Chemical applications of neural networks: aromaticity of pyrimidine derivatives‡

文献信息

发布日期 2011-08-30
DOI 10.1039/C1CP22001B
影响因子 3.676
作者

Mercedes Alonso, Carlos Miranda, Nazario Martín, Bernardo Herradón


查看原文

摘要

Neural networks are computational tools able to apprehend non-linear relationships between different parameters, having the capacity to order a large amount of input data and transform them into a graphical pattern of output data. We have previously reported their use for the quantification of the aromaticity through the Euclidean distance between neurons. In this article, we apply the method to a variety of pyrimidine derivatives with electron-donor and electron-withdrawing groups as substituents, with capacity to produce push–pull compounds. We have calculated the aromaticity of benzene (as a reference molecule), parent pyrimidine and other 11 pyrimidine derivatives having amino, dimethylamino and tricyanovinyl substitution. The neural network has been generated using ASE, Λ, NICSzz(1) and HOMA as aromaticity descriptors, since our previous work showed that the combination of these indices provided the best performance of the network. On studying the influence of the substituent on the aromaticity of the molecule, we have found that, opposite to benzene derivatives, all the substituents decrease the aromaticity of the ring. The interplay between aromaticity, planarity and push–pull properties of all the substituted pyrimidines has also been addressed. An interesting feature of the neural network to quantify aromaticity is that the importance of the reference reaction used to evaluate energy stabilization and magnetic susceptibility exaltation is minimized.

相关文献

Regioselective ortho-functionalization of bromofluorenecarbaldehydes using TMPMgCl·LiCl

Dominik Göbel, Nils Clamor, Boris J. Nachtsheim

2018-05-15 Communication

DOI: 10.1039/C8OB01072B

Hydroxyl group-directed, tartaric acid-catalyzed synthesis of meta-functionalized aryl ethers and phenols through domino conjugate addition/aromatization of para-quinols

Guo-Shu Chen, Jia-Hui Li, Shu-Jie Chen, Wen-Xia Lin, Hai Ren, Dong-Sheng Deng, Yun-Lin Liu

2021-10-02 Research Article

DOI: 10.1039/D1QO01078F

Regioselective synthesis and biological evaluation of N-substituted 2-aminoquinazolin-4-ones

Zhen-Yuan Liao, Wen-Hsiung Yeh, Pen-Yuan Liao, Yu-Ting Liu, Ying-Cheng Chen, Yi-Hung Chen, Tsung-Han Hsieh, Chia-Chi Lin, Ming-Hsuan Lu, Yi-Song Chen, Ming-Chih Hsu, Tsai-Kun Li, Tun-Cheng Chien

2018-04-27 Paper

DOI: 10.1039/C8OB00624E

A mild electroassisted synthesis of (hetero)arylphosphonates

Stéphane Sengmany, Anthony Ollivier, Erwan Le Gall, Eric Léonel

2018-06-01 Paper

DOI: 10.1039/C8OB00500A

In situ phosphonium-containing Lewis base-catalyzed 1,6-cyanation reaction: a facile way to obtain α-diaryl and α-triaryl acetonitriles

Yuan Chen, Xiaoyu Ren, Yumeng Guo, Bing Yi, Hongkui Zhang, Guowei Gao, Tianli Wang

2021-11-11 Research Article

DOI: 10.1039/D1QO01501J

Three decades of unveiling the complex chemistry of C-nitroso species with computational chemistry

Pauline Bianchi, Jean-Christophe M. Monbaliu

2021-11-09 Review Article

DOI: 10.1039/D1QO01415C

Unexpected cyclization of 2-(2-aminophenyl)indoles with nitroalkenes to furnish indolo[3,2-c]quinolines

Alexander V. Aksenov, Dmitrii A. Aksenov, Nicolai A. Aksenov, Leonid G. Voskressensky

2018-05-22 Paper

DOI: 10.1039/C8OB00588E

Building of neomycin–nucleobase–amino acid conjugates for the inhibition of oncogenic miRNAs biogenesis

Duc Duy Vo, Cécile Becquart, Thi Phuong Anh Tran, Audrey Di Giorgio, Fabien Darfeuille, Cathy Staedel, Maria Duca

2018-08-13 Paper

DOI: 10.1039/C8OB01858H

Back cover

Cover

DOI: 10.1039/C8OB90087F

您可能还喜欢

化合物问答

如何处理含有8-氯咪唑并[1,2-A]吡嗪(CAS号:69214-33-1)的废料?

处理含有8-氯咪唑并[1,2-A]吡嗪的废料时,应首先将其收集并进行化学回收或降解。如果无法回收,需采用安全的化学处理方法,如中和、氧化还原或沉淀。处理过程中需...

69214-33-18-chloroimidazo[1,2-...
化合物问答

Calhex 231 hydrochloride(CAS号:2387505-78-2)适用哪些法规指南?

Calhex 231 hydrochloride 需要遵循《全球化学品统一分类和标签制度》(GHS)的分类和标签要求,以及欧盟的《化学品注册、评估、授权和限制条...

2387505-78-24-Chloro-N-[(1S,2S)-...
化合物问答

11-Beta,17-alpha,21-三羟基-5-beta-孕烯-3,20-二酮(CAS号:1482-50-4)的物理化学性质是什么?

11-Beta,17-alpha,21-三羟基-5-beta-孕烯-3,20-二酮是一种无色结晶性粉末,分子量为372.45 g/mol。该化合物在水中的溶解度...

1482-50-45β-Dihydrocortisol
化合物问答

处理5-异丙基-1,3,4-恶二唑-2-羧酸(CAS号:944907-13-5)时应注意哪些实验室安全事项?

处理5-异丙基-1,3,4-恶二唑-2-羧酸时应注意以下安全事项:穿戴适当的个人防护装备,包括实验室外套、手套和护目镜;操作应在通风橱中进行,以减少吸入或接触有...

944907-13-55-Isopropyl-1,3,4-ox...
化合物问答

benzyl 3-bromopropanoate(CAS号:90841-55-7)安全吗?

Benzyl 3-bromopropanoate属于有毒物质,吸入、摄入或皮肤接触均可能对人体造成伤害。操作时应佩戴防护眼镜、口罩和手套,避免吸入蒸汽和直接接触...

90841-55-7Benzyl 3-bromopropan...
化合物问答

什么是(R)-N-苄氧羰基-3,4-二氢-1H-异喹啉羧酸(CAS号:151004-88-5)?

(R)-N-苄氧羰基-3,4-二氢-1H-异喹啉羧酸是一种含有苄氧羰基和异喹啉环结构的化合物,分子式为C17H15NO3。它是一种有机化合物,具有一定的生物活性...

151004-88-5(1R)-2-[(Benzyloxy)c...
化合物问答

在合成中是否有1-苄基吡啶嗡-3-羧酸盐(CAS号:15990-43-9)的替代品?

可以考虑使用1-苄基吡啶-3-羧酸盐作为1-苄基吡啶嗡-3-羧酸盐的替代品。此外,还可以探索其他类似物,如1-苄基吡啶-3-氨基甲酸酯等。具体的替代品选择需根据...

15990-43-91-Benzyl-3-pyridiniu...
化合物问答

(2,6-二甲基吡啶-3-基)甲醇(CAS号:582303-10-4)安全吗?

(2,6-二甲基吡啶-3-基)甲醇在使用时需注意安全,应避免吸入其蒸汽,接触皮肤和眼睛。操作应在通风良好的环境中进行,佩戴适当的个人防护装备。

582303-10-4(2,6-Dimethyl-3-pyri...
化合物问答

5-溴-2-乙烯基吡啶(CAS号:226883-52-9)的物理化学性质是什么?

5-溴-2-乙烯基吡啶是一种有机化合物,外观为白色固体,具有良好的结晶性。分子量约为190.03 g/mol。它的溶解性在水中较差,但在有机溶剂如二氯甲烷、甲醇...

226883-52-95-Bromo-2-vinylpyrid...
化合物问答

2-羟基-3-硝基-5-甲基吡啶(CAS号:7464-14-4)应用于哪些行业?

2-羟基-3-硝基-5-甲基吡啶主要应用于医药、聚合物和半导体行业。在医药领域,它可以用作合成其他药物的中间体。在聚合物领域,它可以作为功能性单体参与聚合反应,...

7464-14-45-Methyl-3-nitro-2(1...

来源期刊

Physical Chemistry Chemical Physics

Physical Chemistry Chemical Physics
CiteScore: 5.5
自引率: 10.3%
年发文量: 3036

Physical Chemistry Chemical Physics (PCCP) is an international journal co-owned by 19 physical chemistry and physics societies from around the world. This journal publishes original, cutting-edge research in physical chemistry, chemical physics and biophysical chemistry. To be suitable for publication in PCCP, articles must include significant innovation and/or insight into physical chemistry; this is the most important criterion that reviewers and Editors will judge against when evaluating submissions. The journal has a broad scope and welcomes contributions spanning experiment, theory, computation and data science. Topical coverage includes spectroscopy, dynamics, kinetics, statistical mechanics, thermodynamics, electrochemistry, catalysis, surface science, quantum mechanics, quantum computing and machine learning. Interdisciplinary research areas such as polymers and soft matter, materials, nanoscience, energy, surfaces/interfaces, and biophysical chemistry are welcomed if they demonstrate significant innovation and/or insight into physical chemistry. Joined experimental/theoretical studies are particularly appreciated when complementary and based on up-to-date approaches.

推荐化合物

推荐供应商

免责声明
本页面提供的学术期刊信息仅供参考和研究使用。我们与任何期刊出版商均无关联,也不处理投稿事宜。如有投稿相关咨询,请直接联系相关期刊出版商。
如发现页面信息有误,请发送邮件至 support@chemtradehub.com 联系我们。我们将及时核实并处理您的问题。