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hepatocellular_carcinoma [2019/10/07 15:45] – [Objectives] adminhepatocellular_carcinoma [2020/03/03 20:39] – [Related work] admin
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 ===== Data ===== ===== Data =====
  
-  - RNAseq from liver of 9 treated and 4 control samples ([[christis_data|Christi's data]]).+  - RNAseq from liver of 9 treated and 4 control samples ([[:christis_data|Christi's data]]).
   - The closest reference genome to our mouse strain is [[http://www.csbio.unc.edu/CCstatus/index.py?run=Pseudo|C3H/HeJ]]. We can use fasta and MOD files from build 37 (mm9), which is more [[https://www.biostars.org/p/81602/|annotated]] than build 38 (mm10).   - The closest reference genome to our mouse strain is [[http://www.csbio.unc.edu/CCstatus/index.py?run=Pseudo|C3H/HeJ]]. We can use fasta and MOD files from build 37 (mm9), which is more [[https://www.biostars.org/p/81602/|annotated]] than build 38 (mm10).
-  - Alternatively, we can map to the mouse reference transcriptome ([[|NCBI37]]/mm9, rna.fa), and simplify the analysis in expense of losing upto 7% of reads. +  - Alternatively, we can map to the mouse reference transcriptome ([[:hepatocellular_carcinoma|NCBI37]]/mm9, rna.fa), and simplify the analysis in expense of losing upto 7% of reads. 
-  - Ron Walter's lab ran their pipeline to filter the fastq data. These files are stored in folder called Filtered_fastq_files. From Will Boswell: "PE stands for paired end reads. For example, you have a 500bp fragment and your target sequence size is 125bp. The fragment will be sequenced 125 bases from one end and 125 bases from the other end, and Illumina refers to this as paired end reads. SE stands for single end reads, which in our case is generated during our filtering process. If you look at the pre-filtered reads, you’ll see only PE1 and PE2 for each sample. During filtration, if one of the PE’s have low quality, it is tossed out leaving the other PE, and since it no longer has a mate pair, it’s kept as a single end sequence. Also, there are several files in the post-filtered directories that are considered intermediate files in the filtering process that we don’t need; these are process files used by the filtering script. The only files you should be concerned with are the _pe1.r.fastq, _pe2.r.fastq, _se.r.fastq, and _PE.filter.stats (gives you the number of reads mapped to the genome for each PE and SE)." A summary of the analysis can be found {{ :mouse_hcc_liver_sequencing_summary.docx|here}}.+  - Ron Walter's lab ran their pipeline to filter the fastq data. These files are stored in folder called Filtered_fastq_files. From Will Boswell: "PE stands for paired end reads. For example, you have a 500bp fragment and your target sequence size is 125bp. The fragment will be sequenced 125 bases from one end and 125 bases from the other end, and Illumina refers to this as paired end reads. SE stands for single end reads, which in our case is generated during our filtering process. If you look at the pre-filtered reads, you’ll see only PE1 and PE2 for each sample. During filtration, if one of the PE’s have low quality, it is tossed out leaving the other PE, and since it no longer has a mate pair, it’s kept as a single end sequence. Also, there are several files in the post-filtered directories that are considered intermediate files in the filtering process that we don’t need; these are process files used by the filtering script. The only files you should be concerned with are the _pe1.r.fastq, _pe2.r.fastq, _se.r.fastq, and _PE.filter.stats (gives you the number of reads mapped to the genome for each PE and SE)." A summary of the analysis can be found {{:mouse_hcc_liver_sequencing_summary.docx|here}}.
   - Sequencing was completed by Beckman Coulter using [[http://www.illumina.com/products/truseq_rna_library_prep_kit_v2.html|TruSeq RNA Library Preparation Kit v2]] which is an unstranded protocol.   - Sequencing was completed by Beckman Coulter using [[http://www.illumina.com/products/truseq_rna_library_prep_kit_v2.html|TruSeq RNA Library Preparation Kit v2]] which is an unstranded protocol.
-  - Jielei provided TruSeq {{ :illumina_stranded_rnaseq_mapping.pdf|Stranded}} RNA-Seq data from 8 mice in August 2017 (See ~/proj/hcc/data/TPT1/readme.txt), which was analyzed using TruSeq Stranded RNA-Seq.\\ \\ +  - Jielei provided TruSeq {{:illumina_stranded_rnaseq_mapping.pdf|Stranded}}  RNA-Seq data from 8 mice in August 2017 (See ~/proj/hcc/data/TPT1/readme.txt), which was analyzed using TruSeq Stranded RNA-Seq
 +  - Gao, Qiang, et al. "Integrated Proteogenomic Characterization of HBV-Related Hepatocellular Carcinoma." //[[https://www.sciencedirect.com/science/article/pii/S0092867419310037|Cell//]]// 179.2 (2019): 561-577. \\ "The data of WES, transcriptome sequencing, proteome, and phosphoproteome are available in [[https://www.biosino.org/node|NODE]] (accession # [[https://www.biosino.org/node/experiment/detail/OEX001697|OEP000321]]). Survival data (~5 years of followup) were included in Table S1. 
 + 
 ====== **Sources of Human HCC RNA-seq Data** ====== ====== **Sources of Human HCC RNA-seq Data** ======
  
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   - Ching, Travers, Sijia Huang, and Lana X. Garmire. "Power analysis and sample size estimation for RNA-Seq differential expression." //[[http://rnajournal.cshlp.org/content/early/2014/09/22/rna.046011.114|rna]]//20.11 (2014): 1684-1696.   - Ching, Travers, Sijia Huang, and Lana X. Garmire. "Power analysis and sample size estimation for RNA-Seq differential expression." //[[http://rnajournal.cshlp.org/content/early/2014/09/22/rna.046011.114|rna]]//20.11 (2014): 1684-1696.
   - Comprehensive and Integrative Genomic Characterization of Hepatocellular Carcinoma, [[http://www.cell.com/cell/abstract/S0092-8674(17)30639-6?innerTabgraphical_S0092867417306396|Cell]], 2017 [{{:ally-copmprehensive_and_integrative_genomic_char_of_hcc-cell-2017.pdf|pdf}}  ]. TCGA's HCC data and subtyping using DNA copy number, DNA methylation, mRNA expression, miRNA expression and RPPA (protein expression). Links to the MDACC dataset with 100 HCC samples.   - Comprehensive and Integrative Genomic Characterization of Hepatocellular Carcinoma, [[http://www.cell.com/cell/abstract/S0092-8674(17)30639-6?innerTabgraphical_S0092867417306396|Cell]], 2017 [{{:ally-copmprehensive_and_integrative_genomic_char_of_hcc-cell-2017.pdf|pdf}}  ]. TCGA's HCC data and subtyping using DNA copy number, DNA methylation, mRNA expression, miRNA expression and RPPA (protein expression). Links to the MDACC dataset with 100 HCC samples.
-  - Subramaniam, Somasundaram, Robin K. Kelley, and Alan P. Venook. "A review of hepatocellular carcinoma (HCC) staging systems." [[http://cco.amegroups.com/article/view/2528/3943|Chinese clinical oncology]] 2.4 (2013).+  - Subramaniam, Somasundaram, Robin K. Kelley, and Alan P. Venook. "A review of hepatocellular carcinoma (HCC) staging systems." [[http://cco.amegroups.com/article/view/2528/3943|Chinese clinical oncology]] 2.4 (2013).​​​ 
 +  - Alexandrov, Ludmil B., et al. "The repertoire of mutational signatures in human cancer." [[https://www.nature.com/articles/s41586-020-1943-3#Sec17|Nature]] 578.7793 (2020): 94-101. \\  Analyzed WGS and WXS data of thousands of tumors available from TCGA and PCAWG consortia.
  
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