Establishment of a new classification system for chronic inflammatory demyelinating polyneuropathy based on unsupervised machine learning

Chun Wei Chang, Long Sun Ro*, Rong Kuo Lyu, Hung Chou Kuo, Ming Feng Liao, Yih Ru Wu, Chiung Mei Chen, Hong Shiu Chang, Yi Ching Weng, Chin Chang Huang, Kuo Hsuan Chang*

*Corresponding author for this work

Research output: Contribution to journalJournal Article peer-review

1 Scopus citations

Abstract

Introduction/Aims: A model for predicting responsiveness to immunotherapy in patients with chronic inflammatory demyelinating polyneuropathy (CIDP) has not been well established. We aimed to establish a new classifier for CIDP patients based on clinical characteristics, laboratory findings, and electrophysiological features. Methods: The clinical, laboratory, and electrophysiological features of 172 treatment-naïve patients with CIDP between 2003 and 2019 were analyzed using an unsupervised hierarchical clustering. The identified pivotal features were used to establish simple classifications using a tree-based model. Results: Three clusters were identified: 1, n = 65; 2, n = 70; and 3, n = 37. Patients in Cluster 1 scored lower on the disability assessment score before treatment. More patients in Clusters 2 (90.0%) fulfilled demyelinating criteria than patients in Cluster 1 (30.8%, p <.001). Cluster 3 had more patients with chronic kidney disease (CKD) (27.0%) and hypoalbuminemia (3.40 g/dL) than did Cluster 2 (CKD: 0%, p <.001; hypoalbuminemia: 4.09 g/dL, p <.001). The responsiveness to pulse steroid therapy was higher in Cluster 2 (70.0%) than in Clusters 1 (31.8%; p =.043) and 3 (25.0%; p =.014). A tree-based model with four pivotal features classified patients in our cohort into new clusters with high accuracy (89.5%). Discussion: The established hierarchical clustering with the tree-based model identified key features contributing to differences in disease severity and response to pulse steroid therapy. This classification system could assist clinicians in the selection of treatments and could also help researchers by clustering patients for clinical treatment trials.

Original languageEnglish
Pages (from-to)603-611
Number of pages9
JournalMuscle and Nerve
Volume66
Issue number5
DOIs
StatePublished - 11 2022

Bibliographical note

Publisher Copyright:
© 2022 Wiley Periodicals LLC.

Keywords

  • chronic inflammatory demyelinating
  • cluster analysis
  • immunotherapy
  • machine learning
  • polyradiculoneuropathy
  • prognosis

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