Brain Tumor Segmentation for Multi-Modal MRI with Missing Information

被引:0
作者
Xue Feng
Kanchan Ghimire
Daniel D. Kim
Rajat S. Chandra
Helen Zhang
Jian Peng
Binghong Han
Gaofeng Huang
Quan Chen
Sohil Patel
Chetan Bettagowda
Haris I. Sair
Craig Jones
Zhicheng Jiao
Li Yang
Harrison Bai
机构
[1] University of Virginia,Biomedical Engineering
[2] Carina Medical LLC,Department of Diagnostic Imaging
[3] Warren Alpert Medical School of Brown University,Department of Neurology
[4] Rhode Island Hospital,Radiation Medicine
[5] Perelman School of Medicine at the University of Pennsylvania,Radiology and Medical Imaging
[6] Second Xiangya Hospital,Department of Radiology and Radiological Science
[7] University of Kentucky,Department of Computer Science
[8] University of Virginia,undefined
[9] Johns Hopkins University,undefined
[10] The Malone Center for Engineering in Healthcare,undefined
[11] The Whiting School of Engineering,undefined
[12] Johns Hopkins University,undefined
[13] Johns Hopkins University,undefined
关键词
Brain tumor segmentation; 3D U-Net; Sequence dropout; Multi-contrast MRI; Deep learning;
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学科分类号
摘要
Deep convolutional neural networks (DCNNs) have shown promise in brain tumor segmentation from multi-modal MRI sequences, accommodating heterogeneity in tumor shape and appearance. The fusion of multiple MRI sequences allows networks to explore complementary tumor information for segmentation. However, developing a network that maintains clinical relevance in situations where certain MRI sequence(s) might be unavailable or unusual poses a significant challenge. While one solution is to train multiple models with different MRI sequence combinations, it is impractical to train every model from all possible sequence combinations. In this paper, we propose a DCNN-based brain tumor segmentation framework incorporating a novel sequence dropout technique in which networks are trained to be robust to missing MRI sequences while employing all other available sequences. Experiments were performed on the RSNA-ASNR-MICCAI BraTS 2021 Challenge dataset. When all MRI sequences were available, there were no significant differences in performance of the model with and without dropout for enhanced tumor (ET), tumor (TC), and whole tumor (WT) (p-values 1.000, 1.000, 0.799, respectively), demonstrating that the addition of dropout improves robustness without hindering overall performance. When key sequences were unavailable, the network with sequence dropout performed significantly better. For example, when tested on only T1, T2, and FLAIR sequences together, DSC for ET, TC, and WT increased from 0.143 to 0.486, 0.431 to 0.680, and 0.854 to 0.901, respectively. Sequence dropout represents a relatively simple yet effective approach for brain tumor segmentation with missing MRI sequences.
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页码:2075 / 2087
页数:12
相关论文
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