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Automatic classification of pediatric pneumonia based on lung ultrasound pattern recognition

机译:基于肺部超声模式识别的小儿肺炎自动分类

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摘要

Pneumonia is one of the major causes of child mortality, yet with a timely diagnosis, it is usually curable with antibiotic therapy. In many developing regions, diagnosing pneumonia remains a challenge, due to shortages of medical resources. Lung ultrasound has proved to be a useful tool to detect lung consolidation as evidence of pneumonia. However, diagnosis of pneumonia by ultrasound has limitations: it is operator-dependent, and it needs to be carried out and interpreted by trained personnel. Pattern recognition and image analysis is a potential tool to enable automatic diagnosis of pneumonia consolidation without requiring an expert analyst. This paper presents a method for automatic classification of pneumonia using ultrasound imaging of the lungs and pattern recognition. The approach presented here is based on the analysis of brightness distribution patterns present in rectangular segments (here called “characteristic vectors“) from the ultrasound digital images. In a first step we identified and eliminated the skin and subcutaneous tissue (fat and muscle) in lung ultrasound frames, and the “characteristic vectors”were analyzed using standard neural networks using artificial intelligence methods. We analyzed 60 lung ultrasound frames corresponding to 21 children under age 5 years (15 children with confirmed pneumonia by clinical examination and X-rays, and 6 children with no pulmonary disease) from a hospital based population in Lima, Peru. Lung ultrasound images were obtained using an Ultrasonix ultrasound device. A total of 1450 positive (pneumonia) and 1605 negative (normal lung) vectors were analyzed with standard neural networks, and used to create an algorithm to differentiate lung infiltrates from healthy lung. A neural network was trained using the algorithm and it was able to correctly identify pneumonia infiltrates, with 90.9% sensitivity and 100% specificity. This approach may be used to develop operator-independent computer algorithms for pneumonia diagnosis using ultrasound in young children.
机译:肺炎是导致儿童死亡的主要原因之一,但如果及时诊断,通常可以通过抗生素治疗治愈。在许多发展中地区,由于医疗资源短缺,诊断肺炎仍然是一个挑战。肺超声已被证明是检测肺结实的有效工具,可作为肺炎的证据。然而,通过超声诊断肺炎具有局限性:它取决于操作者,并且需要由受过训练的人员来进行和解释。模式识别和图像分析是潜在的工具,可在不需要专家分析师的情况下自动诊断肺炎合并症。本文提出了一种使用肺部超声成像和模式识别对肺炎进行自动分类的方法。此处介绍的方法基于对超声数字图像中矩形段(此处称为“特征向量”)中存在的亮度分布模式的分析。第一步,我们识别并消除了肺部超声框架中的皮肤和皮下组织(脂肪和肌肉),并使用人工智能方法使用标准的神经网络对“特征向量”进行了分析。我们从秘鲁利马的一家医院人群中,分析了对应于21名5岁以下儿童(通过临床检查和X线检查证实为肺炎的15名儿童,以及6名无肺部疾病的儿童)的60幅肺部超声框架。使用Ultrasonix超声设备获得肺部超声图像。用标准神经网络分析了总共1450个阳性(肺炎)和1605个阴性(正常肺)载体,并用于创建区分肺部浸润和健康肺部的算法。使用该算法对神经网络进行了训练,它能够以90.9%的敏感性和100%的特异性正确识别肺炎浸润。该方法可用于开发独立于操作员的计算机算法,用于在幼儿中使用超声诊断肺炎。

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