Deep learning in spatial transcriptomics: Learning from the next next-generation sequencing

IF 2.9 Q2 BIOPHYSICS
A. Ali Heydari, Suzanne S. Sindi
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引用次数: 4

Abstract

Spatial transcriptomics (ST) technologies are rapidly becoming the extension of single-cell RNA sequencing (scRNAseq), holding the potential of profiling gene expression at a single-cell resolution while maintaining cellular compositions within a tissue. Having both expression profiles and tissue organization enables researchers to better understand cellular interactions and heterogeneity, providing insight into complex biological processes that would not be possible with traditional sequencing technologies. Data generated by ST technologies are inherently noisy, high-dimensional, sparse, and multi-modal (including histological images, count matrices, etc.), thus requiring specialized computational tools for accurate and robust analysis. However, many ST studies currently utilize traditional scRNAseq tools, which are inadequate for analyzing complex ST datasets. On the other hand, many of the existing ST-specific methods are built upon traditional statistical or machine learning frameworks, which have shown to be sub-optimal in many applications due to the scale, multi-modality, and limitations of spatially resolved data (such as spatial resolution, sensitivity, and gene coverage). Given these intricacies, researchers have developed deep learning (DL)-based models to alleviate ST-specific challenges. These methods include new state-of-the-art models in alignment, spatial reconstruction, and spatial clustering, among others. However, DL models for ST analysis are nascent and remain largely underexplored. In this review, we provide an overview of existing state-of-the-art tools for analyzing spatially resolved transcriptomics while delving deeper into the DL-based approaches. We discuss the new frontiers and the open questions in this field and highlight domains in which we anticipate transformational DL applications.
空间转录组学中的深度学习:从下一代测序中学习
空间转录组学(ST)技术正迅速成为单细胞RNA测序(scRNAseq)的延伸,具有在单细胞分辨率下分析基因表达的潜力,同时保持组织内的细胞成分。同时拥有表达谱和组织结构使研究人员能够更好地了解细胞相互作用和异质性,从而深入了解传统测序技术无法实现的复杂生物过程。ST技术产生的数据具有固有的噪声、高维、稀疏和多模态(包括组织学图像、计数矩阵等),因此需要专门的计算工具进行准确和稳健的分析。然而,目前许多ST研究使用传统的scRNAseq工具,这不足以分析复杂的ST数据集。另一方面,许多现有的st特定方法是建立在传统的统计或机器学习框架之上的,由于空间解析数据的规模、多模态和局限性(如空间分辨率、灵敏度和基因覆盖),这些框架在许多应用中表现出次优性。鉴于这些复杂性,研究人员开发了基于深度学习(DL)的模型来缓解st特有的挑战。这些方法包括对齐、空间重建和空间聚类等方面的最新技术模型。然而,用于ST分析的DL模型是新生的,并且在很大程度上仍未得到充分开发。在这篇综述中,我们概述了现有的最先进的工具,用于分析空间分解转录组学,同时深入研究基于dl的方法。我们讨论了该领域的新前沿和开放问题,并强调了我们预计转换DL应用的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.60
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0.00%
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