SEAHORSE: A Serendipity Engine Assaying Heterogeneous Omics-Related Sampling Experiments

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This paper presents SEAHORSE, a web-based database and exploratory search tool that enables users to query large open-access multi-omic datasets such as GTEx and TCGA using pre-computed statistical associations among clinical, phenotypic, and genomic data elements. Using an interface that provides tabulated summary statistics, visualizations, and functional enrichment for gene sets derived from RNA-seq, the authors demonstrate how the tool can surface unexpected association patterns across tissues and cancer types. The paper’s main limitation is that its associations are restricted to elements and relationships already computed within the tool, rather than providing fully flexible, on-demand re-analysis of raw data. The paper does not explicitly discuss endometriosis or adenomyosis; it was included in the corpus via a keyword match in the upstream search index.

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Abstract Large-scale, open-access data sets such as the Genotype Tissue Expression Project (GTEx) and The Cancer Genome Atlas (TCGA) include multi-omic data on large numbers of samples along with extensive clinical and phenotypic information. These datasets provide a unique opportunity to discover correlations among clinical and genomic data features that can lead to testable hypotheses and new discoveries. SEAHORSE (http://seahorse.networkmedicine.org/) is a web-based database and search tool for exploratory data analysis in which we have pre-computed statistical associations between available data elements. An easy-to-use user interface allows users to explore significant associations using tabulated summary statistics, data visualizations, and functional enrichment analyses (using RNA-seq data) for identified sets of genes. We describe the motivation and construction of SEAHORSE and demonstrate its utility by documenting several surprising association patterns observed across multiple tissues in GTEx and multiple different cancer types in TCGA. Competing Interest Statement The authors have declared no competing interest.

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last seen: 2026-05-20T01:45:00.602351+00:00