BF2SkNet: best deep learning features fusion-assisted framework for multiclass skin lesion classification

被引:0
作者
Muhammad Ajmal
Muhammad Attique Khan
Tallha Akram
Abdullah Alqahtani
Majed Alhaisoni
Ammar Armghan
Sara A. Althubiti
Fayadh Alenezi
机构
[1] COMSATS University Islamabad,Department of Electrical and Computer Engineering
[2] Wah Campus,Department of Computer Science
[3] HITEC University,College of Computer Engineering and Sciences
[4] Prince Sattam Bin Abdulaziz University,Computer Sciences Department, College of Computer and Information Sciences
[5] Princess Nourah Bint Abdulrahman University,Department of Electrical Engineering, College of Engineering
[6] Jouf University,Department of Computer Science, College of Computer and Information Sciences
[7] Majmaah University,undefined
来源
Neural Computing and Applications | 2023年 / 35卷
关键词
Skin cancer; Artificial intelligence; Dermoscopy; Deep learning; Features optimization; Features fusion; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
The convolutional neural network showed considerable success in medical imaging with explainable AI for cancer detection and recognition. However, the irrelevant and large number of features increases the computational time and decreases the accuracy. This work proposes a deep learning and fuzzy entropy slime mould algorithm-based architecture for multiclass skin lesion classification. In the first step, we employed the data augmentation technique to increase the training data and further utilized it for training two fine-tuned deep learning models such as Inception-ResNetV2 and NasNet Mobile. Then, we used transfer learning on augmented datasets to train both models and obtained two feature vectors from newly fine-tuned models. Later, we applied a fuzzy entropy slime mould algorithm on both vectors to get optimal features that are finally fused using the Serial-Threshold fusion technique and classified using several machine learning classifiers. Eventually, the explainable AI technique named Gradcam opted for the visualization of the lesion region. The experimental process was conducted on two datasets, such as HAM10000 and ISIC 2018, and achieved 97.1 and 90.2% accuracy, better than the other techniques.
引用
收藏
页码:22115 / 22131
页数:16
相关论文
共 218 条
[31]  
Blau HM(2019)Deep learning and handcrafted method fusion: higher diagnostic accuracy for melanoma dermoscopy images IEEE J Biomed Health Inform 23 23559-undefined
[32]  
Bi L(2019)DermoDeep-A classification of melanoma-nevus skin lesions using multi-feature fusion of visual features and deep neural network Multimedia Tools Appl 78 102041-undefined
[33]  
Feng DD(2020)Assisted deep learning framework for multi-class skin lesion classification considering a binary classification support Biomed Signal Process Control 62 2140-undefined
[34]  
Fulham M(2020)Visual saliency based global–local feature representation for skin cancer classification IET Image Proc 14 105568-undefined
[35]  
Kim J(2020)A GAN-based image synthesis method for skin lesion classification Comput Methods Programs Biomed 195 310-undefined
[36]  
Brinker TJ(2020)Development of a light-weight deep learning model for cloud applications and remote diagnosis of skin cancers J Dermatol 48 2870-undefined
[37]  
Hekler A(2020)GP-CNN-DTEL: global-part cnn model with data-transformed ensemble learning for skin lesion classification IEEE J Biomed Health Inform 24 101765-undefined
[38]  
Utikal JS(2020)Automatic skin lesion classification based on mid-level feature learning Comput Med Imaging Graph 84 811-undefined
[39]  
Grabe N(2021)Skin lesion segmentation and multiclass classification using deep learning features and improved moth flame optimization Diagnostics 11 58-undefined
[40]  
Schadendorf D(2021)Attributes based skin lesion detection and recognition: A mask RCNN and transfer learning-based deep learning framework Pattern Recognit Lett 143 1-undefined