Key Laboratory of Cognition and Personality (SWU), Ministry of Education, Chongqing, 400715, China.
Faculty of Psychology, Southwest University, No.2 Tiansheng Road, Beibei District, Chongqing, 400715, China.
BMC Psychiatry. 2021 Jul 20;21(1):361. doi: 10.1186/s12888-021-03373-1.
Early diagnosis of adolescent psychiatric disorder is crucial for early intervention. However, there is extensive comorbidity between affective and psychotic disorders, which increases the difficulty of precise diagnoses among adolescents.
We obtained structural magnetic resonance imaging scans from 150 adolescents, including 67 and 47 patients with major depressive disorder (MDD) and schizophrenia (SCZ), as well as 34 healthy controls (HC) to explore whether psychiatric disorders could be identified using a machine learning technique. Specifically, we used the support vector machine and the leave-one-out cross-validation method to distinguish among adolescents with MDD and SCZ and healthy controls.
We found that cortical thickness was a classification feature of a) MDD and HC with 79.21% accuracy where the temporal pole had the highest weight; b) SCZ and HC with 69.88% accuracy where the left superior temporal sulcus had the highest weight. Notably, adolescents with MDD and SCZ could be classified with 62.93% accuracy where the right pars triangularis had the highest weight.
Our findings suggest that cortical thickness may be a critical biological feature in the diagnosis of adolescent psychiatric disorders. These findings might be helpful to establish an early prediction model for adolescents to better diagnose psychiatric disorders.
青少年精神障碍的早期诊断对于早期干预至关重要。然而,情感障碍和精神病性障碍之间存在广泛的共病现象,这增加了青少年进行精确诊断的难度。
我们对 150 名青少年进行了结构磁共振成像扫描,其中包括 67 名和 47 名重性抑郁障碍(MDD)和精神分裂症(SCZ)患者,以及 34 名健康对照者(HC),以探讨是否可以使用机器学习技术识别精神障碍。具体来说,我们使用支持向量机和留一交叉验证法来区分 MDD 和 SCZ 患者与健康对照者。
我们发现皮质厚度是区分 a)MDD 和 HC 的分类特征,准确率为 79.21%,其中颞极的权重最高;b)SCZ 和 HC 的分类特征,准确率为 69.88%,其中左侧颞上回的权重最高。值得注意的是,MDD 和 SCZ 患者的分类准确率为 62.93%,其中右侧三角部的权重最高。
我们的研究结果表明,皮质厚度可能是青少年精神障碍诊断的关键生物学特征。这些发现可能有助于建立青少年精神障碍的早期预测模型,以便更好地进行精神障碍诊断。