Multimodal Melanoma Detection with Federated Learning

B. L. Y. Agbley, Jianping Li, A. Haq, E. K. Bankas, Sultan Ahmad, Isaac Osei Agyemang, D. Kulevome, Waldiodio David Ndiaye, Bernard M. Cobbinah, Shoistamo Latipova
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引用次数: 17

Abstract

Melanoma disease analysis is increasingly approached using statistical machine learning techniques, including deep learning. These techniques require large sizes of datasets. However, health institutions are inhibited from sharing their patients' data due to concerns regarding the privacy of subjects. This paper presents a methodology that utilizes Federated Learning (FL) in ensuring the preservation of subjects' privacy during training. We fused two modalities: skin lesion images and their corresponding clinical data. The performance of the global federated model was compared with the results of a Centralized Learning (CL) scenario. The FL model is on-par with the CL model with only 0.39% and 0.73% higher F1-Score and Accuracy performances, respectively, obtained by the CL model. Through extended fine-tuning, the performance difference could be further minimized. Moreover, the FL model was 3.27% more sensitive than the CL model, hence correctly classified more positives than the CL model. Our model also obtained competitive performance when compared with other models from literature. The results indicate the capability of federated learning in effectively learning high predictive models while ensuring no training data is shared among the participating clients.
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基于联邦学习的多模态黑色素瘤检测
黑色素瘤疾病分析越来越多地使用统计机器学习技术,包括深度学习。这些技术需要大量的数据集。然而,由于担心受试者的隐私,卫生机构被禁止分享患者的数据。本文提出了一种利用联邦学习(FL)来保证训练过程中受试者隐私保护的方法。我们融合了两种模式:皮肤病变图像和相应的临床数据。将全局联邦模型的性能与集中式学习(CL)场景的结果进行了比较。FL模型与CL模型相当,但CL模型的F1-Score和准确率分别仅高出0.39%和0.73%。通过扩展的微调,性能差异可以进一步最小化。此外,FL模型比CL模型敏感性高3.27%,因此比CL模型正确分类了更多的阳性结果。与文献中的其他模型相比,我们的模型也具有一定的竞争力。结果表明,联邦学习能够有效地学习高预测模型,同时确保参与的客户端之间不共享训练数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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