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Low Cost Classification Method for Differentiated White Blood Cells using Digital Image Processing and Machine Learning Algorithms

机译:使用数字图像处理和机器学习算法的差异化白细胞的低成本分类方法

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There are numerous commercially available technologies for counting blood components, however, these require expensive clinical equipment that is not affordable in most developing countries. In this manuscript, a low cost method for classification algorithm to calculate differentiated white blood cells through digital image processing, along with machine learning techniques is introduced. 98 images from ten (10) volunteers were used for this study. These samples were taken with the Venoject system; with a vein blood extraction, smear, and Wright staining to visualize differentiated white cells. The images were preprocessed to highlight their main characteristics (nucleus morphology, plasma membrane definition, cell color, etc.). These characteristics were labeled using the Bag of Visual Words (BoVW) method and classified using the Ensemble Subspace K Nearest Neighbor (ESkNN), Support Vector Machine (SVM), Linear Discriminant Analysis (LDA) and K Nearest Neighbor (KNN) models. Finally, data training and evaluation was performed. As a result, a database of peripheral blood smear pictures and an automatic counting system with 96.4% accuracy detection was attained.
机译:然而,有许多商用技术用于计数血液成分,然而,这些技术需要在大多数发展中国家的昂贵的临床设备上不经济实惠。在该稿件中,引入了通过数字图像处理计算分化的白细胞的分类算法的低成本方法,以及机器学习技术。来自十(10)个志愿者的98张图片用于本研究。将这些样品用静脉法系统进行;静脉血液提取,涂片和赖特染色以可视化分化的白色细胞。预处理图像以突出其主要特征(核形态,质膜定义,细胞颜色等)。使用这些特性使用的视觉单词(BOVW)方法标记,并使用集合子空间K最近邻(ESKNN)进行分类,支持向量机(SVM),线性判别分析(LDA)和K最近邻(KNN)模型。最后,进行了数据培训和评估。结果,达到了外周血涂片图像和具有96.4%精度检测的自动计数系统的数据库。

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