Unlocking biomedical data sharing: A structured approach with digital twins and artificial intelligence (AI) for open health sciences

Author:

Jean-Quartier Claire12ORCID,Stryeck Sarah3,Thien Alexander4,Vrella Burim4,Kleinschuster Jeremias4,Spreitzer Emil5,Wali Mojib1,Mueller Heimo6,Holzinger Andreas278,Jeanquartier Fleur2

Affiliation:

1. Research Data Management, Graz University of Technology, Graz, Austria

2. Institute for Medical Informatics, Statistics and Documentation, Medical University Graz, Austria

3. Research Center Pharmaceutical Engineering GmbH, Graz, Austria

4. Institute of Technical Informatics, Graz University of Technology, Graz, Austria

5. Division of Molecular Biology and Biochemistry, Medical University Graz, Austria

6. Information Science and Machine Learning Group, Diagnostic and Research Center for Molecular Biomedicine, Medical University Graz, Austria

7. Human-Centered AI Lab, Institute of Forest Engineering, University of Natural Resources and Life Sciences, Vienna, Austria

8. Institute of Interactive Systems and Data Science, Graz University of Technology, Graz, Austria

Abstract

Objective Data sharing promotes the scientific progress. However, not all data can be shared freely due to privacy issues. This work is intended to foster FAIR sharing of sensitive data exemplary in the biomedical domain, via an integrated computational approach for utilizing and enriching individual datasets by scientists without coding experience. Methods We present an in silico pipeline for openly sharing controlled materials by generating synthetic data. Additionally, it addresses the issue of inexperience to computational methods in a non-IT-affine domain by making use of a cyberinfrastructure that runs and enables sharing of computational notebooks without the need of local software installation. The use of a digital twin based on cancer datasets serves as exemplary use case for making biomedical data openly available. Quantitative and qualitative validation of model output as well as a study on user experience are conducted. Results The metadata approach describes generalizable descriptors for computational models, and outlines how to profit from existing data resources for validating computational models. The use of a virtual lab book cooperatively developed using a cloud-based data management and analysis system functions as showcase enabling easy interaction between users. Qualitative testing revealed a necessity for comprehensive guidelines furthering acceptance by various users. Conclusion The introduced framework presents an integrated approach for data generation and interpolating incomplete data, promoting Open Science through reproducibility of results and methods. The system can be expanded from the biomedical to any other domain while future studies integrating an enhanced graphical user interface could increase interdisciplinary applicability.

Funder

National Science Foundation

TU Graz

Publisher

SAGE Publications

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