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Machine Learning in Gastrointestinal Surgery

Overview
Journal Surg Today
Specialty General Surgery
Date 2021 Sep 24
PMID 34559310
Citations 6
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Abstract

Machine learning (ML) is a collection of algorithms allowing computers to learn directly from data without predetermined equations. It is used widely to analyze "big data". In gastrointestinal surgery, surgeons deal with various data such as clinical parameters, surgical videos, and pathological images, to stratify surgical risk, perform safe surgery and predict patient prognosis. In the current "big data" era, the accelerating accumulation of a large amount of data drives studies using ML algorithms. Three subfields of ML are supervised learning, unsupervised learning, and reinforcement learning. In this review, we summarize applications of ML to surgical practice in the preoperative, intraoperative, and postoperative phases of care. Prediction and stratification using ML is promising; however, the current overarching concern is the availability of ML models. Information systems that can manage "big data" and integrate ML models into electronic health records are essential to incorporate ML into daily practice. ML is fundamental technology to meaningfully process data that exceeds the capacity of the human mind to comprehend. The accelerating accumulation of a large amount of data is changing the nature of surgical practice fundamentally. Artificial intelligence (AI), represented by ML, is being incorporated into daily surgical practice.

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References
1.
Bilimoria K, Liu Y, Paruch J, Zhou L, Kmiecik T, Ko C . Development and evaluation of the universal ACS NSQIP surgical risk calculator: a decision aid and informed consent tool for patients and surgeons. J Am Coll Surg. 2013; 217(5):833-42.e1-3. PMC: 3805776. DOI: 10.1016/j.jamcollsurg.2013.07.385. View

2.
Boffa D, Rosen J, Mallin K, Loomis A, Gay G, Palis B . Using the National Cancer Database for Outcomes Research: A Review. JAMA Oncol. 2017; 3(12):1722-1728. DOI: 10.1001/jamaoncol.2016.6905. View

3.
Doll K, Rademaker A, Sosa J . Practical Guide to Surgical Data Sets: Surveillance, Epidemiology, and End Results (SEER) Database. JAMA Surg. 2018; 153(6):588-589. DOI: 10.1001/jamasurg.2018.0501. View

4.
Lee T, Marcantonio E, Mangione C, Thomas E, Polanczyk C, Cook E . Derivation and prospective validation of a simple index for prediction of cardiac risk of major noncardiac surgery. Circulation. 1999; 100(10):1043-9. DOI: 10.1161/01.cir.100.10.1043. View

5.
Beal E, Saunders N, Kearney J, Lyon E, Wei L, Squires M . Accuracy of the ACS NSQIP Online Risk Calculator Depends on How You Look at It: Results from the United States Gastric Cancer Collaborative. Am Surg. 2018; 84(3):358-364. View