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Adjustable adaboost classifier and pyramid features for image-based cervical cancer diagnosis

机译:可调式adaboost分类器和金字塔特征可用于基于图像的宫颈癌诊断

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Cervical cancer is the third most common type of cancer in women worldwide. Most death cases of cervical cancer occur in less developed areas of the world. In this work, we develop an automated and low-cost method that is applicable in those low-resource regions. First, we propose a more distinctive multi-feature descriptor for encoding the cervical image information by enhancing an existing descriptor with the pyramid histogram of local binary pattern (PLBP) feature. Second, we apply the AdaBoost algorithm to perform feature selection, and train a binary classifier to differentiate high-risk patient visits from low-risk patient visits. Our AdaBoost classifier can be adjusted to achieve high specificity, which is necessary for use in clinical practice. Experiments on both balanced and imbalanced datasets are conducted to evaluate the effectiveness of our method. Our method is shown to achieve better performance than existing image-based CIN classification systems and also outperform human interpretations on various screening tests.
机译:宫颈癌是全球女性中最常见的癌症类型。宫颈癌的大多数死亡病例发生在世界较不发达的地区。在这项工作中,我们开发了一种适用于这些低资源区域的自动化和低成本方法。首先,我们提出了一种更独特的多特征描述符,用于通过增强具有本地二进制模式(PLBP)特征的金字塔直方图来编码颈椎图像信息。其次,我们应用Adaboost算法执行特征选择,并训练二进制分类器,以区分高风险患者访问从低风险的患者访问。我们可以调整我们的AdaBoost分类器以实现高特异性,这对于临床实践中使用是必要的。进行了对平衡和不平衡数据集的实验,以评估我们方法的有效性。我们的方法被证明可以实现比现有的基于图像的CIN分类系统更好的性能,并且还可以在各种筛选测试上表达人类解释。

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