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Association between nutritional status indices and non-alcoholic fatty liver disease in older adults: insights from the National Health and Nutrition Examination Survey 2017–2018

Published online by Cambridge University Press:  31 October 2024

Haisheng Chai
Affiliation:
Department of Hepatology, Yueyang Integrated Chinese and Western Medicine Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, People’s Republic of China
Sicheng Gao
Affiliation:
Department of Hepatology, Yueyang Integrated Chinese and Western Medicine Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, People’s Republic of China
Yaoyao Dai
Affiliation:
Department of Hepatology, Yueyang Integrated Chinese and Western Medicine Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, People’s Republic of China
Jinhua Dai
Affiliation:
Department of Hepatology, Yueyang Integrated Chinese and Western Medicine Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, People’s Republic of China
Gang Zhao*
Affiliation:
Department of Hepatology, Yueyang Integrated Chinese and Western Medicine Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, People’s Republic of China
Junfeng Zhu*
Affiliation:
Department of Hepatology, Yueyang Integrated Chinese and Western Medicine Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai, People’s Republic of China
*
*Corresponding authors: Gang Zhao, email [email protected]; Junfeng Zhu, email [email protected]
*Corresponding authors: Gang Zhao, email [email protected]; Junfeng Zhu, email [email protected]
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Abstract

While previous studies have identified a relationship between dietary intake and the risk of non-alcoholic fatty liver disease (NAFLD), the influence of overall nutritional status on NAFLD development has not been thoroughly investigated. This study sought to explore the association between different nutritional status indicators and NAFLD among the older adults. Nutritional status was evaluated using controlling nutritional status (CONUT), prognostic nutritional index (PNI) and nutritional risk index (GNRI), while NAFLD was identified based on a controlled attenuation parameter ≥ 285 dB/m, measured using transient elastography. The analysis included multivariate regression, receiver operating characteristic analysis, eXtreme Gradient Boosting and subgroup analysis to investigate the relationships between nutritional status indices and NAFLD. The study enrolled 1409 participants for the main analysis, with an NAFLD prevalence of 44·7 %. After accounting for potential confounders, a positive association between PNI and NAFLD was observed. Participants in the third and fourth quartiles of PNI showed increased odds of NAFLD compared with the lowest quartile (Q3: OR = 1·45, 95 % CI (1·03, 2·05); Q4: OR = 2·27, 95 % CI (1·59, 3·24)). Similarly, higher GNRI quartiles were significantly associated with greater odds of NAFLD (Q4 v. Q1: aOR = 1·84; 95 % CI (1·28, 2·65)). Conversely, higher CONUT values were linked to a reduced prevalence of NAFLD (OR = 0·65, 95 % CI (0·48, 0·87)). This study highlights that suboptimal nutritional status, indicating overnutrition as evaluated by PNI, GNRI and CONUT, is positively linked with the risk of NAFLD in individuals aged 50 years and above.

Type
Research Article
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of The Nutrition Society

Non-alcoholic fatty liver disease (NAFLD), the most common liver disorder linked to obesity, is projected to become the leading cause of liver transplants in the USA in the near future(Reference Chalasani, Younossi and Lavine1). Current estimates suggest that NAFLD affects between 34·1 % and 56·7 % of the American adult population(Reference Younossi, Tampi and Priyadarshini2). The condition is characterised by abnormal accumulation of hepatic lipids, hepatocellular injury, necroinflammation and fibrosis, which may rapidly progress to cirrhosis and its subsequent complications(Reference Altajar and Baffy3). Particularly, patients with advanced liver fibrosis due to NAFLD face a heightened risk of severe outcomes, including hepatocellular carcinoma, chronic liver failure and CVD(Reference Peng, Wang and Wang4). Identifying and modifying risk factors for NAFLD is crucial for preventing or mitigating its progression, especially in the absence of effective pharmacological treatments(5).

Previous studies indicate that NAFLD prevention or treatment through intervention programmes might be influenced by behavioural factors, such as insufficient physical activity, low fitness levels (e.g. reduced muscle mass and grip strength), obesity and poor dietary habits(Reference Chen, Fan and Lv6). Increasingly, nutritional status is being recognised as a constellation of modifiable risk factors(Reference George, Forsyth and Itsiopoulos7). Malnutrition, which can result from both undernutrition and overnutrition, is a widespread concern with significant negative effects on clinical and physical health(Reference Cederholm, Jensen and Correia8) and is particularly prevalent among the older adults(Reference Zhang and Edwards9). Epidemiological studies consistently link higher fat mass (FM) and lean body mass (LBM) with NAFLD, common indicator of nutritional status, with increased NAFLD prevalence in general populations, who are also at an elevated risk of disease progression(Reference Xing, Guan and Zhang10).

Nonetheless, the connection between poor nutritional status and the risk of NAFLD has not been thoroughly investigated(Reference Chen, Fan and Yang11). Recently, there has been an emergence of indices such as the controlling nutritional status (CONUT), geriatric nutritional risk index (GNRI) and prognostic nutritional index (PNI), which have been validated to assess the nutritional status of hospitalised patients and tumour patients. These indices encompass aspects of immunonutrition, including immunological and nutritional status, as well as chronic inflammation(Reference Ignacio de Ulíbarri, González-Madroño and de Villar12). These indicators have been demonstrated to act as prognostic markers in a range of conditions, including cancer, autoimmune diseases and heart disease(Reference Ning, Pan and Guo13). Given that NAFLD is associated with low-grade inflammation, malnutrition and immunological dysfunction(Reference Bauer, Littlejohn and Ayala14), the potential links between these factors and NAFLD prevalence warrant investigation.

Given that dietary patterns adequately reflect the synergistic effects of various food groups or nutrients on health outcomes, recent research and systematic reviews suggest that dietary patterns, particularly Western diets, are associated with increased risks of chronic liver diseases such as NAFLD, cirrhosis and liver cancer(Reference Pan, Hu and Pang15), while Mediterranean and prudent dietary patterns are linked to reduced risks of cirrhosis(Reference Pan, Hu and Pang15). Therefore, examining comprehensive dietary patterns and nutritional status could provide further understanding of the relationship between nutrition and NAFLD(Reference Katsiki, Stoian and Rizzo16). In this study, our goal is to clarify the connection between nutritional status indicators and the prevalence of NAFLD in the USA population. We also aim to assess the predictive value of these indicators for the disease, representing a novel approach in this area of research.

Materials and methods

Study samples

NHANES is a cross-sectional survey conducted nationwide by the Centers for Disease Control and Prevention to evaluate the health and nutritional status of non-institutionalised individuals in the USA. Using a sophisticated, multistage probability sampling technique, NHANES deliberately oversamples specific demographic groups that may be more vulnerable to health problems. This survey enrolls approximately 5000 participants each year. Although data collection is yearly, findings are disseminated biennially. Participants in NHANES complete an extensive questionnaire and provide urine and blood samples during a medical examination in a mobile clinic. This study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects/patients were approved by the Ethical Review Board of the National Center for Health Statistics. Written informed consent was obtained from all subjects(Reference Huang17).

This study utilised data from the 2017–2018 NHANES cycle and focused on adults aged 50 years or older who had undergone vibration-controlled transient elastography, a measure of liver stiffness indicating advanced liver fibrosis. Vibration-controlled transient elastography data were available exclusively in the 2017–2018 NHANES cycle. Exclusion criteria included pregnant women, individuals with a history of excessive alcohol consumption (≥ 10 g or 1 drink/day for females, ≥ 20 g or 2 drinks/day for males), those with implausible energy intake (< 600 or > 3500 kcal/d for women, < 800 or > 4200 kcal/d for men)(Reference Huang17), participants with incomplete dietary intake data or only one dietary recall and those lacking data on relevant demographic and clinical variables. The final sample comprised 1409 older adults who met all inclusion criteria and provided complete data for analysis. A flow chart detailing the study’s methodology is available in Fig. 1.

Fig. 1. Flow chart illustrating selection of the study population in NHANES from 2017 to 2018. NHANES, National Health and Nutrition Examination Survey.

Measurements and definition of non-alcoholic fatty liver disease

During the 2017–2018 NHANES cycle, participants aged 12 years and older underwent transient elastography exams. Detailed methodology of the NHANES transient elastography protocol is documented elsewhere(Reference Vilar-Gomez, Vuppalanchi and Mladenovic18). Liver stiffness and controlled attenuation parameter scores were assessed using the FibroScan® model 502 V2 Touch (Echosens). A valid assessment necessitated at least ten reliable stiffness measurements, a fasting period of at least 3 h and a liver stiffness interquartile range/median of ≤ 30 %. Hepatic steatosis was diagnosed based on a controlled attenuation parameter threshold of 285 dB/m, which demonstrated optimal diagnostic performance with a specificity of 77 % and a sensitivity of 80 %(Reference Siddiqui, Vuppalanchi and Van Natta19).

Nutritional status evaluations

This research utilised three distinct indices to assess the nutritional status of the participants based on based on blood sample testing data: GNRI, PNI and CONUT, as referenced in previous studies(Reference Ignacio de Ulíbarri, González-Madroño and de Villar12). The detailed formulas for each of these indices can be found in online Supplementary Table S1. Both the GNRI and PNI indices were divided into quartiles. The first quartile represented the lowest score, indicating a lower risk of overnutrition, while the fourth quartile, with the highest score, suggested an increased risk of overnutrition. In contrast, the CONUT index was categorised using a clinically established cut-off from prior research(Reference Yamaura, Arizumi and Maruo20), dividing participants into two groups: a low CONUT group (< 2 scores), indicating a higher risk of overnutrition, and a high CONUT group (≥ 2 scores), denoting a lower risk.

Covariates

The selection of covariates for this study was guided by existing literature(Reference Pan, Hu and Pang15) and a pre-established directed acyclic graph (online Supplementary Fig. S1). The demographic and clinical variables included were age, sex (male, female), racial/ethnic background (Mexican American, Other Hispanic, Non-Hispanic White, Non-Hispanic Black and Other Race), educational attainment (less than high school, high school or equivalent, more than college) and BMI (categorised as normal weight, overweight, and obese). Other factors considered were the poverty:income ratio (PIR) (< 1·0, 1·0–3·0, > 3·0), smoking status (non-smoker, former smoker, current smoker), physical activity (yes, no), hypertension (yes, no), diabetes (yes, no), high cholesterol (yes, no) and total energy intake. Smoking status was classified into never smokers (less than 100 cigarettes lifetime), current smokers (more than 100 cigarettes lifetime) and former smokers (more than 100 cigarettes lifetime and no longer smoking). Physical activity was assessed based on engagement in vigorous or moderate recreational activities(Reference Huang17). Total energy intake was calculated as the average from two dietary recall interviews. Participants’ food intake data were collected through two 24-hour dietary recall interviews, which were conducted in person 3–10 d later and by telephone. Dietary nutrition and energy intake were estimated using the Food and Nutrition Database for Dietary Studies. Interviews were conducted by trained interviewers at a mobile testing center. Interviewers used the USA Department of Agriculture automated multichannel approach to obtain more accurate and complete data for the NHANES study(Reference Peng, Chen and Shen21). BMI was categorised into < 25·0 kg/m2 (normal weight), 25·0–30·0 kg/m2 (overweight) and ≥ 30·0 kg/m2 (obese). Hypertension, high cholesterol and diabetes status were determined through self-reported physician diagnosis.

Statistical analysis

The baseline characteristic analysis categorised participants into two groups based on the presence or absence of NAFLD. Categorical data were presented as frequencies and percentages, while continuous data were described using median values and interquartile ranges (P25–P75). Continuous data analysis utilised t tests or Mann–Whitney U tests, while categorical data analysis employed χ 2 tests. The study investigated the associations between nutritional status indicators (PNI, GNRI and CONUT) and the likelihood of NAFLD using both univariate and multivariate logistic regression models. Participants were divided into quartiles based on their GNRI and PNI scores, with the first quartile serving as a reference for comparison. OR and 95 % CI were calculated to assess the prevalence of NAFLD across different quartiles. The study employed multivariate logistic regression models with progressive adjustments: Model 1 adjusted for age and sex, model 2 included additional adjustments for race, PIR, BMI, hypertension, diabetes, high cholesterol and daily energy intake, and model 3 further adjusted for smoking status and physical activity levels.

Restricted cubic spline analysis was used to explore the nonlinear relationships between nutritional status indices and NAFLD. Knots were placed at the 5th, 25th, 50th, 75th and 95th percentiles. A likelihood ratio test was conducted to assess the nonlinearity of these relationships. The diagnostic performance of PNI, GNRI and CONUT for NAFLD was evaluated using the area under the receiver operating characteristic curve (AUROC). To address potential collinearity among variables, an eXtreme gradient boosting (XGBoost) model was applied to assess the importance of nutritional status indices. XGBoost, an optimised gradient boosting library, is known for its efficiency and flexibility(Reference Zhang, Zhang and Shi22). All 1409 participants were included in the training dataset. A random 30 % subset of the data was then designated as the prediction set to evaluate the model’s predictive accuracy. Variable selection in the XGBoost model was informed by variance inflation factor (VIF) and Relief-F analysis(Reference Ibrahim, Ridwan and Muhammed23). Shapley Additive exPlanations (SHAP) values were used to identify and visualise the key features influencing NAFLD. These values indicate the importance of individual predictors in determining the model outcome(Reference Lundberg, Erion and Chen24). The model settings included a maximum of fifty iterations, a tree depth of 10 and a learning rate (eta) of 0·1, with cross-validation at each boosting iteration to prevent overfitting.

Stratified analyses were conducted to further examine the relationship between NAFLD and various demographic and health-related factors. These factors included age, sex, race, education level, family income:poverty ratio, smoking status, physical activity, BMI, hypertension, high cholesterol and diabetes. Interactions between NAFLD and these factors were assessed using P values for interaction terms. All statistical analyses were performed using R version 4·2·1 (R Foundation for Statistical Computing), with a two-sided P value of < 0·05 considered statistically significant.

Results

Population characteristics

The study included 1409 participants, with 630 undergoing liver ultrasound transient elastography, yielding an NAFLD prevalence of 44·7 %. The demographic and clinical characteristics are detailed in Table 1. The median (P25–P75) age of participants was 63·0 (58·0–71·0) years, distributed almost evenly between males (48·6 %) and females (51·4 %). The predominant racial group was non-Hispanic White (40·4 %), and the majority were never smokers (55·0 %). The median (P25–P75) BMI was 28·9 (25·6, 33·6) kg/m2. Individuals with NAFLD were generally younger (mean age: 64·0 v. 65·0 years), predominantly male (53·3 % v. 44·8 %) and more likely to be classified as obese (62·5 % v. 29·4 %) compared with those without NAFLD. Moreover, the NAFLD group exhibited higher prevalence rates of chronic conditions such as hypertension, diabetes and high cholesterol. Physical activity levels were lower in the NAFLD group. Notably, lymphocyte counts were significantly higher in NAFLD participants (2·10 (1·70, 2·70) × 109/l) compared with those without NAFLD (1·90 (1·50, 2·40) × 109/l) (Table 1).

Table 1. Characteristics of participants with or without NAFLD in NHANES from 2017 to 2018

NAFLD, non-alcoholic fatty liver disease; NHANES, National Health and Nutrition Examination Survey.

Continues variables displayed as median (P25–P75) and categorical variables are displayed as numbers (percentages).

* Mann–Whitney U Test or χ2 test where appropriate.

Association of nutritional indices with non-alcoholic fatty liver disease prevalence

The study applied nutritional indices including CONUT (categorised into ‘low risk’ < 2 and ‘high risk’ ≥ 2) and quartiles for PNI and GNRI to evaluate their association with NAFLD. Logistic regression and dose–response analyses were conducted to explore these relationships. Adjusting for covariates, PNI showed a positive association with NAFLD; individuals in the third and fourth quartiles of PNI had higher odds of NAFLD compared with the lowest quartile (Q3: OR = 1·45, 95 % CI (1·03, 2·05); Q4: OR = 2·27, 95 % CI (1·59, 3·24)). Similarly, being in the higher quartiles of GNRI was significantly associated with increased odds of NAFLD (Q4 v. Q1: aOR = 1·84; 95 % CI (1·28, 2·65)). Conversely, higher CONUT scores were linked to a decreased prevalence of NAFLD (OR = 0·65, 95 % CI (0·48, 0·87)) (Table 2). Multivariable adjustment in Model 3 did not reveal a significant nonlinear relationship between nutritional indices and NAFLD in restricted cubic spline regression (P overall < 0·01; P nonlinear > 0·05) (online Supplementary Fig. S2).

Table 2. Logistic regression analysis on the association between the nutritional indices and NAFLD

NAFLD, non-alcoholic fatty liver disease; PNI, prognostic nutritional index; GNRI, geriatric nutritional risk index; COUNT, controlling nutritional status; Q1, quartile 1; Q2, quartile 2; Q3, quartile 3; Q4, quartile 4; PIR, poverty:income ratio.

P value for trend calculated treating the nutritional indices (quartile) as a continuous variable.

Model 1: Adjusted for age and sex.

Model 2: Model 1 + race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake.

Model 3: Model 2 + smoking status and physical activity.

Receiver operating characteristic and eXtreme gradient boosting analysis of the importance of nutritional indices for non-alcoholic fatty liver disease

The receiver operating characteristic analysis was performed to assess the predictive ability of the nutritional indices for NAFLD. The area under the receiver operating characteristic curve (AUROC) for the PNI, when combined with demographic and clinical variables, was 0·774 (95 % CI: 0·751, 0·796), demonstrating a sensitivity of 0·746 and a specificity of 0·655. The CONUT index, in conjunction with demographic and clinical variables, yielded an AUROC of 0·767 (95 % CI: 0·744, 0·789), with a sensitivity of 0·824 and a specificity of 0·571. Additionally, the GNRI, alongside demographic and clinical variables, achieved an AUROC of 0·770 (95 % CI: 0·747, 0·792), with a sensitivity of 0·711 and a specificity of 0·684 (Fig. 2 and online Supplementary Table S2).

Fig. 2. The AUROC of nutritional indices for NAFLD. AUROC/AUC, area under the receiver operating characteristics; A stands for PNI; B stands for COUNT; C stands for GNRI. AUROC, area under the receiver operating characteristic curve; CONUT, controlling nutritional status; GNRI, geriatric nutritional risk index; NAFLD, non-alcoholic fatty liver disease; PIR, PNI, prognostic nutritional index. All models were adjusted for race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake, smoking status and physical activity.

To demystify the predictive mechanism of the XGBoost model for NAFLD, we utilised SHAP values to illustrate the impact of each nutritional index on the model. The SHAP summary plot indicated that the nutritional indices (PNI, GNRI and CONUT) had SHAP values of 0·036, 0·025 and 0·012, respectively, highlighting their significance in the model (Fig. 3(a)). Further, the SHAP dependency analysis provided insight into how individual features influenced the XGBoost model’s predictions (Fig. 3(b)), indicating that higher SHAP values of a feature corresponded to an increased likelihood of NAFLD.

Fig. 3. The XGBoost algorithm determines the relative importance of each variable on NAFLD and assigns a variable importance score to each variable. (A) Importance matrix and SHAP summary plot showing nutritional indices and baseline characteristics contributing to the XGBoost model. The X-axis represents the importance score, which is the relative importance of variables used to distribute the data; the Y-axis represents the variables chosen. (B) SHAP summary plot for the gradient boosted trees trained on the NAFLD prediction task. The colours represent feature values for numeric features: red for larger values and blue for smaller. The thickness of the line comprised of individual dots is determined by the number of examples at a given value. All models were adjusted for race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake, smoking status and physical activity. CONUT, controlling nutritional status; GNRI, geriatric nutritional risk index; HCL, high cholesterol; NAFLD, non-alcoholic fatty liver disease; PIR, poverty-to-income ratio; PNI, prognostic nutritional index; SHAP, Shapley Additive exPlanations; XGBoost, eXtreme gradient boosting.

Stratified analyses

A significant interaction was observed between the PNI and race regarding NAFLD presence (P for interaction = 0·015) (Fig. 4). Specifically, in the Mexican American subgroup compared with the reference group, the OR and 95 % CI for NAFLD in the fourth quartile were 1·21 (0·46, 3·24), while in the Non-Hispanic Black subgroup, the OR and 95 % CI were 1·91 (1·04, 3·52). A significant interaction was also identified between the GNRI score and hypertension in NAFLD incidence (P for interaction = 0·015), with a stronger association between GNRI score and NAFLD prevalence observed in hypertensive individuals compared with those without hypertension. Additionally, a notable interaction between BMI and GNRI in NAFLD incidence was found (P for interaction = 0·008). However, there were no significant interactions between nutritional indices and other stratified variables regarding NAFLD presence.

Fig. 4. Associations of nutritional indices with NAFLD in various subgroups in NHANES 2017–2018. (A): PNI; (B): CONUT; (3) GNRI; the colours red, green and blue stand for positive, null and negative significant association, respectively. CONUT, controlling nutritional status; GNRI, geriatric nutritional risk index; NAFLD, nonalcoholic fatty liver disease; NHANES, National Health and Nutrition Examination Survey; PNI, prognostic nutritional index. All models were adjusted for race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake, smoking status and physical activity.

Discussion

To our knowledge, this is the first study to investigate the independent associations of various nutritional status indices with NAFLD in a nationally representative population of individuals aged over 50 years. Our analysis, after adjusting for potential confounders, indicates that relatively poorer nutritional status, as assessed by the PNI or GNRI, is significantly associated with the prevalence of NAFLD. Notably, a higher CONUT score exhibited an independent protective effect against the incidence of NAFLD. Further substantiation through receiver operating characteristic curve and XGBoost analyses underscores the significance of these nutritional indices in relation to NAFLD. Stratified analyses revealed that the associations varied across different subgroups based on race, BMI and hypertension, highlighting the nuanced nature of these relationships.

The prevalence of NAFLD and the critical need for actionable strategies to curb its progression underscore the importance of dietary quality as a pivotal public health focus. Prior research has established a robust connection between nutritional status and NAFLD. For instance, a study leveraging the NHANES dataset with 10 052 participants showed a strong link between nutrition-related dietary inflammatory indices and NAFLD(Reference Petermann-Rocha, Wirth and Boonpor25). Traditionally, investigations into the nexus between nutritional status and NAFLD have primarily centered on diet-related indicators. A 2021 study, for example, delved into the relationship between dietary protein levels and NAFLD incidence(Reference Charatcharoenwitthaya, Tansakul and Chaiyasoot26). Yet, existing data suggest that dietary variations alone might not fully account for changes in physiological markers in individuals with NAFLD. While some studies propose that a high-protein diet could reduce liver fat irrespective of the protein source, others indicate that an increase in dietary protein, especially certain amino acids, could exacerbate liver fat accumulation and disease severity(Reference Ruiz-Margáin, Macías-Rodríguez and Ríos-Torres27). Hence, integrating nutritional and inflammatory assessment parameters with physiological indices like serum albumin and lymphocyte count might offer a more direct reflection of the link between nutritional status and NAFLD, enhancing the reliability of the findings(Reference Peng, Chen and Shen21). PNI, CONUT and GNRI are widely recognised in clinical settings for evaluating nutritional status and predicting outcomes in cancer and various chronic conditions such as hypertension(Reference Shiroma, Tanabe and Takiguchi28). Our study corroborates the significant relationship between these indices and NAFLD, contributing valuable insights into the intricate interplay between nutrition and liver health.

In this study, all three nutritional status indicators – PNI, GNRI and CONUT – incorporate serum albumin levels in their assessments, reflecting the established role of albumin as an indicator of nutritional status, particularly in post-surgical and post-chemotherapy patients(Reference Zhu, Chen and Kong29). Numerous studies have identified decreased serum albumin levels as a risk factor for NAFLD(Reference Takahashi, Kawanaka and Fujii30). Albumin performs critical physiological functions, including immunomodulation, endothelial stabilisation and antioxidant and anti-inflammatory effects, and it interacts with various drugs, toxins and molecules. Typically, low albumin levels are indicative of malnutrition related to inflammation(Reference Eckart, Struja and Kutz31). The early detection of NAFLD is crucial; however, traditional biochemical markers like albumin levels and liver enzymes might not show significant changes in the initial stages of NAFLD, rendering them nearly indistinguishable from those in individuals without the disease(Reference Liu and Chien32). As the disease progresses to fibrosis and eventually cirrhosis, there is a marked reduction in liver function(Reference Roehlen, Crouchet and Baumert33). Notably, individuals with liver fibrosis or cirrhosis exhibit significantly lower serum albumin levels due to impaired hepatocyte function, nutritional deficiencies, malabsorption and other factors(Reference Di Stefano, Fiume and Domenicali34). This correlation was supported by a multicentre study revealing a significant negative relationship between serum albumin levels and liver fibrosis or cirrhosis complications, such as varices and hepatic encephalopathy. Moreover, conditions like cirrhosis not only diminish albumin synthesis but also induce specific changes in albumin structure and functionality. Serum albumin is another major component of the PNI and CONUT formulas, and the above observations may also partially explain the relationship between the nutritional status index and the prevalence of NAFLD in the present study. Future larger prospective studies as well as mechanistic studies are needed to elucidate the association.

The susceptibility to NAFLD is highly variable, influenced by a spectrum of factors, including environmental elements such as dietary habits and physical activity, as well as genetic and epigenetic risk factors(Reference Buzzetti, Pinzani and Tsochatzis35). The rise in living standards and shifts in dietary patterns have led to widespread excessive caloric intake and suboptimal nutritional habits, exacerbating the issue of global nutritional surplus(Reference Buyukdere and Akyol36). Nutritional surplus, a condition where energy intake surpasses the body’s requirements, leading to energy storage and fat accumulation, is a critical contributor to the onset and progression of NAFLD. Dietary influences play a significant role, where an excess caloric intake, particularly from diets rich in saturated fats and carbohydrates (characterised by higher PNI and GNRI scores and lower CONUT scores), is associated with NAFLD development(Reference Yki-Järvinen, Luukkonen and Hodson37). The potential mechanism might include the liver’s heightened metabolism of glucose and fats under excessive sugar and fat intake, resulting in hepatic fat accumulation(Reference Broadfield, Duarte and Schmieder38). This fat deposition induces cellular stress and inflammation, serving as a primary pathophysiological foundation for NAFLD(Reference Li, Wang and Liu39). Furthermore, chronic low-grade inflammation is crucial in the progression from NAFLD to more severe conditions like liver fibrosis and cirrhosis, damaging liver tissue and function through the activation of inflammatory pathways(Reference Milić, Lulić and Štimac40). Insulin resistance also plays a role by diminishing the liver’s and other tissues’ response to insulin, promoting fat accumulation in the liver and triggering inflammatory processes(Reference Ter Horst, Vatner and Zhang41). Genetic predispositions significantly influence NAFLD risk, with certain populations displaying higher genetic susceptibility, making them more prone to NAFLD even with lower body weights and healthier diets(Reference Flessa, Nasiri-Ansari and Kyrou42). In conclusion, nutritional surplus drives NAFLD pathogenesis through various mechanisms. Therefore, NAFLD prevention and treatment strategies should encompass comprehensive measures to control nutrient intake, ameliorate metabolic disorders and mitigate inflammatory responses(Reference Mascaró, Bouzas and Montemayor43), aiming to diminish NAFLD’s adverse impacts on both public and individual health.

The blood lymphocyte count, incorporated as a component of the nutritional status indices, exhibited a correlation with NAFLD prevalence in our study. Few studies have scrutinised the association between lymphocyte count and NAFLD(Reference Song, Guo and Li44). Earlier research has investigated the diagnostic utility of inflammatory indices as markers for NAFLD and its severity(Reference Valibeygi, Davoodi and Dehghan45). Nutritional intake may offer protection against NAFLD, independent of the diet type. Specifically, pro-inflammatory nutrients such as total, saturated and trans-fats may contribute to NAFLD pathogenesis by fostering low-grade systemic inflammation(Reference Monserrat-Mesquida, Quetglas-Llabrés and Bouzas46). Excessive consumption can lead to increased hepatic TAG deposition, triggering a cascade of metabolic disturbances including insulin resistance, hyperinsulinaemia, hepatic inflammation, oxidative stress, mitochondrial dysfunction, an imbalance in pro-inflammatory cytokines and fibrosis – all associated with NAFLD(Reference Wang, Chen and Chen47). Moreover, an unbalanced diet is a known risk factor for obesity, type 2 diabetes and metabolic syndrome, conditions intimately linked with NAFLD(Reference Montemayor, Mascaró and Ugarriza48).

To our knowledge, this study is pioneering in elucidating the impact of nutritional status on liver health by examining the association between nutritional indices and NAFLD incidence. Leveraging the capabilities of machine learning in clinical contexts, we employed the XGBoost model in conjunction with receiver operating characteristic curve analysis to substantiate the significance of nutritional status indices in predicting NAFLD, thereby enhancing the credibility of our results. At the same time, our study is comparable to the prevalence of NAFLD observed using other indicators of nutritional status (BMI, WC and body fat) or dietary quality indicators(Reference Chen, Fan and Sun49), suggesting that our findings are significantly representative. Nevertheless, our study has limitations. The cross-sectional design constrains our capacity to establish causal relationships. Moreover, dietary data were collected through 24-hour recalls, which may not accurately reflect long-term dietary habits. However, the dietary intake assessment tool used in NHANES has undergone extensive validation against dietary records and biomarkers, and we adjusted for socio-economic status, racial groups and other variables. What is more, given that previous studies have suggested that reduced serum albumin concentrations may also be due to hepatic dysfunction(Reference Chen, Fan and Sun49), there is a need to explore the association between nutritional indices of concern and varying degrees of fibrosis severity in studies with large population samples. Finally, certain factors potentially influencing nutritional status indices, like gastrointestinal diseases, were not included due to data unavailability(Reference Li, Li and Yang50). Further research is necessary to delve deeper into the nexus between nutritional status indices and NAFLD.

Conclusions

In conclusion, our findings indicate that poorer nutritional status, signifying overnutrition as gauged by PNI, GNRI and CONUT, is positively associated with NAFLD prevalence among individuals aged over 50 years. This suggests the potential to focus on screening for NAFLD among older adults with signs of overnutrition, incorporating them into early-stage clinical management. Enhancing overall nutritional status could reduce NAFLD prevalence. However, more extensive prospective studies are essential to determine if a causal relationship exists between nutritional status and NAFLD prevalence.

Acknowledgements

The authors thank the staff and the participants of the NHANES study for their valuable contributions.

This work was supported by grants from National Natural Science Foundation of China (82074386), National Natural Science Foundation of China (82305334), preclinical study of a new Chinese herbal medicine for the treatment of ascites of liver cirrhosis (spleen and kidney yang deficiency type) with the clinical formula of Qigui Xiaogu Cataplasm (No. 23S21900100), Traditional Chinese Medicine/Chinese and Western Medicine Advantage Specialty Construction Specialty for Department of Hepatology (No. YW(2023-2024)-01-03), Construction of special disease alliance of traditional Chinese medicine in East China area and municipal level, Shanghai special disease alliance of traditional Chinese medicine for liver cirrhosis ascites (water sickness) and Clinical Research Plan of SHDC (No. SHDC2020CR3095B).

H. C.: Conceptualisation and writing – original draft. S. G.: Methodology and software. Y. D.: Methodology, software, and writing – original draft. J. D.: Data curation and resources. G. Z.: Validation and supervision. J. Z.: Supervision, writing – review and editing and project administration.

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

This study involving human participants was rigorously evaluated and received the necessary approvals from the National Center for Health Statistics and the Institutional Review Board. Prior to participating in this study, all patients provided written consent after receiving comprehensive information about the purpose and procedures of the study.

The datasets generated and/or analysed during the current study are available in https://www.cdc.gov/nchs/nhanes/index.htm.

Supplementary material

For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S0007114524001442

Footnotes

These authors have contributed equally to this work.

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Figure 0

Fig. 1. Flow chart illustrating selection of the study population in NHANES from 2017 to 2018. NHANES, National Health and Nutrition Examination Survey.

Figure 1

Table 1. Characteristics of participants with or without NAFLD in NHANES from 2017 to 2018

Figure 2

Table 2. Logistic regression analysis on the association between the nutritional indices and NAFLD

Figure 3

Fig. 2. The AUROC of nutritional indices for NAFLD. AUROC/AUC, area under the receiver operating characteristics; A stands for PNI; B stands for COUNT; C stands for GNRI. AUROC, area under the receiver operating characteristic curve; CONUT, controlling nutritional status; GNRI, geriatric nutritional risk index; NAFLD, non-alcoholic fatty liver disease; PIR, PNI, prognostic nutritional index. All models were adjusted for race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake, smoking status and physical activity.

Figure 4

Fig. 3. The XGBoost algorithm determines the relative importance of each variable on NAFLD and assigns a variable importance score to each variable. (A) Importance matrix and SHAP summary plot showing nutritional indices and baseline characteristics contributing to the XGBoost model. The X-axis represents the importance score, which is the relative importance of variables used to distribute the data; the Y-axis represents the variables chosen. (B) SHAP summary plot for the gradient boosted trees trained on the NAFLD prediction task. The colours represent feature values for numeric features: red for larger values and blue for smaller. The thickness of the line comprised of individual dots is determined by the number of examples at a given value. All models were adjusted for race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake, smoking status and physical activity. CONUT, controlling nutritional status; GNRI, geriatric nutritional risk index; HCL, high cholesterol; NAFLD, non-alcoholic fatty liver disease; PIR, poverty-to-income ratio; PNI, prognostic nutritional index; SHAP, Shapley Additive exPlanations; XGBoost, eXtreme gradient boosting.

Figure 5

Fig. 4. Associations of nutritional indices with NAFLD in various subgroups in NHANES 2017–2018. (A): PNI; (B): CONUT; (3) GNRI; the colours red, green and blue stand for positive, null and negative significant association, respectively. CONUT, controlling nutritional status; GNRI, geriatric nutritional risk index; NAFLD, nonalcoholic fatty liver disease; NHANES, National Health and Nutrition Examination Survey; PNI, prognostic nutritional index. All models were adjusted for race, PIR, BMI, hypertension, diabetes, high cholesterol, total daily energy intake, smoking status and physical activity.

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