Development and validation of a disease-specific risk adjustment system using automated clinical data.

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Published in Health Serv Res on December 01, 2010

Authors

Ying P Tabak1, Xiaowu Sun, Karen G Derby, Stephen G Kurtz, Richard S Johannes

Author Affiliations

1: Biostatistics, Clinical Research, MedMined Services, CareFusion, 400 Nickerson Road, Marlborough, MA 01752, USA. ying.tabak@carefusion.com

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