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Liquid-liquid phase separation-related features of predict the prognosis of pancreatic cancer. | LitMetric

Liquid-liquid phase separation-related features of predict the prognosis of pancreatic cancer.

J Gastrointest Oncol

Department of Hepatobiliary Surgery, Shandong Provincial Third Hospital, Shandong University, Jinan, China.

Published: August 2024

AI Article Synopsis

  • The study investigates the role of liquid-liquid phase separation (LLPS) in pancreatic cancer (PC) and aims to identify biomarkers for better prognosis.
  • Through analyzing transcriptomic data and clinical information, researchers pinpointed six genes related to PC risk and formulated a risk model based on these biomarkers.
  • The developed model helps predict survival outcomes and reveals insights into immune responses, highlighting differences in immune cell levels between high-risk and low-risk PC patients.

Article Abstract

Background: The growth and metastasis of pancreatic cancer (PC) has been found to be closely associated with liquid-liquid phase separation (LLPS). This study sought to identify LLPS-related biomarkers in PC to construct a robust prognostic model.

Methods: Transcriptomic data and clinical information related to PC were retrieved from publicly accessible databases. The PC-related data set was subjected to differential expression, Mendelian randomization (MR), univariate Cox, and least absolute selection and shrinkage operator analyses to identify biomarkers. Using the biomarkers, we subsequently constructed a risk model, identified the independent prognostic factors of PC, established a nomogram, and conducted an immune analysis.

Results: The study identified four genes linked with an increased risk of PC; that is, , and . Conversely, , and were found to provide protection against PC. These findings contributed significantly to the development of a highly precise risk model in which risk, age, and pathology N stage were categorized as independent factors in predicting the prognosis of PC patients. Using these factors, a nomogram was established to predict survival outcomes accurately. An immune analysis revealed varying levels of eosinophils, gamma delta T cells, and other immune cells between the distinct risk groups. The high-risk patients exhibited increased potential for immune escape, while the low-risk patients showed a higher response to immunotherapy.

Conclusions: Six genes were identified as having potential causal relationships with PC. These genes were integrated into a prognostic risk model, thereby serving as unique prognostic signatures. Our findings provide novel insights into predicting the prognosis of PC patients.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11399862PMC
http://dx.doi.org/10.21037/jgo-24-426DOI Listing

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