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Improving Bayesian Networks Breast Mass Diagnosis by Using Clinical Data

机译:利用临床数据改善贝叶斯网络乳腺肿块的诊断

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Nowadays, breast cancer is considered a significant health problem in Mexico. Mammogram is an effective study for early detecting signs of this disease. One of the most important findings in this study is a mass, which is the main indicator of malignancy. However, mass detection and diagnosis are difficult. In this study, the impact of the inclusion of seven clinical features on the performance of Bayesian Networks models for mass diagnosis is presented. Here, Naieve Bayes, Tree Augmented Naive Bayes, K-dependence Bayesian classifier, and Forest Augmented Naieve Bayes models with eight image features nodes were augmented with several clinical features subsets. These models were trained with a data set extracted from the public BCDR-F01 database. The experimental results have shown that the Bayesian networks models augmented with a subset of three clinical features have improved their performance up to 0.82 in accuracy, 0.80 in sensitivity, and 0.83 in specificity. Therefore, these augmented models are considered as suitable and promising methods for mass classification.
机译:如今,乳腺癌在墨西哥被认为是严重的健康问题。乳房X线照片是早期发现这种疾病迹象的有效研究。在这项研究中最重要的发现之一是肿块,它是恶性肿瘤的主要指标。然而,大量检测和诊断是困难的。在这项研究中,提出了包含七个临床特征对贝叶斯网络模型进行大规模诊断的性能的影响。在此,具有八个图像特征节点的Naieve Bayes,Tree Augmented Naive Bayes,K依赖贝叶斯分类器和Forest Augmented Naieve Bayes模型增加了几个临床特征子集。这些模型使用从公共BCDR-F01数据库中提取的数据集进行了训练。实验结果表明,增加了三个临床特征的子集的贝叶斯网络模型已将其性能提高了高达0.82的准确性,0.80的敏感性和0.83的特异性。因此,这些扩充模型被认为是适合进行质量分类的方法。

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