Abstract

.Significance: Digital holographic microscopy (DHM) is a promising technique for the study of semitransparent biological specimen such as red blood cells (RBCs). It is important and meaningful to detect and count biological cells at the single cell level in biomedical images for biomarker discovery and disease diagnostics. However, the biological cell analysis based on phase information of images is inefficient due to the complexity of numerical phase reconstruction algorithm applied to raw hologram images. New cell study methods based on diffraction pattern directly are desirable.Aim: Deep fully convolutional networks (FCNs) were developed on raw hologram images directly for high-throughput label-free cell detection and counting to assist the biological cell analysis in the future.Approach: The raw diffraction patterns of RBCs were recorded by use of DHM. Ground-truth mask images were labeled based on phase images reconstructed from RBC holograms using numerical reconstruction algorithm. A deep FCN, which is UNet, was trained on the diffraction pattern images to achieve the label-free cell detection and counting.Results: The implemented deep FCNs provide a promising way to high-throughput and label-free counting of RBCs with a counting accuracy of 99% at a throughput rate of greater than 288 cells per second and field of view at the single cell level. Compared to convolutional neural networks, the FCNs can get much better results in terms of accuracy and throughput rate.Conclusions: High-throughput label-free cell detection and counting were successfully achieved from diffraction patterns with deep FCNs. It is a promising approach for biological specimen analysis based on raw hologram directly.

Highlights

  • High-throughput label-free cell detection and counting were successfully achieved from diffraction patterns with deep fully convolutional network (FCN)

  • The biological specimens are visualized by digital holographic microscopy (DHM) and the diffraction patterns between the object wave and reference wave are recoded in a CMOS or charge-coupled device (CCD)

  • There are many other works related to analysis of transparent or semitransparent biological specimen or even non-biological targets that are based on the phase images reconstructed from DHM-recorded hologram.[23,24,25,26,27]

Read more

Summary

Introduction

Label-free quantitative phase imaging techniques, such as digital holographic microscopy (DHM), have been widely researched and applied in biomedical area.[1,2,3,4,5,6,7,8] Especially, the DHM system has promising application values for the observation and study of transparent or semitransparent biological specimens, such as blood cells and cardiomyocytes, because twodimensional (2D) imaging systems only record the intensity values of biological samples and Journal of Biomedical OpticsDownloaded From: https://www.spiedigitallibrary.org/journals/Journal-of-Biomedical-Optics on 23 Dec 2021 Terms of Use: https://www.spiedigitallibrary.org/terms-of-useMarch 2021 Vol 26(3)Yi, Park, and Moon: High-throughput label-free cell detection. . .lose a lot of three-dimensional (3D) information that is important for the further analysis.[1,9,10,11,12] Conventionally, the biological specimens are visualized by DHM and the diffraction patterns between the object wave and reference wave are recoded in a CMOS or charge-coupled device (CCD). Label-free quantitative phase imaging techniques, such as digital holographic microscopy (DHM), have been widely researched and applied in biomedical area.[1,2,3,4,5,6,7,8] Especially, the DHM system has promising application values for the observation and study of transparent or semitransparent biological specimens, such as blood cells and cardiomyocytes, because twodimensional (2D) imaging systems only record the intensity values of biological samples and Journal of Biomedical Optics. There are many other works related to analysis of transparent or semitransparent biological specimen or even non-biological targets that are based on the phase images reconstructed from DHM-recorded hologram.[23,24,25,26,27] it is obvious that the numerical reconstruction steps have to be conducted before starting the research of the multiple targets within the imaging sample. The multiple target analysis can definitely benefit from the novel algorithm that can reduce the complexity of numerical reconstruction step or totally avoid the step of numerical reconstruction

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call