Szalisznyó Krisztina, Silverstein David N
Department of Neuroscience and Psychiatry, Uppsala University Hospital, Uppsala, Sweden.
Theoretical Neuroscience Group, Wigner Research Centre for Physics, Hungarian Academy of Sciences, Budapest, Hungary.
Front Psychiatry. 2021 Oct 1;12:687062. doi: 10.3389/fpsyt.2021.687062. eCollection 2021.
Obsessive compulsive disorder (OCD) can manifest as a debilitating disease with high degrees of co-morbidity as well as clinical and etiological heterogenity. However, the underlying pathophysiology is not clearly understood. Computational psychiatry is an emerging field in which behavior and its neural correlates are quantitatively analyzed and computational models are developed to improve understanding of disorders by comparing model predictions to observations. The aim is to more precisely understand psychiatric illnesses. Such computational and theoretical approaches may also enable more personalized treatments. Yet, these methodological approaches are not self-evident for clinicians with a traditional medical background. In this mini-review, we summarize a selection of computational OCD models and computational analysis frameworks, while also considering the model predictions from a perspective of possible personalized treatment. The reviewed computational approaches used dynamical systems frameworks or machine learning methods for modeling, analyzing and classifying patient data. Bayesian interpretations of probability for model selection were also included. The computational dissection of the underlying pathology is expected to narrow the explanatory gap between the phenomenological nosology and the neuropathophysiological background of this heterogeneous disorder. It may also contribute to develop biologically grounded and more informed dimensional taxonomies of psychopathology.
强迫症(OCD)可能表现为一种使人衰弱的疾病,具有高度的共病性以及临床和病因学异质性。然而,其潜在的病理生理学尚未完全明确。计算精神病学是一个新兴领域,在该领域中,行为及其神经关联会被定量分析,并开发计算模型,通过将模型预测与观察结果进行比较来增进对疾病的理解。目的是更精确地理解精神疾病。这种计算和理论方法也可能实现更个性化的治疗。然而,对于具有传统医学背景的临床医生来说,这些方法并非显而易见。在本综述中,我们总结了一系列计算强迫症模型和计算分析框架,同时也从可能的个性化治疗角度考虑模型预测。所综述的计算方法使用动力系统框架或机器学习方法对患者数据进行建模、分析和分类。还包括了用于模型选择的概率的贝叶斯解释。对潜在病理学的计算剖析有望缩小这种异质性疾病在现象学分类学与神经病理生理学背景之间的解释差距。它也可能有助于建立基于生物学且更明智的精神病理学维度分类法。