Building an Artificial Intelligence Laboratory Based on Real World Data: The Experience of Gemelli Generator

Damiani, A. and Masciocchi, C. and Lenkowicz, J. and Capocchiano, N. D. and Boldrini, L. and Tagliaferri, L. and Cesario, A. and Sergi, P. and Marchetti, A. and Luraschi, A. and Patarnello, S. and Valentini, V. (2021) Building an Artificial Intelligence Laboratory Based on Real World Data: The Experience of Gemelli Generator. Frontiers in Computer Science, 3. ISSN 2624-9898

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Abstract

The problem of transforming Real World Data into Real World Evidence is becoming increasingly important in the frameworks of Digital Health and Personalized Medicine, especially with the availability of modern algorithms of Artificial Intelligence high computing power, and large storage facilities.Even where Real World Data are well maintained in a hospital data warehouse and are made available for research purposes, many aspects need to be addressed to build an effective architecture enabling researchers to extract knowledge from data.We describe the first year of activity at Gemelli Generator RWD, the challenges we faced and the solutions we put in place to build a Real World Data laboratory at the service of patients and health researchers. Three classes of services are available today: retrospective analysis of existing patient data for descriptive and clustering purposes; automation of knowledge extraction, ranging from text mining, patient selection for trials, to generation of new research hypotheses; and finally the creation of Decision Support Systems, with the integration of data from the hospital data warehouse, apps, and Internet of Things.

Item Type: Article
Subjects: Institute Archives > Computer Science
Depositing User: Managing Editor
Date Deposited: 07 Apr 2023 04:56
Last Modified: 26 Dec 2023 04:29
URI: http://eprint.subtopublish.com/id/eprint/983

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