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How has the use of AI technology impacted the diagnosis and treatment of COVID-19? 


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The use of AI technology has had a significant impact on the diagnosis and treatment of COVID-19. AI-based applications for chest imaging have emerged as potential tools to assist clinicians in the diagnosis and management of COVID-19 patients . Deep learning-based clinical decision support systems have been developed to automatically diagnose COVID-19 on chest CT scans, providing high accuracy in distinguishing COVID-19 cases from other types of pulmonary infections . AI models have shown comparable or even better clinical decision outcomes compared to experienced radiologists in screening and diagnosing COVID-19, reducing physician work burdens and fatigue . AI has also been utilized to develop user-friendly platforms for medical professionals and researchers, speeding up the process of diagnosing and treating COVID-19 . Overall, AI technology has improved COVID-19 screening and diagnosis, reducing false positives and enhancing efficiency in healthcare settings .

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AI has greatly improved COVID-19 screening and diagnosis, with some AI models showing comparable or better clinical decision outcomes than experienced radiologists. AI can reduce physician work burdens and false positives, but it works optimally under the supervision of a physician.
The use of AI technology has sped up the process of diagnosing and treating COVID-19 illness, according to the paper.
The paper discusses the use of computerized tomography (CT) scans to diagnose patients infected with COVID-19. However, it does not provide information on the impact of AI technology on the treatment of COVID-19.
The paper discusses the development of a deep learning-based clinical decision support system for the automatic diagnosis of COVID-19 on chest CT scans, which could assist clinicians in diagnosing and managing COVID-19 patients. However, it does not specifically mention the impact of AI technology on the diagnosis and treatment of COVID-19.
The paper discusses the use of AI technology for the diagnosis of COVID-19 using CT images and X-rays, providing accurate and rapid diagnosis.

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