Lin Yu-Jie, Hsieh Ping-Heng, Mao Chun-Chia, Shih Yang-Hsin, Chen Shu-Hwa, Lin Chung-Yen
Institute of Information Science, Academia Sinica, No. 128, Section 2, Academia Road, Nankang, Taipei 11529, Taiwan.
Department of Agricultural Chemistry, National Taiwan University, No. 1, Section 4, Roosevelt Rd., Taipei 10617, Taiwan.
J Hazard Mater. 2025 Mar 15;486:136976. doi: 10.1016/j.jhazmat.2024.136976. Epub 2024 Dec 25.
Hexabromocyclododecane (HBCD) poses significant environmental risks, and identifying HBCD-degrading microbes and their enzymatic mechanisms is challenging due to the complexity of microbial interactions and metabolic pathways. This study aimed to identify critical genes involved in HBCD biodegradation through two approaches: functional annotation of metagenomes and the interpretation of machine learning-based prediction models. Our functional analysis revealed a rich metabolic potential in Chiang Chun soil (CCS) metagenomes, particularly in carbohydrate metabolism. Among the machine learning algorithms tested, random forest models outperformed others, especially when trained on datasets reflecting the degradation patterns of species like Dehalococcoides mccartyi and Pseudomonas aeruginosa. These models highlighted enzymes such as EC 1.8.3.2 (thiol oxidase) and EC 4.1.1.43 (phenylpyruvate decarboxylase) as inhibitors of degradation, while EC 2.7.1.83 (pseudouridine kinase) was linked to enhanced degradation. This dual-methodology approach not only deepens our understanding of microbial functions in HBCD degradation but also provides an unbiased view of the microbial and enzymatic interactions involved, offering a more targeted and effective bioremediation strategy.
六溴环十二烷(HBCD)带来了重大的环境风险,由于微生物相互作用和代谢途径的复杂性,鉴定降解HBCD的微生物及其酶促机制具有挑战性。本研究旨在通过两种方法鉴定参与HBCD生物降解的关键基因:宏基因组的功能注释和基于机器学习的预测模型的解读。我们的功能分析揭示了蒋村土壤(CCS)宏基因组中丰富的代谢潜力,特别是在碳水化合物代谢方面。在所测试的机器学习算法中,随机森林模型表现优于其他模型,尤其是在以反映麦氏嗜盐脱卤球菌和铜绿假单胞菌等物种降解模式的数据集进行训练时。这些模型强调了诸如EC 1.8.3.2(硫醇氧化酶)和EC 4.1.1.43(苯丙酮酸脱羧酶)等酶是降解的抑制剂,而EC 2.7.1.83(假尿苷激酶)与增强的降解有关。这种双方法学途径不仅加深了我们对微生物在HBCD降解中功能的理解,还提供了对所涉及的微生物和酶促相互作用的无偏见观点,为更有针对性和有效的生物修复策略提供了依据。