We treat the problem of privacy-preserving statistics verification in clinical research. We show that given aggregated results from statistical calculations, we can verify their correctness efficiently, without revealing any of the private inputs used for the calculation. Our construction is based on the primitive of Secure Multi-Party Computation from Shamir's Secret Sharing. Basically, our setting involves three parties: a hospital, which owns the private inputs, a clinical researcher, who lawfully processes the sensitive data to produce an aggregated statistical result, and a third party (usually several verifiers) assigned to verify this result for reliability and transparency reasons. Our solution guarantees that these verifiers only l...
The growth of the Internet opens up tremendous opportunities for cooperative computation, where the ...
Logistic regression (LR) is a widely used classification method for modeling binary outcomes in many...
Abstract. Preserving the privacy of individual databases when carrying out sta-tistical calculations...
Abstract: We treat the problem of privacy-preserving statistics verification in clinical research. W...
The insights gained by the large-scale analysis of health-related data can have an enormous impact i...
ABSTRACT* Statistics measurements are of great importance in data set description. Although there ha...
textabstractWhile there is a clear need to apply data analytics in the healthcare sector, this is of...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2015.Cataloged fro...
Privacy consideration in health data usually prevents researchers and other data users from conduct...
In recent years there has been massive progress in the development of technologies for storing and p...
Large amounts of data are continuously generated by individuals, apps, or dedicated devices. These d...
Collecting data via a questionnaire and analyzing them while preserving respondents’ privacy may inc...
BACKGROUND: The deployment of Genome-wide association studies (GWASs) requires genomic information o...
Anonymization of Electronic Medical Records to Support Clinical Analysis closely examines the privac...
In several domains, privacy presents a significant obstacle to scientific and analytic research, and...
The growth of the Internet opens up tremendous opportunities for cooperative computation, where the ...
Logistic regression (LR) is a widely used classification method for modeling binary outcomes in many...
Abstract. Preserving the privacy of individual databases when carrying out sta-tistical calculations...
Abstract: We treat the problem of privacy-preserving statistics verification in clinical research. W...
The insights gained by the large-scale analysis of health-related data can have an enormous impact i...
ABSTRACT* Statistics measurements are of great importance in data set description. Although there ha...
textabstractWhile there is a clear need to apply data analytics in the healthcare sector, this is of...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2015.Cataloged fro...
Privacy consideration in health data usually prevents researchers and other data users from conduct...
In recent years there has been massive progress in the development of technologies for storing and p...
Large amounts of data are continuously generated by individuals, apps, or dedicated devices. These d...
Collecting data via a questionnaire and analyzing them while preserving respondents’ privacy may inc...
BACKGROUND: The deployment of Genome-wide association studies (GWASs) requires genomic information o...
Anonymization of Electronic Medical Records to Support Clinical Analysis closely examines the privac...
In several domains, privacy presents a significant obstacle to scientific and analytic research, and...
The growth of the Internet opens up tremendous opportunities for cooperative computation, where the ...
Logistic regression (LR) is a widely used classification method for modeling binary outcomes in many...
Abstract. Preserving the privacy of individual databases when carrying out sta-tistical calculations...