Identifying a clinical signature of suicidality among patients with mood disorders: A pilot study using a machine learning approach

被引:101
|
作者
Passos, Ives Cavalcante [1 ,2 ,3 ]
Mwangi, Benson [1 ]
Cao, Bo [1 ]
Hamilton, Jane E. [1 ]
Wu, Mon-Ju [1 ]
Zhang, Xiang Yang [1 ,4 ]
Zunta-Soares, Giovana B. [1 ]
Quevedo, Joao [1 ]
Kauer-Sant'Anna, Marcia [2 ,3 ]
Kapczinski, Flavio [2 ,3 ]
Soares, Jair C. [1 ]
机构
[1] Univ Texas Hlth Sci Ctr Houston, Ctr Excellence Mood Disorder, Dept Psychiat & Behav Sci, Houston, TX 77030 USA
[2] Univ Fed Rio Grande do Sul, Bipolar Disorder Program, Porto Alegre, RS, Brazil
[3] Univ Fed Rio Grande do Sul, Lab Mol Psychiat, Porto Alegre, RS, Brazil
[4] Peking Univ, Beijing HuiLongGuan Hosp, Beijing 100871, Peoples R China
关键词
Suicide; Bipolar disorder; Depression; Machine learning; Big data; Personalized medicine; NATIONAL EPIDEMIOLOGIC SURVEY; DEFICIT HYPERACTIVITY DISORDER; MAJOR DEPRESSIVE EPISODE; BIPOLAR DISORDER; ANXIETY DISORDERS; PANIC DISORDER; RISK; BEHAVIOR; PREVENTION; PREDICTION;
D O I
10.1016/j.jad.2015.12.066
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Objective: A growing body of evidence has put forward clinical risk factors associated with patients with mood disorders that attempt suicide. However, what is not known is how to integrate clinical variables into a clinically useful tool in order to estimate the probability of an individual patient attempting suicide. Method: A total of 144 patients with mood disorders were included. Clinical variables associated with suicide attempts among patients with mood disorders and demographic variables were used to 'train' a machine learning algorithm. The resulting algorithm was utilized in identifying novel or 'unseen' individual subjects as either suicide attempters or non-attempters. Three machine learning algorithms were implemented and evaluated. Results: All algorithms distinguished individual suicide attempters from non-attempters with prediction accuracy ranging between 65% and 72% (p < 0.05). In particular, the relevance vector machine (RVM) algorithm correctly predicted 103 out of 144 subjects translating into 72% accuracy (72.1% sensitivity and 71.3% specificity) and an area under the curve of 0.77 (p < 0.0001). The most relevant predictor variables in distinguishing attempters from non-attempters included previous hospitalizations for depression, a history of psychosis, cocaine dependence and post -traumatic stress disorder (PTSD) comorbidity. Conclusion: Risk for suicide attempt among patients with mood disorders can be estimated at an individual subject level by incorporating both demographic and clinical variables. Future studies should examine the performance of this model in other populations and its subsequent utility in facilitating selection of interventions to prevent suicide. (C) 2015 Elsevier B.V. All rights reserved.
引用
收藏
页码:109 / 116
页数:8
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