Design of ANFIS Based E-Health Care System for Cardio Vascular Disease Detection

As the society is becoming superior day-by- day, loads of smart devices are used in different application areas. This is the challenge to the technocrats for forming the intelligent and smart social systems. It requires easy access and fast processing, which is the main focus of any application. In this work, an attempt has been taken into consideration to develop an intelligent e-healthcare system. In e-healthcare system the entities are considered as the patient, the physician, the pathological centre and result as diagnosis, treatment and post care. This paper uses an ANFIS structure for e-healthcare system. Further the ANFIS system is used for disease diagnosis and support to the patient as well as for physicians. For the management of multi-agent system has been satisfied by, using rule based fuzzy parameters. The service can be provided through internet to the patient as well as by the physician. The different situation of patient automatically informs to the doctor similarly the prescription from the doctor for diagnosis can inform to the pathology centre and vice versa. The result of detection communicated to both for desired medicine, monitoring and post care purpose. The performance found to be excellent to satisfy this part of intelligent system.

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