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Approaches to Federated Computing for the Protection of Patient Privacy and Security Using Medical Applications
Author(s) -
Osman Sirajeldeen Ahmed,
Emad Eldin Omer,
Samar Zuhair Alshawwa,
Malik Bader Alazzam,
Reefat Arefin Khan
Publication year - 2022
Publication title -
applied bionics and biomechanics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.397
H-Index - 23
eISSN - 1754-2103
pISSN - 1176-2322
DOI - 10.1155/2022/1201339
Subject(s) - computer science , boosting (machine learning) , enhanced data rates for gsm evolution , edge computing , computer security , computation , analytics , train , computer network , data mining , artificial intelligence , cartography , algorithm , geography
Computing model may train on a distributed dataset using Medical Applications, which is a distributed computing technique. Instead of a centralised server, the model trains on device data. The server then utilizes this model to train a joint model. The aim of this study is that Medical Applications claims no data is transferred, thereby protecting privacy. Botnet assaults are identified through deep autoencoding and decentralised traffic analytics. Rather than enabling data to be transmitted or relocated off the network edge, the problem of the study is in privacy and security in Medical Applications strategies. Computation will be moved to the edge layer to achieve previously centralised outcomes while boosting data security. Study Results in our suggested model detects anomalies with up to 98 percent accuracy utilizing MAC IP and source/destination/IP for training. Our method beats a traditional centrally controlled system in terms of attack detection accuracy.

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