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An explorative childhood pneumonia analysis based on ultrasonic imaging texture features

机译:基于超声成像纹理特征的探索性儿童肺炎分析

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According to World Health Organization, pneumonia is the respiratory disease with the highest pediatric mortality rate accounting for 15% of all deaths of children under 5 years old worldwide. The diagnosis of pneumonia is commonly made by clinical criteria with support from ancillary studies and also laboratory findings. Chest imaging is commonly done with chest X-rays and occasionally with a chest CT scan. Lung ultrasound is a promising alternative for chest imaging; however, interpretation is subjective and requires adequate training. In the present work, a two-class classification algorithm based on four Gray-level co-occurrence matrix texture features (i.e., Contrast, Correlation, Energy and Homogeneity) extracted from lung ultrasound images from children aged between six months and five years is presented. Ultrasound data was collected using a LI4-5/38 linear transducer. The data consisted of 22 positive- and 68 negative-diagnosed B-mode cine-loops selected by a medical expert and captured in the facilities of the Instituto Nacional de Salud del Nino (Lima, Peru), for a total number of 90 videos obtained from twelve children diagnosed with pneumonia. The classification capacity of each feature was explored independently and the optimal threshold was selected by a receiver operator characteristic (ROC) curve analysis. In addition, a principal component analysis was performed to evaluate the combined performance of all the features. Contrast and correlation resulted the two more significant features. The classification performance of these two features by principal components was evaluated. The results revealed 82% sensitivity, 76% specificity, 78% accuracy and 0.85 area under the ROC.
机译:根据世界卫生组织的统计,肺炎是儿童死亡率最高的呼吸系统疾病,占全世界5岁以下儿童死亡总数的15%。肺炎的诊断通常根据临床标准,并需要辅助研究和实验室检查结果的支持。胸部成像通常是通过胸部X射线进行的,偶尔也可以通过胸部CT扫描进行。肺部超声是胸部成像的有前途的替代方法。但是,解释是主观的,需要适当的培训。在目前的工作中,提出了一种基于六个共生矩阵纹理特征(即对比度,相关性,能量和均一性)的二维分类算法,这些特征是从六个月至五岁的儿童的肺部超声图像中提取的。 。使用LI4-5 / 38线性换能器收集超声数据。数据由医学专家选择并在国立萨鲁德·德尔尼诺研究所(秘鲁利马)的设施中捕获的22个正诊断和68个负诊断的B型电影环组成,总共获得了90个视频来自十二名被诊断出患有肺炎的儿童。独立研究每个功能的分类能力,并通过接收器操作员特征(ROC)曲线分析选择最佳阈值。此外,进行了主成分分析以评估所有功能的组合性能。对比和相关导致了两个更重要的特征。通过主成分评估了这两个功能的分类性能。结果显示在ROC下灵敏度为82%,特异性为76%,准确性为78%,面积为0.85。

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