基于胸部x线的计算机辅助诊断肺结核

Ratnasari Nur Rohmah, A. Susanto, I. Soesanti, Maesadji Tjokronagoro
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引用次数: 11

摘要

本文介绍了利用计算机进行肺结核(TB)诊断的研究。由于放射专家与患者数量的比例不匹配,特别是来自印度尼西亚偏远地区的患者,本研究试图减少患者等待接受肺部结核病x线诊断结果的时间。我们使用计算机计算的纹理特征作为描述符对图像进行TB和非TB分类。我们通过计算均值、标准差、偏度、峰度和熵五个特征来利用图像直方图的统计特征。这些特征是利用阈值法从ROI图像中预先定义的ROI形状计算得到的。然后使用主成分分析(PCA)方法将计算出的特征简化为一个主特征。最后,以马氏距离分类器为分类器,以一个主特征为描述符。研究结果表明,基于图像直方图的统计特征对TB和非TB图像进行分类是可行的。
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Computer Aided Diagnosis for lung tuberculosis identification based on thoracic X-ray
This paper presents research on lung tuberculosis (TB) identification by using computer. This research was attempt to reduce patient waiting time in receiving X-ray diagnosis result on lung TB disease, due to mismatch ratio of radiologic experts to the number of patient, especially from remote areas in Indonesia. We used textural features calculated by computer to be used as descriptor in classifying image as TB or non-TB. We used statistical features of image histogram by calculates five features: mean, standar deviation (std), skewness, kurtosis, and entropy. These features were calculated from ROI images using pre defined ROI shape from thresholding method. Features calculated was then reduced down to one principal feature using Principal Componen Analysis (PCA) method. Finally, we used Mahalanobis distance classifier as classifier method based on one principal feature as descriptor. This research results show that it was possible to classify TB and non-TB image based on statistical feature on image histogram.
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