The ‘Digital Twin’ to enable the vision of precision cardiology

Jorge Corral Acero(University of Oxford), Francesca Margara(British Heart Foundation), M Marciniak(King's College London), Cristóbal Rodero(King's College London), Filip Lončarić(Consorci Institut D'Investigacions Biomediques August Pi I Sunyer), Yingjing Feng(Université de Bordeaux), Andrew Gilbert, João Filipe Fernandes(King's College London), Syed Hassaan Ahmed Bukhari(Université de Bordeaux), Ali Wajdan(Oslo University Hospital), Manuel Villegas Martinez(Oslo University Hospital), Mariana Sousa Santos, Mehrdad Shamohammdi(Maastricht University), Hongxing Luo(Maastricht University), Philip Westphal(Medtronic (Netherlands)), Paul Leeson(John Radcliffe Hospital), Paolo DiAchille, Viatcheslav Gurev, Manuel Mayr(King's College London), Liesbet Geris, Pras Pathmanathan(United States Food and Drug Administration), Tina Morrison(United States Food and Drug Administration), Richard Cornelussen(Medtronic (Netherlands)), Frits W. Prinzen(Maastricht University), Tammo Delhaas(Maastricht University), Adelina Doltra(Consorci Institut D'Investigacions Biomediques August Pi I Sunyer), Marta Sitges(Generalitat de Catalunya), Edward J. Vigmond(Université de Bordeaux), Ernesto Zacur(University of Oxford), Vicente Grau(University of Oxford), Blanca Rodriguez(British Heart Foundation), Espen W. Remme(Oslo University Hospital), Steven Niederer(King's College London), Peter Mortier, Kristin McLeod, Mark Potse(Université de Bordeaux), Esther Pueyo(Universidad de Zaragoza), Alfonso Bueno‐Orovio(British Heart Foundation), Pablo Lamata(King's College London)
European Heart Journal
February 25, 2020
Cited by 804Open Access
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Abstract

Providing therapies tailored to each patient is the vision of precision medicine, enabled by the increasing ability to capture extensive data about individual patients. In this position paper, we argue that the second enabling pillar towards this vision is the increasing power of computers and algorithms to learn, reason, and build the 'digital twin' of a patient. Computational models are boosting the capacity to draw diagnosis and prognosis, and future treatments will be tailored not only to current health status and data, but also to an accurate projection of the pathways to restore health by model predictions. The early steps of the digital twin in the area of cardiovascular medicine are reviewed in this article, together with a discussion of the challenges and opportunities ahead. We emphasize the synergies between mechanistic and statistical models in accelerating cardiovascular research and enabling the vision of precision medicine.


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