Abstract

Alcohol dependence (AD) is a condition of alcohol use disorder in which the drinkers frequently develop emotional symptoms associated with a continuous alcohol intake. AD characterized by metabolic disturbances can be quantitatively analyzed by metabolomics to identify the alterations in metabolic pathways. This study aimed to: i) compare the plasma metabolic profiling between healthy and AD-diagnosed individuals to reveal the altered metabolic profiles in AD, and ii) identify potential biological correlates of alcohol-dependent inpatients based on metabolomics and interpretable machine learning. Plasma samples were obtained from healthy (n = 42) and AD-diagnosed individuals (n = 43). The plasma metabolic differences between them were investigated using liquid chromatography-tandem mass spectrometry (AB SCIEX® QTRAP 4500 system) in different electrospray ionization modes with scheduled multiple reaction monitoring scans. In total, 59 and 52 compounds were semi-quantitatively measured in positive and negative ionization modes, respectively. In addition, 39 metabolites were identified as important variables to contribute to the classifications using an orthogonal partial least squares-discriminant analysis (OPLS-DA) (VIP > 1) and also significantly different between healthy and AD-diagnosed individuals using univariate analysis (p-value < 0.05 and false discovery rate < 0.05). Among the identified metabolites, indole-3-carboxylic acid, quinolinic acid, hydroxy-tryptophan, and serotonin were involved in the tryptophan metabolism along the indole, kynurenine, and serotonin pathways. Metabolic pathway analysis revealed significant changes or imbalances in alanine, aspartate, glutamate metabolism, which was possibly the main altered pathway related to AD. Tryptophan metabolism interactively influenced other metabolic pathways, such as nicotinate and nicotinamide metabolism. Furthermore, among the OPLS-DA-identified metabolites, normetanephrine and ascorbic acid were demonstrated as suitable biological correlates of AD inpatients from our model using an interpretable, supervised decision tree classifier algorithm. These findings indicate that the discriminatory metabolic profiles between healthy and AD-diagnosed individuals may benefit researchers in illustrating the underlying molecular mechanisms of AD. This study also highlights the approach of combining metabolomics and interpretable machine learning as a valuable tool to uncover potential biological correlates. Future studies should focus on the global analysis of the possible roles of these differential metabolites and disordered metabolic pathways in the pathophysiology of AD.

Highlights

  • Alcohol use disorder (AUD), as described in the fifth edition of the Diagnostic and Statistical Manual of Mental Disorders (DSM–5), is a chronic, relapsing brain disorder including alcohol abuse and alcohol dependence (AD) (Takahashi et al, 2017)

  • Normetanephrine and ascorbic acid were demonstrated as suitable biological correlates of AD patients based on an interpretable decision tree classifier model

  • This study comprehensively analyzed plasma metabolic profiling and potential biological correlates via the integration of metabolomics and interpretable machine learning

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Summary

Introduction

Alcohol use disorder (AUD), as described in the fifth edition of the Diagnostic and Statistical Manual of Mental Disorders (DSM–5), is a chronic, relapsing brain disorder including alcohol abuse and alcohol dependence (AD) (Takahashi et al, 2017). AUD presents a potential public health crisis worldwide. According to the global status report on alcohol and health 2018 (World Health Organization, 2018), about three million deaths worldwide and 132.6 million disability-adjusted life years (DALYs) were attributable to the harmful use of alcohol in 2016. AD can induce psychiatric comorbidity, including depressive and anxiety disorders, and, the comorbid psychiatric disorders can aggravate the severity of alcohol use patterns (Fein, 2015)

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