CVJun 23, 2024

HEST-1k: A Dataset for Spatial Transcriptomics and Histology Image Analysis

arXiv:2406.16192v2138 citationsHas Code
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This provides a resource for researchers in computational biology and pathology to develop and test methods, though it is incremental as it compiles existing data.

The authors tackled the lack of standardized datasets for spatial transcriptomics and histology image analysis by introducing HEST-1k, a collection of 1,229 profiles with linked whole slide images and metadata, enabling tasks like benchmarking and multimodal learning.

Spatial transcriptomics enables interrogating the molecular composition of tissue with ever-increasing resolution and sensitivity. However, costs, rapidly evolving technology, and lack of standards have constrained computational methods in ST to narrow tasks and small cohorts. In addition, the underlying tissue morphology, as reflected by H&E-stained whole slide images (WSIs), encodes rich information often overlooked in ST studies. Here, we introduce HEST-1k, a collection of 1,229 spatial transcriptomic profiles, each linked to a WSI and extensive metadata. HEST-1k was assembled from 153 public and internal cohorts encompassing 26 organs, two species (Homo Sapiens and Mus Musculus), and 367 cancer samples from 25 cancer types. HEST-1k processing enabled the identification of 2.1 million expression--morphology pairs and over 76 million nuclei. To support its development, we additionally introduce the HEST-Library, a Python package designed to perform a range of actions with HEST samples. We test HEST-1k and Library on three use cases: (1) benchmarking foundation models for pathology (HEST-Benchmark), (2) biomarker exploration, and (3) multimodal representation learning. HEST-1k, HEST-Library, and HEST-Benchmark can be freely accessed at https://github.com/mahmoodlab/hest.

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