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  3. Artificial intelligence-based quantification of lymphocytes in feline small intestinal biopsies.
 

Artificial intelligence-based quantification of lymphocytes in feline small intestinal biopsies.

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BORIS DOI
10.48620/76254
Publisher DOI
10.1177/03009858241286828
PubMed ID
39400051
Description
Feline chronic enteropathy is a poorly defined condition of older cats that encompasses chronic enteritis to low-grade intestinal lymphoma. The histological evaluation of lymphocyte numbers and distribution in small intestinal biopsies is crucial for classification and grading. However, conventional histological methods for lymphocyte quantification have low interobserver agreement, resulting in low diagnostic reliability. This study aimed to develop and validate an artificial intelligence (AI) model to detect intraepithelial and lamina propria lymphocytes in hematoxylin and eosin-stained small intestinal biopsies from cats. The median sensitivity, positive predictive value, and F1 score of the AI model compared with the majority opinion of 11 veterinary anatomic pathologists, were 100% (interquartile range [IQR] 67%-100%), 57% (IQR 38%-83%), and 67% (IQR 43%-80%) for intraepithelial lymphocytes, and 89% (IQR 71%-100%), 67% (IQR 50%-82%), and 70% (IQR 43%-80%) for lamina propria lymphocytes, respectively. Errors included false negatives in whole-slide images with faded stain and false positives in misidentifying enterocyte nuclei. Semiquantitative grading at the whole-slide level showed low interobserver agreement among pathologists, underscoring the need for a reproducible quantitative approach. While semiquantitative grade and AI-derived lymphocyte counts correlated positively, the AI-derived lymphocyte counts overlapped between different grades. Our AI model, when supervised by a pathologist, offers a reproducible, objective, and quantitative assessment of feline intestinal lymphocytes at the whole-slide level, and has the potential to enhance diagnostic accuracy and consistency for feline chronic enteropathy.
Date of Publication
2025-03
Publication Type
Article
Subject(s)
500 Science > 590 Animals (Zoology)
Keyword(s)
cat
•
computer vision
•
deep learning
•
feline chronic enteropathy
•
gastrointestinal
•
image analysis
•
lymphoplasmacytic enteritis
•
small cell lymphoma
Language(s)
en
Contributor(s)
Wulcan, Judit M
Giaretta, Paula R
Fingerhood, Sai
De Brot, Simone
Institute of Animal Pathology, Laboratory Cancer Therapy Escape I
Crouch, Esther E V
Wolf, Tatiana
Isabel Casanova, Maria
Ruivo, Pedro R
Bolfa, Pompei
Streitenberger, Nicolás
Bertram, Christof A
Donovan, Taryn A
Keel, Michael Kevin
Moore, Peter F
Keller, Stefan M
Additional Credits
Institute of Animal Pathology, Laboratory Cancer Therapy Escape I
Department of Infectious Diseases and Pathobiology (DIP)
Series
Veterinary Pathology
Publisher
SAGE Publications
ISSN
0300-9858
Access(Rights)
open.access
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