Niederer Steven A, Smith Nic P
Department of Biomedical Engineering and Imaging Sciences, St Thomas' Hospital, King's College London, The Rayne Institute, 4th Floor Lambeth Wing, London, SE1 7EH, UK.
Engineering School Block 1, University of Auckland, Level 5, 20 Symonds Street, Auckland, 101, New Zealand.
J Physiol. 2016 Dec 1;594(23):6849-6863. doi: 10.1113/JP272003. Epub 2016 Jul 3.
Heart disease continues to be a significant clinical problem in Western society. Predictive models and simulations that integrate physiological understanding with patient information derived from clinical data have huge potential to contribute to improving our understanding of both the progression and treatment of heart disease. In particular they provide the potential to improve patient selection and optimisation of cardiovascular interventions across a range of pathologies. Currently a significant proportion of this potential is still to be realised. In this paper we discuss the opportunities and challenges associated with this realisation. Reviewing the successful elements of model translation for biophysically based models and the emerging supporting technologies, we propose three distinct modes of clinical translation. Finally we outline the challenges ahead that will be fundamental to overcome if the ultimate goal of fully personalised clinical cardiac care is to be achieved.