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Development of Machine Learning Model to Predict the 5-Year Risk of Starting Biologic Agents in Patients with Inflammatory Bowel Disease (IBD): K-CDM Network Study

机译:机器学习模型的开发预测炎症性肠病患者启动生物学剂的5年风险(IBD):K-CDM网络研究

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摘要

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. Aim: 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. Method: 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 = 1299) or present in the K-CDM network (n = 3286). The ML algorithm was developed to predict 5- year risk of starting biologic agents in IBD patients using data from GMC and externally validated with the K-CDM network database. Result: 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. Conclusion: 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.
机译:背景:炎症性肠病(IBD)的发病率和全球负担在过去几十年中稳步增加。 IBD需要改进的分层风险和预测疾病相关结果的方法。目的:本研究的目的是开发和验证机器学习(ML)模型,以预测IBD患者起始生物制剂的5年风险。方法:我们将ML方法应用于韩国常见数据模型(K-CDM)网络数据库,是韩国第三中心的数据共享联盟,开发一种模型,以预测IBD中启动生物制剂的5年风险耐心。分析的记录是在2006年1月至2017年6月在吉尔医疗中心(GMC; N = 1299)之间诊断有IBD的患者的记录,或者在K-CDM网络中存在(n = 3286)。 ML算法是开发的,以预测使用来自GMC的数据和用K-CDM网络数据库外部验证的IBD患者在IBD患者中起始生物药物的5年风险。结果:在诊断后5年内,在5年后预测IBD相关结果的ML模型在GMC进行的内部验证研究中,在0.86(95%CI:0.82-0.92)下的曲线(AUC)下产生的区域。在外部验证研究中,在一系列其他数据集中始终跨越一系列其他数据集,包括K-CDM网络(AUC = 0.81; 95%CI:0.80-0.85)。结论:ML的预测模型可用于鉴定风险患者的IBD相关结果,使医生能够通过ML算法估计基于患者的风险等级来执行密切的随访。

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