Network medicine-based epistasis detection in complex diseases: ready for quantum computing
Author:
Hoffmann Markus, Poschenrieder Julian M.ORCID, Incudini MassimilianoORCID, Baier SylvieORCID, Fitz Amelie, Maier AndreasORCID, Hartung MichaelORCID, Hoffmann ChristianORCID, Trummer NicoORCID, Adamowicz KlaudiaORCID, Picciani Mario, Scheibling Evelyn, Harl Maximilian V.ORCID, Lesch Ingmar, Frey Hunor, Kayser Simon, Wissenberg Paul, Schwartz LeonORCID, Hafner LeonORCID, Acharya Aakriti, Hackl LenaORCID, Grabert GordonORCID, Lee Sung-Gwon, Cho GyuhyeokORCID, Cloward MatthewORCID, Jankowski Jakub, Lee Hye KyungORCID, Tsoy OlgaORCID, Wenke NinaORCID, Pedersen Anders GormORCID, Bønnelykke KlausORCID, Mandarino AntonioORCID, Melograna FedericoORCID, Schulz LauraORCID, Climente-Gonzalez Héctor, Wilhelm MathiasORCID, Iapichino LuigiORCID, Wienbrandt LarsORCID, Ellinghaus David, Van Steen KristelORCID, Grossi MicheleORCID, Furth Priscilla A.ORCID, Hennighausen LotharORCID, Di Pierro AlessandraORCID, Baumbach JanORCID, Kacprowski TimORCID, List MarkusORCID, Blumenthal David B.ORCID
Abstract
AbstractMost heritable diseases are polygenic. To comprehend the underlying genetic architecture, it is crucial to discover the clinically relevant epistatic interactions (EIs) between genomic single nucleotide polymorphisms (SNPs)1–3. Existing statistical computational methods for EI detection are mostly limited to pairs of SNPs due to the combinatorial explosion of higher-order EIs. With NeEDL (network-basedepistasisdetection vialocal search), we leverage network medicine to inform the selection of EIs that are an order of magnitude more statistically significant compared to existing tools and consist, on average, of five SNPs. We further show that this computationally demanding task can be substantially accelerated once quantum computing hardware becomes available. We apply NeEDL to eight different diseases and discover genes (affected by EIs of SNPs) that are partly known to affect the disease, additionally, these results are reproducible across independent cohorts. EIs for these eight diseases can be interactively explored in the Epistasis Disease Atlas (https://epistasis-disease-atlas.com). In summary, NeEDL is the first application that demonstrates the potential of seamlessly integrated quantum computing techniques to accelerate biomedical research. Our network medicine approach detects higher-order EIs with unprecedented statistical and biological evidence, yielding unique insights into polygenic diseases and providing a basis for the development of improved risk scores and combination therapies.
Publisher
Cold Spring Harbor Laboratory
Cited by
1 articles.
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