Literature DB >> 30909014

Incorporating microbial community data with machine learning techniques to predict feed substrates in microbial fuel cells.

Wenfang Cai1, Keaton Larson Lesnik2, Matthew J Wade3, Elizabeth S Heidrich4, Yunhai Wang5, Hong Liu6.   

Abstract

The complicated interactions that occur in mixed-species biotechnologies, including biosensors, hinder chemical detection specificity. This lack of specificity limits applications in which biosensors may be deployed, such as those where an unknown feed substrate must be determined. The application of genomic data and well-developed data mining technologies can overcome these limitations and advance engineering development. In the present study, 69 samples with three different substrate types (acetate, carbohydrates and wastewater) collected from various laboratory environments were evaluated to determine the ability to identify feed substrates from the resultant microbial communities. Six machine learning algorithms with four different input variables were trained and evaluated on their ability to predict feed substrate from genomic datasets. The highest accuracies of 93 ± 6% and 92 ± 5% were obtained using NNET trained on datasets classified at the phylum and family taxonomic level, respectively. These accuracies corresponded to kappa values of 0.87 ± 0.10, 0.86 ± 0.09, respectively. Four out of six of the algorithms used maintained accuracies above 80% and kappa values higher than 0.66. Different sequencing method (Roche 454 or Illumina sequencing) did not affect the accuracies of all algorithms, except SVM at the phylum level. All algorithms trained on NMDS-compressed datasets obtained accuracies over 80%, while models trained on PCoA-compressed datasets presented a 10-30% reduction in accuracy. These results suggest that incorporating microbial community data with machine learning algorithms can be used for the prediction of feed substrate and for the potential improvement of MFC-based biosensor signal specificity, providing a new use of machine learning techniques that has substantial practical applications in biotechnological fields.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Biosensors; Feed substrate; Machine learning; Microbial communities; Microbial fuel cell

Mesh:

Substances:

Year:  2019        PMID: 30909014     DOI: 10.1016/j.bios.2019.03.021

Source DB:  PubMed          Journal:  Biosens Bioelectron        ISSN: 0956-5663            Impact factor:   10.618


  5 in total

1.  Performance and community structure dynamics of microbial electrolysis cells operated on multiple complex feedstocks.

Authors:  Scott J Satinover; Miguel Rodriguez; Maria F Campa; Terry C Hazen; Abhijeet P Borole
Journal:  Biotechnol Biofuels       Date:  2020-10-13       Impact factor: 6.040

2.  Biogeographic Patterns in Members of Globally Distributed and Dominant Taxa Found in Port Microbial Communities.

Authors:  Ryan B Ghannam; Laura G Schaerer; Timothy M Butler; Stephen M Techtmann
Journal:  mSphere       Date:  2020-01-29       Impact factor: 4.389

Review 3.  Machine learning toward advanced energy storage devices and systems.

Authors:  Tianhan Gao; Wei Lu
Journal:  iScience       Date:  2020-12-13

4.  Enhancement of microbiome management by machine learning for biological wastewater treatment.

Authors:  Wenfang Cai; Fei Long; Yunhai Wang; Hong Liu; Kun Guo
Journal:  Microb Biotechnol       Date:  2020-11-22       Impact factor: 5.813

5.  Effects of Student Training in Social Skills and Emotional Intelligence on the Behaviour and Coexistence of Adolescents in the 21st Century.

Authors:  Sara Vila; Raquel Gilar-Corbí; Teresa Pozo-Rico
Journal:  Int J Environ Res Public Health       Date:  2021-05-20       Impact factor: 3.390

  5 in total

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