Towards Spatial Transcriptomics-guided Pathological Image Recognition with Batch-Agnostic Encoder
By: Kazuya Nishimura, Ryoma Bise, Yasuhiro Kojima
Potential Business Impact:
Finds disease clues in cells using gene maps.
Spatial transcriptomics (ST) is a novel technique that simultaneously captures pathological images and gene expression profiling with spatial coordinates. Since ST is closely related to pathological features such as disease subtypes, it may be valuable to augment image representation with pathological information. However, there are no attempts to leverage ST for image recognition ({\it i.e,} patch-level classification of subtypes of pathological image.). One of the big challenges is significant batch effects in spatial transcriptomics that make it difficult to extract pathological features of images from ST. In this paper, we propose a batch-agnostic contrastive learning framework that can extract consistent signals from gene expression of ST in multiple patients. To extract consistent signals from ST, we utilize the batch-agnostic gene encoder that is trained in a variational inference manner. Experiments demonstrated the effectiveness of our framework on a publicly available dataset. Code is publicly available at https://github.com/naivete5656/TPIRBAE
Similar Papers
TransST: Transfer Learning Embedded Spatial Factor Modeling of Spatial Transcriptomics Data
Genomics
Finds tiny cell groups in body maps.
Scalable Generation of Spatial Transcriptomics from Histology Images via Whole-Slide Flow Matching
CV and Pattern Recognition
Shows where genes are in cells faster.
Spatial Transcriptomics Expression Prediction from Histopathology Based on Cross-Modal Mask Reconstruction and Contrastive Learning
CV and Pattern Recognition
**Helps doctors find cancer by reading cell maps.**