Machine Learning in Medicine: Early Recognition of Sepsis | Karsten Borgwardt
Sepsis is a major cause of mortality in intensive care units around the world. If recognized early, it can often be treated successfully, but early prediction of sepsis is an extremely difficult task in clinical practice. The data wealth from intensive care units that is increasingly becoming available for research now allows to study this problem of predicting sepsis using machine learning and data mining approaches. In this talk, I will describe our efforts towards data-driven early recognition of sepsis.
https://www.dkfz.de/en/datascience/seminar/Borgwardt.html
Видео Machine Learning in Medicine: Early Recognition of Sepsis | Karsten Borgwardt канала Intelligent Medical Systems
https://www.dkfz.de/en/datascience/seminar/Borgwardt.html
Видео Machine Learning in Medicine: Early Recognition of Sepsis | Karsten Borgwardt канала Intelligent Medical Systems
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