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BiTro: Bidirectional Transfer Learning Enhances Bulk and Spatial Transcriptomics Prediction in Cancer Pathological Images

About

Cancer pathological analysis requires modeling tumor heterogeneity across multiple modalities, primarily through transcriptomics and whole slide imaging (WSI), along with their spatial relations. On one hand, bulk transcriptomics and WSI images are largely available but lack spatial mapping; on the other hand, spatial transcriptomics (ST) data can offer high spatial resolution, yet facing challenges of high cost, low sequencing depth, and limited sample sizes. Therefore, the data foundation of either side is flawed and has its limit in accurately finding the mapping between the two modalities. To this end, we propose BiTro, a bidirectional transfer learning framework that can enhance bulk and spatial transcriptomics prediction from pathological images. Our contributions are twofold. First, we design a universal and transferable model architecture that works for both bulk+WSI and ST data. A major highlight is that we model WSI images on the cellular level to better capture cells' visual features, morphological phenotypes, and their spatial relations; to map cells' features to their transcriptomics measured in bulk or ST, we adopt multiple instance learning. Second, by using LoRA, our model can be efficiently transferred between bulk and ST data to exploit their complementary information. To test our framework, we conducted comprehensive experiments on five cancer datasets. Results demonstrate that 1) our base model can achieve better or competitive performance compared to existing models on bulk or spatial transcriptomics prediction, and 2) transfer learning can further improve the base model's performance.

Jingkun Yu, Guangkai Shang, Changtao Li, Xun Gong, Tianrui Li, Yazhou He, Zhipeng Luo• 2026

Related benchmarks

TaskDatasetResultRank
Bulk transcriptomics predictionBRCA
Pearson Correlation Coefficient (PCC)0.743
6
Bulk transcriptomics predictionCOAD
PCC Overall0.946
6
Bulk transcriptomics predictionPRAD
PCC (Overall)0.831
6
Bulk transcriptomics predictionLIHC HCC
PCC Overall0.844
6
Spatial Transcriptomics PredictionBRCA Hest-1k
PCC (overall)0.598
6
Spatial Transcriptomics PredictionPRAD Hest-1k
PCC Overall0.521
6
Spatial Transcriptomics PredictionHCC Hest-1k
PCC Overall0.342
6
Spatial Transcriptomics PredictionCOAD Hest-1k
PCC Overall0.615
6
Spatial Transcriptomics PredictionCSCC Hest-1k
PCC Overall0.667
5
Cellular transcriptomics predictionPRAD
Overall PCC0.342
4
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