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开发一种机器学习模型,以从高通量测序数据中识别农药特性对土壤微生物群落的影响。

Development of a machine-learning model to identify the impacts of pesticides characteristics on soil microbial communities from high-throughput sequencing data.

机构信息

College of Environment, Zhejiang University of Technology, Hangzhou, People's Republic of China.

Key Laboratory of Microbial Technology and Bioinformatics of Zhejiang Province, Hangzhou, People's Republic of China.

出版信息

Environ Microbiol. 2022 Nov;24(11):5561-5573. doi: 10.1111/1462-2920.16175. Epub 2022 Aug 28.

DOI:10.1111/1462-2920.16175
PMID:36054535
Abstract

High-throughput sequencing (HTS) of soil environmental DNA provides an advanced insight into the effects of pesticides on soil microbial systems. However, the association between the properties of the pesticide and its ecological impact remains methodically challenging. Risks associated with pesticide use can be minimized if pesticides with optimal structural traits were applied. For this purpose, we merged the 20 independent HTS studies, to reveal that pesticides significantly reduced beneficial bacteria associated with soil and plant immunity, enhanced the human pathogen and weaken the soil's ecological stability. Through the machine-learning approach, correlating these impacts with the physicochemical properties of the pesticides yielded a random forest model with good predictive capabilities. The models revealed that physical pesticide properties such as the dissociation constant (pKa), the molecular weight and water solubility, determined the ecological impact of pesticides to a large extent. Moreover, this study identified that eco-friendly pesticides should possess a value of pKa > 5 and a molecular weight in the range of 200-300 g/mol, which were found to be conducive to bacteria related to plant immunity promotion and exerted the lowest fluctuation of human opportunistic pathogen and keystone species. This guides the design of pesticides for which the impacts on soil biota are minimized.

摘要

高通量测序(HTS)技术可用于分析土壤环境 DNA,深入了解农药对土壤微生物系统的影响。然而,农药性质与其生态影响之间的关联仍然具有挑战性。如果使用具有最佳结构特征的农药,可以将与农药使用相关的风险降到最低。为此,我们合并了 20 项独立的 HTS 研究,结果表明,农药显著降低了与土壤和植物免疫相关的有益细菌,增强了人类病原体并削弱了土壤的生态稳定性。通过机器学习方法,将这些影响与农药的物理化学性质相关联,得到了一个具有良好预测能力的随机森林模型。该模型表明,农药的物理性质,如离解常数(pKa)、分子量和水溶性,在很大程度上决定了农药的生态影响。此外,本研究还确定了生态友好型农药的 pKa 值应>5,分子量应在 200-300g/mol 范围内,这有利于与植物免疫促进相关的细菌,且对人类机会性病原体和关键物种的波动最小。这为设计对土壤生物群影响最小的农药提供了指导。

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