Screening of bone marrow slide images for Leukemia using Multilayer Perceptron (MLP)

E. U. Francis, M. Y. Mashor, R. Hassan, A. Abdullah
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引用次数: 14

Abstract

The ability to screen between normal and abnormal bone marrow slide images with high accuracy rate is very much needed before going for the classification of the types and subtypes of Leukemia. Beforehand, the bone marrow slide images will be implemented with digital image processing techniques which include image enhancement, image segmentation and feature extraction. They are 13 features that have been extracted from every white blood cell on both normal and abnormal bone marrow slide images. These extracted features include area, perimeter, radius, circularity, mean value for red, blue and green respectively, standard deviation and variance also from red, blue and green respectively. In this paper, the neural network based classifier, Multilayer Perceptron (MLP) is used for screening task. The MLP network is trained using the Levenberg Marquardt (LM) training algorithm. The extracted features were assigned as data input to the network and the result of the screening has been proven to have high accuracy rate which is 98.667% for training dataset and 94.5% for testing dataset.
多层感知机(MLP)筛选白血病骨髓载玻片图像
在进行白血病类型和亚型的分类之前,非常需要能够对正常和异常骨髓切片图像进行高准确率的筛选。在此之前,将采用数字图像处理技术实现骨髓切片图像,包括图像增强、图像分割和特征提取。它们是从正常和异常骨髓切片图像上的每个白细胞中提取的13个特征。这些提取的特征包括面积、周长、半径、圆度、红色、蓝色和绿色的平均值,以及红色、蓝色和绿色的标准差和方差。本文将基于神经网络的分类器多层感知器(Multilayer Perceptron, MLP)用于筛选任务。MLP网络使用Levenberg Marquardt (LM)训练算法进行训练。将提取的特征作为数据输入分配到网络中,结果证明筛选结果具有较高的准确率,训练数据集的准确率为98.667%,测试数据集的准确率为94.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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