Comparison and development of machine learning for thalidomide-induced peripheral neuropathy prediction of refractory Crohn’s disease in Chinese population

Jul 10, 2023World journal of gastroenterology

Machine learning to predict nerve damage from thalidomide in Chinese patients with hard-to-treat Crohn's disease

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Abstract

The XGBoost algorithm achieved an area under the receiver operating characteristic curve (AUROC) of 0.90 in predicting thalidomide-induced peripheral neuropathy (TiPN).

  • Five key risk factors associated with TiPN include interleukin-12 rs1353248, thalidomide dose, and several genetic variations in brain-derived neurotrophic factor (BDNF).
  • The predictive models were evaluated using various metrics, with XGBoost and gradient boosting decision tree achieving the highest scores for accuracy and precision.
  • In validation, XGBoost demonstrated superior performance with an AUROC of 0.89 and a specificity of 0.857.
  • The models utilized a combination of 18 clinical features and 150 genetic variables to enhance prediction accuracy.
  • The findings suggest that machine learning approaches could aid in identifying high-risk patients for TiPN, potentially improving treatment outcomes.

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