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通过SNAQ了解你的邻居:免疫组化图像中单细胞空间邻域分析的框架。

Get to know your neighbors with a SNAQ: A framework for single cell spatial neighborhood analysis in immunohistochemical images.

作者信息

Silver Aryeh, Chakraborty Avirup, Pittu Avinash, Feier Diana, Anica Miruna, West Illeana, Sarkisian Matthew R, Deleyrolle Loic P

机构信息

Department of Immunology, Mayo Clinic, Scottsdale, AZ 85259, USA.

Department of Neurosurgery, University of Florida, Gainesville, FL 32608, USA.

出版信息

bioRxiv. 2024 Aug 7:2024.08.04.606539. doi: 10.1101/2024.08.04.606539.

Abstract

MOTIVATION

Analyzing the local microenvironment of tumor cells can provide significant insights into their complex interactions with their cellular surroundings, including immune cells. By quantifying the prevalence and distances of certain immune cells in the vicinity of tumor cells through a neighborhood analysis, patterns may emerge that indicate specific associations between cell populations. Such analyses can reveal important aspects of tumor-immune dynamics, which may inform therapeutic strategies. This method enables an in-depth exploration of spatial interactions among different cell types, which is crucial for research in oncology, immunology, and developmental biology.

RESULTS

We introduce an R Markdown script called SNAQ (ingle-cell Spatial eighborhood nalysis and uantification), which conducts a neighborhood analysis on immunofluorescent images without the need for extensive coding knowledge. As a demonstration, SNAQ was used to analyze images of pancreatic ductal adenocarcinoma. Samples stained for DAPI, PanCK, CD68, and PD-L1 were segmented and classified using QuPath. The resulting CSV files were exported into RStudio for further analysis and visualization using SNAQ. Visualizations include plots revealing the cellular composition of neighborhoods around multiple cell types within a customizable radius. Additionally, the analysis includes measuring the distances between cells of certain types relative to others across multiple regions of interest.

AVAILABILITY AND IMPLEMENTATION

The R Markdown files that comprise the SNAQ algorithm and the input data from this paper are freely available on the web at https://github.com/AryehSilver1/SNAQ.

摘要

动机

分析肿瘤细胞的局部微环境能够为其与包括免疫细胞在内的细胞周围环境的复杂相互作用提供重要见解。通过邻域分析量化肿瘤细胞附近特定免疫细胞的丰度和距离,可能会出现表明细胞群体之间特定关联的模式。此类分析能够揭示肿瘤免疫动力学的重要方面,可为治疗策略提供参考。该方法能够深入探索不同细胞类型之间的空间相互作用,这对于肿瘤学、免疫学和发育生物学研究至关重要。

结果

我们引入了一个名为SNAQ(单细胞空间邻域分析与量化)的R Markdown脚本,它无需广泛的编码知识就能对免疫荧光图像进行邻域分析。作为演示,SNAQ被用于分析胰腺导管腺癌的图像。使用QuPath对用DAPI、PanCK、CD68和PD-L1染色的样本进行分割和分类。将得到的CSV文件导出到RStudio中,以便使用SNAQ进行进一步分析和可视化。可视化结果包括揭示可定制半径内多种细胞类型周围邻域细胞组成的图表。此外,分析还包括测量特定类型细胞相对于多个感兴趣区域中其他细胞的距离。

可用性与实现方式

构成SNAQ算法的R Markdown文件以及本文的输入数据可在https://github.com/AryehSilver1/SNAQ上免费获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8066/11326196/aaab1205438f/nihpp-2024.08.04.606539v1-f0002.jpg

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