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A New Approach of Objective Quality Evaluation on JPEG2000 Lossy-Compressed Lung Cancer CT Images

机译:JPEG2000有损压缩肺癌CT图像客观质量评估的新方法

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摘要

Image compression has been used to increase the communication efficiency and storage capacity. JPEG 2000 compression, based on the wavelet transformation, has its advantages comparing to other compression methods, such as RO1 coding, error resilience, adaptive binary arithmetic coding and embedded bit-stream. However it is still difficult to find an objective method to evaluate the image quality of lossy-compressed medical images so far. In this paper, we present an approach to evaluate the image quality by using a computer aided diagnosis (CAD) system. We selected 77 cases of CT images, bearing benign and malignant lung nodules with confirmed pathology, from our clinical Picture Archiving and Communication System (PACS). We have developed a prototype of CAD system to classify these images into benign ones and malignant ones, the performance of which was evaluated by the receiver operator characteristics (ROC) curves. We first used JPEG 2000 to compress these cases of images with different compression ratio from lossless to lossy, and used the CAD system to classify the cases with different compressed ratio, then compared the ROC curves from the CAD classification results. Support vector machine (SVM) and neural networks (NN) were used to classify the malignancy of input nodules. In each approach, we found that the area under ROC (AUC) decreases with the increment of compression ratio with small fluctuations.
机译:图像压缩已用于提高通信效率和存储容量。基于小波变换的JPEG 2000压缩与其他压缩方法相比具有优势,例如RO1编码,错误恢复能力,自适应二进制算术编码和嵌入式比特流。但是,到目前为止,仍然很难找到一种客观的方法来评估有损压缩的医学图像的图像质量。在本文中,我们提出了一种使用计算机辅助诊断(CAD)系统评估图像质量的方法。我们从临床图片存档和通信系统(PACS)中选择了77例CT图像,这些CT图像带有经病理证实的良性和恶性肺结节。我们已经开发了一个CAD系统原型,可以将这些图像分为良性和恶性图像,并通过接收器操作员特征(ROC)曲线评估其性能。我们首先使用JPEG 2000压缩这些具有不同压缩比(从无损到有损)的图像案例,然后使用CAD系统对具有不同压缩比的案例进行分类,然后根据CAD分类结果比较ROC曲线。支持向量机(SVM)和神经网络(NN)用于对输入结节的恶性进行分类。在每种方法中,我们发现ROC(AUC)下的面积随着压缩比的增加而减小,并且波动很小。

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