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C-A1-01: Using Data Transformations Derived Values and Cryptographic Functions to Protect PHI in the VDW

机译:C-A1-01:使用数据转换派生值和密码功能保护VDW中的PHI

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摘要

Background and AimsHIPAA policies define values derived from PHI as also being PHI. Consequently, applying algorithmic functions to PHI has been viewed as having little benefit to research data. However, short of full de-identification, the use of transformed PHI may reduce compliance risk and increase security of routine data handling. Our aim is to: class="enumerated" style="list-style-type:decimal">present a general framework for evaluating methods of de-identifying/protecting PHI, andevaluate how well selected mathematical functions, including common cryptographic functions, can enhance protection of PHI in the HMORN Virtual Data Warehouse (VDW).MethodsThe methods used include a review of technical literature/material, from both within and outside traditional research disciplines, followed by analysis and application of findings to the issues addressed here, including: class="enumerated" style="list-style-type:decimal">reviewing both the regulatory and practical context for protecting PHI in research data;developing a set of criteria to evaluate the benefits and costs of methods for PHI protection/de-identification;reviewing the basic uses of general cryptography;comparing/contrasting the needs of general cryptography with those of PHI protection in research data;evaluating selected methods of protecting PHI against the proposed criteria.ResultsThe proposed framework for evaluating PHI protection methods includes five criteria: class="enumerated" style="list-style-type:decimal">effect on usefulness of data;effect on ease of use or analytical efficiency;net impact on data security;system implementation costs;negative effect on data quality.There are several methods for protecting PHI that can be easily implemented in the VDW, including: class="enumerated" style="list-style-type:decimal"> id="__p17">the creation of linking variables that eliminate the need to routinely query PHI variables, such as service dates; id="__p18">the MD5 cryptographic hash function, which can be used to obscure any PHI data and is relatively easy to implement in SAS, the standard analysis software platform used in the HMORN.Conclusions id="__p19" class="p p-first-last">Stewards of research data, like the VDW, should adopt the use mathematical functions, including cryptographic hash functions, to transform PHI into derived values. Such methods do not replace the need for full de-identification, but can enhance security and reduce compliance risk during routine data handling.
机译:背景和目标HIPAA策略将源自PHI的值定义为PHI。因此,将算法功能应用于PHI被认为对研究数据几乎没有好处。但是,如果没有完全取消标识,则使用转换后的PHI可能会降低合规风险并提高常规数据处理的安全性。我们的目标是: class =“ enumerated” style =“ list-style-type:decimal”> <!-list-behavior =枚举前缀-word = mark-type = decimal max-label-size = 0- -> 提出了一个用于评估去标识/保护PHI的方法的通用框架,并且 评估了选择好的数学函数(包括常用的密码函数)可以如何在HMORN虚拟数据中增强对PHI的保护仓库(VDW)。 方法所使用的方法包括对传统研究学科内部和外部的技术文献/材料进行回顾,然后对发现的问题进行分析和应用,包括: ol class =“ enumerated” style =“ list-style-type:decimal”> <!-list-behavior =枚举前缀word = mark-type = decimal max-label-size = 0-> 正在查看研究数据中保护PHI的法规和实践环境; 制定一套标准以评估PHI保护/取消身份识别方法的收益和成本n; 回顾通用密码术的基本用法; 比较/比较研究数据中通用密码术和PHI保护的需求; 评估所选对象结果提议的用于评估PHI保护方法的框架包括五个标准: class =“ enumerated” style =“ list-style-type:decimal”> <! -list-behavior =枚举前缀-word = mark-type =十进制max-label-size = 0-> 对数据有用性的影响; 对易用性或分析效率的影响; 对数据安全性的净影响; 系统的实施成本; 对数据质量的负面影响。 有几种方法用于保护可以在VDW中轻松实现的PHI,包括: class =“ enumerated” style =“ list-style-type:decimal”> <!-list-behavior = enumerated前缀字=mark-type =十进制最大标签大小= 0-> id =“ __ p17”>创建链接变量,从而无需常规查询PHI变量,例如服务日期; id =“ __p18“> MD5加密哈希函数,可用于掩盖任何PHI数据,并且相对容易在SAS(HMORN中使用的标准分析软件平台)中实现。 像VDW一样,研究数据的管理者应采用包括加密哈希函数在内的数学功能,将PHI转换为派生值。这样的方法并不能代替完全取消识别的需求,但是可以提高安全性并减少常规数据处理过程中的合规风险。

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