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一种基于Mask-RCNN和三维形态分析的医学CT图像中输尿管支架结垢检测方法。

A method for detecting ureteral stent encrustations in medical CT images based on Mask-RCNN and 3D morphological analysis.

作者信息

Hu Hongji, Yan Minbo, Liu Zicheng, Qiu Junliang, Dai Yingbo, Tang Yuxin

机构信息

Department of Urology, Fifth Affiliated Hospital of Sun Yat-sen University, Zhuhai, Guangdong, China.

出版信息

Front Physiol. 2024 Aug 29;15:1432121. doi: 10.3389/fphys.2024.1432121. eCollection 2024.

Abstract

OBJECTIVE

To develop and validate a method for detecting ureteral stent encrustations in medical CT images based on Mask-RCNN and 3D morphological analysis.

METHOD

All 222 cases of ureteral stent data were obtained from the Fifth Affiliated Hospital of Sun Yat-sen University. Firstly, a neural network was used to detect the region of the ureteral stent, and the results of the coarse detection were completed and connected domain filtered based on the continuity of the ureteral stent in 3D space to obtain a 3D segmentation result. Secondly, the segmentation results were analyzed and detected based on the 3D morphology, and the centerline was obtained through thinning the 3D image, fitting and deriving the ureteral stent, and obtaining radial sections. Finally, the abnormal areas of the radial section were detected through polar coordinate transformation to detect the encrustation area of the ureteral stent.

RESULTS

For the detection of ureteral stent encrustations in the ureter, the algorithm's confusion matrix achieved an accuracy of 79.6% in the validation of residual stones/ureteral stent encrustations at 186 locations. Ultimately, the algorithm was validated in 222 cases, achieving a ureteral stent segmentation accuracy of 94.4% and a positive and negative judgment accuracy of 87.3%. The average detection time per case was 12 s.

CONCLUSION

The proposed medical CT image ureteral stent wall stone detection method based on Mask-RCNN and 3D morphological analysis can effectively assist clinical doctors in diagnosing ureteral stent encrustations.

摘要

目的

开发并验证一种基于Mask-RCNN和三维形态分析的医学CT图像中输尿管支架结壳检测方法。

方法

222例输尿管支架数据均来自中山大学附属第五医院。首先,利用神经网络检测输尿管支架区域,基于输尿管支架在三维空间中的连续性对粗检测结果进行连通域滤波,得到三维分割结果。其次,基于三维形态对分割结果进行分析检测,通过对三维图像进行细化、拟合推导输尿管支架并获取径向截面来获得中心线。最后,通过极坐标变换检测径向截面的异常区域,以检测输尿管支架的结壳区域。

结果

对于输尿管中输尿管支架结壳的检测,该算法的混淆矩阵在186个位置的残余结石/输尿管支架结壳验证中准确率达到79.6%。最终,该算法在222例病例中得到验证,输尿管支架分割准确率达到94.4%,正负判断准确率达到87.3%。每例平均检测时间为12秒。

结论

所提出的基于Mask-RCNN和三维形态分析的医学CT图像输尿管支架壁结石检测方法能够有效辅助临床医生诊断输尿管支架结壳。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ff2b/11394187/83fabb7e3101/fphys-15-1432121-g002.jpg

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