Automatic Diagnosis of Ovarian Cancer Based on Relative Entropy and Neural Network

Zainab Harbi
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Abstract

Ovarian Cancer is one of the most common causes of death for women in developing countries. Screening and early diagnoses of OC are urgently needed. Early diagnosis would help in consequence procedures and treatment. Mass spectrometry (MS) data is been used as an effective component of cancer diagnosis tools. However, these valuable data have a large number of dimensions that can affect the learning process in addition to time-consuming considerations. Feature selection plays an important role in reducing information redundancy, and deals with the invalidation that occurs in basic classification algorithms when there are too many features and huge datasets. To improve the automatic system diagnosis accuracy, entropy-based selection features are proposed. These features are combined with the novel learning capabilities of neural networks to achieve higher diagnostic accuracy. Experiments have been performed using different feature selection algorithms and machine learning classification approaches. Experimental results have proved that the proposed system performs better based on the measure of accuracy.
基于相对熵和神经网络的卵巢癌自动诊断
卵巢癌是发展中国家妇女最常见的死亡原因之一。卵巢癌的筛查和早期诊断是迫切需要的。早期诊断有助于后续处理和治疗。质谱(MS)数据已被用作癌症诊断工具的有效组成部分。然而,这些有价值的数据有很多维度,除了耗时的考虑之外,还会影响学习过程。特征选择在减少信息冗余方面起着重要的作用,它解决了基本分类算法在特征过多、数据集庞大时出现的失效问题。为了提高系统自动诊断的准确性,提出了基于熵的选择特征。这些特征与神经网络的新学习能力相结合,以实现更高的诊断准确性。使用不同的特征选择算法和机器学习分类方法进行了实验。实验结果表明,基于精度度量,该系统具有较好的性能。
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