Metabolites (Jun 2020)

Tumor Tissue-Specific Biomarkers of Colorectal Cancer by Anatomic Location and Stage

  • Yuping Cai,
  • Nicholas J. W. Rattray,
  • Qian Zhang,
  • Varvara Mironova,
  • Alvaro Santos-Neto,
  • Engjel Muca,
  • Ana K. Rosen Vollmar,
  • Kuo-Shun Hsu,
  • Zahra Rattray,
  • Justin R. Cross,
  • Yawei Zhang,
  • Philip B. Paty,
  • Sajid A. Khan,
  • Caroline H. Johnson

DOI
https://doi.org/10.3390/metabo10060257
Journal volume & issue
Vol. 10, no. 6
p. 257

Abstract

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The progress in the discovery and validation of metabolite biomarkers for the detection of colorectal cancer (CRC) has been hampered by the lack of reproducibility between study cohorts. The majority of discovery-phase biomarker studies have used patient blood samples to identify disease-related metabolites, but this pre-validation phase is confounded by non-specific disease influences on the metabolome. We therefore propose that metabolite biomarker discovery would have greater success and higher reproducibility for CRC if the discovery phase was conducted in tumor tissues, to find metabolites that have higher specificity to the metabolic consequences of the disease, that are then validated in blood samples. This would thereby eliminate any non-tumor and/or body response effects to the disease. In this study, we performed comprehensive untargeted metabolomics analyses on normal (adjacent) colon and tumor tissues from CRC patients, revealing tumor tissue-specific biomarkers (n = 39/group). We identified 28 highly discriminatory tumor tissue metabolite biomarkers of CRC by orthogonal partial least-squares discriminant analysis (OPLS-DA) and univariate analyses (VIP > 1.5, p 0.96, using various models. We further identified five biomarkers that were specific to the anatomic location of tumors in the colon (n = 236). The combination of these five metabolites (S-adenosyl-L-homocysteine, formylmethionine, fucose 1-phosphate, lactate, and phenylalanine) demonstrated high differentiative capability for left- and right-sided colon cancers at stage I by internal cross-validation (AUC = 0.804, 95% confidence interval, CI 0.670–0.940). This study thus revealed nine discriminatory biomarkers of CRC that are now poised for external validation in a future independent cohort of samples. We also discovered a discrete metabolic signature to determine the anatomic location of the tumor at the earliest stage, thus potentially providing clinicians a means to identify individuals that could be triaged for additional screening regimens.

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