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Local-Global Classifier Fusion for Screening Chest Radiographs

机译:本地 - 全局分类器筛选胸部射线照片

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Tuberculosis (TB) is a severe comorbidity of HIV and chest x-ray (CXR) analysis is a necessary step in screening for the infective disease. Automatic analysis of digital CXR images for detecting pulmonary abnormalities is critical for population screening, especially in medical resource constrained developing regions. In this article, we describe steps that improve previously reported performance of NLM's CXR screening algorithms and help advance the state of the art in the field. We propose a local-global classifier fusion method where two complementary classification systems are combined. The local classifier focuses on subtle and partial presentation of the disease leveraging information in radiology reports that roughly indicates locations of the abnormalities. In addition, the global classifier models the dominant spatial structure in the gestalt image using GIST descriptor for the semantic differentiation. Finally, the two complementary classifiers are combined using linear fusion, where the weight of each decision is calculated by the confidence probabilities from the two classifiers. We evaluated our method on three datasets in terms of the area under the Receiver Operating Characteristic (ROC) curve, sensitivity, specificity and accuracy. The evaluation demonstrates the superiority of our proposed local-global fusion method over any single classifier.
机译:结核病(TB)是HIV和胸部X射线(CXR)分析的严重合并症是筛选感染疾病的必要步骤。用于检测肺异常的数字CXR图像的自动分析对于人口筛查至关重要,特别是在医疗资源受限的发展区域。在本文中,我们描述了改善先前报告的NLM CXR筛选算法性能的步骤,并帮助推进现场的最先进状态。我们提出了一种本地全局分类器融合方法,其中组合了两个互补分类系统。局部分类器专注于微妙和部分呈现利用放射学报告中的疾病的疾病,这些报告大致表明异常的位置。此外,全局分类器使用Gestalt图像中的主导空间结构使用Gistalt描述符进行语义分化。最后,使用线性融合将两个互补分类器组合,其中每个决定的重量由两个分类器的置信能力计算。我们在接收器操作特征(ROC)曲线下的区域,灵敏度,特异性和准确性方面在三个数据集中评估了我们的方法。评估展示了我们提出的本地全局融合方法在任何单一分类器上的优越性。

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