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Privacy and Security Issues in Cerebrovascular Diseases Data Research
1
Zitationen
3
Autoren
2011
Jahr
Abstract
The cerebrovascular diseases research are based on real patient's data received from a collaborating centre. The goal of research is to take advantage of heterogeneous medical data relationships. Medical data relationships leads to get more data mining facilities in studying of dependencies and crucial values of parameters in a huge volume of real imaging examinations with clinical and therapeutic data. There are lot of difficulties and security issues when providing research on medical data. All real patient's identifiers must be removed for privacy reasons. A research team does not necessity know the patient identity information. We keep limited characteristics only and can be accessible to patient's medical doctors. These characteristics are useful to provide us analysis and statistics results. The aggregated results are publicly available.
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