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. 2024 May 24;10:20552076241253757. doi: 10.1177/20552076241253757

Table 1.

State-of-the-art comparison.

Ref. Approach Dataset Features inputs Methodology Comparison parameter Performance metrics Limitations
Hosny and Kassem 4 Refined
residual deep
convolutional
network
ISIC 2017
dataset
Image features
and 2018
Refined
residual deep
convolutional
network
Accuracy, Sensitivity,
Specificity, F1-score,
AUC-ROC
Accuracy: 0.94–0.98,
Sensitivity: 0.90–0.97,
Specificity: 0.95–0.98,
F1-score: 0.94–0.98,
AUC-ROC: 0.97–0.99
Limited dataset,
lack of diversity
in skin types,
limited comparison
with other methods
Bukhari et al. 8 Multi-parallel
depthwise
separable and
dilated
convolutions
with Swish
activations
ISIC 2018
dataset
Image features Multi-parallel
depth-wise
separable and
dilated
convolutions
with Swish
activations
Dice similarity
coefficient, Jaccard
similarity coefficient,
Sensitivity, Specificity,
Accuracy
Dice similarity
coefficient: 0.882,
Jaccard similarity
coefficient: 0.788,
Sensitivity: 0.892,
Specificity: 0.980,
Accuracy: 0.964
Limited dataset,
lack of diversity
in skin types
Mustafa et al. 19 ANN with color
and texture
features
DermQuest
and PH2
Dataset
Color and
texture
features
ANN with color
and texture
features
Accuracy, Sensitivity,
Specificity
Accuracy: 93.9%,
Sensitivity: 91.2%,
Specificity: 96.4%
Limited dataset,
limited evaluation
metrics
Lingaraj et al. 21 support vector
machine
Dermoscopic
Images
Color, Texture,
Shape, and
Statistical
Features
Feature extraction
using Gabor filter
and SVM model
Accuracy, Sensitivity Accuracy: 83.25%,
Sensitivity: 88.41%,
Specificity: 78.04%
Small dataset size,
performance not
compared with
other state-of-the-art techniques
Khan et al. 22 Convolutional
neural
network
Dermoscopic
Images
Transfer Learning
(Inception-V3,
VGG-19,
ResNet-50)
Preprocessing and
CNN-based model
Accuracy, Sensitivity Accuracy: 88.8%–91.2%,
Sensitivity: 89.2%–92.8%
Limited dataset
size, lack of
comparison
with other
with other
techniques
Liang and Wu 23 Convolutional
neural
network
Dermoscopic
Images
Patch-based
features
Preprocessing and
CNN-based model
Dice Coefficient,
Sensitivity
Dice Coefficient: 91.91%,
Sensitivity: 91.93%
Small dataset size,
lack of comparison
with other
state-of-the-art
techniques
Ashraf et al. 24 Artificial neural
networks
Dermoscopic
mages
Color and
texture
features
Feature extraction
using Gabor filter
and ANN model
Accuracy, Sensitivity Accuracy: 96.5%,
Sensitivity: 96.9%
Limited dataset
size, performance
not compared with
other state-of-
the-art techniques
Ashraf et al. 25 Deep Stacked
Patched
Auto-Encoders
Dermoscopic
Images
Patch-based
features
Feature extraction
using DSAE
and SVM model
Accuracy, Sensitivity Accuracy: 92.5%,
Sensitivity: 93.5%
Small dataset size,
lack of comparison
with other
state-of-the-art
techniques, limited
explanation
of feature
extraction process
Ali et al. 26 Deep Residual
Network
Dermoscopic
Images
Texture and
Shape
Features
Feature extraction
using DRN and
SVM model
Accuracy, Sensitivity, Accuracy: 94.12%,
Sensitivity: 94.98%
Small dataset size,
lack of comparison
with other
state-of-the-art
techniques
Jeyakumar et al. 27 CNN, VGG16,
ResNet50,
DenseNet169,
InceptionResNetV2
ISIC 2018
dataset
Image
features
CNN, VGG16,
ResNet50,
DenseNet169,
InceptionResNetV2
Accuracy, Sensitivity,
Specificity, F1-score,
AUC-ROC
Accuracy: 0.917–0.952,
Sensitivity: 0.889–0.917,
Specificity: 0.960–0.988,
F1-score: 0.894–0.929,
AUC-ROC: 0.957–0.985
Lack of diversity
in skin types,
limited evaluation
metrics

CNN: convolutional neural network; SVM: support vector machine; ANN: artificial neural network.