Discovering Innate Driver Variants for Risk Assessment of Early Colorectal Cancer Metastasis.

Front Oncol

State Key Laboratory of Cellular Stress Biology, National Institute for Data Science in Health and Medicine, School of Life Sciences, Xiamen University, Xiamen, China.

Published: June 2022

AI Article Synopsis

  • Metastasis is the leading cause of death from colorectal cancer (CRC), and while research has focused on finding biomarkers, inconsistencies hinder effective clinical use due to CRC's genetic diversity.
  • In a study involving eight CRC patients, researchers used whole-exome sequencing to find that innate germline mutations are more influential than somatic mutations in promoting local cancer invasion, identifying ten potential driver variants, including six genes previously unlinked to CRC metastasis.
  • A logistic regression model, AmetaRisk, was developed for assessing early metastasis risk, which can help improve treatment options and potentially enhance survival rates for CRC patients.

Article Abstract

Metastasis is the main fatal cause of colorectal cancer (CRC). Although enormous efforts have been made to date to identify biomarkers associated with metastasis, there is still a huge gap to translate these efforts into effective clinical applications due to the poor consistency of biomarkers in dealing with the genetic heterogeneity of CRCs. In this study, a small cohort of eight CRC patients was recruited, from whom we collected cancer, paracancer, and normal tissues simultaneously and performed whole-exome sequencing. Given the exomes, a novel statistical parameter LIP was introduced to quantitatively measure the local invasion power for every somatic and germline mutation, whereby we affirmed that the innate germline mutations instead of somatic mutations might serve as the major driving force in promoting local invasion. Furthermore, bioinformatic analyses of big data derived from the public zone, we identified ten potential driver variants that likely urged the local invasion of tumor cells into nearby tissue. Of them, six corresponding genes were new to CRC metastasis. In addition, a metastasis resister variant was also identified. Based on these eleven variants, we constructed a logistic regression model for rapid risk assessment of early metastasis, which was also deployed as an online server, AmetaRisk (http://www.bio-add.org/AmetaRisk). In summary, we made a valuable attempt in this study to exome-wide explore the genetic driving force to local invasion, which provides new insights into the mechanistic understanding of metastasis. Furthermore, the risk assessment model can assist in prioritizing therapeutic regimens in clinics and discovering new drug targets, and thus substantially increase the survival rate of CRC patients.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9252167PMC
http://dx.doi.org/10.3389/fonc.2022.898117DOI Listing

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