Loubna El Fels, Ahmed Naylo, Martin Jemo, Nidal Zrikam, Ali Boularbah, Yedir Ouhdouch, Mohamed Hafidi
{"title":"预测难降解木质纤维素基质堆肥质量的微生物酶指数。","authors":"Loubna El Fels, Ahmed Naylo, Martin Jemo, Nidal Zrikam, Ali Boularbah, Yedir Ouhdouch, Mohamed Hafidi","doi":"10.3389/fmicb.2024.1423728","DOIUrl":null,"url":null,"abstract":"<p><p>Three different enzymes alkaline phosphatase, Urease and Dehydrogenase were measured during this study to monitor the organic matter dynamics during semi-industrial composting of mixture A with 1/3 sludge+2/3 palm waste and mixture B with ½ sludge+1/2 palm waste. The phosphatase activity was higher for Mix-A (398.7 µg PNP g<sup>-1</sup> h<sup>-1</sup>) than Mix-B (265.3 µg PNP g<sup>-1</sup> h<sup>-1</sup>), while Mix-B (103.3 µg TPF g<sup>-1</sup>d<sup>-1</sup>) exhibited greater dehydrogenase content than Mix-A (72.3 µg TPF g<sup>-1</sup> d<sup>-1</sup>). That could contribute to the dynamic change of microbial activity together with high amounts of carbonaceous substrates incorporated with the lignocellulosic. The gradual increase in the dehydrogenase from the compost Mix-A implies that high lignocellulosic substrate requires gradual buildup of dehydrogenase activity to turn the waste into mature compost. A higher pick of urease with a maximum activity of 151.5 and 122.4 µg NH<sub>4</sub>-N g<sup>-1</sup> h<sup>-1</sup> were reported, respectively for Mix-A and B. Temperature and pH could also influence the expression of enzyme activity during composting. The machine learning well predicted the compost quality based on NH<sub>3</sub>/NO<sub>3</sub>, C/N ratio, decomposition rate and, humification index (HI). The root mean square error (RMSE) values were 1.98, 1.95, 4.61%, and 4.1 for NH<sup>+</sup> <sub>3</sub>/NO<sup>-</sup> <sub>3</sub>, C/N ratio, decomposition rate, and HI, respectively. The coefficient of determination between observed and predicted values were 0.87, 0.93, 0.89, and 0.94, for the r NH<sub>3</sub>/NO<sub>3</sub>, C/N ratio, decomposition rate, and HI. Urease activity significantly predicted the C/N ratio and HI only. The profile of enzymatic activity is tightly linked to the physico-chemical properties, proportion of lignocellulosic-composted substrates. Enzymatic activity assessment provides a simple and rapid measurement of the biological activity adding understunding of organic matter transformation during sludge-lignocellulosic composting.</p>","PeriodicalId":12466,"journal":{"name":"Frontiers in Microbiology","volume":"15 ","pages":"1423728"},"PeriodicalIF":4.0000,"publicationDate":"2024-11-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11586200/pdf/","citationCount":"0","resultStr":"{\"title\":\"Microbial enzymatic indices for predicting composting quality of recalcitrant lignocellulosic substrates.\",\"authors\":\"Loubna El Fels, Ahmed Naylo, Martin Jemo, Nidal Zrikam, Ali Boularbah, Yedir Ouhdouch, Mohamed Hafidi\",\"doi\":\"10.3389/fmicb.2024.1423728\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Three different enzymes alkaline phosphatase, Urease and Dehydrogenase were measured during this study to monitor the organic matter dynamics during semi-industrial composting of mixture A with 1/3 sludge+2/3 palm waste and mixture B with ½ sludge+1/2 palm waste. The phosphatase activity was higher for Mix-A (398.7 µg PNP g<sup>-1</sup> h<sup>-1</sup>) than Mix-B (265.3 µg PNP g<sup>-1</sup> h<sup>-1</sup>), while Mix-B (103.3 µg TPF g<sup>-1</sup>d<sup>-1</sup>) exhibited greater dehydrogenase content than Mix-A (72.3 µg TPF g<sup>-1</sup> d<sup>-1</sup>). That could contribute to the dynamic change of microbial activity together with high amounts of carbonaceous substrates incorporated with the lignocellulosic. The gradual increase in the dehydrogenase from the compost Mix-A implies that high lignocellulosic substrate requires gradual buildup of dehydrogenase activity to turn the waste into mature compost. A higher pick of urease with a maximum activity of 151.5 and 122.4 µg NH<sub>4</sub>-N g<sup>-1</sup> h<sup>-1</sup> were reported, respectively for Mix-A and B. Temperature and pH could also influence the expression of enzyme activity during composting. The machine learning well predicted the compost quality based on NH<sub>3</sub>/NO<sub>3</sub>, C/N ratio, decomposition rate and, humification index (HI). The root mean square error (RMSE) values were 1.98, 1.95, 4.61%, and 4.1 for NH<sup>+</sup> <sub>3</sub>/NO<sup>-</sup> <sub>3</sub>, C/N ratio, decomposition rate, and HI, respectively. The coefficient of determination between observed and predicted values were 0.87, 0.93, 0.89, and 0.94, for the r NH<sub>3</sub>/NO<sub>3</sub>, C/N ratio, decomposition rate, and HI. Urease activity significantly predicted the C/N ratio and HI only. The profile of enzymatic activity is tightly linked to the physico-chemical properties, proportion of lignocellulosic-composted substrates. 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引用次数: 0
摘要
本研究测量了碱性磷酸酶、尿素酶和脱氢酶三种不同的酶,以监测半工业堆肥过程中有机物的动态变化,混合物 A 含有 1/3 污泥+2/3 棕榈废料,混合物 B 含有 1/2 污泥+1/2 棕榈废料。混合物 A 的磷酸酶活性(398.7 µg PNP g-1 h-1)高于混合物 B(265.3 µg PNP g-1 h-1),而混合物 B 的脱氢酶含量(103.3 µg TPF g-1 d-1)高于混合物 A(72.3 µg TPF g-1 d-1)。这可能与木质纤维素中含有大量碳质底物有关,也可能与微生物活性的动态变化有关。堆肥 Mix-A 中脱氢酶的逐渐增加意味着,高木质纤维素基质需要脱氢酶活性的逐渐增强,才能将废物转化为成熟的堆肥。混合堆肥 A 和混合堆肥 B 的脲酶活性较高,最大活性分别为 151.5 和 122.4 µg NH4-N g-1 h-1。机器学习根据 NH3/NO3、C/N 比、分解率和腐殖化指数(HI)很好地预测了堆肥质量。NH+ 3/NO- 3、C/N 比率、分解率和腐殖化指数的均方根误差(RMSE)值分别为 1.98、1.95、4.61% 和 4.1。NH3/NO3 、C/N 比率、分解率和 HI 的观测值与预测值之间的决定系数分别为 0.87、0.93、0.89 和 0.94。仅尿素酶活性对 C/N 比和 HI 有明显的预测作用。酶活性曲线与木质纤维素堆肥基质的物理化学性质和比例密切相关。酶活性评估提供了一种简单、快速的生物活性测量方法,在污泥-木质纤维素堆肥过程中增加了有机物转化的底储量。
Microbial enzymatic indices for predicting composting quality of recalcitrant lignocellulosic substrates.
Three different enzymes alkaline phosphatase, Urease and Dehydrogenase were measured during this study to monitor the organic matter dynamics during semi-industrial composting of mixture A with 1/3 sludge+2/3 palm waste and mixture B with ½ sludge+1/2 palm waste. The phosphatase activity was higher for Mix-A (398.7 µg PNP g-1 h-1) than Mix-B (265.3 µg PNP g-1 h-1), while Mix-B (103.3 µg TPF g-1d-1) exhibited greater dehydrogenase content than Mix-A (72.3 µg TPF g-1 d-1). That could contribute to the dynamic change of microbial activity together with high amounts of carbonaceous substrates incorporated with the lignocellulosic. The gradual increase in the dehydrogenase from the compost Mix-A implies that high lignocellulosic substrate requires gradual buildup of dehydrogenase activity to turn the waste into mature compost. A higher pick of urease with a maximum activity of 151.5 and 122.4 µg NH4-N g-1 h-1 were reported, respectively for Mix-A and B. Temperature and pH could also influence the expression of enzyme activity during composting. The machine learning well predicted the compost quality based on NH3/NO3, C/N ratio, decomposition rate and, humification index (HI). The root mean square error (RMSE) values were 1.98, 1.95, 4.61%, and 4.1 for NH+3/NO-3, C/N ratio, decomposition rate, and HI, respectively. The coefficient of determination between observed and predicted values were 0.87, 0.93, 0.89, and 0.94, for the r NH3/NO3, C/N ratio, decomposition rate, and HI. Urease activity significantly predicted the C/N ratio and HI only. The profile of enzymatic activity is tightly linked to the physico-chemical properties, proportion of lignocellulosic-composted substrates. Enzymatic activity assessment provides a simple and rapid measurement of the biological activity adding understunding of organic matter transformation during sludge-lignocellulosic composting.
期刊介绍:
Frontiers in Microbiology is a leading journal in its field, publishing rigorously peer-reviewed research across the entire spectrum of microbiology. Field Chief Editor Martin G. Klotz at Washington State University is supported by an outstanding Editorial Board of international researchers. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide.