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Using Convolutional Neural Networks for Automated Fine Grained Image Classification of Acute Lymphoblastic Leukemia

机译:利用卷积神经网络进行急性淋巴细胞白血病的自动细粒度图像分类

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Acute lymphoblastic leukemia can be diagnosed through a series of tests which include the minimally invasive microscopic examination of a stained peripheral blood smear. Manual microscopy is a slow process with variable accuracy depending on the laboratorian's skill level. Thus automating microscopy is a goal in cell biology. Current methods involve hand-selecting features from cell images as inputs to a variety of standard machine learning classifiers. Underrepresented in this filed, yet successful in practice, is the convolutional neural network that learns features from fine-grained images. This paper compares the performance of a convolutional neural network model with other models to determine the validity of using whole cell images rather than hand-selected features for acute lymphoblastic leukemia classification.
机译:可以通过一系列测试诊断急性淋巴细胞白血病,其包括染色外周血涂片的微创显微镜检查。手动显微镜是一个缓慢的过程,具体取决于实验室的技能水平。因此,自动化显微镜是细胞生物学的目标。当前方法涉及从单元格图像中的手中选择特征,作为各种标准机器学习分类器的输入。在本申请尚未成功的实践中持代表性,是卷积神经网络,了解来自细粒度图像的功能。本文将卷积神经网络模型与其他模型的性能进行了比较,以确定使用全细胞图像的有效性而不是用于急性淋巴细胞白血病分类的手工选择。

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