呼吸:在CT扫描中帮助检测异常肺区域的热图

M. Cazzolato, L. C. Scabora, Alceu Ferraz Costa, Marcos Roberto Nesso Junior, Luis Fernando Milano Oliveira, D. S. Kaster, C. Traina, A. Traina
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引用次数: 2

摘要

计算机断层扫描(CT)通常用于诊断肺部疾病,因为异常的组织区域可能表明是否需要适当的治疗。然而,在CT扫描中检测含有异常的特定区域需要专家的时间和精力。此外,单个肺图像的不同部分可能同时呈现正常和异常特征,这使得单个肺的健康(正常)或非健康的分类不准确。在本文中,我们提出了呼吸方法,能够检测肺组织区域的异常,并通过热图可视化的方式突出显示它们。该方法首先使用基于超像素的方法对肺组织进行分割,然后训练一个统计模型来表示正常组织,最后生成一个热图,显示需要医生注意的异常区域。我们使用包含246个肺部CT扫描的数据集验证了我们的统计模型,其中40个是健康的,其余的呈现不同的疾病。实验结果表明,该方法对肺的分割是准确的,F-Measure值高达0.99。健康和异常肺区域的统计建模几乎没有重叠,对于所有召回值,检测包含异常的超像素的精度值高于86%。这些值支持我们的说法,即用于异常检测的呼吸热图表示可以作为一种直观的方法来帮助医生进行诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BREATH: Heat Maps Assisting the Detection of Abnormal Lung Regions in CT Scans
Computed Tomography (CT) scans are often employed to diagnose lung diseases, as abnormal tissue regions may indicate whether proper treatment is required. However, detecting specific regions containing abnormalities in a CT scan demands time and effort of specialists. Moreover, different parts of a single lung image may present both normal and abnormal characteristics, what makes inaccurate the classification of a single lung as healthy (normal) or not. In this paper we propose the BREATH method, capable of detecting abnormalities in lung tissue regions, highlighting them by means of a heat map visualization. The method starts by segmenting lung tissues using a superpixel-based approach, followed by the training of a statistical model to represent normal tissues and, finally, the generation of a heat map showing abnormal regions that require attention from the physicians. We validated our statistical model using a dataset with 246 lung CT scans, where 40 are healthy and the remaining present varying diseases. Experimental results show that BREATH is accurate for lung segmentation with F-Measure of up to 0.99. The statistical modeling of healthy and abnormal lung regions has shown almost no overlap, and the detection of superpixels containing abnormalities presented precision values higher than 86%, for all values of recall. These values support our claim that the heat map representation of BREATH for the abnormal detection can be used as an intuitive method to assist physicians during the diagnosis.
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