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  3. Artificial intelligence predicts c-KIT exon 11 genotype by phenotype in canine cutaneous mast cell tumors: Can human observers learn it?
 

Artificial intelligence predicts c-KIT exon 11 genotype by phenotype in canine cutaneous mast cell tumors: Can human observers learn it?

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BORIS DOI
10.48620/91753
Publisher DOI
10.1177/03009858251380284
PubMed ID
41059708
Description
Canine cutaneous mast cell tumors (ccMCTs) are frequent neoplasms with variable biological behaviors. Internal tandem duplication mutations in c-KIT exon 11 (c-KIT-11-ITD) are associated with poor prognosis but predict therapeutic response to tyrosine kinase inhibitors. In a previous work, deep learning algorithms managed to predict the presence of c-KIT-11-ITD on digitalized hematoxylin and eosin-stained histological slides (whole-slide images, WSIs) in up to 87% of cases, suggesting the existence of morphological features characterizing ccMCTs carrying c-KIT-11-ITD. This 3-stage blinded study aimed to identify morphological features indicative of c-KIT-11-ITD and to evaluate the ability of human observers to learn this task. 17 untrained pathologists first classified 8 WSIs and 200 image patches (highly relevant for algorithmic classification) of ccMCTs as either positive or negative for c-KIT-11-ITD. Second, they self-trained to recognize c-KIT-11-ITD by looking at the same WSIs and patches correctly sorted. Third, pathologists classified 15 new WSIs and 200 new patches according to c-KIT-11-ITD status. In addition, participants reported microscopic features they considered relevant for their decision. Without training, participants correctly classified the c-KIT-11-ITD status of 63%-88% of WSIs and 43%-55% of patches. With self-training, 25%-38% of WSIs and 55%-56% of patches were correctly classified. High cellular pleomorphism, anisokaryosis, and sparse cytoplasmic granulation were commonly suggested as features associated with c-KIT-11-ITD-positive ccMCTs, none of which showed reliable predictivity in a follow-up study. The results indicate that transfer of algorithmic skills to the human observer is difficult. A c-KIT-11-ITD-specific morphological feature remains to be extracted from the artificial intelligence model.
Date of Publication
2026-03
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
c-KIT
•
deep learning
•
digital pathology
•
dog
•
genotype prediction
•
mast cell tumor
•
morphological feature
•
performance study
Language(s)
en
Contributor(s)
Puget, ChloƩ
Ganz, Jonathan
Bertram, Christof A
Conrad, Thomas
Baeblich, Malte
Voss, Anne
Landmann, Katharina
Haake, Alexander F H
Spree, Andreas
Hartung, Svenja
Aeschlimann, Leonoreorcid-logo
Institute of Animal Pathology, Teaching Diagnostics
Institute of Animal Pathology
Soto, Sara
Institute of Animal Pathology, Laboratory Cancer Therapy Escape I
Institute of Animal Pathology, Teaching Diagnostics
Institute of Animal Pathology
De Brot, Simone
Institute of Animal Pathology, Teaching Diagnostics
Institute of Animal Pathology, Laboratory Cancer Therapy Escape I
Dettwiler, Martina
Aupperle-Lellbach, Heike
Bolfa, Pompei
Bartel, Alexander
Kiupel, Matti
Breininger, Katharina
Aubreville, Marc
Klopfleisch, Robert
Additional Credits
Institute of Animal Pathology
Institute of Animal Pathology, Teaching Diagnostics
Institute of Animal Pathology, Laboratory Cancer Therapy Escape I
Series
Veterinary Pathology
Publisher
SAGE Publications
ISSN
1544-2217
0300-9858
Access(Rights)
open.access
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