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Early screening and prevention work mode of high-risk stroke patients driven by artificial intelligence |
ZHOU Teng1 BAI Lu1 CHEN Yige1 LI Wenyuan2 |
1.School of Health Management, Southern Medical University, Guangdong Province, Guangzhou 510515, China;
2.NanFang Hospital, Southern Medical University, Guangdong Province, Guangzhou 510515, China |
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Abstract At present, China faces the real problem of accelerated population aging, high incidence of chronic diseases and heavy medical burden. Stroke is one of the current high-risk diseases, and its high disability and mortality rate imposes a serious burden on families and society. At present, artificial intelligence is developing rapidly, and it has the natural advantage of processing big data. There are also many applications in the medical field. This study focuses on the early prevention and intervention mode of stroke-based high-risk population driven by artificial intelligence, and explores its connotation, construction ideas and research content, so as to provide reference and reference to prevent the disease, reduce the incidence of stroke.
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