R. Joe Stanley
Missouri University of Science and Technology
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by R. Joe Stanley.
Skin Research and Technology | 2005
Bulent Erkol; Randy H. Moss; R. Joe Stanley; William V. Stoecker; Erik Hvatum
Background: Malignant melanoma has a good prognosis if treated early. Dermoscopy images of pigmented lesions are most commonly taken at × 10 magnification under lighting at a low angle of incidence while the skin is immersed in oil under a glass plate. Accurate skin lesion segmentation from the background skin is important because some of the features anticipated to be used for diagnosis deal with shape of the lesion and others deal with the color of the lesion compared with the color of the surrounding skin.
Computerized Medical Imaging and Graphics | 2003
R. Joe Stanley; Randy H. Moss; William V. Stoecker; Chetna Aggarwal
A fuzzy logic-based color histogram analysis technique is presented for discriminating benign skin lesions from malignant melanomas in dermatology clinical images. The approach utilizes a fuzzy set for benign skin lesion color, and alpha-cut and support set cardinality for quantifying a fuzzy ratio skin lesion color feature. Skin lesion discrimination results are reported for the fuzzy ratio and fusion with a previously determined percent melanoma color feature over a data set of 258 clinical images. For the fusion technique, alpha-cuts for the fuzzy ratio can be chosen to recognize over 93.30% of melanomas with approximately 15.67% false positive lesions.
Skin Research and Technology | 2005
William V. Stoecker; Kapil Gupta; R. Joe Stanley; Randy H. Moss; Bijaya Shrestha
Background: Dermoscopy, also known as dermatoscopy or epiluminescence microscopy (ELM), is a non‐invasive, in vivo technique, which permits visualization of features of pigmented melanocytic neoplasms that are not discernable by examination with the naked eye. One prominent feature useful for melanoma detection in dermoscopy images is the asymmetric blotch (asymmetric structureless area).
Computerized Medical Imaging and Graphics | 2011
William V. Stoecker; Mark Wronkiewiecz; Raeed H. Chowdhury; R. Joe Stanley; Jin Xu; Austin Bangert; Bijaya Shrestha; David A. Calcara; Harold S. Rabinovitz; Margaret Oliviero; Fatimah Ahmed; Lindall A. Perry; Rhett J. Drugge
Granularity, also called peppering and multiple blue-grey dots, is defined as an accumulation of tiny, blue-grey granules in dermoscopy images. Granularity is most closely associated with a diagnosis of malignant melanoma. This study analyzes areas of granularity with color and texture measures to discriminate granularity in melanoma from similar areas in non-melanoma skin lesions. The granular areas in dermoscopy images of 74 melanomas and 14 melanomas in situ were identified and manually selected. For 200 non-melanoma dermoscopy images, those areas which most closely resembled granularity in color and texture were similarly selected. Ten texture and twenty-two color measures were studied. The texture measures consisted of the average and range of energy, inertia, correlation, inverse difference, and entropy. The color measures consisted of absolute and relative RGB averages, absolute and relative RGB chromaticity averages, absolute and relative G/B averages, CIE X, Y, Z, X/Y, X/Z and Y/Z averages, R variance, and luminance. These measures were calculated for each granular area of the melanomas and the comparable areas in the non-melanoma images. Receiver operating characteristic (ROC) curve analysis showed that the best separation of melanoma images from non-melanoma images by granular area features was obtained with a combination of color and texture measures. Comparison of ROC results showed greater separation of melanoma from benign lesions using relative color than using absolute color. Statistical analysis showed that the four most significant measures of granularity in melanoma are two color measures and two texture measures averaged over the spots: relative blue, relative green, texture correlation, and texture energy range. The best feature set, utilizing texture and relative color measures, achieved an accuracy of 96.4% based on area under the receiver operating characteristic curve.
Skin Research and Technology | 2007
R. Joe Stanley; William V. Stoecker; Randy H. Moss
Background: Skin lesion color is an important feature for diagnosing malignant melanoma. In previous research, skin lesion color was investigated for discriminating malignant melanoma lesions from benign lesions in clinical images. Colors characteristics of melanoma were determined using color histogram analysis over a training set of images. Percent melanoma color and color clustering ratio features were used to quantify the presence of melanoma‐colored pixels within skin lesions for skin lesion discrimination.
Skin Research and Technology | 2010
Bijaya Shrestha; Joseph Andrew Bishop; Keong Kam; Xiaohe Chen; Randy H. Moss; William V. Stoecker; Scott E. Umbaugh; R. Joe Stanley; M. Emre Celebi; Ashfaq A. Marghoob; Giuseppe Argenziano; H. Peter Soyer
Background: The presence of an atypical (irregular) pigment network (APN) can indicate a diagnosis of melanoma. This study sought to analyze the APN with texture measures.
Skin Research and Technology | 2005
Ying Chang; R. Joe Stanley; Randy H. Moss; William V. Stoecker
Background: Numerous features are derived from the asymmetry, border irregularity, color variegation, and diameter of the skin lesion in dermatology for diagnosing malignant melanoma. Feature selection for the development of automated skin lesion discrimination systems is an important consideration.
Computerized Medical Imaging and Graphics | 2011
Ankur Dalal; Randy H. Moss; R. Joe Stanley; William V. Stoecker; Kapil Gupta; David A. Calcara; Jin Xu; Bijaya Shrestha; Rhett J. Drugge; Joseph M. Malters; Lindall A. Perry
Dermoscopy, also known as dermatoscopy or epiluminescence microscopy (ELM), permits visualization of features of pigmented melanocytic neoplasms that are not discernable by examination with the naked eye. White areas, prominent in early malignant melanoma and melanoma in situ, contribute to early detection of these lesions. An adaptive detection method has been investigated to identify white and hypopigmented areas based on lesion histogram statistics. Using the Euclidean distance transform, the lesion is segmented in concentric deciles. Overlays of the white areas on the lesion deciles are determined. Calculated features of automatically detected white areas include lesion decile ratios, normalized number of white areas, absolute and relative size of largest white area, relative size of all white areas, and white area eccentricity, dispersion, and irregularity. Using a back-propagation neural network, the white area statistics yield over 95% diagnostic accuracy of melanomas from benign nevi. White and hypopigmented areas in melanomas tend to be central or paracentral. The four most powerful features on multivariate analysis are lesion decile ratios. Automatic detection of white and hypopigmented areas in melanoma can be accomplished using lesion statistics. A neural network can achieve good discrimination of melanomas from benign nevi using these areas. Lesion decile ratios are useful white area features.
Skin Research and Technology | 2010
Hanzheng Wang; Xiaohe Chen; Randy H. Moss; R. Joe Stanley; William V. Stoecker; M. Emre Celebi; Tommy Szalapski; Joseph M. Malters; James M. Grichnik; Ashfaq A. Marghoob; Harold S. Rabinovitz; Scott W. Menzies
Background/purpose: Automatic lesion segmentation is an important part of computer‐based image analysis of pigmented skin lesions. In this research, a watershed algorithm is developed and investigated for adequacy of skin lesion segmentation in dermoscopy images.
Skin Research and Technology | 2003
Jixiang Chen; R. Joe Stanley; Randy H. Moss; William V. Stoecker
Background: Skin lesion colour is an important feature for diagnosing malignant melanoma. Colour histogram analysis over a training set of images has been used to identify colours characteristic of melanoma, i.e., melanoma colours. A percent melanoma colour feature defined as the percentage of the lesion pixels that are melanoma colours has been used as a feature to discriminate melanomas from benign lesions.