Yoganathan S A, Zhang Rui
Department of Physics and Astronomy, Louisiana State University, Baton Rouge, Louisiana, USA.
Department of Radiation Oncology, Mary Bird Perkins Cancer Center, Baton Rouge, Louisiana, USA.
J Med Phys. 2022 Jan-Mar;47(1):40-49. doi: 10.4103/jmp.jmp_87_21. Epub 2022 Mar 31.
To fully exploit the benefits of magnetic resonance imaging (MRI) for radiotherapy, it is desirable to develop segmentation methods to delineate patients' MRI images fast and accurately. The purpose of this work is to develop a semi-automatic method to segment organs and tumor within the brain on standard T1- and T2-weighted MRI images.
Twelve brain cancer patients were retrospectively included in this study, and a simple rigid registration was used to align all the images to the same spatial coordinates. Regions of interest were created for organs and tumor segmentations. The K-nearest neighbor (KNN) classification algorithm was used to characterize the knowledge of previous segmentations using 15 image features (T1 and T2 image intensity, 4 Gabor filtered images, 6 image gradients, and 3 Cartesian coordinates), and the trained models were used to predict organ and tumor contours. Dice similarity coefficient (DSC), normalized surface dice, sensitivity, specificity, and Hausdorff distance were used to evaluate the performance of segmentations.
Our semi-automatic segmentations matched with the ground truths closely. The mean DSC value was between 0.49 (optical chiasm) and 0.89 (right eye) for organ segmentations and was 0.87 for tumor segmentation. Overall performance of our method is comparable or superior to the previous work, and the accuracy of our semi-automatic segmentation is generally better for large volume objects.
The proposed KNN method can accurately segment organs and tumor using standard brain MRI images, provides fast and accurate image processing and planning tools, and paves the way for clinical implementation of MRI-guided radiotherapy and adaptive radiotherapy.
为了充分利用磁共振成像(MRI)在放射治疗中的优势,开发快速准确地描绘患者MRI图像的分割方法很有必要。这项工作的目的是开发一种半自动方法,用于在标准T1加权和T2加权MRI图像上分割脑内的器官和肿瘤。
本研究回顾性纳入了12例脑癌患者,并使用简单的刚性配准将所有图像对齐到相同的空间坐标。为器官和肿瘤分割创建感兴趣区域。使用K近邻(KNN)分类算法,利用15个图像特征(T1和T2图像强度、4幅伽博滤波图像、6个图像梯度和3个笛卡尔坐标)来表征先前分割的知识,并使用训练好的模型预测器官和肿瘤轮廓。使用骰子相似系数(DSC)、归一化表面骰子、敏感性、特异性和豪斯多夫距离来评估分割性能。
我们的半自动分割与真实情况紧密匹配。器官分割的平均DSC值在0.49(视交叉)至0.89(右眼)之间,肿瘤分割的平均DSC值为0.87。我们方法的总体性能与先前的工作相当或更优,并且对于大体积物体,我们半自动分割的准确性通常更好。
所提出的KNN方法能够使用标准脑MRI图像准确分割器官和肿瘤,提供快速准确的图像处理和规划工具,为MRI引导放射治疗和自适应放射治疗的临床应用铺平了道路。