Combining machine learning and high-throughput experimentation to discover photocatalytically active organic molecules

被引:62
|
作者
Li, Xiaobo [1 ]
Maffettone, Phillip M. [1 ,2 ]
Che, Yu [1 ,3 ]
Liu, Tao [1 ]
Chen, Linjiang [1 ,3 ]
Cooper, Andrew I. [1 ,3 ]
机构
[1] Univ Liverpool, Dept Chem & Mat Innovat Factory, 51 Oxford St, Liverpool L7 3NY, Merseyside, England
[2] Brookhaven Natl Lab, Natl Synchrotron Light Source 2, Upton, NY 11973 USA
[3] Univ Liverpool, Leverhulme Res Ctr Funct Mat Design, Mat Innovat Factory & Dept Chem, 51 Oxford St, Liverpool L7 3NY, Merseyside, England
基金
英国工程与自然科学研究理事会;
关键词
HYDROGEN-PRODUCTION; VISIBLE-LIGHT; CO2; REDUCTION; PHOTOSENSITIZERS; SYSTEMS; DESIGN; WATER; DYES; TEMPERATURE; FRAMEWORKS;
D O I
10.1039/d1sc02150h
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Light-absorbing organic molecules are useful components in photocatalysts, but it is difficult to formulate reliable structure-property design rules. More than 100 million unique chemical compounds are documented in the PubChem database, and a significant sub-set of these are pi-conjugated, light-absorbing molecules that might in principle act as photocatalysts. Nature has used natural selection to evolve photosynthetic assemblies; by contrast, our ability to navigate the enormous potential search space of organic photocatalysts in the laboratory is limited. Here, we integrate experiment, computation, and machine learning to address this challenge. A library of 572 aromatic organic molecules was assembled with diverse compositions and structures, selected on the basis of availability in our laboratory, rather than more sophisticated criteria. This training library was then assessed experimentally for sacrificial photocatalytic hydrogen evolution using a high-throughput, automated method. Quantum chemical calculations and machine learning were used to visualise, interpret, and ultimately to predict the photocatalytic activities of these molecules, covering a much broader chemical space than for previous polymer photocatalyst libraries. By applying unsupervised learning to the molecular structures, we identified structural features that were common in molecules with high catalytic activity. Further analysis using calculated molecular descriptors within a suite of supervised classification algorithms revealed that light absorption, exciton electron affinity, electron affinity, exciton binding energy, and singlet-triplet energy gap had correlations with the photocatalytic performance. These trained predictive models can be used in future studies as filters to deprioritise or discard would-be low-activity candidate molecules from experiments, and to prioritize more favourable candidates. As a demonstration, we used virtual in silico experiments to show that it was possible to halve the experimental cost of finding 50% of the most active photocatalysts by using the machine learning model as an experimental advisor. We further showed that the ML advisor trained on the 572-molecule library could be used to make predictions for an unseen set of 96 molecules, achieving equivalent predictive accuracies to those in the initial training set. This marks a step toward the machine-learning assisted discovery of molecular organic photocatalysts and the approach might also be applied to problems beyond photocatalytic hydrogen evolution, such as CO2 reduction and photoredox chemistry.
引用
收藏
页码:10742 / 10754
页数:13
相关论文
共 50 条
  • [41] Mixing in unbaffled high-throughput experimentation reactors
    Hall, JF
    Barigou, M
    Simmons, MJH
    Stitt, EH
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2004, 43 (15) : 4149 - 4158
  • [42] Myths of high-throughput experimentation and automation in chemistry
    Gaunt, Matthew J.
    Janey, Jacob M.
    Schultz, Danielle M.
    Cernak, Tim
    CHEM, 2021, 7 (09): : 2259 - 2260
  • [43] Bringing high-throughput experimentation to bear on catalysis
    Strehlau, W.
    Maier, W.F.
    Chemie-Ingenieur-Technik, 2003, 75 (08) : 1047 - 1048
  • [44] High-throughput experimentation qualifies commercial catalyst
    Lorenz, Enrico
    Zimmermann, Tobias
    Higelin, Alexander
    Dahlinger, Moritz
    Haertlé, Joachim
    Govender, Nilenindran S.
    Teli, Sachin
    Almathami, Abdulaziz A.
    Chemical Processing, 2021, 83 (11): : 37 - 41
  • [45] Discovering exceptionally hard and wear-resistant metallic glasses by combining machine-learning with high throughput experimentation
    Sarker, Suchismita
    Tang-Kong, Robert
    Schoeppner, Rachel
    Ward, Logan
    Hasan, Naila Al
    Van Campen, Douglas G.
    Takeuchi, Ichiro
    Hattrick-Simpers, Jason
    Zakutayev, Andriy
    Packard, Corinne E.
    Mehta, Apurva
    APPLIED PHYSICS REVIEWS, 2022, 9 (01)
  • [46] Machine learning-assisted development of organic photovoltaics via high-throughput in situ formulation
    An, Na Gyeong
    Kim, Jin Young
    Vak, Doojin
    ENERGY & ENVIRONMENTAL SCIENCE, 2021, 14 (06) : 3438 - 3446
  • [47] Machine learning-assisted development of organic photovoltaics via high-throughput in situ formulation
    An, Na Gyeong
    Kim, Jin Young
    Vak, Doojin
    Energy and Environmental Science, 2021, 14 (06): : 3438 - 3446
  • [48] Non-aqueous battery electrolytes: high-throughput experimentation and machine learning-aided optimization of ionic conductivity
    Yan, Peng
    Fischer, Mirko
    Martin, Harrison
    Woelke, Christian
    Krishnamoorthy, Anand Narayanan
    Cekic-Laskovic, Isidora
    Diddens, Diddo
    Winter, Martin
    Heuer, Andreas
    JOURNAL OF MATERIALS CHEMISTRY A, 2024, 12 (30) : 19123 - 19136
  • [49] High-Throughput Screens to Discover Inhibitors of Leaky Ryanodine
    Rebbeck, Robyn T.
    Ryan, Megan V.
    Gillispie, Gregory D.
    Thomas, David D.
    Bers, Donald M.
    Cornea, Razvan L.
    BIOPHYSICAL JOURNAL, 2017, 112 (03) : 483A - 483A
  • [50] High-Throughput Screening of Promising Redox-Active Molecules with MolGAT
    Chaka, Mesfin Diro
    Geffe, Chernet Amente
    Rodriguez, Alex
    Seriani, Nicola
    Wu, Qin
    Mekonnen, Yedilfana Setarge
    ACS OMEGA, 2023, 8 (27): : 24268 - 24278