| Literature DB >> 34821566 |
Abdulrahman Takiddin1,2, Jens Schneider2, Yin Yang2, Alaa Abd-Alrazaq2, Mowafa Househ2.
Abstract
BACKGROUND: Skin cancer is the most common cancer type affecting humans. Traditional skin cancer diagnosis methods are costly, require a professional physician, and take time. Hence, to aid in diagnosing skin cancer, artificial intelligence (AI) tools are being used, including shallow and deep machine learning-based methodologies that are trained to detect and classify skin cancer using computer algorithms and deep neural networks.Entities:
Keywords: artificial intelligence; deep neural networks; machine learning; skin cancer; skin lesion
Mesh:
Year: 2021 PMID: 34821566 PMCID: PMC8663507 DOI: 10.2196/22934
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Similarity of normal lesion (left) and melanoma (right).
Figure 2PRISMA approach. ACM DL: Association for Computing Machinery Digital Library; AI: artificial intelligence; IEEE: Institute of Electrical and Electronics Engineers; PRISMA: Preferred Reporting Items for Systematic Reviews and Meta-Analyses.
Study characteristics (N=53).
| Characteristics | n (%) | |
|
| ||
| Before 2016 | 4 (7.5) | |
| 2016-2018 | 26 (49.1) | |
| 2019-2020 | 23 (43.4) | |
|
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| The United States | 9 (16.9) | |
| China | 6 (11.3) | |
| India | 5 (9.4) | |
| Poland | 3 (5.7) | |
| New Zealand | 2 (3.8) | |
| Austria | 2 (3.8) | |
| Germany | 2 (3.8) | |
| Bangladesh | 2 (3.8) | |
| Indonesia | 2 (3.8) | |
| Pakistan | 2 (3.8) | |
| Turkey | 2 (3.8) | |
| France | 1 (1.9) | |
| Russia | 1 (1.9) | |
| The United Kingdom | 1 (1.9) | |
| Hong Kong | 1 (1.9) | |
| Iran | 1 (1.9) | |
| Korea | 1 (1.9) | |
| Philippines | 1 (1.9) | |
| Lebanon | 1 (1.9) | |
| Saudi Arabia | 1 (1.9) | |
| Singapore | 1 (1.9) | |
| Thailand | 1 (1.9) | |
| Australia | 1 (1.9) | |
| Canada | 1 (1.9) | |
| Egypt | 1 (1.9) | |
| Nigeria | 1 (1.9) | |
| South Africa | 1 (1.9) | |
|
| ||
| Conference proceedings | 31 (58.5) | |
| Journals | 22 (41.5) | |
Figure 3Number of published papers by year.
Figure 4Number of published papers by region.
Data and deployment characteristics (N=53).
| Characteristics | n (%) | |
|
| ||
| Small | 21 (39.6) | |
| Medium | 25 (47.1) | |
| Large | 7 (13.2) | |
|
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| 2 classes | 31 (58.5) | |
| 3 classes | 8 (15.1) | |
| 4 classes | 1 (1.9) | |
| 5 classes | 2 (3.8) | |
| 7 classes | 10 (18.9) | |
| 9 classes | 1 (1.9) | |
|
| ||
| Dermoscopic | 43 (81.1) | |
| Clinical | 5 (9.4) | |
| High quality | 4 (7.5) | |
| Spectroscopic | 1 (1.9) | |
|
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| Development | 45 (84.9) | |
| System | 3 (5.7) | |
| Web application | 3 (5.7) | |
| Mobile application | 2 (3.8) | |
Figure 5Number of published papers by number of diagnostic classes used.
Techniques used in included studies using shallow techniques (N=14).
| Model | n (%) | Reference |
| SVMa | 9 (64.3) | [ |
| NBb | 1 (7.1) | [ |
| LRc | 1 (7.1) | [ |
| kNNd | 1 (7.1) | [ |
| RFe | 1 (7.1) | [ |
| Hybrid | 1 (7.1) | [ |
aSVM: support vector machine.
bNB: naive Bayes.
cLR: logistic regression.
dkNN: k-nearest neighbor.
eRF: random forest.
Techniques used in included studies using deep techniques (N=39).
| Model | n (%) | Reference | |
|
| |||
| ResNetb | 5 (12.8) | [ | |
| Inception | 3 (7.7) | [ | |
| AlexNet | 3 (7.7) | [ | |
| MobileNet | 3 (7.7) | [ | |
| VGGc | 2 (5.1) | [ | |
| Xception | 1 (2.6) | [ | |
| DenseNet | 1 (2.6) | [ | |
|
| |||
| CNN | 9 (23.1) | [ | |
| ResNet | 2 (5.1) | [ | |
| Hybrid | 5 (12.8) | [ | |
| Ensemble | 4 (10.3) | [ | |
| OpenCV | 1 (2.6) | [ | |
aCNN: convolutional neural network.
bResNet: residual network.
cVGG: Visual Geometry Group.
Primary evaluation metrics and scores reported by included studies (N=53).
| Score | Reference | |
|
| ||
|
| 99% | [ |
|
| 98% | [ |
|
| 96% | [ |
|
| 95% | [ |
|
| 94% | [ |
|
| 93% | [ |
|
| 92% | [ |
|
| 91% | [ |
|
| 90% | [ |
|
| 89% | [ |
|
| 88% | [ |
|
| 87% | [ |
|
| 86% | [ |
|
| 84% | [ |
|
| 83% | [ |
|
| 81% | [ |
|
| 80% | [ |
|
| 77% | [ |
|
| 75% | [ |
|
| 72% | [ |
|
| 67% | [ |
|
| ||
|
| 92% | [ |
|
| 91% | [ |
|
| 89% | [ |
|
| 87% | [ |
|
| 85% | [ |
|
| 84% | [ |
|
| 82% | [ |
|
| ||
|
| 96% | [ |
|
| 90% | [ |
|
| 83% | [ |
|
| 77% | [ |
|
| ||
|
| 96% | [ |
|
| 90% | [ |
|
| 89% | [ |
|
| 70% | [ |
|
| ||
|
| 83% | [ |
aAUC: area under the curve.
Figure 6Effect of the number of diagnostic classes and data set size on accuracy.