PP04 演讲时间:下午 4:27

IF 1.7 4区 医学 Q4 ONCOLOGY Brachytherapy Pub Date : 2024-10-25 DOI:10.1016/j.brachy.2024.08.023
Tonghe Wang PhD, Yining Feng PhD, Joel Beaudry MS, David Aramburu PhD, Marisa Kollmeier MD, Antonio L. Damato PhD
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引用次数: 0

摘要

目的 在目前的高剂量率前列腺近距离放射治疗过程中,医生在手术室内通过超声波引导插入导管。随后采集 CT/MR/ 超声波图像,并手动划定目标/危险器官,以优化治疗方案。导管植入依赖于医生的经验,在植入过程中缺乏对计划质量的反馈。导管植入不理想可能会导致计划不理想或导管需要额外调整,从而增加麻醉时间。在本研究中,我们探索了一种新型的自动、实时导管跟踪和目标/器官分割方法,该方法可与当前的计划优化程序一起使用,从而提供即时的计划质量反馈,使医生能够优化针的放置,并加快后续的计划流程。材料与方法开发了一种深度学习神经网络,用于获取超声实时视频的最后 5 帧,并在最后一帧上提供其检测到的所有导管的坐标以及前列腺、直肠和尿道的轮廓。超声波探头扫描整个前列腺区域后,将每一帧上的导管坐标拟合到相应的三维线上,以生成每根导管在三维空间中的线函数,并将每一帧的分割轮廓叠加在一起。回顾性调查了在本诊所接受前列腺 HDR 近距离放射治疗的 518 例患者,每例患者在导管置入后都进行了超声图像采集、轮廓绘制和数字化治疗规划。其中,482 例患者被用于训练队列,36 例患者被用于测试队列。结果在测试患者的 477 根导管中,所提出的方法成功检测出 472 根导管,准确率达 99.0%。在二维超声图像上,检测到的导管与地面真实导管之间的平均位移为(0.63±0.55)毫米。前列腺分割的平均 Dice 分数为 0.90±0.08。在所有患者中,地面实况与分割结果之间的直肠最大距离平均为(2.80±1.71)毫米。地面实况与分割之间的尿道中心距离平均为(0.76±0.56)毫米。结论利用回顾性超声数据证明了所提出的方法在跟踪导管和分割目标及器官方面的准确性和效率。可以看出,所提出的基于人工智能的方法可以促进前列腺 HDR 近距离放射治疗的实时、基于 US 的自动治疗计划程序。
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PP04 Presentation Time: 4:27 PM

Purpose

In the current procedure of high-dose-rate prostate brachytherapy, physicians insert catheters guided by ultrasound in the operating room. Subsequently, CT/MR/ultrasound images are acquired, and manual delineation of target/organs-at-risk is performed for treatment plan optimization. Catheter placement relies on physician experience, lacking feedback on plan quality during the implantation. Sub-optimal catheter implantation may lead to suboptimal plans or additional catheter adjustments requiring additional anesthesia time. In this study, we explored a novel automatic, real-time catheter tracking and target/organ segmentation method, which can be used with the current plan optimization program to potentially provide an instant plan quality feedback permitting physicians to optimize needle placement, and expediting the subsequent planning process.

Materials and Methods

A deep learning neural network was developed to take the last 5 frames of the real-time videos from ultrasound and provide the coordinates of all the catheters it detected, as well as the contours of prostate, rectum and urethra, on the last frame. After the ultrasound probe scanned the entire prostate region, the catheter coordinates on each frame were then fitted to corresponding 3D lines in order to produce the line functions of each catheter in 3D space, as well as the segmented contours of each frame were stacked together. A total of 518 patients who underwent prostate HDR brachytherapy as boost treatment in our clinic were retrospectively investigated, each of which had ultrasound images acquired, contoured and digitized for treatment planning after catheter placement. Among them, 482 patients were used for the training cohort and 36 patients were used for the testing cohort. The median number of catheters per patient was 14.

Results

Among the 477 catheters in the testing patients, the proposed method successfully detected 472 catheters, with an accuracy of 99.0%. The average displacement between the detected catheters and the ground truth catheters on 2D ultrasound images is 0.63±0.55 mm. The mean Dice score for prostate segmentation is 0.90±0.08. The maximum distance of rectum between ground truth and segmentation is 2.80±1.71 mm on average among all patients. The mean center distance of urethra between ground truth and segmentation is 0.76±0.56 mm. The mean time of processing each frame is 15.54±1.31 ms.

Conclusion

The accuracy and efficiency of the proposed method in tracking catheters and segmenting target and organs have been demonstrated with retrospective ultrasound data. It is seen that the proposed artificial intelligence-based method can facilitate a real-time, US-based automatic treatment planning program for prostate HDR brachytherapy.
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来源期刊
Brachytherapy
Brachytherapy 医学-核医学
CiteScore
3.40
自引率
21.10%
发文量
119
审稿时长
9.1 weeks
期刊介绍: Brachytherapy is an international and multidisciplinary journal that publishes original peer-reviewed articles and selected reviews on the techniques and clinical applications of interstitial and intracavitary radiation in the management of cancers. Laboratory and experimental research relevant to clinical practice is also included. Related disciplines include medical physics, medical oncology, and radiation oncology and radiology. Brachytherapy publishes technical advances, original articles, reviews, and point/counterpoint on controversial issues. Original articles that address any aspect of brachytherapy are invited. Letters to the Editor-in-Chief are encouraged.
期刊最新文献
Editorial Board Masthead Table of Contents Thursday, July 11, 20244:00 PM - 5:00 PM PP01 Presentation Time: 4:00 PM MSOR12 Presentation Time: 5:55 PM
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