Use of Machine Learning for Prediction of Patient Risk of Postoperative Complications After Liver, Pancreatic, and Colorectal Surgery
Autor: | Kota Sahara, Eliza W. Beal, J. Madison Hyer, Aslam Ejaz, Ayesha Farooq, Katiuscha Merath, Anghela Z. Paredes, Diamantis I. Tsilimigras, Timothy M. Pawlik, Fabio Bagante, Rittal Mehta, Lu Wu |
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Rok vydání: | 2019 |
Předmět: |
medicine.medical_specialty
Complications Patient risk Bleeding requiring transfusion 030230 surgery Machine learning computer.software_genre Sepsis 03 medical and health sciences 0302 clinical medicine medicine Pancreas Stroke Colorectal business.industry Wound dehiscence Gastroenterology medicine.disease Colorectal surgery medicine.anatomical_structure Liver 030220 oncology & carcinogenesis Surgery Artificial intelligence business Complication computer |
Zdroj: | Journal of Gastrointestinal Surgery. 24:1843-1851 |
ISSN: | 1873-4626 1091-255X |
DOI: | 10.1007/s11605-019-04338-2 |
Popis: | Surgical resection is the only potentially curative treatment for patients with colorectal, liver, and pancreatic cancers. Although these procedures are performed with low mortality, rates of complications remain relatively high following hepatopancreatic and colorectal surgery. The American College of Surgeons (ACS) National Surgical Quality Improvement Program was utilized to identify patients undergoing liver, pancreatic and colorectal surgery from 2014 to 2016. Decision tree models were utilized to predict the occurrence of any complication, as well as specific complications. To assess the variability of the performance of the classification trees, bootstrapping was performed on 50% of the sample. Algorithms were derived from a total of 15,657 patients who met inclusion criteria. The algorithm had a good predictive ability for the occurrence of any complication, with a C-statistic of 0.74, outperforming the ASA (C-statistic 0.58) and ACS-Surgical Risk Calculator (C-statistic 0.71). The algorithm was able to predict with high accuracy thirteen out of the seventeen complications analyzed. The best performance was in the prediction of stroke (C-statistic 0.98), followed by wound dehiscence, cardiac arrest, and progressive renal failure (all C-statistic 0.96). The algorithm had a good predictive ability for superficial SSI (C-statistic 0.76), organ space SSI (C-statistic 0.76), sepsis (C-statistic 0.79), and bleeding requiring transfusion (C-statistic 0.79). Machine learning was used to develop an algorithm that accurately predicted patient risk of developing complications following liver, pancreatic, or colorectal surgery. The algorithm had very good predictive ability to predict specific complications and demonstrated superiority over other established methods. |
Databáze: | OpenAIRE |
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