scholarly journals MiniXT protocol v1

Author(s):  
Marc-Aurel Fuchs ◽  
Arun Mahesh ◽  
Clara Radulescu ◽  
Deborah Lavin ◽  
Fiona Rogan ◽  
...  

We present the ‘mini-XT’ miniaturized tagmentation-based library preparation protocol used for Illumina WGS of SARS-CoV-2 positive samples. Reverse transcription and amplification is based upon the nCoV-2019 sequencing protocol v3 (LoCost)V.3 by Josh Quick. The key new feature of the protocol is the use of acoustic liquid transfer to automate and reduce volumes during library preparation. It is optimized for the sequencing of 384 samples, offering reduced consumable use and costs and improved throughput.

protocols.io ◽  
2021 ◽  
Author(s):  
Elias Dahdouh ◽  
Fernando Lázaro Perona ◽  
María Rodríguez Tejedor ◽  
Rubén Cáceres Sánchez ◽  
Iván Bloise Sánchez ◽  
...  

2019 ◽  
Vol 9 (1) ◽  
Author(s):  
Mikhail Pomaznoy ◽  
Ashu Sethi ◽  
Jason Greenbaum ◽  
Bjoern Peters

Abstract RNA-seq methods are widely utilized for transcriptomic profiling of biological samples. However, there are known caveats of this technology which can skew the gene expression estimates. Specifically, if the library preparation protocol does not retain RNA strand information then some genes can be erroneously quantitated. Although strand-specific protocols have been established, a significant portion of RNA-seq data is generated in non-strand-specific manner. We used a comprehensive stranded RNA-seq dataset of 15 blood cell types to identify genes for which expression would be erroneously estimated if strand information was not available. We found that about 10% of all genes and 2.5% of protein coding genes have a two-fold or higher difference in estimated expression when strand information of the reads was ignored. We used parameters of read alignments of these genes to construct a machine learning model that can identify which genes in an unstranded dataset might have incorrect expression estimates and which ones do not. We also show that differential expression analysis of genes with biased expression estimates in unstranded read data can be recovered by limiting the reads considered to those which span exonic boundaries. The resulting approach is implemented as a package available at https://github.com/mikpom/uslcount.


2020 ◽  
Vol 18 (1) ◽  
Author(s):  
Dolores Olivares ◽  
Javier Perez-Hernandez ◽  
Daniel Perez-Gil ◽  
Felipe J. Chaves ◽  
Josep Redon ◽  
...  

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