采用多帧投票的体积激光显微内镜扫描改进巴雷特癌症检测

A. Rikos, F. V. D. Sommen, A. Swager, S. Zinger, E. Schoon, W. Curvers, J. Bergman, P. D. With
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引用次数: 2

摘要

本文探讨了在体积激光显微内镜(volume metric Laser Endomicroscopy, VLE)中使用多帧分析来提高机器学习方法在癌症检测中的分类性能的可行性。VLE是一种新的有前途的检测巴雷茨食管(BE)肿瘤的方法。它可以产生数百张高分辨率的食道横断面图像,与目前的方法相比具有相当大的优势。虽然最近的一些研究提出了针对单个VLE框架的癌症检测算法,但本文描述的研究是第一个利用VLE体积来区分发育不良和非发育不良组织的研究。我们探索了各种投票方案的使用范围广泛的特征和分类方法。我们的结果表明,无论选择何种特征-分类器组合,多帧分析都能带来更好的性能。通过使用直接投票方法的多帧分析,与使用单个VLE帧相比,接收器工作曲线下的面积(AUC)平均增加了12%以上。当只考虑达到专家性能或更高(AUC≥0.81)的方法时,可以观察到更大的性能改进,最高可达16.9%。此外,许多特征/分类器组合显示的AUC值范围从0.90到0.98,我们的实验表明,计算机辅助方法可以大大优于医学专家,他们使用最近提出的临床预测模型显示的AUC为0.81。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Barrett's Cancer Detection in Volumetric Laser Endomicroscopy Scans Using Multiple-Frame Voting
This paper explores the feasibility of using multiframe analysis to increase the classification performance of machine learning methods for cancer detection in Volumetric Laser Endomicroscopy (VLE). VLE is a novel and promising modality for the detection of neoplasia in patients with Baretts Esophagus (BE). It produces hundreds of high-resolution, cross-sectional images of the esophagus and offers considerable advantages compared to current methods. While some recent studies have proposed cancer detection algorithms for single VLE frames, the study described in this paper is the first to make use of VLE volumes for the differentiation between dysplastic and non-dysplastic tissue. We explore the use of various voting schemes for a broad range of features and classification methods. Our results demonstrate that multi-frame analysis leads to superior performance, irrespective of the chosen feature-classifier combination. By using multi-frame analysis with straightforward voting methods, the Area Under the receiver operating Curve (AUC) is increased by an average of over 12% compared to using single VLE frames. When only considering methods that achieve expert performance or higher (AUC≥0.81), an even larger performance improvement of up to 16.9% is observed. Furthermore, with many feature/classifier combinations showing AUC values ranging from 0.90 to 0.98, our experiments indicate that computeraided methods can considerably outperform medical experts, who demonstrate an AUC of 0.81 using a recently proposed clinical prediction model.
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