TY - JOUR
T1 - Enhancing Intracranial Hemorrhage Diagnosis through Deep Learning Models
AU - Malik, Payal
AU - Dureja, Ajay
AU - Dureja, Aman
AU - Rathore, Rajkumar Singh
AU - Malhotra, Nisha
N1 - Publisher Copyright:
© 2024 Elsevier B.V.. All rights reserved.
PY - 2024/5/31
Y1 - 2024/5/31
N2 - Timely diagnosis is crucial for the successful treatment of a serious medical condition like brain hemorrhage. Deep learning algorithms have shown great promise in applications for medical image analysis, like the identification of brain hemorrhages. The goal of this study is to assess how well various deep learning algorithms can detect brain hemorrhages. Using a suitable dataset, the study evaluates the computational efficiency, accuracy, sensitivity, and specificity of the selected algorithms. The results demonstrate the potential of deep learning models to assist physicians in identifying this potentially fatal condition and demonstrate how well they can identify brain hemorrhages. The study's findings improve automated brain hemorrhage detection technology, improving patient outcomes and the efficiency of healthcare delivery. EfficientNetB3 typically achieves higher accuracy due to its increased model complexity. Despite its increased complexity, EfficientNetB3 is still more parameter-efficient and computationally efficient than many alternative architectures. EfficientNetB3's strong performance and feature extraction capabilities make it a good choice for transfer learning tasks. Out of all the models implemented in this paper, the proposed model with EfficientNetB3 gave the best accuracy for training as well as validation i.e. 99.95% and 93.29% respectively followed by EfficientNetB2, ResNet, SEResNext and ResNext.
AB - Timely diagnosis is crucial for the successful treatment of a serious medical condition like brain hemorrhage. Deep learning algorithms have shown great promise in applications for medical image analysis, like the identification of brain hemorrhages. The goal of this study is to assess how well various deep learning algorithms can detect brain hemorrhages. Using a suitable dataset, the study evaluates the computational efficiency, accuracy, sensitivity, and specificity of the selected algorithms. The results demonstrate the potential of deep learning models to assist physicians in identifying this potentially fatal condition and demonstrate how well they can identify brain hemorrhages. The study's findings improve automated brain hemorrhage detection technology, improving patient outcomes and the efficiency of healthcare delivery. EfficientNetB3 typically achieves higher accuracy due to its increased model complexity. Despite its increased complexity, EfficientNetB3 is still more parameter-efficient and computationally efficient than many alternative architectures. EfficientNetB3's strong performance and feature extraction capabilities make it a good choice for transfer learning tasks. Out of all the models implemented in this paper, the proposed model with EfficientNetB3 gave the best accuracy for training as well as validation i.e. 99.95% and 93.29% respectively followed by EfficientNetB2, ResNet, SEResNext and ResNext.
KW - Deep Learning
KW - Efficient Net
KW - Intracranial haemorrhage
KW - Medical Imaging
KW - Neural network
KW - ResNet
KW - ResNeX
KW - SE-ResNeXt
UR - http://www.scopus.com/inward/record.url?scp=85196403934&partnerID=8YFLogxK
U2 - 10.1016/j.procs.2024.04.157
DO - 10.1016/j.procs.2024.04.157
M3 - Conference article
AN - SCOPUS:85196403934
SN - 1877-0509
VL - 235
SP - 1664
EP - 1673
JO - Procedia Computer Science
JF - Procedia Computer Science
T2 - 2nd International Conference on Machine Learning and Data Engineering, ICMLDE 2023
Y2 - 23 November 2023 through 24 November 2023
ER -