Suppr超能文献

脊柱放射治疗和椎体水平二次检查的自动治疗计划框架

An Automated Treatment Planning Framework for Spinal Radiation Therapy and Vertebral-Level Second Check.

机构信息

Department of Radiation Physics, University of Texas MD Anderson Cancer Center, Houston, Texas.

Department of Radiation Physics, University of Texas MD Anderson Cancer Center, Houston, Texas.

出版信息

Int J Radiat Oncol Biol Phys. 2022 Nov 1;114(3):516-528. doi: 10.1016/j.ijrobp.2022.06.083. Epub 2022 Jul 3.

Abstract

PURPOSE

Complicating factors such as time pressures, anatomic variants in the spine, and similarities in adjacent vertebrae are associated with incorrect level treatments of the spine. The purpose of this work was to mitigate such challenges by fully automating the treatment planning process for diagnostic and simulation computed tomography (CT) scans.

METHODS AND MATERIALS

Vertebral bodies are labeled on CT scans of any length using 2 intendent deep-learning models-mirroring 2 different experts labeling the spine. Then, a U-Net++ architecture was trained, validated, and tested to contour each vertebra (n = 220 CT scans). Features from the CT and auto-contours were input into a random forest classifier to predict whether vertebrae were correctly labeled. This classifier was trained using auto-contours from cone beam computed tomography, positron emission tomography/CT, simulation CT, and diagnostic CT images (n = 56 CT scans, 751 contours). Auto-plans were generated via scripting. Each model was combined into a framework to make a fully automated clinical tool. A retrospective planning study was conducted in which 3 radiation oncologists scored auto-plan quality on an unseen patient cohort (n = 60) on a 5-point scale. CT scans varied in scan length, presence of surgical implants, imaging protocol, and metastatic burden.

RESULTS

The results showed that the uniquely designed convolutional neural networks accurately labeled and segmented vertebral bodies C1-L5 regardless of imaging protocol or metastatic burden. Mean dice-similarity coefficient was 85.0% (cervical), 90.3% (thoracic), and 93.7% (lumbar). The random forest classifier predicted mislabeling across various CT scan types with an area under the curve of 0.82. All contouring and labeling errors within treatment regions (11 of 11), including errors from patient plans with atypical anatomy (eg, T13, L6) were detected. Radiation oncologists scored 98% of simulation CT-based plans and 92% of diagnostic CT-based plans as clinically acceptable or needing minor edits for patients with typical anatomy. On average, end-to-end treatment planning time of the clinical tool was less than 8 minutes.

CONCLUSIONS

This novel method to automatically verify, contour, and plan palliative spine treatments is efficient and effective across various CT scan types. Furthermore, it is the first to create a clinical tool that can automatically verify vertebral level in CT images.

摘要

目的

时间压力、脊柱解剖变异和相邻椎体相似等复杂因素与脊柱的不正确水平治疗有关。本研究的目的是通过完全自动化诊断和模拟计算机断层扫描(CT)扫描的治疗计划过程来减轻这些挑战。

方法和材料

使用 2 个深度学习模型(镜像 2 位不同的专家对脊柱进行标记)对任意长度的 CT 扫描进行椎体标记。然后,使用 U-Net++ 架构进行训练、验证和测试,以描绘每个椎体(n=220 个 CT 扫描)。将 CT 和自动轮廓的特征输入随机森林分类器,以预测椎体是否正确标记。该分类器使用来自锥形束 CT、正电子发射断层扫描/CT、模拟 CT 和诊断 CT 图像的自动轮廓进行训练(n=56 个 CT 扫描,751 个轮廓)。自动计划通过脚本生成。将每个模型组合到一个框架中,以形成一个完全自动化的临床工具。对一个看不见的患者队列(n=60)进行了回顾性计划研究,3 位放射肿瘤学家对自动计划的质量进行了 5 分制评分。CT 扫描的长度、手术植入物的存在、成像方案和转移负担各不相同。

结果

结果表明,专门设计的卷积神经网络可以准确标记和分割 C1-L5 的椎体,无论成像方案或转移负担如何。平均骰子相似系数分别为 85.0%(颈椎)、90.3%(胸椎)和 93.7%(腰椎)。随机森林分类器在各种 CT 扫描类型中预测错误标记的曲线下面积为 0.82。治疗区域内的所有轮廓和标记错误(11 个中有 11 个),包括来自具有非典型解剖结构的患者计划的错误(例如 T13、L6)均被检测到。放射肿瘤学家对基于模拟 CT 的计划的评分有 98%,对基于诊断 CT 的计划的评分有 92%为临床可接受,或需要对具有典型解剖结构的患者进行较小的编辑。平均而言,临床工具的端到端治疗计划时间不到 8 分钟。

结论

这种新方法可高效、有效地自动验证、描绘和规划姑息性脊柱治疗,适用于各种 CT 扫描类型。此外,它是第一个创建可以自动验证 CT 图像中椎体水平的临床工具。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验