Inception of a Spaceflight-specific Mouse to Human Expression Profiling Translation ModelRodents are foundational model organisms often utilized due to their seemingly analogous morphologies and biological responses to humans. However, recent studies have demonstrated that murine model data are limited in their applicability, particularly in inflammatory disease. In space studies, accurately predicting human response from mouse data is critical due to extreme limiting factors in both rodent and human spaceflight research. With successful prediction, spaceflight ailments can be predicted and prevented while respecting the constraints of the spaceflight industry and minimizing danger to humans. To do so, novel methodologies must be developed that predict human response from murine data after considering biological differences between rodents and humans in spaceflight.
After considering terrestrial models, we determined that a spaceflight-based expression profiting translation tool should be created to accurately capture predictions of human gene expression in spaceflight from mouse data. To prepare to build this model, we organized known human spaceflight risks, chose analog human diseases as training data categories, then identified existing RNASeq disease datasets from GEO as potential training data. In addition, we classified existing Genelab mouse differential gene expression datasets for use as experimental data.
Document ID
20210019578
Acquisition Source
Ames Research Center
Document Type
Poster
Authors
A. C. Gibbons (Wyle (United States) El Segundo, California, United States)
J. Galazka (Ames Research Center Mountain View, California, United States)
Date Acquired
July 30, 2021
Subject Category
Life Sciences (General)
Meeting Information
Meeting: ASGSR Annual Meeting
Location: Baltimore, MD
Country: US
Start Date: November 3, 2021
End Date: November 6, 2021
Sponsors: American Society for Gravitational and Space Research