Detecting at-risk mental states for psychosis (ARMS) using machine learning ensembles and facial features

被引:1
|
作者
Loch, Alexandre Andrade [1 ,2 ]
Gondim, Joao Medrado [3 ]
Argolo, Felipe Coelho [1 ]
Lopes-Rocha, Ana Caroline [1 ]
Andrade, Julio Cesar [1 ]
van de Bilt, Martinus Theodorus [1 ,2 ]
de Jesus, Leonardo Peroni [1 ]
Haddad, Natalia Mansur [1 ]
Cecchi, Guillermo A. [4 ]
Mota, Natalia Bezerra [5 ,6 ]
Gattaz, Wagner Farid [1 ,2 ]
Corcoran, Cheryl Mary [7 ,9 ]
Ara, Anderson [8 ]
机构
[1] Univ Sao Paulo, Hosp Clin HCFMUSP, Fac Med, Inst Psiquiatria,Lab Neurociencias LIM 27, Sao Paulo, SP, Brazil
[2] Conselho Nacl Desenvolvimento Cient & Tecnol, Inst Nacl Biomarcadores Neuropsiquiatria INBION, Brasilia, DF, Brazil
[3] Univ Fed Bahia, Inst Comp, Salvador, BA, Brazil
[4] IBM TJ Watson Res Ctr, Yorktown Hts, NY USA
[5] Univ Fed Rio de Janeiro UFRJ, Dept Psiquiatria & Med Legal, Inst Psiquiatria IPUB, Rio De Janeiro, Brazil
[6] Motrix Lab Motrix, Res Dept, Rio De Janeiro, Brazil
[7] Icahn Sch Med Mt Sinai, New York, NY USA
[8] Univ Fed Parana, Stat Dept, Curitiba, Parana, Brazil
[9] James J Peters VA Med Ctr Bronx, Bronx, NY USA
基金
英国惠康基金; 巴西圣保罗研究基金会;
关键词
Schizophrenia; Clinical high risk; Random forest; Avolition; Emotion; Hallucinations; Delusions; MOTION ENERGY ANALYSIS; ULTRA-HIGH RISK; HELP-SEEKING; PRODROMAL SYNDROMES; YOUTH; CARE; PROGRESSION; VALIDATION; PATHWAYS; SYMPTOMATOLOGY;
D O I
10.1016/j.schres.2023.07.011
中图分类号
R749 [精神病学];
学科分类号
100205 ;
摘要
Aims: Our study aimed to develop a machine learning ensemble to distinguish "at-risk mental states for psychosis" (ARMS) subjects from control individuals from the general population based on facial data extracted from video-recordings.Methods: 58 non-help-seeking medication-naive ARMS and 70 healthy subjects were screened from a general population sample. At-risk status was assessed with the Structured Interview for Prodromal Syndromes (SIPS), and "Subject's Overview" section was filmed (5-10 min). Several features were extracted, e.g., eye and mouth aspect ratio, Euler angles, coordinates from 51 facial landmarks. This elicited 649 facial features, which were further selected using Gradient Boosting Machines (AdaBoost combined with Random Forests). Data was split in 70/30 for training, and Monte Carlo cross validation was used.Results: Final model reached 83 % of mean F1-score, and balanced accuracy of 85 %. Mean area under the curve for the receiver operator curve classifier was 93 %. Convergent validity testing showed that two features included in the model were significantly correlated with Avolition (SIPS N2 item) and expression of emotion (SIPS N3 item).Conclusion: Our model capitalized on short video-recordings from individuals recruited from the general population, effectively distinguishing between ARMS and controls. Results are encouraging for large-screening purposes in low-resource settings.
引用
收藏
页码:45 / 52
页数:8
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