Unbound MEDLINE

Automatic differentiation of melanoma from melanocytic nevi with multispectral digital dermoscopy: a feasibility study. Journal of the American Academy of Dermatology. [J Am Acad Dermatol] Journal article

 
TitleAutomatic differentiation of melanoma from melanocytic nevi with multispectral digital dermoscopy: a feasibility study.
Author(s)Elbaum M, Kopf AW, Rabinovitz HS, Langley RG, Kamino H, Mihm MC, Sober AJ, Peck GL, Bogdan A, Gutkowicz-Krusin D, Greenebaum M, Keem S, Oliviero M, Wang S 
InstitutionElectro-Optical Sciences, Inc, Irvington, NY, USA. elbaum@eo-sciences.com
SourceJ Am Acad Dermatol 2001 Feb; 44(2):207-18.
MeSHDiagnosis, Differential
Expert Systems
Feasibility Studies
Humans
Image Processing, Computer-Assisted
Melanoma
Nevus, Pigmented
Photography
ROC Curve
Research Support, Non-U.S. Gov't
Research Support, U.S. Gov't, P.H.S.
Sensitivity and Specificity
Skin Neoplasms
Spectrophotometry
AbstractBACKGROUND: Differentiation of melanoma from melanocytic nevi is difficult even for skin cancer specialists. This motivates interest in computer-assisted analysis of lesion images.
OBJECTIVE: Our purpose was to offer fully automatic differentiation of melanoma from dysplastic and other melanocytic nevi through multispectral digital dermoscopy.
METHOD: At 4 clinical centers, images were taken of pigmented lesions suspected of being melanoma before biopsy. Ten gray-level (MelaFind) images of each lesion were acquired, each in a different portion of the visible and near-infrared spectrum. The images of 63 melanomas (33 invasive, 30 in situ) and 183 melanocytic nevi (of which 111 were dysplastic) were processed automatically through a computer expert system to separate melanomas from nevi. The expert system used either a linear or a nonlinear classifier. The "gold standard" for training and testing these classifiers was concordant diagnosis by two dermatopathologists.
RESULTS: On resubstitution, 100% sensitivity was achieved at 85% specificity with a 13-parameter linear classifier and 100%/73% with a 12-parameter nonlinear classifier. Under leave-one-out cross-validation, the linear classifier gave 100%/84% (sensitivity/specificity), whereas the nonlinear classifier gave 95%/68%. Infrared image features were significant, as were features based on wavelet analysis.
CONCLUSION: Automatic differentiation of invasive and in situ melanomas from melanocytic nevi is feasible, through multispectral digital dermoscopy.
Languageeng
Pub Type(s)Journal Article
PubMed ID11174377
  
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