MEATRD: Multimodal Anomalous Tissue Region Detection Enhanced with Spatial Transcriptomics
Kaichen Xu, Qilong Wu, Yan Lu, Yinan Zheng, Wenlin Li, Xingjie Tang,, Jun Wang, and Xiaobo Sun

TL;DR
MEATRD is a novel multimodal method that integrates histology images and spatial transcriptomics data to improve anomalous tissue region detection, especially in subtle cases, using a transformer-based reconstruction and one-class classification approach.
Contribution
It introduces MEATRD, a new multimodal ATR detection framework with a masked graph dual-attention transformer that effectively combines molecular and visual tissue data.
Findings
Outperforms state-of-the-art methods on eight datasets.
Effectively detects subtle ATRs with minimal visual differences.
Provides theoretical insights into multimodal encoding properties.
Abstract
The detection of anomalous tissue regions (ATRs) within affected tissues is crucial in clinical diagnosis and pathological studies. Conventional automated ATR detection methods, primarily based on histology images alone, falter in cases where ATRs and normal tissues have subtle visual differences. The recent spatial transcriptomics (ST) technology profiles gene expressions across tissue regions, offering a molecular perspective for detecting ATRs. However, there is a dearth of ATR detection methods that effectively harness complementary information from both histology images and ST. To address this gap, we propose MEATRD, a novel ATR detection method that integrates histology image and ST data. MEATRD is trained to reconstruct image patches and gene expression profiles of normal tissue spots (inliers) from their multimodal embeddings, followed by learning a one-class classification AD…
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Code & Models
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Taxonomy
TopicsMolecular Biology Techniques and Applications · Anomaly Detection Techniques and Applications
