflammation compared with expression in colon samples collected from mice fed a KFE-free control diet. The ten gene sets identified in the transcriptomic results for C57BL/6J mice are related to aspects of the adaptive immune response, including antigen presentation, IL12 signalling and T-cell activation. However, only two gene sets, each associated with cytokine signalling, were identified as down-regulated in the colons of Il10 − / − mice. It appears that, while the ethyl acetate green KFE retains some immune-modulating effect within the inflamed Il10 − / − colon, the putative interaction with the adaptive immune response is lost within this model. This may be due to the type of inflammation that develops. For example, a decrease in IL-12 signalling as seen in the C57BL/6J colon samples may lead to reduced Th1 activation. However, it has been demonstrated that IL-23, but not IL-12, is important for the development of colitis within the Il10 − / − colon(Reference Yen, Cheung and Scheerens23). Therefore, while a reduction in IL-12 signalling within the Il10 − / − colon may reduce general pro-inflammatory cytokine signalling (as reported here), it may not be enough to reduce Th17 cell activation within the Il10 − / − colon.

Conclusions

While dietary intervention with KFE does not reduce colitis in Il10 − / − mice, this intervention appears to subtly influence pathways within colonic tissue. In particular, the aqueous gold and green KFE and the ethyl acetate green KFE appear to decrease T-cell-driven adaptive immune signalling within C57BL/6J, but not Il10 − / −, mouse colon samples. These outcomes are in contrast to a previous study where these KFE significantly reduced inflammatory signalling by primary cells isolated from the same C57BL/6J and Il10 − / − mouse models(Reference Edmunds, Roy and Love19). This discrepancy highlights the importance of investigating food components identified by cell-based screening assays with appropriate animal models and human clinical studies, as a food that looks promising in vitro may not be effective in vivo. The Il10 − / − mouse studies reported here indicate that clinical studies of KFE in IBD would be inappropriate given our current understanding of their molecular mechanism. However, the changes to adaptive immune signalling, molecular chaperone expression and the overall metabolic effects of KFE identified in the transcriptomic and proteomic data, coupled with in vivo kiwifruit studies conducted by other groups, suggest that KFE may have beneficial activity within the adaptive immune system. This activity may lie in improving the response to vaccination or disease, but does not lie in reducing the inflammatory processes present in the mode of colitis described here. Importantly, two recent human intervention studies have investigated the effects of aqueous gold KFE on the adaptive-immune response(Reference Skinner, Loh and Hunter57).

Acknowledgements

The authors wish to thank Ric Broadhurst, Nerissa Boyes, Kim Oden and Anna Russ for their assistance with the animal experiments, Chrissie Butts for assistance with diet formulation, John Koolaard for the covariate analysis of weight gain, Kate Broadley for training in mRNA extraction and microarray analysis, Matt Punter for training in qRT-PCR, Diane Barraclough for training in two-dimensional electrophoresis and Helge Dzierzon for microarray submission to the Gene Expression Omnibus. Nutrigenomics New Zealand is a collaboration between Plant and Food Research Limited, AgResearch Limited and the University of Auckland, and is funded by the New Zealand Foundation for Research, Science and Technology under contract C06X0702.Shelley Edmunds’ PhD fellowship was funded by Nutrigenomics New Zealand. All authors have no conflicts of interest. The authors’ contributions were as follows: S. J. E. designed, planned and executed all experiments, conducted GSEA and proteomics analysis, and had primary responsibility for the final manuscript. N. C. R., D. R. L. and W. A. L. designed all experiments and provided significant contributions to manuscript writing. M. D. designed the microarray experiments and conducted the microarray quality analysis, LIMMA and other microarray analysis. J. M. C. performed the MS identification of protein spots. S. Z. performed the histology analysis. M. P. G. B. provided training and experimental design for the mouse experiments. Z. P. performed the statistical analysis of all animal experimental data. All authors read and approved the final manuscript.

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Figure 0

Table 1 Treatment groups and mouse numbers*

Figure 1

Table 2 Quantitative RT-PCR genes and primers

Figure 2

Table 3 Animal characteristics per genotype and diet for Expt 1 and Expt 2

Figure 3

Table 4 Gene set enrichment analysis (GSEA) of pathways up- or down-regulated in the mouse colon by the kiwifruit extract (KFE)-supplemented diets*

Figure 4

Fig. 1 Quantitative RT-PCR (□) validation of gene expression results from microarray () analysis. The relative expressions of (a) matrix metallopeptidase 10 (Mmp10), (b) matrix metallopeptidase 13 (Mmp13), (c) regenerating islet-derived 3 beta (Reg3b), (d) S100 calcium-binding protein A8 (S100a8), (e) defensin, alpha, 21 (Defa21), (f) mitogen-activated protein kinase 13 (Mapk13) and (g) sulfotransferase family 1D, member 1 (Sult1d1) were determined. Results for the differentially expressed genes were normalised against the geometric mean of Canx,Mon2 and Map2k1. * There was a significant difference in gene expression for the comparison of interest (P < 0·05). KFE, kiwifruit extract.

Figure 5

Table 5 Proteins more or less abundant in the colon of mice fed the kiwifruit extract (KFE)-supplemented diets compared with mice fed a control diet

Figure 6

Fig. 2 Gel images showing the differentially expressed spots, control diet v. kiwifruit extract-supplemented diet. (a) C57BL/6J, (b) Il10− / −. Spot identities are listed in Table 5. MW, molecular weight; pI, pH of the protein's isoelectric point.

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