医学
淋巴细胞白血病
可用性
队列
预测值
鉴定(生物学)
机器学习
肿瘤科
儿科
内科学
白血病
计算机科学
植物
生物
人机交互
作者
Lusha Cao,Yuan‐Shung Huang,Kelly Getz,Alix E. Seif,Jenny Ruiz,Tamara P. Miller,Brian T. Fisher,Richard Aplenc,Yimei Li
摘要
Abstract Case identification in administrative databases is challenging as diagnosis codes alone are not adequate for case ascertainment. We utilized machine learning (ML) to efficiently identify pediatric patients with newly diagnosed acute lymphoblastic leukemia. We tested nine ML models and validated the best model internally and externally. The optimal model had 97% positive predictive value (PPV) and 99% sensitivity in internal validation; 94% PPV and 82% sensitivity in external validation. Our ML model identified a large cohort of 21,044 patients, demonstrating an efficient approach for cohort assembly and enhancing the usability of administrative data.
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