医学
食管腺癌
病历
人口
插补(统计学)
接收机工作特性
腺癌
内科学
癌症
缺少数据
机器学习
环境卫生
计算机科学
作者
Joel H. Rubenstein,Simon Fontaine,Peter W. MacDonald,Jennifer Burns,Richard Evans,Maria Arasim,Joy W. Chang,Elizabeth M. Firsht,Sarah T. Hawley,Sameer D. Saini,Lauren P. Wallner,Ji Zhu,Akbar K. Waljee
出处
期刊:Gastroenterology
[Elsevier BV]
日期:2023-08-18
卷期号:165 (6): 1420-1429.e10
被引量:19
标识
DOI:10.1053/j.gastro.2023.08.011
摘要
Tools that can automatically predict incident esophageal adenocarcinoma (EAC) and gastric cardia adenocarcinoma (GCA) using electronic health records to guide screening decisions are needed.The Veterans Health Administration (VHA) Corporate Data Warehouse was accessed to identify Veterans with 1 or more encounters between 2005 and 2018. Patients diagnosed with EAC (n = 8430) or GCA (n = 2965) were identified in the VHA Central Cancer Registry and compared with 10,256,887 controls. Predictors included demographic characteristics, prescriptions, laboratory results, and diagnoses between 1 and 5 years before the index date. The Kettles Esophageal and Cardia Adenocarcinoma predictioN (K-ECAN) tool was developed and internally validated using simple random sampling imputation and extreme gradient boosting, a machine learning method. Training was performed in 50% of the data, preliminary validation in 25% of the data, and final testing in 25% of the data.K-ECAN was well-calibrated and had better discrimination (area under the receiver operating characteristic curve [AuROC], 0.77) than previously validated models, such as the Nord-Trøndelag Health Study (AuROC, 0.68) and Kunzmann model (AuROC, 0.64), or published guidelines. Using only data from between 3 and 5 years before index diminished its accuracy slightly (AuROC, 0.75). Undersampling men to simulate a non-VHA population, AUCs of the Nord-Trøndelag Health Study and Kunzmann model improved, but K-ECAN was still the most accurate (AuROC, 0.85). Although gastroesophageal reflux disease was strongly associated with EAC, it contributed only a small proportion of gain in information for prediction.K-ECAN is a novel, internally validated tool predicting incident EAC and GCA using electronic health records data. Further work is needed to validate K-ECAN outside VHA and to assess how best to implement it within electronic health records.
科研通智能强力驱动
Strongly Powered by AbleSci AI