2014
DOI: 10.2196/medinform.3090
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Designing an Algorithm to Preserve Privacy for Medical Record Linkage With Error-Prone Data

Abstract: BackgroundLinking medical records across different medical service providers is important to the enhancement of health care quality and public health surveillance. In records linkage, protecting the patients’ privacy is a primary requirement. In real-world health care databases, records may well contain errors due to various reasons such as typos. Linking the error-prone data and preserving data privacy at the same time are very difficult. Existing privacy preserving solutions for this problem are only restric… Show more

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Cited by 4 publications
(3 citation statements)
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“…Some of these breaches are simply external malicious attacks, but they are often the result of rent-seeking and illegal behaviors of insiders [ 5 - 7 ]. Verizon’s 2018 Data Breach Investigations Report paints a bleak picture of the health care industry in which errors and misuse of data are widespread [ 8 , 9 ]. Health care is the only vertical industry that has more insiders behind breaches: 58% when compared with external actors at 42%.…”
Section: Introductionmentioning
confidence: 99%
“…Some of these breaches are simply external malicious attacks, but they are often the result of rent-seeking and illegal behaviors of insiders [ 5 - 7 ]. Verizon’s 2018 Data Breach Investigations Report paints a bleak picture of the health care industry in which errors and misuse of data are widespread [ 8 , 9 ]. Health care is the only vertical industry that has more insiders behind breaches: 58% when compared with external actors at 42%.…”
Section: Introductionmentioning
confidence: 99%
“…53,54 Probabilistic data matching goes a long way toward resolving some of these issues by matching up nonchanging data elements such as the patient's date of birth, gender, date of admission, and date of discharge. [55][56][57][58][59] In probabilistic matching as the number of matching data points in two different data sets increase so does the likelihood (probability) that they represent the same patient encounter. For example, just matching on the patient name Charles Smith would be highly inaccurate due to multiple potential matches.…”
Section: Researchmentioning
confidence: 99%
“…Homomorphic encryption mechanism is used to preserve security and privacy of data by using additive or multiplicative properties. In order to check the similarity between two encrypted files, Euclidean distance can be used to measure the distance between them [15].…”
Section: Distributed Cloud Modelmentioning
confidence: 99%