Artificial intelligence is any intuitive software that is capable of mimicking the human brain in terms of intention, contemplation, and judgment. The field of medicine has been revolutionized by artificial intelligence. It can provide substantial improvements in all areas of healthcare from diagnostics to research. Artificial intelligence can find acceptance in the healthcare environment only if human remains the master and technology the server.
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