Introduction
Anorexia nervosa (AN) is characterized by a persistent restriction in energy intake leading to cachexia and serious medical complications (Voderholzer, Haas, Correll, & Körner, Reference Voderholzer, Haas, Correll and Körner2020; Westmoreland, Krantz, & Mehler, Reference Westmoreland, Krantz and Mehler2016). Furthermore, acutely underweight patients with AN show markedly reduced brain mass, which can often be observed on computed tomography scans or magnetic resonance imaging (MRI) scans even at an individual level (King, Frank, Thompson, & Ehrlich, Reference King, Frank, Thompson and Ehrlich2018; Nussbaum, Shenker, Marc, & Klein, Reference Nussbaum, Shenker, Marc and Klein1980; Seitz et al., Reference Seitz, Bühren, von Polier, Heussen, Herpertz-Dahlmann and Konrad2014).
An established measure for structural brain changes is cortical thickness (CT). Several studies have shown widespread CT reductions in acutely underweight AN patients (Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; Walton et al., Reference Walton, Bernardoni, Batury, Bahnsen, Larivière, Abbate-Daga and Ehrlich2022). Most of these alterations seem to be reversible upon weight gain/recovery (Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; Castro-Fornieles et al., Reference Castro-Fornieles, de la Serna, Calvo, Pariente, Andrés-Perpiña, Plana and Bargalló2021), and an increase in body mass index (BMI) has been shown to be associated with increase in CT (Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016). However, the mechanisms underlying these alterations are still unknown. Post-mortem studies suggest the hypothesis of alterations in size and/or morphology of glia cells or neurons but are very limited in number and sample size (Martin, Reference Martin1958; Neumärker et al., Reference Neumärker, Dudeck, Meyer, Neumärker, Schulz and Schönheit1997).
To test this hypothesis with in-vivo measurements, several studies have therefore investigated blood markers of brain damage (Doose et al., Reference Doose, Hellerhoff, Tam, King, Seidel, Geisler and Ehrlich2021; Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; Nilsson et al., Reference Nilsson, Millischer, Karrenbauer, Juréus, Salehi, Norring and Landén2019; Wentz et al., Reference Wentz, Dobrescu, Dinkler, Gillberg, Gillberg, Blennow and Zetterberg2021). These markers provide information about specific processes on a cellular level (Zetterberg, Smith, & Blennow, Reference Zetterberg, Smith and Blennow2013). The most studied marker in this context is neurofilament light (NF-L), a structural scaffolding protein expressed in neurons (Khalil et al., Reference Khalil, Teunissen, Otto, Piehl, Sormani, Gattringer and Kuhle2018). Upon axonal injury, increasing concentrations of NF-L are found in cerebrospinal fluid (CSF) and blood (Gaetani et al., Reference Gaetani, Blennow, Calabresi, Di Filippo, Parnetti and Zetterberg2019). Interestingly, this was also reported in patients with acute AN in two independent studies (Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; Nilsson et al., Reference Nilsson, Millischer, Karrenbauer, Juréus, Salehi, Norring and Landén2019). Furthermore, during weight restoration treatment, an increase in BMI was related to decreasing NF-L levels (Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021). Another marker for axonal injury is tau protein, a microtubule-binding protein expressed in great amounts in thin non-myelinated axons of cortical interneurons (Kawata et al., Reference Kawata, Liu, Merkel, Ramirez, Tierney and Langford2016; Randall et al., Reference Randall, Mörtberg, Provuncher, Fournier, Duffy, Rubertsson and Wilson2013; Trojanowski, Schuck, Schmidt, & Lee, Reference Trojanowski, Schuck, Schmidt and Lee1989; Zetterberg et al., Reference Zetterberg, Smith and Blennow2013). One recent study found increased serum tau concentrations in patients with acute AN both before and after short-term partial weight restoration (Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021) a result that partly matches the NF-L findings but still needs replication.
Not only neurons but also glial cells might be affected in the acutely underweight state of AN. Elevated levels of glial fibrillary acidic protein (GFAP), an intermediate filament found in mature astrocytes (Eng, Ghirnikar, & Lee, Reference Eng, Ghirnikar and Lee2000), have been associated with astroglial injury (Aurell et al., Reference Aurell, Rosengren, Karlsson, Olsson, Zbornikova and Haglid1991). While Ehrlich et al. (Reference Ehrlich, Burghardt, Weiss, Salbach-Andrae, Craciun, Goldhahn and Lehmkuhl2008) found no difference in GFAP levels between patients with AN and healthy control participants (HC), a more recent study found increased GFAP levels in acutely underweight AN patients, which were not detectable anymore after partial weight restoration (Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021). These inconsistencies regarding GFAP levels in AN might be due to differences in laboratory methods: Recent studies have profited from the use of single-molecule array (Simoa™) technology, reaching significantly lower limits of detection in comparison to conventional enzyme-linked immunosorbent assays (Ehrlich et al., Reference Ehrlich, Burghardt, Weiss, Salbach-Andrae, Craciun, Goldhahn and Lehmkuhl2008; Kuhle et al., Reference Kuhle, Barro, Andreasson, Derfuss, Lindberg, Sandelius and Zetterberg2016; Quanterix, 2013, 2017; Wilson et al., Reference Wilson, Rissin, Kan, Fournier, Piech, Campbell and Duffy2016). Importantly, this new technology has also facilitated the detection of even slight elevations in peripheral blood samples for both NF-L and tau protein (Kuhle et al., Reference Kuhle, Barro, Andreasson, Derfuss, Lindberg, Sandelius and Zetterberg2016; Quanterix, 2013).
The aforementioned studies suggest neuronal and astroglial alterations/damage processes occurring in acute AN, which could contribute to the brain morphological changes seen on MRI scans. Studies in healthy populations (Khalil et al., Reference Khalil, Pirpamer, Hofer, Voortman, Barro, Leppert and Kuhle2020; Rajan et al., Reference Rajan, Aggarwal, McAninch, Weuve, Barnes, Wilson and Evans2020; Vågberg et al., Reference Vågberg, Norgren, Dring, Lindqvist, Birgander, Zetterberg and Svenningsson2015) as well as in neurological disorders have investigated potential associations between blood or CSF damage marker levels and brain morphology/atrophy (Ayrignac et al., Reference Ayrignac, Le Bars, Duflos, Hirtz, Maleska Maceski, Carra-Dallière and Lehmann2020; Barker et al., Reference Barker, Quinonez, Greig, Behar, Chirinos, Rodriguez and Duara2021; Deters et al., Reference Deters, Risacher, Kim, Nho, West and Blennow2017; Illán-Gala et al., Reference Illán-Gala, Lleo, Karydas, Staffaroni, Zetterberg, Sivasankaran and Rojas2021; Plavina et al., Reference Plavina, Singh, Sangurdekar, de Moor, Engle, Gafson and Rudick2020; Schönknecht et al., Reference Schönknecht, Pantel, Hartmann, Werle, Volkmann, Essig and Schröder2003; Shahim et al., Reference Shahim, Politis, van der Merwe, Moore, Chou, Pham and Chan2020). In non-neurodegenerative neuropsychiatric disorders, only two known studies exist which have investigated these markers and their associations with global measures of brain volume (Andreou et al., Reference Andreou, Jørgensen, Nerland, Smelror, Wedervang-Resell, Johannessen and Agartz2021; Li et al., Reference Li, Duan, Gong, Jing, Zhang, Zhang and Jia2021). Our aim with the present study was to combine fine-grained vertex-wise (i.e. highly regional) investigations of CT changes in AN with the information obtained from three different brain-derived damage markers. A vertex-wise approach allows to detect local effects, which might not be visible when averaging across regions or the whole cortex.
Our hypotheses were that serum concentrations of brain damage markers (NF-L, tau protein, and GFAP) in acAN would be negatively associated with CT (i.e. higher marker levels go along with lower CT) and that changes in marker levels following partial weight restoration would contribute above and beyond increase in BMI to explain normalization of CT. To test whether the observed effects were specific to AN, we conducted a follow-up analysis examining potential associations between damage markers and CT in a large sample of healthy participants.
Materials and methods
Participants
Study data were obtained from 54 underweight female patients with acute AN diagnosed according to the Diagnostic and Statistical Manual of Mental Disorders (DSM-5; American Psychiatric Association, 2013; age range 12–24 years). Two acAN were excluded after quality control of the structural MRI (sMRI) data (see online Supplementary Information 1.4.2), resulting in a final sample of 52 acAN. The additional HC group consisted of 149 female participants (age range 12–23 years) of whom two were excluded after quality control (final sample of 147 HC participants). The sample partially overlaps with our previous studies (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; see online Supplementary Information 1.1 for Details). AN patients were studied in the acutely underweight state (acAN-TP1) not more than 96 h after admission to intensive treatment and reassessed after short-term partial weight restoration (acAN-TP2; after an a priori-defined minimum BMI increase of 10%; all patients in the present sample had a BMI increase >14%). Participants with AN underwent treatment in eating disorder programs at a tertiary care university hospital. 98% of the participants identified as European (details in online Supplementary Information 1.1). The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2008. All participants (and the legal guardians of underage participants) gave written informed consent.
AN was diagnosed using a modified version of the German expert form of the Structured Interview for Anorexia and Bulimia Nervosa (SIAB-EX; Fichter & Quadflieg, Reference Fichter and Quadflieg1999) and required a BMI < 17.5 kg/m2 (or below the 10th age percentile, if younger than 15.5 years). HC had to be of normal weight, eumenorrhoeic, and without any history of psychiatric illness. Several additional exclusion criteria were applied to both AN and HC participants, including psychotropic medication in the four weeks preceding study participation (except for selective serotonin reuptake inhibitors, which were allowed in AN participants, n = 1 in acAN-TP1 and n = 2 in acAN-TP2; online Supplementary Information 1.1).
Clinical measures
Psychopathology was assessed using the SIAB-EX (Fichter & Quadflieg, Reference Fichter and Quadflieg1999), the ‘drive for thinness’ and ‘body dissatisfaction’ scales from the German version of the Eating Disorder Inventory-2 (EDI-2; Paul & Thiel, Reference Paul and Thiel2005), and the German version of the Beck Depression Inventory-II (BDI-II; Hautzinger, Keller, & Kühner, Reference Hautzinger, Keller and Kühner2009). IQ was estimated using age-appropriate versions of the Wechsler Intelligence Scales (online Supplementary Information 1.2). Age- and gender-corrected BMI standard deviation scores (BMI-SDS; Hemmelmann, Brose, Vens, Hebebrand, & Ziegler, Reference Hemmelmann, Brose, Vens, Hebebrand and Ziegler2010; Kromeyer-Hauschild et al. Reference Kromeyer-Hauschild, Wabitsch, Kunze, Geller, Geiß, Hesse and Hebebrand2001) were calculated from the BMI.
Blood sampling and Simoa analysis
Blood sampling directly before the MRI scan and determination of NF-L, tau protein, and GFAP levels were carried out as previously described (Doose et al., Reference Doose, Hellerhoff, Tam, King, Seidel, Geisler and Ehrlich2021; Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; online Supplementary Information 1.3) using the digital Simoa™ Human Neurology 4-Plex A assay in combination with the Simoa™ HD-1 Analyzer (both Quanterix, Lexington, MA, USA).
MRI acquisition and processing and CT estimation
MRI scanning took place between 8 and 9 a.m. Studies on the acute effect of food intake on brain damage marker concentrations are lacking, but all participants were studied after an overnight fast to minimize potential influence of acute food intake on the results. High-resolution three-dimensional T1-weighted structural scans were acquired on a 3 T scanner (Magnetom Trio, Siemens, Erlangen, Germany) using a rapid acquisition gradient echo (MP-RAGE) sequence with the same parameters as in our previous studies (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; online Supplementary Information 1.4.1).
Each participant's T1-weighted MP-RAGE images were first preprocessed in an automated manner with the FreeSurfer software suite (https://surfer.nmr.mgh.harvard.edu/; version 5.3; Dale, Fischl, & Sereno, Reference Dale, Fischl and Sereno1999; Desikan et al. Reference Desikan, Ségonne, Fischl, Quinn, Dickerson, Blacker and Killiany2006; Fischl & Dale, Reference Fischl and Dale2000; Fischl, Sereno, & Dale, Reference Fischl, Sereno and Dale1999; Fischl et al. Reference Fischl, Salat, Busa, Albert, Dieterich, Haselgrove and Dale2002, Reference Fischl, van der Kouwe, Destrieux, Halgren, Ségonne, Salat and Dale2004). Thereafter quality control (online Supplementary Information 1.4.2) was carried out as described in our previous studies (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; Reuter, Schmansky, Rosas, & Fischl, Reference Reuter, Schmansky, Rosas and Fischl2012). All images underwent further longitudinal preprocessing with the FreeSurfer longitudinal stream. CT was calculated at each vertex on the tessellated surface and smoothed using a Gaussian kernel with a full-width-at-half-maximum (FWHM) of 10 mm (online Supplementary Information 1.4.2).
Statistical analyses
Clinical variables and brain damage marker levels
Due to slight violations of normal distribution, marker concentration values were log-transformed prior to analysis. Extreme outliers (>3 standard deviations (s.d.) from the mean of the respective diagnostic group and time point after logarithmization) were excluded from all analyses (online Supplementary Information 1.5.1). For the analysis of demographic variables, non-parametric tests (Wilcoxon rank sum tests or Wilcoxon signed rank tests) were used since not all variables were normally distributed. Group comparisons of log-transformed damage marker levels were conducted using Welch two sample t-tests (for one-sided acAN-TP1 v. HC comparisons, with correction of degrees of freedom to account for differences between groups in the variance) and matched sample t-tests (for one-sided acAN-TP1 v. acAN-TP2 comparisons). One-sided t-tests were chosen because based on existing literature, we expected to find higher marker levels in acAN-TP1 compared to HC and in acAN-TP1 compared to acAN-TP2 as a sign of brain damage (Gaetani et al., Reference Gaetani, Blennow, Calabresi, Di Filippo, Parnetti and Zetterberg2019; Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; Kawata et al., Reference Kawata, Liu, Merkel, Ramirez, Tierney and Langford2016; Nilsson et al., Reference Nilsson, Millischer, Karrenbauer, Juréus, Salehi, Norring and Landén2019; Randall et al., Reference Randall, Mörtberg, Provuncher, Fournier, Duffy, Rubertsson and Wilson2013; Yang & Wang, Reference Yang and Wang2015). False discovery rate (FDR; Benjamini & Hochberg, Reference Benjamini and Hochberg1995) correction was applied to account for multiple testing. Analysis of demographic and clinical variables and of damage marker levels was carried out using the software R (version 3.6.3; R Core Team, 2020).
Cortical thickness
Following Bernardoni et al. (Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016), CT in AN was modeled at each vertex of the cortical surface with a linear mixed-effect (LME) model (separately for each damage marker and for each hemisphere) as
where A is the CT in acAN at the mean age and mean markerTP1 level, bt is BMI-SDS and ct is the log-transformed marker level (both at time t). Aget is the age at time t and markerTP1 is the log-transformed marker-level in acAN-TP1 (both mean-subtracted) of the subject. B, C, D, and E thus represent the rate of CT change in AN associated with change in BMI-SDS, change in marker levels, age (as a control variable) and marker levels in acAN-TP1, respectively. In this model, A was a random effect and all other terms were fixed across participants.
Of note, changes in BMI-SDS and damage marker levels correlate (Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021). As we are mainly interested in the effect of change in damage markers on CT change above and beyond the effect of change predicted by BMI-SDS, the term ct-cTP1 was orthogonalized with respect to bt-bTP1. Further elaborations on the statistical model can be found in Bernardoni et al. (Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016) For the practical implementation of the model, customized FreeSurfer LME Matlab tools (https://surfer.nmr.mgh.harvard.edu/fswiki/LinearMixedEffectsModels; Bernal-Rusiel, Greve, Reuter, Fischl, & Sabuncu, Reference Bernal-Rusiel, Greve, Reuter, Fischl and Sabuncu2013a; Bernal-Rusiel, Reuter, Greve, Fischl, & Sabuncu, Reference Bernal-Rusiel, Reuter, Greve, Fischl and Sabuncu2013b; Reuter et al. Reference Reuter, Schmansky, Rosas and Fischl2012) were used.
Since our analyses revealed an association between NF-L levels in acAN-TP1 and CT, we investigated whether this association was specific to acAN by assessing the same relationship in an independent sample of HC participants. Therefore, in a follow-up analysis we used a general linear model (GLM) to model CT in HC as
where A represents the CT in HC at the mean age and mean marker level and age is the mean-subtracted age of the subject (as a control variable), and B thus represents the effect of age on CT. Marker is the mean-subtracted log-transformed marker-level of the subject, and C thus represents the effect of marker-levels on CT. For the practical implementation we used FreeSurfer Matlab tools (https://surfer.nmr.mgh.harvard.edu/fswiki/FsTutorial/GroupAnalysis).
A supplementary model including both groups was built to locate areas with an effect of diagnostic group (acAN v. HC) on CT. This model is described in the online Supplementary Information (1.5.2).
Results
Study sample and clinical measures
To characterize our main AN sample in terms of clinical features and brain damage marker abnormalities, it is put in contrast with the independent HC sample used for the follow-up analysis in Table 1. AN and HC participants did not differ with regard to age or IQ. AcAN-TP1 participants had significantly lower BMI-SDS and minimal lifetime BMI and higher symptom levels than HC (EDI-2 and BDI-II). Group comparisons revealed significantly increased levels of NF-L, tau protein, and GFAP in acAN-TP1 compared to HC. As expected and shown in our previous studies (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016), acAN-TP1 showed widespread reductions in CT (online Supplementary Fig. S1).
Note. acAN-TP1, participants with acute anorexia nervosa; acAN-TP2, participants with anorexia nervosa after partial weight restoration; HC, healthy control participants; W, Test statistic of the Wilcoxon rank sum test with continuity correction; V, Test statistic of the Wilcoxon signed rank test with continuity correction; BMI-SDS, body mass index standard deviation score; BMI, body mass index; EDI-2, Eating Disorder Inventory, version 2; BDI-II, Beck Depression Inventory, version 2; NF-L, neurofilament light; GFAP, glial fibrillary acidic protein; CI, confidence interval of the group difference. p-values <0.05 were considered statistically significant and all significant group differences remained significant when applying false discovery rate correction for multiple comparisons (correction for eleven group comparisons of descriptive variables and for six group comparisons of marker values, respectively).
a 43 AN participants were of the restrictive and nine of the binge-eating/purging subtype.
b Mean duration between assessments in AN patients was 81.87 days (range 35–154).
c IQ was only measured once in AN participants after weight gain.
d For better interpretability, median and IQR of the raw marker values are displayed. However, group comparisons were computed with log-transformed marker values due to slight violations of normal distribution.
Between acAN-TP1 and acAN-TP2, BMI-SDS increased, while BDI-II scores and the EDI-2 subscale ‘Drive for thinness’ decreased. There was a decrease from acAN-TP1 to acAN-TP2 in NF-L and in GFAP levels, but not in tau protein levels (Table 1). As in our previous reports (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016), with increasing BMI also CT increased in acAN-TP2 across many regions of the cerebral cortex (online Supplementary Fig. S2).
Association of damage marker levels with CT
NF-L levels at TP1 were significantly associated with CT in acAN participants in several brain regions (Fig. 1) with prominent clusters located in the bilateral temporal lobe. Supplementary analyses revealed that these clusters were mainly located in areas where CT was decreased in acAN-TP1 compared with HC (online Supplementary Fig. S3). Neither tau protein nor GFAP levels at TP1 were associated with CT in acAN participants. Age in acAN was negatively associated (smaller CT at higher age) with CT in small clusters of the right hemisphere in the NF-L and tau models (online Supplementary Fig. S4). For none of the markers, change in protein levels predicted longitudinal change in CT (above and beyond change in BMI-SDS).
In the follow-up analysis with HC participants, we found the expected associations between age and CT. However, none of the damage markers was associated with CT in HC.
Discussion
We tested whether elevated brain damage marker levels in AN are associated with CT. We found negative associations between NF-L (but not tau protein or GFAP) levels and CT in acAN in several brain regions with the most predominant clusters in regions of the bilateral temporal lobe (which showed particularly reduced CT relative to HC). This association was absent in HC. While elevated brain damage marker levels and reduced CT have been reported independently in non-neurodegenerative psychiatric illnesses (Bavato et al., Reference Bavato, Cathomas, Klaus, Gütter, Barro, Maceski and Quednow2021; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; for the ENIGMA-Major Depressive Disorder Working Group et al., Reference Schmaal, Hibar, Sämann, Hall, Baune and Veltman2017; Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; Nilsson et al., Reference Nilsson, Millischer, Karrenbauer, Juréus, Salehi, Norring and Landén2019), we show here for the first time a link between the two measures. Our findings suggest that the reductions in CT seen in AN might be at least partially related to axonal damage processes.
Studies in neurodegenerative diseases have suggested associations between elevated NF-L levels and global measures of brain volume (Barker et al., Reference Barker, Quinonez, Greig, Behar, Chirinos, Rodriguez and Duara2021; Cantó et al., Reference Cantó, Barro, Zhao, Caillier, Michalak, Bove and Kuhle2019; Meeter et al., Reference Meeter, Steketee, Salkovic, Vos, Grossman, McMillan and Van Swieten2019; Plavina et al., Reference Plavina, Singh, Sangurdekar, de Moor, Engle, Gafson and Rudick2020; Rajan et al., Reference Rajan, Aggarwal, McAninch, Weuve, Barnes, Wilson and Evans2020). Studies conducted with local (voxel-/vertex-wise) measures of brain atrophy mostly confirmed these results. In Alzheimer's Disease, for instance, correlations between NF-L levels and CT have been found in the left and right lateral temporal lobes and in right inferior parietal and left superior frontal regions (Alcolea et al., Reference Alcolea, Vilaplana, Suárez-Calvet, Illán-Gala, Blesa, Clarimón and Lleó2017; Illán-Gala et al., Reference Illán-Gala, Lleo, Karydas, Staffaroni, Zetterberg, Sivasankaran and Rojas2021). In frontotemporal lobar degeneration related syndromes, local associations of NF-L levels with CT have been found in frontal, temporal, and parietal areas of both hemispheres (Alcolea et al., Reference Alcolea, Vilaplana, Suárez-Calvet, Illán-Gala, Blesa, Clarimón and Lleó2017; Falgàs et al., Reference Falgàs, Ruiz-Peris, Pérez-Millan, Sala-Llonch, Antonell, Balasa and Sánchez-Valle2020; Illán-Gala et al., Reference Illán-Gala, Lleo, Karydas, Staffaroni, Zetterberg, Sivasankaran and Rojas2021; Spotorno et al., Reference Spotorno, Lindberg, Nilsson, Landqvist Waldö, van Westen, Nilsson and Alexander2020). Therefore, while structural alterations in acAN seem more spatially homogeneous compared to neurodegenerative diseases [e.g. in Alzheimer's Disease the most pronounced reductions are located in the hippocampus and the temporal pole (Karow et al., Reference Karow, McEvoy, Fennema-Notestine, Hagler, Jennings and Brewer2010)], the neural mechanisms underlying these alterations might be similar, and seem in both cases related to axonal damage.
Regarding neuropsychiatric (non-degenerative) disorders, only one known study has investigated associations between NF-L and global measures of brain volume: In alcohol dependence, elevated levels of NF-L were found to be associated with the degree of WM lesions and were negatively correlated with global WM volume (Li et al., Reference Li, Duan, Gong, Jing, Zhang, Zhang and Jia2021). The present study is to our knowledge the first to simultaneously examine the relationship between three different brain damage markers and imaging measures of brain health in a neuropsychiatric disorder by means of a vertex-wise measure of brain alterations. Our results suggest that NF-L might be a marker of structural brain damage processes even in diseases that are not primarily caused by direct brain injury or neurodegeneration and that NF-L might potentially be a better marker for this purpose than tau protein or GFAP.
Speculatively, the differential relationships found between the three investigated markers and CT might be due to their different origins: NF-L is abundant in large-caliber myelinated axons (Gaetani et al., Reference Gaetani, Blennow, Calabresi, Di Filippo, Parnetti and Zetterberg2019; Zetterberg et al., Reference Zetterberg, Smith and Blennow2013), while tau protein is predominantly expressed in thin non-myelinated axons of cortical interneurons (Trojanowski et al., Reference Trojanowski, Schuck, Schmidt and Lee1989; Zetterberg et al., Reference Zetterberg, Smith and Blennow2013). In line with this, a recent study found that CT reductions in AN are more prevalent in regions with greater structural and functional connectivity to other brain regions (‘hubs’; Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022). Neuronal damage or remodeling processes occurring in the acutely underweight state of AN (Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; King et al., Reference King, Frank, Thompson and Ehrlich2018; Nilsson et al., Reference Nilsson, Millischer, Karrenbauer, Juréus, Salehi, Norring and Landén2019) might thus be more pronounced in these regions. In contrast, GFAP is released from astrocytes (Aurell et al., Reference Aurell, Rosengren, Karlsson, Olsson, Zbornikova and Haglid1991; Eng et al., Reference Eng, Ghirnikar and Lee2000) and regions characterized by a higher astrocyte gene expression (among others) seem to be less affected by AN-related CT reductions in human studies (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022). However, rodent studies support a role for astrocytes in models of AN (Frintrop et al., Reference Frintrop, Trinh, Liesbrock, Leunissen, Kempermann, Etdöger and Seitz2019).
Using a vertex-wise analysis approach, we were able to locate cortical regions, in which NF-L was associated with cortical thinning in AN. The largest clusters were located in the bilateral temporal lobe. Associations between NF-L and CT have previously been found in these regions in dementia (Alcolea et al., Reference Alcolea, Vilaplana, Suárez-Calvet, Illán-Gala, Blesa, Clarimón and Lleó2017; Illán-Gala et al., Reference Illán-Gala, Lleo, Karydas, Staffaroni, Zetterberg, Sivasankaran and Rojas2021). In the current study, the cluster observed in the right hemisphere was located mainly in the fusiform area and in the left hemisphere, the most prominent cluster was in the inferior temporal cortex. Reduced brain volume/CT of these areas in AN has been repeatedly reported (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022; Bernardoni et al., Reference Bernardoni, King, Geisler, Stein, Jaite, Nätsch and Ehrlich2016; Brooks et al., Reference Brooks, Barker, O'Daly, Brammer, Williams, Benedict and Campbell2011; Zhang et al., Reference Zhang, Wang, Su, Kemp, Yang, Su and Gong2018) and also functional alterations have been observed (McAdams et al., Reference McAdams, Jeon-Slaughter, Evans, Lohrenz, Montague and Krawczyk2016; Phillipou et al., Reference Phillipou, Abel, Castle, Hughes, Gurvich, Nibbs and Rossell2015; Romero Frausto et al., Reference Romero Frausto, Roesmann, Klinkenberg, Rehbein, Föcker, Romer and Wessing2021; Suda et al., Reference Suda, Brooks, Giampietro, Friederich, Uher, Brammer and Treasure2013; Uher et al., Reference Uher, Murphy, Friederich, Dalgleish, Brammer, Giampietro and Treasure2005; Vocks, Herpertz, Rosenberger, Senf, & Gizewski, Reference Vocks, Herpertz, Rosenberger, Senf and Gizewski2011).
Taken together with our finding, these results suggest that the temporal lobe, especially the right fusiform gyrus, might be particularly affected by neuronal-injury-related structural brain alterations occurring in acute AN. However, the present results only allow speculations about the reason why NF-L is associated with CT in exactly these temporal areas. Both the inferior temporal cortex and the fusiform gyrus play a role in visual tasks such as object, face, and body perception (Conway, Reference Conway2018; Miyashita, Reference Miyashita1993; Peelen & Downing, Reference Peelen and Downing2005; Weiner & Zilles, Reference Weiner and Zilles2016). Alexithymic traits are a core feature of AN (Gramaglia, Gambaro, & Zeppegno, Reference Gramaglia, Gambaro and Zeppegno2020) and some studies report altered brain activation patterns in AN in response to emotional face stimuli, e.g. in the fusiform gyrus (Fonville, Giampietro, Surguladze, Williams, & Tchanturia, Reference Fonville, Giampietro, Surguladze, Williams and Tchanturia2014; Lulé, Müller, Fladung, Uttner, & Schulze, Reference Lulé, Müller, Fladung, Uttner and Schulze2021) or increased activation in response to own face stimuli (McAdams et al., Reference McAdams, Jeon-Slaughter, Evans, Lohrenz, Montague and Krawczyk2016; Phillipou et al., Reference Phillipou, Abel, Castle, Hughes, Gurvich, Nibbs and Rossell2015). Also for body perception tasks, altered activation of the fusiform gyrus in AN has been reported (Suda et al., Reference Suda, Brooks, Giampietro, Friederich, Uher, Brammer and Treasure2013; Uher et al., Reference Uher, Murphy, Friederich, Dalgleish, Brammer, Giampietro and Treasure2005). An alternative explanation could however be that the effect of axonal damage seen as an association of NF-L with CT is widespread (as is the effect of cortical thinning) and that because of relatively small effect sizes of NF-L elevations in AN we might have been able to observe it only in small clusters. Other small significant clusters, in which NF-L was associated with cortical thinning in AN, were found in several brain regions including e.g. frontal and parietal regions and the insula. However, due to the small extent of these clusters and their distributed localization, further studies replicating these results are needed to allow reliable interpretations of their exact localization.
Besides the contribution of the present results to hypothetical explanations of the neurobiological mechanisms underlying brain structural alterations in acute AN, they could potentially also help future research in identifying targets for the development of new therapeutic interventions. Such potential interventions could include neuroprotective pharmacological agents mitigating the drastic consequences of undernutrition on brain structure (Frank, Reference Frank2020; Hellerhoff et al., Reference Hellerhoff, King, Tam, Pauligk, Seidel, Geisler and Ehrlich2021; Robertson et al., Reference Robertson, Coronado, Sethi, Berk and Dodd2019). Another interesting future research target would be the question whether markers such as NF-L might be associated with the clinical outcome (e.g. with therapy-induced weight gain, cognitive functions, long term outcome etc.) in AN. In multiple sclerosis, for instance, NFL levels predict the progression of the disease and can predict treatment response (Kapoor et al., Reference Kapoor, Smith, Allegretta, Arnold, Carroll, Comabella and Fox2020). If similar effects were seen in AN, NF-L could have a potential to become a low cost and minimally invasive marker for how much the brain has been affected by this devastating illness. This in turn could be helpful in understanding consequences of the brain alterations e.g. on a cognitive level and integrating this knowledge into therapeutic concepts.
Our hypothesis of an association of the longitudinal decrease in NF-L levels with the increase in CT was not supported by the data. This might be because NF-L is released into the blood stream upon axonal injury (Gaetani et al., Reference Gaetani, Blennow, Calabresi, Di Filippo, Parnetti and Zetterberg2019) and is thus mostly considered a damage marker rather than a marker for repair processes. Also, tau protein as well as GFAP was not associated with CT in our sample. This finding, however, might also be due to missing statistical power, since the effect sizes of the increases in tau protein and GFAP in acAN-TP1 compared to HC were smaller than for NF-L.
The findings of our study have to be considered in the light of some limitations. First of all, our sample included only female, mostly adolescent participants of mainly European ethnicity. The effects seen might thus not generalize to adult, male, or more chronic patient populations or to other ethnicities. For example, the adolescent brain might be particularly vulnerable due to ongoing developmental effects and also the brain damage marker levels could be influenced by maturational processes such as ongoing myelination, synaptic pruning, etc. (Casey, Jones, & Hare, Reference Casey, Jones and Hare2008; Giedd, Reference Giedd2008). It also has to be taken into account, that pubertal status might have influenced the results but was not controlled for. Future studies should assess pubertal stage where possible. Second, we measured damage marker levels peripherally in blood samples. Therefore, factors like the integrity of the blood-brain barrier could influence the measured marker concentrations (Nilsson et al., Reference Nilsson, Millischer, Karrenbauer, Juréus, Salehi, Norring and Landén2019). On the other hand, this method has the advantage of being less invasive than CSF sampling. Furthermore, we attempted to differentiate between axonal and astroglial damage processes by using three different protein markers.
In the present study, we found associations of serum concentrations of the neuro-axonal marker NF-L in acAN with CT in several regions of both brain hemispheres, predominantly in the bilateral temporal lobe. This finding, together with the recent results from virtual histology and connectivity analyses of CT changes (Bahnsen et al., Reference Bahnsen, Bernardoni, King, Geisler, Weidner, Roessner and Ehrlich2022), amplifies our understanding of the biological mechanisms underlying the drastic structural brain changes in AN. Future research will elucidate whether NF-L might serve as a marker for monitoring brain alterations in acute AN potentially supporting the development of personalized therapeutic concepts.
Supplementary material
The supplementary material for this article can be found at https://doi.org/10.1017/S0033291723000387.
Acknowledgements
The authors would like to thank the Center for Information Services and High Performance Computing (ZIH) at TU Dresden for generous allocations of computer time, all associated research assistants for their help with participant recruitment and data collection and all participants for their time and cooperation.
Financial support
This work was supported by the Deutsche Forschungsgemeinschaft (SE; grant numbers EH 367/5-1, EH 367/7-1 and SFB 940/2), the Swiss Anorexia Nervosa Foundation (SE), and the B. Braun Foundation (SE).
Conflict of interest
V. Roessner has received lecture honoraria from Infectopharm and Medice companies. He has carried out clinical trials in cooperation with Servier and Shire Pharmaceuticals/Takeda companies. K. Akgün received personal compensation from Novartis, Biogen Idec, Teva, Sanofi, and Roche for consulting service. T. Ziemssen received personal compensation from Biogen, Bayer, Celgene, Novartis, Roche, Sanofi, Teva for consulting services. He received additional financial support for research activities from Bayer, Biogen, Novartis, Teva, and Sanofi. I. Hellerhoff, F. Bernardoni, K. Bahnsen, J. A. King, A. Doose, S. Pauligk, M. Mannigel, K. Gramatke, and S. Ehrlich declare no competing interests. Funding sources were not involved in the design of the study, the collection and analysis of data, or the decision to publish.