Smart Chronic Disease Consultation using Machine Learning
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Abstract
In the quick world with such countless savvy frameworks infer our energy, the most alluring thing of inserted development is the applications usable by everyday person for day by day expectation purposes which accommodating for them a ton. A particularly intelligent clinical assistant framework is executed here with installed frameworks and MATLAB IDE for re-enactment. Plan and execution of a powerful integrative MATLAB model is made for identifying the regular constant infections and their manifestations present with the patients. The proposed framework goes about as a pre-screening model application hence the patients would self is able to dissect and get the idea of the drugs for normally happening persistent sicknesses through their live manifestations. The proposed model zeroed in on carrying out a Weighted Bias Network which look at and run various iterative circles to anticipate the practical infections and their side effects.
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Machine Learning, Matlab, Arduino.
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