Journal: Molecular & Cellular Proteomics : MCP
Article Title: Predicting Protein Pathways Associated to Tumor Heterogeneity by Correlating Spatial Lipidomics and Proteomics: The Dry Proteomic Concept
doi: 10.1016/j.mcpro.2024.100891
Figure Lengend Snippet: Omics MALDI MSI clustering procedure optimization on rat brain cerebellum . A , comparison of t-SNE, NNMF, and SVD data compression followed by k -means++ segmentation for 2–5 clusters applied to lipid negative mode, lipid positive mode, protein, and peptide MSI. B , rat brain sagittal section HPS coloration and cerebellum annotations. C , lipid MALDI MSI in negative and positive mode with 10 μm spatial resolution with image segmentation composed by five clusters and ion spatial distribution specific to Purkinje cells, ML, GL, and WM. D , use of Silhouette criterion for the number of cluster estimation and each cluster value determination applied to lipid negative mode, lipid positive mode, protein, and peptide imaging. E , optimal segmentation workflow developed on MATLAB integrating SVD compression data with ten principal components, combined with a k -means++ segmentation using a cosine score with a Silhouette criterion
Article Snippet: E , optimal segmentation workflow developed on MATLAB integrating SVD compression data with ten principal components, combined with a k -means++ segmentation using a cosine score with a Silhouette criterion For that, 22 RB sagittal sections were analyzed for lipid in negative (−) and positive (+) ion mode, while 12 slides were analyzed for protein and peptide, focusing on the RB cerebellum area.
Techniques: Comparison, Imaging