Machine Learning-Based Integrated Multiomics Characterization of Colorectal Cancer Reveals Distinctive Metabolic Signatures
Ran Zheng,
Rui Su,
Yusi Fan
et al.
Abstract:The metabolic signature identification
of colorectal
cancer is
critical for its early diagnosis and therapeutic approaches that will
significantly block cancer progression and improve patient survival.
Here, we combined an untargeted metabolic analysis strategy based
on internal extractive electrospray ionization mass spectrometry and
the machine learning approach to analyze metabolites in 173 pairs
of cancer samples and matched normal tissue samples to build robust
metabolic signature models for diagnostic pu… Show more
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