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A machine learning algorithm improves the diagnostic accuracy of the histologic component of antibody mediated rejection (AMR-H) in cardiac transplant endomyocardial biopsies.

Publication ,  Journal Article
Glass, M; Ji, Z; Davis, R; Pavlisko, EN; DiBernardo, L; Carney, J; Fishbein, G; Luthringer, D; Miller, D; Mitchell, R; Larsen, B; Butt, Y ...
Published in: Cardiovasc Pathol
2024

BACKGROUND: Pathologic antibody mediated rejection (pAMR) remains a major driver of graft failure in cardiac transplant patients. The endomyocardial biopsy remains the primary diagnostic tool but presents with challenges, particularly in distinguishing the histologic component (pAMR-H) defined by 1) intravascular macrophage accumulation in capillaries and 2) activated endothelial cells that expand the cytoplasm to narrow or occlude the vascular lumen. Frequently, pAMR-H is difficult to distinguish from acute cellular rejection (ACR) and healing injury. With the advent of digital slide scanning and advances in machine deep learning, artificial intelligence technology is widely under investigation in the areas of oncologic pathology, but in its infancy in transplant pathology. For the first time, we determined if a machine learning algorithm could distinguish pAMR-H from normal myocardium, healing injury and ACR. MATERIALS AND METHODS: A total of 4,212 annotations (1,053 regions of normal, 1,053 pAMR-H, 1,053 healing injury and 1,053 ACR) were completed from 300 hematoxylin and eosin slides scanned using a Leica Aperio GT450 digital whole slide scanner at 40X magnification. All regions of pAMR-H were annotated from patients confirmed with a previous diagnosis of pAMR2 (>50% positive C4d immunofluorescence and/or >10% CD68 positive intravascular macrophages). Annotations were imported into a Python 3.7 development environment using the OpenSlide™ package and a convolutional neural network approach utilizing transfer learning was performed. RESULTS: The machine learning algorithm showed 98% overall validation accuracy and pAMR-H was correctly distinguished from specific categories with the following accuracies: normal myocardium (99.2%), healing injury (99.5%) and ACR (99.5%). CONCLUSION: Our novel deep learning algorithm can reach acceptable, and possibly surpass, performance of current diagnostic standards of identifying pAMR-H. Such a tool may serve as an adjunct diagnostic aid for improving the pathologist's accuracy and reproducibility, especially in difficult cases with high inter-observer variability. This is one of the first studies that provides evidence that an artificial intelligence machine learning algorithm can be trained and validated to diagnose pAMR-H in cardiac transplant patients. Ongoing studies include multi-institutional verification testing to ensure generalizability.

Duke Scholars

Published In

Cardiovasc Pathol

DOI

EISSN

1879-1336

Publication Date

2024

Volume

72

Start / End Page

107646

Location

United States

Related Subject Headings

  • Treatment Outcome
  • Retrospective Studies
  • Reproducibility of Results
  • Predictive Value of Tests
  • Myocardium
  • Macrophages
  • Machine Learning
  • Image Interpretation, Computer-Assisted
  • Humans
  • Heart Transplantation
 

Citation

APA
Chicago
ICMJE
MLA
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Glass, M., Ji, Z., Davis, R., Pavlisko, E. N., DiBernardo, L., Carney, J., … Glass, C. (2024). A machine learning algorithm improves the diagnostic accuracy of the histologic component of antibody mediated rejection (AMR-H) in cardiac transplant endomyocardial biopsies. Cardiovasc Pathol, 72, 107646. https://doi.org/10.1016/j.carpath.2024.107646
Glass, Matthew, Zhicheng Ji, Richard Davis, Elizabeth N. Pavlisko, Louis DiBernardo, John Carney, Gregory Fishbein, et al. “A machine learning algorithm improves the diagnostic accuracy of the histologic component of antibody mediated rejection (AMR-H) in cardiac transplant endomyocardial biopsies.Cardiovasc Pathol 72 (2024): 107646. https://doi.org/10.1016/j.carpath.2024.107646.
Glass, Matthew, et al. “A machine learning algorithm improves the diagnostic accuracy of the histologic component of antibody mediated rejection (AMR-H) in cardiac transplant endomyocardial biopsies.Cardiovasc Pathol, vol. 72, 2024, p. 107646. Pubmed, doi:10.1016/j.carpath.2024.107646.
Glass M, Ji Z, Davis R, Pavlisko EN, DiBernardo L, Carney J, Fishbein G, Luthringer D, Miller D, Mitchell R, Larsen B, Butt Y, Bois M, Maleszewski J, Halushka M, Seidman M, Lin C-Y, Buja M, Stone J, Dov D, Carin L, Glass C. A machine learning algorithm improves the diagnostic accuracy of the histologic component of antibody mediated rejection (AMR-H) in cardiac transplant endomyocardial biopsies. Cardiovasc Pathol. 2024;72:107646.
Journal cover image

Published In

Cardiovasc Pathol

DOI

EISSN

1879-1336

Publication Date

2024

Volume

72

Start / End Page

107646

Location

United States

Related Subject Headings

  • Treatment Outcome
  • Retrospective Studies
  • Reproducibility of Results
  • Predictive Value of Tests
  • Myocardium
  • Macrophages
  • Machine Learning
  • Image Interpretation, Computer-Assisted
  • Humans
  • Heart Transplantation