Prediction of the development of depression and post-traumatic stress disorder in sexually abused children using a random forest classifier

被引:22
作者
Gokten, Emel Sari [1 ]
Uyulan, Caglar [2 ]
机构
[1] Uskudar Univ, Child & Adolescent Psychiat, Med Fac, Istanbul, Turkey
[2] Zonguldak Bulent Ecevit Univ, Mechatron Engn Dept, Fac Engn, Zonguldak, Turkey
关键词
Childhood sexual abuse; Psychiatric disorders; Depression; Post-traumatic stress disorder; Machine learning; Random forest; PTSD;
D O I
10.1016/j.jad.2020.10.006
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: Depression and post-traumatic stress disorder (PTSD) are among the most common psychiatric disorders observed in children and adolescents exposed to sexual abuse. Objective: 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. Participants and Settings: 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. Methods: 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. Results: 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. Conclusions: 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.
引用
收藏
页码:256 / 265
页数:10
相关论文
共 34 条
[21]  
Marinic I, 2007, CROAT MED J, V48, P185
[22]   Child sexual abuse, disclosure and PTSD: A systematic and critical review [J].
McTavish, Jill R. ;
Sverdlichenko, Irina ;
MacMillan, Harriet L. ;
Wekerle, Christine .
CHILD ABUSE & NEGLECT, 2019, 92 :196-208
[23]   Principal Component Analysis with Linear and Quadratic Discriminant Analysis for Identification of Cancer Samples Based on Mass Spectrometry [J].
Morais, Camilo L. M. ;
Lima, Kassio M. G. .
JOURNAL OF THE BRAZILIAN CHEMICAL SOCIETY, 2018, 29 (03) :472-481
[24]   Biomedical Text Categorization Based on Ensemble Pruning and Optimized Topic Modelling [J].
Onan, Aytug .
COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE, 2018, 2018
[25]   Ensemble machine learning prediction of posttraumatic stress disorder screening status after emergency room hospitalization [J].
Papini, Santiago ;
Pisner, Derek ;
Shumake, Jason ;
Powers, Mark B. ;
Beevers, Christopher G. ;
Rainey, Evan E. ;
Smits, Jasper A. J. ;
Warren, Ann Marie .
JOURNAL OF ANXIETY DISORDERS, 2018, 60 :35-42
[26]   Predicting posttraumatic stress disorder following a natural disaster [J].
Rosellini, Anthony J. ;
Dussaillant, Francisca ;
Zubizarreta, Jose R. ;
Kessler, Ronald C. ;
Rose, Sherri .
JOURNAL OF PSYCHIATRIC RESEARCH, 2018, 96 :15-22
[27]  
Sagar D.B.M., 2019, INT J INNOVATIVE RES, V7, P90, DOI [10.21276/ijircst.2019.7.3.11, DOI 10.21276/IJIRCST.2019.7.3.11]
[28]   A comprehensive comparison of random forests and support vector machines for microarray-based cancer classification [J].
Statnikov, Alexander ;
Wang, Lily ;
Aliferis, Constantin F. .
BMC BIOINFORMATICS, 2008, 9 (1)
[29]  
Stoltenborgh M., 2015, PREVALENCE CHILD MAL
[30]  
Sumner SA, 2015, MMWR-MORBID MORTAL W, V64, P565