生物修复
污染物
BTEX公司
环境修复
环境科学
石油
环境化学
生态毒性
石油产品
废物管理
污染
二甲苯
化学
甲苯
毒性
生态学
生物
工程类
有机化学
作者
Prabhakar Mishra,Neelakanta Sarvashiva Kiran,Luiz Fernando Romanholo Ferreira,Krishna Kumar Yadav,Sikandar I. Mulla
出处
期刊:Chemosphere
[Elsevier BV]
日期:2023-06-01
卷期号:326: 138391-138391
被引量:10
标识
DOI:10.1016/j.chemosphere.2023.138391
摘要
Petroleum product is an essential resource for energy, that has been exploited by wide range of industries and regular life. A carbonaceous contamination of marine and terrestrial environments caused by errant runoffs of consequential petroleum-derived contaminants. Additionally, petroleum hydrocarbons can have adverse effects on human health and global ecosystems and also have negative demographic consequences in petroleum industries. Key contaminants of petroleum products, primarily includes aliphatic hydrocarbons, benzene, toluene, ethylbenzene, and xylene (BTEX), polycyclic aromatic hydrocarbons (PAHs), resins, and asphaltenes. On environmental interaction, these pollutants result in ecotoxicity as well as human toxicity. Oxidative stress, mitochondrial damage, DNA mutations, and protein dysfunction are a few key causative mechanisms behind the toxic impacts. Henceforth, it becomes very evident to have certain remedial strategies which could help on eliminating these xenobiotics from the environment. This brings the efficacious application of bioremediation to remove or degrade pollutants from the ecosystems. In the recent scenario, extensive research and experimentation have been implemented towards bio-benign remediation of these petroleum-based pollutants, aiming to reduce the load of these toxic molecules in the environment. This review gives a detailed overview of petroleum pollutants, and their toxicity. Methods used for degrading them in the environment using microbes, periphytes, phyto-microbial interactions, genetically modified organisms, and nano-microbial remediation. All of these methods could have a significant impact on environmental management.
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