Affiliation:
1. Ph.D Scholar, Anna University, Salem, Tamilnadu, India
2. Professor, Department of MCA, KSR College of Engineering, Namakkal, Tamilnadu, India
Abstract
In this article, the discussions reflect on medical AI research on maturity and influence that has been achieve. Artificial intelligence (AI) aims to imitate human cognitive functions. It is bringing a pattern transfer to healthcare, power-driven by growing accessibility of healthcare records and fast development of analytics methods. This article describes a technique for representing medical performance instructions and facilitating their beginning into the clinical routine. As this technique it be exploited in internet location, it can correspond to the foundation for distributing clinical instructions both connecting dissimilar institutions and between human and software, brokers are cooperating inside a clinical background. AI can be functional to a variety of healthcare records (structured and unstructured). AI methods contain machine learning for structured data, such as the usual support vector mechanism and neural network, and the modern deep learning, since natural language processing for unstructured data. Main disease areas that use AI tools include cancer, neurology and cardiology. This article presents a review in more information of AI applications in Cancer, in the three most important areas of premature detection and diagnosis, treatment, as well as result prediction and prognosis assessment.
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