Charité - Universitätsmedizin Berlin, Department of Psychiatry and Psychotherapy, Campus Benjamin Franklin, Hindenburgdamm 30, 12203 Berlin, Germany; MSB - Medical School Berlin, Rüdesheimer Str. 50, 14197 Berlin.
Department of Biosystems Science and Engineering, ETH Zurich, Mattenstrasse 26, Basel, 4058, Switzerland; SIB Swiss Institute of Bioinformatics, Basel, Switzerland.
Exp Neurol. 2021 Jan;335:113505. doi: 10.1016/j.expneurol.2020.113505. Epub 2020 Oct 14.
Electroconvulsive therapy (ECT) is one of the most effective treatments in cases of severe and treatment resistant major depression. 60-80% of patients respond to ECT, but the procedure is demanding and robust prediction of ECT responses would be of great clinical value. Predictions based on neuroimaging data have recently come into focus, but still face methodological and practical limitations that are hampering the translation into clinical practice. In this retrospective study, we investigated the feasibility of ECT response prediction using structural magnetic resonance imaging (sMRI) data that was collected during ECT routine examinations. We applied machine learning techniques to predict individual treatment outcomes in a cohort of N = 71 ECT patients, N = 39 of which responded to the treatment. SMRI-based classification of ECT responders and non-responders reached an accuracy of 69% (sensitivity: 67%; specificity: 72%). Classification on additionally investigated clinical variables had no predictive power. Since dichotomisation of patients into ECT responders and non-responders is debatable due to many patients only showing a partial response, we additionally performed a post-hoc regression-based prediction analysis on continuous symptom improvements. This analysis yielded a significant relationship between true and predicted treatment outcomes and might be a promising alternative to dichotomization of patients. Based on our results, we argue that the prediction of individual ECT responses based on routine sMRI holds promise to overcome important limitations that are currently hampering the translation of such treatment biomarkers into everyday clinical practice. Finally, we discuss how the results of such predictive data analysis could best support the clinician's decision on whether a patient should be treated with ECT.
电抽搐治疗(ECT)是治疗严重和治疗抵抗性重度抑郁症最有效的方法之一。60-80%的患者对 ECT 有反应,但该程序要求很高,如果能够对 ECT 反应进行准确预测,将会具有非常重要的临床价值。基于神经影像学数据的预测最近成为焦点,但仍然面临方法学和实际限制,阻碍了其向临床实践的转化。在这项回顾性研究中,我们使用在 ECT 常规检查期间收集的结构磁共振成像(sMRI)数据,调查了使用 ECT 反应预测的可行性。我们应用机器学习技术对 N=71 名 ECT 患者的个体治疗结果进行预测,其中 N=39 名患者对治疗有反应。基于 sMRI 的 ECT 反应者和非反应者的分类达到了 69%的准确率(敏感性:67%;特异性:72%)。对额外调查的临床变量进行分类没有预测能力。由于许多患者仅表现出部分反应,将患者分为 ECT 反应者和非反应者存在争议,因此我们还对连续症状改善进行了事后基于回归的预测分析。该分析表明真实治疗结果和预测治疗结果之间存在显著关系,可能是对患者进行二分法的替代方法。基于我们的结果,我们认为基于常规 sMRI 的个体 ECT 反应预测具有很大的潜力,可以克服目前阻碍此类治疗生物标志物转化为日常临床实践的重要限制。最后,我们讨论了如何最好地利用此类预测数据分析的结果来支持临床医生决定是否对患者进行 ECT 治疗。