Deep learning-driven whole-slide image analysis predicts chemo-resistance and motility subtypes in muscle-invasive bladder cancer
  • Jeong, Il-San
  • Seo, Jee-Woo
  • Park, Seung-Jin
  • Kim, Seon-Young
  • Kim, Seon-Kyu
  • 외 1명
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BackgroundMuscle-invasive bladder cancer (MIBC) is a clinically aggressive and heterogeneous disease with variable treatment responses. Transcriptome-based classifications, such as the Chemoresistance-Motility (CrM) signature, are valuable for understanding therapeutic resistance, but their clinical use is often hindered by high cost and tissue requirements. This study explores an alternative, scalable approach using deep learning analysis of whole slide images (WSIs).ObjectiveWe aimed to evaluate whether patch-level predictions from deep learning models applied to WSIs can accurately predict transcriptome-derived CrM subtypes and reflect tumor microenvironment (TME) characteristics in MIBC.MethodsWe analyzed 192 WSIs from 152 TCGA-BLCA patients. A pretrained deep learning model (densenet169-kather100k) was used to classify eight distinct tissue types per patch. A key histological metric, the SAM-to-DNT ratio, which represents the ratio of stromal, adipose, and smooth muscle (SAM) tissue types to debris, normal, and tumor epithelium (DNT) tissue types, was derived from these proportions. A random forest model was then trained on these features to predict CrM subtypes.ResultsThe WSI-derived SAM-to-DNT ratio showed a strong positive correlation with the CrM score (R = 0.453) and transcriptome-based TME scores, such as cancer-associated fibroblasts (R = 0.398). Our random forest model successfully classified CrM subtypes with a balanced accuracy of 0.75, outperforming other algorithms. Feature importance analysis identified adipose tissue (ADI) and tumor epithelium (TUM) as the most predictive features for CrM status.ConclusionsDeep learning analysis of routine histological WSIs can serve as a practical, low-cost surrogate for molecular profiling, effectively capturing transcriptomic subtypes associated with chemoresistance in MIBC. This approach provides a viable method for patient stratification and establishes a foundation for future multi-modal precision oncology applications.

키워드

Muscle-invasive bladder cancerWhole slide imageDeep LearningPatch-level predictionTumor microenvironment
제목
Deep learning-driven whole-slide image analysis predicts chemo-resistance and motility subtypes in muscle-invasive bladder cancer
저자
Jeong, Il-SanSeo, Jee-WooPark, Seung-JinKim, Seon-YoungKim, Seon-KyuBaek, Seung-Woo
DOI
10.1007/s13258-025-01677-0
발행일
2025-12
유형
Article
저널명
Genes & Genomics
47
12
페이지
1267 ~ 1276