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基于回归模型的实时无标记肿瘤跟踪,使用荧光透视图像进行肝细胞癌。

Regression model-based real-time markerless tumor tracking with fluoroscopic images for hepatocellular carcinoma.

机构信息

Corporate Research and Development Center, Toshiba Corporation, Kanagawa 212 8582, Japan.

Corporate Research and Development Center, Toshiba Corporation, Kanagawa 212 8582, Japan.

出版信息

Phys Med. 2020 Feb;70:196-205. doi: 10.1016/j.ejmp.2020.02.001. Epub 2020 Feb 8.

Abstract

PURPOSE

We have developed a new method to track tumor position using fluoroscopic images, and evaluated it using hepatocellular carcinoma case data.

METHODS

Our method consists of a training stage and a tracking stage. In the training stage, the model data for the positional relationship between the diaphragm and the tumor are calculated using four-dimensional computed tomography (4DCT) data. The diaphragm is detected along a straight line, which was chosen to avoid 4DCT artifact. In the tracking stage, the tumor position on the fluoroscopic images is calculated by applying the model to the diaphragm. Using data from seven liver cases, we evaluated four metrics: diaphragm edge detection error, modeling error, patient setup error, and tumor tracking error. We measured tumor tracking error for the 15 fluoroscopic sequences from the cases and recorded the computation time.

RESULTS

The mean positional error in diaphragm tracking was 0.57 ± 0.62 mm. The mean positional error in tumor tracking in three-dimensional (3D) space was 0.63 ± 0.30 mm by modeling error, and 0.81-2.37 mm with 1-2 mm setup error. The mean positional error in tumor tracking in the fluoroscopy sequences was 1.30 ± 0.54 mm and the mean computation time was 69.0 ± 4.6 ms and 23.2 ± 1.3 ms per frame for the training and tracking stages, respectively.

CONCLUSIONS

Our markerless tracking method successfully estimated tumor positions. We believe our results will be useful in increasing treatment accuracy for liver cases.

摘要

目的

我们开发了一种使用透视图像跟踪肿瘤位置的新方法,并使用肝细胞癌病例数据对其进行了评估。

方法

我们的方法包括训练阶段和跟踪阶段。在训练阶段,使用四维计算机断层扫描(4DCT)数据计算膈肌和肿瘤之间位置关系的模型数据。膈肌沿着一条直线检测,这条直线是为了避免 4DCT 伪影而选择的。在跟踪阶段,通过将模型应用于膈肌来计算透视图像上的肿瘤位置。使用来自七个肝脏病例的数据,我们评估了四个指标:膈肌边缘检测误差、建模误差、患者摆位误差和肿瘤跟踪误差。我们测量了病例的 15 个透视序列中的肿瘤跟踪误差,并记录了计算时间。

结果

膈肌跟踪的平均位置误差为 0.57±0.62mm。通过建模误差,三维(3D)空间中肿瘤跟踪的平均位置误差为 0.63±0.30mm,而 1-2mm 摆位误差的位置误差为 0.81-2.37mm。透视序列中肿瘤跟踪的平均位置误差为 1.30±0.54mm,平均计算时间分别为 69.0±4.6ms 和 23.2±1.3ms/帧,用于训练和跟踪阶段。

结论

我们的无标记跟踪方法成功地估计了肿瘤位置。我们相信我们的结果将有助于提高肝脏病例的治疗准确性。

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