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Published in: International Journal of Computer Assisted Radiology and Surgery 6/2017

24-03-2017 | Original Article

Extraction of skin lesions from non-dermoscopic images for surgical excision of melanoma

Authors: M. Hossein Jafari, Ebrahim Nasr-Esfahani, Nader Karimi, S. M. Reza Soroushmehr, Shadrokh Samavi, Kayvan Najarian

Published in: International Journal of Computer Assisted Radiology and Surgery | Issue 6/2017

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Abstract

Purpose

Computerized prescreening of suspicious moles and lesions for malignancy is of great importance for assessing the need and the priority of the removal surgery. Detection can be done by images captured by standard cameras, which are more preferable due to low cost and availability. One important step in computerized evaluation is accurate detection of lesion’s region, i.e., segmentation of an image into two regions as lesion and normal skin.

Methods

In this paper, a new method based on deep neural networks is proposed for accurate extraction of a lesion region. The input image is preprocessed, and then, its patches are fed to a convolutional neural network. Local texture and global structure of the patches are processed in order to assign pixels to lesion or normal classes. A method for effective selection of training patches is proposed for more accurate detection of a lesion’s border.

Results

Our results indicate that the proposed method could reach the accuracy of 98.7% and the sensitivity of 95.2% in segmentation of lesion regions over the dataset of clinical images.

Conclusion

The experimental results of qualitative and quantitative evaluations demonstrate that our method can outperform other state-of-the-art algorithms exist in the literature.

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Literature
1.
go back to reference American Cancer Society (2016) Cancer facts & figures 2016. American Cancer Society, Atlanta American Cancer Society (2016) Cancer facts & figures 2016. American Cancer Society, Atlanta
3.
go back to reference Jerant AF, Johnson JT, Sheridan C, Caffrey TJ (2000) Early detection and treatment of skin cancer. Am Fam Physician 2:357–386 Jerant AF, Johnson JT, Sheridan C, Caffrey TJ (2000) Early detection and treatment of skin cancer. Am Fam Physician 2:357–386
4.
go back to reference Nachbar F, Stolz W, Merkle T, Cognetta AB, Vogt T, Landthaler M, Bilek P, Falco OB, Plewig G (1994) The abcd rule of dermatoscopy: high prospective value in the diagnosis of doubtful melanocytic skin lesions. J Am Acad Dermatol 30:551–559CrossRefPubMed Nachbar F, Stolz W, Merkle T, Cognetta AB, Vogt T, Landthaler M, Bilek P, Falco OB, Plewig G (1994) The abcd rule of dermatoscopy: high prospective value in the diagnosis of doubtful melanocytic skin lesions. J Am Acad Dermatol 30:551–559CrossRefPubMed
5.
go back to reference Korotkov K, Garcia R (2012) Computerized analysis of pigmented skin lesions: a review. Artif Intell Med 56:69–90CrossRefPubMed Korotkov K, Garcia R (2012) Computerized analysis of pigmented skin lesions: a review. Artif Intell Med 56:69–90CrossRefPubMed
6.
go back to reference Engasser H, Warshaw E (2010) Dermatoscopy use by US dermatologists: a cross-sectional survey. J Am Acad Dermatol 63:412–419CrossRefPubMed Engasser H, Warshaw E (2010) Dermatoscopy use by US dermatologists: a cross-sectional survey. J Am Acad Dermatol 63:412–419CrossRefPubMed
7.
go back to reference Amelard R, Glaister J, Wong A, Clausi D (2015) High-level intuitive features (HLIFs) for intuitive skin lesion description. IEEE Trans Biomed Eng 62:820–831CrossRefPubMed Amelard R, Glaister J, Wong A, Clausi D (2015) High-level intuitive features (HLIFs) for intuitive skin lesion description. IEEE Trans Biomed Eng 62:820–831CrossRefPubMed
8.
go back to reference Jafari MH, Samavi S, Soroushmehr SMR, Mohaghegh H, Karimi N, Najarian K (2016) Set of descriptors for skin cancer diagnosis using non-dermoscopic color images. In: 2016 IEEE international conference on image processing (ICIP) Jafari MH, Samavi S, Soroushmehr SMR, Mohaghegh H, Karimi N, Najarian K (2016) Set of descriptors for skin cancer diagnosis using non-dermoscopic color images. In: 2016 IEEE international conference on image processing (ICIP)
9.
go back to reference Glaister J (2013) Automatic segmentation of skin lesions from dermatological photographs. M.S. thesis Department of Systems Design Engineering, University of Waterloo, Waterloo Glaister J (2013) Automatic segmentation of skin lesions from dermatological photographs. M.S. thesis Department of Systems Design Engineering, University of Waterloo, Waterloo
10.
go back to reference Celebi M, Kingravi H, Iyatomi H, Alp Aslandogan Y, Stoecker W, Moss R, Malters J, Grichnik J, Marghoob A, Rabinovitz H, Menzies S (2008) Border detection in dermoscopy images using statistical region merging. Skin Res Technol 14:347–353CrossRefPubMedPubMedCentral Celebi M, Kingravi H, Iyatomi H, Alp Aslandogan Y, Stoecker W, Moss R, Malters J, Grichnik J, Marghoob A, Rabinovitz H, Menzies S (2008) Border detection in dermoscopy images using statistical region merging. Skin Res Technol 14:347–353CrossRefPubMedPubMedCentral
12.
go back to reference Cavalcanti P, Yari Y, Scharcanski J (2010) Pigmented skin lesion segmentation on macroscopic images. In: Procedings of 25th international conference on image vision computing, pp 1–7 Cavalcanti P, Yari Y, Scharcanski J (2010) Pigmented skin lesion segmentation on macroscopic images. In: Procedings of 25th international conference on image vision computing, pp 1–7
13.
go back to reference Cavalcanti P, Scharcanski J, Lopes C (2010) Shading attenuation in human skin color images. In: 6th International symposium on advances in visual computing, pp 190–198 Cavalcanti P, Scharcanski J, Lopes C (2010) Shading attenuation in human skin color images. In: 6th International symposium on advances in visual computing, pp 190–198
14.
go back to reference Cavalcanti P, Scharcanski J (2011) Automated prescreening of pigmented skin lesions using standard cameras. Comput Med Imaging Graph 35:481–491CrossRefPubMed Cavalcanti P, Scharcanski J (2011) Automated prescreening of pigmented skin lesions using standard cameras. Comput Med Imaging Graph 35:481–491CrossRefPubMed
15.
go back to reference Glaister J, Wong A, Clausi D (2014) Segmentation of skin lesions from digital images using joint statistical texture distinctiveness. IEEE Trans Biomed Eng 61:1220–1230CrossRefPubMed Glaister J, Wong A, Clausi D (2014) Segmentation of skin lesions from digital images using joint statistical texture distinctiveness. IEEE Trans Biomed Eng 61:1220–1230CrossRefPubMed
16.
17.
go back to reference Deng L (2014) Deep learning: methods and applications. FNT Signal Process 7:197–387CrossRef Deng L (2014) Deep learning: methods and applications. FNT Signal Process 7:197–387CrossRef
18.
go back to reference Melinščak M, Prentašić P, Lončarić S (2015) Retinal vessel segmentation using deep neural networks. In: 10th International conference on computer vision theory and applications Melinščak M, Prentašić P, Lončarić S (2015) Retinal vessel segmentation using deep neural networks. In: 10th International conference on computer vision theory and applications
19.
go back to reference Nasr-Esfahani E, Samavi S, Karimi N, Soroushmehr SMR, Ward K, Jafari MH, Felfeliyan B, Najarian K (2016) Vessel extraction in X-ray angiograms using deep learning. In: 2016 38th Annual international conference of the IEEE engineering in medicine and biology society (EMBC) Nasr-Esfahani E, Samavi S, Karimi N, Soroushmehr SMR, Ward K, Jafari MH, Felfeliyan B, Najarian K (2016) Vessel extraction in X-ray angiograms using deep learning. In: 2016 38th Annual international conference of the IEEE engineering in medicine and biology society (EMBC)
20.
go back to reference Havaei M, Davy A, Warde-Farley D, Biard A, Courville A, Bengio Y, Pal C, Jodoin P, Larochelle H (2016) Brain tumor segmentation with deep neural networks. Med Image Anal 35:18–31CrossRefPubMed Havaei M, Davy A, Warde-Farley D, Biard A, Courville A, Bengio Y, Pal C, Jodoin P, Larochelle H (2016) Brain tumor segmentation with deep neural networks. Med Image Anal 35:18–31CrossRefPubMed
21.
go back to reference Zhao R, Ouyang W, Li H, Wang X (2015) Saliency detection by multi-context deep learning. In: IEEE conference on computer vision and pattern recognition (CVPR), pp 1265–1274 Zhao R, Ouyang W, Li H, Wang X (2015) Saliency detection by multi-context deep learning. In: IEEE conference on computer vision and pattern recognition (CVPR), pp 1265–1274
22.
go back to reference Jafari MH, Karimi N, Nasr-Esfahani E, Samavi S, Soroushmehr SMR, Ward K, Najarian K (2016) Skin lesion segmentation in clinical images using deep learning. In: 2016 23rd International conference on pattern recognition (ICPR) Jafari MH, Karimi N, Nasr-Esfahani E, Samavi S, Soroushmehr SMR, Ward K, Najarian K (2016) Skin lesion segmentation in clinical images using deep learning. In: 2016 23rd International conference on pattern recognition (ICPR)
23.
go back to reference He K, Sun J, Tang X (2013) Guided image filtering. IEEE Trans Pattern Anal Mach Intell 35:1397–1409CrossRefPubMed He K, Sun J, Tang X (2013) Guided image filtering. IEEE Trans Pattern Anal Mach Intell 35:1397–1409CrossRefPubMed
Metadata
Title
Extraction of skin lesions from non-dermoscopic images for surgical excision of melanoma
Authors
M. Hossein Jafari
Ebrahim Nasr-Esfahani
Nader Karimi
S. M. Reza Soroushmehr
Shadrokh Samavi
Kayvan Najarian
Publication date
24-03-2017
Publisher
Springer International Publishing
Published in
International Journal of Computer Assisted Radiology and Surgery / Issue 6/2017
Print ISSN: 1861-6410
Electronic ISSN: 1861-6429
DOI
https://doi.org/10.1007/s11548-017-1567-8

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