MLLGSep 17, 2020

Graph representation forecasting of patient's medical conditions: towards a digital twin

arXiv:2009.08299v14.912 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses the problem of integrating multiscale computational modeling with AI for healthcare digital twins, representing an incremental step forward in personalized medicine.

The authors tackled the challenge of creating personalized, preventative healthcare by developing a framework that integrates graph neural networks and generative adversarial networks with mechanistic computational modeling to forecast patient medical conditions and simulate physiological evolution. They demonstrated this approach by investigating the pathological effects of ACE2 overexpression on cardiovascular functions across multiple tissues and signaling pathways.

Objective: Modern medicine needs to shift from a wait and react, curative discipline to a preventative, interdisciplinary science aiming at providing personalised, systemic and precise treatment plans to patients. The aim of this work is to present how the integration of machine learning approaches with mechanistic computational modelling could yield a reliable infrastructure to run probabilistic simulations where the entire organism is considered as a whole. Methods: We propose a general framework that composes advanced AI approaches and integrates mathematical modelling in order to provide a panoramic view over current and future physiological conditions. The proposed architecture is based on a graph neural network (GNNs) forecasting clinically relevant endpoints (such as blood pressure) and a generative adversarial network (GANs) providing a proof of concept of transcriptomic integrability. Results: We show the results of the investigation of pathological effects of overexpression of ACE2 across different signalling pathways in multiple tissues on cardiovascular functions. We provide a proof of concept of integrating a large set of composable clinical models using molecular data to drive local and global clinical parameters and derive future trajectories representing the evolution of the physiological state of the patient. Significance: We argue that the graph representation of a computational patient has potential to solve important technological challenges in integrating multiscale computational modelling with AI. We believe that this work represents a step forward towards a healthcare digital twin.

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