Assoc Prof of Child and Adolescent Psychiatry, Uskudar University Medical Faculty, Istanbul, Turkey.
Assist Prof of Mechatronics Engineering Department, Zonguldak Bulent Ecevit University Faculty of Engineering, Zonguldak, Turkey.
J Affect Disord. 2021 Jan 15;279:256-265. doi: 10.1016/j.jad.2020.10.006. Epub 2020 Oct 9.
Depression and post-traumatic stress disorder (PTSD) are among the most common psychiatric disorders observed in children and adolescents exposed to sexual abuse.
The present study aimed to investigate the effects of many factors such as the characteristics of a child, abuse, and the abuser, family type of the child, and the role of social support in the development of psychiatric disorders using machine learning techniques.
The records of 482 children and adolescents who were determined to have been sexually abused were examined to predict the development of depression and PTSD.
Each child was evaluated by a child and adolescent psychiatrist in the psychiatric aspect according to the DSM-V. Through the data of both groups, a predictive model was established based on a random forest classifier.
The mean values and standard deviation of the 10-k cross-validated results were obtained as accuracy: 0.82% (+/- 0.19%), F1: 0.81% (+/- 0.19%), precision: 0.81% (+/- 0.19%), recall: 0.80% (+/- 0.19%) for children with depression; and accuracy: 0.72% (+/- 0.12%), F1: 0.71% (+/- 0.12%), precision: 0.72% (+/- 0.12%), recall: 0.71% (+/- 0.12%) for children with PTSD, respectively. ROC curves were drawn for both, and the AUC results were obtained as 0.88 for major depressive disorder and 0.76 for PTSD.
Machine learning techniques are powerful methods that can be used to predict disorders that may develop after sexual abuse. The results should be supported by studies with larger samples, which are repeated and applied to other risk groups.
在遭受性虐待的儿童和青少年中,抑郁和创伤后应激障碍(PTSD)是最常见的精神疾病之一。
本研究旨在使用机器学习技术调查儿童特征、虐待、施虐者、儿童家庭类型以及社会支持在精神疾病发展中的作用等多种因素对精神疾病发展的影响。
检查了 482 名被确定遭受过性虐待的儿童和青少年的记录,以预测抑郁和 PTSD 的发展。
根据 DSM-V,由儿童和青少年精神病学家对每个孩子进行精神病学评估。通过两组数据,建立了一个基于随机森林分类器的预测模型。
通过 10-k 交叉验证获得的平均值和标准偏差分别为:抑郁儿童的准确率为 0.82%(+/-0.19%),F1 值为 0.81%(+/-0.19%),精确率为 0.81%(+/-0.19%),召回率为 0.80%(+/-0.19%);创伤后应激障碍儿童的准确率为 0.72%(+/-0.12%),F1 值为 0.71%(+/-0.12%),精确率为 0.72%(+/-0.12%),召回率为 0.71%(+/-0.12%)。为两者绘制了 ROC 曲线,并获得了 0.88 的 AUC 结果,用于重度抑郁症,0.76 用于 PTSD。
机器学习技术是一种强大的方法,可以用于预测性虐待后可能发展的疾病。这些结果应该通过更大样本的研究、重复研究和应用于其他风险群体来支持。