Artificial Intelligence and Stroke Management

Journal Title: Science Insights - Year 2022, Vol 40, Issue 6

Abstract

As a burgeoning technology, artificial intelligence has been utilized in numerous domains, including stroke prevention, diagnosis, treatment, and rehabilitation, and has demonstrated considerable promise. The combination of artificial intelligence and big data can be utilized for accurate identification of stroke high-risk groups, automatic etiology classification, and assistance in the formulation of acute stroke and secondary prevention strategies, thereby enhancing the rehabilitation treatment effect for stroke patients. This article discusses the accomplishments made in artificial intelligence research for stroke prevention, diagnosis, treatment, and rehabilitation.

Authors and Affiliations

Mayte Garcia-Perez

Keywords

Related Articles

Albumin versus Saline in Mortality in Critically Ill Children

High mortality in critically ill patients is a challenge for the intensive care medicine. While different reasons were figured out and corresponding therapeutic protocols were recommended, the actual mortality is still h...

Human-animal Hybrid Embryo Experiment: Gospel versus Disaster?

The academic debate on the study of human and animal embryos has never stopped. Despite the great expectations of scientists, the human-animal embryo hybrid experiment costs a lot and requires high technology as the endo...

How to Remediate Heavy Metal Contamination in Soil?

The issue of heavy metal soil pollution has risen to the forefront. In addition to harming the pedosphere as a whole, soil pollution also has an impact on other significant sectors, such as air and water pollution. The t...

Protecting Soil: A Shared Obligation

Soil is one of the ecosystems that human beings depend on for survival. The ecological imbalance caused by soil contamination is not only a threat to the soil ecology itself, but also a potential source of danger to huma...

Effectiveness of Students’ Self-Regulated Learning during the COVID-19 Pandemic

Self-regulated learning means that learners can set their own learning goals, determine content and progress, choose skills and methods, monitor the entire process, and conduct self-assessment. During the COVID-19 Pandem...

Download PDF file
  • EP ID EP712278
  • DOI https://doi.org/10.15354/si.22.re059
  • Views 80
  • Downloads 0

How To Cite

Mayte Garcia-Perez (2022). Artificial Intelligence and Stroke Management. Science Insights, 40(6), -. https://europub.co.uk/articles/-A-712278