HiCRep: assessing the reproducibility of Hi-C data using a stratum-adjusted correlation coefficient
Pennsylvania State University · University of Washington
Abstract
Hi-C is a powerful technology for studying genome-wide chromatin interactions. However, current methods for assessing Hi-C data reproducibility can produce misleading results because they ignore spatial features in Hi-C data, such as domain structure and distance dependence. We present HiCRep, a framework for assessing the reproducibility of Hi-C data that systematically accounts for these features. In particular, we introduce a novel similarity measure, the stratum adjusted correlation coefficient (SCC), for quantifying the similarity between Hi-C interaction matrices. Not only does it provide a statistically sound and reliable evaluation of reproducibility, SCC can also be used to quantify differences…
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Authors
8Topics & keywords
- Reproducibility
- Similarity (geometry)
- Measure (data warehouse)
- Correlation
- Correlation coefficient
- Pattern recognition (psychology)
- Biology
- Computer science