Bajaj Sahil, Blair Karina S, Dobbertin Matthew, Patil Kaustubh R, Tyler Patrick M, Ringle Jay L, Bashford-Largo Johannah, Mathur Avantika, Elowsky Jaimie, Dominguez Ahria, Schmaal Lianne, Blair R James R
Multimodal Clinical Neuroimaging Laboratory (MCNL), Center for Neurobehavioral Research, Boys Town National Research Hospital, 14015 Flanagan Blvd. Suite #102, Boys Town, NE, USA.
Child and Adolescent Psychiatric Inpatient Center, Boys Town National Research Hospital, Boys Town, NE, USA.
Discov Ment Health. 2023 Feb 13;3(1):6. doi: 10.1007/s44192-023-00033-6.
Suicide is the third leading cause of death for individuals between 15 and 19 years of age. The high suicide mortality rate and limited prior success in identifying neuroimaging biomarkers indicate that it is crucial to improve the accuracy of clinical neural signatures underlying suicide risk. The current study implements machine-learning (ML) algorithms to examine structural brain alterations in adolescents that can discriminate individuals with suicide risk from typically developing (TD) adolescents at the individual level. Structural MRI data were collected from 79 adolescents who demonstrated clinical levels of suicide risk and 79 demographically matched TD adolescents. Region-specific cortical/subcortical volume (CV/SCV) was evaluated following whole-brain parcellation into 1000 cortical and 12 subcortical regions. CV/SCV parameters were used as inputs for feature selection and three ML algorithms (i.e., support vector machine [SVM], K-nearest neighbors, and ensemble) to classify adolescents at suicide risk from TD adolescents. The highest classification accuracy of 74.79% (with sensitivity = 75.90%, specificity = 74.07%, and area under the receiver operating characteristic curve = 87.18%) was obtained for CV/SCV data using the SVM classifier. Identified bilateral regions that contributed to the classification mainly included reduced CV within the frontal and temporal cortices but increased volume within the cuneus/precuneus for adolescents at suicide risk relative to TD adolescents. The current data demonstrate an unbiased region-specific ML framework to effectively assess the structural biomarkers of suicide risk. Future studies with larger sample sizes and the inclusion of clinical controls and independent validation data sets are needed to confirm our findings.
自杀是15至19岁人群的第三大死因。自杀死亡率高,且此前在识别神经影像生物标志物方面成效有限,这表明提高自杀风险潜在临床神经特征的准确性至关重要。当前研究采用机器学习(ML)算法来检查青少年的大脑结构改变,这些改变能够在个体层面将有自杀风险的个体与发育正常(TD)的青少年区分开来。从79名有临床自杀风险水平的青少年和79名人口统计学匹配的TD青少年中收集了结构MRI数据。在将全脑划分为1000个皮质区域和12个皮质下区域后,评估了特定区域的皮质/皮质下体积(CV/SCV)。CV/SCV参数被用作特征选择的输入,并采用三种ML算法(即支持向量机[SVM]、K近邻算法和集成算法)将有自杀风险的青少年与TD青少年进行分类。使用SVM分类器对CV/SCV数据进行分类时,获得了最高分类准确率74.79%(敏感性=75.90%,特异性=74.07%,受试者工作特征曲线下面积=87.18%)。确定的对分类有贡献的双侧区域主要包括,与TD青少年相比,有自杀风险的青少年额叶和颞叶皮质内的CV减少,但楔叶/楔前叶内的体积增加。当前数据展示了一个无偏倚的特定区域ML框架,可有效评估自杀风险的结构生物标志物。未来需要进行更大样本量的研究,并纳入临床对照和独立验证数据集来证实我们的发现。