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Assessment of Genetic and Nongenetic Interactions for the Prediction of Depressive Symptomatology: An Analysis of the Wisconsin Longitudinal Study Using Machine Learning Algorithms

机译:评估抑郁症症状的遗传和非遗传相互作用的评估:使用机器学习算法对威斯康星州纵向研究的分析

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摘要

Objectives. We examined depression within a multidimensional framework consisting of genetic, environmental, and sociobehavioral factors and, using machine learning algorithms, explored interactions among these factors that might better explain the etiology of depressive symptoms.Methods. We measured current depressive symptoms using the Center for Epidemiologic Studies Depression Scale (n = 6378 participants in the Wisconsin Longitudinal Study). Genetic factors were 78 single nucleotide polymorphisms (SNPs); environmental factors—13 stressful life events (SLEs), plus a composite proportion of SLEs index; and sociobehavioral factors—18 personality, intelligence, and other health or behavioral measures. We performed traditional SNP associations via logistic regression likelihood ratio testing and explored interactions with support vector machines and Bayesian networks.Results. After correction for multiple testing, we found no significant single genotypic associations with depressive symptoms. Machine learning algorithms showed no evidence of interactions. Naïve Bayes produced the best models in both subsets and included only environmental and sociobehavioral factors.Conclusions. We found no single or interactive associations with genetic factors and depressive symptoms. Various environmental and sociobehavioral factors were more predictive of depressive symptoms, yet their impacts were independent of one another. A genome-wide analysis of genetic alterations using machine learning methodologies will provide a framework for identifying genetic–environmental–sociobehavioral interactions in depressive symptoms.
机译:目标。我们在由遗传,环境和社会行为因素组成的多维框架内研究了抑郁症,并使用机器学习算法探索了这些因素之间的相互作用,这些相互作用可能会更好地解释抑郁症状的病因。我们使用流行病学研究中心抑郁量表(威斯康星州纵向研究中的n = 6378参与者)测量了当前的抑郁症状。遗传因素为78个单核苷酸多态性(SNPs);环境因素-13个压力性生活事件(SLE),外加SLE指数的综合比例;和社会行为因素-18人格,智力和其他健康或行为指标。我们通过逻辑回归似然比测试进行了传统的SNP关联,并探索了与支持向量机和贝叶斯网络的相互作用。经过多次测试校正后,我们没有发现具有抑郁症状的显着单基因型关联。机器学习算法未显示任何交互作用的证据。朴素贝叶斯在这两个子集中都产生了最好的模型,并且仅包括环境和社会行为因素。我们没有发现与遗传因素和抑郁症状的单一或互动关联。各种环境和社会行为因素更能预测抑郁症状,但其影响相互独立。使用机器学习方法对基因改变进行全基因组分析,将提供一个框架,用于识别抑郁症状中的遗传-环境-社会行为相互作用。

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