An Extensive Study and Review of Privacy Preservation Models for the Multi-Institutional Data

Sagarkumar Patel, Rachna Patel, Ashok Akbari, Srinivasa Reddy Mukkala
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Abstract

The deep learning models hold considerable potential for clinical applications, but there are many challenges to successfully training deep learning models. Large-scale data collection is required, which is frequently only possible through multi-institutional cooperation. Building large central repositories is one strategy for multi-institution studies. However, this is hampered by issues regarding data sharing, including patient privacy, data de-identification, regulation, intellectual property, and data storage. These difficulties have lessened the impracticality of central data storage. In this survey, we will look at 24 research publications that concentrate on machine learning approaches linked to privacy preservation techniques for multi-institutional data, highlighting the multiple shortcomings of the existing methodologies. Researching different approaches will be made simpler in this case based on a number of factors, such as performance measures, year of publication and journals, achievements of the strategies in numerical assessments, and other factors. A technique analysis that considers the benefits and drawbacks of the strategies is additionally provided. The article also looks at some potential areas for future research as well as the challenges associated with increasing the accuracy of privacy protection techniques. The comparative evaluation of the approaches offers a thorough justification for the research’s purpose.
多机构数据隐私保护模型的广泛研究与回顾
深度学习模型在临床应用中具有相当大的潜力,但要成功训练深度学习模型存在许多挑战。需要大规模的数据收集,而这往往只有通过多机构合作才能实现。构建大型中央存储库是多机构研究的一种策略。然而,这受到数据共享问题的阻碍,包括患者隐私、数据去识别、监管、知识产权和数据存储。这些困难减少了中央数据存储的不可行性。在本调查中,我们将研究24篇研究出版物,这些出版物专注于与多机构数据隐私保护技术相关的机器学习方法,突出了现有方法的多个缺点。在这种情况下,根据一些因素,如业绩衡量、出版年份和期刊、战略在数字评估方面的成就以及其他因素,研究不同的方法将变得更简单。另外还提供了考虑这些策略的优点和缺点的技术分析。本文还探讨了未来研究的一些潜在领域,以及与提高隐私保护技术准确性相关的挑战。对这些方法的比较评价为研究目的提供了充分的理由。
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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