Abstract

BackgroundFederated learning is a decentralized approach to machine learning; it is a training strategy that overcomes medical data privacy regulations and generalizes deep learning algorithms. Federated learning mitigates many systemic privacy risks by sharing only the model and parameters for training, without the need to export existing medical data sets. In this study, we performed ultrasound image analysis using federated learning to predict whether thyroid nodules were benign or malignant.ObjectiveThe goal of this study was to evaluate whether the performance of federated learning was comparable with that of conventional deep learning.MethodsA total of 8457 (5375 malignant, 3082 benign) ultrasound images were collected from 6 institutions and used for federated learning and conventional deep learning. Five deep learning networks (VGG19, ResNet50, ResNext50, SE-ResNet50, and SE-ResNext50) were used. Using stratified random sampling, we selected 20% (1075 malignant, 616 benign) of the total images for internal validation. For external validation, we used 100 ultrasound images (50 malignant, 50 benign) from another institution.ResultsFor internal validation, the area under the receiver operating characteristic (AUROC) curve for federated learning was between 78.88% and 87.56%, and the AUROC for conventional deep learning was between 82.61% and 91.57%. For external validation, the AUROC for federated learning was between 75.20% and 86.72%, and the AUROC curve for conventional deep learning was between 73.04% and 91.04%.ConclusionsWe demonstrated that the performance of federated learning using decentralized data was comparable to that of conventional deep learning using pooled data. Federated learning might be potentially useful for analyzing medical images while protecting patients’ personal information.

Highlights

  • Deep neural networks for image classification, object detection, and semantic segmentation have been proven to be high performance, surpassing human-level performance in some fields [1]

  • For internal validation, the area under the receiver operating characteristic (AUROC) curve for federated learning was between 78.88% and 87.56%, and the AUROC for conventional deep learning was between 82.61% and 91.57%

  • The AUROC for federated learning was between 75.20% and 86.72%, and the AUROC curve for conventional deep learning was between 73.04% and 91.04%

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Summary

Introduction

Deep neural networks for image classification, object detection, and semantic segmentation have been proven to be high performance, surpassing human-level performance in some fields [1]. The ability for deep learning using medical images to surpass human-level performance is dependent on the volume and quality of data [2,3]. Heterogeneity of data between contributing institutes is another issue that can negatively influence the performance of a deep learning network. Distribution of data varies considerably between institutions in terms of disease entities, as does the volume, location, and characteristics of medical images; this influences the performance of deep learning networks. Federated learning is a decentralized approach to machine learning; it is a training strategy that overcomes medical data privacy regulations and generalizes deep learning algorithms. We performed ultrasound image analysis using federated learning to predict whether thyroid nodules were benign or malignant

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