Machine Learning to Predict Outcomes in Patients with Acute Gastrointestinal Bleeding: A Systematic Review

被引:51
作者
Shung, Dennis [1 ]
Simonov, Michael [1 ]
Gentry, Mark [1 ]
Au, Benjamin [1 ]
Laine, Loren [1 ,2 ]
机构
[1] Yale Sch Med, Sect Digest Dis, POB 208019, New Haven, CT 06520 USA
[2] VA Connecticut Healthcare Syst, West Haven, CT USA
基金
美国国家卫生研究院;
关键词
Gastrointestinal bleeding; Machine learning; Risk assessment; ARTIFICIAL NEURAL-NETWORK; IN-HOSPITAL MORTALITY; RISK SCORING SYSTEM; GLASGOW BLATCHFORD; MANAGEMENT; VALIDATION; CIRRHOSIS; NEED;
D O I
10.1007/s10620-019-05645-z
中图分类号
R57 [消化系及腹部疾病];
学科分类号
摘要
Risk stratification of patients with gastrointestinal bleeding (GIB) is recommended, but current risk assessment tools have variable performance. Machine learning (ML) has promise to improve risk assessment. We performed a systematic review to evaluate studies utilizing ML techniques for GIB. Bibliographic databases and conference abstracts were searched for studies with a population of overt GIB that used an ML algorithm with outcomes of mortality, rebleeding, hemostatic intervention, and/or hospital stay. Two independent reviewers screened titles and abstracts, reviewed full-text studies, and extracted data from included studies. Risk of bias was assessed with an adapted Quality in Prognosis Studies tool. Area under receiver operating characteristic curves (AUCs) were the primary assessment of performance with AUC >= 0.80 predefined as an acceptable threshold of good performance. Fourteen studies with 30 assessments of ML models met inclusion criteria. No study had low risk of bias. Median AUC reported in validation datasets for predefined outcomes of mortality, intervention, or rebleeding was 0.84 (range 0.40-0.98). AUCs were higher with artificial neural networks (median 0.93, range 0.78-0.98) than other ML models (0.81, range 0.40-0.92). ML performed better than clinical risk scores (Glasgow-Blatchford, Rockall, Child-Pugh, MELD) for mortality in upper GIB. Limitations include heterogeneityof ML models, inconsistent comparisons of ML models with clinical risk scores, andhigh risk of bias. ML generally provided good-excellent prognostic performance in patients with GIB, and artificial neural networks tended to outperform other ML models. ML was better than clinical risk scores for mortality in upper GIB.
引用
收藏
页码:2078 / 2087
页数:10
相关论文
共 44 条
[1]  
Abu-Mostafa Y.S., 2012, Learning from data: a short course
[2]   ARTIFICIAL NEURAL NETWORK FOR THE RISK STRATIFICATION OF ACUTE UPPER GASTROINTESTINAL BLEEDING: MULTICENTRE COMPARATIVE ANALYSIS VS THE GLASGOW BLATCHFORD AND ROCKALL SCORES [J].
Ali, A. ;
Swingland, J. ;
Choi, C. H. ;
Chan, J. ;
Khan, S. ;
Bose, S. ;
Ayaru, L. .
GUT, 2012, 61 :A62-A62
[3]  
[Anonymous], THEOR SURG
[4]   Development and Validation of a Risk Scoring System for Severe Acute Lower Gastrointestinal Bleeding [J].
Aoki, Tomonori ;
Nagata, Naoyoshi ;
Shimbo, Takuro ;
Niikura, Ryota ;
Sakurai, Toshiyuki ;
Moriyasu, Shiori ;
Okubo, Hidetaka ;
Sekine, Katsunori ;
Watanabe, Kazuhiro ;
Yokoi, Chizu ;
Yanase, Mikio ;
Akiyama, Junichi ;
Mizokami, Masashi ;
Uemura, Naomi .
CLINICAL GASTROENTEROLOGY AND HEPATOLOGY, 2016, 14 (11) :1562-+
[5]   Predicting Early Mortality After Acute Variceal Hemorrhage Based on Classification and Regression Tree Analysis [J].
Augustin, Salvador ;
Muntaner, Laura ;
Altamirano, Jose T. ;
Gonzalez, Antonio ;
Saperas, Esteban ;
Dot, Joan ;
Abu-Suboh, Monder ;
Armengol, Josep R. ;
Malagelada, Joan R. ;
Esteban, Rafael ;
Guardia, Jaime ;
Genesca, Joan .
CLINICAL GASTROENTEROLOGY AND HEPATOLOGY, 2009, 7 (12) :1347-1354
[6]   Prediction of Outcome in Acute Lower Gastrointestinal Bleeding Using Gradient Boosting [J].
Ayaru, Lakshmana ;
Ypsilantis, Petros-Pavlos ;
Nanapragasam, Abigail ;
Choi, Ryan Chang-Ho ;
Thillanathan, Anish ;
Min-Ho, Lee ;
Montana, Giovanni .
PLOS ONE, 2015, 10 (07)
[7]   International Consensus Recommendations on the Management of Patients With Nonvariceal Upper Gastrointestinal Bleeding [J].
Barkun, Alan N. ;
Bardou, Marc ;
Kuipers, Ernst J. ;
Sung, Joseph ;
Hunt, Richard H. ;
Martel, Myriam ;
Sinclair, Paul .
ANNALS OF INTERNAL MEDICINE, 2010, 152 (02) :101-+
[8]   A risk score to predict need for treatment for upper-gastrointestinal haemorrhage [J].
Blatchford, O ;
Murray, WR ;
Blatchford, M .
LANCET, 2000, 356 (9238) :1318-1321
[9]   ASSESSING RISK OF ADVERSE OUTCOME IN ACUTE LOWER GASTROINTESTINAL BLEEDING: ARTIFICIAL NEURAL NETWORK VS SIGN GUIDELINES AND BLEED SCORE [J].
Choi, C. H. ;
Swingland, J. ;
Ali, A. ;
Bose, S. ;
Ayaru, L. .
GUT, 2012, 61 :A156-A157
[10]   A decision support system to facilitate management of patients with acute gastrointestinal bleeding [J].
Chu, Adrienne ;
Ahn, Hongshik ;
Halwan, Bhawna ;
Kalmin, Bruce ;
Artifon, Everson L. A. ;
Barkun, Alan ;
Lagoudakis, Michail G. ;
Kumar, Atul .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2008, 42 (03) :247-259