Enabling Precision Cardiology Through Multiscale Biology and Systems Medicine

JACC Basic Transl Sci. 2017 Jun 26;2(3):311-327. doi: 10.1016/j.jacbts.2016.11.010. eCollection 2017 Jun.

Abstract

The traditional paradigm of cardiovascular disease research derives insight from large-scale, broadly inclusive clinical studies of well-characterized pathologies. These insights are then put into practice according to standardized clinical guidelines. However, stagnation in the development of new cardiovascular therapies and variability in therapeutic response implies that this paradigm is insufficient for reducing the cardiovascular disease burden. In this state-of-the-art review, we examine 3 interconnected ideas we put forth as key concepts for enabling a transition to precision cardiology: 1) precision characterization of cardiovascular disease with machine learning methods; 2) the application of network models of disease to embrace disease complexity; and 3) using insights from the previous 2 ideas to enable pharmacology and polypharmacology systems for more precise drug-to-patient matching and patient-disease stratification. We conclude by exploring the challenges of applying a precision approach to cardiology, which arise from a deficit of the required resources and infrastructure, and emerging evidence for the clinical effectiveness of this nascent approach.

Keywords: CAD, coronary artery disease; EHR, electronic health record; GWAS, genome-wide association studies; HF, heart failure; cardiology; clinical informatics; multi-omics; precision medicine; translational bioinformatics.

Publication types

  • Review