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Publications by Srinivas Annavarapu
Development and Validation of a Predictive Model to Identify Patients at Risk of Severe COPD Exacerbations Using Administrative Claims Data
International Journal of COPD
Environmental
Public Health
Health Policy
Medicine
Pulmonary
Respiratory Medicine
Occupational Health
Related publications
P2-141 Definition and Validation of an Algorithm to Identify COPD Patients From Administrative Databases
Journal of Epidemiology and Community Health
Epidemiology
Public Health
Occupational Health
Environmental
AB031. Validation of Claims Approach to Identify Asthma and COPD Overlap Syndrome Patients in the United States
Journal of Thoracic Disease
Pulmonary
Respiratory Medicine
Validation and Assessment of the COPD Treatment Ratio as a Predictor of Severe Exacerbations
Chronic Obstructive Pulmonary Diseases
Pulmonary
Respiratory Medicine
A Nomogram for Predicting Severe Exacerbations in Stable COPD Patients
International Journal of COPD
Environmental
Public Health
Health Policy
Medicine
Pulmonary
Respiratory Medicine
Occupational Health
Validation of Diagnostic Codes for Subtrochanteric, Diaphyseal, and Atypical Femoral Fractures Using Administrative Claims Data
Journal of Clinical Densitometry
Nuclear Medicine
Radiology
Sports Medicine
Endocrinology
Orthopedics
Imaging
Metabolism
Diabetes
An Accurate Prediction Model to Identify Undiagnosed At-Risk Patients With COPD: A Cross-Sectional Case-Finding Study
npj Primary Care Respiratory Medicine
Public Health
Family Practice
Environmental
Pulmonary
Respiratory Medicine
Occupational Health
Development of a Risk Predictive Scoring System to Identify Patients at Risk of Representation to Emergency Department: A Retrospective Population-Based Analysis in Australia
BMJ Open
Medicine
B1-1: Predictive Modeling to Identify Patients at Risk for Index Hospitalization
Clinical Medicine and Research
Medicine
Home Care
Community
A Retrospective Study of Administrative Data to Identify High-Need Medicare Beneficiaries at Risk of Dying and Being Hospitalized
Journal of General Internal Medicine
Internal Medicine