Identification of patients with hemoglobin SS/Sβ0 thalassemia disease and pain crises within electronic health records

Blood Advances - Tập 2 - Trang 1172-1179 - 2018
Ashima Singh1, Javier Mora1, Julie A. Panepinto1
1Department of Pediatrics, Medical College of Wisconsin, Milwaukee, WI

Tóm tắt

Key Points

The algorithms have high sensitivity and specificity to identify patients with hemoglobin SS/Sβ0 thalassemia and acute care pain encounters. Codes conforming to common data model are provided to facilitate adoption of algorithms and standardize definitions for EHR-based research.


Tài liệu tham khảo

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