Prediction on critically ill patients: The role of “big data”

Journal of Critical Care - Tập 60 - Trang 64-68 - 2020
Lucas Bulgarelli1,2, Rodrigo Octávio Deliberato1,3, Alistair E.W. Johnson1
1MIT Critical Data, Laboratory for Computational Physiology, Harvard-MIT Health Sciences & Technology, Massachusetts Institute of Technology, Cambridge, USA
2Big Data Analytics Department, Hospital Israelita Albert Einstein, São Paulo, Brazil
3Department of Clinical Data Science Research, Endpoint Health, Inc., USA

Tài liệu tham khảo

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