stAI: a deep learning-based model for missing gene imputation and cell-type annotation of spatial transcriptomics

IF 13.1 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Nucleic Acids Research Pub Date : 2025-03-08 DOI:10.1093/nar/gkaf158
Guangsheng Zou, Qunlun Shen, Limin Li, Shuqin Zhang
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Abstract

Spatial transcriptomics technology has revolutionized our understanding of cellular systems by capturing RNA transcript levels in their original spatial context. Single-cell spatial transcriptomics (scST) offers single-cell resolution expression level and precise spatial information of RNA transcripts, while it has a limited capacity for simultaneously detecting a wide range of RNA transcripts, hindering its broader applications. Characterizing the whole transcriptome level and comprehensively annotating cell types represent two significant challenges in scST applications. Despite several proposed methods for one or both tasks, their performance remains inadequate. In this work, we introduce stAI, a deep learning-based model designed to address both missing gene imputation and cell-type annotation for scST data. stAI leverages a joint embedding for the scST and the reference scRNA-seq data with two separate encoder-decoder modules. Both the imputation and annotation are performed within the latent space in a supervised manner, utilizing scRNA-seq data to guide the processes. Experiments for datasets generated from diverse platforms with varying numbers of measured genes were conducted and compared with the updated methods. The results demonstrate that stAI can predict the unmeasured genes, especially the marker genes, with much higher accuracy, and annotate the cell types, including those of small size, with high precision.
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stAI:基于深度学习的空间转录组学缺失基因归约和细胞类型注释模型
空间转录组学技术通过在原始空间环境中捕获RNA转录水平,彻底改变了我们对细胞系统的理解。单细胞空间转录组学(Single-cell spatial transcriptomics, scST)提供了RNA转录本的单细胞分辨率表达水平和精确的空间信息,但同时检测大范围RNA转录本的能力有限,阻碍了其更广泛的应用。表征整个转录组水平和全面注释细胞类型是scST应用中的两个重大挑战。尽管针对一项或两项任务提出了几种方法,但它们的性能仍然不足。在这项工作中,我们引入了一种基于深度学习的模型,旨在解决scST数据的缺失基因插入和细胞类型注释。stAI利用两个独立的编码器-解码器模块对scST和参考scRNA-seq数据进行联合嵌入。在潜在空间内以监督的方式进行插入和注释,利用scRNA-seq数据指导过程。对不同平台产生的不同数量基因的数据集进行实验,并与更新后的方法进行比较。结果表明,stAI对未测基因特别是标记基因的预测精度较高,对细胞类型(包括小细胞)的注释精度较高。
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来源期刊
Nucleic Acids Research
Nucleic Acids Research 生物-生化与分子生物学
CiteScore
27.10
自引率
4.70%
发文量
1057
审稿时长
2 months
期刊介绍: Nucleic Acids Research (NAR) is a scientific journal that publishes research on various aspects of nucleic acids and proteins involved in nucleic acid metabolism and interactions. It covers areas such as chemistry and synthetic biology, computational biology, gene regulation, chromatin and epigenetics, genome integrity, repair and replication, genomics, molecular biology, nucleic acid enzymes, RNA, and structural biology. The journal also includes a Survey and Summary section for brief reviews. Additionally, each year, the first issue is dedicated to biological databases, and an issue in July focuses on web-based software resources for the biological community. Nucleic Acids Research is indexed by several services including Abstracts on Hygiene and Communicable Diseases, Animal Breeding Abstracts, Agricultural Engineering Abstracts, Agbiotech News and Information, BIOSIS Previews, CAB Abstracts, and EMBASE.
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