代谢组学在化学品风险评价中的应用

常静, 潘一帆, 魏若瑾, 李济彤, 杨璐, 朱莉飞, 王会利. 代谢组学在化学品风险评价中的应用[J]. 生态毒理学报, 2020, 15(6): 1-9. doi: 10.7524/AJE.1673-5897.20191223001
引用本文: 常静, 潘一帆, 魏若瑾, 李济彤, 杨璐, 朱莉飞, 王会利. 代谢组学在化学品风险评价中的应用[J]. 生态毒理学报, 2020, 15(6): 1-9. doi: 10.7524/AJE.1673-5897.20191223001
Chang Jing, Pan Yifan, Wei Ruojin, Li Jitong, Yang Lu, Zhu Lifei, Wang Huili. Application of Metabolomics in Chemical Risk Assessment[J]. Asian Journal of Ecotoxicology, 2020, 15(6): 1-9. doi: 10.7524/AJE.1673-5897.20191223001
Citation: Chang Jing, Pan Yifan, Wei Ruojin, Li Jitong, Yang Lu, Zhu Lifei, Wang Huili. Application of Metabolomics in Chemical Risk Assessment[J]. Asian Journal of Ecotoxicology, 2020, 15(6): 1-9. doi: 10.7524/AJE.1673-5897.20191223001

代谢组学在化学品风险评价中的应用

    作者简介: 常静(1990-),女,博士研究生,研究方向为生态毒理学,E-mail:changjingforever@163.com
    通讯作者: 王会利, E-mail: huiliwang@rcees.ac.cn
  • 基金项目:

    国家自然科学基金资助项目(41807478);公益性行业(农业)科研专项(201503108)

  • 中图分类号: X171.5

Application of Metabolomics in Chemical Risk Assessment

    Corresponding author: Wang Huili, huiliwang@rcees.ac.cn
  • Fund Project:
  • 摘要: 随着化学品的数量日益增长,其潜在毒性对人类及环境中的非靶标生物造成了严重威胁。化学品风险评估的速度已经跟不上化学品的发展速度,急需根据现代毒理学技术的发展,对化学品风险评估方法进行丰富与发展。代谢组学作为系统生物学最下游的组学技术,是整体性研究生命体系功能变化的重要学科之一。基于代谢组学的毒理学评价方法不仅具有成本低、周期短和实验动物消耗少等特点,而且可以快速筛选出低剂量化学品早期暴露的生物标记物,揭示化学品毒性作用通路及机制。本文主要介绍了代谢组学的起源与发展、代谢组学技术应用于毒理学评价的优势、案例及前景展望。
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  • 收稿日期:  2019-12-23

代谢组学在化学品风险评价中的应用

    通讯作者: 王会利, E-mail: huiliwang@rcees.ac.cn
    作者简介: 常静(1990-),女,博士研究生,研究方向为生态毒理学,E-mail:changjingforever@163.com
  • 1. 中国科学院生态环境研究中心环境生物技术重点实验室, 北京 100085;
  • 2. 北京市水产科学研究所, 北京 100068
基金项目:

国家自然科学基金资助项目(41807478);公益性行业(农业)科研专项(201503108)

摘要: 随着化学品的数量日益增长,其潜在毒性对人类及环境中的非靶标生物造成了严重威胁。化学品风险评估的速度已经跟不上化学品的发展速度,急需根据现代毒理学技术的发展,对化学品风险评估方法进行丰富与发展。代谢组学作为系统生物学最下游的组学技术,是整体性研究生命体系功能变化的重要学科之一。基于代谢组学的毒理学评价方法不仅具有成本低、周期短和实验动物消耗少等特点,而且可以快速筛选出低剂量化学品早期暴露的生物标记物,揭示化学品毒性作用通路及机制。本文主要介绍了代谢组学的起源与发展、代谢组学技术应用于毒理学评价的优势、案例及前景展望。

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