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Amalgamation of Deep Learning in Healthcare Systems
3
Zitationen
3
Autoren
2023
Jahr
Abstract
Deep learning’s massive powers are transforming healthcare. In recent years, AI and machine learning have grown in popularity and acceptability. The situation became much more convoluted when the COVID-19 outbreak broke out. During the crisis, we witnessed a rapid digital renovation and the adoption of disruptive technology across different industries. Healthcare was one of the potential sectors that gained many benefits from deploying disruptive technologies. Artificial intelligence, machine learning, and deep learning have all become the most vital mechanisms of the business. Deep learning had a significant influence in healthcare, allowing the industry to progress patient monitoring and diagnosis. Drug development, medical imaging and diagnostics, personalized treatments, and patient monitoring improved the health record management, health insurance, and fraud detection. These are some of the most ground-breaking solicitations of deep learning in healthcare.
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