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多参数 MRI 肿瘤概率模型在放射治疗后局部复发性前列腺癌检测中的应用:病理验证及与手动肿瘤勾画的比较。

Multiparametric MRI Tumor Probability Model for the Detection of Locally Recurrent Prostate Cancer After Radiation Therapy: Pathologic Validation and Comparison With Manual Tumor Delineations.

机构信息

Department of Radiation Oncology, The Netherlands Cancer Institute, Amsterdam, The Netherlands.

Department of Radiology, The Netherlands Cancer Institute, Amsterdam, The Netherlands.

出版信息

Int J Radiat Oncol Biol Phys. 2019 Sep 1;105(1):140-148. doi: 10.1016/j.ijrobp.2019.05.003. Epub 2019 May 11.

Abstract

PURPOSE

Focal salvage treatments of recurrent prostate cancer (PCa) after radiation therapy require accurate delineation of the target volume. Magnetic resonance imaging (MRI) is used for this purpose; however, radiation therapy-induced changes complicate image interpretation, and guidelines are lacking on the assessment and delineation of recurrent PCa. A tumor probability (TP) model was trained and independently tested using multiparametric magnetic resonance imaging (mp-MRI) of patients with radio-recurrent PCa. The resulting probability maps were used to derive target regions for radiation therapy treatment planning.

METHODS AND MATERIALS

Two cohorts of patients with radio-recurrent PCa were used in this study. All patients underwent mp-MRI (T2 weighted, diffusion-weighted imaging, and dynamic contrast enhanced). A logistic regression model was trained using imaging features from 21 patients with biopsy-proven recurrence who qualified for salvage treatment. The test cohort consisted of 17 patients treated with salvage prostatectomy. The model was tested against histopathology-derived tumor delineations. The voxel-wise TP maps were clustered using k-means to generate a gross tumor volume (GTV) contour for voxel-level comparisons with manual tumor delineations performed by 2 radiologists and with histopathology-validated contours. Later, k-means was used with 3 clusters to define a clinical target volume (CTV), high-risk CTV, and GTV, with increasing tumor risk.

RESULTS

In the test cohort, the model obtained a median (range) area under the curve of 0.77 (0.41-0.99) for the whole prostate. The GTV delineation resulted in a median sensitivity of 0.31 (0-0.87) and specificity of 0.97 (0.84-1.0) with no significant differences between model and manual delineations. The 3-level clustering GTV and high-risk CTV delineations had median sensitivities of 0.17 (0-0.59) and 0.49 (0-0.97) and specificities of 0.98 (0.84-1.00) and 0.94 (0.84-0.99), respectively.

CONCLUSIONS

The TP model had a good performance in predicting voxel-wise presence of recurrent tumor. Model-derived tumor risk levels achieved sensitivity and specificity similar to manual delineations in localizing recurrent tumor. Voxel-wise TP derived from mp-MRI can in this way be incorporated for target definition in focal salvage of radio-recurrent PCa.

摘要

目的

放射治疗后复发性前列腺癌(PCa)的局部挽救性治疗需要准确描绘靶区。磁共振成像(MRI)用于此目的;然而,放射治疗引起的变化使图像解释复杂化,并且缺乏关于复发性 PCa 的评估和描绘的指南。使用经放射治疗后复发的患者的多参数磁共振成像(mp-MRI)训练并独立测试了肿瘤概率(TP)模型。由此产生的概率图用于为放射治疗计划制定靶区。

方法和材料

本研究使用了两批经放射治疗后复发的 PCa 患者。所有患者均接受了 mp-MRI(T2 加权、弥散加权成像和动态对比增强)检查。使用 21 名经活检证实符合挽救性治疗条件的复发性 PCa 患者的影像学特征,训练了一个逻辑回归模型。测试队列由 17 名接受挽救性前列腺切除术治疗的患者组成。该模型针对组织病理学衍生的肿瘤描绘进行了测试。使用 K-均值对体素水平的 TP 图进行聚类,以生成用于与 2 名放射科医生进行的手动肿瘤描绘以及与组织病理学验证的轮廓进行体素水平比较的大体肿瘤体积(GTV)轮廓。后来,K-均值使用 3 个聚类来定义临床靶区(CTV)、高危 CTV 和 GTV,肿瘤风险逐渐增加。

结果

在测试队列中,该模型在整个前列腺中获得了 0.77(0.41-0.99)的中位数(范围)曲线下面积。GTV 描绘的中位灵敏度为 0.31(0-0.87),特异性为 0.97(0.84-1.0),模型和手动描绘之间无显著差异。3 级聚类的 GTV 和高危 CTV 描绘的中位灵敏度分别为 0.17(0-0.59)和 0.49(0-0.97),特异性分别为 0.98(0.84-1.00)和 0.94(0.84-0.99)。

结论

TP 模型在预测复发性肿瘤存在的体素水平方面表现良好。模型衍生的肿瘤风险水平在定位复发性肿瘤方面达到了与手动描绘相似的灵敏度和特异性。来自 mp-MRI 的体素水平 TP 可以通过这种方式纳入放射治疗后复发性 PCa 的局部挽救性治疗的靶区定义。

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