Generating synthetic multi-dimensional molecular-mediator time series data for artificial intelligence-based disease trajectory forecasting and drug development digital twins: Considerations
Gary An, Chase Cockrell

TL;DR
This paper discusses the importance of generating synthetic multi-dimensional molecular time series data for AI-driven disease forecasting and drug development, proposing complex simulation models to overcome limitations of traditional statistical and ML methods.
Contribution
It introduces a rationale for using complex multi-scale mechanism-based simulation models to generate synthetic molecular time series data, addressing key limitations of existing methods.
Findings
Proposes complex simulation models for synthetic data generation.
Addresses limitations of neural network-based data synthesis.
Supports development of AI systems for disease forecasting and drug development.
Abstract
The use of synthetic data is recognized as a crucial step in the development of neural network-based Artificial Intelligence (AI) systems. While the methods for generating synthetic data for AI applications in other domains have a role in certain biomedical AI systems, primarily related to image processing, there is a critical gap in the generation of time series data for AI tasks where it is necessary to know how the system works. This is most pronounced in the ability to generate synthetic multi-dimensional molecular time series data (SMMTSD); this is the type of data that underpins research into biomarkers and mediator signatures for forecasting various diseases and is an essential component of the drug development pipeline. We argue the insufficiency of statistical and data-centric machine learning (ML) means of generating this type of synthetic data is due to a combination of…
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Taxonomy
TopicsComputational Drug Discovery Methods · Machine Learning in Materials Science
