Automatic Segmentation of brain tumor in multi-contrast magnetic resonance using deep neural network

被引:1
作者
Cavieres, Eduardo [1 ,2 ]
Tejos, Cristian [2 ,3 ,4 ]
Salas, Rodrigo [1 ,2 ]
Sotelo, Julio [1 ,2 ,4 ]
机构
[1] Univ Valparaiso, Sch Biomed Engn, Valparaiso, Chile
[2] Millennium Inst Intelligent Healthcare Engn, iHLTH, Santiago, Chile
[3] Pontificia Univ Catolica Chile, Dept Elect Engn, Santiago, Chile
[4] Pontificia Univ Catolica Chile, Biomed Imaging Ctr, Santiago, Chile
来源
18TH INTERNATIONAL SYMPOSIUM ON MEDICAL INFORMATION PROCESSING AND ANALYSIS | 2023年 / 12567卷
关键词
Glioma; Brain Tumor; Deep Learning; Segmentation; Neural Network; Cancer;
D O I
10.1117/12.2670375
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Among all the tumors that can affect the brain, gliomas are the most frequent, thus is important to get a correct characterization and delimitation of this malformation to provide the best diagnosis and treatment possible. Nevertheless, there are some issues when dealing with segmenting tumors, it can be a long and tedious labor, which makes it prone to mistakes. To solve those problems, several techniques were proposed, including automatic and semiautomatic segmentation. In this work, we propose the use of a U-net architecture-based deep neural network to automatically realize segmentations of tumors on magnetic resonance brain images obtained from the BRATS 2020 database, which provides T1, T1 contrast enhancement (T1ce), T2, and FLAIR images for each subject. The database has a total of 1476 images distributed in 369 patients, that were shuffled into the training set with 70% of the subjects, and the test set with a percentage of 30%. Our results got a 91.6% DICE value for the validation, from a 91.6% for necrotic core (NET), 91.7% for peritumoral edema (PE), and a 91.4% for enhancing tumor (ET). After the training, we got 55.5%,66.5%, and 68.6% DICE values for NET, PE and ET respectively. We also calculated the whole tumor (WT) segmentation performance, reaching a 78.8% precision and the tumor core (TC) segmentation which reach 75,5% precision.
引用
收藏
页数:9
相关论文
共 20 条
[1]   A review on brain tumor diagnosis from MRI images: Practical implications, key achievements, and lessons learned [J].
Abd-Ellah, Mahmoud Khaled ;
Awad, Ali Ismail ;
Khalaf, Ashraf A. M. ;
Hamed, Hesham F. A. .
MAGNETIC RESONANCE IMAGING, 2019, 61 :300-318
[2]  
[Anonymous], 2021, EPIDEMIOLOGY BRAIN S
[3]  
Bakas S, MICCAI BRATS 2020 LE
[4]  
Bakas S, 2018, Identifying the Best Machine Learning Algorithms for Brain Tumor Segmentation, Progression Assessment, and Overall Survival Prediction in the BRATS Challenge
[5]   Data Descriptor: Advancing The Cancer Genome Atlas glioma MRI collections with expert segmentation labels and radiomic features [J].
Bakas, Spyridon ;
Akbari, Hamed ;
Sotiras, Aristeidis ;
Bilello, Michel ;
Rozycki, Martin ;
Kirby, Justin S. ;
Freymann, John B. ;
Farahani, Keyvan ;
Davatzikos, Christos .
SCIENTIFIC DATA, 2017, 4
[6]   A deep dense residual network with reduced parameters for volumetric brain tissue segmentation from MR images [J].
Basnet, Ramesh ;
Ahmad, M. Omair ;
Swamy, M. N. S. .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2021, 70
[7]   A Survey of Brain Tumor Segmentation and Classification Algorithms [J].
Biratu, Erena Siyoum ;
Schwenker, Friedhelm ;
Ayano, Yehualashet Megersa ;
Debelee, Taye Girma .
JOURNAL OF IMAGING, 2021, 7 (09)
[8]   Review of brain tumor detection from MRI images with hybrid approaches [J].
Dhole, Nandini Vaibhav ;
Dixit, Vaibhav V. .
MULTIMEDIA TOOLS AND APPLICATIONS, 2022, 81 (07) :10189-10220
[9]   State of the art survey on MRI brain tumor segmentation [J].
Gordillo, Nelly ;
Montseny, Eduard ;
Sobrevilla, Pilar .
MAGNETIC RESONANCE IMAGING, 2013, 31 (08) :1426-1438
[10]   Deep Residual Learning for Image Recognition [J].
He, Kaiming ;
Zhang, Xiangyu ;
Ren, Shaoqing ;
Sun, Jian .
2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, :770-778