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A modular deep learning pipeline for stromal TILs scoring in breast cancer H&E slides.

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Computer methods and programs in biomedicine 📖 저널 OA 23.9% 2022: 0/1 OA 2023: 0/1 OA 2024: 0/1 OA 2025: 0/7 OA 2026: 11/36 OA 2022~2026 2026 Vol.282() p. 109374 OA AI in cancer detection
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PubMed DOI OpenAlex 마지막 보강 2026-04-29
OpenAlex 토픽 · AI in cancer detection Breast Cancer Treatment Studies Breast Lesions and Carcinomas

Abdelazeez S, Ahmed F, Adalid L, Siemion K, Lopez C, Lejeune M

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[BACKGROUND AND OBJECTIVE] Tumor-infiltrating lymphocytes (TILs) are an important indicator of immune activity in breast cancer, yet scoring them consistently on H&E slides remains challenging in rout

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APA Shrief Abdelazeez, Faisal Ahmed, et al. (2026). A modular deep learning pipeline for stromal TILs scoring in breast cancer H&E slides.. Computer methods and programs in biomedicine, 282, 109374. https://doi.org/10.1016/j.cmpb.2026.109374
MLA Shrief Abdelazeez, et al.. "A modular deep learning pipeline for stromal TILs scoring in breast cancer H&E slides.." Computer methods and programs in biomedicine, vol. 282, 2026, pp. 109374.
PMID 42013559 ↗

Abstract

[BACKGROUND AND OBJECTIVE] Tumor-infiltrating lymphocytes (TILs) are an important indicator of immune activity in breast cancer, yet scoring them consistently on H&E slides remains challenging in routine pathology. This work presents a modular deep learning pipeline that delivers fully automated and continuous stromal TILs (sTILs) scores in line with the International Immuno-Oncology Biomarker Working Group (IIOBWG) guidelines.

[METHODS] The pipeline combines three components: a TIL segmentation model refined through pathologist-guided active learning, a robust stroma segmentation network based on an enhanced DeepLabV3+, and a lightweight regression module that learns how TILs distribute within stromal regions. A new adaptive aggregation strategy integrates patch-level predictions into a single, clinically meaningful score while accounting for heterogeneous infiltration.

[RESULTS] The system was evaluated on two independent datasets (60 and 112 WSIs) with expert-annotated ROIs, achieving strong agreement with pathologists (Pearson of 0.814; ICC of 0.808).

[CONCLUSIONS] Importantly, the pipeline is interpretable: each stage produces human-readable outputs (stroma masks, TIL-in-stroma maps), and SegGradCAM visualizations confirm that predictions rely on biologically relevant tissue regions. These findings demonstrate the pipeline's potential as a reliable and clinically adaptable tool for standardized, fully automated TILs quantification in breast cancer pathology. The source code and pretrained models are publicly available at https://github.com/Shrief-Abdelazeez/TILs-Scoring.

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