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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >An interval prototype classifier based on a parameterized distance applied to breast thermographic images
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An interval prototype classifier based on a parameterized distance applied to breast thermographic images

机译:基于应用于乳房热量图像的参数化距离的间隔原型分类器

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Breast cancer is one of the leading causes of death in women. Because of this, thermographic images have received a refocus for diagnosing this cancer type. This work proposes an innovative approach to classify breast abnormalities (malignant, benignant and cyst), employing interval temperature data in order to detect breast cancer. The learning step takes into account the internal variation of the intervals when describing breast abnormalities and uses a way to map these intervals into a space where they can be more easily separated. The method builds class prototypes, and the allocation step is based on a parameterized Mahalanobis distance for interval-valued data. The proposed classifier is applied to a breast thermography dataset from Brazil with 50 patients. We investigate two different scenarios for parameter configuration. The first scenario focuses on the overall misclassification rate and achieves 16 % misclassification rate and 93 % sensitivity to the malignant class. The second scenario maximizes the sensitivity to the malignant class, achieving 100 % sensitivity to this specific class, along with 20 % overall misclassification rate. We compare the performances of our approach and of many methods taken from the literature of interval data classification for the breast thermography task. Results show that our method outperforms competing algorithms.
机译:乳腺癌是女性死亡原因之一。因此,热成像已经接收了用于诊断这种癌症类型的重组。这项工作提出了一种创新的方法来分类乳房异常(恶性,良性和囊肿),采用间隔温度数据以检测乳腺癌。学习步骤考虑了在描述乳房异常时间隔的内部变化,并使用方式将这些间隔映射到可以更容易分开的空间。该方法构建了类原型,并且分配步骤基于用于间隔值数据的参数化Mahalanobis距离。所提出的分类器应用于Barzil的乳房热成像数据集,50例患者。我们调查了两个不同的参数配置方案。第一个情景侧重于整体错误分类率,达到16%的错误分类率和对恶性班的敏感性93%。第二种情况最大化对恶性阶级的敏感性,实现了对该特定类别的100%敏感性,以及20%的总分类率。我们比较了我们方法的表现以及许多方法,从乳房热成像任务的间隔数据分类文献中获取。结果表明,我们的方法优于竞争算法。

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