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首页> 外文期刊>Telemedicine and e-health: the official journal of the American Telemedicine Association >Validation of a Skin-Lesion Image-Matching Algorithm Based on Computer Vision Technology
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Validation of a Skin-Lesion Image-Matching Algorithm Based on Computer Vision Technology

机译:基于计算机视觉技术的皮肤病变图像匹配算法的验证

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摘要

Background:Melanoma incidence is increasing globally, but consistently accurate skin-lesion classification methods remain elusive. We developed a simple software system to classify potentially all types of skin lesions. In the current study, we evaluated the system's ability to identify melanomas with a diameter of 10mm or larger.Materials and Methods:The skin-lesion classification system is composed of a proprietary database of nearly 12,000 diagnosed skin-lesion images and a computer algorithm based on the principles of content-based image retrieval. The algorithm compares characteristics of new skin-lesion images with images in the database to identify the nearest-match diagnosis.Results:Nearly all classification accuracy measures for this new system exceeded 90%, with results for sensitivity of 90.4% (95% confidence interval, 85.6-93.7%), specificity of 91.5% (85.4-95.2%), positive predictive value of 94.5% (90.4-96.9%), negative predictive value of 85.5% (78.7-90.4%), and overall classification accuracy of 90.8% (87.2-93.4%).Conclusions:The image-matching algorithm performed with high accuracy for the classification of larger melanomas. Furthermore, the system does not require a dermoscope or any other specialized hardware; any close-focusing camera will do. This system has the potential to be an inexpensive and accurate tool for the evaluation of skin lesions in ethnically and geographically diverse populations.
机译:背景:黑色素瘤的发病率在全球范围内呈上升趋势,但始终无法准确分类皮肤病变的方法。我们开发了一个简单的软件系统,可以对所有类型的皮肤病变进行分类。在本研究中,我们评估了该系统识别直径10mm或更大的黑色素瘤的能力。材料和方法:皮肤病变分类系统由拥有近12,000个诊断出的皮肤病变图像的专有数据库和基于计算机的算法组成。基于内容的图像检索原理。该算法将新皮肤病变图像的特征与数据库中的图像进行比较,以确定最近的匹配诊断结果。该新系统几乎所有分类准确度指标均超过90%,灵敏度为90.4%(置信区间为95%) ,85.6-93.7%),特异性为91.5%(85.4-95.2%),阳性预测值为94.5%(90.4-96.9%),阴性预测值为85.5%(78.7-90.4%)和总体分类准确度为90.8 %(87.2-93.4%)。结论:图像匹配算法对大型黑色素瘤的分类具有很高的准确性。此外,该系统不需要皮肤镜或任何其他专用硬件;任何近距对焦相机都可以。该系统有可能成为一种廉价而准确的工具,用于评估种族和地理上不同人群的皮肤病变。

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