SpaRED benchmark: Enhancing Gene Expression Prediction from Histology Images with Spatial Transcriptomics Completion
- URL: http://arxiv.org/abs/2407.13027v2
- Date: Fri, 27 Sep 2024 17:29:43 GMT
- Title: SpaRED benchmark: Enhancing Gene Expression Prediction from Histology Images with Spatial Transcriptomics Completion
- Authors: Gabriel Mejia, Daniela Ruiz, Paula Cárdenas, Leonardo Manrique, Daniela Vega, Pablo Arbeláez,
- Abstract summary: We present a systematically curated and processed database collected from 26 public sources.
We also propose a state-of-the-art transformer based completion technique for inferring missing gene expression.
Our contributions constitute the most comprehensive benchmark of gene expression prediction from histology images to date.
- Score: 2.032350440475489
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Spatial Transcriptomics is a novel technology that aligns histology images with spatially resolved gene expression profiles. Although groundbreaking, it struggles with gene capture yielding high corruption in acquired data. Given potential applications, recent efforts have focused on predicting transcriptomic profiles solely from histology images. However, differences in databases, preprocessing techniques, and training hyperparameters hinder a fair comparison between methods. To address these challenges, we present a systematically curated and processed database collected from 26 public sources, representing an 8.6-fold increase compared to previous works. Additionally, we propose a state-of-the-art transformer based completion technique for inferring missing gene expression, which significantly boosts the performance of transcriptomic profile predictions across all datasets. Altogether, our contributions constitute the most comprehensive benchmark of gene expression prediction from histology images to date and a stepping stone for future research on spatial transcriptomics.
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