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A Deep Clustering-based Novel Approach for Binning of Metagenomics Data

BACKGROUND: One major challenge in binning Metagenomics data is the limited availability of reference datasets, as only 1% of the total microbial population is yet cultured. This has given rise to the efficacy of unsupervised methods for binning in the absence of any reference datasets. OBJECTIVE: T...

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Autores principales: Madival, Sharanbasappa D., Mishra, Dwijesh Chandra, Sharma, Anu, Kumar, Sanjeev, Maji, Arpan Kumar, Budhlakoti, Neeraj, Sinha, Dipro, Rai, Anil
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Bentham Science Publishers 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9878855/
https://www.ncbi.nlm.nih.gov/pubmed/36778191
http://dx.doi.org/10.2174/1389202923666220928150100
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author Madival, Sharanbasappa D.
Mishra, Dwijesh Chandra
Sharma, Anu
Kumar, Sanjeev
Maji, Arpan Kumar
Budhlakoti, Neeraj
Sinha, Dipro
Rai, Anil
author_facet Madival, Sharanbasappa D.
Mishra, Dwijesh Chandra
Sharma, Anu
Kumar, Sanjeev
Maji, Arpan Kumar
Budhlakoti, Neeraj
Sinha, Dipro
Rai, Anil
author_sort Madival, Sharanbasappa D.
collection PubMed
description BACKGROUND: One major challenge in binning Metagenomics data is the limited availability of reference datasets, as only 1% of the total microbial population is yet cultured. This has given rise to the efficacy of unsupervised methods for binning in the absence of any reference datasets. OBJECTIVE: To develop a deep clustering-based binning approach for Metagenomics data and to evaluate results with suitable measures. METHODS: In this study, a deep learning-based approach has been taken for binning the Metagenomics data. The results are validated on different datasets by considering features such as Tetra-nucleotide frequency (TNF), Hexa-nucleotide frequency (HNF) and GC-Content. Convolutional Autoencoder is used for feature extraction and for binning; the K-means clustering method is used. RESULTS: In most cases, it has been found that evaluation parameters such as the Silhouette index and Rand index are more than 0.5 and 0.8, respectively, which indicates that the proposed approach is giving satisfactory results. The performance of the developed approach is compared with current methods and tools using benchmarked low complexity simulated and real metagenomic datasets. It is found better for unsupervised and at par with semi-supervised methods. CONCLUSION: An unsupervised advanced learning-based approach for binning has been proposed, and the developed method shows promising results for various datasets. This is a novel approach for solving the lack of reference data problem of binning in metagenomics.
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spelling pubmed-98788552023-05-18 A Deep Clustering-based Novel Approach for Binning of Metagenomics Data Madival, Sharanbasappa D. Mishra, Dwijesh Chandra Sharma, Anu Kumar, Sanjeev Maji, Arpan Kumar Budhlakoti, Neeraj Sinha, Dipro Rai, Anil Curr Genomics Genetics & Genomics BACKGROUND: One major challenge in binning Metagenomics data is the limited availability of reference datasets, as only 1% of the total microbial population is yet cultured. This has given rise to the efficacy of unsupervised methods for binning in the absence of any reference datasets. OBJECTIVE: To develop a deep clustering-based binning approach for Metagenomics data and to evaluate results with suitable measures. METHODS: In this study, a deep learning-based approach has been taken for binning the Metagenomics data. The results are validated on different datasets by considering features such as Tetra-nucleotide frequency (TNF), Hexa-nucleotide frequency (HNF) and GC-Content. Convolutional Autoencoder is used for feature extraction and for binning; the K-means clustering method is used. RESULTS: In most cases, it has been found that evaluation parameters such as the Silhouette index and Rand index are more than 0.5 and 0.8, respectively, which indicates that the proposed approach is giving satisfactory results. The performance of the developed approach is compared with current methods and tools using benchmarked low complexity simulated and real metagenomic datasets. It is found better for unsupervised and at par with semi-supervised methods. CONCLUSION: An unsupervised advanced learning-based approach for binning has been proposed, and the developed method shows promising results for various datasets. This is a novel approach for solving the lack of reference data problem of binning in metagenomics. Bentham Science Publishers 2022-11-18 2022-11-18 /pmc/articles/PMC9878855/ /pubmed/36778191 http://dx.doi.org/10.2174/1389202923666220928150100 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
Madival, Sharanbasappa D.
Mishra, Dwijesh Chandra
Sharma, Anu
Kumar, Sanjeev
Maji, Arpan Kumar
Budhlakoti, Neeraj
Sinha, Dipro
Rai, Anil
A Deep Clustering-based Novel Approach for Binning of Metagenomics Data
title A Deep Clustering-based Novel Approach for Binning of Metagenomics Data
title_full A Deep Clustering-based Novel Approach for Binning of Metagenomics Data
title_fullStr A Deep Clustering-based Novel Approach for Binning of Metagenomics Data
title_full_unstemmed A Deep Clustering-based Novel Approach for Binning of Metagenomics Data
title_short A Deep Clustering-based Novel Approach for Binning of Metagenomics Data
title_sort deep clustering-based novel approach for binning of metagenomics data
topic Genetics & Genomics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9878855/
https://www.ncbi.nlm.nih.gov/pubmed/36778191
http://dx.doi.org/10.2174/1389202923666220928150100
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