2021
DOI: 10.3389/fnsys.2021.713131
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Machine Learning Models to Predict Cognitive Impairment of Rodents Subjected to Space Radiation

Abstract: This research uses machine-learned computational analyses to predict the cognitive performance impairment of rats induced by irradiation. The experimental data in the analyses is from a rodent model exposed to ≤15 cGy of individual galactic cosmic radiation (GCR) ions: 4He, 16O, 28Si, 48Ti, or 56Fe, expected for a Lunar or Mars mission. This work investigates rats at a subject-based level and uses performance scores taken before irradiation to predict impairment in attentional set-shifting (ATSET) data post-ir… Show more

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Cited by 6 publications
(3 citation statements)
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References 75 publications
(154 reference statements)
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“…Working with subject matter experts to develop a cost matrix (Chawla, 2005) that weighs the relative importance of type I and type II classification errors for GCR ion exposure prediction would help elucidate the extent of the significance in this greater-thanchance classifier performance in application. Similarly, a recent parallel effort by our group (Matar et al, 2021) evaluates the susceptibility to cognitive performance impairment in rodents due to space radiation exposure by demonstrating a capability to predict cognitive performance impairment in individual rodents using their respective pre-irradiation performance scores with ML. The findings demonstrate that prescreen performance scores can be used as features with ML to predict ATSET performance impairments as a direct method of predicting impairment.…”
Section: Discussionmentioning
confidence: 99%
“…Working with subject matter experts to develop a cost matrix (Chawla, 2005) that weighs the relative importance of type I and type II classification errors for GCR ion exposure prediction would help elucidate the extent of the significance in this greater-thanchance classifier performance in application. Similarly, a recent parallel effort by our group (Matar et al, 2021) evaluates the susceptibility to cognitive performance impairment in rodents due to space radiation exposure by demonstrating a capability to predict cognitive performance impairment in individual rodents using their respective pre-irradiation performance scores with ML. The findings demonstrate that prescreen performance scores can be used as features with ML to predict ATSET performance impairments as a direct method of predicting impairment.…”
Section: Discussionmentioning
confidence: 99%
“…The Edge TPU and other similar low-power AI ASICs (i.e., Google Coral Edge TPU, NVIDIA Jetson Nano, Intel Neural Compute Stick 2) could advance image segmentation AI models, allowing for these models to be feasibly deployed in ultrasound point-of-care settings (e.g., detection of DVT, structural heart disease, hemodynamic changes), even procedural guidance [100]. AI-based system designed to guide non-physicians on the proper acquisition of medical diagnostic testing using The Edge TPU and deep reinforcement learning AI-enhanced 3D-imaging technology (e.g., micro-CT scanners) [101] Utilization of the Edge TPU and other similar low-power AI ASICs to provide the necessary processing power for high-performance parallel-processing space research [102] Intervention AI-guided minor surgical procedures [such as incision and drainage (I&D)] using next-generation High Performance Spaceflight Computing (HPSC) [103] AI-assisted, remotely controlled robotic PCI and robotic laparoscopic surgery (e.g., telecholecystectomy and teleappendectomy); made possible by a reduction in communication latency beyond a lag of 200 ms [103][104][105][106][107] Using AI predictions of drug metabolism and effectiveness based on an individual's multiomic data prior to medication or supplement distribution (e.g., melatonin, immune supplements, probiotics) [108,109] Disease Prevention AI-integrated space suits (e.g., exoskeletons) to maximize EVA time and operating pressure, and minimize space radiation exposure [110,111] 3D printing of personalized devices (e.g., ear plugs to prevent noise source generated from man-made sources), space shields, space suits for use in emergency scenarios [112][113][114] AI-based chatbots or social media could potentially be used to prevent anxiety and depression during long-duration space travel. The Edge TPU could potentially be used in advancing an internet or social media for the moon, known as LunaNet [115].…”
Section: Medical Diagnostic Toolsmentioning
confidence: 99%
“…There is a comprehensive body of data on the effect that a wide spectrum of SR species has on performance in the attentional set shifting (ATSET) assay (Parihar et al, 2016;Britten et al, 2018;Britten et al, 2020a;Britten et al, 2021b;Burket et al, 2021). These data sets are now being analyzed with machine learning assisted computational approaches to fully characterize the cognitive deficits induced (Matar et al, 2021;Prelich et al, 2021). However, a readily identifiable consequence of SR exposure is the loss of performance in the Simple Discrimination (SD) stage of the ATSET test.…”
Section: Introductionmentioning
confidence: 99%