论文标题
仅使用CT信息的儿童髓母细胞瘤患者的切除腔自动腔内库
Resection cavity auto-contouring for patients with pediatric medulloblastoma using only CT information
论文作者
论文摘要
目的:放射治疗的目标描述是一项耗时且复杂的任务。已经证明自动室内总肿瘤体积(GTV)提高了效率。但是,关于术后目标描述的文献有限,特别是对于基于CT的研究。为此,我们训练了一种基于CT的自闭症模型,以轮廓髓母细胞瘤儿科患者的术后GTV。 方法:104个回顾性小儿CT扫描被用于训练GTV自动含量模型。然后,将80名患者预选为轮廓可见性,连续性和位置,以训练额外的模型。根据可见的GTV的切片数(1 = <25%,2 = 25%-50%,3 => 50%-75%,4 => 75%-100%),每个GTV的可见度评分为手动注释。相对于裁剪背景图像,计算了GTV轮廓的对比度和对比度与噪声比(CNR)。两种模型均在原始和预选的测试集上进行了测试。计算了所得的表面和重叠度量,以比较临床和自动内膜的GTV以及相应的临床靶标体积(CTV)。 结果:预先选择了80名患者在后窝内具有连续的GTV。在其中,分别将7、41、21和11分别分别为4、3、2和1。对比和CNR分别从数据集中删除了另外11名和20名患者。在具有预先选择数据的模型上,骰子相似性系数(DSC)为0.61 +/- 0.29和0.67 +/- 0.22,在没有预先选择的训练数据的情况下为0.55 +/- 13.01和0.83 +/- 0.17。 CTV扩展上的DSC为0.90 +/- 0.13。结论:我们在扫描中自动构造了后窝内的连续GTV,其对比度> = 10 hu。基于CT的自动包含算法有可能在MRI访问有限的情况下对中心产生积极影响。
Purpose: Target delineation for radiation therapy is a time-consuming and complex task. Autocontouring gross tumor volumes (GTVs) has been shown to increase efficiency. However, there is limited literature on post-operative target delineation, particularly for CT-based studies. To this end, we trained a CT-based autocontouring model to contour the post-operative GTV of pediatric patients with medulloblastoma. Methods: 104 retrospective pediatric CT scans were used to train a GTV auto-contouring model. 80 patients were then preselected for contour visibility, continuity, and location to train an additional model. Each GTV was manually annotated with a visibility score based on the number of slices with a visible GTV (1 = <25%, 2 = 25%-50%, 3 = >50%-75%, and 4 = >75%-100%). Contrast and the contrast-to-noise ratio (CNR) were calculated for the GTV contour with respect to a cropped background image. Both models were tested on the original and pre-selected testing sets. The resulting surface and overlap metrics were calculated comparing the clinical and autocontoured GTVs and the corresponding clinical target volumes (CTVs). Results: 80 patients were pre-selected to have a continuous GTV within the posterior fossa. Of these, 7, 41, 21, and 11 were visibly scored as 4, 3, 2, and 1, respectively. The contrast and CNR removed an additional 11 and 20 patients from the dataset, respectively. The Dice similarity coefficients (DSC) were 0.61 +/- 0.29 and 0.67 +/- 0.22 on the models without pre-selected training data and 0.55 +/- 13.01 and 0.83 +/- 0.17 on the models with pre-selected data, respectively. The DSC on the CTV expansions were 0.90 +/- 0.13. Conclusion: We automatically contoured continuous GTVs within the posterior fossa on scans that had contrast >=10 HU. CT-Based auto-contouring algorithms have potential to positively impact centers with limited MRI access.