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Multi-Regional Adaptive Image Compression (AIC) for Hip Fractures in Pelvis Radiography

机译:骨盆射线照相中髋部骨折的多区域自适应图像压缩(AIC)

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High resolution digital medical images are stored in DICOM (Digital Imaging and Communications in Medicine) format that requires high storage space in database. Therefore reducing the image size while maintaining diagnostic quality can increase the memory usage efficiency in PACS. In this study, diagnostic regions of interest (ROI) of pelvis radiographs marked by the radiologist, are segmented and adaptively compressed by using image processing algorithms. There are three ROIs marked by red, blue and green in every image. ROI contoured by red is defined as the most significant region in the image and compressed by lossless JPEG algorithm. Blue and green regions have less importance than the red region but still contain diagnostic data compared to the rest of the image. Therefore, these regions are compressed by lossy JPEG algorithm with higher quality factor than rest of the image. Non-contoured region is compressed by low quality factor which does not have any diagnostic information about the patient. Several compression ratios are used to determine sufficient quality and appropriate compression level. Compression ratio (CR), peak signal to noise ratio (PSNR), bits per pixel (BPP) and signal to noise ratio (SNR) values are calculated for objective evaluation of image quality. Experimental results show that original images can approximately be compressed six times without losing any diagnostic data. In pelvis radiographs marking multiple regions of interest and adaptive compression of more than one ROI is a new approach. It is believed that this method will improve database management efficiency of PACS while preserving diagnostic image content.
机译:高分辨率数字医学图像存储在DICOM(中医学数字成像和用于中的通信)格式,该格式需要数据库中的高存储空间。因此,在保持诊断质量的同时降低图像尺寸可以提高PACS中的存储器使用效率。在本研究中,通过使用图像处理算法分段并自适应地压缩骨盆射线照片的诊断区域(ROI)的诊断区域(ROI)被分割并自适应地压缩。每个图像都有三个标有红色,蓝色和绿色的rom。红色的ROI被定义为图像中最重要的区域,并通过无损JPEG算法压缩。蓝色和绿色区域的重要性比红色区域缺点,但与图像的其余部分相比仍然包含诊断数据。因此,这些区域被损耗的JPEG算法压缩,具有比图像的其余部分更高的质量系数。非转化区域被低质量因子压缩,这不具有关于患者的任何诊断信息。使用几种压缩比来确定足够的质量和适当的压缩水平。压缩比(CR),峰值信号到噪声比(PSNR),每像素(BPP)比特(BPP)和信噪比(SNR)值,用于客观评估图像质量。实验结果表明,原始图像大致六次近似被压缩,而不会丢失任何诊断数据。在骨盆射线照片中,标记多个兴趣区域和多于一个ROI的自适应压缩是一种新方法。据信,该方法将提高PACS的数据库管理效率,同时保留诊断图像内容。

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