Modeling of the Crystallization Conditions for Organic Synthesis Product Purification Using Deep Learning

被引:2
|
作者
Vaskevicius, Mantas [1 ,2 ]
Kapociute-Dzikiene, Jurgita [1 ]
Slepikas, Liudas [2 ]
机构
[1] Vytautas Magnus Univ, Dept Appl Informat, LT-44404 Kaunas, Lithuania
[2] JSC Synhet, Birzu Str 6, LT-44139 Kaunas, Lithuania
关键词
deep learning; crystallization; machine learning; solvent prediction; organic synthesis; purification; neural networks; PREDICTION; SOLUBILITY; DESIGN; AUTOENCODER; NUCLEATION; NETWORK;
D O I
10.3390/electronics11091360
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Crystallization is an important purification technique for solid products in a chemical laboratory. However, the correct selection of a solvent is important for the success of the procedure. In order to accelerate the solvent or solvent mixture search process, we offer an in silico alternative, i.e., a never previously demonstrated approach that can model the reaction mixture crystallization conditions which are invariant to the reaction type. The offered deep learning-based method is trained to directly predict the solvent labels used in the crystallization steps of the synthetic procedure. Our solvent label prediction task is a multi-label multi-class classification task during which the method must correctly choose one or several solvents from 13 possible examples. During the experimental investigation, we tested two multi-label classifiers (i.e., Feed-Forward and Long Short-Term Memory neural networks) applied on top of vectors. For the vectorization, we used two methods (i.e., extended-connectivity fingerprints and autoencoders) with various parameters. Our optimized technique was able to reach the accuracy of 0.870 +/- 0.004 (which is 0.693 above the baseline) on the testing dataset. This allows us to assume that the proposed approach can help to accelerate manual R&D processes in chemical laboratories.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Prediction of Chromatography Conditions for Purification in Organic Synthesis Using Deep Learning
    Vaskevicius, Mantas
    Kapociute-Dzikiene, Jurgita
    Slepikas, Liudas
    MOLECULES, 2021, 26 (09):
  • [2] Sentiment Analysis of Product Reviews using Deep Learning
    Panthati, Jagadeesh
    Bhaskar, Jasmine
    Ranga, Tarun Kumar
    Challa, Manish Reddy
    2018 INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTING, COMMUNICATIONS AND INFORMATICS (ICACCI), 2018, : 2408 - 2414
  • [3] Bridge condition rating data modeling using deep learning algorithm
    Liu, Heng
    Zhang, Yunfeng
    STRUCTURE AND INFRASTRUCTURE ENGINEERING, 2020, 16 (10) : 1447 - 1460
  • [4] Sentiment classification on product reviews using machine learning and deep learning techniques
    Singh, Neha
    Jaiswal, Umesh Chandra
    INTERNATIONAL JOURNAL OF SYSTEM ASSURANCE ENGINEERING AND MANAGEMENT, 2024, 15 (12) : 5726 - 5741
  • [5] Turbomachinery Blade Surrogate Modeling Using Deep Learning
    Luo, Shirui
    Cui, Jiahuan
    Sella, Vignesh
    Liu, Jian
    Koric, Seid
    Kindratenko, Volodymyr
    HIGH PERFORMANCE COMPUTING - ISC HIGH PERFORMANCE DIGITAL 2021 INTERNATIONAL WORKSHOPS, 2021, 12761 : 92 - 104
  • [6] Deep learning-driven QSPR models for accurate properties estimation in organic solar cells using extended connectivity fingerprints
    Elkabous, Mohammed
    Karzazi, Anass
    Karzazi, Yasser
    COMPUTATIONAL MATERIALS SCIENCE, 2024, 243
  • [7] DeepReac plus : deep active learning for quantitative modeling of organic chemical reactions
    Gong, Yukang
    Xue, Dongyu
    Chuai, Guohui
    Yu, Jing
    Liu, Qi
    CHEMICAL SCIENCE, 2021, 12 (43) : 14459 - 14472
  • [8] Online Defect Detection in LGA Crystallization Imaging Using MANet-Based Deep Learning Image Analysis
    Huo, Yan
    Guan, Diyuan
    Dong, Lingyan
    CRYSTALS, 2024, 14 (04)
  • [9] Modeling of H2S solubility in ionic liquids using deep learning: A chemical structure-based approach
    Mousavi, Seyed Pezhman
    Atashrouz, Saeid
    Nakhaei-Kohani, Reza
    Hadavimoghaddam, Fahimeh
    Shawabkeh, Ali
    Hemmati-Sarapardeh, Abdolhossein
    Mohaddespour, Ahmad
    JOURNAL OF MOLECULAR LIQUIDS, 2022, 351
  • [10] Surrogate modeling for injection molding processes using deep learning
    Uglov, Arsenii
    Nikolaev, Sergei
    Belov, Sergei
    Padalitsa, Daniil
    Greenkina, Tatiana
    San Biagio, Marco
    Cacciatori, Fabio Massimo
    STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2022, 65 (11)