Computerised Skin Lesion Surface Analysis for Pigment Asymmetry Quantification

K. Clawson, P. Morrow, B. Scotney, D. McKenna, O. Dolan
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引用次数: 21

Abstract

Malignant melanoma is the deadliest form of skin cancer and must be diagnosed and excised during its earliest stages. The development of computerised systems which accurately quantify features representative of this cancer aims to assist diagnosis and improve preoperative diagnostic accuracy. One clinical feature suggestive of malignancy is asymmetry, which considers lesion shape, colour distribution and texture. In this paper techniques for the detection of colour asymmetry are evaluated and a new method for visually displaying and quantifying colour asymmetry is proposed. Automatic induction methods and a neural network model are utilised to evaluate the diagnostic capability of our features and identify those of greatest relative importance. Results indicate that those features quantifying possible areas of regression are most indicative of colour asymmetry.
计算机化皮肤病变表面色素不对称定量分析
恶性黑色素瘤是最致命的皮肤癌,必须在早期阶段进行诊断和切除。计算机化系统的发展能够准确地量化这种癌症的特征,旨在帮助诊断和提高术前诊断的准确性。提示恶性肿瘤的一个临床特征是不对称,它考虑了病变的形状、颜色分布和质地。本文对色彩不对称检测技术进行了评价,提出了一种视觉显示和量化色彩不对称的新方法。自动感应方法和神经网络模型被用来评估我们的特征的诊断能力,并确定那些最重要的相对重要性。结果表明,那些量化可能回归区域的特征最能表明颜色不对称。
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