首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Automatic Colonic Polyp Detection Using Multiobjective Evolutionary Techniques
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Automatic Colonic Polyp Detection Using Multiobjective Evolutionary Techniques

机译:使用多目标进化技术的自动结肠息肉检测

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Colonic polyps appear like elliptical protrusions on the inner wall of the colon. Curvature based features for colonic polyp detection have proved to be successful in several computer-aided diagnostic CT colonography (CTC) systems. Some simple thresholds are set for those features for creating initial polyp candidates, sophisticated classification scheme are then applied on these polyp candidates to reduce false positives. There are two objective functions, the number of missed polyps and false positive rate, that need to be minimized when setting those thresholds. These two objectives conflict and it is usually difficult to optimize them both by a gradient search. In this paper, we utilized a multiobjective evolutionary method, the Strength Pareto Evolutionary Algorithm (SPEA2), to optimize those thresholds. SPEA2 incorporates the concept of Pareto dominance and applies genetic techniques to evolve individual solutions to the Pareto front. The SPEA2 algorithm was applied to colon CT images from 27 patients each having a prone and a supine scan. There are 40 colonoscopically confirmed polyps resulting in 72 positive detections in CTC reading. The results obtained by SPEA2 were compared with those obtained by our old system, where an appropriate value was set for each of those thresholds by a histogram examination method. If we keep the sensitivity the same as that of our old system, the SPEA2 algorithm reduced false positive rate by 76.4% from average false positive 55.6 to 13.3 per data set. If the false positive rate is kept the same for both systems, SPEA2 increased the sensitivity by 13.1% from 53 to 61 among 72 ground truth detections.
机译:结肠息肉看起来像在结肠内壁上的椭圆形突起。结肠息肉检测的基于曲率的功能已在多种计算机辅助诊断CT结肠成像(CTC)系统中获得成功。为那些用于创建初始息肉候选者的功能设置一些简单的阈值,然后将复杂的分类方案应用于这些息肉候选者以减少误报。设置这些阈值时,需要最小化两个目标函数,即息肉漏诊数和假阳性率。这两个目标是冲突的,通常很难通过梯度搜索来优化它们。在本文中,我们使用了多目标进化方法,即强度帕累托进化算法(SPEA2),来优化这些阈值。 SPEA2结合了帕累托优势的概念,并应用遗传技术来发展帕累托前沿的单个解决方案。将SPEA2算法应用于来自27位俯卧和仰卧扫描患者的结肠CT图像。有40例经结肠镜检查确认的息肉导致CTC读数为72阳性。将通过SPEA2获得的结果与通过我们的旧系统获得的结果进行比较,在旧系统中,通过直方图检查方法为每个阈值设置了适当的值。如果我们保持灵敏度与旧系统相同,则SPEA2算法会将误报率从每个数据集的平均误报55.6降低76.4%至13.3。如果两个系统的误报率保持相同,则SPEA2在72个地面真相检测中将灵敏度从53%提高到61%,提高了13.1%。

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