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Machine Learning Analysis of Postkeratoplasty Endothelial Cell Images for the Prediction of Future Graft Rejection

Naomi Joseph, Beth Ann Benetz, Prathyush Chirra, Harry Menegay, Silke Oellerich, Lamis Baydoun, Gerrit R.J. Melles, Jonathan H. Lass, David L. Wilson

Research output: Contribution to journalArticlepeer-review

4 Citations (Scopus)
49 Downloads (Pure)

Abstract

Purpose: This study developed machine learning (ML) classifiers of postoperative corneal endothelial cell images to identify postkeratoplasty patients at risk for allograft rejection within 1 to 24 months of treatment. Methods: Central corneal endothelium specular microscopic images were obtained from 44 patients after Descemet membrane endothelial keratoplasty (DMEK), half of whom had experienced graft rejection. After deep learning segmentation of images from all patients’ last and second-to-last imaging, time points prior to rejection were analyzed (175 and 168, respectively), and 432 quantitative features were extracted assessing cellular spatial arrangements and cell intensity values. Random forest (RF) and logistic regression (LR) models were trained on novel-to-this-application features from single time points, delta-radiomics, and traditional morphometrics (endothelial cell density, coefficient of variation, hexagonality) via 10 iterations of threefold cross-validation. Final assessments were evaluated on a held-out test set. Results: ML classifiers trained on novel-to-this-application features outperformed those trained on traditional morphometrics for predicting future graft rejection. RF and LR models predicted post-DMEK patients’ allograft rejection in the held-out test set with >0.80 accuracy. RF models trained on novel features from second-to-last time points and delta-radiomics predicted post-DMEK patients’ rejection with >0.70 accuracy. Cell-graph spatial arrangement, intensity, and shape features were most indicative of graft rejection. Conclusions: ML classifiers successfully predicted future graft rejections 1 to 24 months prior to clinically apparent rejection. This technology could aid clinicians to identify patients at risk for graft rejection and guide treatment plans accordingly. Translational Relevance: Our software applies ML techniques to clinical images and enhances patient care by detecting preclinical keratoplasty rejection.

Original languageEnglish
Article number22
Number of pages15
JournalTranslational Vision Science and Technology
Volume12
Issue number2
DOIs
Publication statusPublished - Feb 2023

Bibliographical note

Funding Information:
Supported by the National Eye Institute (R21EY02949801, PHS 5 T32 EB 7509-15, U10 EY12728, U10 EY012358, U10 EY020798). The content of this report was solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health (NIH). This work made use of the High-Performance Computing Resource in the Core Facility for Advanced Research Computing at Case Western Reserve University. This research was conducted in space renovated using funds from an NIH construction grant (C06 RR12463) awarded to Case Western Reserve University.

Publisher Copyright:
© 2023 The Authors.

Keywords

  • cornea
  • feature extraction
  • image processing
  • machine learning

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