4.7 Article

An intelligent healthcare monitoring framework using wearable sensors and social networking data

Publisher

ELSEVIER
DOI: 10.1016/j.future.2020.07.047

Keywords

Machine learning; Semantic knowledge; Big data analysis; Healthcare monitoring system; Wearable sensors; Social network analysis

Funding

  1. National Research Foundation of Korea-Grant - Korean Government (Ministry of Science) [ICT-NRF-2020R1A2B5B02002478]
  2. Sejong university
  3. Basic Science Research Program through the National Research Foundation of Korea - Ministry of Education [2020R1G1A1013221]
  4. Deanship of Scientific Research at King Saud University [RG-1435-051]
  5. Spanish Ministry of Science, Innovation and Universities [RTI2018-099646-B-I00, TIN2017-84796-C2-1-R, TIN2017-90773-REDT, RED2018-102641-T]
  6. Galician Ministry of Education, University and Professional Training [ED431F 2018/02, ED431C 2018/29, ED431G/08, ED431G2019/04]
  7. European Regional Development Fund (ERDF/FEDER program)

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Wearable sensors and social networking platforms are crucial for healthcare monitoring, generating large volumes of unstructured data. A novel healthcare monitoring framework based on the cloud environment and a big data analytics engine is proposed to efficiently store and analyze healthcare data, improving classification accuracy. Data mining techniques, ontologies, and Bi-LSTM are utilized for efficient preprocessing and classification of healthcare data, leading to accurate health condition classification and drug side effect predictions.
Wearable sensors and social networking platforms play a key role in providing a new method to collect patient data for efficient healthcare monitoring. However, continuous patient monitoring using wearable sensors generates a large amount of healthcare data. In addition, the user-generated healthcare data on social networking sites come in large volumes and are unstructured. The existing healthcare monitoring systems are not efficient at extracting valuable information from sensors and social networking data, and they have difficulty analyzing it effectively. On top of that, the traditional machine learning approaches are not enough to process healthcare big data for abnormality prediction. Therefore, a novel healthcare monitoring framework based on the cloud environment and a big data analytics engine is proposed to precisely store and analyze healthcare data, and to improve the classification accuracy. The proposed big data analytics engine is based on data mining techniques, ontologies, and bidirectional long short-term memory (Bi-LSTM). Data mining techniques efficiently preprocess the healthcare data and reduce the dimensionality of the data. The proposed ontologies provide semantic knowledge about entities and aspects, and their relations in the domains of diabetes and blood pressure (BP). Bi-LSTM correctly classifies the healthcare data to predict drug side effects and abnormal conditions in patients. Also, the proposed system classifies the patients' health condition using their healthcare data related to diabetes, BP, mental health, and drug reviews. This framework is developed employing the Protege Web Ontology Language tool with Java. The results show that the proposed model precisely handles heterogeneous data and improves the accuracy of health condition classification and drug side effect predictions. (C) 2020 Elsevier B.V. All rights reserved.

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