Department of Chemistry, Purdue University, West Lafayette, Indiana 47907, United States.
Anal Chem. 2021 Feb 23;93(7):3477-3485. doi: 10.1021/acs.analchem.0c04798. Epub 2021 Feb 11.
Spatial segmentation partitions mass spectrometry imaging (MSI) data into distinct regions, providing a concise visualization of the vast amount of data and identifying regions of interest (ROIs) for downstream statistical analysis. Unsupervised approaches are particularly attractive, as they may be used to discover the underlying subpopulations present in the high-dimensional MSI data without prior knowledge of the properties of the sample. Herein, we introduce an unsupervised spatial segmentation approach, which combines multivariate clustering and univariate thresholding to generate comprehensive spatial segmentation maps of the MSI data. This approach combines matrix factorization and manifold learning to enable high-quality image segmentation without an extensive hyperparameter search. In parallel, some ion images inadequately represented in the multivariate analysis were treated using univariate thresholding to generate complementary spatial segments. The final spatial segmentation map was assembled from segment candidates that were generated using both techniques. We demonstrate the performance and robustness of this approach for two MSI data sets of mouse uterine and kidney tissue sections that were acquired with different spatial resolutions. The resulting segmentation maps are easy to interpret and project onto the known anatomical regions of the tissue.
空间分割将质谱成像 (MSI) 数据分割成不同的区域,为大量数据提供简洁的可视化,并确定下游统计分析的感兴趣区域 (ROI)。无监督方法特别有吸引力,因为它们可以用于在没有样本属性先验知识的情况下发现高维 MSI 数据中存在的潜在亚群。本文提出了一种无监督的空间分割方法,它将多元聚类和单变量阈值相结合,生成 MSI 数据的全面空间分割图。该方法结合矩阵分解和流形学习,能够在不需要广泛的超参数搜索的情况下实现高质量的图像分割。同时,对多元分析中表示不足的一些离子图像使用单变量阈值进行处理,以生成补充的空间片段。最终的空间分割图由使用这两种技术生成的候选片段组装而成。我们展示了该方法在两个不同空间分辨率获取的小鼠子宫和肾脏组织切片 MSI 数据集上的性能和稳健性。生成的分割图易于解释,并可投射到组织的已知解剖区域。