A Customized Knowledge Discovery Framework for Assisted Healthcare Employing

SEEE DIGIBOOK ON ENGINEERING & TECHNOLOGY, VOL. 01, DEC 2019 PP.(307-313)
Abstract– An ambient assisted living system, also known as an AAL system, is made up of a variety of sensors and other devices, all of which produce massive amounts of patient-specific unstructured raw data on a daily basis. The ability of remote monitoring applications to accurately identify abnormal conditions exhibited by a patient and, as a result, send appropriate alerts to the individuals responsible for the patient’s care is an important feature of these applications. In conventional medical practice, situations are categorized according to overly generalized medical rules or nebulous guidelines, neither of which are always appropriate for every type of patient. These systems are not capable of early-stage foresight into the future. If a patient is feeling unwell, they may be required to press a panic button that is attached to their clothing in order to alert a response center that an emergency has occurred. In this body of work, we have presented BDCaM (Big Data – Context Aware Monitoring), a generalized framework for personalized healthcare that capitalizes on the benefits of context-aware computing, remote monitoring, cloud computing, machine learning, and big data. BDCaM was designed to provide patients with more accurate and timely diagnoses and treatment plans. Our solution offers a methodical strategy for providing assistance to the rapidly expanding communities of people with chronic illnesses who live alone and have a requirement for assisted care. The system is able to accurately differentiate between emergency situations and normal conditions. The data that are used to validate the model are obtained through the process of artificial data generation, which is based on data derived from actual patients. This method ensures that the correlation of a patient’s vital signs with various activities and symptoms is maintained.
Index Terms – Healthcare Assistance; Context-Aware Data Mining, Hadoop; Knowledge Discovery; MapReduce; big data.
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Sreenivasalu Manda V Bharathi S, Dhanabal S
Department of Information Technology,
Rathinam Technical Campus,
Coimbatore, India

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