TY - GEN
T1 - Performance Comparison of Brain Tumor Segmentation Based on U-Net and ResU-Net Architectural Deep Convolutional Neural Network
AU - Putra, Rakha Kahansa
AU - Suryanegara, Muhammad
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021
Y1 - 2021
N2 - Brain tumors affect 7 of the 100,000 population and are the 10th leading cause of death in Indonesia. The process of diagnosing brain tumors is done using MRI images which are manually analyzed by radiologists. However, the small number of radiologists with uneven distribution means that the determination of the location and size of the tumor is severely hampered. The solution to this problem is to create technology that can accurately determine the location and size of tumors, one of which is the Deep Convolutional Neural Network. This paper has simulated the location and size of brain tumor segmentation based on MRI images using Deep CNN U-Net architecture and modified it with ResNet (ResU-Net) to make it easier for radiologists to examine the brain accurately. The author has conducted trials with U-Net and ResU-Net architectures to receive the location and size of brain tumors with accurate results from training, validation, and segmentation as measured by the Tanimoto Index, Dice Coefficient, and Tversky Index as evaluation metrics. The author also analyzes the performance of each architecture based on the number of layers, parameters, and training time. Based on these simulation scenarios, the maximum accuracy of the segmentation for U-Net is 88.35% and ResU-Net is 90.04%.
AB - Brain tumors affect 7 of the 100,000 population and are the 10th leading cause of death in Indonesia. The process of diagnosing brain tumors is done using MRI images which are manually analyzed by radiologists. However, the small number of radiologists with uneven distribution means that the determination of the location and size of the tumor is severely hampered. The solution to this problem is to create technology that can accurately determine the location and size of tumors, one of which is the Deep Convolutional Neural Network. This paper has simulated the location and size of brain tumor segmentation based on MRI images using Deep CNN U-Net architecture and modified it with ResNet (ResU-Net) to make it easier for radiologists to examine the brain accurately. The author has conducted trials with U-Net and ResU-Net architectures to receive the location and size of brain tumors with accurate results from training, validation, and segmentation as measured by the Tanimoto Index, Dice Coefficient, and Tversky Index as evaluation metrics. The author also analyzes the performance of each architecture based on the number of layers, parameters, and training time. Based on these simulation scenarios, the maximum accuracy of the segmentation for U-Net is 88.35% and ResU-Net is 90.04%.
KW - Brain Tumor Segmentation
KW - CNN
KW - Dice Coefficient
KW - ResNet
KW - Tanimoto Index
KW - Tversky Index
KW - U-Net
UR - http://www.scopus.com/inward/record.url?scp=85123577301&partnerID=8YFLogxK
U2 - 10.1109/ICITACEE53184.2021.9617522
DO - 10.1109/ICITACEE53184.2021.9617522
M3 - Conference contribution
AN - SCOPUS:85123577301
T3 - 2021 8th International Conference on Information Technology, Computer and Electrical Engineering, ICITACEE 2021
SP - 123
EP - 126
BT - 2021 8th International Conference on Information Technology, Computer and Electrical Engineering, ICITACEE 2021
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 8th International Conference on Information Technology, Computer and Electrical Engineering, ICITACEE 2021
Y2 - 23 September 2021 through 24 September 2021
ER -