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Role of Artificial Intelligence in Echocardiography: A Narrative Review
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2024
Jahr
Abstract
Advances in computer technology and the creation of advanced neural networks led to most of the major breakthroughs in AI, subsequently after the 1980s. The networks in AI are nothing but computing systems that mimic the human brain by recognizing relationships in gigantic amounts of data. In simple language, AI is represented as the expanded concept of computers delegated to recognize as well as execute tasks on their own in a "smart" manner. The subfields and techniques used within AI are described in many different terms. ML and deep learning (DL) are two such subfields that provide the basis of most AI functions (Fig. The others are neural networks, robotics, and computing vision.
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