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基于日常锥形束 CT 图像的头颈部解剖的主成分分析模型。

Principal component analysis modeling of Head-and-Neck anatomy using daily Cone Beam-CT images.

机构信息

Department of Radiation Oncology, Henry Ford Health System, 2799 W Grand Blvd, Detroit, MI, 48202, USA.

出版信息

Med Phys. 2018 Dec;45(12):5366-5375. doi: 10.1002/mp.13233. Epub 2018 Nov 2.

Abstract

PURPOSE

To model Head-and-Neck anatomy from daily Cone Beam-CT (CBCT) images over the course of fractionated radiotherapy using principal component analysis (PCA).

METHODS AND MATERIALS

Eighteen oropharyngeal Head-and-Neck cancer patients, treated with volumetric modulated arc therapy (VMAT), were included in this retrospective study. Normal organs, including the parotid and submandibular glands, mandible, pharyngeal constrictor muscles (PCMs), and spinal cord were contoured using daily CBCT image datasets. PCA models for each organ were developed for individual patients (IP) and the entire patient cohort/population (PP). The first 10 principal components (PCs) were extracted for all models. Analysis included cumulative and individual PCs for each organ and patient, as well as the aggregate organ/patient population; comparisons were made using the root-mean-square (RMS) of the percentage predicted spatial displacement for each PC.

RESULTS

Overall, spatial displacement prediction was achieved at the 95% confidence level (CL) for the first three to four PCs for all organs, based on IP models. For PP models, the first four PCs predicted spatial displacement at the 80%-89% CL. Differences in percentage predicted spatial displacement between mean IP models for each organ ranged from 2.8% ± 1.8% (1st PC) to 0.6% ± 0.4% (4th PC). Differences in percentage predicted spatial displacement between IP models vs the mean IP model for each organ based on the 1st PC were <12.9% ± 6.9% for all organs. Differences in percentage predicted spatial displacement between IP and PP models based on all organs and patients for the 1st and 2nd PC were <11.7% ± 2.2%.

CONCLUSION

Tissue changes during fractionated radiotherapy observed on daily CBCT in patients with Head-and-Neck cancers, were modeled using PCA. In general, spatial displacement for organs-at-risk was predicted for the first 4 principal components at the 95% confidence levels (CL), for individual patient (IP) models, and at the 80%-89% CL for population-based patient (PP) models. The IP and PP models were most predictive of changes in glandular organs and pharyngeal constrictor muscles, respectively.

摘要

目的

使用主成分分析(PCA)从分次放射治疗过程中的日常锥形束 CT(CBCT)图像中对头颈部解剖结构进行建模。

方法和材料

本回顾性研究纳入了 18 例接受容积调强弧形治疗(VMAT)的口咽头颈部癌症患者。使用每日 CBCT 图像数据集对头颈部的正常器官,包括腮腺和颌下腺、下颌骨、咽缩肌(PCM)和脊髓进行轮廓勾画。为每位患者(IP)和整个患者队列/人群(PP)开发了针对每个器官的 PCA 模型。从所有模型中提取前 10 个主成分(PC)。分析包括每个器官和患者的累积和个体 PC,以及器官/患者群体的综合情况;通过每个 PC 的预测空间位移百分比的均方根(RMS)进行比较。

结果

总体而言,基于 IP 模型,所有器官的前三个到四个 PC 达到 95%置信水平(CL)的空间位移预测。对于 PP 模型,前四个 PC 以 80%-89%CL 预测空间位移。每个器官的平均 IP 模型之间的预测空间位移百分比差异范围为 2.8%±1.8%(第 1 个 PC)至 0.6%±0.4%(第 4 个 PC)。每个器官的 IP 模型与基于第 1 个 PC 的平均 IP 模型之间的预测空间位移百分比差异<12.9%±6.9%。基于所有器官和患者的第 1 个和第 2 个 PC 的 IP 和 PP 模型之间的预测空间位移百分比差异<11.7%±2.2%。

结论

对头颈部癌症患者分次放射治疗过程中每日 CBCT 观察到的组织变化,使用 PCA 进行建模。通常,在个体患者(IP)模型中,前四个主成分(PC)达到 95%置信水平(CL),在基于人群的患者(PP)模型中达到 80%-89%CL,对危及器官的空间位移进行预测。IP 和 PP 模型分别对头颈部腺体和咽缩肌器官的变化最具预测性。

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