A New Approach to Privacy-Preserving Clinical Decision Support Systems
Thomas Attema, Emiliano Mancini, Gabriele Spini, Mark Abspoel, and Jan de Gier, Serge Fehr, Thijs Veugen, Maran van Heesch and, Dani\"el Worm, Andrea De Luca, Ronald Cramer, Peter M.A. Sloot

TL;DR
This paper introduces a privacy-preserving clinical decision support system that uses secure multiparty computation to analyze patient records, enabling treatment effectiveness assessment without compromising confidentiality.
Contribution
It presents a novel method combining cryptographic techniques with clinical decision support to extract valuable treatment insights while maintaining patient privacy.
Findings
System computes treatment effectiveness in under 24 minutes
Supports analysis of 20,000 patient records
Preserves privacy without burdening clinicians
Abstract
Background: Clinical decision support systems (CDSS) are a category of health information technologies that can assist clinicians to choose optimal treatments. These support systems are based on clinical trials and expert knowledge; however, the amount of data available to these systems is limited. For this reason, CDSSs could be significantly improved by using the knowledge obtained by treating patients. This knowledge is mainly contained in patient records, whose usage is restricted due to privacy and confidentiality constraints. Methods: A treatment effectiveness measure, containing valuable information for treatment prescription, was defined and a method to extract this measure from patient records was developed. This method uses an advanced cryptographic technology, known as secure Multiparty Computation (henceforth referred to as MPC), to preserve the privacy of the patient…
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Taxonomy
TopicsCryptography and Data Security · Electronic Health Records Systems · Privacy-Preserving Technologies in Data
