Sophia Li , Emma Wang , Leia Pei , Sourodeep Deb , Prashanth Prabhala , Sai Hruday Reddy Nara , Raina Panda , Shiven Eltepu , Marx Akl , Larry McMahan , Edward Njoo
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However, the screening of compounds and discovery of feasible drug candidates is limited due to its computational cost. Here, we present a machine learning approach to accelerate the prediction of DFT-calculated <sup>19</sup>F NMR chemical shifts. The fluorine atoms’ features in the models were derived from their local three-dimensional environments, representing their neighboring atoms within a radius of <em>n</em> Å away from the given fluorine atom in the compound. A comparative analysis of thirteen regression models was conducted using features extracted from 501 fluorinated compounds in our laboratory’s chemical inventory. Among the models, Gradient Boosting Regression (GBR) exhibited the highest performance, achieving a mean absolute error of 3.31 ppm with a local environment radius of 3 Å. This demonstrates a comparable accuracy to DFT calculations while reducing computational time from several hundred seconds to milliseconds. 3 Å was also found to be the most optimal radius across all models when encoding features for local atomic environments.</div></div>","PeriodicalId":72302,"journal":{"name":"Artificial intelligence chemistry","volume":"2 2","pages":"Article 100078"},"PeriodicalIF":0.0000,"publicationDate":"2024-10-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Evaluation of machine learning models for the accelerated prediction of density functional theory calculated 19F chemical shifts based on local atomic environments\",\"authors\":\"Sophia Li , Emma Wang , Leia Pei , Sourodeep Deb , Prashanth Prabhala , Sai Hruday Reddy Nara , Raina Panda , Shiven Eltepu , Marx Akl , Larry McMahan , Edward Njoo\",\"doi\":\"10.1016/j.aichem.2024.100078\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>The introduction of fluorine in compounds plays a crucial role in drug development as it greatly influences their final pharmacokinetic and dynamic properties. Due to the prevalence of fluorine in FDA-approved drugs in recent years, identifying the mechanisms driving their chemical transformations has become crucial in the drug discovery landscape. <sup>19</sup>F NMR spectroscopy is a powerful analytical technique that allows for the examination of fluorine-containing compounds, offering valuable information about their structure, dynamics, and reactivity. NMR spectra can be interpreted through the leveraging of Density Functional Theory (DFT). However, the screening of compounds and discovery of feasible drug candidates is limited due to its computational cost. Here, we present a machine learning approach to accelerate the prediction of DFT-calculated <sup>19</sup>F NMR chemical shifts. The fluorine atoms’ features in the models were derived from their local three-dimensional environments, representing their neighboring atoms within a radius of <em>n</em> Å away from the given fluorine atom in the compound. A comparative analysis of thirteen regression models was conducted using features extracted from 501 fluorinated compounds in our laboratory’s chemical inventory. Among the models, Gradient Boosting Regression (GBR) exhibited the highest performance, achieving a mean absolute error of 3.31 ppm with a local environment radius of 3 Å. 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引用次数: 0
摘要
氟在化合物中的引入在药物开发中起着至关重要的作用,因为它会极大地影响药物的最终药代动力学和动态特性。由于近年来氟在 FDA 批准药物中的普遍存在,确定其化学变化的驱动机制已成为药物发现领域的关键。19F NMR 光谱是一种功能强大的分析技术,可用于检查含氟化合物,提供有关其结构、动力学和反应性的宝贵信息。NMR 光谱可通过密度泛函理论 (DFT) 进行解释。然而,由于计算成本的原因,化合物的筛选和可行候选药物的发现受到了限制。在此,我们提出了一种机器学习方法来加速预测 DFT 计算的 19F NMR 化学位移。模型中氟原子的特征来自于它们的局部三维环境,代表化合物中与给定氟原子相距 n Å 半径范围内的相邻原子。利用从我们实验室化学库存中的 501 种含氟化合物中提取的特征,对 13 个回归模型进行了比较分析。在这些模型中,梯度提升回归模型(GBR)的性能最高,在局部环境半径为 3 Å 的情况下,平均绝对误差为 3.31 ppm。这表明其精度与 DFT 计算相当,同时将计算时间从几百秒缩短到了几毫秒。在对局部原子环境特征进行编码时,3 Å 也被认为是所有模型中最理想的半径。
Evaluation of machine learning models for the accelerated prediction of density functional theory calculated 19F chemical shifts based on local atomic environments
The introduction of fluorine in compounds plays a crucial role in drug development as it greatly influences their final pharmacokinetic and dynamic properties. Due to the prevalence of fluorine in FDA-approved drugs in recent years, identifying the mechanisms driving their chemical transformations has become crucial in the drug discovery landscape. 19F NMR spectroscopy is a powerful analytical technique that allows for the examination of fluorine-containing compounds, offering valuable information about their structure, dynamics, and reactivity. NMR spectra can be interpreted through the leveraging of Density Functional Theory (DFT). However, the screening of compounds and discovery of feasible drug candidates is limited due to its computational cost. Here, we present a machine learning approach to accelerate the prediction of DFT-calculated 19F NMR chemical shifts. The fluorine atoms’ features in the models were derived from their local three-dimensional environments, representing their neighboring atoms within a radius of n Å away from the given fluorine atom in the compound. A comparative analysis of thirteen regression models was conducted using features extracted from 501 fluorinated compounds in our laboratory’s chemical inventory. Among the models, Gradient Boosting Regression (GBR) exhibited the highest performance, achieving a mean absolute error of 3.31 ppm with a local environment radius of 3 Å. This demonstrates a comparable accuracy to DFT calculations while reducing computational time from several hundred seconds to milliseconds. 3 Å was also found to be the most optimal radius across all models when encoding features for local atomic environments.