Combined machine learning and biomolecular analysis for stability assessment of anaerobic ammonium oxidation under salt stress
- Authors
- Jeon, Junbeom; Cho, Kyungjin; Kang, Jinkyu; Park, Suin; Ada, Okpete Uchenna Esther; Park, Jihye; Song, Minsu; Ly, Quang Viet; Bae, Hyokwan
- Issue Date
- 2022-07
- Publisher
- Elsevier BV
- Citation
- Bioresource Technology, v.355
- Abstract
- In this study, the stability of the total nitrogen removal efficiency (TNRE) was modeled using an artificial neural network (ANN)-based binary classification model for the anaerobic ammonium oxidation (AMX) process under saline conditions. The TNRE was stabilized to 80.2 +/- 11.4% at the final phase under the salinity of 1.0 +/-& nbsp;0.02%. The results of terminal restriction fragment length polymorphism (T-RFLP) analysis showed the predominance of Candidatus Jettenia genus. Real-time quantitative PCR analysis revealed the average abundance of Ca. Jettenia and Kuenenia spp. increased in 3.2 +/- 5.4 x 108 and 2.0 +/- 2.2 x 105 copies/mL, respectively. The prediction accuracy using operational parameters with data augmentation was 88.2%. However, integration with T-RFLP and real-time qPCR signals improved the prediction accuracy by 97.1%. This study revealed the feasible application of machine learning and biomolecular signals to the stability prediction of the AMX process under increased salinity.
- Keywords
- NITROGEN-REMOVAL; SALINITY; PERFORMANCE; ADAPTATION; REACTOR; SYSTEM; MICROBIAL COMMUNITY; OXIDIZING BACTERIA; ANAMMOX BACTERIA; Anammox; Salinity effect; Artificial-neural network; T-RFLP; Real-time qPCR
- ISSN
- 0960-8524
- URI
- https://pubs.kist.re.kr/handle/201004/114917
- DOI
- 10.1016/j.biortech.2022.127206
- Appears in Collections:
- KIST Article > 2022
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