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在 NSCLC 患者放疗期间,通过 CBCT 图像测量肿瘤变化模式的识别。

Identification of patterns of tumour change measured on CBCT images in NSCLC patients during radiotherapy.

机构信息

Division of Cancer Sciences, University of Manchester, Manchester, United Kingdom. Department of Radiotherapy Related Research, The Christie NHS Foundation Trust, Manchester, United Kingdom.

出版信息

Phys Med Biol. 2020 Oct 30;65(21):215001. doi: 10.1088/1361-6560/aba7d3.

Abstract

In this study, we propose a novel approach to investigate changes in the visible tumour and surrounding tissues with the aim of identifying patterns of tumour change during radiotherapy (RT) without segmentation on the follow-up images. On-treatment cone-beam computed tomography (CBCT) images of 240 non-small cell lung cancer (NSCLC) patients who received 55 Gy of RT were included. CBCTs were automatically aligned onto planning computed tomography (planning CT) scan using a two-step rigid registration process. To explore density changes across the lung-tumour boundary, eight shells confined to the shape of the gross tumour volume (GTV) were created. The shells extended 6 mm inside and outside of the GTV border, and each shell is 1.5 mm thick. After applying intensity correction on CBCTs, the mean intensity was extracted from each shell across all CBCTs. Thereafter, linear fits were created, indicating density change over time in each shell during treatment. The slopes of all eight shells were clustered to explore patterns in the slopes that show how tumours change. Seven clusters were obtained, 97% of the patients were clustered into three groups. After visual inspection, we found that these clusters represented patients with little or no density change, progression and regression. For the three groups, the survival curves were not significantly different between the groups, p-value = 0.51. However, the results show that definite patterns of tumour change exist, suggesting that it may be possible to identify patterns of tumour changes from on-treatment CBCT images.

摘要

在这项研究中,我们提出了一种新的方法来研究可见肿瘤和周围组织的变化,目的是在不进行随访图像分割的情况下,确定放疗(RT)期间肿瘤变化的模式。纳入了 240 名接受 55Gy RT 的非小细胞肺癌(NSCLC)患者的治疗中锥形束 CT(CBCT)图像。使用两步刚性配准过程将 CBCT 自动配准到计划计算机断层扫描(planning CT)扫描上。为了探索整个肺肿瘤边界的密度变化,创建了 8 个限制在大体肿瘤体积(GTV)形状内的壳。壳向 GTV 边界内和外延伸 6 毫米,每个壳厚 1.5 毫米。在对 CBCT 进行强度校正后,从所有 CBCT 中提取每个壳的平均强度。然后创建线性拟合,指示治疗过程中每个壳的密度随时间的变化。将所有 8 个壳的斜率聚类,以探索斜率中的变化模式,这些模式显示了肿瘤的变化方式。得到了七个聚类,97%的患者被聚类为三组。经过视觉检查,我们发现这些聚类代表了密度变化很小或没有、进展和消退的患者。对于三组,组间生存曲线无显著差异,p 值=0.51。然而,结果表明确实存在肿瘤变化的模式,这表明从治疗中的 CBCT 图像中可能可以识别肿瘤变化的模式。

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