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Depression, despite its high prevalence, remains severely under-diagnosed across the healthcare system. This demands the development of data-driven approaches that can help screen patients who are at a high risk of depression. In this work, we develop depression risk prediction models that incorporate disease co-morbidities using logistic regression with Elastic Net. Using data from the one million twelve-year longitudinal cohort from Korean National Health Insurance Services (KNHIS), our model achieved an Area Under the Curve (AUC) of the Receiver Operating Characteristic (ROC) of 0.7818, compared to a traditional logistic regression model without co-morbidity analysis (AUC of 0.6992). We also showed co-morbidity adjusted Odds Ratios (ORs), which may be more accurate independent estimate of each predictor variable. In conclusion, inclusion of co-morbidity analysis improved the performance of depression risk prediction models.

作者:Min-Hyung, Kim;Samprit, Banerjee;Sang Min, Park;Jyotishman, Pathak

来源:AMIA ... Annual Symposium proceedings. AMIA Symposium 2016 年 2016卷

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收藏
| 浏览:36
作者:
Min-Hyung, Kim;Samprit, Banerjee;Sang Min, Park;Jyotishman, Pathak
来源:
AMIA ... Annual Symposium proceedings. AMIA Symposium 2016 年 2016卷
标签:
Chronic Conditions Data Warehouse (CCW) Condition Algorithms Co-morbidity Depression Elastic Net Korea National Health Insurance Services Longitudinal Cohort Data Least Absolute Shrinkage And Selection Operator (LASSO) Logistic Regression Risk Prediction Model
Depression, despite its high prevalence, remains severely under-diagnosed across the healthcare system. This demands the development of data-driven approaches that can help screen patients who are at a high risk of depression. In this work, we develop depression risk prediction models that incorporate disease co-morbidities using logistic regression with Elastic Net. Using data from the one million twelve-year longitudinal cohort from Korean National Health Insurance Services (KNHIS), our model achieved an Area Under the Curve (AUC) of the Receiver Operating Characteristic (ROC) of 0.7818, compared to a traditional logistic regression model without co-morbidity analysis (AUC of 0.6992). We also showed co-morbidity adjusted Odds Ratios (ORs), which may be more accurate independent estimate of each predictor variable. In conclusion, inclusion of co-morbidity analysis improved the performance of depression risk prediction models.