This study presents a data-driven machine learning approach to predict individual Galactic Cosmic Radiation (GCR) ion exposure for 4He, 16O, 28Si, 48Ti, or 56Fe up to 150 mGy, based on Attentional Set-shifting (ATSET) experimental tests. The ATSET assay consists of a series of cognitive performance tasks on irradiated male Wistar rats. The GCR ion doses represent the expected cumulative radiation astronauts may receive during a Mars mission on an individual ion basis. The primary objective is to synthesize and assess predictive models on a per-subject level through Machine Learning (ML) classifiers. The raw cognitive performance data from individual rodent subjects are used as features to train the models and to explore the capabilities of ...
International audienceWith the increase of component complexity, protection against single event eff...
Technological advancements have facilitated the implementation of realistic, terrestrial-based compl...
The focus of this research is to combine statistical and machine learning tools in application to a ...
Prolonged deep space missions to planets and asteroids will expose astronauts to galactic cosmic rad...
The radiation environment astronauts are exposed to in deep space includes galactic cosmic radiation...
Astronauts during interplanetary missions will be exposed to galactic cosmic radiation, including ch...
In the coming decade, astronauts will travel back to the moon in preparation for future Mars mission...
Purpose: To utilize advanced computational phantoms to determine absorbed dose, dose equivalent, and...
Experimental studies of cognitive detriments in mice and rats after proton and heavy ion exposures h...
Prolonged deep space missions to planets and asteroids will expose astronauts to galactic cosmic rad...
Ionizing radiations encountered by astronauts on deep space missions produce biological damage by tw...
The Mars mission will result in an inevitable exposure to cosmic radiation that has been shown to ca...
Exposures of brain tissue to ionizing radiation can lead to persistent deficits in cognitive functio...
International audienceThe space environment is known to be the seat of radiation of different kinds ...
Space radiation exposure to astronauts will need to be carefully monitored on future missions beyond...
International audienceWith the increase of component complexity, protection against single event eff...
Technological advancements have facilitated the implementation of realistic, terrestrial-based compl...
The focus of this research is to combine statistical and machine learning tools in application to a ...
Prolonged deep space missions to planets and asteroids will expose astronauts to galactic cosmic rad...
The radiation environment astronauts are exposed to in deep space includes galactic cosmic radiation...
Astronauts during interplanetary missions will be exposed to galactic cosmic radiation, including ch...
In the coming decade, astronauts will travel back to the moon in preparation for future Mars mission...
Purpose: To utilize advanced computational phantoms to determine absorbed dose, dose equivalent, and...
Experimental studies of cognitive detriments in mice and rats after proton and heavy ion exposures h...
Prolonged deep space missions to planets and asteroids will expose astronauts to galactic cosmic rad...
Ionizing radiations encountered by astronauts on deep space missions produce biological damage by tw...
The Mars mission will result in an inevitable exposure to cosmic radiation that has been shown to ca...
Exposures of brain tissue to ionizing radiation can lead to persistent deficits in cognitive functio...
International audienceThe space environment is known to be the seat of radiation of different kinds ...
Space radiation exposure to astronauts will need to be carefully monitored on future missions beyond...
International audienceWith the increase of component complexity, protection against single event eff...
Technological advancements have facilitated the implementation of realistic, terrestrial-based compl...
The focus of this research is to combine statistical and machine learning tools in application to a ...