| Literature DB >> 31892363 |
Bergthor Björnsson1, Carl Borrebaeck2, Nils Elander3, Thomas Gasslander1, Danuta R Gawel4, Mika Gustafsson5, Rebecka Jörnsten6, Eun Jung Lee4,7, Xinxiu Li4, Sandra Lilja4, David Martínez-Enguita5, Andreas Matussek8,9, Per Sandström1, Samuel Schäfer4, Margaretha Stenmarker10,11, X F Sun3, Oleg Sysoev12, Huan Zhang4, Mikael Benson13,14,15.
Abstract
Personalized medicine requires the integration and processing of vast amounts of data. Here, we propose a solution to this challenge that is based on constructing Digital Twins. These are high-resolution models of individual patients that are computationally treated with thousands of drugs to find the drug that is optimal for the patient.Entities:
Mesh:
Year: 2019 PMID: 31892363 PMCID: PMC6938608 DOI: 10.1186/s13073-019-0701-3
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Fig. 1The digital twin concept for personalized medicine. a An individual patient has a local sign of disease (red). b A digital twin of this patient is constructed in unlimited copies, based on computational network models of thousands of disease-relevant variables. c Each twin is computationally treated with one or more of the thousands of drugs. This results in digital cure of one patient (green). d The drug that has the best effect on the digital twin is selected for treatment of the patient