Metal-Organic Framework Stability in Water and Harsh Environments from Data-Driven Models Trained on the Diverse WS24 Data Set.

IF 14.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Journal of the American Chemical Society Pub Date : 2024-07-24 Epub Date: 2024-07-10 DOI:10.1021/jacs.4c05879
Gianmarco G Terrones, Shih-Peng Huang, Matthew P Rivera, Shuwen Yue, Alondra Hernandez, Heather J Kulik
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Abstract

Metal-organic frameworks (MOFs) are porous materials with applications in gas separations and catalysis, but a lack of water stability often limits their practical use given the ubiquity of water. Consequently, it is useful to predict whether a MOF is water-stable before investing time and resources into synthesis. Existing heuristics for designing water-stable MOFs lack generality and limit the diversity of explored chemistry due to narrowly defined criteria. Machine learning (ML) models offer the promise to improve the generality of predictions but require data. In an improvement on previous efforts, we enlarge the available training data for MOF water stability prediction by over 400%, adding 911 MOFs with water stability labels assigned through semiautomated manuscript analysis to curate the new data set WS24. The additional data are shown to improve ML model performance (test ROC-AUC > 0.8) over diverse chemistry for the prediction of both water stability and stability in harsher acidic conditions. We illustrate how the expanded data set and models can be used with a previously developed activation stability model in combination with genetic algorithms to quickly screen ∼10,000 MOFs from a space of hundreds of thousands for candidates with multivariate stability (upon activation, in water, and in acid). We uncover metal- and geometry-specific design rules for robust MOFs. The data set and ML models developed in this work, which we disseminate through an easy-to-use web interface, are expected to contribute toward the accelerated discovery of novel, water-stable MOFs for applications such as direct air gas capture and water treatment.

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通过在多样化的 WS24 数据集上训练的数据驱动模型分析金属有机框架在水和恶劣环境中的稳定性。
金属有机框架(MOFs)是一种多孔材料,可用于气体分离和催化,但由于水无处不在,缺乏水稳定性往往限制了其实际应用。因此,在投入时间和资源进行合成之前,预测 MOF 是否具有水稳定性是非常有用的。现有的用于设计水稳定性 MOF 的启发式方法缺乏通用性,并且由于定义标准狭窄,限制了所探索化学的多样性。机器学习(ML)模型有望提高预测的通用性,但需要数据。为了改进以往的工作,我们将用于 MOF 水稳定性预测的可用训练数据扩大了 400% 以上,增加了 911 个通过半自动手稿分析分配了水稳定性标签的 MOF,从而形成了新的数据集 WS24。在预测水稳定性和在更苛刻酸性条件下的稳定性时,额外的数据显示比各种化学物质提高了 ML 模型的性能(测试 ROC-AUC > 0.8)。我们说明了如何将扩展的数据集和模型与之前开发的活化稳定性模型结合使用,并结合遗传算法,从数十万个候选MOF中快速筛选出10,000个具有多元稳定性(活化时、水中和酸中)的候选MOF。我们发现了针对金属和几何形状的稳健 MOFs 设计规则。这项工作中开发的数据集和 ML 模型通过一个易于使用的网络接口进行传播,预计将有助于加速发现新型水稳定 MOFs,并将其应用于空气气体直接捕获和水处理等领域。
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来源期刊
CiteScore
24.40
自引率
6.00%
发文量
2398
审稿时长
1.6 months
期刊介绍: The flagship journal of the American Chemical Society, known as the Journal of the American Chemical Society (JACS), has been a prestigious publication since its establishment in 1879. It holds a preeminent position in the field of chemistry and related interdisciplinary sciences. JACS is committed to disseminating cutting-edge research papers, covering a wide range of topics, and encompasses approximately 19,000 pages of Articles, Communications, and Perspectives annually. With a weekly publication frequency, JACS plays a vital role in advancing the field of chemistry by providing essential research.
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