SpaDiT:利用 scRNA-seq 进行空间基因表达预测的扩散变换器

Xiaoyu Li, Fangfang Zhu, Wenwen Min
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引用次数: 0

摘要

空间转录组学(ST)技术的快速发展正在彻底改变我们对生物组织空间组织的认识。目前的空间转录组学方法分为基于下一代测序的方法(基于测序)和基于荧光原位杂交的方法(基于图像),这些方法提供了对生物组织功能动态的创新见解。为了解决这些局限性,我们提出了一种深度学习方法SpaDiT,它利用扩散生成模型整合scRNA-seq和ST数据,预测未检测到的基因。通过采用基于变压器的扩散模型,SpaDiT 不仅能准确预测未知基因,还能有效生成 ST 基因的空间结构。我们在基于序列和图像的 ST 数据上进行了大量实验,证明了 SpaDiT 的有效性。与八种领先的基线方法相比,SpaDiT 在多个指标上都达到了最先进的水平,凸显了它在生物信息学方面的巨大贡献。
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SpaDiT: Diffusion Transformer for Spatial Gene Expression Prediction using scRNA-seq
The rapid development of spatial transcriptomics (ST) technologies is revolutionizing our understanding of the spatial organization of biological tissues. Current ST methods, categorized into next-generation sequencing-based (seq-based) and fluorescence in situ hybridization-based (image-based) methods, offer innovative insights into the functional dynamics of biological tissues. However, these methods are limited by their cellular resolution and the quantity of genes they can detect. To address these limitations, we propose SpaDiT, a deep learning method that utilizes a diffusion generative model to integrate scRNA-seq and ST data for the prediction of undetected genes. By employing a Transformer-based diffusion model, SpaDiT not only accurately predicts unknown genes but also effectively generates the spatial structure of ST genes. We have demonstrated the effectiveness of SpaDiT through extensive experiments on both seq-based and image-based ST data. SpaDiT significantly contributes to ST gene prediction methods with its innovative approach. Compared to eight leading baseline methods, SpaDiT achieved state-of-the-art performance across multiple metrics, highlighting its substantial bioinformatics contribution.
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