Visual Assessment of Growth Prediction in Brain Structures after Pediatric Radiotherapy

C. Magg, L. Toussaint, L. Muren, D. Indelicato, R. Raidou
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Abstract

Pediatric brain tumor radiotherapy research is investigating how radiation influences the development and function of a patient’s brain. To better understand how brain growth is affected by the treatment, the brain structures of the patient need to be explored and analyzed preand post-treatment. In this way, anatomical changes are observed over a long period, and are assessed as potential early markers of cognitive or functional damage. In this early work, we propose an automated approach for the visual assessment of the growth prediction of brain structures in pediatric brain tumor radiotherapy patients. Our approach reduces the need for re-segmentation, and the time required for it. We employ as a basis pre-treatment Computed Tomography (CT) scans with manual delineations (i.e., segmentation masks) of specific brain structures of interest. These pre-treatment masks are used as initialization, to predict the corresponding masks on multiple post-treatment follow-up Magnetic Resonance (MR) images, using an active contour model approach. For the accuracy quantification of the automatically predicted posttreatment masks, a support vector regressor (SVR) with features related to geometry, intensity, and gradients is trained on the pre-treatment data. Finally, a distance transform is employed to calculate the distances between preand post-treatment data and to visualize the predicted growth of a brain structure, along with its respective accuracy. Although segmentations of larger structures are more accurately predicted, the growth behavior of all structures is learned correctly, as indicated by the SVR results. This suggests that our pipeline is a positive initial step for the visual assessment of brain structure growth prediction. CCS Concepts • Applied computing → Life and medical sciences; • Human-centered computing → Visualization;
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儿童放疗后脑结构生长预测的目视评估
儿童脑肿瘤放射治疗研究正在调查放射如何影响患者大脑的发育和功能。为了更好地了解治疗对大脑生长的影响,需要在治疗前后对患者的大脑结构进行探索和分析。通过这种方式,可以观察到长时间的解剖变化,并将其作为认知或功能损伤的潜在早期标志进行评估。在这项早期工作中,我们提出了一种用于儿童脑肿瘤放疗患者脑结构生长预测视觉评估的自动化方法。我们的方法减少了重新分割的需要,并减少了重新分割所需的时间。我们采用预处理计算机断层扫描(CT)扫描,对感兴趣的特定大脑结构进行人工描绘(即分割掩模)。使用这些预处理掩模作为初始化,使用主动轮廓模型方法在多个处理后的后续磁共振(MR)图像上预测相应的掩模。为了准确量化自动预测的后处理掩模,在预处理数据上训练具有几何、强度和梯度相关特征的支持向量回归器(SVR)。最后,使用距离变换来计算处理前和处理后数据之间的距离,并将预测的大脑结构的生长可视化,以及其各自的准确性。尽管更大结构的分割预测更准确,但正如SVR结果所表明的那样,所有结构的生长行为都是正确学习的。这表明我们的管道对于大脑结构生长预测的视觉评估是一个积极的第一步。•应用计算→生命和医学科学;•以人为本→可视化;
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