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引用次数: 0

摘要

白细胞是人类免疫系统的基石,因为它们对抗不同类型的感染,这对健康恢复至关重要。在医疗实践中,白细胞亚型(wbc)数量的变化排除了某些疾病,如感染、心脏病和糖尿病。传统的白细胞计数方法依赖于人工测试,有可能出现人为错误,而且自动化的方法设备非常昂贵。因此,白细胞亚型的分类是至关重要的。本研究提出了基于CV的白细胞亚型鉴定方法。本文训练并实现了不同的基于mcnn的模型以及基于迁移学习的模型(VGG16和Resnet50)进行性能比较,并探讨了不同训练参数对模型性能的影响。观察到,改变训练参数也会影响模型的准确性。使用基于mcnn的白细胞分类模型达到了96.6%的最高准确率。
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Classification of White Blood Cells Subtype Using MCNN
White Blood cells are building blocks of the immune system of humans as they fight different types of infections, which is vital for healthy recovery. Changes in the number of White Blood Cell subtypes (WBCs) rule out certain diseases such as infection, heart disease and diabetes in medical practices. Conventional methods of counting the number of WBCs are dependent on manual testing and have chances of human error and the automated method apparatus is very costly. Thus the classification of White Blood Cell subtypes is of vital importance. In this study, CV based solution is proposed for White Blood Cell subtype identification. Different MCNN-based models along with transfer learning-based models (VGG16 & Resnet50) are trained and implemented for performance comparison and the effect of different training parameters on the performance of the models is also explored in the study. It was observed that changing the training parameters also affects the accuracy of the model. The highest accuracy of 96.6% was achieved using the MCNN-based model for the classification of White Blood Cells.
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