| Literature DB >> 28269945 |
Min-Hyung Kim1, Samprit Banerjee1, Sang Min Park2, Jyotishman Pathak1.
Abstract
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.Entities:
Keywords: 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
Mesh:
Year: 2017 PMID: 28269945 PMCID: PMC5333336
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076