Using Machine Learning to Examine Suicidal Ideation After TBI: A TBI Model Systems National Database Study

dc.contributor.authorFisher, Lauren B.
dc.contributor.authorCurtiss, Joshua E.
dc.contributor.authorKlyce, Daniel W.
dc.contributor.authorPerrin, Paul B.
dc.contributor.authorJuengst, Shannon B.
dc.contributor.authorGary, Kelli W.
dc.contributor.authorNiemeier, Janet P.
dc.contributor.authorMcConnell Hammond, Flora
dc.contributor.authorBergquist, Thomas F.
dc.contributor.authorWagner, Amy K.
dc.contributor.authorRabinowitz, Amanda R.
dc.contributor.authorGiacino, Joseph T.
dc.contributor.authorZafonte, Ross D.
dc.contributor.departmentPhysical Medicine and Rehabilitation, School of Medicine
dc.date.accessioned2024-06-18T12:45:56Z
dc.date.available2024-06-18T12:45:56Z
dc.date.issued2023
dc.description.abstractObjective: The aim of the study was to predict suicidal ideation 1 yr after moderate to severe traumatic brain injury. Design: This study used a cross-sectional design with data collected through the prospective, longitudinal Traumatic Brain Injury Model Systems network at hospitalization and 1 yr after injury. Participants who completed the Patient Health Questionnaire-9 suicide item at year 1 follow-up ( N = 4328) were included. Results: A gradient boosting machine algorithm demonstrated the best performance in predicting suicidal ideation 1 yr after traumatic brain injury. Predictors were Patient Health Questionnaire-9 items (except suicidality), Generalized Anxiety Disorder-7 items, and a measure of heavy drinking. Results of the 10-fold cross-validation gradient boosting machine analysis indicated excellent classification performance with an area under the curve of 0.882. Sensitivity was 0.85 and specificity was 0.77. Accuracy was 0.78 (95% confidence interval, 0.77-0.79). Feature importance analyses revealed that depressed mood and guilt were the most important predictors of suicidal ideation, followed by anhedonia, concentration difficulties, and psychomotor disturbance. Conclusions: Overall, depression symptoms were most predictive of suicidal ideation. Despite the limited clinical impact of the present findings, machine learning has potential to improve prediction of suicidal behavior, leveraging electronic health record data, to identify individuals at greatest risk, thereby facilitating intervention and optimization of long-term outcomes after traumatic brain injury.
dc.eprint.versionAuthor's manuscript
dc.identifier.citationFisher LB, Curtiss JE, Klyce DW, et al. Using Machine Learning to Examine Suicidal Ideation After Traumatic Brain Injury: A Traumatic Brain Injury Model Systems National Database Study. Am J Phys Med Rehabil. 2023;102(2):137-143. doi:10.1097/PHM.0000000000002054
dc.identifier.urihttps://hdl.handle.net/1805/41613
dc.language.isoen_US
dc.publisherWolters Kluwer
dc.relation.isversionof10.1097/PHM.0000000000002054
dc.relation.journalAmerican Journal of Physical Medicine & Rehabilitation
dc.rightsPublisher Policy
dc.sourcePMC
dc.subjectTraumatic brain injury
dc.subjectSuicidal ideation
dc.subjectDepression
dc.subjectAnxiety
dc.subjectAlcohol use
dc.subjectMachine learning
dc.titleUsing Machine Learning to Examine Suicidal Ideation After TBI: A TBI Model Systems National Database Study
dc.typeArticle
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