有害空气污染物
Mercury(编程语言)
重金属
污染物
危险废物
人类健康
环境化学
生化工程
环境科学
背景(考古学)
污染
光诱导电子转移
荧光
镉
化学
纳米技术
计算机科学
废物管理
材料科学
电子转移
工程类
生物
生态学
光化学
医学
古生物学
环境卫生
有机化学
程序设计语言
物理
量子力学
作者
Tahir Rasheed,Muhammad Bilal,Faran Nabeel,Hafiz M.N. Iqbal,Chuanlong Li,Yongfeng Zhou
标识
DOI:10.1016/j.scitotenv.2017.09.126
摘要
The quest for industrial and biotechnological revolution has been contributed in increasing environmental contamination issues, worldwide. The controlled or uncontrolled release of hazardous pollutants from various industrial sectors is one of the key problems facing humanity. Among them, adverse influences of lead, cadmium, and mercury on human health are well known to cause many disorders like reproductive, neurological, endocrine system, and cardiovascular, etc. Besides their presence at lower concentrations, most of these toxic heavy metals are posing noteworthy toxicological concerns. In this context, notable efforts from various regulatory authorities, the increase in the concentration of these toxic heavy metals in the environment is of serious concern, so real-time monitoring is urgently required. This necessitates the exploration for novel and efficient probes for recognition of these toxic agents. Among various methodologies adopted for tailoring such probes, generally the methodologies, in which changes associated with spectral properties, are preferred for the deceptive ease in the recognition process. Accordingly, a promising modality has emerged in the form of radiometric and colorimetric monitoring of these toxic agents. Herein, we review fluorescent sensor based models and their potentialities to address the detection fate of hazardous pollutants for a cleaner environment. Second, recent advances regarding small molecule and rhodamine-based fluorescent sensors, radiometric and colorimetric probes are discussed. The information is also given on the photoinduced electron transfer (PET) mechanism, chelation enhancement fluorescence (CHEF) effect and spirocyclic ring opening mechanism.
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