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Predictive Brain Cancer Detection and Treatment Using Machine Learning and Artificial Intelligence

Shailesh Bendale, Atharva Parai, Swapneel Deshpande, Arjun Iyer, Adwait Kumbhare

Abstract


Through the combination of Big Data and the computer science discipline of machine learning, significant insights may be gained. Machine learning may now be utilized to anticipate nearly any result based on any capability thanks to developing technology. By analyzing underlying patterns in the data, machine learning creates an appropriate model. Every day, medical sciences must overcome new obstacles, such as patients' lack of knowledge about the ailments they are suffering from, the need for more advanced therapies, the development of new pharmaceuticals, and other issues. Through the simple input of symptoms experienced, medical histories, if any, and current medical reports like Brain MRIs, this project will assist patients in identifying cancer and directing them to proceed with the appropriate therapies.


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