Breast cancer data classification using deep neural network

V. Sharma, Saumendra Kumar Mohapatra, M. Mohanty
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Abstract

Artificial neural networks and their variants play an important role in the analysis and classification of different biomedical data. Deep learning is an advanced machine learning approach which has been used in many applications in the last few years. Worldwide breast cancer is a major disease for women; it is one of the most challenging jobs to detect at an early stage. The authors in this work have taken an attempt to classify the breast cancer data collected from the UCI machine learning repository. Malignant and benign two different types of breast cancer tumours are classified using deep neural network (DNN). Before classification two pre-processing steps are done for improving the accuracy. The correlation and one-hot encoding of the dataset was done for getting some relevant features that can be used as the input to the DNN. Around 94% of classification accuracy is achieved by using a six-layer DNN classifier. The result is also compared with some earlier works and it is found that the proposed classifier is providing better results as compared to others.
基于深度神经网络的乳腺癌数据分类
人工神经网络及其变体在不同生物医学数据的分析和分类中发挥着重要作用。深度学习是一种先进的机器学习方法,在过去几年中已被用于许多应用中。在世界范围内,乳腺癌是妇女的一种主要疾病;在早期发现它是最具挑战性的工作之一。这项工作的作者尝试对从UCI机器学习存储库收集的乳腺癌数据进行分类。利用深度神经网络(DNN)对恶性和良性两种不同类型的乳腺癌肿瘤进行分类。为了提高分类精度,在分类前要进行两个预处理步骤。对数据集进行关联和单热编码,以获得一些相关特征,这些特征可以用作DNN的输入。大约94%的分类精度是通过使用六层DNN分类器实现的。结果还与一些早期的工作进行了比较,发现所提出的分类器比其他分类器提供了更好的结果。
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