Department of Mechanical Engineering, Pohang University of Science and Technology, Pohang 790-784, Republic of Korea.
Department of Mechanical Engineering, Pohang University of Science and Technology, Pohang 790-784, Republic of Korea.
Biosens Bioelectron. 2018 Apr 30;103:12-18. doi: 10.1016/j.bios.2017.12.020. Epub 2017 Dec 15.
Cell types of erythrocytes should be identified because they are closely related to their functionality and viability. Conventional methods for classifying erythrocytes are time consuming and labor intensive. Therefore, an automatic and accurate erythrocyte classification system is indispensable in healthcare and biomedical fields. In this study, we proposed a new label-free sensor for automatic identification of erythrocyte cell types using a digital in-line holographic microscopy (DIHM) combined with machine learning algorithms. A total of 12 features, including information on intensity distributions, morphological descriptors, and optical focusing characteristics, is quantitatively obtained from numerically reconstructed holographic images. All individual features for discocytes, echinocytes, and spherocytes are statistically different. To improve the performance of cell type identification, we adopted several machine learning algorithms, such as decision tree model, support vector machine, linear discriminant classification, and k-nearest neighbor classification. With the aid of these machine learning algorithms, the extracted features are effectively utilized to distinguish erythrocytes. Among the four tested algorithms, the decision tree model exhibits the best identification performance for the training sets (n = 440, 98.18%) and test sets (n = 190, 97.37%). This proposed methodology, which smartly combined DIHM and machine learning, would be helpful for sensing abnormal erythrocytes and computer-aided diagnosis of hematological diseases in clinic.
红细胞的细胞类型应该被识别,因为它们与细胞的功能和活力密切相关。传统的红细胞分类方法既耗时又费力。因此,在医疗保健和生物医学领域,自动且准确的红细胞分类系统是必不可少的。在这项研究中,我们提出了一种新的无标记传感器,用于使用数字线聚焦全息显微镜(DIHM)结合机器学习算法自动识别红细胞的细胞类型。从数值重建的全息图像中定量获得了 12 个特征,包括强度分布信息、形态描述符和光学聚焦特性。盘状细胞、棘状细胞和球形细胞的所有单个特征在统计学上都是不同的。为了提高细胞类型识别的性能,我们采用了几种机器学习算法,如决策树模型、支持向量机、线性判别分类和 K 最近邻分类。借助这些机器学习算法,有效地利用提取的特征来区分红细胞。在测试的四种算法中,决策树模型对训练集(n = 440,98.18%)和测试集(n = 190,97.37%)的识别性能最佳。这种巧妙地结合 DIHM 和机器学习的方法,将有助于检测异常红细胞和临床血液疾病的计算机辅助诊断。