Abstract

Deregulation of the protein secretory pathway (PSP) is linked to many hallmarks of cancer, such as promoting tissue invasion and modulating cell-cell signaling. The collection of secreted proteins processed by the PSP, known as the secretome, is often studied due to its potential as a reservoir of tumor biomarkers. However, there has been less focus on the protein components of the secretory machinery itself. We therefore investigated the expression changes in secretory pathway components across many different cancer types. Specifically, we implemented a dual approach involving differential expression analysis and machine learning to identify PSP genes whose expression was associated with key tumor characteristics: mutation of p53, cancer status, and tumor stage. Eight different machine learning algorithms were included in the analysis to enable comparison between methods and to focus on signals that were robust to algorithm type. The machine learning approach was validated by identifying PSP genes known to be regulated by p53, and even outperformed the differential expression analysis approach. Among the different analysis methods and cancer types, the kinesin family members KIF20A and KIF23 were consistently among the top genes associated with malignant transformation or tumor stage. However, unlike most cancer types which exhibited elevated KIF20A expression that remained relatively constant across tumor stages, renal carcinomas displayed a more gradual increase that continued with increasing disease severity. Collectively, our study demonstrates the complementary nature of a combined differential expression and machine learning approach for analyzing gene expression data, and highlights key PSP components relevant to features of tumor pathophysiology that may constitute potential therapeutic targets.

Highlights

  • One of the most challenging features in diagnosing and treating cancer is its heterogeneity–the tissue of origin, gene mutation profile, patient, and local tumor environment are just a few of the many factors that can affect the pathophysiology and response to treatment of a particular cancer [1]

  • Our analysis was focused on the subset of 575 genes encoding and/or regulating the human protein secretory pathway (PSP) machinery, as defined in the study by Feizi et al [8]

  • We limited our study to this subset of genes to investigate the behavior of the PSP in different cancer types, and infer which components appear to have a more pronounced role or association with sample characteristics, such as cancer status or tumor stage

Read more

Summary

Introduction

One of the most challenging features in diagnosing and treating cancer is its heterogeneity–the tissue of origin, gene mutation profile, patient, and local tumor environment are just a few of the many factors that can affect the pathophysiology and response to treatment of a particular cancer [1]. A core set of features exhibited by cancer cells establish a common thread despite other variations. Secreted and membrane proteins processed by the PSP contribute to critical tumor functions, such as facilitating communication among different cells residing in the microenvironment (and even with distant tissue sites in the body), and for construction and turnover of the tumor extracellular matrix. These functions support a key role for the PSP in cancer physiology, making it an attractive target for potential therapeutic approaches

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call