IVAICVLGJul 14, 2025

DepViT-CAD: Deployable Vision Transformer-Based Cancer Diagnosis in Histopathology

arXiv:2507.10250v12 citationsh-index: 29
Originality Incremental advance
AI Analysis

This addresses the need for timely and reliable cancer diagnosis in clinical settings, representing a domain-specific advancement.

The paper tackles the problem of accurate cancer diagnosis from histopathological slides by introducing DepViT-CAD, a deployable AI system that achieved diagnostic sensitivities of 94.11% and 92% on two independent validation cohorts.

Accurate and timely cancer diagnosis from histopathological slides is vital for effective clinical decision-making. This paper introduces DepViT-CAD, a deployable AI system for multi-class cancer diagnosis in histopathology. At its core is MAViT, a novel Multi-Attention Vision Transformer designed to capture fine-grained morphological patterns across diverse tumor types. MAViT was trained on expert-annotated patches from 1008 whole-slide images, covering 11 diagnostic categories, including 10 major cancers and non-tumor tissue. DepViT-CAD was validated on two independent cohorts: 275 WSIs from The Cancer Genome Atlas and 50 routine clinical cases from pathology labs, achieving diagnostic sensitivities of 94.11% and 92%, respectively. By combining state-of-the-art transformer architecture with large-scale real-world validation, DepViT-CAD offers a robust and scalable approach for AI-assisted cancer diagnostics. To support transparency and reproducibility, software and code will be made publicly available at GitHub.

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