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基于骨盆 X 射线双视图分析的前列腺近距离放射治疗中碘 125 种子数量的自动估算。

Automated estimation of number of implanted iodine-125 seeds for prostate brachytherapy based on two-view analysis of pelvic radiographs.

机构信息

Radiation Therapy Center, Kurume University Hospital, 67, Asahi-machi, Kurume, Fukuoka 830-0011, Japan.

出版信息

J Radiat Res. 2012 Sep;53(5):742-52. doi: 10.1093/jrr/rrs018. Epub 2012 Jul 5.

Abstract

Digital pelvic radiographs are used to identify the locations of implanted iodine-125 seeds and their numbers after insertion. However, it is difficult and laborious to visually identify and count all implanted seeds on the pelvic radiographs within a short time. Therefore, our purpose in this research was to develop an automated method for estimation of the number of implanted seeds based on two-view analysis of pelvic radiographs. First, the images of the seed candidates on the pelvic image were enhanced using a difference of Gaussian filter, and were identified by binarizing the enhanced image with a threshold value determined by multiple-gray level thresholding. Second, a simple rule-base method using ten image features was applied for false positive removal. Third, the candidates for the likely number of a multiply overlapping seed region, which may include one or more seeds, were estimated by a seed area histogram analysis and calculation of the probability of the likely number of overlapping seeds. As a result, the proposed method detected 99.9% of implanted seeds with 0.71 false positives per image on average in a test for training cases, and 99.2% with 0.32 false positives in a validation test. Moreover, the number of implanted seeds was estimated correctly at an overall recognition rate of 100% in the validation test using the proposed method. Therefore, the verification time for the number of implanted seeds could be reduced by the provision of several candidates for the likely number of seeds.

摘要

数字骨盆射线照相术用于识别植入碘 125 种子的位置及其插入后的数量。然而,在短时间内通过肉眼识别和计数所有植入的种子是困难且费力的。因此,我们在这项研究中的目的是开发一种基于骨盆射线照相的两视图分析来估算植入种子数量的自动方法。首先,使用高斯差分滤波器增强骨盆图像上的种子候选者的图像,并通过使用由多灰度阈值确定的阈值将增强的图像二值化来识别。其次,使用十个图像特征的简单规则基方法用于去除假阳性。第三,通过种子区域直方图分析和重叠种子的可能数量的概率计算来估计可能存在一个或多个种子的多重重叠种子区域的候选者。结果,在训练病例的测试中,所提出的方法平均每个图像检测到 99.9%的植入种子,有 0.71 个假阳性,在验证测试中,有 99.2%的植入种子,有 0.32 个假阳性。此外,使用所提出的方法在验证测试中以 100%的整体识别率正确地估算了植入种子的数量。因此,通过提供几个种子的可能数量的候选者,可以减少验证种子数量的时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d138/3430425/a61383a46274/rrs01801.jpg

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