Kummerfeld Erich, Anker Justin A, Rix Alexander, Kushner Matt G
University of Minnesota - Institute for Health Informatics, Minneapolis, Minnesota.
University of Minnesota - Department of Psychiatry, Minneapolis, Minnesota.
AMIA Annu Symp Proc. 2018 Dec 5;2018:710-719. eCollection 2018.
Research in the domain of psychopathology has been hindered by hidden variables-variables that are important to understanding and treating psychopathological illnesses but are unmeasured. Recent methodological advances in machine learning have culminated in the ability to discover and identify the influence of hidden variables that confound the observed relationships among measured variables. We apply a combination of traditional methods and more recent advances to a data set of alcohol use disorder patients with comorbid internalizing disorders, and find that the increasingly advanced methods produce increasingly informative and reliable results. These results include novel findings evaluated positively by our psychopathologists, as well as findings validated with knowledge from existing literature. We also find that advanced graph discovery methods can guide the use of latent variable modeling procedures, which can in turn explain the output of the graph discovery methods, resulting in a synergistic relationship between two seemingly distinct classes of methods.
精神病理学领域的研究一直受到隐藏变量的阻碍,这些变量对于理解和治疗精神病理疾病很重要,但却未被测量。机器学习领域最近的方法进展最终实现了发现和识别隐藏变量影响的能力,这些隐藏变量混淆了测量变量之间观察到的关系。我们将传统方法和最新进展相结合,应用于患有共病内化障碍的酒精使用障碍患者数据集,发现越来越先进的方法产生的结果越来越丰富且可靠。这些结果包括得到我们精神病理学家积极评价的新发现,以及用现有文献知识验证的发现。我们还发现,先进的图发现方法可以指导潜在变量建模程序的使用,而潜在变量建模程序反过来又可以解释图发现方法的输出,从而在这两类看似不同的方法之间形成协同关系。