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Optimization for Sequencing and Analysis of Degraded FFPE-RNA Samples

  1. Author:
    Levin,Yelena
    Talsania,Keyur
    Tran,Bao
    Shetty,Jyoti
    Zhao,Yongmei
    Mehta,Monika
  2. Author Address

    NCI CCR Sequencing Facility, Frederick National Laboratory for Cancer Research., NCI CCR Sequencing Facility, Frederick National Laboratory for Cancer Research; Advanced Biomedical and Computational Sciences, Frederick National Laboratory for Cancer Research., NCI CCR Sequencing Facility, Frederick National Laboratory for Cancer Research; jyoti.shetty@nih.gov., NCI CCR Sequencing Facility, Frederick National Laboratory for Cancer Research; Advanced Biomedical and Computational Sciences, Frederick National Laboratory for Cancer Research; zhaoyong@mail.nih.gov., NCI CCR Sequencing Facility, Frederick National Laboratory for Cancer Research; monika.mehta@nih.gov.,
    1. Year: 2020
    2. Date: Jun 08
    3. Epub Date: 2020 06 08
  1. Journal: Journal of visualized experiments : JoVE
    1. 160
  2. Type of Article: Article
  3. Article Number: e61060
  4. ISSN: 1940-087X
  1. Abstract:

    Gene expression analysis by RNA sequencing (RNA-seq) enables unique insights into clinical samples that can potentially lead to mechanistic understanding of the basis of various diseases as well as resistance and/or susceptibility mechanisms. However, FFPE tissues, which represent the most common method for preserving tissue morphology in clinical specimens, are not the best sources for gene expression profiling analysis. The RNA obtained from such samples is often degraded, fragmented, and chemically modified, which leads to suboptimal sequencing libraries. In turn, these generate poor quality sequence data that may not be reliable for gene expression analysis and mutation discovery. In order to make the most of FFPE samples and obtain the best possible data from low quality samples, it is important to take certain precautions while planning experimental design, preparing sequencing libraries, and during data analysis. This includes the use of appropriate metrics for precise sample quality control (QC), identifying the best methods for various steps during the sequencing library generation, and careful library QC. In addition, applying correct software tools and parameters for sequence data analysis is critical in order to identify artifacts in RNA-seq data, filter out contamination and low quality reads, assess uniformity of gene coverage, and measure the reproducibility of gene expression profiles among biological replicates. These steps can ensure high accuracy and reproducibility for profiling of very heterogeneous RNA samples. Here we describe the various steps for sample QC, library preparation and QC, sequencing, and data analysis that can help to increase the amount of useful data obtained from low quality RNA, such as that obtained from FFPE-RNA tissues.

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External Sources

  1. DOI: 10.3791/61060
  2. PMID: 32568231
  3. WOS: 000546499200086

Library Notes

  1. Fiscal Year: FY2019-2020
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