Department of Neuroscience, Western University, London, ON, Canada.
Department of Psychiatry, Western University, London, ON, Canada.
Psychol Med. 2019 Sep;49(12):2049-2059. doi: 10.1017/S0033291718002866. Epub 2018 Oct 11.
The field of psychiatry would benefit significantly from developing objective biomarkers that could facilitate the early identification of heterogeneous subtypes of illness. Critically, although machine learning pattern recognition methods have been applied recently to predict many psychiatric disorders, these techniques have not been utilized to predict subtypes of posttraumatic stress disorder (PTSD), including the dissociative subtype of PTSD (PTSD + DS).
Using Multiclass Gaussian Process Classification within PRoNTo, we examined the classification accuracy of: (i) the mean amplitude of low-frequency fluctuations (mALFF; reflecting spontaneous neural activity during rest); and (ii) seed-based amygdala complex functional connectivity within 181 participants [PTSD (n = 81); PTSD + DS (n = 49); and age-matched healthy trauma-unexposed controls (n = 51)]. We also computed mass-univariate analyses in order to observe regional group differences [false-discovery-rate (FDR)-cluster corrected p < 0.05, k = 20].
We found that extracted features could predict accurately the classification of PTSD, PTSD + DS, and healthy controls, using both resting-state mALFF (91.63% balanced accuracy, p < 0.001) and amygdala complex connectivity maps (85.00% balanced accuracy, p < 0.001). These results were replicated using independent machine learning algorithms/cross-validation procedures. Moreover, areas weighted as being most important for group classification also displayed significant group differences at the univariate level. Here, whereas the PTSD + DS group displayed increased activation within emotion regulation regions, the PTSD group showed increased activation within the amygdala, globus pallidus, and motor/somatosensory regions.
The current study has significant implications for advancing machine learning applications within the field of psychiatry, as well as for developing objective biomarkers indicative of diagnostic heterogeneity.
精神病学领域将从开发能够促进疾病异质亚型早期识别的客观生物标志物中受益。至关重要的是,尽管最近已经应用机器学习模式识别方法来预测许多精神障碍,但这些技术尚未用于预测创伤后应激障碍(PTSD)的亚型,包括 PTSD 的分离亚型(PTSD+DS)。
使用 PRoNTo 中的多类高斯过程分类,我们检查了以下分类准确性:(i)低频波动的平均幅度(mALFF;反映休息时自发的神经活动);和(ii)基于种子的杏仁核复合体功能连接在 181 名参与者中[PTSD(n=81);PTSD+DS(n=49);和年龄匹配的无创伤暴露健康对照组(n=51)]。我们还计算了质量单变量分析,以观察区域组差异[假发现率(FDR)-簇校正 p<0.05,k=20]。
我们发现,使用静息状态 mALFF(91.63%平衡准确性,p<0.001)和杏仁核复合体连接图(85.00%平衡准确性,p<0.001)可以准确预测 PTSD、PTSD+DS 和健康对照组的分类。这些结果使用独立的机器学习算法/交叉验证程序得到了复制。此外,对组分类最重要的加权区域也在单变量水平上显示出显著的组差异。在这里,PTSD+DS 组显示情绪调节区域的激活增加,而 PTSD 组显示杏仁核、苍白球和运动/躯体感觉区域的激活增加。
目前的研究对推进精神病学领域的机器学习应用以及开发指示诊断异质性的客观生物标志物具有重要意义。