A comparative study of machine learning techniques for suicide attempts predictive model

被引:15
|
作者
Nordin, Noratikah [1 ]
Zainol, Zurinahni [1 ]
Noor, Mohd Halim Mohd [1 ]
Fong, Chan Lai [2 ]
机构
[1] Univ Sains Malaysia, George Town, Usm, Malaysia
[2] Natl Univ Malaysia, Med Ctr, Bangi, Malaysia
关键词
data mining; depressive disorder; machine learning; predictive model; suicidal behaviour; RISK; CLASSIFICATION; SELECTION; SAMPLE;
D O I
10.1177/1460458221989395
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Current suicide risk assessments for predicting suicide attempts are time consuming, of low predictive value and have inadequate reliability. This paper aims to develop a predictive model for suicide attempts among patients with depression using machine learning algorithms as well as presents a comparative study on single predictive models with ensemble predictive models for differentiating depressed patients with suicide attempts from non-suicide attempters. We applied and trained eight different machine learning algorithms using a dataset that consists of 75 patients diagnosed with a depressive disorder. A recursive feature elimination was used to reduce the features via three-fold cross validation. An ensemble predictive models outperformed the single predictive models. Voting and bagging revealed the highest accuracy of 92% compared to other machine learning algorithms. Our findings indicate that history of suicide attempt, religion, race, suicide ideation and severity of clinical depression are useful factors for prediction of suicide attempts.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] Prediction Models for Suicide Attempts among Adolescents Using Machine Learning Techniques
    Lim, Jae Seok
    Yang, Chan-Mo
    Baek, Ju-Won
    Lee, Sang-Yeol
    Kim, Bung-Nyun
    CLINICAL PSYCHOPHARMACOLOGY AND NEUROSCIENCE, 2022, 20 (04) : 609 - 620
  • [2] Comparative Analysis of Machine Learning Techniques Using Predictive Modeling
    Khandelwal, Ritu
    Goyal, Hemlata
    Shekhawat, Rajveer S.
    Recent Advances in Computer Science and Communications, 2022, 15 (03) : 466 - 477
  • [3] A Comparative Study of Traditional Statistical Methods and Machine Learning Techniques for Improved Predictive Models
    Alanazi, Bader S.
    INTERNATIONAL JOURNAL OF ANALYSIS AND APPLICATIONS, 2025, 23
  • [4] A Predictive Model for Diabetes Mellitus Using Machine Learning Techniques (A Study in Nigeria)
    Evwiekpaefe, Abraham Eseoghene
    Abdulkadir, Nafisat
    AFRICAN JOURNAL OF INFORMATION SYSTEMS, 2023, 15 (01):
  • [5] A Longitudinal Prediction of Suicide Attempts in Borderline Personality Disorder: A Machine Learning Study
    Fortaner-Uya, Lidia
    Monopoli, Camilla
    Cavicchioli, Marco
    Calesella, Federico
    Colombo, Federica
    Carretta, Ilaria
    Tale, Chiara
    Benedetti, Francesco
    Visintini, Raffaele
    Maffei, Cesare
    Vai, Benedetta
    JOURNAL OF CLINICAL PSYCHOLOGY, 2025, 81 (04) : 222 - 236
  • [6] Automated machine learning in nanotoxicity assessment: A comparative study of predictive model performance
    Xiao, Xiao
    Trinh, Tung X.
    Gerelkhuu, Zayakhuu
    Ha, Eunyong
    Yoon, Tae Hyun
    COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL, 2024, 25 : 9 - 19
  • [7] A Comparative Study of Machine Learning Techniques in Healthcare
    Jain, Divik
    Kadecha, Brijesh
    Iyer, Sailesh
    PROCEEDINGS OF THE 2019 6TH INTERNATIONAL CONFERENCE ON COMPUTING FOR SUSTAINABLE GLOBAL DEVELOPMENT (INDIACOM), 2019, : 455 - 460
  • [8] Predictive Models for Suicide Attempts in Major Depressive Disorder and the Contribution of EPHX2: A Pilot Integrative Machine Learning Study
    Zheng, Shuqiong
    Zeng, Weixiong
    Wu, Qianyun
    Li, Weimin
    He, Zilong
    Li, Enze
    Tang, Chong
    Xue, Xiang
    Qin, Genggeng
    Zhang, Bin
    Yin, Honglei
    DEPRESSION AND ANXIETY, 2024, 2024
  • [9] Using Machine Learning to Predict Suicide Attempts in Military Personnel
    Rozek, David C.
    Andres, William C.
    Smith, Noelle B.
    Leifker, Feea R.
    Arne, Kim
    Jennings, Greg
    Dartnell, Nate
    Bryan, Craig J.
    Rudd, M. David
    PSYCHIATRY RESEARCH, 2020, 294
  • [10] Development and external validation of a logistic and a penalized logistic model using machine-learning techniques to predict suicide attempts: A multicenter prospective cohort study in Korea
    Yang, Jeong Hun
    Chung, Yuree
    Rhee, Sang Jin
    Park, Kyungtaek
    Kim, Min Ji
    Lee, Hyunju
    Song, Yoojin
    Lee, Sang Yeol
    Shim, Se-Hoon
    Moon, Jung-Joon
    Cho, Seong-Jin
    Kim, Shin Gyeom
    Kim, Min-Hyuk
    Lee, Jinhee
    Kang, Won Sub
    Park, C. Hyung Keun
    Won, Sungho
    Ahn, Yong Min
    JOURNAL OF PSYCHIATRIC RESEARCH, 2024, 176 : 442 - 451