ReMM score
Description
The Regulatory Mendelian Mutation (ReMM) score was created for relevance prediction of non-coding variations (SNVs and small InDels) in the human genome (hg19/hg38) in terms of Mendelian diseases.
Usage
The ReMM score is genome position wise (nucleotide changes are neglected). We precomputed all positions in the human genome (hg19 and hg38 release) and stored the values in a tabix file (1-based). The scores ranging from 0 (non-deleterious) to 1 (deleterious).
If you want to use the ReMM score together with the Genomiser, please have a look at the Exomiser framework manual
For more information, direct VCF file scoring, and an API please have a look at our website: https://remm.bihealth.org
ReMM score changelog
0.4:
- Features:
- For missing values using genome mean of feature for sequence and conservaton features. 1 for p-value. All other features have zero as missing value
- Updating DGVCount to 02/25/2020 on hg19/hg38
- Update dbVARCount to 10/20/2021 on hg19/hg38
- Update ISCApath to 11/03/2021 on hg19/hg38
- Replace tfbsConsSites with UCSC table encRegTfbsClustered on hg19/hg38
- Software:
- Using parSMURF for training
- Complete retraining of hg19 and hg38 builds (hg19: AUROC=0.993; AUPRC=0.394; hg38: AUROC=0.996; AUPRC=0.610)
0.3.1.post1:
- New hg38 release. Completely retrained on the new genome build.
- Training data:
- Liftover positives. No change in size.
- Negatives used from CADD v1.4 GRCh38 (human derived), filtered as described in the original paper (https://doi.org/10.1016/j.ajhg.2016.07.005). Size slightly different (hg38: 13,902,234; hg19: 14,755,199) .
- Features
- Same size as in hg19: 26 features.
- We tried to use the same features as in hg19. Sometimes new versions of data have to be used (e.g. DGV, ISCA, dbVAR).
- Training was done with the parSMURF implementation of hyperSMURF.
- Same hg19 parameters are used.
- Metrics via 10-fold cytoband cross-validation (same cytoband to fold map):
- Area under the ROC curve: 0.996 (hg19: 0.989, see https://doi.org/10.1016/j.ajhg.2016.07.005)
- Area under the precision recall curve: 0.548 (hg19: 0.441, see https://doi.org/10.1016/j.ajhg.2016.07.005)
- Training data:
- Scores for hg19 in this release are the same as version 0.3.1. Only the files have been renamed.
0.3.1:
- Bugfix of region chr17:79759050-81195210. Region is missing in older versions.
0.3:
- First official public version.
- Values for positions in training data are computed by cytoband-aware 10 fold cross-validation.
- Other position scores are compted by a generalized model of all training data.
- This version was used in the Genomiser publication (Smeley et.al. A Whole-Genome Analysis Framework for Effective Identification of Pathogenic Regulatory Variants in Mendelian Disease. AHJG. 2016)
Files
Files
(33.0 GB)
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md5:ff7b71bb1711eaa4864c1cfacadb2cbe
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md5:baf5ec990123343ba3ad58014a2b109d
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2.7 MB | Download |
md5:2f8c8fcc75ea29f6798621d0446fe194
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16.0 GB | Download |
md5:c477b123abbe72c4aa66bf3abc18d9ab
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2.8 MB | Download |
Additional details
References
- Damian Smedley, Max Schubach, Julius OB Jacobsen, Sebastian Köhler, Tomasz Zemojtel, Malte Spielmann, Marten Jäger, Harry Hochheiser, Nicole L Washington, Julie A McMurry, Melissa A Haendel, Christopher J Mungall, Suzanna E Lewis, Tudor Groza, Giorgio Valentini, Peter N Robinson. (2016). A Whole-Genome Analysis Framework for Effective Identification of Pathogenic Regulatory Variants in Mendelian Disease. The American Journal of Human Genetics, 99(3), 595–606. http://doi.org/10.1016/j.ajhg.2016.07.005