Revealing Chemical Trends: Insights from Data-Driven Visualization and Patent Analysis in Exposomics Research

IF 8.9 2区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Environmental Science & Technology Letters Environ. Pub Date : 2024-08-30 DOI:10.1021/acs.estlett.4c0056010.1021/acs.estlett.4c00560
Dagny Aurich*, Emma L. Schymanski*, Flavio de Jesus Matias, Paul A. Thiessen and Jun Pang, 
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Abstract

Understanding historical chemical usage is crucial for assessing current and past impacts on human health and the environment and for informing future regulatory decisions. However, past monitoring data are often limited in scope and number of chemicals, while suitable sample types are not always available for remeasurement. Data-driven cheminformatics methods for patent and literature data offer several opportunities to fill this gap. The chemical stripes were developed as an interactive, open source tool for visualizing patent and literature trends over time, inspired by the global warming and biodiversity stripes. This paper details the underlying code and data sets behind the visualization, with a major focus on the patent data sourced from PubChem, including patent origins, uses, and countries. Overall trends and specific examples are investigated in greater detail to explore both the promise and caveats that such data offer in assessing the trends and patterns of chemical patents over time and across different geographic regions. Despite a number of potential artifacts associated with patent data extraction, the integration of cheminformatics, statistical analysis, and data visualization tools can help generate valuable insights that can both illuminate the chemical past and potentially serve toward an early warning system for the future.

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揭示化学趋势:Exposomics 研究中数据驱动的可视化和专利分析的启示
了解化学品的历史使用情况对于评估当前和过去对人类健康和环境的影响以及为未来的监管决策提供信息至关重要。然而,过去的监测数据通常在范围和化学品数量上都很有限,而合适的样本类型也并非总能用于重新测量。针对专利和文献数据的数据驱动化学信息学方法为填补这一空白提供了多种机会。受全球变暖和生物多样性条纹的启发,化学条纹被开发成一种可视化专利和文献随时间变化趋势的交互式开源工具。本文详细介绍了可视化背后的底层代码和数据集,重点是来自 PubChem 的专利数据,包括专利来源、用途和国家。本文对总体趋势和具体实例进行了更详细的研究,以探讨此类数据在评估不同时期和不同地理区域的化学专利趋势和模式方面的前景和注意事项。尽管专利数据提取存在一些潜在的人为因素,但化学信息学、统计分析和数据可视化工具的整合有助于产生有价值的见解,既能阐明化学的过去,又有可能成为未来的预警系统。
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来源期刊
Environmental Science & Technology Letters Environ.
Environmental Science & Technology Letters Environ. ENGINEERING, ENVIRONMENTALENVIRONMENTAL SC-ENVIRONMENTAL SCIENCES
CiteScore
17.90
自引率
3.70%
发文量
163
期刊介绍: Environmental Science & Technology Letters serves as an international forum for brief communications on experimental or theoretical results of exceptional timeliness in all aspects of environmental science, both pure and applied. Published as soon as accepted, these communications are summarized in monthly issues. Additionally, the journal features short reviews on emerging topics in environmental science and technology.
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