Understanding heterogeneity in psychiatric disorders: A method for identifying subtypes and parsing comorbidity.

IF 5 3区 医学 Q1 CLINICAL NEUROLOGY
Aidas Aglinskas, Alicia Bergeron, Stefano Anzellotti
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引用次数: 0

Abstract

Aim: Most psychiatric and neurodevelopmental disorders are heterogeneous. Neural abnormalities in patients might differ in magnitude and kind, giving rise to distinct subtypes that can be partly overlapping (comorbidity). Identifying disorder-related individual differences is challenging due to the overwhelming presence of disorder-unrelated variation shared with healthy controls. Recently, Contrastive Variational Autoencoders (CVAEs) have been shown to separate disorder-related individual variation from disorder-unrelated variation. However, it is not known if CVAEs can also satisfy the other key desiderata for psychiatric research: capturing disease subtypes and disentangling comorbidity. In this paper, we compare CVAEs to other methods as a function of hyperparameters, such as model size and training data availability. We also introduce a new architecture for modeling comorbid disorders and test a novel training procedure for CVAEs that improves their reproducibility.

Methods: We use synthetic neuroanatomical MRI data with known ground truth for shared and disorder-specific effects and study the performance of the CVAE and non-contrastive baseline models at detecting disorder-subtypes and disentangling comorbidity in brain images varying along shared and disorder-specific dimensions.

Results: CVAE models consistently outperformed non-contrastive alternatives as measured by correlation with disorder-specific ground truth effects and accuracy of subtype discovery. The CVAE also successfully disentangled neuroanatomical loci of comorbid disorders, due to its novel architecture. Improved training procedure reduced variability in the results by up to 5.5×.

Conclusion: The results showcase how the CVAE can be used as an overall framework in precision psychiatry studies, enabling reliable detection of interpretable neuromarkers, discovering disorder subtypes and disentangling comorbidity.

理解精神疾病的异质性:一种识别亚型和分析共病的方法。
目的:大多数精神和神经发育障碍是异质性的。患者的神经异常可能在程度和种类上有所不同,从而产生不同的亚型,这些亚型可能部分重叠(共病)。识别疾病相关的个体差异是具有挑战性的,因为与健康对照共享的疾病无关变异的压倒性存在。近年来,对比变分自编码器(CVAEs)已被证明可以区分疾病相关的个体变异和疾病无关的个体变异。然而,目前尚不清楚CVAEs是否也能满足精神病学研究的其他关键需求:捕捉疾病亚型和解开合并症。在本文中,我们将CVAEs与其他方法作为超参数(如模型大小和训练数据可用性)的函数进行比较。我们还引入了一种新的结构来模拟共病障碍,并测试了一种新的cvae训练程序,以提高其可重复性。方法:我们使用已知共享和疾病特异性效应的合成神经解剖学MRI数据,并研究CVAE和非对比基线模型在检测疾病亚型和在沿共享和疾病特异性维度变化的脑图像中分离合并症方面的性能。结果:CVAE模型始终优于非对比选择,通过与紊乱特定的基础真值效应和亚型发现的准确性的相关性来衡量。CVAE由于其新颖的结构,也成功地解开了共病的神经解剖位点。改进的训练程序将结果的可变性降低了5.5倍。结论:这些结果展示了CVAE如何作为精确精神病学研究的总体框架,能够可靠地检测可解释的神经标志物,发现疾病亚型并解开合并症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.40
自引率
4.20%
发文量
181
审稿时长
6-12 weeks
期刊介绍: PCN (Psychiatry and Clinical Neurosciences) Publication Frequency: Published 12 online issues a year by JSPN Content Categories: Review Articles Regular Articles Letters to the Editor Peer Review Process: All manuscripts undergo peer review by anonymous reviewers, an Editorial Board Member, and the Editor Publication Criteria: Manuscripts are accepted based on quality, originality, and significance to the readership Authors must confirm that the manuscript has not been published or submitted elsewhere and has been approved by each author
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