Generating synthetic genotypes using diffusion models
Kenneweg P, Dandinasivara Rangaram R, Luo X, Hammer B, Schönhuth A (2025)
Bioinformatics 41(Suppl. 1): i484-i492.
Zeitschriftenaufsatz
| Veröffentlicht | Englisch
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Abstract / Bemerkung
In this paper, we introduce the first diffusion model designed to generate complete synthetic human genotypes, which, by standard protocols, one can straightforwardly expand into full-length, DNA-level genomes. The synthetic genotypes mimic real human genotypes without just reproducing known genotypes, in terms of approved metrics. When training biomedically relevant classifiers with synthetic genotypes, accuracy is near-identical to the accuracy achieved when training classifiers with real data. We further demonstrate that augmenting small amounts of real with synthetically generated genotypes drastically improves performance rates. This addresses a significant challenge in translational human genetics: real human genotypes, although emerging in large volumes from genome wide association studies, are sensitive private data, which limits their public availability. Therefore, the integration of additional, insensitive data when striving for rapid sharing of biomedical knowledge of public interest appears imperative.Availability and implementation All non proprietary data and the code to replicate the experiments is available on Github.
Erscheinungsjahr
2025
Zeitschriftentitel
Bioinformatics
Band
41
Ausgabe
Suppl. 1
Seite(n)
i484-i492
ISSN
1367-4803
eISSN
1367-4811
Page URI
https://pub.uni-bielefeld.de/record/3005420
Zitieren
Kenneweg P, Dandinasivara Rangaram R, Luo X, Hammer B, Schönhuth A. Generating synthetic genotypes using diffusion models. Bioinformatics. 2025;41(Suppl. 1):i484-i492.
Kenneweg, P., Dandinasivara Rangaram, R., Luo, X., Hammer, B., & Schönhuth, A. (2025). Generating synthetic genotypes using diffusion models. Bioinformatics, 41(Suppl. 1), i484-i492. https://doi.org/10.1093/bioinformatics/btaf209
Kenneweg, Philip, Dandinasivara Rangaram, Raghuram, Luo, Xiao, Hammer, Barbara, and Schönhuth, Alexander. 2025. “Generating synthetic genotypes using diffusion models”. Bioinformatics 41 (Suppl. 1): i484-i492.
Kenneweg, P., Dandinasivara Rangaram, R., Luo, X., Hammer, B., and Schönhuth, A. (2025). Generating synthetic genotypes using diffusion models. Bioinformatics 41, i484-i492.
Kenneweg, P., et al., 2025. Generating synthetic genotypes using diffusion models. Bioinformatics, 41(Suppl. 1), p i484-i492.
P. Kenneweg, et al., “Generating synthetic genotypes using diffusion models”, Bioinformatics, vol. 41, 2025, pp. i484-i492.
Kenneweg, P., Dandinasivara Rangaram, R., Luo, X., Hammer, B., Schönhuth, A.: Generating synthetic genotypes using diffusion models. Bioinformatics. 41, i484-i492 (2025).
Kenneweg, Philip, Dandinasivara Rangaram, Raghuram, Luo, Xiao, Hammer, Barbara, and Schönhuth, Alexander. “Generating synthetic genotypes using diffusion models”. Bioinformatics 41.Suppl. 1 (2025): i484-i492.
Daten bereitgestellt von European Bioinformatics Institute (EBI)
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Daten bereitgestellt von Europe PubMed Central.
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