TY - JOUR
T1 - Brain tumor detection and multi-classification using advanced deep learning techniques
AU - Sadad, Tariq
AU - Rehman, Amjad
AU - Munir, Asim
AU - Saba, Tanzila
AU - Tariq, Usman
AU - Ayesha, Noor
AU - Abbasi, Rashid
N1 - Publisher Copyright:
© 2021 Wiley Periodicals LLC
PY - 2021/6
Y1 - 2021/6
N2 - A brain tumor is an uncontrolled development of brain cells in brain cancer if not detected at an early stage. Early brain tumor diagnosis plays a crucial role in treatment planning and patients' survival rate. There are distinct forms, properties, and therapies of brain tumors. Therefore, manual brain tumor detection is complicated, time-consuming, and vulnerable to error. Hence, automated computer-assisted diagnosis at high precision is currently in demand. This article presents segmentation through Unet architecture with ResNet50 as a backbone on the Figshare data set and achieved a level of 0.9504 of the intersection over union (IoU). The preprocessing and data augmentation concept were introduced to enhance the classification rate. The multi-classification of brain tumors is performed using evolutionary algorithms and reinforcement learning through transfer learning. Other deep learning methods such as ResNet50, DenseNet201, MobileNet V2, and InceptionV3 are also applied. Results thus obtained exhibited that the proposed research framework performed better than reported in state of the art. Different CNN, models applied for tumor classification such as MobileNet V2, Inception V3, ResNet50, DenseNet201, NASNet and attained accuracy 91.8, 92.8, 92.9, 93.1, 99.6%, respectively. However, NASNet exhibited the highest accuracy.
AB - A brain tumor is an uncontrolled development of brain cells in brain cancer if not detected at an early stage. Early brain tumor diagnosis plays a crucial role in treatment planning and patients' survival rate. There are distinct forms, properties, and therapies of brain tumors. Therefore, manual brain tumor detection is complicated, time-consuming, and vulnerable to error. Hence, automated computer-assisted diagnosis at high precision is currently in demand. This article presents segmentation through Unet architecture with ResNet50 as a backbone on the Figshare data set and achieved a level of 0.9504 of the intersection over union (IoU). The preprocessing and data augmentation concept were introduced to enhance the classification rate. The multi-classification of brain tumors is performed using evolutionary algorithms and reinforcement learning through transfer learning. Other deep learning methods such as ResNet50, DenseNet201, MobileNet V2, and InceptionV3 are also applied. Results thus obtained exhibited that the proposed research framework performed better than reported in state of the art. Different CNN, models applied for tumor classification such as MobileNet V2, Inception V3, ResNet50, DenseNet201, NASNet and attained accuracy 91.8, 92.8, 92.9, 93.1, 99.6%, respectively. However, NASNet exhibited the highest accuracy.
KW - NASNet
KW - WHO
KW - brain tumor
KW - cancer
KW - health risks
KW - healthcare
UR - http://www.scopus.com/inward/record.url?scp=85099100984&partnerID=8YFLogxK
U2 - 10.1002/jemt.23688
DO - 10.1002/jemt.23688
M3 - Article
C2 - 33400339
AN - SCOPUS:85099100984
SN - 1059-910X
VL - 84
SP - 1296
EP - 1308
JO - Microscopy Research and Technique
JF - Microscopy Research and Technique
IS - 6
ER -