H-BwoaSvm:用于乳腺x线筛查行为数据分类和特征选择的混合模型

E. Enayati, Z. Hassani, M. Moodi
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引用次数: 0

摘要

癌症是世界上最常见的癌症之一。癌症的早期发现可显著降低发病率和治疗成本。乳腺造影术是目前已知的癌症的有效诊断方法。乳房X光检查筛查行为识别的一种方法是对女性参与乳房X光筛查项目的意识进行评估。如今,情报系统可以识别特定事件的主要因素。这些可以帮助广泛领域的专家,特别是预防、诊断和治疗等健康领域的专家。在本文中,我们使用了一种称为H-BwoaSvm的混合模型,BWOA用于检测乳腺X光筛查行为的有效因素,SVM用于分类。我们的模型应用于从2256名女性的分段分析描述性研究中收集的数据集。所提出的模型在数据集上以82.27%和98.89%的准确率进行了操作,并选择了乳房X光检查筛查行为的有效特征。
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H-BwoaSvm: A Hybrid Model for Classification and Feature Selection of Mammography Screening Behavior Data
Breast cancer is one of the most common cancer in the world. Early detection of cancers cause significantly reduce in morbidity rate and treatment costs. Mammography is a known effective diagnosis method of breast cancer. A way for mammography screening behavior identification is women's awareness evaluation for participating in mammography screening programs. Todays, intelligence systems could identify main factors on specific incident. These could help to the experts in the wide range of areas specially health scopes such as prevention, diagnosis and treatment. In this paper we use a hybrid model called H-BwoaSvm which BWOA is used for detecting effective factors on mammography screening behavior and SVM for classification. Our model is applied on a data set which collected from a segmental analytical descriptive study on 2256 women. Proposed model is operated on data set with 82.27 and 98.89 percent accuracy and select effective features on mammography screening behavior.
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