2022
DOI: 10.1007/s13555-022-00827-6
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Predicting Clinical Remission of Chronic Urticaria Using Random Survival Forests: Machine Learning Applied to Real-World Data

Abstract: 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). Clinica… Show more

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Cited by 6 publications
(2 citation statements)
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“…A random survival forest ML model was trained on clinical and demographic features of CSU patients available at the time of diagnosis to predict clinical remission. The model also identified non-modifiable risk factors, such as age and presence of comorbidities, as well as modifiable risk factors, such as smoking and elevated BMI, as risk factors for a longer time to clinical remission [ 84 ]. Using SVM and k-nearest neighbors ML models, CSU patients were evaluated to predict response to omalizumab.…”
Section: Key Clinical Applications Of Ai In Allergymentioning
confidence: 99%
“…A random survival forest ML model was trained on clinical and demographic features of CSU patients available at the time of diagnosis to predict clinical remission. The model also identified non-modifiable risk factors, such as age and presence of comorbidities, as well as modifiable risk factors, such as smoking and elevated BMI, as risk factors for a longer time to clinical remission [ 84 ]. Using SVM and k-nearest neighbors ML models, CSU patients were evaluated to predict response to omalizumab.…”
Section: Key Clinical Applications Of Ai In Allergymentioning
confidence: 99%
“…[ 20 , 21 ] Yeong et al [ 22 ] developed an artificial neural network-based algorithm to predict when a burn would heal, with an overall prediction accuracy of 86%. Pivneva et al [ 23 ] recently developed a prediction model to estimate the clinical remission time of patients with chronic urticaria using machine learning methods.…”
Section: Introductionmentioning
confidence: 99%