体素
空间语境意识
空间组织
空格(标点符号)
空间分析
背景(考古学)
范畴变量
模式识别(心理学)
计算机科学
空间生态学
人工智能
计算生物学
数据挖掘
生物
数学
进化生物学
机器学习
统计
生态学
操作系统
古生物学
作者
Edward C. Schrom,Erin McCaffrey,Vivek Sreejithkumar,Andrea J. Radtke,Hiroshi Ichise,Armando Arroyo-Mejías,Emily Speranza,Leanne Arakkal,Nishant Thakur,Spencer Grant,Ronald N. Germain
标识
DOI:10.1073/pnas.2412146122
摘要
Spatial patterns of cells and other biological elements drive physiologic and pathologic processes within tissues. While many imaging and transcriptomic methods document tissue organization, discerning these patterns is challenging, especially when they involve multiple elements in complex arrangements. To address this challenge, we present Spatial Patterning Analysis of Cellular Ensembles (SPACE), an R package for analysis of high-plex spatial data. SPACE is compatible with any data collection modality that records values (i.e., categorical cell/structure types or quantitative expression levels) at fixed spatial coordinates (i.e., 2d pixels or 3d voxels). SPACE detects not only broad patterns of co-occurrence but also context-dependent associations, quantitative gradients and orientations, and other organizational complexities. Via a robust information theoretic framework, SPACE explores all possible ensembles of tissue elements—single elements, pairs, triplets, and so on—and ranks the most strongly patterned ensembles. For single images, rankings reflect differences from random assortment. For sets of images, rankings reflect differences across sample groups (e.g., genotypes, treatments, timepoints, etc.). Further tools then characterize the nature of each pattern for intuitive interpretation. We validate SPACE and demonstrate its advantages using murine lymph node images for which ground truth has been defined. We then detect new patterns across varied datasets, including tumors and tuberculosis granulomas.
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