Curating, Collecting, and Cataloguing Global COVID-19 Datasets for the Aim of Predicting Personalized Risk

Author:

Khatami Sepehr Golriz12ORCID,Sargsyan Astghik12ORCID,Russo Maria Francesca3,Domingo-Fernández Daniel14ORCID,Zaliani Andrea5ORCID,Kaladharan Abish6,Sethumadhavan Priya6ORCID,Mubeen Sarah124,Gadiya Yojana5ORCID,Karki Reagon5ORCID,Gebel Stephan1,Ruppa Surulinathan Ram Kumar12,Lage-Rupprecht Vanessa1,Archipovas Saulius7,Mingrone Geltrude389,Jacobs Marc1ORCID,Claussen Carsten5ORCID,Hofmann-Apitius Martin12,Kodamullil Alpha Tom1ORCID

Affiliation:

1. Department of Bioinformatics, Fraunhofer Institute for Algorithms and Scientific Computing (SCAI), 53757 Sankt Augustin, Germany

2. Bonn-Aachen International Center for Information Technology (B-IT), University of Bonn, 53113 Bonn, Germany

3. Fondazione Policlinico Universitario Agostino Gemelli IRCCS, 00168 Rome, Italy

4. Fraunhofer Center for Machine Learning, 53757 Sankt Augustin, Germany

5. Fraunhofer Institute for Translational Medicine and Pharmacology (ITMP), 22525 Hamburg, Germany

6. Causality Biomodels, Kinfra Hi-Tech Park, Kalamassery, Cochin 683503, India

7. Fraunhofer Institute for Digital Medicine (MEVIS), 28359 Bremen, Germany

8. Department of Diabetes Research, School of Life Course Sciences, Faculty of Life Sciences & Medicine, King’s College London, London WC2R 2LS, UK

9. Medicina e Chirurgia “A.Gemelli”, Dipartimento di Medicina e Chirurgia Traslazionale, Università Cattolica del Sacro Cuore, 00168 Rome, Italy

Abstract

Although hundreds of datasets have been published since the beginning of the coronavirus pandemic, there is a lack of centralized resources where these datasets are listed and harmonized to facilitate their applicability and uptake by predictive modeling approaches. Firstly, such a centralized resource provides information about data owners to researchers who are searching datasets to develop their predictive models. Secondly, the harmonization of the datasets supports simultaneously taking advantage of several similar datasets. This, in turn, does not only ease the imperative external validation of data-driven models but can also be used for virtual cohort generation, which helps to overcome data sharing impediments. Here, we present that the COVID-19 data catalogue is a repository that provides a landscape view of COVID-19 studies and datasets as a putative source to enable researchers to develop personalized COVID-19 predictive risk models. The COVID-19 data catalogue currently contains over 400 studies and their relevant information collected from a wide range of global sources such as global initiatives, clinical trial repositories, publications, and data repositories. Further, the curated content stored in this data catalogue is complemented by a web application, providing visualizations of these studies, including their references, relevant information such as measured variables, and the geographical locations of where these studies were performed. This resource is one of the first to capture, organize, and store studies, datasets, and metadata related to COVID-19 in a comprehensive repository. We believe that our work will facilitate future research and development of personalized predictive risk models for COVID-19.

Funder

COPERIMOplus

Fraunhofer ‘Internal Programs Fraunhofer vs Corona’

Publisher

MDPI AG

Subject

Information Systems and Management,Computer Science Applications,Information Systems

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