数字成像和医学通信数据分析中的压缩和纹理整合综合研究

A. Shakya, Anurag Vidyarthi
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摘要

为应对 COVID-19 大流行及其对医疗资源造成的压力,本研究全面回顾了可用于整合图像压缩技术和统计纹理分析的各种技术,以优化医学数字成像和通信(DICOM)文件的存储。在评估四种主流图像压缩算法(即离散余弦变换 (DCT)、离散小波变换 (DWT)、分形压缩算法 (FCA) 和矢量量化算法 (VQA))时,本研究重点关注它们在压缩数据的同时保留基本纹理特征(如对比度、相关性、角秒矩 (ASM) 和反差矩 (IDM))的能力。在 DICOM 分析中,与方向无关的灰度级共现矩阵(GLCM)是一个关键观察点,它揭示了两个中间扫描纹理特征测量之间的有趣变化。从性能上看,DCT、DWT、FCA 和 VQA 算法的最小压缩比 (CR) 分别为 27.87、37.91、33.26 和 27.39,最大压缩比分别为 34.48、68.96、60.60 和 38.74。这项研究还对 COVID-19 患者的不同 CT 胸部扫描进行了统计分析,突出显示了不断变化的纹理模式。最后,这项工作强调了将图像压缩和纹理特征量化结合起来监测与人体胸部状况有关的变化的潜力,为重要医学影像的高效存储和诊断评估提供了一个前景广阔的途径。
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Comprehensive Study of Compression and Texture Integration for Digital Imaging and Communications in Medicine Data Analysis
In response to the COVID-19 pandemic and its strain on healthcare resources, this study presents a comprehensive review of various techniques that can be used to integrate image compression techniques and statistical texture analysis to optimize the storage of Digital Imaging and Communications in Medicine (DICOM) files. In evaluating four predominant image compression algorithms, i.e., discrete cosine transform (DCT), discrete wavelet transform (DWT), the fractal compression algorithm (FCA), and the vector quantization algorithm (VQA), this study focuses on their ability to compress data while preserving essential texture features such as contrast, correlation, angular second moment (ASM), and inverse difference moment (IDM). A pivotal observation concerns the direction-independent Grey Level Co-occurrence Matrix (GLCM) in DICOM analysis, which reveals intriguing variations between two intermediate scans measured with texture characteristics. Performance-wise, the DCT, DWT, FCA, and VQA algorithms achieved minimum compression ratios (CRs) of 27.87, 37.91, 33.26, and 27.39, respectively, with maximum CRs at 34.48, 68.96, 60.60, and 38.74. This study also undertook a statistical analysis of distinct CT chest scans from COVID-19 patients, highlighting evolving texture patterns. Finally, this work underscores the potential of coupling image compression and texture feature quantification for monitoring changes related to human chest conditions, offering a promising avenue for efficient storage and diagnostic assessment of critical medical imaging.
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