The heart diseases or cardiovascular diseases are classified into various types of diseases which need to be predicted in the earlier stage. This is one of the emerging diseases all over the world and it increases high mortality rate all over the world. Most of the people have lost their life due to this disease. This disease has many risk factors that have to be avoided and the precaution measures have to be undergone in case if the patient has already infected by the heart disease. The patients who are affected by the heart disease or cardiovasculardisease should follow the safety measures and the precaution must be taken as per the doctor’s advice in order to reduce the infection rate of the heart disease. Linear and machine Using a variety of inputs, learning models are used to predict heart failure, involving clinical information. Due to the expanding population, early detection and treatment for heart disease grow more complex. Coronary illness predominance has raised to concerning levels, coming full circle in troublesome passing because of blood vessel plaque gathering.. The premature pinpointing of coronary illness holds the possibility to save many lives by maintaining blood vessel wellness. Our research integrates supervised machine learning algorithms to predict heart disease presence, underscoring methods to enhance classifier efficacy.
Vaibhav KongrePrerna DangraAnupam Chaube
Hayagriva RaoAayushi PatelBansri RauljiNayan Chaudhary
Vengala Rao GandlaDavid Vinay MallelaRahul Kumar Chaurasiya
Jeevan Babu MaddalaBhargav Reddy ModugullaSahithi Amulya PulusuSanjay MannepalliPraveen prakash PamidimallaRukhiya Khanam