2023
DOI: 10.1109/access.2023.3260027
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A Systematic Review on Federated Learning in Medical Image Analysis

Abstract: Federated Learning (FL) obtained a lot of attention to the academic and industrial stakeholders from the beginning of its invention. The eye-catching feature of FL is handling data in a decentralized manner which creates a privacy preserving environment in Artificial Intelligence (AI) applications. As we know medical data includes marginal private information of patients which demands excessive data protection from disclosure to unexpected destinations. In this paper, we performed a Systematic Literature Revie… Show more

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Cited by 27 publications
(3 citation statements)
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“…For instance, explainable AI [84] is an increasingly important topic that enables clinicians to better interpret and explain the predictions made by learning models. Similarly, Federated Learning [85] is another recent advancement in the field of deep learning that allows multiple institutions to collaboratively train models on their respective datasets without sharing sensitive patient data. By being aware of these emerging concepts and technologies, newcomers can broaden their horizons and enhance their understanding of the latest trends and developments in the field of medical diagnostic using deep learning.…”
Section: Discussionmentioning
confidence: 99%
“…For instance, explainable AI [84] is an increasingly important topic that enables clinicians to better interpret and explain the predictions made by learning models. Similarly, Federated Learning [85] is another recent advancement in the field of deep learning that allows multiple institutions to collaboratively train models on their respective datasets without sharing sensitive patient data. By being aware of these emerging concepts and technologies, newcomers can broaden their horizons and enhance their understanding of the latest trends and developments in the field of medical diagnostic using deep learning.…”
Section: Discussionmentioning
confidence: 99%
“…Traditional methods for tumor detection include region‐growing, thresholding, and level set. Machine learning‐based detection methods involve algorithms such as support vector machines (SVMs), AdaBoost classifier [28], and other similar techniques. These methods utilize machine learning algorithms to learn patterns and classify tumors in medical images.…”
Section: Related Workmentioning
confidence: 99%
“…This approach allows for a more comprehensive and diverse set of data from which the model can learn, leading to greater accuracy in predicting and detecting diseases in their early stages. In preliminary health diagnosis, the implementation of federated learning is an effective mechanism to develop predictive models that can predict the likelihood of diseases such as cancer, diabetes, and heart disease [72][73][74]. By thoroughly analyzing data collected from different patients, the model can efficiently identify patterns and risk factors that would be difficult to detect in a single patient.…”
Section: Federated Learning (Fl)mentioning
confidence: 99%