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Review
. 2023 Sep 4;10(9):1041.
doi: 10.3390/bioengineering10091041.

Artificial Intelligence Advances in Transplant Pathology

Affiliations
Review

Artificial Intelligence Advances in Transplant Pathology

Md Arafatur Rahman et al. Bioengineering (Basel). .

Abstract

Transplant pathology plays a critical role in ensuring that transplanted organs function properly and the immune systems of the recipients do not reject them. To improve outcomes for transplant recipients, accurate diagnosis and timely treatment are essential. Recent advances in artificial intelligence (AI)-empowered digital pathology could help monitor allograft rejection and weaning of immunosuppressive drugs. To explore the role of AI in transplant pathology, we conducted a systematic search of electronic databases from January 2010 to April 2023. The PRISMA checklist was used as a guide for screening article titles, abstracts, and full texts, and we selected articles that met our inclusion criteria. Through this search, we identified 68 articles from multiple databases. After careful screening, only 14 articles were included based on title and abstract. Our review focuses on the AI approaches applied to four transplant organs: heart, lungs, liver, and kidneys. Specifically, we found that several deep learning-based AI models have been developed to analyze digital pathology slides of biopsy specimens from transplant organs. The use of AI models could improve clinicians' decision-making capabilities and reduce diagnostic variability. In conclusion, our review highlights the advancements and limitations of AI in transplant pathology. We believe that these AI technologies have the potential to significantly improve transplant outcomes and pave the way for future advancements in this field.

Keywords: artificial intelligence; digital pathology; heart transplant; kidney transplant; liver transplant; lung transplant; transplant pathology.

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Conflict of interest statement

The authors declare no conflict of interest.

Figures

Figure 1
Figure 1
A depiction of an AI-assisted renal transplant pathology workflow.
Figure 2
Figure 2
An overview of the systematic review process.

References

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