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Computer aided detection of anemia-like pallor

机译:贫血样苍白的计算机辅助检测

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Paleness or pallor is a manifestation of blood loss or low hemoglobin concentrations in the human blood that can be caused by pathologies such as anemia. This work presents the first automated screening system that utilizes pallor site images, segments, and extracts color and intensity-based features for multi-class classification of patients with high pallor due to anemia-like pathologies, normal patients and patients with other abnormalities. This work analyzes the pallor sites of conjunctiva and tongue for anemia screening purposes. First, for the eye pallor site images, the sclera and conjunctiva regions are automatically segmented for regions of interest. Similarly, for the tongue pallor site images, the inner and outer tongue regions are segmented. Then, color-plane based feature extraction is performed followed by machine learning algorithms for feature reduction and image level classification for anemia. In this work, a suite of classification algorithms image-level classifications for normal (class 0), pallor (class 1) and other abnormalities (class 2). The proposed method achieves 86% accuracy, 85% precision and 67% recall in eye pallor site images and 98.2% accuracy and precision with 100% recall in tongue pallor site images for classification of images with pallor. The proposed pallor screening system can be further fine-tuned to detect the severity of anemia-like pathologies using controlled set of local images that can then be used for future benchmarking purposes.
机译:苍白或苍白是人血中失血或血红蛋白浓度低的表现,可能是由诸如贫血等病理引起的。这项工作提出了第一个自动筛查系统,该系统利用苍白部位图像,片段并提取基于颜色和强度的特征,对由于类似贫血的病理,正常患者和其他异常患者而出现的高苍白患者进行多类别分类。这项工作分析了结膜和舌头苍白的部位,以进行贫血筛查。首先,对于眼苍白部位图像,自动将巩膜和结膜区域分割为感兴趣区域。类似地,对于舌头苍白的部位图像,将内部和外部舌头区域进行分割。然后,执行基于颜色平面的特征提取,然后执行机器学习算法以减少特征和对贫血进行图像级别分类。在这项工作中,一套分类算法对正常(0级),苍白(1级)和其他异常(2级)进行图像级分类。所提出的方法在眼部苍白部位图像中实现86%的准确度,85%精度和67%的召回率,在舌部苍白部位图像中实现100%的召回率,实现98.2%的准确性和精度,以对苍白的图像进行分类。所提出的苍白筛查系统可以使用一组受控的局部图像进行进一步的微调,以检测贫血样病理的严重程度,然后将其用于将来的基准测试。

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