Origin of aromatase inhibitory activity via proteochemometric modeling

PeerJ. 2016 May 12:4:e1979. doi: 10.7717/peerj.1979. eCollection 2016.

Abstract

Aromatase, the rate-limiting enzyme that catalyzes the conversion of androgen to estrogen, plays an essential role in the development of estrogen-dependent breast cancer. Side effects due to aromatase inhibitors (AIs) necessitate the pursuit of novel inhibitor candidates with high selectivity, lower toxicity and increased potency. Designing a novel therapeutic agent against aromatase could be achieved computationally by means of ligand-based and structure-based methods. For over a decade, we have utilized both approaches to design potential AIs for which quantitative structure-activity relationships and molecular docking were used to explore inhibitory mechanisms of AIs towards aromatase. However, such approaches do not consider the effects that aromatase variants have on different AIs. In this study, proteochemometrics modeling was applied to analyze the interaction space between AIs and aromatase variants as a function of their substructural and amino acid features. Good predictive performance was achieved, as rigorously verified by 10-fold cross-validation, external validation, leave-one-compound-out cross-validation, leave-one-protein-out cross-validation and Y-scrambling tests. The investigations presented herein provide important insights into the mechanisms of aromatase inhibitory activity that could aid in the design of novel potent AIs as breast cancer therapeutic agents.

Keywords: Aromatase; Aromatase inhibitor; Breast cancer; Data mining; Proteochemometrics; QSAR; Quantitative structure–activity relationship.

Grants and funding

JESW and CN are supported by a joint grant from the Swedish Research Links program (no. C0610701) from the Swedish Research Council. This work is also partially supported by the Office of Higher Education Commission and Mahidol University under the National Research University Initiative. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.