Distortion/interaction analysis via machine learning

被引:2
|
作者
Espley, Samuel G. [1 ]
Allsop, Samuel S. [1 ]
Buttar, David [2 ]
Tomasi, Simone [3 ]
Grayson, Matthew N. [1 ]
机构
[1] Univ Bath, Dept Chem, Bath BA2 7AY, England
[2] AstraZeneca, Data Sci & Modelling, Pharmaceut Sci, R&D, Macclesfield, England
[3] AstraZeneca, Chem Dev, Pharmaceut Technol & Dev, Operat, Macclesfield, England
来源
基金
英国工程与自然科学研究理事会;
关键词
DIELS-ALDER REACTIONS; REACTION BARRIERS; CYCLOADDITIONS; CYCLOALKENONES; SELECTIVITIES; REACTIVITIES; CHEMISTRY; ORIGINS;
D O I
10.1039/d4dd00224e
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Machine learning (ML) models have provided a highly efficient pathway to quantum mechanical accurate reaction barrier predictions. Previous approaches have, however, stopped at prediction of these barriers instead of developing predictive capabilities in reactivity analysis tasks such as distortion/interaction-activation strain analysis. Such methods can provide insight into reactivity trends and ultimately guide rational reaction design. In this work we present the novel application of ML to the rapid and accurate prediction of distortion and interaction DFT energies across four datasets (three existing and one new dataset). We also show how our models can accurately predict on unseen, high impact literature examples where DFT-level distortion/interaction analysis has previously been used to explain reactivity trends for cycloadditions. This work thus provides support for ML to be utilised further in reactivity analysis across different reaction classes at a fraction of the cost of traditional methods such as DFT.
引用
收藏
页数:8
相关论文
共 50 条
  • [41] Parametric model order reduction by machine learning for fluid–structure interaction analysis
    SiHun Lee
    Kijoo Jang
    Sangmin Lee
    Haeseong Cho
    SangJoon Shin
    Engineering with Computers, 2024, 40 : 45 - 60
  • [42] Gas Detection via Machine Learning
    Khalaf, Walaa
    Pace, Calogero
    Gaudioso, Manlio
    PROCEEDINGS OF WORLD ACADEMY OF SCIENCE, ENGINEERING AND TECHNOLOGY, VOL 27, 2008, 27 : 139 - 143
  • [43] Explainable Machine Learning via Argumentation
    Prentzas, Nicoletta
    Pattichis, Constantinos
    Kakas, Antonis
    EXPLAINABLE ARTIFICIAL INTELLIGENCE, XAI 2023, PT III, 2023, 1903 : 371 - 398
  • [44] Mechanism design via machine learning
    Balcan, MF
    Blum, A
    Hartline, JD
    Mansour, Y
    46TH ANNUAL IEEE SYMPOSIUM ON FOUNDATIONS OF COMPUTER SCIENCE, PROCEEDINGS, 2005, : 605 - 614
  • [45] Discovering invariants via machine learning
    Ha, Seungwoong
    Jeong, Hawoong
    PHYSICAL REVIEW RESEARCH, 2021, 3 (.4):
  • [46] Machine learning via multiresolution approximation
    Blayvas, I
    Kimmel, R
    IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2003, E86D (07) : 1172 - 1180
  • [47] Uncovering contaminants via machine learning
    McCardle, Kaitlin
    NATURE COMPUTATIONAL SCIENCE, 2023, 3 (1): : 4 - 4
  • [48] Uncovering contaminants via machine learning
    Kaitlin McCardle
    Nature Computational Science, 2023, 3 : 4 - 4
  • [49] Harmonic Distortion Analysis via Perturbation Methods
    Odame, K.
    Hasler, P. E.
    2008 51ST MIDWEST SYMPOSIUM ON CIRCUITS AND SYSTEMS, VOLS 1 AND 2, 2008, : 554 - 557
  • [50] Nonlinear distortion analysis via perturbation method
    Buonomo, Antonio
    Lo Schiavo, Alessandro
    INTERNATIONAL JOURNAL OF CIRCUIT THEORY AND APPLICATIONS, 2010, 38 (05) : 515 - 526