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J Am Med Inform Assoc ; 16(5): 670-82, 2009.
Artigo em Inglês | MEDLINE | ID: mdl-19567795

RESUMO

BACKGROUND: Explicit patient consent requirements in privacy laws can have a negative impact on health research, leading to selection bias and reduced recruitment. Often legislative requirements to obtain consent are waived if the information collected or disclosed is de-identified. OBJECTIVE: The authors developed and empirically evaluated a new globally optimal de-identification algorithm that satisfies the k-anonymity criterion and that is suitable for health datasets. DESIGN: Authors compared OLA (Optimal Lattice Anonymization) empirically to three existing k-anonymity algorithms, Datafly, Samarati, and Incognito, on six public, hospital, and registry datasets for different values of k and suppression limits. Measurement Three information loss metrics were used for the comparison: precision, discernability metric, and non-uniform entropy. Each algorithm's performance speed was also evaluated. RESULTS: The Datafly and Samarati algorithms had higher information loss than OLA and Incognito; OLA was consistently faster than Incognito in finding the globally optimal de-identification solution. CONCLUSIONS: For the de-identification of health datasets, OLA is an improvement on existing k-anonymity algorithms in terms of information loss and performance.


Assuntos
Algoritmos , Confidencialidade , Sistemas Computadorizados de Registros Médicos , Adolescente , Adulto , Feminino , Humanos , Armazenamento e Recuperação da Informação , Masculino
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