Predicting the presence of major depressive disorder (MDD) using behavioural and cognitive signals is a highly non-trivial task. The heterogeneous clinical profile of MDD means that any given speech, facial expression and/or observed cognitive pattern may be associated with a unique combination of depressive symptoms. Conventional discriminative machine learning models potentially lack the complexity to robustly model this heterogeneity. Bayesian networks, however, may instead be well-suited to such a scenario. These networks are probabilistic graphical models that efficiently describe the joint probability distribution over a set of random variables by explicitly capturing their conditional dependencies. This framework provides further advantages over standard discriminative modelling by offering the possibility to incorporate expert opinion in the graphical structure of the models, generating explainable model predictions, informing about the uncertainty of predictions, and naturally handling missing data. In this study, we apply a Bayesian framework to capture the relationships between depression, depression symptoms, and features derived from speech, facial expression and cognitive game data collected at thymia.
翻译:使用行为和认知信号预测重大抑郁症(MDD)的存在是一项非常非三重的任务。MDD的临床剖面图谱多种多样,意味着任何特定言论、面部表达和/或观察到的认知模式都可能与抑郁症状的独特组合有关。常规的歧视性机器学习模型可能缺乏很强的复杂性,无法强有力地模拟这种异质性。但贝叶斯网络可能更适合这种情景。这些网络是概率化的图形模型,通过明确捕捉一组随机变量的有条件依赖性,有效地描述其共同概率分布。这个框架为标准的歧视性建模提供了进一步优势,因为它提供了将专家意见纳入模型的图形结构、产生可解释的模型预测、通报预测的不确定性以及自然处理缺失的数据的可能性。在本研究中,我们应用一个贝斯框架来捕捉抑郁、抑郁症状以及从言语、面部表达和认知游戏中采集的数据之间的关系。