预训练的Mol2Vec嵌入作为预测聚合物性质的工具

IF 4.1 2区 化学 Q2 POLYMER SCIENCE
Ivan Zlobin, Nikita Toroptsev, Gleb Averochkin, Alexander Pavlov
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引用次数: 0

摘要

在合成前对聚合物性质进行机器学习辅助预测,有可能显著加速新聚合物材料的发现和开发。迄今为止,已经实现了几种方法来表示机器学习模型中的化学结构,其中Mol2Vec嵌入自2018年引入以来在化学信息学界引起了相当大的关注。然而,对于小型数据集,使用化学结构表示通常会增加输入数据集的维数,从而导致模型性能下降。此外,聚合物化学结构的有限多样性阻碍了可靠嵌入的训练,需要复杂的特定任务架构实现。为了解决这些挑战,我们研究了Mol2Vec预训练嵌入在获得聚合物矢量化表示方面的有效性。本研究评估了将Mol2Vec化合物向量纳入输入特征对依赖于214种聚合物物理性质的模型有效性的影响。这些结果有望突出通过结合预训练的嵌入来提高聚合物研究预测准确性的潜力,或者在处理中等规模的聚合物数据库时促进它们的利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pre-trained Mol2Vec Embeddings as a Tool for Predicting Polymer Properties

Machine learning-assisted prediction of polymer properties prior to synthesis has the potential to significantly accelerate the discovery and development of new polymer materials. To date, several approaches have been implemented to represent the chemical structure in machine learning models, among which Mol2Vec embeddings have attracted considerable attention in the cheminformatics community since their introduction in 2018. However, for small datasets, the use of chemical structure representations typically increases the dimensionality of the input dataset, resulting in a decrease in model performance. Furthermore, the limited diversity of polymer chemical structures hinders the training of reliable embeddings, necessitating complex task-specific architecture implementations. To address these challenges, we examined the efficacy of Mol2Vec pre-trained embeddings in deriving vectorized representations of polymers. This study assesses the impact of incorporating Mol2Vec compound vectors into the input features on the efficacy of a model reliant on the physical properties of 214 polymers. The results will hopefully highlight the potential for improving prediction accuracy in polymer studies by incorporating pre-trained embeddings or promote their utilization when dealing with modestly sized polymer databases.

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来源期刊
Chinese Journal of Polymer Science
Chinese Journal of Polymer Science 化学-高分子科学
CiteScore
7.10
自引率
11.60%
发文量
218
审稿时长
6.0 months
期刊介绍: Chinese Journal of Polymer Science (CJPS) is a monthly journal published in English and sponsored by the Chinese Chemical Society and the Institute of Chemistry, Chinese Academy of Sciences. CJPS is edited by a distinguished Editorial Board headed by Professor Qi-Feng Zhou and supported by an International Advisory Board in which many famous active polymer scientists all over the world are included. The journal was first published in 1983 under the title Polymer Communications and has the current name since 1985. CJPS is a peer-reviewed journal dedicated to the timely publication of original research ideas and results in the field of polymer science. The issues may carry regular papers, rapid communications and notes as well as feature articles. As a leading polymer journal in China published in English, CJPS reflects the new achievements obtained in various laboratories of China, CJPS also includes papers submitted by scientists of different countries and regions outside of China, reflecting the international nature of the journal.
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