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Privacy-based framework for Cyber Resilience of Healthcare based data for use with Machine Learning algorithms

Varun SapraSchool of Computer Science, University of Petroleum and Energy, Studies,Dehradun,IndiaMohammad Kamrul HasanUniversiti Kebansaan Malaysia (UKM),Center for Cyber Security, Faculty of Information Science and Technology,Bangi,Selangor,Malaysia,43600Taher M. GhazalSkyline University College, University,School of Information Technology,City Sharjah,UAE,1797Akashdeep BhadrdwajUniversity of Petroleum and Energy Studies,Dehradun,IndiaSalil BharanyGNDU,CET department,Amritsar,Punjab,IndiaMunir AhmadNational College of Business, Administration and Economics,Lahore,PakistanAteeq Ur RehmanGC University,Department of Electrical Engineering,Lahore,PakistanTamer MohamedCanadian University Dubai,Dubai,UAE
2022en
ABI

Аннотация

Cyber resilience is the business capability of handling the risks and preparing themselves for responding and recovering from risks. Being a cyber resilient the organization is capable of handling unknown or less known threats and ready to face such adversities and challenges. Healthcare related datasets using Machine learning or ML-based systems for detection of diseases such as Streptococcus pharyngitis will be expected to operate in contested and adversarial environments. Every operation these datasets support depends on their capacity to adjust to threats. To minimize the risk of misdiagnosing and early diagnosis of the disease an intelligent ML method are required. ML has gained a significant success in almost all the domains and has proved its ability in healthcare sector also. This research presents comparison of different ML algorithms to detect Pharyngitis. The study revealed that with reduced feature set Random Forest performs best with 70.11% accuracy and outshined all other implemented techniques. The authors propose a new privacy framework to protect the patient health care data.

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Цитирований: 3Использованных источников: 0