Abstract

In silico approaches are increasingly considered to improve breast cancer treatment. One of these treatments, neoadjuvant TFAC chemotherapy, is used in cases where application of preoperative systemic therapy is indicated. Estimating response to treatment allows or improves clinical decision-making and this, in turn, may be based on a good understanding of the underlying molecular mechanisms. Ever increasing amounts of high throughput data become available for integration into functional networks. In this study, we applied our software tool ExprEssence to identify specific mechanisms relevant for TFAC therapy response, from a gene/protein interaction network. We contrasted the resulting active subnetwork to the subnetworks of two other such methods, OptDis and KeyPathwayMiner. We could show that the ExprEssence subnetwork is more related to the mechanistic functional principles of TFAC therapy than the subnetworks of the other two methods despite the simplicity of ExprEssence. We were able to validate our method by recovering known mechanisms and as an application example of our method, we identified a mechanism that may further explain the synergism between paclitaxel and doxorubicin in TFAC treatment: Paclitaxel may attenuate MELK gene expression, resulting in lower levels of its target MYBL2, already associated with doxorubicin synergism in hepatocellular carcinoma cell lines. We tested our hypothesis in three breast cancer cell lines, confirming it in part. In particular, the predicted effect on MYBL2 could be validated, and a synergistic effect of paclitaxel and doxorubicin could be demonstrated in the breast cancer cell lines SKBR3 and MCF-7.

Highlights

  • Breast cancer and network-based approaches For the successful treatment of breast cancer, the most common type of cancer in women worldwide, knowledge of cancertreatment responsiveness is most useful

  • Generation of active subnetworks by three methods In this study, we applied our active interaction/subnetwork detection method ExprEssence to the investigation of response status to breast cancer chemotherapy with TFAC, and we compared the results to two similar methods, OptDis and KeyPathwayMiner

  • We performed the same analysis on the subnetworks extracted through application of ExprEssence and KeyPathwayMiner on the same network using the same gene expression data

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Summary

Introduction

Breast cancer and network-based approaches For the successful treatment of breast cancer, the most common type of cancer in women worldwide, knowledge of cancertreatment responsiveness is most useful. The rise of genome-scale gene expression profiling allowed for identification of biomarkers that help to further subcategorize known groups of breast cancer, among them luminal (ER+/HER22), HER2-enriched (HER2+) and triple-negative (ER2/PR2/HER22) types. Profiling approaches were first based on the identification of single, differentially expressed genes or of gene sets (signatures). For breast cancer, the utilization of subnetworks instead of single genes as biomarkers has been suggested as they provide higher prediction accuracy for both prognosis and classification purposes [10,11], even though the value of network-based methods is still a matter of debate [12]. Network-based approaches go beyond former analysis methods, as the number of genes in the human genome is surprisingly low (around 23,000 protein coding genes), but the number of interactions and dependencies between them allows for a large variety of processes in the cell

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