Privacy-Preserving Deep Learning Model for Covid-19 Disease Detection

Vijay Srinivas Tida, Sai Venkatesh Chilukoti, Sonya Hsu, X. Hei
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引用次数: 2

Abstract

Recent studies demonstrated that X-ray radiography showed higher accuracy than Polymerase Chain Reaction (PCR) testing for COVID-19 detection. Therefore, applying deep learning models to X-rays and radiography images increases the speed and accuracy of determining COVID-19 cases. However, due to Health Insurance Portability and Accountability (HIPAA) compliance, the hospitals were unwilling to share patient data due to privacy concerns. To maintain privacy, we propose differential private deep learning models to secure the patients' private information. The dataset from the Kaggle website is used to evaluate the designed model for COVID-19 detection. The EfficientNet model version was selected according to its highest test accuracy. The injection of differential privacy constraints into the best-obtained model was made to evaluate performance. The accuracy is noted by varying the trainable layers, privacy loss, and limiting information from each sample. We obtained 84\% accuracy with a privacy loss of 10 during the fine-tuning process.
用于Covid-19疾病检测的隐私保护深度学习模型
最近的研究表明,x射线摄影检测COVID-19的准确性高于聚合酶链反应(PCR)检测。因此,将深度学习模型应用于x射线和x线摄影图像可以提高确定COVID-19病例的速度和准确性。然而,由于符合健康保险可携带性和问责制(HIPAA),由于隐私问题,医院不愿意共享患者数据。为了保护隐私,我们提出了差分隐私深度学习模型来保护患者的隐私信息。来自Kaggle网站的数据集用于评估设计的COVID-19检测模型。effentnet模型版本是根据其最高的测试精度选择的。将差分隐私约束注入到最佳模型中以评估性能。通过改变可训练层、隐私损失和每个样本的限制信息来注意准确性。在微调过程中,我们获得了84%的准确率,隐私损失为10。
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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