Fog computing-based intelligent healthcare system for the detection and prevention of mosquito-borne diseases
In recent years, fog computing emerges as a proactive solution for healthcare service as it facilitates continuous monitoring of remote patient health and early detection of mosquito-borne diseases. In addition, fog computing reduces the latency and communication cost that is normally an immense con...
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Published in | Computers in human behavior Vol. 100; pp. 275 - 285 |
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Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
Elmsford
Elsevier Ltd
01.11.2019
Elsevier Science Ltd |
Subjects | |
Online Access | Get full text |
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Summary: | In recent years, fog computing emerges as a proactive solution for healthcare service as it facilitates continuous monitoring of remote patient health and early detection of mosquito-borne diseases. In addition, fog computing reduces the latency and communication cost that is normally an immense concern of cloud computing. The key objective of the proposed intelligent system is to detect and control the mosquito-borne diseases at the early stage. For this purpose, wearable and IoT sensors are used to gather the required information and fog computing is used to analyze, categorize and share medical information among the user and healthcare service providers. We utilize similarity coefficient to differentiate the various mosquito-borne diseases based on patient's symptoms, and the fuzzy k-nearest neighbor approach is employed to categorize the user into infected or uninfected class. Further, on the cloud layer, Social Network Analysis (SNA) is employed to represent the outbreak of mosquito-borne diseases. The likelihood of the registered user to receive or spread the disease is measured by computing PDO (Probability of Disease Outbreak) which is used to provide the location-based awareness to avert the outbreak. The experimental evaluation reveals the improved performance of the proposed F-HMRAS with 95.9% classification accuracy.
•A fog-based framework is designed to monitor the spreading of mosquito-borne diseases.•Symptoms based classification is employed to differentiate mosquito-borne diseases.•FKNN based classification approach is utilized to categorize the users into infected or uninfected class.•Social network data is analyzed to discover risk-prone areas.•To prevent disease outbreak, alert messages are generated to the registered users to avoid visiting risk-prone areas. |
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ISSN: | 0747-5632 1873-7692 |
DOI: | 10.1016/j.chb.2018.12.009 |