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基于结构磁共振成像数据的机器学习预测个体对电抽搐治疗的反应。

Prediction of Individual Response to Electroconvulsive Therapy via Machine Learning on Structural Magnetic Resonance Imaging Data.

机构信息

Department of Psychiatry, University of Muenster, Muenster, Germany.

Department of Clinical Radiology, University of Muenster, Muenster, Germany.

出版信息

JAMA Psychiatry. 2016 Jun 1;73(6):557-64. doi: 10.1001/jamapsychiatry.2016.0316.

Abstract

IMPORTANCE

Electroconvulsive therapy (ECT) is one of the most effective treatments for severe depression. However, biomarkers that accurately predict a response to ECT remain unidentified.

OBJECTIVE

To investigate whether certain factors identified by structural magnetic resonance imaging (MRI) techniques are able to predict ECT response.

DESIGN, SETTING, AND PARTICIPANTS: In this nonrandomized prospective study, gray matter structure was assessed twice at approximately 6 weeks apart using 3-T MRI and voxel-based morphometry. Patients were recruited through the inpatient service of the Department of Psychiatry, University of Muenster, from March 11, 2010, to March 27, 2015. Two patient groups with acute major depressive disorder were included. One group received an ECT series in addition to antidepressants (n = 24); a comparison sample was treated solely with antidepressants (n = 23). Both groups were compared with a sample of healthy control participants (n = 21).

MAIN OUTCOMES AND MEASURES

Binary pattern classification was used to predict ECT response by structural MRI that was performed before treatment. In addition, univariate analysis was conducted to predict reduction of the Hamilton Depression Rating Scale score by pretreatment gray matter volumes and to investigate ECT-related structural changes.

RESULTS

One participant in the ECT sample was excluded from the analysis, leaving 67 participants (27 men and 40 women; mean [SD] age, 43.7 [10.6] years). The binary pattern classification yielded a successful prediction of ECT response, with accuracy rates of 78.3% (18 of 23 patients in the ECT sample) and sensitivity rates of 100% (13 of 13 who responded to ECT). Furthermore, a support vector regression yielded a significant prediction of relative reduction in the Hamilton Depression Rating Scale score. The principal findings of the univariate model indicated a positive association between pretreatment subgenual cingulate volume and individual ECT response (Montreal Neurological Institute [MNI] coordinates x = 8, y = 21, z = -18; Z score, 4.00; P < .001; peak voxel r = 0.73). Furthermore, the analysis of treatment effects revealed a increase in hippocampal volume in the ECT sample (MNI coordinates x = -28, y = -9, z = -18; Z score, 7.81; P < .001) that was missing in the medication-only sample.

CONCLUSIONS AND RELEVANCE

A relatively small degree of structural impairment in the subgenual cingulate cortex before therapy seems to be associated with successful treatment with ECT. In the future, neuroimaging techniques could prove to be promising tools for predicting the individual therapeutic effectiveness of ECT.

摘要

重要性

电抽搐疗法(ECT)是治疗重度抑郁症最有效的方法之一。然而,能够准确预测 ECT 反应的生物标志物仍未被确定。

目的

研究结构磁共振成像(MRI)技术确定的某些因素是否能够预测 ECT 反应。

设计、设置和参与者:在这项非随机前瞻性研究中,使用 3T MRI 和基于体素的形态计量学,在大约 6 周的时间内两次评估灰质结构。患者通过明斯特大学精神病学部的住院服务从 2010 年 3 月 11 日至 2015 年 3 月 27 日被招募。包括两组急性重度抑郁症患者。一组在接受抗抑郁药治疗的同时接受 ECT 系列治疗(n=24);对照组仅接受抗抑郁药治疗(n=23)。两组均与健康对照组(n=21)进行比较。

主要结果和测量

使用治疗前进行的结构 MRI 对 ECT 反应进行二元模式分类预测。此外,进行了单变量分析,以预测治疗前灰质体积对汉密尔顿抑郁量表评分的降低,并探讨 ECT 相关的结构变化。

结果

ECT 样本中有 1 名参与者被排除在分析之外,最终有 67 名参与者(27 名男性和 40 名女性;平均[SD]年龄 43.7[10.6]岁)。二元模式分类对 ECT 反应进行了成功的预测,准确率为 78.3%(ECT 样本中 23 名患者中的 18 名),灵敏度为 100%(13 名对 ECT 有反应的患者)。此外,支持向量回归对汉密尔顿抑郁量表评分的相对降低进行了显著预测。单变量模型的主要发现表明,治疗前扣带回下脚体积与个体 ECT 反应之间存在正相关(蒙特利尔神经学研究所[MNI]坐标 x=8、y=21、z=-18;Z 分数 4.00;P<.001;峰值 r=0.73)。此外,治疗效果分析显示 ECT 样本中海马体积增加(MNI 坐标 x=-28、y=-9、z=-18;Z 分数 7.81;P<.001),而药物治疗组则没有。

结论和相关性

治疗前扣带回下脚皮质的结构损伤程度相对较小,似乎与 ECT 的成功治疗有关。在未来,神经影像学技术可能成为预测 ECT 个体治疗效果的有前途的工具。

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