...
首页> 外文期刊>Melanoma research >Digital videomicroscopy and image analysis with automatic classification for detection of thin melanomas.
【24h】

Digital videomicroscopy and image analysis with automatic classification for detection of thin melanomas.

机译:具有自动分类功能的数字视频显微镜和图像分析功能,可用于检测黑色素瘤。

获取原文
获取原文并翻译 | 示例
           

摘要

The aim of our investigation was to evaluate the usefulness of a system composed of a digital videomicroscope equipped with a dedicated program for the quantitative characterization of various parameters of the clinically significant features of pigmented skin lesion (PSL) images, forming the basis for automatic differentiation of naevi and thin melanomas. In total 424 naevi and 37 melanomas (including 23 thinner than 0.75 mm) were considered. All the digital images were acquired, framed and analysed using the DBDermo-MIPS program (Biomedical Engineering Dell'Eva-Burroni), which calculates different parameters related to the geometry, the colour distribution and the internal pattern of the lesion. We also assessed the efficacy of an automatic classifier, trained for 100% sensitivity using a subset of PSL images (59 naevi and 19 melanomas), on a test set including 365 naevi and 18 melanomas thinner than 0.75 mm. Significant differences between values from benign and malignant PSLs were observed for most of the numerical parameters. Values from the training set underwent elaboration by means of multivariate discriminant analysis, enabling the identification of variables that are important for distinguishing between the groups in order to develop a procedure for predicting group membership for new cases (test set) in which group membership is undetermined. Going on the training set data, a threshold score was established, enabling each melanoma to be attributed to the right group. When the same threshold value was employed for discriminating between benign and malignant lesions in the test set, all the melanomas were correctly classified, whereas 30 out of the 365 benign lesions were attributed to the wrong group. Thus the specificity of the system reached 92%, whereas the sensitivity was 100%. Our data suggest that elaboration of videomicroscopic images by means of dedicated software improves diagnostic accuracy for thin melanoma. Since elaboration of an image requires only 60s using our system, all the parameter data are available in real time and can be immediately examined by the classifier, providing an instant aid to clinical diagnosis.
机译:我们研究的目的是评估由配有专用程序的数字视频显微镜组成的系统的实用性,该程序用于定量表征色素性皮肤病变(PSL)图像的临床重要特征的各种参数,从而形成自动区分的基础naevi和薄黑素瘤。总共考虑了424例naevi和37例黑色素瘤(包括23个小于0.75 mm的黑色素瘤)。使用DBDermo-MIPS程序(生物医学工程Dell'Eva-Burroni)获取,构图和分析所有数字图像,该程序计算与病变的几何形状,颜色分布和内部图案有关的不同参数。我们还评估了自动分类器的功效,该自动分类器使用一部分PSL图像(59个naevi和19个黑色素瘤)进行了100%的敏感性训练,其测试集包括365个naevi和18个小于0.75 mm的黑色素瘤。对于大多数数值参数,观察到良性和恶性PSL的值之间存在显着差异。通过多变量判别分析对训练集中的值进行详细说明,从而能够识别对于区分组至关重要的变量,从而开发出一种可用于确定不确定组成员的新案例(测试集)的程序。 。根据训练集数据,建立了阈值得分,使每个黑色素瘤都可以归为正确的组。当使用相同的阈值来区分测试集中的良性和恶性病变时,所有黑色素瘤均已正确分类,而365个良性病变中有30个归因于错误的组。因此,系统的特异性达到了92%,而灵敏度为100%。我们的数据表明,通过专用软件制作的显微视频图像可改善薄型黑色素瘤的诊断准确性。由于使用我们的系统仅需60秒钟即可完成一幅图像的制作,因此所有参数数据都是实时可用的,并且可以由分类器立即检查,从而为临床诊断提供即时帮助。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号