scholarly journals CarrierSeq: a sequence analysis workflow for low-input nanopore sequencing

2018 ◽  
Vol 19 (1) ◽  
Author(s):  
Angel Mojarro ◽  
Julie Hachey ◽  
Gary Ruvkun ◽  
Maria T. Zuber ◽  
Christopher E. Carr
2017 ◽  
Author(s):  
Angel Mojarro ◽  
Julie Hachey ◽  
Gary Ruvkun ◽  
Maria T. Zuber ◽  
Christopher E. Carr

AbstractMotivationLong-read nanopore sequencing technology is of particular significance for taxonomic identification at or below the species level. For many environmental samples, the total extractable DNA is far below the current input requirements of nanopore sequencing, preventing “sample to sequence” metagenomics from low-biomass or recalcitrant samples.ResultsHere we address this problem by employing carrier sequencing, a method to sequence low-input DNA by preparing the target DNA with a genomic carrier to achieve ideal library preparation and sequencing stoichiometry without amplification. We then use CarrierSeq, a sequence analysis workflow to identify the low-input target reads from the genomic carrier. We tested CarrierSeq experimentally by sequencing from a combination of 0.2 ng Bacillus subtilis ATCC 6633 DNA in a background of 1 μg Enterobacteria phage λ DNA. After filtering of carrier, low quality, and low complexity reads, we detected target reads (B. subtilis), contamination reads, and “high quality noise reads” (HQNRs) not mapping to the carrier, target or known lab contaminants. These reads appear to be artifacts of the nanopore sequencing process as they are associated with specific channels (pores). By treating reads as a Poisson arrival process, we implement a statistical test to reject data from channels dominated by HQNRs while retaining target reads.AvailabilityCarrierSeq is an open-source bash script with supporting python scripts which leverage a variety of bioinformatics software packages on macOS and Ubuntu. Supplemental documentation is available from Github - https://github.com/amojarro/carrierseq. In addition, we have compiled all required dependencies in a Docker image available from - https://hub.docker.com/r/mojarro/carrierseq.


Author(s):  
Yiran Liang ◽  
Hayden Acor ◽  
Michaela A. McCown ◽  
Andikan J. Nwosu ◽  
Hannah Boekweg ◽  
...  

2018 ◽  
Vol 20 (4) ◽  
pp. 1542-1559 ◽  
Author(s):  
Damla Senol Cali ◽  
Jeremie S Kim ◽  
Saugata Ghose ◽  
Can Alkan ◽  
Onur Mutlu

Abstract Nanopore sequencing technology has the potential to render other sequencing technologies obsolete with its ability to generate long reads and provide portability. However, high error rates of the technology pose a challenge while generating accurate genome assemblies. The tools used for nanopore sequence analysis are of critical importance, as they should overcome the high error rates of the technology. Our goal in this work is to comprehensively analyze current publicly available tools for nanopore sequence analysis to understand their advantages, disadvantages and performance bottlenecks. It is important to understand where the current tools do not perform well to develop better tools. To this end, we (1) analyze the multiple steps and the associated tools in the genome assembly pipeline using nanopore sequence data, and (2) provide guidelines for determining the appropriate tools for each step. Based on our analyses, we make four key observations: (1) the choice of the tool for basecalling plays a critical role in overcoming the high error rates of nanopore sequencing technology. (2) Read-to-read overlap finding tools, GraphMap and Minimap, perform similarly in terms of accuracy. However, Minimap has a lower memory usage, and it is faster than GraphMap. (3) There is a trade-off between accuracy and performance when deciding on the appropriate tool for the assembly step. The fast but less accurate assembler Miniasm can be used for quick initial assembly, and further polishing can be applied on top of it to increase the accuracy, which leads to faster overall assembly. (4) The state-of-the-art polishing tool, Racon, generates high-quality consensus sequences while providing a significant speedup over another polishing tool, Nanopolish. We analyze various combinations of different tools and expose the trade-offs between accuracy, performance, memory usage and scalability. We conclude that our observations can guide researchers and practitioners in making conscious and effective choices for each step of the genome assembly pipeline using nanopore sequence data. Also, with the help of bottlenecks we have found, developers can improve the current tools or build new ones that are both accurate and fast, to overcome the high error rates of the nanopore sequencing technology.


protocols.io ◽  
2016 ◽  
Author(s):  
Benjamin Istace ◽  
Anne Friedrich ◽  
L o ◽  
S bastien ◽  
Emilie Payen ◽  
...  

protocols.io ◽  
2018 ◽  
Author(s):  
Christian Blumenscheit ◽  
Adrian Viehweger ◽  
celia Diezel

protocols.io ◽  
2018 ◽  
Author(s):  
Christian Blumenscheit ◽  
Adrian Viehweger ◽  
celia Diezel

2021 ◽  
Author(s):  
Lakshmi Kuttippurathu ◽  
Alison Moss ◽  
Rajanikanth Vadigepalli

Abstract The present protocol describes transcriptome mapping, data normalization and analysis pipeline with detailed steps for each of these aspects for single cell/ low input RNASeq data from Right Atrial Ganglionated Plexus (RAGP) of pig heart. The protocol with minor modifications can be adapted for low input samples with short reads or samples with low quality input RNA. Single cell samples acquired using Laser Capture Microdissection (LCM) were processed for RNA-Seq library preparation using Smart-3SEQ technique (Foley et al 2019). The data analysis workflow consists of (a) pre-processing- data trimming, read alignment and feature count and (b) downstream analysis- annotation, batch correction, filtering and normalization. The entire protocol is performed using freely available packages. Most of them are available within the R framework.


BMC Genomics ◽  
2014 ◽  
Vol 15 (1) ◽  
pp. 601 ◽  
Author(s):  
Juan Herrero-Medrano ◽  
Hendrik-Jan Megens ◽  
Martien AM Groenen ◽  
Mirte Bosse ◽  
Miguel Pérez-Enciso ◽  
...  

Author(s):  
Yiran Liang ◽  
Hayden Acor ◽  
Michaela A. McCown ◽  
Andikan J. Nwosu ◽  
Hannah Boekweg ◽  
...  

1999 ◽  
Vol 37 (2) ◽  
pp. 105-114 ◽  
Author(s):  
Y. GRAser ◽  
M. EL Fari ◽  
R. Vilgalys ◽  
A. F. A. Kuijpers ◽  
G. S. DE Hoog ◽  
...  

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