» Articles » PMID: 32739769

Whole Slide Images Based Cancer Survival Prediction Using Attention Guided Deep Multiple Instance Learning Networks

Overview
Journal Med Image Anal
Publisher Elsevier
Specialty Radiology
Date 2020 Aug 3
PMID 32739769
Citations 67
Authors
Affiliations
Soon will be listed here.
Abstract

Traditional image-based survival prediction models rely on discriminative patch labeling which make those methods not scalable to extend to large datasets. Recent studies have shown Multiple Instance Learning (MIL) framework is useful for histopathological images when no annotations are available in classification task. Different to the current image-based survival models that limit to key patches or clusters derived from Whole Slide Images (WSIs), we propose Deep Attention Multiple Instance Survival Learning (DeepAttnMISL) by introducing both siamese MI-FCN and attention-based MIL pooling to efficiently learn imaging features from the WSI and then aggregate WSI-level information to patient-level. Attention-based aggregation is more flexible and adaptive than aggregation techniques in recent survival models. We evaluated our methods on two large cancer whole slide images datasets and our results suggest that the proposed approach is more effective and suitable for large datasets and has better interpretability in locating important patterns and features that contribute to accurate cancer survival predictions. The proposed framework can also be used to assess individual patient's risk and thus assisting in delivering personalized medicine.

Citing Articles

Abnormality-aware multimodal learning for WSI classification.

Dang T, Zhou Q, Guo Y, Ma H, Na S, Dang T Front Med (Lausanne). 2025; 12:1546452.

PMID: 40070646 PMC: 11893561. DOI: 10.3389/fmed.2025.1546452.


A foundation model for generalizable cancer diagnosis and survival prediction from histopathological images.

Yang Z, Wei T, Liang Y, Yuan X, Gao R, Xia Y Nat Commun. 2025; 16(1):2366.

PMID: 40064883 PMC: 11894166. DOI: 10.1038/s41467-025-57587-y.


A High-Resolution Digital Pathological Image Staining Style Transfer Model Based on Gradient Guidance.

Tang Y, Zhou Y, Zhang S, Lu Y Bioengineering (Basel). 2025; 12(2).

PMID: 40001706 PMC: 11851416. DOI: 10.3390/bioengineering12020187.


A Methodological Framework for AI-Assisted Diagnosis of Ovarian Masses Using CT and MR Imaging.

Adusumilli P, Ravikumar N, Hall G, Scarsbrook A J Pers Med. 2025; 15(2).

PMID: 39997351 PMC: 11856859. DOI: 10.3390/jpm15020076.


Benchmarking histopathology foundation models for ovarian cancer bevacizumab treatment response prediction from whole slide images.

Mallya M, Mirabadi A, Farnell D, Farahani H, Bashashati A Discov Oncol. 2025; 16(1):196.

PMID: 39961889 PMC: 11832855. DOI: 10.1007/s12672-025-01973-x.