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Predicting Alcohol-Related Memory Problems in Older Adults: A Machine Learning Study with Multi-Domain Features

Authors :
Chella Kamarajan
Ashwini K. Pandey
David B. Chorlian
Jacquelyn L. Meyers
Sivan Kinreich
Gayathri Pandey
Stacey Subbie-Saenz de Viteri
Jian Zhang
Weipeng Kuang
Peter B. Barr
Fazil Aliev
Andrey P. Anokhin
Martin H. Plawecki
Samuel Kuperman
Laura Almasy
Alison Merikangas
Sarah J. Brislin
Lance Bauer
Victor Hesselbrock
Grace Chan
John Kramer
Dongbing Lai
Sarah Hartz
Laura J. Bierut
Vivia V. McCutcheon
Kathleen K. Bucholz
Danielle M. Dick
Marc A. Schuckit
Howard J. Edenberg
Bernice Porjesz
Source :
Behavioral sciences (Basel, Switzerland), vol 13, iss 5, Behavioral Sciences; Volume 13; Issue 5; Pages: 427
Publication Year :
2023
Publisher :
eScholarship, University of California, 2023.

Abstract

Memory problems are common among older adults with a history of alcohol use disorder (AUD). Employing a machine learning framework, the current study investigates the use of multi-domain features to classify individuals with and without alcohol-induced memory problems. A group of 94 individuals (ages 50-81 years) with alcohol-induced memory problems (Memorygroup) were compared with a matchedControlgroup who did not have memory problems. The Random Forests model identified specific features from each domain that contributed to the classification of Memory vs. Control group (AUC=88.29%). Specifically, individuals from the Memory group manifested a predominant pattern of hyperconnectivity across the default mode network regions except some connections involving anterior cingulate cortex which were predominantly hypoconnected. Other significant contributing features were (i) polygenic risk scores for AUD, (ii) alcohol consumption and related health consequences during the past 5 years, such as health problems, past negative experiences, withdrawal symptoms, and the largest number of drinks in a day during the past 12 months, and (iii) elevated neuroticism and increased harm avoidance, and fewer positive “uplift” life events. At the neural systems level, hyperconnectivity across the default mode network regions, including the connections across the hippocampal hub regions, in individuals with memory problems may indicate dysregulation in neural information processing. Overall, the study outlines the importance of utilizing multidomain features, consisting of resting-state brain connectivity collected ∼18 years ago, together with personality, life experiences, polygenic risk, and alcohol consumption and related consequences, to predict alcohol-related memory problems that arise in later life.

Details

Database :
OpenAIRE
Journal :
Behavioral sciences (Basel, Switzerland), vol 13, iss 5, Behavioral Sciences; Volume 13; Issue 5; Pages: 427
Accession number :
edsair.doi.dedup.....9f39b5668bcd0d0c7044611833ea28e0