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Multimodal Pathology Image Search Between H&E Slides and Multiplexed Immunofluorescent Images (2306.06780v1)

Published 11 Jun 2023 in eess.IV, cs.CV, and q-bio.QM

Abstract: We present an approach for multimodal pathology image search, using dynamic time warping (DTW) on Variational Autoencoder (VAE) latent space that is fed into a ranked choice voting scheme to retrieve multiplexed immunofluorescent imaging (mIF) that is most similar to a query H&E slide. Through training the VAE and applying DTW, we align and compare mIF and H&E slides. Our method improves differential diagnosis and therapeutic decisions by integrating morphological H&E data with immunophenotyping from mIF, providing clinicians a rich perspective of disease states. This facilitates an understanding of the spatial relationships in tissue samples and could revolutionize the diagnostic process, enhancing precision and enabling personalized therapy selection. Our technique demonstrates feasibility using colorectal cancer and healthy tonsil samples. An exhaustive ablation study was conducted on a search engine designed to explore the correlation between multiplexed Immunofluorescence (mIF) and Hematoxylin and Eosin (H&E) staining, in order to validate its ability to map these distinct modalities into a unified vector space. Despite extreme class imbalance, the system demonstrated robustness and utility by returning similar results across various data features, which suggests potential for future use in multimodal histopathology data analysis.

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References (17)
  1. BetaBuddy: An end-to-end computer vision pipeline for the automated analysis of insulin secreting β𝛽\betaitalic_β-cells. bioRxiv (2023), 2023–04.
  2. Unicom: Universal and Compact Representation Learning for Image Retrieval. arXiv preprint arXiv:2304.05884 (2023).
  3. Cluster analysis of cell nuclei in h&e-stained histological sections of prostate cancer and classification based on traditional and modern artificial intelligence techniques. Diagnostics 12, 1 (2021), 15.
  4. CODEX multiplexed tissue imaging with DNA-conjugated antibodies. Nature protocols 16, 8 (2021), 3802–3835.
  5. Fast and scalable search of whole-slide images via self-supervised deep learning. Nature Biomedical Engineering 6, 12 (2022), 1420–1434.
  6. Deep profiling of mouse splenic architecture with CODEX multiplexed imaging. Cell 174, 4 (2018), 968–981.
  7. Yottixel–an image search engine for large archives of histopathology whole slide images. Medical Image Analysis 65 (2020), 101757.
  8. Multi-class texture analysis in colorectal cancer histology. Scientific reports 6, 1 (2016), 1–11.
  9. Jin Tae Kwak and Stephen M Hewitt. 2017. Nuclear architecture analysis of prostate cancer via convolutional neural networks. IEEE access 5 (2017), 18526–18533.
  10. Automatic grading of prostate cancer in digitized histopathology images: Learning from multiple experts. Medical image analysis 50 (2018), 167–180.
  11. Uthappa P Poojitha and Shanker Lal Sharma. 2019. Hybrid unified deep learning network for highly precise Gleason grading of prostate cancer. In 2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). IEEE, 899–903.
  12. Selection of an Ideal Machine Learning Framework for Predicting Perturbation Effects on Network Topology of Bacterial KEGG Pathways. bioRxiv (2022), 2022–07.
  13. Clinically Relevant Latent Space Embedding of Cancer Histopathology Slides through Variational Autoencoder Based Image Compression. arXiv e-prints (2023), arXiv–2303.
  14. A SSIM Guided cGAN Architecture For Clinically Driven Generative Image Synthesis of Multiplexed Spatial Proteomics Channels. arXiv:2205.10373 [eess.IV]
  15. Coordinated cellular neighborhoods orchestrate antitumoral immunity at the colorectal cancer invasive front. Cell 182, 5 (2020), 1341–1359.
  16. Deep learning in cancer diagnosis, prognosis and treatment selection. Genome Medicine 13, 1 (2021), 1–17.
  17. RetCCL: Clustering-guided contrastive learning for whole-slide image retrieval. Medical Image Analysis 83 (2023), 102645.
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