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Development of machine learning model to predict the risk of 5- year disease related outcomes in patients with inflammatory bowel disease
Youn I Choi;
Sung Jin Park;
Yoon Jae Kim;
Kwang Gi Kim;
Dong Kyun Park;
Jun-Won Chung;
Kyoung Oh Kim;
Jae Hee Cho;
Young Jae Kim;
Kang Yoon Lee
ABSTRACT
Background:
The incidence and global burden of inflammatory bowel disease (IBD) have steadily increased in the past few decades. Improved methods to stratify risk and predict disease-related outcomes are required for IBD.
Objective:
The aim of this study was to develop and validate a machine learning (ML) model to predict the 5-year risk of starting biologic agents in IBD patients.
Methods:
We applied an ML method to the database of the Korean common data model (K-CDM) network, a data sharing consortium of tertiary centers in Korea, to develop a model to predict the 5-year risk of starting biologic agents in IBD patients. The records analyzed were those of patients diagnosed with IBD between January 2006 and June 2017 at Gil Medical Center (GMC; n = 1,299) or present in the K-CDM network (n = 3,286). The ML algorithm was developed using data from GMC and externally validated with the K-CDM network database.
Results:
The ML model for prediction of IBD-related outcomes at 5 years after diagnosis yielded an area under the curve (AUC) of 0.86 (95% CI: 0.82–0.92), in an internal validation study carried out at GMC. The model performed consistently across a range of other datasets, including that of the K-CDM network (AUC = 0.81; 95% CI: 0.80–0.85), in an external validation study.
Conclusions:
The ML-based prediction model can be used to identify IBD-related outcomes in patients at risk, enabling physicians to perform close follow-up based on the patient’s risk level, estimated through the ML algorithm.
Citation
Please cite as:
Choi YI, Park SJ, Kim YJ, Kim KG, Park DK, Chung JW, Kim KO, Cho JH, Kim YJ, Lee KY
Development of machine learning model to predict the risk of 5- year disease related outcomes in patients with inflammatory bowel disease