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Pre-diagnostic digital imaging prediction model to discriminate between malignant melanoma and benign pigmented skin lesion.

机译:诊断前数字成像预测模型可区分恶性黑色素瘤和良性色素沉着的皮肤病变。

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摘要

BACKGROUND: Malignant cutaneous melanoma is the most deadly form of skin cancer with an increasing incidence over the past decades. The final diagnosis provided is typically based on a biopsy of the skin lesion under consideration. To assist the naked-eye examination and decision on whether or not a biopsy is necessary, digital image processing techniques provide promising results. HYPOTHESIS AND AIMS: The hypothesis of this study was that a computer-aided assessment tool could assist the evaluation of a pigmented skin lesion. Hence, the overall aim was to discriminate between malignant and benign pigmented skin lesions using digital image processing. METHODS: Discriminating algorithms utilizing novel well-established morphological operations and methods were constructed. The algorithms were implemented utilizing graphical programming (LabVIEW Vision). Verification was performed with reference to an image database consisting of 97 pigmented skin lesion pictures of various resolutions and light distributions. The outcome of the algorithms was analysed statistically with MATLAB and a prediction model was constructed. RESULTS/CONCLUSION: The prediction model evaluates pigmented skin lesions with regards to the overall shape, border and colour distribution with a total of nine different discriminating parameters. The prediction model outputs an index score, and by using the optimal threshold value, a diagnostic accuracy of 77% in discriminating between malignant and benign skin lesions was obtained. This is an improvement compared with the naked-eye analysis performed by professionals, rendering the system a significant assistance in detecting malignant cutaneous melanoma.
机译:背景:恶性皮肤黑素瘤是最致命的皮肤癌形式,在过去几十年中发病率不断上升。提供的最终诊断通常基于所考虑的皮肤病变的活检。为了协助肉眼检查和决定是否需要进行活检,数字图像处理技术提供了可喜的结果。假设和目的:这项研究的假设是,计算机辅助评估工具可以帮助评估色素沉着的皮肤病变。因此,总体目标是使用数字图像处理来区分恶性和良性色素沉着的皮肤病变。方法:利用新建立的形态学运算和方法,建立区分算法。这些算法是使用图形化编程(LabVIEW Vision)实现的。参照由97种不同分辨率和光分布的色素沉着的皮肤病变图片组成的图像数据库进行验证。利用MATLAB对算法的结果进行统计分析,并建立了预测模型。结果/结论:该预测模型评估色素沉着的皮肤病变的总体形状,边界和颜色分布,共有九种不同的区分参数。该预测模型输出指标得分,并通过使用最佳阈值,在区分恶性和良性皮肤病变方面获得77%的诊断准确性。与专业人员进行的裸眼分析相比,这是一个改进,使该系统在检测恶性皮肤黑色素瘤方面有重要帮助。

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