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miniMDS: 3D structural inference from high-resolution Hi-C data.

Bioinformatics 2017 July 16
Motivation: Recent experiments have provided Hi-C data at resolution as high as 1 kbp. However, 3D structural inference from high-resolution Hi-C datasets is often computationally unfeasible using existing methods.

Results: We have developed miniMDS, an approximation of multidimensional scaling (MDS) that partitions a Hi-C dataset, performs high-resolution MDS separately on each partition, and then reassembles the partitions using low-resolution MDS. miniMDS is faster, more accurate, and uses less memory than existing methods for inferring the human genome at high resolution (10 kbp).

Availability and implementation: A Python implementation of miniMDS is available on GitHub: https://github.com/seqcode/miniMDS .

Contact: [email protected].

Supplementary information: Supplementary data are available at Bioinformatics online.

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