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Background The aim of the present study was to develop a clinically relevant, accurate and usable risk assessment scoring system solely for colorectal cancer patients undergoing elective resection. Methods All colorectal resections for colorectal cancer 2006–2012 were identified from the American College of Surgeons Quality Improvement Program. Independent risk factors for 30-day mortality after...
We analyze the ACS NSQIP data for developing accurate risk prediction models for post-operative adverse outcomes in colorectal cancer surgery using data mining techniques. Preliminary experimentation reveals interesting and promising findings.
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