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Automatic lung ultrasound B-Iine recognition in pediatric populations for the detection of pneumonia

机译:自动肺超声波B-型岩素识别在肺炎的儿科群体中

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Pneumonic lung sonograms are known to include vertical comet-tail artifacts called B-Iines. In this study, the potential of histogram properties from lung ultrasound images for the automatic identification of B-Iine artifacts is explored. Five histogram features (skewness, kurtosis, standard deviation, energy and average) were calculated for intercostal spaces. The sample consisted of 15 positive- and 15 negative-diagnosed B-mode videos selected by a medical expert and captured in a local pediatric health institute. For each frame, an initial domain of interest (DOI) starting from the pleural line is automatically outlined. The pleura is detected by a brightness based on thresholding. Smaller regions containing the intercostal spaces inside the DOI are then outlined and histogram features are estimated. The potential classification of properties was evaluated independently, in pairs and using the group of 5. For single feature analysis, the optimal threshold was selected based on ROC curve (receiver operator characteristic); for studying features in pairs a support vector machine (SVM) analysis using a RBF kernel was performed; and for studying the five features, PCA (principal component analysis) was useful to determine the two principal components and apply an algorithm able to identify a B-Iine in the intercostal space. The results revealed that energy performed best as discriminator when using a single feature with 77% sensitivity, 75% specificity and 75% accuracy. When using features in pairs, average and skewness performed best with 93% sensitivity, 86% specificity and 88% accuracy. Finally, analyzing the 5 features, the results were 100% sensitivity, 98% specificity and 98% accuracy.
机译:已知肺肺超声图包括称为B-Iines的垂直彗星尾部伪影。在该研究中,探讨了来自肺超声图像的直方图特性的潜力,用于自动识别B-IINAIFACTS。为肋间空间计算了五种直方图特征(偏斜,峰,标准偏差,能量和平均值)。该样品由医学专家选择的15个正面和15个负诊断的B模式视频组成,并在当地儿科医疗学研究所捕获。对于每个帧,自动概述从胸腔线开始的感兴趣初始域(DOI)。通过基于阈值化的亮度来检测pleura。然后概述含有DOI内的肋间空间的较小区域,并估计直方图特征。独立地评估属性的潜在分类,成对和使用5组。对于单一特征分析,基于ROC曲线(接收器操作员特性)选择最佳阈值;对于使用RBF内核的对支撑向量机(SVM)分析进行研究的研究功能;并且用于研究五个特征,PCA(主成分分析)可用于确定两个主成分并应用能够在肋间空间中识别B-IINE的算法。结果表明,在使用具有77%敏感度的单一特征,75%特异性和75%的精度时,能量最佳的能量是最佳的。当成对使用特征时,平均和偏斜性最佳,灵敏度为93%,特异性为86%和88%。最后,分析了5个特征,结果敏感度为100%,特异性98%和98%。

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