基于时间的经直肠超声前列腺活检针分割算法。

Temporal-based needle segmentation algorithm for transrectal ultrasound prostate biopsy procedures.

机构信息

Imaging Research Laboratories, Robarts Research Institute, University of Western Ontario, London, Ontario N6A 5K8, Canada.

出版信息

Med Phys. 2010 Apr;37(4):1660-73. doi: 10.1118/1.3360440.

Abstract

PURPOSE

Automatic identification of the biopsy-core tissue location during a prostate biopsy procedure would provide verification that targets were adequately sampled and would allow for appropriate intraprocedure biopsy target modification. Localization of the biopsy core requires accurate segmentation of the biopsy needle and needle tip from transrectal ultrasound (TRUS) biopsy images. A temporal-based TRUS needle segmentation algorithm was developed specifically for the prostate biopsy procedure to automatically identify the TRUS image containing the biopsy needle from a collection of 2D TRUS images and to segment the biopsy-core location from the 2D TRUS image.

METHODS

The temporal-based segmentation algorithm performs a temporal analysis on a series of biopsy TRUS images collected throughout needle insertion and withdrawal. Following the identification of points of needle insertion and retraction, the needle axis is segmented using a Hough transform-based algorithm, which is followed by a temporospectral TRUS analysis to identify the biopsy-needle tip. Validation of the temporal-based algorithm is performed on 108 TRUS biopsy sequences collected from the procedures of ten patients. The success of the temporal search to identify the proper images was manually assessed, while the accuracies of the needle-axis and needle-tip segmentations were quantitatively compared to implementations of two other needle segmentation algorithms within the literature.

RESULTS

The needle segmentation algorithm demonstrated a >99% accuracy in identifying the TRUS image at the moment of needle insertion from the collection of real-time TRUS images throughout the insertion and withdrawal of the biopsy needle. The segmented biopsy-needle axes were accurate to within 2.3 +/- 2.0 degrees and 0.48 +/- 0.42 mm of the gold standard. Identification of the needle tip to within half of the biopsy-core length (<10 mm) was 95% successful with a mean error of 2.4 +/- 4.0 mm. Needle-tip detection using the temporal-based algorithm was significantly more accurate (p < 0.001) than the other two algorithms tested, while the segmentation of the needle axis was not significantly different between the three algorithms.

CONCLUSIONS

The temporal-based needle segmentation algorithm accurately segments the location of the biopsy core from 2D TRUS images of clinical prostate biopsy procedures. The results for needle-tip localization demonstrated that the temporal-based algorithm is significantly more accurate than implementations of some existing needle segmentation algorithms within the literature.

摘要

目的

在前列腺活检过程中自动识别活检芯组织位置将提供对目标被充分取样的验证,并允许对适当的术中活检目标进行修改。活检芯的定位需要从经直肠超声(TRUS)活检图像中准确地分割活检针和针尖。专门为前列腺活检程序开发了一种基于时间的 TRUS 针分割算法,以自动从一组 2D TRUS 图像中识别包含活检针的 TRUS 图像,并从 2D TRUS 图像中分割活检芯位置。

方法

基于时间的分割算法对在针插入和拔出过程中收集的一系列活检 TRUS 图像进行时间分析。在确定进针和退针点后,使用基于霍夫变换的算法分割针轴,然后进行时频谱 TRUS 分析以识别活检针尖端。在来自十个患者手术的 108 个 TRUS 活检序列上验证基于时间的算法。手动评估时间搜索以识别适当图像的成功率,同时定量比较了文献中两种其他针分割算法的准确性。

结果

针分割算法在从整个活检针插入和拔出过程中的实时 TRUS 图像集合中识别插入时刻的 TRUS 图像的准确率>99%。分割的活检针轴的准确度在 2.3 +/- 2.0 度和 0.48 +/- 0.42 毫米内与金标准一致。在将针尖端识别到活检芯长度的一半以内(<10 毫米)的成功率为 95%,平均误差为 2.4 +/- 4.0 毫米。使用基于时间的算法进行针尖端检测的准确性明显高于测试的其他两种算法(p < 0.001),而三种算法之间的针轴分割没有明显差异。

结论

基于时间的针分割算法准确地从临床前列腺活检程序的 2D TRUS 图像中分割活检芯的位置。针尖端定位的结果表明,基于时间的算法明显比文献中现有的一些针分割算法实现更准确。

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