Predicting adolescent suicidal behavior following inpatient discharge using structured and unstructured data

被引:0
|
作者
Carson, Nicholas J. [1 ]
Yang, Xinyu [2 ]
Mullin, Brian [1 ]
Stettenbauer, Elizabeth [5 ]
Waddington, Marin [3 ]
Zhang, Alice [4 ]
Williams, Peyton [1 ]
Perez, Gabriel E. Rios [1 ]
Le Cook, Benjamin [1 ]
机构
[1] Cambridge Hlth Alliance, Hlth Equ Res Lab, 1035 Cambridge St, Cambridge, MA 02139 USA
[2] Parexel, 275 Grove St,Suite 101C, Newton, MA 02466 USA
[3] Brigham & Womens Hosp, Resnek Family Ctr PSC Res, Div Gastroenterol, 75 Francis St, Boston, MA 02115 USA
[4] NYU, Dept Psychol, 6 Washington Pl, New York, NY 10003 USA
[5] Brown Univ, Sch Publ Hlth, Providence, RI 02903 USA
关键词
Suicide; Adolescence; Risk; Patient discharge; Machine learning; Electronic health records; AFTER-DISCHARGE;
D O I
10.1016/j.jad.2023.12.059
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: The objective was to develop and assess performance of an algorithm predicting suicide -related ICD codes within three months of psychiatric discharge. Methods: This prognostic study used a retrospective cohort of EHR data from 2789 youth (12 to 20 years old) hospitalized in a safety net institution in the Northeastern United States. The dataset combined structured data with unstructured data obtained through natural language processing of clinical notes. Machine learning approaches compared gradient boosting to random forest analyses. Results: Area under the ROC and precision -recall curve were 0.88 and 0.17, respectively, for the final Gradient Boosting model. The cutoff point of the model -generated predicted probabilities of suicide that optimally classified the individual as high risk or not was 0.009. When applying the chosen cutoff (0.009) to the hold -out testing set, the model correctly identified 8 positive cases out of 10, and 418 negative cases out 548. The corresponding performance metrics showed 80 % sensitivity, 76 % specificity, 6 % PPV, 99 % NPV, F-1 score of 0.11, and an accuracy of 76 %. Limitations: The data in this study comes from a single health system, possibly introducing bias in the model's algorithm. Thus, the model may have underestimated the incidence of suicidal behavior in the study population. Further research should include multiple system EHRs. Conclusions: These performance metrics suggest a benefit to including both unstructured and structured data in design of predictive algorithms for suicidal behavior, which can be integrated into psychiatric services to help assess risk.
引用
收藏
页码:382 / 387
页数:6
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