Data Driven Mathematical Model of FOLFIRI Treatment for Colon Cancer

Cancers (Basel). 2021 May 27;13(11):2632. doi: 10.3390/cancers13112632.

Abstract

Many colon cancer patients show resistance to their treatments. Therefore, it is important to consider unique characteristic of each tumor to find the best treatment options for each patient. In this study, we develop a data driven mathematical model for interaction between the tumor microenvironment and FOLFIRI drug agents in colon cancer. Patients are divided into five distinct clusters based on their estimated immune cell fractions obtained from their primary tumors' gene expression data. We then analyze the effects of drugs on cancer cells and immune cells in each group, and we observe different responses to the FOLFIRI drugs between patients in different immune groups. For instance, patients in cluster 3 with the highest T-reg/T-helper ratio respond better to the FOLFIRI treatment, while patients in cluster 2 with the lowest T-reg/T-helper ratio resist the treatment. Moreover, we use ROC curve to validate the model using the tumor status of the patients at their follow up, and the model predicts well for the earlier follow up days.

Keywords: 5-FU; FOLFIRI treatment; colon cancer; data-driven mathematical model; digital cytometry; gene expression profiles; immune variations; irinotecan; leucovorin; precision medicine.