Edge U-Net: Brain tumor segmentation using MRI based on deep U-Net model with boundary information

被引:75
作者
Allah, Ahmed M. Gab [1 ]
Sarhan, Amany M. [2 ]
Elshennawy, Nada M. [2 ]
机构
[1] Univ Sadat City, Fac Comp & Artificial Intelligence, Dept Informat Syst, Sadat City, Egypt
[2] Tanta Univ, Fac Engn, Dept Comp & Control Engn, Tanta, Egypt
关键词
Brain tumor segmentation; Boundary information; Convolutional neural network; MRI; Deep learning; Contrast limited adaptive histogram; equalisation; PERFORMANCE;
D O I
10.1016/j.eswa.2022.118833
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Blood clots in the brain are frequently caused by brain tumors. Early detection of these clots has the potential to significantly lower morbidity and mortality in cases of brain cancer. It is thus indispensable for a proper brain tumor diagnosis and treatment that tumor tissue magnetic resonance images (MRI) be accurately segmented. Several deep learning approaches to the segmentation of brain tumor MRIs have been proposed, each having been designed to properly map out 'boundaries' and thus achieve highly accurate segmentation. This study introduces a deep convolution neural network (DCNN), named the Edge U-Net model, built as an encoder -decoder structure inspired by the U-Net architecture. The Edge U-Net model can more precisely localise tu-mors by merging boundary-related MRI data with the main data from brain MRIs. In the decoder phase, boundary-related information from original MRIs of different scales is integrated with the appropriate adjacent contextual information. A novel loss function was added to this segmentation model to improve performance. This loss function is enhanced with boundary information, allowing the learning process to produce more precise results. In the conducted experiments, a public dataset with 3064 T1-Weighted Contrast Enhancement (T1-CE) images of three well-known brain tumor types were used. The experiment demonstrated that the proposed framework achieved satisfactory Dice score values compared with state-of-art models, with highly accurate differentiation of brain tissues. It achieved Dice scores of 88.8 % for meningioma, 91.76 % for glioma, and 87.28 % for pituitary tumors. Computations of other performance metrics such as the Jaccard index, sensitivity, and specificity were also conducted. According to the results, the Edge U-Net model is a potential diagnostic tool that can be used to help radiologists more precisely segment brain tumor tissue images.
引用
收藏
页数:17
相关论文
共 77 条
[1]   Brain tumor segmentation based on a hybrid clustering technique [J].
Abdel-Maksoud, Eman ;
Elmogy, Mohammed ;
Al-Awadi, Rashid .
EGYPTIAN INFORMATICS JOURNAL, 2015, 16 (01) :71-81
[2]   HTTU-Net: Hybrid Two Track U-Net for Automatic Brain Tumor Segmentation [J].
Aboelenein, Nagwa M. ;
Piao Songhao ;
Koubaa, Anis ;
Noor, Alam ;
Afifi, Ahmed .
IEEE ACCESS, 2020, 8 :101406-101415
[3]   Determinant of Covariance Matrix Model Coupled with AdaBoost Classification Algorithm for EEG Seizure Detection [J].
Al-Hadeethi, Hanan ;
Abdulla, Shahab ;
Diykh, Mohammed ;
Green, Jonathan H. .
DIAGNOSTICS, 2022, 12 (01)
[4]  
Almahfud M. A., 2018, EFFECTIVE MRI BRAIN, P11
[5]   Automated brain tumor segmentation on multi-modal MR image using SegNet [J].
Alqazzaz, Salma ;
Sun, Xianfang ;
Yang, Xin ;
Nokes, Len .
COMPUTATIONAL VISUAL MEDIA, 2019, 5 (02) :209-219
[6]   Brain tumour classification using two-tier classifier with adaptive segmentation technique [J].
Anitha, V. ;
Murugavalli, S. .
IET COMPUTER VISION, 2016, 10 (01) :9-17
[7]   A fast and fully-automated deep-learning approach for accurate hemorrhage segmentation and volume quantification in non-contrast whole-head CT [J].
Arab, Ali ;
Chinda, Betty ;
Medvedev, George ;
Siu, William ;
Guo, Hui ;
Gu, Tao ;
Moreno, Sylvain ;
Hamarneh, Ghassan ;
Ester, Martin ;
Song, Xiaowei .
SCIENTIFIC REPORTS, 2020, 10 (01)
[8]   Deep Learning for Smart Healthcare-A Survey on Brain Tumor Detection from Medical Imaging [J].
Arabahmadi, Mahsa ;
Farahbakhsh, Reza ;
Rezazadeh, Javad .
SENSORS, 2022, 22 (05)
[9]  
Ayachi R, 2009, LECT NOTES COMPUT SC, V5590, P736, DOI 10.1007/978-3-642-02906-6_63
[10]   SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation [J].
Badrinarayanan, Vijay ;
Kendall, Alex ;
Cipolla, Roberto .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2017, 39 (12) :2481-2495