Predicting Clinical Remission of Chronic Urticaria Using Random Survival Forests: Machine Learning Applied to Real-World Data

被引:4
|
作者
Pivneva, Irina [1 ]
Balp, Maria-Magdalena [2 ]
Geissbuhler, Yvonne [2 ]
Severin, Thomas [2 ]
Smeets, Serge [2 ]
Signorovitch, James [3 ]
Royer, Jimmy [1 ]
Liang, Yawen [1 ]
Cornwall, Tom [1 ]
Pan, Jutong [1 ]
Danyliv, Andrii [2 ]
McKenna, Sarah Jane [4 ]
Marsland, Alexander M. [5 ,6 ]
Soong, Weily [7 ]
机构
[1] Anal Grp Inc, 1190 Ave Canadiens Montreal,Tour Deloitte, Montreal, PQ H3B 0G7, Canada
[2] Novartis Pharma AG, Basel, Switzerland
[3] Anal Grp Inc, Boston, MA USA
[4] Novartis Business Serv, Dublin, Ireland
[5] Salford Royal NHS Fdn Trust, Salford, Lancs, England
[6] Univ Manchester, Salford, Lancs, England
[7] AllerVie Hlth & AllerVie Clin Res, Birmingham, AL USA
关键词
Chronic urticaria; Remission; Machine learning; Predictors; Random survival forest; Time to clinical remission; Electronic health records; DIAGNOSIS; INFLAMMATION;
D O I
10.1007/s13555-022-00827-6
中图分类号
R75 [皮肤病学与性病学];
学科分类号
100206 ;
摘要
Introduction The time required to reach clinical remission varies in patients with chronic urticaria (CU). The objective of this study is to develop a predictive model using a machine learning methodology to predict time to clinical remission for patients with CU. Methods Adults with >= 2 ICD-9/10 relevant CU diagnosis codes/CU-related treatment > 6 weeks apart were identified in the Optum deidentified electronic health record dataset (January 2007 to June 2019). Clinical remission was defined as >= 12 months without CU diagnosis/CU-related treatment. A random survival forest was used to predict time from diagnosis to clinical remission for each patient based on clinical and demographic features available at diagnosis. Model performance was assessed using concordance, which indicates the degree of agreement between observed and predicted time to remission. To characterize clinically relevant groups, features were summarized among cohorts that were defined based on quartiles of predicted time to remission. Results Among 112,443 patients, 73.5% reached clinical remission, with a median of 336 days from diagnosis. From 1876 initial features, 176 were retained in the final model, which predicted a median of 318 days to remission. The model showed good performance with a concordance of 0.62. Patients with predicted longer time to remission tended to be older with delayed CU diagnosis, and have more comorbidities, more laboratory tests, higher body mass index, and polypharmacy during the 12-month period before the first CU diagnosis. Conclusions Applying machine learning to real-world data enabled accurate prediction of time to clinical remission and identified multiple relevant demographic and clinical variables with predictive value. Ongoing work aims to further validate and integrate these findings into clinical applications for CU management.
引用
收藏
页码:2747 / 2763
页数:17
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