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Dose distribution as outcome predictor for Gamma Knife radiosurgery on vestibular schwannoma

机译:剂量分布作为前庭施瓦新瘤伽马刀放射前的结果预测因子

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Vestibular schwannomas are benign brain tumors that can be treated radiosurgically with the Gamma Knife in order to stop tumor progression. However, in some cases tumor progression is not stopped and treatment is deemed a failure. At present, the reason for these failed treatments is unknown. Clinical factors and MRI characteristics have been considered as prognostic factors. Another confounder in the success of treatment is the treatment planning itself. It is thought to be very uniformly planned, even though dose distributions among treatment plans are highly inhomogeneous. This paper explores the predictive value of these dose distributions for the treatment outcome. We compute homogeneity indices (HI) and three-dimensional histogram-of-oriented gradients (3D-HOG) and employ support vector machine (SVM) paired with principal component analysis (PCA) for classification. In a clinical dataset, consisting of 20 tumors that showed treatment failure and 20 tumors showing treatment success, we discover that the correlation of the HI values with the treatment outcome presents no statistical evidence of an association (52.5% accuracy employing linear SVM and no statistical significant difference with t-tests), whereas the 3D-HOG features concerning the dose distribution do present correlations to the treatment outcome, suggesting the influence of the treatment on the outcome itself (77.5% accuracy employing linear SVM and PCA). These findings can provide a basis for refining towards personalized treatments and prediction of treatment efficiency. However, larger datasets are needed for more extensive analysis.
机译:前庭施威玛斯是良性脑肿瘤,可以用伽马刀放射地对待,以便停止肿瘤进展。然而,在某些情况下,肿瘤进展不会被停止并且治疗被认为是失败的。目前,这些失败治疗的原因是未知的。临床因素和MRI特征被认为是预后因素。治疗成功的另一个混乱是治疗计划本身。即使治疗计划中的剂量分布是高度不均匀的,被认为是非常统一的计划。本文探讨了治疗结果的这些剂量分布的预测值。我们计算同一性指数(HI)和以三维直方图为导向的梯度(3D-HOG),并使用与主成分分析(PCA)配对的支持向量机(SVM)进行分类。在临床数据集中,由20个肿瘤组成,所述肿瘤显示出现治疗失败和20个肿瘤显示治疗成功的肿瘤,我们发现HI值与治疗结果的相关性提供了关联的统计证据(52.5%使用线性SVM的准确性,没有统计与T检验有显着差异),而有关剂量分布的3D-Hog特征确实与治疗结果存在相关性,表明治疗对结果本身的影响(采用线性SVM和PCA的精度为77.5%)。这些发现可以为改进个性化处理和治疗效率预测提供基础。但是,需要更广泛的分析需要更大的数据集。

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