Sainsc:用于原位捕捉数据无分割分析的计算工具

IF 10.7 2区 材料科学 Q1 CHEMISTRY, PHYSICAL
Niklas Müller-Bötticher, Sebastian Tiesmeyer, Roland Eils, Naveed Ishaque
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引用次数: 0

摘要

空间分辨转录组学(SRT)已成为描述生物医学组织样本复杂性的首选方法。直到最近,科学家们还局限于只能对有限的目标基因组进行高空间分辨率或全转录组但低空间分辨率分析的 SRT 方法。经过最近的发展,现在有了既能提供亚细胞空间分辨率又能覆盖整个转录组的方法。然而,由于检测效率低和计算成本高等因素,利用这些新方法的高空间分辨率和基因分辨率仍然难以实现。在这里,我们介绍 Sainsc(原位捕获数据的无分割分析),它将无细胞分割方法与转录组全纳米分辨率空间数据的高效数据处理相结合。Sainsc 可以生成细胞类型图,并在纳米尺度上进行精确的细胞类型分配,同时生成相应的分配分数图,便于解释细胞类型分配的局部置信度。我们展示了它在不同组织和技术中的实用性和准确性。与其他方法相比,Sainsc 所需的计算资源更少,性能可扩展,可实现交互式数据探索。Sainsc 与常见的数据分析框架兼容,并且是多种编程语言的开源软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sainsc: A Computational Tool for Segmentation-Free Analysis of In Situ Capture Data.

Spatially resolved transcriptomics (SRT) has become the method of choice for characterising the complexity of biomedical tissue samples. Until recently, scientists were restricted to SRT methods that can profile a limited set of target genes at high spatial resolution or transcriptome-wide but at a low spatial resolution. Through recent developments, there are now methods that offer both subcellular spatial resolution and full transcriptome coverage. However, utilising these new methods' high spatial resolution and gene resolution remains elusive due to several factors, including low detection efficiency and high computational costs. Here, we present Sainsc (Segmentation-free analysis of in situ capture data), which combines a cell-segmentation-free approach with efficient data processing of transcriptome-wide nanometre-resolution spatial data. Sainsc can generate cell-type maps with accurate cell-type assignment at the nanometre scale, together with corresponding maps of the assignment scores that facilitate interpretation of the local confidence of cell-type assignment. We demonstrate its utility and accuracy for different tissues and technologies. Compared to other methods, Sainsc requires lower computational resources and has scalable performance, enabling interactive data exploration. Sainsc is compatible with common data analysis frameworks and is available as open-source software in multiple programming languages.

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来源期刊
Small Methods
Small Methods Materials Science-General Materials Science
CiteScore
17.40
自引率
1.60%
发文量
347
期刊介绍: Small Methods is a multidisciplinary journal that publishes groundbreaking research on methods relevant to nano- and microscale research. It welcomes contributions from the fields of materials science, biomedical science, chemistry, and physics, showcasing the latest advancements in experimental techniques. With a notable 2022 Impact Factor of 12.4 (Journal Citation Reports, Clarivate Analytics, 2023), Small Methods is recognized for its significant impact on the scientific community. The online ISSN for Small Methods is 2366-9608.
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