4.7 Article

Identifying Alcohol Use Disorder With Resting State Functional Magnetic Resonance Imaging Data: A Comparison Among Machine Learning Classifiers

Journal

FRONTIERS IN PSYCHOLOGY
Volume 13, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fpsyg.2022.867067

Keywords

alcohol use disorder (AUD); functional network connectivity (FNC); fMRI; machine learning classifiers; resting state

Funding

  1. NSF [R01DA049238, 2112455]
  2. Div. of Equity for Excellence in STEM
  3. Directorate for STEM Education [2112455] Funding Source: National Science Foundation

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Alcohol use disorder (AUD) is a significant burden on society, but its detection and assessment are challenging. Recent studies have shown that machine learning algorithms can be effective tools in studying and detecting AUD. This study used control samples without comorbid substance use to evaluate the performance of commonly used machine learning classifiers in detecting AUD using resting state functional network connectivity data derived from independent component analysis.
Alcohol use disorder (AUD) is a burden to society creating social and health problems. Detection of AUD and its effects on the brain are difficult to assess. This problem is enhanced by the comorbid use of other substances such as nicotine that has been present in previous studies. Recent machine learning algorithms have raised the attention of researchers as a useful tool in studying and detecting AUD. This work uses AUD and controls samples free of any other substance use to assess the performance of a set of commonly used machine learning classifiers detecting AUD from resting state functional network connectivity (rsFNC) derived from independent component analysis. The cohort used included 51 alcohol dependent subjects and 51 control subjects. Despite alcohol, none of the 102 subjects reported use of nicotine, cannabis or any other dependence or habit formation substance. Classification features consisted of whole brain rsFNC estimates undergoing a feature selection process using a random forest approach. Features were then fed to 10 different machine learning classifiers to be evaluated based on their classification performance. A neural network classifier showed the highest performance with an area under the curve (AUC) of 0.79. Other good performers with similar AUC scores were logistic regression, nearest neighbor, and support vector machine classifiers. The worst results were obtained with Gaussian process and quadratic discriminant analysis. The feature selection outcome pointed to functional connections between visual, sensorimotor, executive control, reward, and salience networks as the most relevant for classification. We conclude that AUD can be identified using machine learning classifiers in the absence of nicotine comorbidity.

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