Harnessing Birefringence for Real-Time Classification of Molecular Crystals Using Dynamic Polarized Light Microscopy, Microfluidics, and Machine Learning

被引:3
|
作者
Chua, Ariel Y. H. [1 ]
Yeap, Eunice W. Q. [2 ]
Walker, David M. [2 ]
Hawkins, Joel M. [3 ]
Khan, Saif A. [1 ]
机构
[1] Natl Univ Singapore, Dept Chem & Biomol Engn, Singapore 117576, Singapore
[2] Pfizer Asia Mfg Pte Ltd, Mfg Technol Dev Ctr MTDC, Singapore 627833, Singapore
[3] Pfizer Worldwide Res & Dev, Groton, CT 06340 USA
关键词
MINERAL IDENTIFICATION; IMAGE-ANALYSIS; PARTICLE-SIZE; BETA-GLYCINE; CRYSTALLIZATION; RAMAN; POLYMORPH; PREDICTION; QUANTIFICATION; TRANSFORMATION;
D O I
10.1021/acs.cgd.3c01024
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Molecular crystals are ubiquitous in a variety of industrial contexts, from foods to chemicals and pharmaceuticals. The timely identification of different molecular crystal forms (and transformations between forms) is critical in both manufacturing and chemical/pharmaceutical product design, as they possess different physicochemical properties (e.g., solubility, melting and boiling point, etc.) that could affect product attributes such as stability and dissolution rate. Current characterization methods typically involve a time delay between sampling and analysis and are unable to directly quantify forms/transformations in crystal ensembles at a single crystal level in real time. Here, we introduce a new methodology to accomplish such measurements, which utilizes a combination of microfluidic flow cells, machine learning, and a rotating polarizer-analyzer pair with orthogonally aligned polarization axes for imaging and automated access to interference colors of birefringent molecular crystals that are characteristic of the polymorphic form. Since the polarized light microscopy images of the crystal ensembles captured represent their instantaneous states at the time of acquisition, the methodology uniquely enables real-time, in situ quantification of polymorphically mixed pharmaceutical crystals in both static (polymorph or pseudopolymorph mixtures) and dynamic crystallization systems (e.g., solution mediated phase transformations). The classification of crystal ensembles (similar to 3000 crystals classified in under 10 s) at a single crystal level can be achieved with an accuracy of similar to 86% (azithromycin dihydrate and azithromycin sesquihydrate) to 94% (alpha-glycine and beta-glycine). This sheds quantitative insights into the dominant crystallization phenomena such as nucleation, growth, or dissolution, potentially enabling both process monitoring as well as extraction of crucial kinetics data needed for crystallization process modeling and control. We envision the applicability of this methodology in accelerating the exploration of storage, process condition, or additive dependent polymorphic form outcomes that are of interest during early stage research and development when limited quantities of materials are available.
引用
收藏
页码:1898 / 1909
页数:12
相关论文
共 50 条
  • [31] Real-Time Metal-Surface-Defect Detection and Classification Using Advanced Machine Learning Technique
    Liu, Wei
    Yan, Kun
    Wu, Hsiao-Chun
    Zhang, Xiangli
    Chang, Shih Yu
    Wu, Yiyan
    2022 IEEE INTERNATIONAL SYMPOSIUM ON BROADBAND MULTIMEDIA SYSTEMS AND BROADCASTING (BMSB), 2022,
  • [32] A real-time intelligent classification model using machine learning for tunnel surrounding rock and its application
    Ma, Junjie
    Li, Tianbin
    Yang, Gang
    Dai, Kunkun
    Ma, Chunchi
    Tang, Hao
    Wang, Gangwei
    Wang, Jianfeng
    Xiao, Bo
    Meng, Lubo
    GEORISK-ASSESSMENT AND MANAGEMENT OF RISK FOR ENGINEERED SYSTEMS AND GEOHAZARDS, 2023, 17 (01) : 148 - 168
  • [33] Real-Time Non-Intrusive Electrical Load Classification Over IoT Using Machine Learning
    Ahammed, Md Tanvir
    Hasan, Md Mehedi
    Arefin, Md Shamsul
    Islam, Md Rafiqul
    Rahman, Md Aminur
    Hossain, Eklas
    Hasan, Md Tanvir
    IEEE ACCESS, 2021, 9 : 115053 - 115067
  • [34] LEARNING TO ACT USING REAL-TIME DYNAMIC-PROGRAMMING
    BARTO, AG
    BRADTKE, SJ
    SINGH, SP
    ARTIFICIAL INTELLIGENCE, 1995, 72 (1-2) : 81 - 138
  • [35] Real-time Yawning Detection Based on Machine Learning Algorithm and Time Series Classification using Facial Feature Points
    Chen, Kaihua
    Zhu, Tingting
    Li, Shaofeng
    Shi, Yinxue
    2021 INTERNATIONAL CONFERENCE ON HIGH PERFORMANCE BIG DATA AND INTELLIGENT SYSTEMS (HPBD&IS), 2021, : 276 - 280
  • [36] Real-time human action classification using a dynamic neural model
    Yu, Zhibin
    Lee, Minho
    NEURAL NETWORKS, 2015, 69 : 29 - 43
  • [37] Real Time Traffic Light Detection and Classification using Deep Learning
    Ennahhal, Zakaria
    Berrada, Ismail
    Fardousse, Khalid
    2019 INTERNATIONAL CONFERENCE ON WIRELESS NETWORKS AND MOBILE COMMUNICATIONS (WINCOM), 2019, : 116 - 122
  • [38] Real-time prediction of propulsion motor overheating using machine learning
    Hellton, K. H.
    Tveten, M.
    Stakkeland, M.
    Engebretsen, S.
    Haug, O.
    Aldrin, M.
    JOURNAL OF MARINE ENGINEERING AND TECHNOLOGY, 2022, 21 (06): : 334 - 342
  • [39] Real-Time Face Mask Detection Using Machine Learning Algorithm
    Pushyami, Bhagavathula
    Sujatha, C. N.
    Sanjana, Bonthala
    Karthik, Narra
    PROCEEDINGS OF SECOND INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTER ENGINEERING AND COMMUNICATION SYSTEMS, ICACECS 2021, 2022, : 347 - 357
  • [40] Real-Time Network Anomaly Detection System Using Machine Learning
    Zhao, Shuai
    Chandrashekar, Mayanka
    Lee, Yugyung
    Medhi, Deep
    2015 11TH INTERNATIONAL CONFERENCE ON THE DESIGN OF RELIABLE COMMUNICATION NETWORKS (DRCN), 2015, : 267 - 270