Artificial intelligence (AI) has become a common tool for bioinformatics, with hundreds of methods published in recent years. Due to the training data demands of deep-learning algorithms, high-throughput single-cell and spatial transcriptomics is one of the most popular areas for these applications. Here we review how AI is being used for single-cell and spatial transcriptomics analysis, and how these approaches compare to alternative statistical or heuristic-based methods. We explored 10 common analysis tasks: dimensionality reduction, cross-dataset integration, data denoising, data augmentation, deconvolution, cell-cell interactions, transcriptional velocity, transcriptomic-chromatin accessibility integration, and integrating single-cell and spatial transcriptomics modalities. We highlight which algorithms are likely to be useful for discovery researchers, and which are not yet ready for general research use.
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Boris Tchatchoua Ngassam
Western University
Huilin Niu
Western University
Sunny Pang
Western University
Frontiers in Bioinformatics
Western University
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Ngassam et al. (Tue,) studied this question.
synapsesocial.com/papers/69a75aa2c6e9836116a20b5a — DOI: https://doi.org/10.3389/fbinf.2025.1715821