Lung Chest X-Ray Image Segmentation for Detection of Pneumonia using Convolutional Neural Network

Nur Amyza Arjuna, Asnida Abdul Wahab, Gan Hong Seng, Maheza Irna Mohamad Salim, M. H. Ramlee
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Abstract

Pneumonia has been identified as the top cause of mortality in children under the age of five, as well as in elderly with comorbidities. According to the World Health Organization, pneumonia reported 14% fatalities in children under the age of five nationwide in 2019. Chest x-ray (CXR) has been commonly used for detection of pneumonia. However, factor such as noise with low levels of intensity and low contrast between the images and the boundary representation can modify CXR images and it also requires highly skilled medical practitioners to accurately interpret the CXR images. Therefore, the goal of this study is to develop an automatic segmentation model to segment the region of interest (ROI) of pneumonia lung CXR images using U-Net architecture. Image enhancement using Contrast Limited Adaptive Histogram Equalisation (CLAHE) and gamma-correction based enhancement technique were applied to increase the quality of CXR images. Statistical analysis on features extracted from the segmented lung CXR images was performed to analyze the performance of the model was developed. The U-Net segmentation model achieves 95.58%, 95.82% and 95.48% accuracy for normal CXR while the model achieves 86.76%, 87.98% and 86.21% accuracy for pneumonia CXR which indicate that the U-Net segmentation for CLAHE x-ray images has better performance in segmenting the ROI of the lungs. As a conclusion, the segmentation model proposed shown to be able to overcome the disadvantages of manual segmentation where the model can be used to perform segmentation automatically on many CXRs at a time.
基于卷积神经网络的肺胸部x线图像分割检测肺炎
肺炎已被确定为5岁以下儿童以及有合并症的老年人死亡的首要原因。根据世界卫生组织的数据,2019年,全国五岁以下儿童中有14%死于肺炎。胸部x光(CXR)已被广泛用于检测肺炎。然而,图像与边界表示之间的低强度和低对比度的噪声等因素可以修改CXR图像,并且也需要高技能的医疗从业者准确解释CXR图像。因此,本研究的目的是开发一种基于U-Net架构的肺炎肺CXR图像感兴趣区域(ROI)自动分割模型。采用对比度有限自适应直方图均衡化(CLAHE)和基于伽马校正的增强技术增强图像,以提高CXR图像的质量。对分割后的肺CXR图像提取的特征进行统计分析,分析模型的性能。U-Net分割模型对正常CXR的准确率分别达到95.58%、95.82%和95.48%,对肺炎CXR的准确率分别达到86.76%、87.98%和86.21%,说明针对CLAHE x射线图像的U-Net分割在分割肺部ROI方面有较好的效果。综上所述,所提出的分割模型能够克服人工分割的缺点,该模型可以同时对许多cxr进行自动分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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