发展中国家儿童肺炎x射线图像的计算机辅助分类

Yusuf Aziz Amrulloh, Bayu Dwi Prasetyo, Ummatul Khoiriyah, Hesti Gunarti, Dwikisworo Setyowireni, Rina Triasih, Roni Naning, Amalia Setyati
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引用次数: 0

摘要

肺炎是由细菌或病毒引起的下呼吸道感染。这是儿科人群中的一种严重疾病。肺炎是全世界五岁以下儿童死亡的主要原因。肺炎的问题之一是诊断,因为肺炎的症状可能与其他疾病重叠,如哮喘和细支气管炎。在这项工作中,我们建议开发一种使用x射线图像分类肺炎和非肺炎的方法。我们从印度尼西亚日惹的Dr. Sardjito医院收集了60张x射线图像,并从Kaggle收集了数据集。我们通过预处理算法对这些图像进行处理,以提高图像质量、分割、白像素计算和分类。我们的方法的新颖之处在于使用Canny算法的边缘检测白像素与分割白像素的比例来对肺炎/非肺炎进行分类。在Kaggle数据集中,我们提出的方法的准确率为86.7%,灵敏度为100%,特异性为85%。使用Dr. Sardjito医院的数据集进行分类,灵敏度、特异性和准确性分别为80%、60%和66.7%。尽管结果的性能不高,但我们证明了我们的新特征,白像素比,可以用来分类肺炎/非肺炎。我们还发现,本地数据集在算法开发中至关重要,因为它与现代国家的数据集具有不同的质量。此外,我们的简单方法可以进一步发展,以支持在资源有限的环境下的肺炎诊断,这些环境中没有先进的计算设备或云连接。
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Computer Aided Classification of X-ray Images from Pediatric Pneumonia Subjects Collected in Developing Countries
Pneumonia is a lower tract respiratory infection due to bacteria or viruses. It is a severe disease in the pediatric population. Pneumonia is the leading cause of mortality in children under five years worldwide. One of the problems with pneumonia is the diagnosis, as the symptoms of pneumonia may overlap with other diseases, such as asthma and bronchiolitis. In this work, we propose to develop a method for classifying pneumonia and non-pneumonia using X-ray images. We collected 60 X-ray images from Dr. Sardjito Hospital, Yogyakarta, Indonesia, and the dataset from Kaggle. We processed these images through pre-processing algorithms to enhance the image quality, segmentation, white pixel computation, and classification. The novelty of our method is using the ratio of the white pixels from edge detection using the Canny algorithm with the white pixels from segmentation for classifying pneumonia/non-pneumonia. In the Kaggle dataset, our proposed method achieved an accuracy of 86.7%, a sensitivity of 100%, and a specificity of 85%. The classification using the dataset from Dr. Sardjito Hospital yields sensitivity, specificity, and accuracy of 80%, 60%, and 66.7%, respectively. Despite the low performance in the results, we proved our novel feature, ratio of white pixels, can be used to classify pneumonia/non-pneumonia. We also identified that the local dataset is essential in the algorithm development as it has a different quality from the dataset from modern countries. Further, our simple method can be developed further to support pneumonia diagnosis in resource-limited settings where the advanced computing devices or cloud connection are not available.
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