Spatial transcriptomics data and analytical methods: An updated perspective

Danishuddin, Shawez Khan, Jong Joo Kim

Abstract

Spatial transcriptomics (ST) is a newly emerging field that integrates high-resolution imaging and transcriptomic data to enable the high-throughput analysis of the spatial localization of transcripts in diverse biological systems. The rapid progress in this field necessitates the development of innovative computational methods to effectively tackle the distinct challenges posed by the analysis of ST data. These platforms, integrating AI techniques, offer a promising avenue for understanding disease mechanisms and expediting drug discovery. Despite significant advances in the development of ST data analysis techniques, there is an ongoing need to enhance these models for increased biological relevance. In this review, we briefly discuss the ST-related databases and current deep-learning-based models for spatial transcriptome data analyses and highlight their roles and future perspectives in biomedical applications.

Original languageEnglish
Article number103889
JournalDrug Discovery Today
Volume29
Issue number3
Pages (from-to)103889
ISSN1359-6446
DOIs
Publication statusPublished - Mar 2024

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