Litcius/Paper detail

A framework towards digital twins for type 2 diabetes

Y Zhang, Guangrong Qin, Boris Aguilar, Noa Rappaport, James T. Yurkovich, Lance Pflieger, Sui Huang, Leroy Hood, Ilya Shmulevich

2024Frontiers in Digital Health36 citationsDOIOpen Access PDF

Abstract

Introduction: A digital twin is a virtual representation of a patient's disease, facilitating real-time monitoring, analysis, and simulation. This enables the prediction of disease progression, optimization of care delivery, and improvement of outcomes. Methods: Here, we introduce a digital twin framework for type 2 diabetes (T2D) that integrates machine learning with multiomic data, knowledge graphs, and mechanistic models. By analyzing a substantial multiomic and clinical dataset, we constructed predictive machine learning models to forecast disease progression. Furthermore, knowledge graphs were employed to elucidate and contextualize multiomic-disease relationships. Results and discussion: Our findings not only reaffirm known targetable disease components but also spotlight novel ones, unveiled through this integrated approach. The versatile components presented in this study can be incorporated into a digital twin system, enhancing our grasp of diseases and propelling the advancement of precision medicine.

Topics & Concepts

Computer scienceGRASPMachine learningDiseaseRepresentation (politics)Artificial intelligenceHuman–computer interactionMedicineSoftware engineeringPolitical sciencePathologyPoliticsLawMachine Learning in HealthcareDigital Transformation in IndustryArtificial Intelligence in Healthcare and Education
A framework towards digital twins for type 2 diabetes | Litcius