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Development of Algorithms for Automated Detection of Cervical Pre-Cancers With a Low-Cost, Point-of-Care, Pocket Colposcope

机译:低成本,即时医疗,袖珍阴道镜自动检测宫颈癌前病变的算法开发

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摘要

Goal: In this paper, we propose methods for (1) automatic feature extraction and classification for acetic acid and Lugol's iodine cervigrams and (2) methods for combining features/diagnosis of different contrasts in cervigrams for improved performance. Methods: We developed algorithms to pre-process pathology-labeled cervigrams and extract simple but powerful color and textural-based features. The features were used to train a support vector machine model to classify cervigrams based on corresponding pathology for visual inspection with acetic acid, visual inspection with Lugol's iodine, and a combination of the two contrasts. Results: The proposed framework achieved a sensitivity, specificity, and accuracy of 81.3%, 78.6%, and 80.0%, respectively, when used to distinguish cervical intraepithelial neoplasia (CIN+) relative to normal and benign tissues. This is superior to the average values achieved by three expert physicians on the same data set for discriminating normal/benign cases from CIN+ (77% sensitivity, 51% specificity, and 63% accuracy). Conclusion: The results suggest that utilizing simple color- and textural-based features from visual inspection with acetic acid and visual inspection with Lugol's iodine images may provide unbiased automation of cervigrams. Significance: This would enable automated, expert-level diagnosis of cervical pre-cancer at the point of care.
机译:目的:在本文中,我们提出了以下方法:(1)乙酸和卢戈尔碘子宫颈癌的自动特征提取和分类,以及(2)组合子宫颈不同对比度的特征/诊断以提高性能的方法。方法:我们开发了算法来预处理病理标记的子宫颈图,并提取简单但功能强大的基于颜色和纹理的特征。这些功能用于训练支持向量机模型,以根据相应的病理学对宫颈进行分类,以便用乙酸进行目视检查,用卢戈尔碘进行目视检查以及两种对比的结合。结果:当用于区分宫颈上皮内瘤变(CIN +)相对于正常组织和良性组织时,所提出的框架分别达到81.3%,78.6%和80.0%的敏感性,特异性和准确性。这优于三位专家医师在同一数据集上将正常/良性病例与CIN +区别开来的平均值(灵敏度为77%,特异性为51%,准确度为63%)。结论:结果表明,利用简单的基于颜色和纹理的特征(例如通过乙酸进行目视检查以及使用Lugol碘图像进行目视检查)可以提供无偏的宫颈自动化检查。启示:这将使您能够在护理时自动,专家级地诊断宫颈癌。

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