Cheng Shu-Chen, Huang Yueh-Min
Department of Engineering Science, National Cheng Hung University, Tainan 701, Taiwan, ROC.
IEEE Trans Inf Technol Biomed. 2003 Sep;7(3):163-70. doi: 10.1109/titb.2003.813792.
A novel diagnostic scheme to develop quantitative indexes of diabetes is introduced in this paper. The fractal dimension of the vascular distribution is estimated because we discovered that the fractal dimension of a severe diabetic patient's retinal vascular distribution appears greater than that of a normal human's. The issue of how to yield an accurate fractal dimension is to use high-quality images. To achieve a better image-processing result, an appropriate image-processing algorithm is adopted in this paper. Another important fractal feature introduced in this paper is the measure of lacunarity, which describes the characteristics of fractals that have the same fractal dimension but different appearances. For those vascular distributions in the same fractal dimension, further classification can be made using the degree of lacunarity. In addition to the image-processing technique, the resolution of original image is also discussed here. In this paper, the influence of the image resolution upon the fractal dimension is explored. We found that a low-resolution image cannot yield an accurate fractal dimension. Therefore, an approach for examining the lower bound of image resolution is also proposed in this paper. As for the classification of diagnosis results, four different approaches are compared to achieve higher accuracy. In this study, the fractal dimension and the measure of lacunarity have shown their significance in the classification of diabetes and are adequate for use as quantitative indexes.
本文介绍了一种用于制定糖尿病定量指标的新型诊断方案。由于我们发现重度糖尿病患者视网膜血管分布的分形维数大于正常人的,因此对血管分布的分形维数进行了估计。获得准确分形维数的问题在于使用高质量图像。为了获得更好的图像处理结果,本文采用了合适的图像处理算法。本文引入的另一个重要分形特征是空隙率度量,它描述了具有相同分形维数但外观不同的分形的特征。对于那些具有相同分形维数的血管分布,可以使用空隙率程度进行进一步分类。除了图像处理技术外,本文还讨论了原始图像的分辨率。本文探讨了图像分辨率对分形维数的影响。我们发现低分辨率图像无法得出准确的分形维数。因此,本文还提出了一种检查图像分辨率下限的方法。至于诊断结果的分类,比较了四种不同的方法以实现更高的准确性。在本研究中,分形维数和空隙率度量在糖尿病分类中已显示出其重要性,并且足以用作定量指标。