R. S. Prasad, Gautam Kumar Singh, Shishir Prasad, V. Prasad
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For this study, a new and unique color circle design (CCD) for establishing a relation between wavelength (λ) and hue of the HSV (hue Saturation and Value) model is proposed. Using MATLAB, enlarged dermatoscopic images of 23 authentic skin lesions (test samples) with known diagnoses were segmented in such a manner that the region of interest (ROI) included all the suspicious areas. Thereafter, the pixels data from ROI locations were standardized and transformed from RGB to HSV space. Again using MATLAB, hue (h) and Value (V) data were extracted from HSV data. Since each h represents a unique wavelength in the visible range of the spectrum, the CCD was used to identify the cancerous lesions aided by the V parameter. Using trial and error on several other skin cancer lesions (not included in the test samples), two thresholds and a set of criteria were selected to discriminate between C and NC. 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Thereafter, the pixels data from ROI locations were standardized and transformed from RGB to HSV space. Again using MATLAB, hue (h) and Value (V) data were extracted from HSV data. Since each h represents a unique wavelength in the visible range of the spectrum, the CCD was used to identify the cancerous lesions aided by the V parameter. Using trial and error on several other skin cancer lesions (not included in the test samples), two thresholds and a set of criteria were selected to discriminate between C and NC. 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引用次数: 3
摘要
皮肤癌的诊断主要基于临床检查和活检。尽管侵入性和非侵入性的诊断工具取得了进步,但在美国,每小时仍有超过2人死于这种疾病,每天有超过9500人被诊断出患有皮肤癌。这强调了需要有一种筛查工具,可以快速有效地区分非癌性(NC)和癌性(C)皮肤病变。由于大多数皮肤病变肉眼可见且具有不同的颜色纹理,因此假设对可疑病变的照片进行分段分析应该能够区分皮肤上的NC和C病变。为此,提出了一种新的、独特的色圈设计(CCD),用于建立HSV (hue Saturation and Value)模型中波长(λ)与色相之间的关系。利用MATLAB对已知诊断的23个真实皮肤病变(测试样本)的放大皮肤镜图像进行分割,使感兴趣区域(ROI)包括所有可疑区域。然后,对感兴趣区域像素数据进行标准化,并将其从RGB空间转换为HSV空间。再次使用MATLAB,从HSV数据中提取hue (h)和Value (V)数据。由于每个h在光谱可见范围内代表一个独特的波长,因此CCD通过V参数辅助识别癌变病变。通过对其他几种皮肤癌病变(不包括在测试样本中)的反复试验,选择了两个阈值和一组标准来区分C和NC。结果表明,CCD作为皮肤癌检测的筛查工具具有很大的潜力,对测试样品的准确率达到90%以上。
Unique Color Circle Design For A Novel Screening Tool to Identify Cancerous Skin Lesions
Diagnosis of skin cancer is mostly based on clinical examination and biopsy. Despite advances in diagnostic tools, both invasive and non-invasive, more than 2 people die of the disease every hour and more than 9,500 people are diagnosed with skin cancer every day in the US. This emphasizes the need to have a screening tool which can differentiate between non-cancerous (NC) and cancerous (C) skin lesions, quickly and effectively. As most of the skin lesions are apparent to naked eyes and have different color textures, it was hypothesized that segmental analyses of photographs of suspicious lesions should be able to differentiate NC from C lesions on skin. For this study, a new and unique color circle design (CCD) for establishing a relation between wavelength (λ) and hue of the HSV (hue Saturation and Value) model is proposed. Using MATLAB, enlarged dermatoscopic images of 23 authentic skin lesions (test samples) with known diagnoses were segmented in such a manner that the region of interest (ROI) included all the suspicious areas. Thereafter, the pixels data from ROI locations were standardized and transformed from RGB to HSV space. Again using MATLAB, hue (h) and Value (V) data were extracted from HSV data. Since each h represents a unique wavelength in the visible range of the spectrum, the CCD was used to identify the cancerous lesions aided by the V parameter. Using trial and error on several other skin cancer lesions (not included in the test samples), two thresholds and a set of criteria were selected to discriminate between C and NC. Results show that use of CCD has great potential as a screening tool for skin cancer detection, achieving over 90 % accuracy on the test samples.