Detailed Information

Cited 5 time in webofscience Cited 0 time in scopus
Metadata Downloads

Prediction of Adverse Events in Stable Non-Variceal Gastrointestinal Bleeding Using Machine Learningopen access

Authors
Seo, Dong-WooYi, HahnPark, BeomheeKim, Youn-JungJung, Dae HoWoo, IlsangSohn, Chang HwanKo, Byuk SungKim, NamkugKim, Won Young
Issue Date
Aug-2020
Publisher
MDPI
Keywords
emergency departments; machine learning; upper gastrointestinal bleeding; mortality; hypotension; endoscopy
Citation
JOURNAL OF CLINICAL MEDICINE, v.9, no.8, pp.1 - 15
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF CLINICAL MEDICINE
Volume
9
Number
8
Start Page
1
End Page
15
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/145303
DOI
10.3390/jcm9082603
ISSN
2077-0383
Abstract
Clinical risk-scoring systems are important for identifying patients with upper gastrointestinal bleeding (UGIB) who are at a high risk of hemodynamic instability. We developed an algorithm that predicts adverse events in patients with initially stable non-variceal UGIB using machine learning (ML). Using prospective observational registry, 1439 out of 3363 consecutive patients were enrolled. Primary outcomes included adverse events such as mortality, hypotension, and rebleeding within 7 days. Four machine learning algorithms, namely, logistic regression with regularization (LR), random forest classifier (RF), gradient boosting classifier (GB), and voting classifier (VC), were compared with the Glasgow-Blatchford score (GBS) and Rockall scores. The RF model showed the highest accuracies and significant improvement over conventional methods for predicting mortality (area under the curve: RF 0.917 vs. GBS 0.710), but the performance of the VC model was best in hypotension (VC 0.757 vs. GBS 0.668) and rebleeding within 7 days (VC 0.733 vs. GBS 0.694). Clinically significant variables including blood urea nitrogen, albumin, hemoglobin, platelet, prothrombin time, age, and lactate were identified by the global feature importance analysis. These results suggest that ML models will be useful early predictive tools for identifying high-risk patients with initially stable non-variceal UGIB admitted at an emergency department.
Files in This Item
Appears in
Collections
서울 의과대학 > 서울 응급의학교실 > 1. Journal Articles

qrcode

Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.

Related Researcher

Researcher Ko, Byuk Sung photo

Ko, Byuk Sung
COLLEGE OF MEDICINE (DEPARTMENT OF EMERGENCY MEDICINE)
Read more

Altmetrics

Total Views & Downloads

BROWSE