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MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering

Background: Binning of metagenomic reads is an active area of research, and many unsupervised machine learning-based techniques have been used for taxonomic independent binning of metagenomic reads. Objective: It is important to find the optimum number of the cluster as well as develop an efficient...

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Autores principales: Sinha, Dipro, Sharma, Anu, Mishra, Dwijesh Chandra, Rai, Anil, Lal, Shashi Bhushan, Kumar, Sanjeev, Farooqi, Moh. Samir, Chaturvedi, Krishna Kumar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Bentham Science Publishers 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9878838/
https://www.ncbi.nlm.nih.gov/pubmed/36778980
http://dx.doi.org/10.2174/1389202923666220413114659
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author Sinha, Dipro
Sharma, Anu
Mishra, Dwijesh Chandra
Rai, Anil
Lal, Shashi Bhushan
Kumar, Sanjeev
Farooqi, Moh. Samir
Chaturvedi, Krishna Kumar
author_facet Sinha, Dipro
Sharma, Anu
Mishra, Dwijesh Chandra
Rai, Anil
Lal, Shashi Bhushan
Kumar, Sanjeev
Farooqi, Moh. Samir
Chaturvedi, Krishna Kumar
author_sort Sinha, Dipro
collection PubMed
description Background: Binning of metagenomic reads is an active area of research, and many unsupervised machine learning-based techniques have been used for taxonomic independent binning of metagenomic reads. Objective: It is important to find the optimum number of the cluster as well as develop an efficient pipeline for deciphering the complexity of the microbial genome. Methods: Applying unsupervised clustering techniques for binning requires finding the optimal number of clusters beforehand and is observed to be a difficult task. This paper describes a novel method, MetaConClust, using coverage information for grouping of contigs and automatically finding the optimal number of clusters for binning of metagenomics data using a consensus-based clustering approach. The coverage of contigs in a metagenomics sample has been observed to be directly proportional to the abundance of species in the sample and is used for grouping of data in the first phase by MetaConClust. The Partitioning Around Medoid (PAM) method is used for clustering in the second phase for generating bins with the initial number of clusters determined automatically through a consensus-based method. Results: Finally, the quality of the obtained bins is tested using silhouette index, rand Index, recall, precision, and accuracy. Performance of MetaConClust is compared with recent methods and tools using benchmarked low complexity simulated and real metagenomic datasets and is found better for unsupervised and comparable for hybrid methods. Conclusion: This is suggestive of the proposition that the consensus-based clustering approach is a promising method for automatically finding the number of bins for metagenomics data.
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spelling pubmed-98788382023-02-09 MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering Sinha, Dipro Sharma, Anu Mishra, Dwijesh Chandra Rai, Anil Lal, Shashi Bhushan Kumar, Sanjeev Farooqi, Moh. Samir Chaturvedi, Krishna Kumar Curr Genomics Genetics & Genomics Background: Binning of metagenomic reads is an active area of research, and many unsupervised machine learning-based techniques have been used for taxonomic independent binning of metagenomic reads. Objective: It is important to find the optimum number of the cluster as well as develop an efficient pipeline for deciphering the complexity of the microbial genome. Methods: Applying unsupervised clustering techniques for binning requires finding the optimal number of clusters beforehand and is observed to be a difficult task. This paper describes a novel method, MetaConClust, using coverage information for grouping of contigs and automatically finding the optimal number of clusters for binning of metagenomics data using a consensus-based clustering approach. The coverage of contigs in a metagenomics sample has been observed to be directly proportional to the abundance of species in the sample and is used for grouping of data in the first phase by MetaConClust. The Partitioning Around Medoid (PAM) method is used for clustering in the second phase for generating bins with the initial number of clusters determined automatically through a consensus-based method. Results: Finally, the quality of the obtained bins is tested using silhouette index, rand Index, recall, precision, and accuracy. Performance of MetaConClust is compared with recent methods and tools using benchmarked low complexity simulated and real metagenomic datasets and is found better for unsupervised and comparable for hybrid methods. Conclusion: This is suggestive of the proposition that the consensus-based clustering approach is a promising method for automatically finding the number of bins for metagenomics data. Bentham Science Publishers 2022-06-10 2022-06-10 /pmc/articles/PMC9878838/ /pubmed/36778980 http://dx.doi.org/10.2174/1389202923666220413114659 Text en © 2022 Bentham Science Publishers https://creativecommons.org/licenses/by-nc/4.0/ This is an open access article licensed under the terms of the Creative Commons Attribution-Non-Commercial 4.0 International Public License (CC BY-NC 4.0) (https://creativecommons.org/licenses/by-nc/4.0/), which permits unrestricted, non-commercial use, distribution and reproduction in any medium, provided the work is properly cited.
spellingShingle Genetics & Genomics
Sinha, Dipro
Sharma, Anu
Mishra, Dwijesh Chandra
Rai, Anil
Lal, Shashi Bhushan
Kumar, Sanjeev
Farooqi, Moh. Samir
Chaturvedi, Krishna Kumar
MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering
title MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering
title_full MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering
title_fullStr MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering
title_full_unstemmed MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering
title_short MetaConClust - Unsupervised Binning of Metagenomics Data using Consensus Clustering
title_sort metaconclust - unsupervised binning of metagenomics data using consensus clustering
topic Genetics & Genomics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9878838/
https://www.ncbi.nlm.nih.gov/pubmed/36778980
http://dx.doi.org/10.2174/1389202923666220413114659
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