色素皮肤病变的脱光显微镜图像的计算机辅助分析。

Cytometry Pub Date : 1999-12-01
O Debeir, C Decaestecker, J L Pasteels, I Salmon, R Kiss, P Van Ham
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引用次数: 0

摘要

背景:脱毛显微镜(ELM)是最近发展起来的一种无创临床工具,用于诊断色素沉着性皮肤病变(psl),目的是改善黑色素瘤筛查策略。然而,ELM分级方案的复杂性意味着鉴别诊断需要相当多的专业知识。在本文中,我们提出了一个基于计算机的工具,能够筛选ELM图像的psl,以帮助临床医生在检测病变模式有用的鉴别诊断。方法:该方法基于数字化ELM图像像素的监督分类,构建用于图像分割的像素类。这个过程有两个主要阶段,即学习阶段,其中使用数百个像素来训练和验证分类模型,以及应用步骤,其中包括通过第一阶段获得的规则对数十亿像素(即完整图像)进行大规模分类。结果:我们的研究结果表明,该方法适用于从背景中提取病灶,将完整的图像分割成几个典型的诊断模式,并用于伪影抑制。因此,我们的原型有可能帮助区分与诊断信息相关的病变模式,如弥漫性色素沉着、深色球体(黑点和棕色球体)和灰蓝色面纱。结论:本系统可作为辅助PSL诊断的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer-assisted analysis of epiluminescence microscopy images of pigmented skin lesions.

Background: Epiluminescence microscopy (ELM) is a noninvasive clinical tool recently developed for the diagnosis of pigmented skin lesions (PSLs), with the aim of improving melanoma screening strategies. However, the complexity of the ELM grading protocol means that considerable expertise is required for differential diagnosis. In this paper we propose a computer-based tool able to screen ELM images of PSLs in order to aid clinicians in the detection of lesion patterns useful for differential diagnosis.

Methods: The method proposed is based on the supervised classification of pixels of digitized ELM images, and leads to the construction of classes of pixels used for image segmentation. This process has two major phases, i.e., a learning phase, where several hundred pixels are used in order to train and validate a classification model, and an application step, which consists of a massive classification of billions of pixels (i.e., the full image) by means of the rules obtained in the first phase.

Results: Our results show that the proposed method is suitable for lesion-from-background extraction, for complete image segmentation into several typical diagnostic patterns, and for artifact rejection. Hence, our prototype has the potential to assist in distinguishing lesion patterns which are associated with diagnostic information such as diffuse pigmentation, dark globules (black dots and brown globules), and the gray-blue veil.

Conclusions: The system proposed in this paper can be considered as a tool to assist in PSL diagnosis.

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