Multi-circle detection for bladder cancer diagnosis based on artificial immune systems

D. Lu, Xiao-Hua Yu
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引用次数: 1

Abstract

Bladder cancer is the fourth most common type of cancer in men and the ninth in women in United States. A recent approach for early bladder cancer detection is to mix human urine samples with some very small beads that are coated with special biochemical materials which can bind to tumor cells, but not to normal cells. By examining and analyzing bead images of urine samples under a microscope, patients with potential cancer risk can be identified. Multi-circle detection is a challenging problem for processing bead images in an automatic bladder cancer diagnosis system, due to the large number and non-ideal shapes of objects (e.g., beads with cancer cells) in microscope images. In this study, a new approach based on real valued artificial immune system is developed and tested. Computer simulation results show that this algorithm outperforms traditional methods such as circular Hough Transform and geometric characteristic based methods in terms of both precision and robustness.
基于人工免疫系统的膀胱癌多环检测诊断
在美国,膀胱癌是男性中第四大最常见的癌症,在女性中排名第九。最近的一种早期膀胱癌检测方法是将人类尿液样本与一些非常小的珠子混合,这些珠子表面涂有特殊的生化材料,可以与肿瘤细胞结合,但不能与正常细胞结合。通过在显微镜下检查和分析尿液样本的头部图像,可以识别有潜在癌症风险的患者。在膀胱癌自动诊断系统中,由于显微镜图像中的物体(如带有癌细胞的珠子)数量多且形状不理想,因此多圆检测是处理珠子图像的一个具有挑战性的问题。本研究提出并试验了一种基于实值人工免疫系统的新方法。计算机仿真结果表明,该算法在精度和鲁棒性方面都优于传统的圆形霍夫变换和基于几何特征的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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