有机荧光材料的机器学习

IF 13.7 Q1 CHEMISTRY, MULTIDISCIPLINARY
Jiamin Zhong, Wei Zhu, Shoutao Shen, Nan Zhou, Meiyang Xi, Kui Du, Dong Wang, Ben Zhong Tang
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引用次数: 0

摘要

有机荧光材料(OFMs)以其独特的分子结构和优异的光学性能,在生物成像、传感器和显示技术等领域显示出巨大的应用潜力。然而,传统的ofm设计依赖于化学家的直觉和经验,再加上荧光检测和密度泛函理论(DFT)计算等传统方法的高成本和缺乏可扩展性,使其难以跟上该领域的快速发展。机器学习(ML)的出现带来了变革性的可能性,使数据驱动的分子结构和荧光特性之间复杂关系的探索成为可能。本文回顾了机器学习在OFM创新设计中的应用,重点介绍了建模、光学特性预测和OFM设计的工作流程。我们还讨论了数据管理和特征工程在提高模型性能方面的关键作用。我们的综述提供了常用模型的概述,并评估了它们的功效。我们批判性地研究了数据库构建、模型可解释性和泛化能力等关键挑战,试图提供一个全面的框架,推动机器学习在有机荧光材料研究中的整合,从而促进下一代材料的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning for Organic Fluorescent Materials

Machine Learning for Organic Fluorescent Materials

Organic fluorescent materials (OFMs), characterized by their unique molecular structures and exceptional optical properties, have demonstrated significant potential in diverse applications such as bioimaging, sensors, and display technologies. Nevertheless, the reliance on chemists' intuition and experience in the traditional design of OFMs, coupled with the high cost and lack of scalability of conventional methods such as fluorescence detection and Density Functional Theory (DFT) calculations, makes it difficult to keep up with the rapid development of the field. The advent of machine learning (ML) has introduced transformative possibilities, enabling data-driven exploration of the intricate relationships between molecular structures and fluorescence properties. Herein, we review the applications of ML in the innovative design of OFMs with an emphasis on the workflow of modeling, optical property prediction, and OFM design. We also discuss the critical role of data curation and feature engineering in enhancing model performance. Our review provides an overview of commonly used models and assesses their efficacy. We critically examine key challenges such as database construction, model interpretability, and generalization ability, trying to provide a comprehensive framework that advances the integration of ML in the research of organic fluorescent materials, thereby facilitating the development of next-generation materials.

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CiteScore
17.40
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