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Machine Learning: An Intuitive Approach In Healthcare

    Salini Suresh Suneetha V Niharika Sinha Sabyasachi Prusty Sriranga H.A

International Research Journal on Advanced Science Hub, 2020, Volume 2, Issue 7, Pages 67-74
10.47392/irjash.2020.67

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Abstract

Health is a crucial resource for a person's being to measure in our society from any disease. The fast development of the population appears to be trying to record and dissect the massive measure of knowledge about patients. Healthcare may be a need, and clinical specialists are constantly attempting to get approaches to actualize innovations and give effective outcomes. The main problem faced by the healthcare industry is the rising costs which include diagnosis and prediction of diseases, drug discovery, medical imaging diagnosis, personalized medicine, behavior therapy, and smart health records. Machine learning gives us an advantage of processing these information naturally which helps in making the human services framework progressively powerful. Getting the correct determination may be a key part of Healthcare. It clarifies a patient's medical issue and suggests health care treatment. The disease diagnostic technique is a complex, community-oriented action that has clinical, intelligent and data social events to make a decision about a patient's medical issue. Google has built up a ML model to assist recognize dangerous tumours on mammograms. Stanford’s profound learning calculation to differentiate skin malignancy. This paper is focused on the importance of Machine Learning in Healthcare just like the different application areas, latest research works in healthcare, wise machine learning contribution in Healthcare, and so on. Machine Learning is an application of Artificial Intelligence that helps in automatically learning and improving itself from experience. It is used in many other sectors like Law, Marketing & Advertising, Finance, Retail& Customer Services and Healthcare which also includes Covid-19. This paper presents various research in the Medicine and Healthcare sector
Keywords:
    Healthcare machine learning Artificial intelligence Predict and Diagnosis of Diseases Covid pattern recognition Decision making
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(2020). Machine Learning: An Intuitive Approach In Healthcare. International Research Journal on Advanced Science Hub, 2(7), 67-74. doi: 10.47392/irjash.2020.67
Salini Suresh; Suneetha V; Niharika Sinha; Sabyasachi Prusty; Sriranga H.A. "Machine Learning: An Intuitive Approach In Healthcare". International Research Journal on Advanced Science Hub, 2, 7, 2020, 67-74. doi: 10.47392/irjash.2020.67
(2020). 'Machine Learning: An Intuitive Approach In Healthcare', International Research Journal on Advanced Science Hub, 2(7), pp. 67-74. doi: 10.47392/irjash.2020.67
Machine Learning: An Intuitive Approach In Healthcare. International Research Journal on Advanced Science Hub, 2020; 2(7): 67-74. doi: 10.47392/irjash.2020.67
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