Synthetic datasets for open software development in rare disease research

Author:

Al-Dhamari IbraheemORCID,Abu Attieh Hammam,Prasser Fabian

Abstract

Abstract Background Globally, researchers are working on projects aiming to enhance the availability of data for rare disease research. While data sharing remains critical, developing suitable methods is challenging due to the specific sensitivity and uniqueness of rare disease data. This creates a dilemma, as there is a lack of both methods and necessary data to create appropriate approaches initially. This work contributes to bridging this gap by providing synthetic datasets that can form the foundation for such developments. Methods Using a hierarchical data generation approach parameterised with publicly available statistics, we generated datasets reflecting a random sample of rare disease patients from the United States (US) population. General demographics were obtained from the US Census Bureau, while information on disease prevalence, initial diagnosis, survival rates as well as race and sex ratios were obtained from the information provided by the US Centers for Disease Control and Prevention as well as the scientific literature. The software, which we have named SynthMD, was implemented in Python as open source using libraries such as Faker for generating individual data points. Results We generated three datasets focusing on three specific rare diseases with broad impact on US citizens, as well as differences in affected genders and racial groups: Sickle Cell Disease, Cystic Fibrosis, and Duchenne Muscular Dystrophy. We present the statistics used to generate the datasets and study the statistical properties of output data. The datasets, as well as the code used to generate them, are available as Open Data and Open Source Software. Conclusion The results of our work can serve as a starting point for researchers and developers working on methods and platforms that aim to improve the availability of rare disease data. Potential applications include using the datasets for testing purposes during the implementation of information systems or tailored privacy-enhancing technologies.

Funder

European Joint Programme on Rare Diseases

PrivateAIM

Charité - Universitätsmedizin Berlin

Publisher

Springer Science and Business Media LLC

Reference26 articles.

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3. Wästfelt M, Fadeel B, Henter JI. A journey of hope: lessons learned from studies on rare diseases and orphan drugs. J Intern Med. 2006;260(1):1–10. https://doi.org/10.1111/j.1365-2796.2006.01666.x.

4. Peña-Guerrero J, Nguewa PA, García-Sosa AT. Machine learning, artificial intelligence, and data science breaking into drug design and neglected diseases. WIREs Comput Mol Sci. 2021;11(5):e1513. https://doi.org/10.1002/wcms.1513.

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