Label-Free White Blood Cell Classification Using Refractive Index Tomography and Deep Learning

被引:29
|
作者
Ryu, DongHun [1 ,2 ]
Kim, Jinho [3 ]
Lim, Daejin [4 ,5 ]
Min, Hyun-Seok [6 ]
Yoo, In Young [7 ]
Cho, Duck [3 ,5 ,8 ]
Park, YongKeun [2 ,3 ,6 ]
机构
[1] Korea Adv Inst Sci & Technol KAIST, Dept Phys, Daejeon 34141, South Korea
[2] Korea Adv Inst Sci & Technol, KAIST Inst Hlth Sci & Technol, Daejeon 34141, South Korea
[3] Sungkyunkwan Univ, Samsung Adv Inst Hlth Sci & Technol, Dept Hlth Sci & Technol, Seoul 06355, South Korea
[4] Korea Univ, Dept Hlth & Safety Convergence Sci, Seoul 02841, South Korea
[5] Sungkyunkwan Univ Sch Med, Dept Lab Med & Genet, Samsung Med Ctr, Seoul 06351, South Korea
[6] Tomocube Inc, Daejeon 34051, South Korea
[7] Catholic Univ Korea, Seoul St Marys Hosp, Dept Lab Med, Coll Med, Seoul 06591, South Korea
[8] Samsung Med Ctr, Stem Cell & Regenerat Med Inst, Seoul 06531, South Korea
来源
BME FRONTIERS | 2021年 / 2021卷
基金
新加坡国家研究基金会;
关键词
MICROSCOPY;
D O I
10.34133/2021/9893804
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective and Impact Statement. We propose a rapid and accurate blood cell identification method exploiting deep learning and label-free refractive index (RI) tomography. Our computational approach that fully utilizes tomographic information of bone marrow (BM) white blood cell (WBC) enables us to not only classify the blood cells with deep learning but also quantitatively study their morphological and biochemical properties for hematology research. Introduction. Conventional methods for examining blood cells, such as blood smear analysis by medical professionals and fluorescence-activated cell sorting, require significant time, costs, and domain knowledge that could affect test results. While label-free imaging techniques that use a specimen's intrinsic contrast (e.g., multiphoton and Raman microscopy) have been used to characterize blood cells, their imaging procedures and instrumentations are relatively time-consuming and complex. Methods. The RI tomograms of the BM WBCs are acquired via Mach-Zehnder interferometer-based tomographic microscope and classified by a 3D convolutional neural network. We test our deep learning classifier for the four types of bone marrow WBC collected from healthy donors (n = 10): monocyte, myelocyte, B lymphocyte, and T lymphocyte. The quantitative parameters of WBC are directly obtained from the tomograms. Results. Our results show >99% accuracy for the binary classification of myeloids and lymphoids and >96% accuracy for the four-type classification of B and T lymphocytes, monocyte, and myelocytes. The feature learning capability of our approach is visualized via an unsupervised dimension reduction technique. Conclusion. We envision that the proposed cell classification framework can be easily integrated into existing blood cell investigation workflows, providing cost-effective and rapid diagnosis for hematologic malignancy.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] Optofluidic device for label-free cell classification from whole blood
    Wu, Tsung-Feng
    Mei, Zhe
    Lo, Yu-Hwa
    LAB ON A CHIP, 2012, 12 (19) : 3791 - 3797
  • [22] A versatile deep learning architecture for classification and label-free prediction of hyperspectral images
    Bryce Manifold
    Shuaiqian Men
    Ruoqian Hu
    Dan Fu
    Nature Machine Intelligence, 2021, 3 : 306 - 315
  • [23] A versatile deep learning architecture for classification and label-free prediction of hyperspectral images
    Manifold, Bryce
    Men, Shuaiqian
    Hu, Ruoqian
    Fu, Dan
    NATURE MACHINE INTELLIGENCE, 2021, 3 (04) : 306 - +
  • [24] Deep learning-based label-free hematology analysis framework using optical diffraction tomography
    Ryu, Dongmin
    Bak, Taeyoung
    Ahn, Daewoong
    Kang, Hayoung
    Oh, Sanggeun
    Min, Hyun-seok
    Lee, Sumin
    Lee, Jimin
    HELIYON, 2023, 9 (08)
  • [25] Classification of cell morphology using machine learning and label-free live-cell imaging.
    Lovell, Gillian F.
    Porto, Daniel A.
    Jackson, Timothy R.
    Trigg, Jasmine
    Bevan, Nicola
    Edlund, Christoffer
    Sjoegren, Rickard
    Holtz, Nevine
    Appledorn, Daniel M.
    Dale, Timothy
    CANCER RESEARCH, 2021, 81 (13)
  • [26] Multiple-scattering suppressive refractive index tomography for the label-free quantitative assessment of multicellular spheroids
    Yasuhiko, Osamu
    Takeuchi, Kozo
    Yamada, Hidenao
    Ueda, Yukio
    BIOMEDICAL OPTICS EXPRESS, 2022, 13 (02) : 962 - 979
  • [27] Label-Free, Noncontact Hyperspectral Imaging for Classification of Histologic Grade in Gross Specimens of Squamous Cell Carcinoma Using Deep Learning
    Halicek, M.
    Dormer, J.
    Pham, M.
    Little, J.
    Chen, A.
    Myers, L.
    Sumer, B.
    Fei, B.
    MEDICAL PHYSICS, 2019, 46 (06) : E465 - E465
  • [28] Label-free macrophage phenotype classification using machine learning methods
    Tetiana Hourani
    Alexis Perez-Gonzalez
    Khashayar Khoshmanesh
    Rodney Luwor
    Adrian A. Achuthan
    Sara Baratchi
    Neil M. O’Brien-Simpson
    Akram Al-Hourani
    Scientific Reports, 13
  • [29] Noise effects on label-free nanoparticles classification using light scattering imaging and deep learning algorithm
    Mohamed, Nebras Ahmed
    Eltigani, Faihaa Mohammed
    Su, Xuantao
    OPTICS IN HEALTH CARE AND BIOMEDICAL OPTICS XIII, 2023, 12770
  • [30] Label-free macrophage phenotype classification using machine learning methods
    Hourani, Tetiana
    Perez-Gonzalez, Alexis
    Khoshmanesh, Khashayar
    Luwor, Rodney
    Achuthan, Adrian A.
    Baratchi, Sara
    O'Brien-Simpson, Neil M.
    Al-Hourani, Akram
    SCIENTIFIC REPORTS, 2023, 13 (01)