Abstract

We present unsupervised clustering methods for automatic grouping of human red blood cells (RBCs) extracted from RBC quantitative phase images obtained by digital holographic microscopy into three RBC clusters with regular shapes, including biconcave, stomatocyte, and sphero-echinocyte. We select some good features related to the RBC profile and morphology, such as RBC average thickness, sphericity coefficient, and mean corpuscular volume, and clustering methods, including density-based spatial clustering applications with noise, k-medoids, and k-means, are applied to the set of morphological features. The clustering results of RBCs using a set of three-dimensional features are compared against a set of two-dimensional features. Our experimental results indicate that by utilizing the introduced set of features, two groups of biconcave RBCs and old RBCs (suffering from the sphero-echinocyte process) can be perfectly clustered. In addition, by increasing the number of clusters, the three RBC types can be effectively clustered in an automated unsupervised manner with high accuracy. The performance evaluation of the clustering techniques reveals that they can assist hematologists in further diagnosis.

Highlights

  • Blood cells have different functionalities in the human body and tissue

  • Whereas density-based spatial clustering applications with noise (DBSCAN) measures the distance of each data sample with neighboring samples using circle radius,[28] we used two principal component analysis (PCA) to be applied to DBSCAN method but for other method, we used three PCA since we analyze results in 3-D feature space as shown in Figs 5 and 10

  • The Red blood cells (RBCs) samples that were visualized by the digital holographic microscopy (DHM) technique were extracted from the blood sample

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Summary

Introduction

Blood cells have different functionalities in the human body and tissue. Red blood cells (RBCs), or erythrocytes, are the most abundant among blood cells. Digital holographic microscopy (DHM) is capable of imaging semitransparent or transparent biological cells and provides quantitative detailed information about the cell structure and its contents at a single-RBC level. It is a noninvasive and label-free method. We apply several clustering methods to cluster the different shapes of RBCs. Several RBC samples with three major morphologies, biconcave, stomatocyte, and sphero-echinocyte, are visualized by the DHM technique and are combined together.

Off-Axis Digital Holographic Microscopy
Red Blood Cell Preparation
Quantitative Phase Image Segmentation of Red Blood Cells
Feature Extraction and Selection
Density-Based Spatial Clustering Applications with Noise
Experimental Results and Discussion
Density-Based Spatial Clustering Applications with Noise Clustering Results
Internal Evaluation of Clustering Techniques
10 Conclusions
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