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Early esophageal cancer detection using RF classifiers

机译:使用RF分类器进行早期食道癌检测

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Esophageal cancer is one of the fastest rising forms of cancer in the Western world. Using High-Definition (HD) endoscopy, gastroenterology experts can identify esophageal cancer at an early stage. Recent research shows that early cancer can be found using a state-of-the-art computer-aided detection (CADe) system based on analyzing static HD endoscopic images. Our research aims at extending this system by applying Random Forest (RF) classification, which introduces a confidence measure for detected cancer regions. To visualize this data, we propose a novel automated annotation system, employing the unique characteristics of the previous confidence measure. This approach allows reliable modeling of multi-expert knowledge and provides essential data for realtime video processing, to enable future use of the system in a clinical setting. The performance of the CADe system is evaluated on a 39-patient dataset, containing 100 images annotated by 5 expert gastroenterologists. The proposed system reaches a precision of 75% and recall of 90%, thereby improving the state-of-the-art results by 11 and 6 percentage points, respectively.
机译:食道癌是西方世界中上升最快的癌症之一。胃肠病学专家可以使用高清(HD)内窥镜在早期发现食道癌。最近的研究表明,可以使用基于对静态高清内窥镜图像进行分析的最先进的计算机辅助检测(CADe)系统来发现早期癌症。我们的研究旨在通过应用随机森林(RF)分类来扩展该系统,该分类为检测到的癌症区域引入了置信度度量。为了使这些数据可视化,我们提出了一种新颖的自动注释系统,该系统利用了先前置信度度量的独特特征。这种方法允许对多专家知识进行可靠的建模,并为实时视频处理提供必要的数据,以便将来在临床环境中使用该系统。在39位患者的数据集上评估了CADe系统的性能,该数据集包含5位专业胃肠病医生注释的100张图像。拟议的系统达到75%的精度和90%的查全率,从而分别将最新结果提高了11个百分点和6个百分点。

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