Distinct cognitive and functional connectivity features from healthy cohorts can identify clinical obsessive-compulsive disorder

Luke J. Hearne, B.T. Thomas Yeo, Lachlan Webb, Andrew Zalesky, Paul B. Fitzgerald, Oscar W. Murphy, Ye Tian, Michael Breakspear, Caitlin V. Hall, Sunah Choi, Minah Kim, Jun Soo Kwon, Luca Cocchi
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Abstract

Improving diagnostic accuracy of obsessive-compulsive disorder (OCD) using models of brain imaging data is a key goal of the field, but this objective is challenging due to the limited size and phenotypic depth of clinical datasets. Leveraging the phenotypic diversity in large non-clinical datasets such as the UK Biobank (UKBB), offers a potential solution to this problem. Nevertheless, it remains unclear whether classification models trained on non-clinical populations will generalise to individuals with clinical OCD. This question is also relevant for the conceptualisation of OCD; specifically, whether the symptomology of OCD exists on a continuum from normal to pathological. Here, we examined a recently published “meta-matching” model trained on functional connectivity data from five large normative datasets (N=45,507) to predict cognitive, health and demographic variables. Specifically, we tested whether this model could classify OCD status in three independent clinical datasets (N=345). We found that the model could identify out-of-sample OCD individuals. Notably, the most predictive functional connectivity features mapped onto known cortico-striatal abnormalities in OCD and correlated with genetic brain expression maps previously implicated in the disorder. Further, the meta-matching model relied upon estimates of cognitive functions, such as cognitive flexibility and inhibition, to successfully predict OCD. These findings suggest that variability in non-clinical brain and behavioural features can discriminate clinical OCD status. These results support a dimensional and transdiagnostic conceptualisation of the brain and behavioural basis of OCD, with implications for research approaches and treatment targets.
健康人群的认知和功能连接特征可识别临床强迫症
利用脑成像数据模型提高强迫症(OCD)诊断的准确性是该领域的一个关键目标,但由于临床数据集的规模和表型深度有限,这一目标具有挑战性。利用英国生物库(UKBB)等大型非临床数据集的表型多样性为这一问题提供了潜在的解决方案。然而,在非临床人群中训练的分类模型是否能推广到临床强迫症患者身上,目前仍不清楚。这个问题也与强迫症的概念化有关,特别是强迫症的症状是否存在于从正常到病态的连续统一体中。在此,我们研究了最近发表的一个 "元匹配 "模型,该模型根据五个大型常模数据集(N=45,507)的功能连接数据进行训练,以预测认知、健康和人口统计学变量。具体来说,我们测试了该模型是否能对三个独立临床数据集(N=345)中的强迫症状态进行分类。我们发现,该模型可以识别样本外的强迫症患者。值得注意的是,最具预测性的功能连接特征映射到了强迫症已知的皮质纹状体异常上,并与之前与强迫症有关的遗传脑表达图谱相关。此外,元匹配模型依靠对认知功能(如认知灵活性和抑制)的估计来成功预测强迫症。这些研究结果表明,非临床大脑和行为特征的变异可以区分临床强迫症状态。这些结果支持对强迫症的大脑和行为基础进行维度和跨诊断概念化,从而对研究方法和治疗目标产生影响。
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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