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首页> 外文期刊>Journal of medical systems >A statistical segmentation method for measuring age-related macular degeneration in retinal fundus images.
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A statistical segmentation method for measuring age-related macular degeneration in retinal fundus images.

机译:一种用于统计眼底图像中年龄相关性黄斑变性的统计分割方法。

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摘要

Day by day, huge amount of information is collected in medical databases. These databases include quite interesting information that could be exploited in diagnosis of illnesses and medical treatment of patients. Classification of these data is getting harder as the databases are expanded. On the other hand, automated image analysis and processing is one of the most promising areas of computer vision used in medical diagnosis and treatment. In this context, retinal fundus images, offering very high resolutions that are sufficient for most of the clinical cases, provide many indications that could be exploited in diagnosing and screening retinal degenerations or diseases. Consequently, there is a strong demand in developing automated evaluation systems to utilize the information stored in the medical databases. This study proposes an automatic method for segmentation of ARMD in retinal fundus images. The method used in the automated system extracts lesions of the ARMD by employing a statistical method. In order to do this, the statistical segmentation method is first used to extract the healthy area of the macula that is more familiar and regular than the unhealthy parts. Here, characteristic images of the patterns of the macula are extracted and used to segment the healthy textures of an eye. In addition to this, blood vessels are also extracted and then classified as healthy regions. Finally, the inverse image of the segmented image is generated which determines the unhealthy regions of the macula. The performance of the method is examined on various quality retinal fundus images. Segmented images are also compared with consecutive images of the same patient to follow up the changes in the disease.
机译:每天,医疗数据库中都会收集大量信息。这些数据库包含相当有趣的信息,可用于疾病诊断和患者的医学治疗。随着数据库的扩展,这些数据的分类变得越来越困难。另一方面,自动图像分析和处理是医学诊断和治疗中计算机视觉最有前途的领域之一。在这种情况下,视网膜眼底图像提供了足以满足大多数临床病例的非常高的分辨率,并提供了许多可用于诊断和筛查视网膜变性或疾病的适应症。因此,强烈需要开发自动评估系统以利用存储在医学数据库中的信息。本研究提出了一种自动分割视网膜底图像中ARMD的方法。自动化系统中使用的方法通过采用统计方法来提取ARMD的病变。为此,首先使用统计分割方法提取黄斑的健康区域,该区域比不健康的部分更熟悉且规则。在此,提取出黄斑图案的特征图像,并将其用于分割眼睛的健康纹理。除此之外,还提取血管,然后将其分类为健康区域。最后,生成分割图像的反像,其确定了黄斑的不健康区域。在各种质量的视网膜眼底图像上检查该方法的性能。还将分割后的图像与同一患者的连续图像进行比较,以跟踪疾病的变化。

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