Measurement of ureteral length: Comparison of deep learning-based method and other estimation methods on CT and KUB

IF 7 2区 医学 Q1 BIOLOGY Computers in biology and medicine Pub Date : 2024-11-08 DOI:10.1016/j.compbiomed.2024.109374
Kexin Wang , Zheng Zhao , Yi Liu , Rile Nai , Changwei Yuan , Pengsheng Wu , Jialun Li , Xiaodong Zhang , He Wang
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Abstract

Background

Accurate preoperative assessment of ureteral length is crucial for effective ureteral stenting.

Purpose

Utilize a deep learning approach to measure ureter length on CT urography (CTU) images and compare the obtained results with those derived from other estimation methods.

Methods

In a retrospective cohort (cohort A, n = 411), CTU images were collected and used to develop a 3D deep learning model for the segmentation of bilateral ureters. The centerline of the ureters was determined based on the segmentation, and the length of the ureters was automatically obtained (CTU_ai). Another cohort (cohort B, n = 220) was collected as the hold-out test for the model. All patients in cohort B had KUB, non-contrast enhanced CT (CT NoC), and CTU images. Cohort B utilized eight measurement methods, with one annotated by two radiologists serving as the reference standard (CTU_ref) and the remaining seven as the studied methods, including three measurement methods applied to CTU (CTU_ai, CTU_oblique, CTU_slice), two applied to CT NoC (CT_oblique, CT_slice), and two applied to KUB (KUB_short, KUB_long). The results of the seven studied methods were compared to those of the reference in cohort B.

Results

Among the 220 patients (96 females, 124 males), 437 ureters were measured for length (218 left, 219 right), with a median length of 24.7 (IQR 23.2–26.2) cm. No significant differences were observed between genders or laterality (both P > 0.05). Moreover, there was no correlation between ureteral length and age (r = −0.027, P = 0.573). The ureteral length measured by CTU_ai was not significantly different from that measured by CTU_ref (P = 0.514), whereas the length measured by the other studied methods was significantly different from that measured by CTU_ref (all P < 0.001). The ICC values with their 95 % confidence intervals (CIs) for the comparison between the reference standard (CTU_ref) and the other measurement methods: CTU_ai (ICC = 0.852, 95 % CI 0.825–0.876), CTU_oblique (ICC = 0.351, 95 % CI -0.083-0.689), CTU_slice (ICC = 0.269, 95 % CI -0.095-0.573), CTU_oblique_slice (ICC = 0.059, 95 % CI -0.032-0.218), CTU_slice (ICC = 0.049, 95 % CI -0.028-0.188), KUB_short (ICC = 0.151, 95 % CI 0.051–0.247), and KUB_long (ICC = 0.147, 95 % CI 0.034–0.253). For CTU_ai, in 89.0 % of the ureters, the ureteral length deviation was within 20 mm of the reference standard, which was the highest among all the studied methods (all P < 0.001).

Conclusion

The deep learning model offers a reliable and accurate tool for ureteral length measurement on CTU images, which could enhance the effectiveness of ureteral stenting procedures. Its performance surpasses traditional measurement methods, making it a promising technology for integration into clinical practice.
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输尿管长度测量:基于深度学习的方法与 CT 和 KUB 上的其他估算方法的比较。
背景:目的:利用深度学习方法测量 CT 尿路造影(CTU)图像上的输尿管长度,并将所得结果与其他估算方法得出的结果进行比较:方法:在一个回顾性队列(队列 A,n = 411)中,收集 CTU 图像并用于开发一个三维深度学习模型,以分割双侧输尿管。根据分割结果确定输尿管的中心线,并自动获得输尿管的长度(CTU_ai)。收集了另一个队列(队列 B,n = 220)作为模型的保留测试。队列 B 中的所有患者都有 KUB、非对比度增强 CT(CT NoC)和 CTU 图像。队列 B 使用了八种测量方法,其中一种由两名放射科医生注释作为参考标准(CTU_ref),其余七种作为研究方法,包括应用于 CTU 的三种测量方法(CTU_ai、CTU_oblique、CTU_slice)、应用于 CT NoC 的两种测量方法(CT_oblique、CT_slice)和应用于 KUB 的两种测量方法(KUB_short、KUB_long)。将所研究的七种方法的结果与队列 B 中的参考结果进行了比较:在 220 名患者(96 名女性,124 名男性)中,测量了 437 根输尿管的长度(左侧 218 根,右侧 219 根),中位长度为 24.7 厘米(IQR 23.2-26.2)。性别和侧位之间无明显差异(P>0.05)。此外,输尿管长度与年龄之间没有相关性(r = -0.027,P = 0.573)。CTU_ai 测得的输尿管长度与 CTU_ref 测得的输尿管长度无显著差异(P = 0.514),而其他研究方法测得的输尿管长度与 CTU_ref 测得的输尿管长度有显著差异(均为 P):深度学习模型为在 CTU 图像上测量输尿管长度提供了可靠而准确的工具,可提高输尿管支架手术的效果。它的性能超越了传统测量方法,因此是一种有望融入临床实践的技术。
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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来源期刊
Computers in biology and medicine
Computers in biology and medicine 工程技术-工程:生物医学
CiteScore
11.70
自引率
10.40%
发文量
1086
审稿时长
74 days
期刊介绍: Computers in Biology and Medicine is an international forum for sharing groundbreaking advancements in the use of computers in bioscience and medicine. This journal serves as a medium for communicating essential research, instruction, ideas, and information regarding the rapidly evolving field of computer applications in these domains. By encouraging the exchange of knowledge, we aim to facilitate progress and innovation in the utilization of computers in biology and medicine.
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