Abstract

In this work, we propose a novel cascaded V-Nets method to segment brain tumor substructures in multimodal brain magnetic resonance imaging. Although V-Net has been successfully used in many segmentation tasks, we demonstrate that its performance could be further enhanced by using a cascaded structure and ensemble strategy. Briefly, our baseline V-Net consists of four levels with encoding and decoding paths and intra- and inter-path skip connections. Focal loss is chosen to improve performance on hard samples as well as balance the positive and negative samples. We further propose three preprocessing pipelines for multimodal magnetic resonance images to train different models. By ensembling the segmentation probability maps obtained from these models, segmentation result is further improved. In other hand, we propose to segment the whole tumor first, and then divide it into tumor necrosis, edema, and enhancing tumor. Experimental results on BraTS 2018 online validation set achieve average Dice scores of 0.9048, 0.8364, and 0.7748 for whole tumor, tumor core and enhancing tumor, respectively. The corresponding values for BraTS 2018 online testing set are 0.8761, 0.7953, and 0.7364, respectively. We also evaluate the proposed method in two additional data sets from local hospitals comprising of 28 and 28 subjects, and the best results are 0.8635, 0.8036, and 0.7217, respectively. We further make a prediction of patient overall survival by ensembling multiple classifiers for long, mid and short groups, and achieve accuracy of 0.519, mean square error of 367240 and Spearman correlation coefficient of 0.168 for BraTS 2018 online testing set.

Highlights

  • Gliomas are the most common brain tumors and comprise about 30 percent of all brain tumors

  • Inspired by the superior performance of V-Net in segmentation tasks, we propose a cascaded V-Nets method to segment brain tumor into three substructures and background

  • The segmentation results on BraTS 2018 online validation set achieve average Dice scores of 0.9048, 0.8364, and 0.7768 for whole tumor, tumor core, and enhancing tumor, respectively

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Summary

Introduction

Gliomas are the most common brain tumors and comprise about 30 percent of all brain tumors. Gliomas occur in the glial cells of the brain or the spine (Mamelak and Jacoby, 2007). They can be further categorized into low-grade gliomas (LGG) and high-grade gliomas (HGG) according to their pathologic evaluation. LGG are well-differentiated and tend to exhibit benign tendencies and portend a better prognosis for the patients. HGG are undifferentiated and tend to exhibit malignant and usually lead to a worse prognosis. With the development of the magnetic resonance imaging (MRI), multimodal MRI plays an important role in disease diagnosis.

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