Systematic evaluation of factors influencing ChIP-seq fidelity.
Chen Y, Negre N, Li Q, Mieczkowska JO, Slattery M, Liu T, Zhang Y, Kim TK,
He HH, Zieba J et al.
Nat Methods. 2012 Apr 22; 9:609-14. doi: 10.1038/nmeth.1985; PMID: 22522655
Key platform characterization findings include the finding that ChIP-seq
data were found to be biased to open chromatin regions, which led to false
positives if not corrected. Removal of reads originating at the same base
reduced false positives but had little effect on detection sensitivity. Even
at a coverage depth of ~1 read per base pair, ~1% of the narrow peaks detected
on a tiling array were missed by ChIP-seq, mostly owing to low mappability of
these regions. For broad histone marks such as H3K36me3, the regularly adopted
sequencing depth of 15-20 million reads may be insufficient to identify the vast
majority of enriched regions in humans. There were notable variations in
sensitivity and specificity between the algorithms under evaluation; some
algorithms behaved unexpectedly at high sequencing depths.
Application of NanoString nCounter technology to the Validation of ChIP-Seq datasets in the ENCODE project.
Epstein CB, Goren A, Gymrek M, Ernst J, Shoresh N, Zhang X, Issner R,
Coyne M, Amit I, Regev A et al.
The key platform characterization finding is that there is good
agreement between ChIP detection by NanoString nCounter technology and
high-throughput DNA sequencing. A custom NanoString codeset was devised
that samples many ENCODE chromatin states. For ChIP experiments using 14
different antibodies, there was generally high concordance between the
two detection methods. In addition, there was high concordance between
NanoString assay of ChIP and high-throughput DNA sequencing libraries
prepared from the same ChIP, for the 5 antibodies tested. These results
indicate that high-throughput DNA sequencing maintains a robust
representation of immunoprecipitated material.
Comparison of sequence-specific transcription factor determinations by ChIP-seq and ChIP-qPCR.
Gertz J, Reddy TE, Pauli F, Myers RM.
The key platform characterization finding is that there is good
agreement between ChIP-seq and ChIP-qPCR. For each of 12 transcription
factors, the enrichment of 44 binding sites was measured by qPCR. There
was a high concordance between enrichment results from qPCR and the
density of reads in ChIP-seq binding sites. These results indicate that
high-throughput DNA sequencing maintains a robust representation of
immunoprecipitated material.
Synthetic spike-in standards for RNA-seq experiments.
Jiang L, Schlesinger F, Davis CA, Zhang Y, Li R, Salit M, Gingeras TR, Oliver B.
Genome Res. 2011 Sep;21(9):1543-51. Epub 2011 Aug 4. PMID: 21816910; PMCID: PMC3166838
Key platform characterization finding is that over a wide range, there is a linear
correlation between signal (read density) and RNA concentration (input) in RNA-seq
experiments. Another key finding is excellent agreement between replicates. A pool
of RNA standards (96 different RNAs, various lengths and GC content) spanning a
million fold concentration range was used in this determination. Some bias was found
with respect to GC content and fragment length; these biases were reproducible and
protocol dependent.
ChIP-chip versus ChIP-seq: lessons for experimental design and data analysis.
Ho JW, Bishop E, Karchenko PV, Nègre N, White KP, Park PJ.
BMC Genomics. 2011 Feb 28;12:134. PMID: 21356108; PMCID: PMC3053263
Key platform characterization findings include ChIP-seq data are generally better than
ChIP-chip data with respect to signal-to-noise ratio, number of detected peaks and
resolution. While there is strong agreement between the two platforms, the peaks
identified using these two platforms can be significantly different, depending on the
factor antibody and the analysis pipeline. Identification of binding regions is dependent
on the peak calling pipeline used, and more difficult for factors that are enriched in
broad regions. In addition, input DNA libraries used for ChIP-seq can vary, and high-quality
input samples sequenced with sufficient depth are important for accurate peak calling.
An assessment of histone-modification antibody quality.
Egelhofer TA, Minoda A, Klugman S, Lee K, Kolasinska-Zwierz P, Alekseyenko AA, Cheung MS, Day DS, Gadel S,
Gorchakov AA et al.
Nat Struct Mol Biol. 2011 Jan;18(1):91-3. Epub 2010 Dec 5. PMID: 21131980; PMCID: PMC3017233
Histone modification antibodies were characterized for specificity and
ChIP. More than 25% of the tested antibodies failed specificity tests
by dot blot or western blot. More than 20% of the antibodies that passed
the specificity test failed in ChIP experiments. A website was
developed for posting new results
(http://compbio.med.harvard.edu/antibodies/).
Systematic evaluation of variability in ChIP-chip experiments using predefined DNA targets.
Johnson DS, Li W, Gordon DB, Bhattacharjee A, Curry B, Ghosh J, Brizuela L, Carroll JS, Brown M, Flicek P et al.
Genome Res. 2008 Mar;18(3):393-403. Epub 2008 Feb 7.PMID: 18258921; PMCID: PMC2259103
A number of microarray platforms were tested using a spike-in positive control
approach, and found to provide results that were consistent with each other. Variance
specific to microarray platform was similar or smaller than the variance associated with
laboratory, protocols and analysis pipeline. Sensitivity was good even at relatively low
spike-in levels. Simple repeats and segmental duplication caused false positive errors
in peak detection.