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1.
Skin Res Technol ; 25(4): 544-552, 2019 Jul.
Article in English | MEDLINE | ID: mdl-30868667

ABSTRACT

PURPOSE: We present a classifier for automatically selecting a lesion border for dermoscopy skin lesion images, to aid in computer-aided diagnosis of melanoma. Variation in photographic technique of dermoscopy images makes segmentation of skin lesions a difficult problem. No single algorithm provides an acceptable lesion border to allow further processing of skin lesions. METHODS: We present a random forests border classifier model to select a lesion border from 12 segmentation algorithm borders, graded on a "good-enough" border basis. Morphology and color features inside and outside the automatic border are used to build the model. RESULTS: For a random forests classifier applied to an 802-lesion test set, the model predicts a satisfactory border in 96.38% of cases, in comparison to the best single border algorithm, which detects a satisfactory border in 85.91% of cases. CONCLUSION: The performance of the classifier-based automatic skin lesion finder is found to be better than any single algorithm used in this research.


Subject(s)
Dermoscopy/methods , Melanoma/diagnostic imaging , Pattern Recognition, Automated/methods , Skin Neoplasms/diagnostic imaging , Algorithms , Color , Dermoscopy/classification , Diagnosis, Computer-Assisted , Humans , Image Enhancement , Image Interpretation, Computer-Assisted/instrumentation , Melanoma/pathology , Skin/pathology , Skin Neoplasms/classification , Skin Neoplasms/pathology
2.
J Am Acad Dermatol ; 78(2): 270-277.e1, 2018 02.
Article in English | MEDLINE | ID: mdl-28969863

ABSTRACT

BACKGROUND: Computer vision may aid in melanoma detection. OBJECTIVE: We sought to compare melanoma diagnostic accuracy of computer algorithms to dermatologists using dermoscopic images. METHODS: We conducted a cross-sectional study using 100 randomly selected dermoscopic images (50 melanomas, 44 nevi, and 6 lentigines) from an international computer vision melanoma challenge dataset (n = 379), along with individual algorithm results from 25 teams. We used 5 methods (nonlearned and machine learning) to combine individual automated predictions into "fusion" algorithms. In a companion study, 8 dermatologists classified the lesions in the 100 images as either benign or malignant. RESULTS: The average sensitivity and specificity of dermatologists in classification was 82% and 59%. At 82% sensitivity, dermatologist specificity was similar to the top challenge algorithm (59% vs. 62%, P = .68) but lower than the best-performing fusion algorithm (59% vs. 76%, P = .02). Receiver operating characteristic area of the top fusion algorithm was greater than the mean receiver operating characteristic area of dermatologists (0.86 vs. 0.71, P = .001). LIMITATIONS: The dataset lacked the full spectrum of skin lesions encountered in clinical practice, particularly banal lesions. Readers and algorithms were not provided clinical data (eg, age or lesion history/symptoms). Results obtained using our study design cannot be extrapolated to clinical practice. CONCLUSION: Deep learning computer vision systems classified melanoma dermoscopy images with accuracy that exceeded some but not all dermatologists.


Subject(s)
Algorithms , Dermatologists , Dermoscopy , Lentigo/diagnostic imaging , Melanoma/diagnosis , Nevus/diagnostic imaging , Skin Neoplasms/diagnostic imaging , Congresses as Topic , Cross-Sectional Studies , Diagnosis, Computer-Assisted , Humans , Machine Learning , Melanoma/pathology , ROC Curve , Skin Neoplasms/pathology
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