30-days all-cause prediction model for readmissions for heart failure patients a comparative study of machine learning approaches
The value of machine learning in healthcare comes from its ability to process large amount of health care data to extract clinical insights that are helpful to physicians for planning and providing care with better outcomes and lower costs. Recent studies exploring machine learning techniques sugges...
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Online Access: | http://hdl.handle.net/2047/D20327421 |
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