Enabling Better Medical Image Classification Through Secure Collaboration

Jaideep Vaidya, Bhakti Tulpule
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引用次数: 3

Abstract

Privacy is of growing concern in today's day and age. Protecting the privacy of health data is of paramount importance. With the rapid advancement in imaging technology, analysis of medical images is now one of the most dynamic fields of study today. Image analysis is performed for a variety of purposes, ranging from image enhancement to image segmentation. It can easily be seen that having access to more information makes the analysis results more accurate. For example, supervised classification based image segmentation requires good and plentiful training data. We wish to utilize the training data at different locations to obtain more accurate image segmentation while still protecting the privacy of individual patients. Work in the field of secure multi-party computation (SMC) in cryptography shows how to compute functions securely and quantifies what it means to be secure. Applying SMC protocols in image processing is a challenging problem. This paper looks at how some of this work can be leveraged to perform privacy-preserving image analysis and classification.
通过安全协作实现更好的医学图像分类
在当今这个时代,隐私越来越受到关注。保护健康数据的隐私至关重要。随着影像技术的飞速发展,医学影像分析已成为当今最具活力的研究领域之一。图像分析用于各种目的,从图像增强到图像分割。很容易看出,获得更多的信息使分析结果更加准确。例如,基于监督分类的图像分割需要大量的训练数据。我们希望利用不同位置的训练数据来获得更准确的图像分割,同时仍然保护患者个体的隐私。密码学中安全多方计算(SMC)领域的工作展示了如何安全地计算函数并量化了安全的含义。SMC协议在图像处理中的应用是一个具有挑战性的问题。本文着眼于如何利用这些工作来执行保护隐私的图像分析和分类。
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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