Deep sequential neural network models improve stratification of suicide attempt risk among US veterans

Author:

Martinez Carianne12,Levin Drew1ORCID,Jones Jessica1,Finley Patrick D1,McMahon Benjamin3,Dhaubhadel Sayera3,Cohn Judith3,Oslin David W45,Kimbrel Nathan A6789,Beckham Jean C679, ,

Affiliation:

1. Sandia National Laboratories , Albuquerque, NM 87185, United States

2. Arizona State University , Tempe, AZ 85287, United States

3. Los Alamos National Laboratory , Los Alamos, NM 87544, United States

4. VISN 4 Mental Illness Research, Education, and Clinical Center, Center of Excellence, Corporal Michael J. Crescenz VA Medical Center , Philadelphia, PA 19104, United States

5. Department of Psychiatry, Perelman School of Medicine, University of Pennsylvania , Philadelphia, PA 19104, United States

6. Durham Veterans Affairs (VA) Health Care System , Durham, NC 27705, United States

7. Education and Clinical Center, VA Mid-Atlantic Mental Illness Research , Durham, NC 27707, United States

8. VA Health Services Research and Development Center of Innovation to Accelerate Discovery and Practice Transformation , Durham, NC 27701, United States

9. Department of Psychiatry and Behavioral Sciences, Duke University School of Medicine , Durham, NC 27701, United States

Abstract

Abstract Objective To apply deep neural networks (DNNs) to longitudinal EHR data in order to predict suicide attempt risk among veterans. Local explainability techniques were used to provide explanations for each prediction with the goal of ultimately improving outreach and intervention efforts. Materials and methods The DNNs fused demographic information with diagnostic, prescription, and procedure codes. Models were trained and tested on EHR data of approximately 500 000 US veterans: all veterans with recorded suicide attempts from April 1, 2005, through January 1, 2016, each paired with 5 veterans of the same age who did not attempt suicide. Shapley Additive Explanation (SHAP) values were calculated to provide explanations of DNN predictions. Results The DNNs outperformed logistic and linear regression models in predicting suicide attempts. After adjusting for the sampling technique, the convolutional neural network (CNN) model achieved a positive predictive value (PPV) of 0.54 for suicide attempts within 12 months by veterans in the top 0.1% risk tier. Explainability methods identified meaningful subgroups of high-risk veterans as well as key determinants of suicide attempt risk at both the group and individual level. Discussion and conclusion The deep learning methods employed in the present study have the potential to significantly enhance existing suicide risk models for veterans. These methods can also provide important clues to explore the relative value of long-term and short-term intervention strategies. Furthermore, the explainability methods utilized here could also be used to communicate to clinicians the key features which increase specific veterans’ risk for attempting suicide.

Funder

Million Veteran Program

Million Veteran Program, Office of Research and Development, Veterans Health Administration

VA Research Career Scientist

VA Clinical Sciences Research and Development

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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