iScience (Feb 2024)

Predictive modeling for eosinophilic chronic rhinosinusitis: Nomogram and four machine learning approaches

  • Panhui Xiong,
  • Junliang Chen,
  • Yue Zhang,
  • Longlan Shu,
  • Yang Shen,
  • Yue Gu,
  • Yijun Liu,
  • Dayu Guan,
  • Bowen Zheng,
  • Yucheng Yang

Journal volume & issue
Vol. 27, no. 2
p. 108928

Abstract

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Summary: Eosinophilic chronic rhinosinusitis (ECRS) is a distinct subset of chronic rhinosinusitis characterized by heightened eosinophilic infiltration and increased symptom severity, often resisting standard treatments. Traditional diagnosis requires invasive histological evaluation. This study aims to develop predictive models for ECRS based on patient clinical parameters, eliminating the need for invasive biopsy. Utilizing logistic regression with lasso regularization, random forest (RF), gradient-boosted decision tree (GBDT), and deep neural network (DNN), we trained models on common clinical data. The predictive performance was evaluated using metrics such as area under the curve (AUC) for receiver operator characteristics, decision curves, and feature ranking analysis. In a cohort of 437 eligible patients, the models identified peripheral blood eosinophil ratio, absolute peripheral blood eosinophil, and the ethmoidal/maxillary sinus density ratio (E/M) on computed tomography as crucial predictors for ECRS. This predictive model offers a valuable tool for identifying ECRS without resorting to histological biopsy, enhancing clinical decision-making.

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