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Dynamic Digital Twin: Diagnosis, Treatment, Prediction, and Prevention of Disease During the Life Course

Authors :
Skander Tahar Mulder
Amir-Houshang Omidvari
Anja J Rueten-Budde
Pei-Hua Huang
Ki-Hun Kim
Babette Bais
Melek Rousian
Rihan Hai
Can Akgun
Jeanine Roeters van Lennep
Sten Willemsen
Peter R Rijnbeek
David MJ Tax
Marcel Reinders
Eric Boersma
Dimitris Rizopoulos
Valentijn Visch
Régine Steegers-Theunissen
Public Health
Epidemiology
Psychiatry
Obstetrics & Gynecology
Internal Medicine
Medical Informatics
Cardiology
Source :
Journal of Medical Internet Research, 24(9), Journal of Medical Internet Research, 24(9):e35675. Journal of medical Internet Research
Publication Year :
2022

Abstract

A digital twin (DT), originally defined as a virtual representation of a physical asset, system, or process, is a new concept in health care. A DT in health care is not a single technology but a domain-adapted multimodal modeling approach incorporating the acquisition, management, analysis, prediction, and interpretation of data, aiming to improve medical decision-making. However, there are many challenges and barriers that must be overcome before a DT can be used in health care. In this viewpoint paper, we build on the current literature, address these challenges, and describe a dynamic DT in health care for optimizing individual patient health care journeys, specifically for women at risk for cardiovascular complications in the preconception and pregnancy periods and across the life course. We describe how we can commit multiple domains to developing this DT. With our cross-domain definition of the DT, we aim to define future goals, trade-offs, and methods that will guide the development of the dynamic DT and implementation strategies in health care.

Details

Language :
English
ISSN :
14388871 and 14394456
Database :
OpenAIRE
Journal :
Journal of Medical Internet Research, 24(9), Journal of Medical Internet Research, 24(9):e35675. Journal of medical Internet Research
Accession number :
edsair.doi.dedup.....17e769ae542b02c6c24f6b2766b9ab88