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Beyond Low Earth Orbit: Biological Research, Artificial Intelligence, and Self-Driving Labs

Lauren M. Sanders
Jason H. Yang
Ryan T. Scott
Amina Ann Qutub
Hector Garcia Martin
Daniel C. Berrios
Jaden J. A. Hastings
Jon Rask
Graham Mackintosh
Adrienne L. Hoarfrost
Stuart Chalk
John Kalantari
Kia Khezeli
Erik L. Antonsen
Joel Babdor
Richard Barker
Sergio E. Baranzini
Afshin Beheshti
Guillermo M. Delgado-Aparicio
Benjamin S. Glicksberg
Casey S. Greene
Melissa Haendel
Arif A. Hamid
Philip Heller
Daniel Jamieson
Katelyn J. Jarvis
Svetlana V. Komarova
Matthieu Komorowski
Prachi Kothiyal
Ashish Mahabal
Uri Manor
Christopher E. Mason
Mona Matar
George I. Mias
Jack Miller
Jerry G. Myers Jr.
Charlotte Nelson
Jonathan Oribello
Seung-min Park
Patricia Parsons-Wingerter
R. K. Prabhu
Robert J. Reynolds
Amanda Saravia-Butler
Suchi Saria
Aenor Sawyer
Nitin Kumar Singh
Frank Soboczenski
Michael Snyder
Karthik Soman
Corey A. Theriot
David Van Valen
Kasthuri Venkateswaran
Liz Warren
Liz Worthey
Marinka Zitnik
Sylvain V. Costes
Abstract

Space biology research aims to understand fundamental effects of spaceflight on organisms, develop foundational knowledge to support deep space exploration, and ultimately bioengineer spacecraft and habitats to stabilize the ecosystem of plants, crops, microbes, animals, and humans for sustained multi-planetary life. To advance these aims, the field leverages experiments, platforms, data, and model organisms from both spaceborne and ground-analog studies. As research is extended beyond low Earth orbit, experiments and platforms must be maximally autonomous, light, agile, and intelligent to expedite knowledge discovery. Here we present a summary of recommendations from a workshop organized by the National Aeronautics and Space Administration on artificial intelligence, machine learning, and modeling applications which offer key solutions toward these space biology challenges. In the next decade, the synthesis of artificial intelligence into the field of space biology will deepen the biological understanding of spaceflight effects, facilitate predictive modeling and analytics, support maximally autonomous and reproducible experiments, and efficiently manage spaceborne data and metadata, all with the goal to enable life to thrive in deep space.

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