Difference between revisions of "Useful Links"

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== NGS data analysis Protocols, Methods & Tools ==
 
== NGS data analysis Protocols, Methods & Tools ==
  
 
==== General ====
 
==== General ====
 +
* [https://www.illumina.com/content/dam/illumina-marketing/documents/applications/ngs-library-prep/ForAllYouSeqMethods.pdf Illumina poster of NGS methods, 2015]
 
* [http://www.nature.com/nrg/journal/v18/n8/full/nrg.2017.44.html Reference standards for next-generation sequencing, Nature Review Genetics, 2017]
 
* [http://www.nature.com/nrg/journal/v18/n8/full/nrg.2017.44.html Reference standards for next-generation sequencing, Nature Review Genetics, 2017]
 
* [http://www.oxfordjournals.org/our_journals/bioinformatics/nextgenerationsequencing.html Bioinformatics for Next Generation Sequencing virtual (constantly updated) issue of ''Bioinformatics''].
 
* [http://www.oxfordjournals.org/our_journals/bioinformatics/nextgenerationsequencing.html Bioinformatics for Next Generation Sequencing virtual (constantly updated) issue of ''Bioinformatics''].
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** In the comments on f1000 site it was noted that it is incorrect to use correlation as a measure of association between the logged gene expression levels of different tissues; proportionality is suggested: Lovell, D., Pawlowsky-Glahn, V., Egozcue, J. J., Marguerat, S., & Bähler, J. (2015). Proportionality: A Valid Alternative to Correlation for Relative Data. PLoS Comput Biol, 11(3), e1004075. http://doi.org/10.1371/journal.pcbi.1004075
 
** In the comments on f1000 site it was noted that it is incorrect to use correlation as a measure of association between the logged gene expression levels of different tissues; proportionality is suggested: Lovell, D., Pawlowsky-Glahn, V., Egozcue, J. J., Marguerat, S., & Bähler, J. (2015). Proportionality: A Valid Alternative to Correlation for Relative Data. PLoS Comput Biol, 11(3), e1004075. http://doi.org/10.1371/journal.pcbi.1004075
 
** Previously reported similar case http://simplystatistics.org/2015/05/20/is-it-species-or-is-it-batch-they-are-confounded-so-we-cant-know/
 
** Previously reported similar case http://simplystatistics.org/2015/05/20/is-it-species-or-is-it-batch-they-are-confounded-so-we-cant-know/
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==== Single cell RNA-seq ====
 
==== Single cell RNA-seq ====
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==== ChIP-seq ====
 
==== ChIP-seq ====
 
* [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3431496/ ChIP-seq guidelines and practices of the ENCODE and modENCODE consortia. Genome Res, 2012.]
 
* [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3431496/ ChIP-seq guidelines and practices of the ENCODE and modENCODE consortia. Genome Res, 2012.]
 +
* [https://deeptools.readthedocs.io/en/develop/content/list_of_tools.html deepTools, including plotFingerprint] that addresses the question "Did my ChIP-seq work?" by sampling indexed BAM files and plotting a profile of cumulative read coverages for each file.
 
* [https://academic.oup.com/bib/article-lookup/doi/10.1093/bib/bbw035 Features that define the best ChIP-seq peak calling algorithms.] ''Briefings in Bioinformatics'', 2016. - Benchmarking of peak-calling algorithms.
 
* [https://academic.oup.com/bib/article-lookup/doi/10.1093/bib/bbw035 Features that define the best ChIP-seq peak calling algorithms.] ''Briefings in Bioinformatics'', 2016. - Benchmarking of peak-calling algorithms.
 
* [http://journals.plos.org/ploscompbiol/article?id=10.1371/journal.pcbi.1003326 Practical Guidelines for the Comprehensive Analysis of ChIP-seq Data. ''PLOS Comp Biol'', 2013]:
 
* [http://journals.plos.org/ploscompbiol/article?id=10.1371/journal.pcbi.1003326 Practical Guidelines for the Comprehensive Analysis of ChIP-seq Data. ''PLOS Comp Biol'', 2013]:
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** [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5142015/figure/bbv110-F7/ Decision tree indicating the proper choice of tool depending on the data set]
 
** [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5142015/figure/bbv110-F7/ Decision tree indicating the proper choice of tool depending on the data set]
  
 +
* [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5416852/ HMCan-diff - the method for analysis of ChIP-seq data to detect changes in histone modifications between two cancer samples of different genetic backgrounds, or between a cancer sample and a normal control. NAR 2017.]
 +
* [https://www.ncbi.nlm.nih.gov/pubmed/24021381 HMCan - a method for analysis of ChIP-seq and ATAC-seq data of cancer samples. Bioinformatics, 2013.] HMCan corrects for the GC-content and copy number bias and then applies Hidden Markov Models to detect the signal from the corrected data.
  
==== Assembly ====
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==== ChIRP-seq ====
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* [https://en.wikipedia.org/wiki/ChiRP-Seq ChiRP-Seq Wikipedia]
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* [https://www.nature.com/articles/nature12210 Functional roles of enhancer RNAs for oestrogen-dependent transcriptional activation. Nature. 2013]
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==== Genome/Transcriptome Assembly ====
 
* [http://www.nesc.ac.uk/talks/1104/OPTIMALITY%20CRITERIA%20for%20Transcriptome%20de%20novo%20Assembly2.pdf Optimality Criteria for ''de novo'' Transcriptome Assembly, 2010].
 
* [http://www.nesc.ac.uk/talks/1104/OPTIMALITY%20CRITERIA%20for%20Transcriptome%20de%20novo%20Assembly2.pdf Optimality Criteria for ''de novo'' Transcriptome Assembly, 2010].
 
* [http://onlinelibrary.wiley.com/doi/10.1111/eva.12178/full A field guide to whole-genome sequencing, assembly and annotation, 2014]
 
* [http://onlinelibrary.wiley.com/doi/10.1111/eva.12178/full A field guide to whole-genome sequencing, assembly and annotation, 2014]
 
* [http://www.nature.com/nmeth/journal/v9/n4/full/nmeth.1935.html De novo genome assembly: what every biologist should know. Nature Methods, 2012.]
 
* [http://www.nature.com/nmeth/journal/v9/n4/full/nmeth.1935.html De novo genome assembly: what every biologist should know. Nature Methods, 2012.]
 
+
* [https://github.com/Kingsford-Group/scallop Scallop - a reference-based transcript assembler that improves reconstruction of multi-exon and lowly expressed transcripts. Nature Biotech, 2018]. A parameter advisor for Scallop is [https://github.com/Kingsford-Group/scallopadvising available on Github]; it allows to automatically choose input-specific parameter values for reference-based transcript assembly.
  
 
==== Gene Set Enrichment Analysis (GSEA) and other post-processing analysis ====
 
==== Gene Set Enrichment Analysis (GSEA) and other post-processing analysis ====
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** The authors implemented an algorithm that uses the electric current signal to compute an improved consensus sequence for the assembly. That allowed the base-level accuracy improved to 99.5%, comprising 1,202 mismatches (26 per 100 kb) and 17,241 indels of ≥1 base (371 errors per 100 kb). The signal-level consensus software, Nanopolish, is available at https://github.com/jts/nanopolish/.  
 
** The authors implemented an algorithm that uses the electric current signal to compute an improved consensus sequence for the assembly. That allowed the base-level accuracy improved to 99.5%, comprising 1,202 mismatches (26 per 100 kb) and 17,241 indels of ≥1 base (371 errors per 100 kb). The signal-level consensus software, Nanopolish, is available at https://github.com/jts/nanopolish/.  
 
** The complete pipeline used to generate the assembly, including downloading the input data and required software, is provided as a Makefile on GitHub at https://github.com/jts/nanopore-paper-analysis/blob/master/full-pipeline.make. Additional scripts used to analyze the assembly are provided in the same repository. An IPython notebook documenting the analysis workflow is also provided.
 
** The complete pipeline used to generate the assembly, including downloading the input data and required software, is provided as a Makefile on GitHub at https://github.com/jts/nanopore-paper-analysis/blob/master/full-pipeline.make. Additional scripts used to analyze the assembly are provided in the same repository. An IPython notebook documenting the analysis workflow is also provided.
 
  
 
== Biology ==
 
== Biology ==
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== Statistics ==
 
== Statistics ==
  
==== Online Resources & Courses ====
 
 
* Nature Web-collection "Statistics for Biologists": http://www.nature.com/collections/qghhqm
 
* Nature Web-collection "Statistics for Biologists": http://www.nature.com/collections/qghhqm
 +
* 100 Statistical Tests.pdf - ResearchGate - just search Google to get a link
 +
* http://students.brown.edu/seeing-theory/ The Seeing Theory website visualizes the fundamental concepts covered in an introductory college statistics, using D3.jc.
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 +
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==== Experimental Design ====
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* [https://rawgit.com/bioinformatics-core-shared-training/experimental-design/master/ExperimentalDesignManual.pdf Experimental design manual from U. of Cambridge, 2014]
 
* [https://eda.nc3rs.org.uk/experimental-design Guide and tool for design and analysis of biological experiments from the UK's National Center for the Replacement Refinement and Reduction of Animals in Research (NC3R)], covering topics of control for cofounding variables, sample size, effect size, a standardised effect size, power of statistical tests, multiple testing.
 
* [https://eda.nc3rs.org.uk/experimental-design Guide and tool for design and analysis of biological experiments from the UK's National Center for the Replacement Refinement and Reduction of Animals in Research (NC3R)], covering topics of control for cofounding variables, sample size, effect size, a standardised effect size, power of statistical tests, multiple testing.
 
* [http://www.sample-size.net/ Sample/effect size online calculators for designing biomedical experiments from UC San Francisco]
 
* [http://www.sample-size.net/ Sample/effect size online calculators for designing biomedical experiments from UC San Francisco]
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 +
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==== Statistical Rituals & Statistical Power ====
 +
* [https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5367316/ Low statistical power in biomedical science: a review of three human research domains. R Soc Open Sci. 2017]
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* [http://muscle.ucsd.edu/More_HTML/papers/pdf/Lieber_JOR_1990.pdf Statistical Significance and Statistical Power in Hypothesis Testing by R. Lieber, 1990]
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* [https://www.statisticsdonewrong.com/power.html Statistical power and underpowered statistics by Alex Reinhart]
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* [https://emj.bmj.com/content/20/5/453 An introduction to power and sample size estimation. Emergency Medicine Journal, 2004]
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* [http://library.mpib-berlin.mpg.de/ft/gg/GG_Mindless_2004.pdf Mindless statistics by G. Gigerenzer. Journal of Socio-Economics, 2004]
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==== Online Resources & Courses ====
 
* Self-paced online UC Berkeley courses  
 
* Self-paced online UC Berkeley courses  
 
** https://www.edx.org/course/introduction-statistics-descriptive-uc-berkeleyx-stat2-1x
 
** https://www.edx.org/course/introduction-statistics-descriptive-uc-berkeleyx-stat2-1x
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* [https://www.edx.org/course/biostatistics-big-data-applications-utmbx-stat101x Self-paced online course "Biostatistics for Big Data Applications" from EdX.org]
 
* [https://www.edx.org/course/biostatistics-big-data-applications-utmbx-stat101x Self-paced online course "Biostatistics for Big Data Applications" from EdX.org]
 
* "An Introduction to Statistical Learning with Applications in R" from Stanford http://www-bcf.usc.edu/~gareth/ISL/
 
* "An Introduction to Statistical Learning with Applications in R" from Stanford http://www-bcf.usc.edu/~gareth/ISL/
* 100 Statistical Tests.pdf - ResearchGate - just search Google to get a link
 
* http://students.brown.edu/seeing-theory/ The Seeing Theory website visualizes the fundamental concepts covered in an introductory college statistics, using D3.jc.
 
  
 
==== Comparison of two samples ====
 
==== Comparison of two samples ====
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== Linux ==
 
== Linux ==
 
* [https://github.com/crazyhottommy/scripts-general-use/blob/master/Shell/bioinformatics_one_liner.md One liners for Bioinformatics]
 
* [https://github.com/crazyhottommy/scripts-general-use/blob/master/Shell/bioinformatics_one_liner.md One liners for Bioinformatics]
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* [http://www.grymoire.com/Unix/Awk.html Awk and other Linux stuff by Bruce Barnett]
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* [https://www.tutorialspoint.com/awk/index.htm Awk Tutorial from Tutorialspoint]
  
 
== Online Courses & Materials ==
 
== Online Courses & Materials ==
 
* Ten rules for online learning: http://journals.plos.org/ploscompbiol/article?id=10.1371/journal.pcbi.1002631
 
* Ten rules for online learning: http://journals.plos.org/ploscompbiol/article?id=10.1371/journal.pcbi.1002631
  
 +
* [https://cran.r-project.org/doc/manuals/r-release/R-intro.pdf - "Official" R introduction]
  
 
* [https://www.coursera.org Coursera - Thousands of online courses and certified specializations]
 
* [https://www.coursera.org Coursera - Thousands of online courses and certified specializations]
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* [https://software-carpentry.org/lessons/ Online lessons from Software Carpentry]
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* [https://pythonforbiologists.com/ Python for Biologists]
 
* [http://work.caltech.edu/telecourse.html Learning from Data - self-paced course  from CalTech, USA]
 
* [http://work.caltech.edu/telecourse.html Learning from Data - self-paced course  from CalTech, USA]
 
* [http://huttenhower.sph.harvard.edu/moodle/ Huttenhower Lab (Harvard) Courses]  
 
* [http://huttenhower.sph.harvard.edu/moodle/ Huttenhower Lab (Harvard) Courses]  
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* http://evomics.org/
 
* http://evomics.org/
 
* http://www.sib.swiss/training/upcoming-training-events
 
* http://www.sib.swiss/training/upcoming-training-events
 +
* https://bio-it.embl.de/course-materials/
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 +
== Communities & Blogs ==
 +
* http://bioinfo-core.org
  
== Blogs ==
 
 
* https://liorpachter.wordpress.com - blog of Lior Pachter, the developer of Cufflinks, TopHat, eXpresso, callisto and other algorithms.
 
* https://liorpachter.wordpress.com - blog of Lior Pachter, the developer of Cufflinks, TopHat, eXpresso, callisto and other algorithms.
 
** Post on kallisto https://liorpachter.wordpress.com/2015/05/10/near-optimal-rna-seq-quantification-with-kallisto/
 
** Post on kallisto https://liorpachter.wordpress.com/2015/05/10/near-optimal-rna-seq-quantification-with-kallisto/

Latest revision as of 11:11, 27 February 2023

NGS data analysis Protocols, Methods & Tools

General


QC


RNA-seq

How many replicates?
Approaches and benchmarks


Single cell RNA-seq


ChIP-seq

  • ChIP-seq guidelines and practices of the ENCODE and modENCODE consortia. Genome Res, 2012.
  • deepTools, including plotFingerprint that addresses the question "Did my ChIP-seq work?" by sampling indexed BAM files and plotting a profile of cumulative read coverages for each file.
  • Features that define the best ChIP-seq peak calling algorithms. Briefings in Bioinformatics, 2016. - Benchmarking of peak-calling algorithms.
  • Practical Guidelines for the Comprehensive Analysis of ChIP-seq Data. PLOS Comp Biol, 2013:
    • "For mammalian transcription factors (TFs) and chromatin modifications such as enhancer-associated histone marks, which are typically localized at specific, narrow sites and have on the order of thousands of binding sites, 20 million reads may be adequate (4 million reads for worm and fly TFs)."
    • "Proteins with more binding sites (e.g., RNA Pol II) or broader factors, including most histone marks, will require more reads, up to 60 million for mammalian ChIP-seq."
    • "Importantly, control samples should be sequenced significantly deeper than the ChIP ones in a TF experiment and in experiments involving diffused broad-domain chromatin data. This is to ensure sufficient coverage of a substantial portion of the genome and non-repetitive autosomal DNA regions."
    • "To ensure that the chosen sequencing depth was adequate, a saturation analysis is recommended—the peaks called should be consistent when the next two steps (read mapping and peak calling) are performed on increasing numbers of reads chosen at random from the actual reads. Saturation analysis is built into some peak callers (e.g., SPP, an R package for analysis of ChIP-seq and other functional sequencing data ). If this shows that the number of reads is not adequate, reads from technical replicate experiments can be combined."
    • "To avoid over-sequencing and estimate an optimal sequencing depth, it is important to take into account library complexity." Several tools are available for this purpose: the Preseq package allows users to predict the number of redundant reads from a given sequencing depth and how many will be expected from additional sequencing."

ChIRP-seq

Genome/Transcriptome Assembly

Gene Set Enrichment Analysis (GSEA) and other post-processing analysis


NGS other

  • Nanopore (MinION) de novo bacterial genome sequencing [1]
    • "Many bacterial genomes can be assembled into single contigs if reads longer than 7 kb are available, as these reads span the conserved rRNA operon, which is typically the longest repeat sequence in a bacterial genome.
    • Recent versions of nanopore chemistry (R7.3) coupled with the latest base caller (Metrichor versions 1.9 and later) permit read-level accuracies of 78–85% (refs. 1,8). Although this is slightly lower than accuracies achieved by the latest version of Pacific Biosciences chemistry."
    • Two-dimentional reads from four separate MinION runs using R7.3 chemistry were combined. In total, 22,270 2D reads were used comprising 133.6 Mb of read data, representing ~29× theoretical coverage of the 4.6-Mb E. coli K-12 MG1655 reference genome.
    • Potential overlaps between the reads were detected using the DALIGNER software. Each read and its overlapped reads were used as input to the partial-order alignment (POA) software, which iteratively computes the consensus sequence. The read error-correction software, Nanocorrect, is available at https://github.com/jts/nanocorrect/.
    • The reads resulting from two rounds of correction were used as input to version 8.2 of the Celera Assembler. This resulted in a highly contiguous assembly with three contigs, the largest being 4.6 Mb long and covering the entire E. coli chromosome.
    • The authors implemented an algorithm that uses the electric current signal to compute an improved consensus sequence for the assembly. That allowed the base-level accuracy improved to 99.5%, comprising 1,202 mismatches (26 per 100 kb) and 17,241 indels of ≥1 base (371 errors per 100 kb). The signal-level consensus software, Nanopolish, is available at https://github.com/jts/nanopolish/.
    • The complete pipeline used to generate the assembly, including downloading the input data and required software, is provided as a Makefile on GitHub at https://github.com/jts/nanopore-paper-analysis/blob/master/full-pipeline.make. Additional scripts used to analyze the assembly are provided in the same repository. An IPython notebook documenting the analysis workflow is also provided.

Biology


Data Science

Statistics


Experimental Design


Statistical Rituals & Statistical Power


Online Resources & Courses

Comparison of two samples

  • The t-test, paired or unpaired, in R >t.test (x,y, paired=TRUE). The t-test provides an exact test for the equality of the means of two normal populations with unknown, but equal, variances. The latter can be checked with F-test, or in R >var.test(x,y). https://en.wikipedia.org/wiki/Student's_t-test#Paired_samples

Comparison of two microbiome samples

Other topics


Linux

Online Courses & Materials





Bioinformatics training providers

Communities & Blogs

Bioinformatics Core Facility @ CRG — 2011-2024