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Digital Twin Generators for Disease Modeling

Machine Learning 2024-05-03 v1 Machine Learning

Abstract

A patient's digital twin is a computational model that describes the evolution of their health over time. Digital twins have the potential to revolutionize medicine by enabling individual-level computer simulations of human health, which can be used to conduct more efficient clinical trials or to recommend personalized treatment options. Due to the overwhelming complexity of human biology, machine learning approaches that leverage large datasets of historical patients' longitudinal health records to generate patients' digital twins are more tractable than potential mechanistic models. In this manuscript, we describe a neural network architecture that can learn conditional generative models of clinical trajectories, which we call Digital Twin Generators (DTGs), that can create digital twins of individual patients. We show that the same neural network architecture can be trained to generate accurate digital twins for patients across 13 different indications simply by changing the training set and tuning hyperparameters. By introducing a general purpose architecture, we aim to unlock the ability to scale machine learning approaches to larger datasets and across more indications so that a digital twin could be created for any patient in the world.

Keywords

Cite

@article{arxiv.2405.01488,
  title  = {Digital Twin Generators for Disease Modeling},
  author = {Nameyeh Alam and Jake Basilico and Daniele Bertolini and Satish Casie Chetty and Heather D'Angelo and Ryan Douglas and Charles K. Fisher and Franklin Fuller and Melissa Gomes and Rishabh Gupta and Alex Lang and Anton Loukianov and Rachel Mak-McCully and Cary Murray and Hanalei Pham and Susanna Qiao and Elena Ryapolova-Webb and Aaron Smith and Dimitri Theoharatos and Anil Tolwani and Eric W. Tramel and Anna Vidovszky and Judy Viduya and Jonathan R. Walsh},
  journal= {arXiv preprint arXiv:2405.01488},
  year   = {2024}
}
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