TY - JOUR
T1 - Dermo-Optimizer
T2 - Skin Lesion Classification Using Information-Theoretic Deep Feature Fusion and Entropy-Controlled Binary Bat Optimization
AU - Akram, Tallha
AU - Alsuhaibani, Anas
AU - Khan, Muhammad Attique
AU - Khan, Sajid Ullah
AU - Naqvi, Syed Rameez
AU - Bilal, Mohsin
N1 - Publisher Copyright:
© 2024 Wiley Periodicals LLC.
PY - 2024/9
Y1 - 2024/9
N2 - Increases in the prevalence of melanoma, the most lethal form of skin cancer, have been observed over the last few decades. However, the likelihood of a longer life span for individuals is considerably improved with early detection of this malignant illness. Even though the field of computer vision has attained a certain level of success, there is still a degree of ambiguity that represents an unresolved research challenge. In the initial phase of this study, the primary objective is to improve the information derived from input features by combining multiple deep models with the proposed Information-theoretic feature fusion method. Subsequently, in the second phase, the study aims to decrease the redundant and noisy information through down-sampling using the proposed entropy-controlled binary bat selection algorithm. The proposed methodology effectively maintains the integrity of the original feature space, resulting in the creation of highly distinctive feature information. In order to obtain the desired set of features, three contemporary deep models are employed via transfer learning: Inception-Resnet V2, DenseNet-201, and Nasnet Mobile. By combining feature fusion and selection techniques, we may effectively fuse a significant amount of information into the feature vector and subsequently remove any redundant feature information. The effectiveness of the proposed methodology is supported by an evaluation conducted on three well-known dermoscopic datasets, specifically (Formula presented.), ISIC-2016, and ISIC-2017. In order to validate the proposed approach, several performance indicators are taken into account, such as accuracy, sensitivity, specificity, false negative rate (FNR), false positive rate (FPR), and F1-score. The accuracies obtained for all datasets utilizing the proposed methodology are 99.05%, 96.26%, and 95.71%, respectively.
AB - Increases in the prevalence of melanoma, the most lethal form of skin cancer, have been observed over the last few decades. However, the likelihood of a longer life span for individuals is considerably improved with early detection of this malignant illness. Even though the field of computer vision has attained a certain level of success, there is still a degree of ambiguity that represents an unresolved research challenge. In the initial phase of this study, the primary objective is to improve the information derived from input features by combining multiple deep models with the proposed Information-theoretic feature fusion method. Subsequently, in the second phase, the study aims to decrease the redundant and noisy information through down-sampling using the proposed entropy-controlled binary bat selection algorithm. The proposed methodology effectively maintains the integrity of the original feature space, resulting in the creation of highly distinctive feature information. In order to obtain the desired set of features, three contemporary deep models are employed via transfer learning: Inception-Resnet V2, DenseNet-201, and Nasnet Mobile. By combining feature fusion and selection techniques, we may effectively fuse a significant amount of information into the feature vector and subsequently remove any redundant feature information. The effectiveness of the proposed methodology is supported by an evaluation conducted on three well-known dermoscopic datasets, specifically (Formula presented.), ISIC-2016, and ISIC-2017. In order to validate the proposed approach, several performance indicators are taken into account, such as accuracy, sensitivity, specificity, false negative rate (FNR), false positive rate (FPR), and F1-score. The accuracies obtained for all datasets utilizing the proposed methodology are 99.05%, 96.26%, and 95.71%, respectively.
KW - binary bat optimization
KW - bio-inspired feature selection
KW - computer-aided diagnosis CNN pre-trained model
KW - deep feature fusion
KW - healthcare technology
KW - information theory
UR - http://www.scopus.com/inward/record.url?scp=85203872557&partnerID=8YFLogxK
U2 - 10.1002/ima.23172
DO - 10.1002/ima.23172
M3 - Article
AN - SCOPUS:85203872557
SN - 0899-9457
VL - 34
JO - International Journal of Imaging Systems and Technology
JF - International Journal of Imaging Systems and Technology
IS - 5
M1 - e23172
ER -