Kamarajan Chella, Pandey Ashwini K, Chorlian David B, Meyers Jacquelyn L, Kinreich Sivan, Pandey Gayathri, Subbie-Saenz de Viteri Stacey, Zhang Jian, Kuang Weipeng, Barr Peter B, Aliev Fazil, Anokhin Andrey P, Plawecki Martin H, Kuperman Samuel, Almasy Laura, Merikangas Alison, Brislin Sarah J, Bauer Lance, Hesselbrock Victor, Chan Grace, Kramer John, Lai Dongbing, Hartz Sarah, Bierut Laura J, McCutcheon Vivia V, Bucholz Kathleen K, Dick Danielle M, Schuckit Marc A, Edenberg Howard J, Porjesz Bernice
Henri Begleiter Neurodynamics Lab, Department of Psychiatry and Behavioral Science, SUNY Downstate Health Sciences University, Brooklyn, NY 11203, USA.
Department of Psychiatry, Robert Wood Johnson Medical School, Rutgers University, Piscataway, NJ 08854, USA.
Behav Sci (Basel). 2023 May 18;13(5):427. doi: 10.3390/bs13050427.
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 (the memory group) were compared with a matched control group who did not have memory problems. The random forests model identified specific features from each domain that contributed to the classification of the memory group vs. the control group (AUC = 88.29%). Specifically, individuals from the memory group manifested a predominant pattern of hyperconnectivity across the default mode network regions except for some connections involving the 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 five years, such as health problems, past negative experiences, withdrawal symptoms, and the largest number of drinks in a day during the past twelve 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 data collected ~18 years ago, together with personality, life experiences, polygenic risk, and alcohol consumption and related consequences, to predict the alcohol-related memory problems that arise in later life.
记忆问题在有酒精使用障碍(AUD)病史的老年人中很常见。本研究采用机器学习框架,调查多领域特征在对有和没有酒精所致记忆问题的个体进行分类中的应用。将一组94名有酒精所致记忆问题的个体(年龄50 - 81岁,记忆组)与一个无记忆问题的匹配对照组进行比较。随机森林模型从每个领域识别出有助于记忆组与对照组分类的特定特征(曲线下面积 = 88.29%)。具体而言,记忆组个体在默认模式网络区域呈现出一种主要的超连接模式,但涉及前扣带回皮质的一些连接除外,这些连接主要是低连接。其他显著的促成特征包括:(i)AUD的多基因风险评分,(ii)过去五年的酒精消费及相关健康后果,如健康问题、过去的负面经历、戒断症状以及过去十二个月中一天内饮酒的最大量,以及(iii)神经质水平升高、伤害回避增加和积极的“提升”生活事件减少。在神经系统层面,有记忆问题的个体默认模式网络区域的超连接,包括海马体枢纽区域之间的连接,可能表明神经信息处理失调。总体而言,该研究概述了利用多领域特征的重要性,这些特征包括约18年前收集的静息态脑连接数据,以及人格、生活经历、多基因风险、酒精消费及相关后果,以预测晚年出现的与酒精相关的记忆问题。