Uncertainty Quantification in Skin Cancer Classification using Three-Way Decision-based Bayesian Deep Learning

Author(s):  
Moloud Abdar ◽  
Maryam Samami ◽  
Sajjad Dehghani Mahmoodabad ◽  
Thang Doan ◽  
Bogdan Mazoure ◽  
...  
2020 ◽  
Vol 7 ◽  
Author(s):  
Achim Hekler ◽  
Jakob N. Kather ◽  
Eva Krieghoff-Henning ◽  
Jochen S. Utikal ◽  
Friedegund Meier ◽  
...  

2021 ◽  
Vol 11 (22) ◽  
pp. 10593
Author(s):  
Nabeela Kausar ◽  
Abdul Hameed ◽  
Mohsin Sattar ◽  
Ramiza Ashraf ◽  
Ali Shariq Imran ◽  
...  

Skin cancer is a widespread disease associated with eight diagnostic classes. The diagnosis of multiple types of skin cancer is a challenging task for dermatologists due to the similarity of skin cancer classes in phenotype. The average accuracy of multiclass skin cancer diagnosis is 62% to 80%. Therefore, the classification of skin cancer using machine learning can be beneficial in the diagnosis and treatment of the patients. Several researchers developed skin cancer classification models for binary class but could not extend the research to multiclass classification with better performance ratios. We have developed deep learning-based ensemble classification models for multiclass skin cancer classification. Experimental results proved that the individual deep learners perform better for skin cancer classification, but still the development of ensemble is a meaningful approach since it enhances the classification accuracy. Results show that the accuracy of individual learners of ResNet, InceptionV3, DenseNet, InceptionResNetV2, and VGG-19 are 72%, 91%, 91.4%, 91.7% and 91.8%, respectively. The accuracy of proposed majority voting and weighted majority voting ensemble models are 98% and 98.6%, respectively. The accuracy of proposed ensemble models is higher than the individual deep learners and the dermatologists’ diagnosis accuracy. The proposed ensemble models are compared with the recently developed skin cancer classification approaches. The results show that the proposed ensemble models outperform recently developed multiclass skin cancer classification models.


Author(s):  
Rehan Ashraf ◽  
Iqra Kiran ◽  
Toqeer Mahmood ◽  
Ateeq Ur Rehman Butt ◽  
Nafeesa Razzaq ◽  
...  

2020 ◽  
Author(s):  
Julia Höhn ◽  
Achim Hekler ◽  
Eva Krieghoff-Henning ◽  
Jakob Nikolas Kather ◽  
Jochen Sven Utikal ◽  
...  

BACKGROUND In the past years, accuracy of skin cancer classification by convolutional neural networks (CNNs) has improved substantially. On classification tasks of single images, CNNs have performed on par or better than dermatologists. However, in clinical practice dermatologists also use other patient data beyond the visual aspects present in a digitized image which increases their diagnostic accuracy. The effect of integration of different subtypes of patient data into CNN-based skin cancer classifiers was recently investigated in several pilot studies. OBJECTIVE This systematic review focuses on current research investigating the impact of merging information from image features and patient data on the performance of CNN-based skin cancer image classification. The aim is to explore the potential in this field of research by evaluating the type of patient data used, the ways the non-image data is encoded and merged with the image features as well as the impact of the integration for the classifier performance. METHODS Google Scholar, PubMed, Medline and ScienceDirect were screened for peer-reviewed studies published in English dealing with the integration of patient data within a CNN-based skin cancer classification. The search terms skin cancer classification, convolutional neural network(s), deep learning, lesions, melanoma, metadata, clinical information and patient data were combined. RESULTS A total of 11 publications fulfilled the inclusion criteria. All of them reported an overall improvement in different skin lesion classification tasks with patient data integration. The most commonly used patient data were age, sex and lesion location. Patient data was mostly one-hot encoded. Differences occur in the complexity that the encoded patient data was processed with regarding deep learning methods before and after fusing it with the image features for a ‘combined classifier’. CONCLUSIONS The present studies indicate a potential benefit of patient data integration into CNN-based diagnostic algorithms. However, how exactly the individual patient data enhances classification performance, especially in case of multiclass classification problems, is still unclear. Moreover, a substantial fraction of patient data used by dermatologists remains to be analyzed in the context of CNN-based skin cancer classification. Further exploratory analyses in this promising field may optimize patient data integration into CNN-based skin cancer diagnostics for the benefit of the patient.


Author(s):  
Zinah Mohsin Arkah ◽  
Dalya S. Al-Dulaimi ◽  
Ahlam R. Khekan

<p>Skin cancer is an example of the most dangerous disease. Early diagnosis of skin cancer can save many people’s lives. Manual classification methods are time-consuming and costly. Deep learning has been proposed for the automated classification of skin cancer. Although deep learning showed impressive performance in several medical imaging tasks, it requires a big number of images to achieve a good performance. The skin cancer classification task suffers from providing deep learning with sufficient data due to the expensive annotation process and required experts. One of the most used solutions is transfer learning of pre-trained models of the ImageNet dataset. However, the learned features of pre-trained models are different from skin cancer image features. To end this, we introduce a novel approach of transfer learning by training the pre-trained models of the ImageNet (VGG, GoogleNet, and ResNet50) on a large number of unlabelled skin cancer images, first. We then train them on a small number of labeled skin images. Our experimental results proved that the proposed method is efficient by achieving an accuracy of 84% with ResNet50 when directly trained with a small number of labeled skin and 93.7% when trained with the proposed approach.</p>


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