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Population-Level Prediction of Type 2 Diabetes From Claims Data and Analysis of Risk Factors

Razavian, Narges; Blecker, Saul; Schmidt, Ann Marie; Smith-McLallen, Aaron; Nigam, Somesh; Sontag, David
We present a new approach to population health, in which data-driven predictive models are learned for outcomes such as type 2 diabetes. Our approach enables risk assessment from readily available electronic claims data on large populations, without additional screening cost. Proposed model uncovers early and late-stage risk factors. Using administrative claims, pharmacy records, healthcare utilization, and laboratory results of 4.1 million individuals between 2005 and 2009, an initial set of 42,000 variables were derived that together describe the full health status and history of every individual. Machine learning was then used to methodically enhance predictive variable set and fit models predicting onset of type 2 diabetes in 2009-2011, 2010-2012, and 2011-2013. We compared the enhanced model with a parsimonious model consisting of known diabetes risk factors in a real-world environment, where missing values are common and prevalent. Furthermore, we analyzed novel and known risk factors emerging from the model at different age groups at different stages before the onset. Parsimonious model using 21 classic diabetes risk factors resulted in area under ROC curve (AUC) of 0.75 for diabetes prediction within a 2-year window following the baseline. The enhanced model increased the AUC to 0.80, with about 900 variables selected as predictive (p < 0.0001 for differences between AUCs). Similar improvements were observed for models predicting diabetes onset 1-3 years and 2-4 years after baseline. The enhanced model improved positive predictive value by at least 50% and identified novel surrogate risk factors for type 2 diabetes, such as chronic liver disease (odds ratio [OR] 3.71), high alanine aminotransferase (OR 2.26), esophageal reflux (OR 1.85), and history of acute bronchitis (OR 1.45). Liver risk factors emerge later in the process of diabetes development compared with obesity-related factors such as hypertension and high hemoglobin A1c. In conclusion, population-level risk prediction for type 2 diabetes using readily available administrative data is feasible and has better prediction performance than classical diabetes risk prediction algorithms on very large populations with missing data. The new model enables intervention allocation at national scale quickly and accurately and recovers potentially novel risk factors at different stages before the disease onset.
PMID: 27441408
ISSN: 2167-647x
CID: 2185492

[S.l]] : Machine Learning in Healthcare Workshop, NPIS 2013

Early Detection of Diabetes from Health Claims

Krishnan, Rahul G; Razavian, Narges; Choi, Youngduck; Blecker, Saul; Schmidt, Ann Marie; Sontag, David
(Website)
CID: 4662682

Continuous graphical models for static and dynamic distributions : application to structural biology

Razavian, Narges Sharif
Pittsburgh PA : Carnegie Mellon University, 2013
Extent: 153 p.
ISBN: n/a
CID: 2706952

The von Mises Graphical Model: Expectation Propagation for Inference

Razavian, Narges; Kamisetty, Hetunandan; Langmead, Christopher James
Pittsburgh, PA : Carnegie Mellon Univ. School of Computer Science, 2011
ISBN:
CID: 4668842

The von Mises Graphical Model:Structure Learning

Razavian, Narges Sharif; Kamisetty, Hetunandan; Langmead, Christopher James
Pittsburgh, PA : Carnegie Mellon Univ. School of Computer Science, 2011
ISBN:
CID: 4668862

The von Mises Graphical Model: Regularized Structure and Parameter Learning

Razavian, Narges; Kamisetty, Hetunandan; Leangmead, Christopher James
Pittsburgh, PA : Carnegie Mellon Univ. School of Computer Science, 2011
ISBN:
CID: 4668852

Fixed length word suffix for Factored Statistical Machine Translation

Chapter by: Razavian, Narges Sharif; Vogel, Stephan
in: ACL 2010 - 48th Annual Meeting of the Association for Computational Linguistics, Proceedings of the Conference by
[S.l. : s.n.], 2010
pp. 147-150
ISBN: 9781617388088
CID: 4661982

Time-Varying Gaussian Graphical Models of Molecular Dynamics Data

Razavian, Narges Sharif; Moitra, Subhodeep; Kamisetty, Hetunandan; Ramanathan, Arvind; Langmead, Christopher
Pittsburgh, PA : Carnegie Mellon University. School of Computer Science, 2010
Extent: 22 p.
ISBN: n/a
CID: 2706932

Razavian, Narges; Uguroglu, Selen; Zollmann, Andreas
[S.l. : s.n.],
ISBN:
CID: 4662762

The web as a platform to build machine translation resources

Chapter by: Razavian, Narjes Sharif; Vogel, Stephan
in: Proceedings of the 2009 ACM SIGCHI International Workshop on Intercultural Collaboration, IWIC'09 by
[S.l. : s.n.], 2009
pp. 41-50
ISBN: 9781605585024
CID: 4661972