Machine learning based hybrid ensemble models for prediction of organic dyes photophysical properties: Absorption wavelengths, emission wavelengths, and quantum yields

Kapil Dev Mahato, S. S. G. Kumar Das, Chandrashekhar Azad, U. Kumar
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Abstract

Fluorescent organic dyes are extensively used in the design and discovery of new materials, photovoltaic cells, light sensors, imaging applications, medicinal chemistry, drug design, energy harvesting technologies, dye and pigment industries, and pharmaceutical industries, among other things. However, designing and synthesizing new fluorescent organic dyes with desirable properties for specific applications requires knowledge of the chemical and physical properties of previously studied molecules. It is a difficult task for experimentalists to identify the photophysical properties of the required chemical molecule at negligible time and financial cost. For this purpose, machine learning-based models are a highly demanding technique for estimating photophysical properties and may be an alternative approach to density functional theory. In this study, we used 15 single models and proposed three different hybrid models to assess a dataset of 3066 organic materials for predicting photophysical properties. The performance of these models was evaluated using three evaluation parameters: mean absolute error, root mean squared error, and the coefficient of determination (R2) on the test-size data. All the proposed hybrid models achieved the highest accuracy (R2) of 97.28%, 95.19%, and 74.01% for predicting the absorption wavelengths, emission wavelengths, and quantum yields, respectively. These resultant outcomes of the proposed hybrid models are ∼1.9%, ∼2.7%, and ∼2.4% higher than the recently reported best models’ values in the same dataset for absorption wavelengths, emission wavelengths, and quantum yields, respectively. This research promotes the quick and accurate production of new fluorescent organic dyes with desirable photophysical properties for specific applications.
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基于机器学习的混合集合模型用于预测有机染料的光物理特性:吸收波长、发射波长和量子产率
荧光有机染料被广泛应用于新材料的设计和发现、光伏电池、光传感器、成像应用、药物化学、药物设计、能量收集技术、染料和颜料工业以及制药工业等领域。然而,为特定应用设计和合成具有理想特性的新型荧光有机染料,需要了解以前研究过的分子的化学和物理特性。对于实验人员来说,在时间和经济成本均可忽略不计的情况下确定所需化学分子的光物理特性是一项艰巨的任务。为此,基于机器学习的模型是一种高要求的光物理特性估算技术,可以作为密度泛函理论的替代方法。在这项研究中,我们使用了 15 个单一模型,并提出了三种不同的混合模型,以评估 3066 种有机材料的数据集,从而预测光物理性质。这些模型的性能使用三个评估参数进行评估:平均绝对误差、均方根误差和测试规模数据的判定系数 (R2)。所有提出的混合模型在预测吸收波长、发射波长和量子产率方面的准确度(R2)分别达到最高的 97.28%、95.19% 和 74.01%。与最近报道的同一数据集吸收波长、发射波长和量子产率的最佳模型值相比,混合模型的结果分别高出 1.9%、2.7% 和 2.4%。这项研究有助于快速准确地生产出具有理想光物理性质的新型荧光有机染料,以满足特定应用的需要。
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