| Literature DB >> 33803615 |
Violeta Carvalho1, Inês M Gonçalves2, Andrews Souza3, Maria S Souza4, David Bento5,6, João E Ribeiro6,7, Rui Lima1,5, Diana Pinho1,4,6.
Abstract
In blood flow studies, image analysis plays an extremely important role to examine raw data obtained by high-speed video microscopy systems. This work shows different ways to process the images which contain various blood phenomena happening in microfluidic devices and in microcirculation. For this purpose, the current methods used for tracking red blood cells (RBCs) flowing through a glass capillary and techniques to measure the cell-free layer thickness in different kinds of microchannels will be presented. Most of the past blood flow experimental data have been collected and analyzed by means of manual methods, that can be extremely reliable, but they are highly time-consuming, user-intensive, repetitive, and the results can be subjective to user-induced errors. For this reason, it is crucial to develop image analysis methods able to obtain the data automatically. Concerning automatic image analysis methods for individual RBCs tracking and to measure the well known microfluidic phenomena cell-free layer, two developed methods are presented and discussed in order to demonstrate their feasibility to obtain accurate data acquisition in such studies. Additionally, a comparison analysis between manual and automatic methods was performed.Entities:
Keywords: automatic methods; biomicrofluidics; blood flow; image analysis; manual methods; particle tracking; red blood cells
Year: 2021 PMID: 33803615 PMCID: PMC8002955 DOI: 10.3390/mi12030317
Source DB: PubMed Journal: Micromachines (Basel) ISSN: 2072-666X Impact factor: 2.891
Summary of image analysis methods used for cell tracking and segmentation.
| Reference, Year | Goal | Technical | Conclusion |
|---|---|---|---|
| [ | White blood cell (WBC) segmentation | Scale-space filtering and watershed clustering | Extracts the WBC region; |
| [ | Color image segmentation | Using RGB space as the standard processing space: | Color images provide a better description of a scene as compared to grayscale images |
| [ | WBC segmentation: to separate the nucleus and cytoplasm | It is based on the morphological analysis and the pixel intensity threshold, respectively. | The method is able to yield 92% accuracy for nucleus segmentation and 78% for cytoplasm segmentation. |
| [ | To quantify the perturbation-induced changes of the RBC and plasma passages in the individual vessels. | The image-based analytical method for time-lapse images of RBC and plasma dynamics with automatic segmentation | Arterial tones and parenchymal blood flow can be individually coordinated. |
| [ | To segment the nuclei and cytoplasm of WBCs | It is based on the pixel-wise ISAM segmentation algorithm | the accuracy of the proposed algorithm is 91.06% (nuclei) and 85.59% (cytoplasm) |
| [ | Cell tracking | Topology preservation techniques | The method has good accuracy |
| [ | Direct particle tracking | Algorithm developed in MATLAB | Results obtained confirm experimental results |
| [ | Optimize traditional edge detection | Edge detection algorithm based on bacterial liner | Identifies boundaries more effectively and provides more accurate image segmentation |
| [ | Determine particle velocity and size distributions of large groups of particles by video-microscopic systems. | Open-source computational implementation with MATLAB | It allows the automatic tracking of any fluid with particles, classifies the particles according to their size and calculates the speed. |
| [ | Particle tracking | The method is based on a convolutional neural network and deep ultrasound localization microscopy | Its robust, fast and accurate RBC localization, compared with other ULM techniques |
| [ | In vitro assessment of whole blood viscosity (WBV) and RBC adhesion | Micro-PIV | WBV and RBC adhesion may serve as clinically relevant biomarkers and endpoints in assessing emerging targeted and curative therapies in SCD. |
| [ | Measurements of the velocity of whole blood flow in a microchannel during coagulation | PIV and wavelet-based optical flow velocimetry (wOFV) | The high-resolution wOFV results yield highly detailed information regarding thrombus formation and corresponding flow evolution |
Figure 1ImageJ plugins: (a) MtrackJ used to obtain the RBC trajectory [79] and (b) application of the plot Z-axis profile function at the selected ROI [80].
Figure 2Image of blood flow in the microchannel with labeled bright RBCs, f(x,y) and the centroid of the tracking cell.
Figure 3Image sequences imported (a) and respective region of interest cropped (b).
Figure 4The region of interest (a) and the image filtered by using the median function medfilt2 (b).
Figure 5The obtained image of the iterative threshold method and the application of the Sobel filter.
Figure 6(a) Data extraction and (b) RBCs trajectories.
Figure 7The obtained image when the Lucas Kanade pyramidal method was applied.
Figure 8Automatic method results: (a) developed graphical user interface (GUI) in MATLAB and (b) trajectories of individual labeled RBCs determined by the manual and automatic method.
Figure 9Manual method showing the trajectories of RBC defining the region of the CFL: (a) for an expansion geometry and (b) for a bifurcation geometry.
Figure 10(a) The obtained image by applying the projection average intensity and (b) the obtained image by applying the projection sum slices.
Figure 11(a) Image obtained by applying the standard deviation projection and (b) image obtained by applying the median projection.
Figure 12(a) The obtained image with the projection minimum intensity, and (b) the obtained image with the projection maximum intensity.
Figure 13The obtained image from the ZProject method with the projection maximum intensity to extract the data. It shows a well defined CFL thickness.
Figure 14An image from the original sequence of images.
Figure 15Image with the maximum intensity evaluation.
Figure 16The obtained image from the automatic method.
Figure 17Comparison between the manual and the automatic data, taken in the regions A to F.