The differential diagnosis of IgG4-related disease based on machine learning

Motohisa Yamamoto, Masanori Nojima, Ryuta Kamekura, Akiko Kuribara-Souta, Masaaki Uehara, Hiroki Yamazaki, Noritada Yoshikawa, Satsuki Aochi, Ichiro Mizushima, Takayuki Watanabe, Aya Nishiwaki, Toshihiko Komai, Hirofumi Shoda, Koji Kitagori, Hajime Yoshifuji, Hideaki Hamano, Mitsuhiro Kawano, Ken ichi Takano, Keishi Fujio, Hirotoshi Tanaka

Research output: Contribution to journalArticlepeer-review

Abstract

Introduction: To eliminate the disparity and maldistribution of physicians and medical specialty services, the development of diagnostic support for rare diseases using artificial intelligence is being promoted. Immunoglobulin G4 (IgG4)-related disease (IgG4-RD) is a rare disorder often requiring special knowledge and experience to diagnose. In this study, we investigated the possibility of differential diagnosis of IgG4-RD based on basic patient characteristics and blood test findings using machine learning. Methods: Six hundred and two patients with IgG4-RD and 204 patients with non-IgG4-RD that needed to be differentiated who visited the participating institutions were included in the study. Ten percent of the subjects were randomly excluded as a validation sample. Among the remaining cases, 80% were used as training samples, and the remaining 20% were used as test samples. Finally, validation was performed on the validation sample. The analysis was performed using a decision tree and a random forest model. Furthermore, a comparison was made between conditions with and without the serum IgG4 concentration. Accuracy was evaluated using the area under the receiver-operating characteristic (AUROC) curve. Results: In diagnosing IgG4-RD, the AUROC curve values of the decision tree and the random forest method were 0.906 and 0.974, respectively, when serum IgG4 levels were included in the analysis. Excluding serum IgG4 levels, the AUROC curve value of the analysis by the random forest method was 0.925. Conclusion: Based on machine learning in a multicenter collaboration, with or without serum IgG4 data, basic patient characteristics and blood test findings alone were sufficient to differentiate IgG4-RD from non-IgG4-RD.

Original languageEnglish
Article number71
JournalArthritis Research and Therapy
Volume24
Issue number1
DOIs
Publication statusPublished - 2022 Dec
Externally publishedYes

Keywords

  • Artificial intelligence
  • Differential diagnosis
  • IgG4-related disease
  • Machine learning

ASJC Scopus subject areas

  • Rheumatology
  • Immunology and Allergy
  • Immunology

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