Menninger Department of Psychiatry and Behavioral Sciences, Baylor College of Medicine, Houston, TX, USA.
Michael E DeBakey VA Medical, Houston, TX, USA.
Acta Psychiatr Scand. 2019 Jul;140(1):20-29. doi: 10.1111/acps.13029. Epub 2019 Apr 20.
About 80% of patients who commit suicide do not report suicidal ideation the last time they speak to their mental health provider, highlighting the need to identify biomarkers of suicidal behavior. Our goal is to identify suicidal behavior neural biomarkers to classify suicidal psychiatric inpatients.
Eighty percent of our sample [suicidal (n = 63) and non-suicidal psychiatric inpatients (n = 65)] was used to determine significant differences in structural and resting-state functional connectivity measures throughout the brain. These measures were used in a random forest classification model on 80% of the sample for training the model.
The model built on 80% of the patients had sensitivity = 79.4% and specificity = 72.3%. This model was tested on an independent sample (20%; n = 32) with sensitivity = 81.3% and specificity = 75.0% for confirming the generalizability of the model. Altered resting-state functional connectivity features from frontal and middle temporal regions, as well as the amygdala, parahippocampus, putamen, and vermis were found to generalize best.
This work demonstrates neuroimaging (an unbiased biomarker) can be used to classify suicidal behavior in psychiatric inpatients without observing any clinical features.
大约 80%的自杀患者在最后一次与心理健康服务提供者交谈时没有报告自杀意念,这凸显了识别自杀行为生物标志物的必要性。我们的目标是确定自杀行为的神经生物学标志物,以对有自杀倾向的精神科住院患者进行分类。
我们的样本中有 80%(自杀组[n=63]和非自杀性精神科住院患者[n=65])用于确定整个大脑的结构和静息态功能连接测量的显著差异。这些测量值用于 80%的样本的随机森林分类模型中,以训练模型。
基于 80%患者的模型具有 79.4%的敏感性和 72.3%的特异性。该模型在独立样本(20%;n=32)上进行了测试,其敏感性为 81.3%,特异性为 75.0%,以确认模型的通用性。发现来自额叶和中颞叶区域以及杏仁核、海马旁回、壳核和蚓部的静息态功能连接特征改变具有最佳的通用性。
这项工作表明,神经影像学(一种无偏生物标志物)可用于对精神科住院患者的自杀行为进行分类,而无需观察任何临床特征。