Smart Medical Care Disease Prediction

Main Article Content

Payal Takbhoware

Abstract

 The main aim of this paper is to discuss about the use Disease Prediction of in the field of medical health care. Smart Medical Care Disease Prediction System Is the Fastest emerging area in the field of medical science. The global healthcare systems have been decimated by COVID-19. The coronavirus (covid-19) pandemic's emergence has significantly increased demand for the healthcare system globally. Numerous elderly people are struggling with health issues including high blood pressure, diabetes, heart attacks, and so forth. I'm producing healthcare in this project with the help of a deep learning algorithm that anticipates disease. Users interact with the system in a manner similar to that of a patient with a doctor, and the system identifies the symptom and predicts the disease based on the symptoms reported by users. BP and body temperature monitoring are crucial for that since the goal is to design and implement a low-cost, smart healthcare system that enables continuous assessment and tracking of patient fitness. I employed sensors that sent data over a wi-fi network utilizing a wi-fi module, enabling fact analytics and visualization by using healthcare personnel.

Article Details

How to Cite
Takbhoware, P. (2022). Smart Medical Care Disease Prediction. Journal of Research in Multidisciplinary Methods and Applications, 1(8), 01220108001. Retrieved from http://satursonpublishing.com/jrmma/article/view/a01220108001
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