Towards accurate and efficient diagnoses in nephropathology: An AI-based approach for assessing kidney transplant rejection

The Banff classification is useful for diagnosing renal transplant rejection. However, it has limitations due to subjectivity and varying concordance in physicians' assessments. Artificial intelligence (AI) can help standardize research, increase objectivity and accurately quantify morphological characteristics, improving reproducibility in clinical practice. This study aims to develop an AI-based solutions for diagnosing acute kidney transplant rejection by introducing automated evaluation of prognostic morphological patterns. The proposed approach aims to help accurately distinguish borderline changes from rejection. We trained a deep-learning model utilizing a fine-tuned Mask R-CNN architecture which achieved a mean Average Precision value of 0.74 for the segmentation of renal tissue structures. A strong positive nonlinear correlation was found between the measured infiltration areas and fibrosis, indicating the model's potential for assessing these parameters in kidney biopsies. The ROC analysis showed a high predictive ability for distinguishing between ci and i scores based on infiltration area and fibrosis area measurements. The AI model demonstrated high precision in predicting clinical scores which makes it a promising AI assisting tool for pathologists. The application of AI in nephropathology has a potential for advancements, including automated morphometric evaluation, 3D histological models and faster processing to enhance diagnostic accuracy and efficiency. © 2024 The Authors

Авторы
Fayzullin A. , Ivanova E. , Grinin V. , Ermilov D. , Solovyeva S. , Balyasin M. , Bakulina A. , Nikitin P. , Valieva Y. , Kalinichenko A. , Arutyunyan A. , Lychagin A. , Timashev P.
Издательство
Elsevier B.V.
Язык
English
Страницы
571-582
Статус
Published
Том
24
Год
2024
Организации
  • 1 Institute for Regenerative Medicine, Sechenov First Moscow State Medical University (Sechenov University), 8–2 Trubetskaya st, Moscow, 119991, Russian Federation
  • 2 World-Class Research Center “Digital Biodesign and Personalized Healthcare, Sechenov First Moscow State Medical University (Sechenov University), 8–2 Trubetskaya st, Moscow, 119991, Russian Federation
  • 3 B.V.Petrovsky Russian Research Center of Surgery, 2 Abrikosovskiy lane, Moscow, 119991, Russian Federation
  • 4 PJSC VimpelCom, 10 8th March Street, Moscow, 127083, Russian Federation
  • 5 Scientific and Educational Resource Center, Peoples’ Friendship University of Russia, 6 Miklukho-Maklaya st, Moscow, 117198, Russian Federation
  • 6 Department of Trauma, Orthopedics and Disaster Surgery, Sechenov First Moscow State Medical University (Sechenov University), 8–2 Trubetskaya st, Moscow, 119991, Russian Federation
Ключевые слова
Artificial intelligence; Computational pathology; Digital pathology; Transplant rejection; Whole slide images
Цитировать
Поделиться

Другие записи