Deep Learning-Based Nuclear Lobe Count Method for Differential Count of Neutrophils.

Journal: The Tohoku journal of experimental medicine
Published Date:

Abstract

Differentiating neutrophils based on the count of nuclear lobulation is useful for diagnosing various hematological disorders, including megaloblastic anemia, myelodysplastic syndrome, and sepsis. It has been reported that one-fifth of sepsis-infected patients worldwide died between 1990 and 2017. Notably, fewer nuclear-lobed and stab-formed neutrophils develop in the peripheral blood during sepsis. This abnormality can serve as an early diagnostic criterion. However, testing this feature is a complex and time-consuming task that is rife with human error. For this reason, we apply deep learning to automatically differentiate neutrophil and nuclear lobulation counts and report the world's first small-scale pilot. Blood films are prepared using venous peripheral blood taken from four healthy volunteers and are stained with May-Grünwald Giemsa stain. Six-hundred 360 × 363-pixel images of neutrophils having five different nuclear lobulations are automatically captured by Cellavision DM-96, an automatic digital microscope camera. Images are input to an original architecture with five convolutional layers built on a deep learning neural-network platform by Sony, Neural Network Console. The deep learning system distinguishes the four groups (i.e., band-formed, two-, three-, and four- and five- segmented) of neutrophils with up to 99% accuracy, suggesting that neutrophils can be automatically differentiated based on their count of segmented nuclei using deep learning.

Authors

  • Mayu Yabuta
    Graduate School of Health Sciences, Hokkaido University.
  • Iori Nakamura
    Graduate School of Health Sciences, Hokkaido University.
  • Haruhi Ida
    Graduate School of Health Sciences, Hokkaido University.
  • Hiromi Masauzi
    Faculty of Health Sciences, Hokkaido University.
  • Kazunori Okada
    Department of Computer Science, San Francisco State University, San Francisco, CA, United States of America.
  • Sanae Kaga
    Faculty of Health Sciences, Hokkaido University.
  • Keiko Miwa
    Faculty of Health Sciences, Hokkaido University.
  • Nobuo Masauzi
    Faculty of Health Sciences, Hokkaido University.