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Evaluating Deep Learning Algorithms in Pulmonary Nodule Detection*

机译:在肺结节检测中评估深度学习算法*

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Lung cancer is considered the deadliest cancer worldwide. In order to detect it, radiologists need to inspect multiple Computed Tomography (CT) scans. This task is tedious and time consuming. In recent years, promising methods based on deep learning object detection algorithms were proposed for the automatic nodule detection and classification. With those techniques, Computed Aided Detection (CAD) software can be developed to alleviate radiologist’s burden and help speed-up the screening process. However, among available object detection frameworks, there are just a limited number that have been used for this purpose. Moreover, it can be challenging to know which one to choose as a baseline for the development of a new application for this task. Hence, in this work we propose a benchmark of recent state-of-the-art deep learning detectors such as Faster-RCNN, YOLO, SSD, RetinaNet and EfficientDet in the challenging task of pulmonary nodule detection. Evaluation is done using automatically segmented 2D images extracted from volumetric chest CT scans.
机译:肺癌被认为是全球范围内最致命的癌症。为了对其进行检测,放射科医生需要检查多次计算机断层扫描(CT)扫描。该任务是繁琐且耗时的。近年来,提出了一种基于深度学习目标检测算法的有前途的方法,用于结节的自动检测和分类。利用这些技术,可以开发计算机辅助检测(CAD)软件来减轻放射科医生的负担并帮助加快筛查过程。但是,在可用的对象检测框架中,仅有限数量的目的已用于此目的。而且,要知道选择哪个作为开发该任务的新应用程序的基准可能是具有挑战性的。因此,在这项工作中,我们提出了一个最新的深度学习检测器的基准,例如Faster-RCNN,YOLO,SSD,RetinaNet和EfficientDet,以应对肺结节检测这一具有挑战性的任务。使用从体积胸部CT扫描中提取的自动分段2D图像进行评估。

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