Replication is essential to reliable and consistent scientific discovery in high-throughput experiments. Quantifying the replicability of scientific discoveries and identifying sources of irreproducibility have become important tasks for quality control and data integration. In this work we introduce a novel statistical model to measure the reproducibility and replicability of findings from replicate experiments in multi-source studies. Using a nested copula mixture model that characterizes the interdependence between replication experiments both across and within sources, our method quantifies reproducibility and replicability of each candidate simultaneously in a coherent framework. Through simulation studies, an ENCODE ChIP-seq dataset and a SEQC RNA-seq dataset, we demonstrate the effectiveness of our method in diagnosing the source of discordance and improving the reliability of scientific discoveries.

A Statistical Framework for Measuring Reproducibility and Replicability of High‐Throughput Experiments From Multiple Sources / Ranalli, M., Lyu, Y., Koch, H., Li, Q.. - In: STATISTICS IN MEDICINE. - ISSN 1097-0258. - (2026). [10.1002/sim.70354]

A Statistical Framework for Measuring Reproducibility and Replicability of High‐Throughput Experiments From Multiple Sources

Monia Ranalli
Co-primo
;
2026

Abstract

Replication is essential to reliable and consistent scientific discovery in high-throughput experiments. Quantifying the replicability of scientific discoveries and identifying sources of irreproducibility have become important tasks for quality control and data integration. In this work we introduce a novel statistical model to measure the reproducibility and replicability of findings from replicate experiments in multi-source studies. Using a nested copula mixture model that characterizes the interdependence between replication experiments both across and within sources, our method quantifies reproducibility and replicability of each candidate simultaneously in a coherent framework. Through simulation studies, an ENCODE ChIP-seq dataset and a SEQC RNA-seq dataset, we demonstrate the effectiveness of our method in diagnosing the source of discordance and improving the reliability of scientific discoveries.
2026
Em algorithm, mixture models, genomics data
01 Pubblicazione su rivista::01a Articolo in rivista
A Statistical Framework for Measuring Reproducibility and Replicability of High‐Throughput Experiments From Multiple Sources / Ranalli, M., Lyu, Y., Koch, H., Li, Q.. - In: STATISTICS IN MEDICINE. - ISSN 1097-0258. - (2026). [10.1002/sim.70354]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1768589
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