Development of a multimodal machine-learning fusion model to non-invasively assess ileal Crohn's disease endoscopic activity

Comput Methods Programs Biomed. 2022 Dec:227:107207. doi: 10.1016/j.cmpb.2022.107207. Epub 2022 Oct 31.

Abstract

Background and objective: Recurrent attentive non-invasive observation of intestinal inflammation is essential for the proper management of Crohn's disease (CD). The goal of this study was to develop and evaluate a multi-modal machine-learning (ML) model to assess ileal CD endoscopic activity by integrating information from Magnetic Resonance Enterography (MRE) and biochemical biomarkers.

Methods: We obtained MRE, biochemical and ileocolonoscopy data from the multi-center ImageKids study database. We developed an optimized multimodal fusion ML model to non-invasively assess terminal ileum (TI) endoscopic disease activity in CD from MRE data. We determined the most informative features for model development using a permutation feature importance technique. We assessed model performance in comparison to the clinically recommended linear-regression MRE model in an experimental setup that consisted of stratified 2-fold validation, repeated 50 times, with the ileocolonoscopy-based Simple Endoscopic Score for CD at the TI (TI SES-CD) as a reference. We used the predictions' mean-squared-error (MSE) and the receiver operation characteristics (ROC) area under curve (AUC) for active disease classification (TI SEC-CD≥3) as performance metrics.

Results: 121 subjects out of the 240 subjects in the ImageKids study cohort had all required information (Non-active CD: 62 [51%], active CD: 59 [49%]). Length of disease segment and normalized biochemical biomarkers were the most informative features. The optimized fusion model performed better than the clinically recommended model determined by both a better median test MSE distribution (7.73 vs. 8.8, Wilcoxon test, p<1e-5) and a better aggregated AUC over the folds (0.84 vs. 0.8, DeLong's test, p<1e-9).

Conclusions: Optimized ML models for ileal CD endoscopic activity assessment have the potential to enable accurate and non-invasive attentive observation of intestinal inflammation in CD patients. The presented model is available at https://tcml-bme.github.io/ML_SESCD.html.

Keywords: Crohn’s disease; Machine-learning; Magnetic Resonance Enterography; Multimodal Learning in Medical Imaging and Informatics.

MeSH terms

  • Biomarkers
  • Crohn Disease* / diagnostic imaging
  • Crohn Disease* / pathology
  • Humans
  • Ileum / diagnostic imaging
  • Ileum / pathology
  • Inflammation
  • Machine Learning
  • Magnetic Resonance Imaging / methods

Substances

  • Biomarkers