Abstract
The identification of tumor subpopulations that adversely affect patient outcomes is essential for a more targeted investigation into how tumors develop detrimental phenotypes, as well as for personalized therapy. Mass spectrometry imaging has demonstrated the ability to uncover molecular intratumor heterogeneity. The challenge has been to conduct an objective analysis of the resulting data to identify those tumor subpopulations that affect patient outcome. Here we introduce spatially mapped t-distributed stochastic neighbor embedding (t-SNE), a nonlinear visualization of the data that is able to better resolve the biomolecular intratumor heterogeneity. In an unbiased manner, t-SNE can uncover tumor subpopulations that are statistically linked to patient survival in gastric cancer and metastasis status in primary tumors of breast cancer.
Funder
Netherlands Organisation for Health Research and Development
Seventh Framework Programme
Bundesministerium fÃÆ'Æâ€{trade mark, serif}Æ’ÃÆ'†â€™ÃÆ'Æâ€{trade mark, serif}â€Ã...¡ÃÆ'‚ÂÂÂ1/4r Bildung und Forschung
Deutsche Forschungsgemeinschaft
Netherlands Organisation for Scientific Research | Technologiestichting STW
Publisher
Proceedings of the National Academy of Sciences
Cited by
143 articles.
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