An efficient machine learning approach for the detection of melanoma using dermoscopic images

Diagnosis of dermoscopic skin lesions due to skin cancer is the most challenging task for the experienced dermatologists. In this context, dermoscopy is the non-invasive useful method for the detection of skin lesions which are not visible to naked human eye. Among different types of skin cancers, malignant melanoma is the most aggressive and deadliest form of skin cancer. Its diagnosis is crucial if not detected in early stage. This paper mainly aims to present an efficient machine learning approach for the detection of melanoma from dermoscopic images. It detects melanomic skin lesions based upon their discriminating properties. In first step of proposed method, different types of color and texture features are extracted from dermoscopic images based on distinguished structures and varying intensities of melanomic lesions. In second step, extracted features are fed to the classifier to classify melanoma out of dermoscopic images. Paper also focuses on the role of color and texture features in the context of detection of melanomas. Proposed method is tested on publicly available PH2 dataset in terms of accuracy, sensitivity, specificity and Area under ROC curve (AUC). It is observed that good results are achieved using extracted features, hence proving the validity of the proposed system.

[1]  Mutlu Mete,et al.  Fast density-based lesion detection in dermoscopy images , 2011, Comput. Medical Imaging Graph..

[2]  David Dagan Feng,et al.  Automatic melanoma detection via multi-scale lesion-biased representation and joint reverse classification , 2016, 2016 IEEE 13th International Symposium on Biomedical Imaging (ISBI).

[3]  M. Emre Celebi,et al.  Automated Quantification of Clinically Significant Colors in Dermoscopy Images and Its Application to Skin Lesion Classification , 2014, IEEE Systems Journal.

[4]  Jorge S. Marques,et al.  On the role of texture and color in the classification of dermoscopy images , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[5]  Muhammad Younus Javed,et al.  Detecting melanoma in dermoscopy images using scale adaptive local binary patterns , 2014, 2014 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[6]  Giordana Dell'Eva,et al.  Digital dermoscopy in clinical practise: a three‐centre analysis , 2007, Skin research and technology : official journal of International Society for Bioengineering and the Skin (ISBS) [and] International Society for Digital Imaging of Skin (ISDIS) [and] International Society for Skin Imaging.

[7]  Nikhil Cheerla,et al.  Automatic Melanoma Detection Using Multi- Stage Neural Networks , 2014 .

[8]  Gerald Schaefer,et al.  Melanoma Classification Using Dermoscopy Imaging and Ensemble Learning , 2013, 2013 2nd IAPR Asian Conference on Pattern Recognition.

[9]  Jorge S. Marques,et al.  Two Systems for the Detection of Melanomas in Dermoscopy Images Using Texture and Color Features , 2014, IEEE Systems Journal.

[10]  Jorge S. Marques,et al.  Improving Dermoscopy Image Classification Using Color Constancy , 2015, IEEE Journal of Biomedical and Health Informatics.

[11]  Masafumi Hagiwara,et al.  An improved Internet-based melanoma screening system with dermatologist-like tumor area extraction algorithm , 2008, Comput. Medical Imaging Graph..

[12]  Jorge S. Marques,et al.  On the role of shape in the detection of melanomas , 2013, 2013 8th International Symposium on Image and Signal Processing and Analysis (ISPA).

[13]  G Pellacani,et al.  Digital videomicroscopy improves diagnostic accuracy for melanoma. , 1998, Journal of the American Academy of Dermatology.