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MerQuaCo:一种用于基于图像的空间转录组学质量控制的计算工具。

MerQuaCo: a computational tool for quality control in image-based spatial transcriptomics.

作者信息

Martin Naomi, Olsen Paul, Quon Jacob, Campos Jazmin, Cuevas Nasmil Valera, Nagra Josh, VanNess Marshall, Maltzer Zoe, Gelfand Emily C, Oyama Alana, Gary Amanda, Wang Yimin, Alaya Angela, Ruiz Augustin, Reynoldson Cade, Bielstein Cameron, Pom Christina Alice, Huang Cindy, Slaughterbeck Cliff, Liang Elizabeth, Alexander Jason, Ariza Jeanelle, Malone Jocelin, Melchor Jose, Colbert Kaity, Brouner Krissy, Shulga Lyudmila, Reding Melissa, Latimer Patrick, Sanchez Raymond, Barta Stuard, Egdorf Tom, Madigan Zachary, Pagan Chelsea M, Close Jennie L, Long Brian, Kunst Michael, Lein Ed S, Zeng Hongkui, McMillen Delissa, Waters Jack

机构信息

Allen Institute for Brain Science, 615 Westlake Ave N, Seattle WA.

出版信息

bioRxiv. 2024 Dec 7:2024.12.04.626766. doi: 10.1101/2024.12.04.626766.

Abstract

Image-based spatial transcriptomics platforms are powerful tools often used to identify cell populations and describe gene expression in intact tissue. Spatial experiments return large, high-dimension datasets and several open-source software packages are available to facilitate analysis and visualization. Spatial results are typically imperfect. For example, local variations in transcript detection probability are common. Software tools to characterize imperfections and their impact on downstream analyses are lacking so the data quality is assessed manually, a laborious and often a subjective process. Here we describe imperfections in a dataset of 641 fresh-frozen adult mouse brain sections collected using the Vizgen MERSCOPE. Common imperfections included the local loss of tissue from the section, tissue outside the imaging volume due to detachment from the coverslip, transcripts missing due to dropped images, varying detection probability through space, and differences in transcript detection probability between experiments. We describe the incidence of each imperfection and the likely impact on the accuracy of cell type labels. We develop MerQuaCo, open-source code that detects and quantifies imperfections without user input, facilitating the selection of sections for further analysis with existing packages. Together, our results and MerQuaCo facilitate rigorous, objective assessment of the quality of spatial transcriptomics results.

摘要

基于图像的空间转录组学平台是功能强大的工具,常用于识别完整组织中的细胞群体并描述基因表达。空间实验会产生大型的高维数据集,有几个开源软件包可用于促进分析和可视化。空间实验结果通常并不完美。例如,转录本检测概率的局部变化很常见。目前缺乏用于表征这些不完美之处及其对下游分析影响的软件工具,因此数据质量是通过人工评估的,这是一个费力且往往主观的过程。在这里,我们描述了使用Vizgen MERSCOPE收集的641个新鲜冷冻成年小鼠脑切片数据集中的不完美之处。常见的不完美之处包括切片中局部组织缺失、由于从盖玻片上脱落而导致成像体积外的组织、因图像丢失而缺失的转录本、空间上不同的检测概率以及不同实验之间转录本检测概率的差异。我们描述了每种不完美之处的发生率以及对细胞类型标签准确性的可能影响。我们开发了MerQuaCo,这是一个无需用户输入即可检测和量化不完美之处的开源代码,有助于选择切片以便使用现有软件包进行进一步分析。总之,我们的结果和MerQuaCo有助于对空间转录组学结果的质量进行严格、客观的评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ded6/11643037/dabdd496e789/nihpp-2024.12.04.626766v1-f0001.jpg

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