Abstract

Simple SummaryTumor treatment is heavily dictated by the tumor progression status. However, in colon cancer, it is difficult to predict disease progression in the early stages. In this study, we have employed a proteomic analysis using matrix-assisted laser desorption/ionization mass spectrometry imaging (MALDI-MSI). MALDI-MSI is a technique that measures the molecular content of (tumor) tissue. We analyzed tumor samples of 276 patients. If the patients developed distant metastasis, they were considered to have a more aggressive tumor type than the patients that did not. In this comparative study, we have developed bioinformatics methods that can predict the tendency of tumor progression and advance a couple of molecules that could be used as prognostic markers of colon cancer. The prediction of tumor progression can help to choose a more adequate treatment for each individual patient.Currently, pathological evaluation of stage I/II colon cancer, following the Union Internationale Contre Le Cancer (UICC) guidelines, is insufficient to identify patients that would benefit from adjuvant treatment. In our study, we analyzed tissue samples from 276 patients with colon cancer utilizing mass spectrometry imaging. Two distinct approaches are herein presented for data processing and analysis. In one approach, four different machine learning algorithms were applied to predict the tendency to develop metastasis, which yielded accuracies over 90% for three of the models. In the other approach, 1007 m/z features were evaluated with regards to their prognostic capabilities, yielding two m/z features as promising prognostic markers. One feature was identified as a fragment from collagen (collagen 3A1), hinting that a higher collagen content within the tumor is associated with poorer outcomes. Identification of proteins that reflect changes in the tumor and its microenvironment could give a very much-needed prediction of a patient’s prognosis, and subsequently assist in the choice of a more adequate treatment.

Highlights

  • In 2012, about 14.1 million new cancer cases occurred worldwide and approximately6 million occurred in developed countries [1]

  • We have investigated a new approach for risk stratification by in-situ proteomic analysis using matrix-assisted laser desorption/ionization mass spectrometry imaging (MALDI-MSI)

  • We examined whether a proteomic approach using MALDI-MSI can predict the risk of progression in patients with Union Internationale Contre Le Cancer (UICC) stage I/II colorectal cancer

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Summary

Introduction

In 2012, about 14.1 million new cancer cases occurred worldwide and approximately. 6 million occurred in developed countries [1]. About one of eight was of colorectal origin [1]. Cancer diagnosis is usually based on pathological evaluation, 4.0/). Prediction of disease progression is the main task of pathological examination. The backbone of risk stratification is still the TNM-classification. Building Predictive Models in R Using the Caret Package.

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