通过相似性分析和文库枚举设计苯并呋喃基光电探测器单体

IF 1.9 4区 化学 Q2 CHEMISTRY, ORGANIC
Muhammad Saqib, Tayyaba Mubashir, Mudassir Hussain Tahir, Muqadas Javed, Asima Hameed, Asad Aziz, Shaban R. M. Sayed, Hosam O. El-ansary
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引用次数: 0

摘要

有机分子在材料科学、化学和生物医学等领域得到了广泛的应用。传统上,有机分子的设计是通过实验方法实现的,在概念见解、直觉和经验的指导下。尽管这些实验方法已经成功地用于揭示各种高性能材料,但由于巨大的设计空间和对有机分子(新材料)不断增长的需求,这些方法显示出严重的局限性。人工智能与计算机科学被现代研究人员用于设计性能更好的材料和预测新材料的性能。在这里,以苯并呋喃为基础的构建块作为标准分子来寻找新的构建块。相似性分析是基于化学结构的相似性来筛选/搜索光电探测器的潜在候选物。扩展连接指纹(ECFPs)用于相似度分析。列举了唯一单体的虚拟库。打破回溯合成有趣化学子结构(BRICS)方法也被用于通过自动分解和组合枚举库中的单体来设计构建块。此外,这项工作提供了一种潜在的方法,可以经济有效地快速识别用于光电探测器的新单体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Designing of benzofuran-based monomers for photodetectors through similarity analysis and library enumeration

Designing of benzofuran-based monomers for photodetectors through similarity analysis and library enumeration

Organic molecules have been extensively utilized in various applications including materials science, chemical, and biomedical fields. Traditionally, the design of organic molecules is achieved through experimental approaches, guided by conceptual insights, intuition, and experience. Although these experimental approaches have been successfully utilized to unveil various high-performance materials, these methods show serious limitations due to vast design space and the ever-increasing demand for organic molecules (new materials). Artificial intelligence with computer science is used by modern researchers to design materials with better performance and for predicting the properties of new materials. Herein, benzofuran-based building blocks are used as a standard molecule to search for new building blocks. Similarity analysis is performed to screen/search potential candidates for photodetectors based on the chemical structural similarity. Extended-connectivity fingerprints (ECFPs) are used for the similarity analysis. The virtual libraries of unique monomers are enumerated. The breaking retro-synthetically interesting chemical substructures (BRICS) method is also used to design building blocks by automatically decomposing and combining monomers in enumerated libraries. Moreover, this work offers a potential way to identify new monomers for photodetectors cost-effectively and rapidly.

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来源期刊
CiteScore
3.60
自引率
11.10%
发文量
161
审稿时长
2.3 months
期刊介绍: The Journal of Physical Organic Chemistry is the foremost international journal devoted to the relationship between molecular structure and chemical reactivity in organic systems. It publishes Research Articles, Reviews and Mini Reviews based on research striving to understand the principles governing chemical structures in relation to activity and transformation with physical and mathematical rigor, using results derived from experimental and computational methods. Physical Organic Chemistry is a central and fundamental field with multiple applications in fields such as molecular recognition, supramolecular chemistry, catalysis, photochemistry, biological and material sciences, nanotechnology and surface science.
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