L. Lianas, F. Frexia, G. Delussu, Paolo Anedda, G. Zanetti
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pyEHR: A scalable clinical data management toolkit for biomedical research projects
In this work we describe pyEHR, a new toolkit for building scalable clinical/phenotypic data management systems for biomedical research applications. The toolkit uses openEHR formalisms to guarantee the decoupling of clinical data descriptions from implementation details, and NoSQL technologies, or next-generation SQL ones, to provide scalable storage back-ends.