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Identification of early-stage Usual Interstitial Pneumonia from low-dose chest CT scans using fractional high-density lung distribution

机译:使用分数高密度肺部分布鉴定低剂量胸CT扫描的早期常春性肺炎

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A fully-automated computer algorithm has been developed to identify early-stage Usual Interstitial Pneumonia (UIP) using features computed from low-dose CT scans. In each scan, the pre-segmented lung region is divided into N subsections (N = 1, 8, 27, 64) by separating the lung from anterior/posterior, left/right and superior/inferior in 3D space. Each subsection has approximately the same volume. In each subsection, a classic density measurement (fractional high-density volume h) is evaluated to characterize the disease severity in that subsection, resulting in a feature vector of length N for each lung. Features are then combined in two different ways: concatenation (2*N features) and taking the maximum in each of the two corresponding subsections in the two lungs (N features). The algorithm was evaluated on a dataset consisting of 51 UIP and 56 normal cases, a combined feature vector was computed for each case and an SVM classifier (RBF kernel) was used to classify them into UIP or normal using ten-fold cross validation. A receiver operating characteristic (ROC) area under the curve (AUC) was used for evaluation. The highest AUC of 0.95 was achieved by using concatenated features and an N of 27. Using lung partition (N = 27, 64) with concatenated features had significantly better result over not using partitions (N = 1) (p-value < 0.05). Therefore this equal-volume partition fractional high-density volume method is useful in distinguishing early-stage UIP from normal cases.
机译:已经开发了一种全自动的计算机算法,用于使用从低剂量CT扫描计算的功能识别早期常春性肺炎(UIP)。在每次扫描中,通过将肺从前/后部,左/右,上/较差分离在3D空间中,将预分段肺区分为n小节(n = 1,8,27,64)。每个子部分大致相同。在每个子部分中,评估经典密度测量(分数高密度体积H)以表征该小节中的疾病严重程度,导致每个肺的长度N的特征向量。然后以两种不同的方式组合特征:连接(2 * n特征)并在两个肺中的两个相应的子部分中的每一个中取出最大值(n个功能)。在由51 UIP和56个正常情况下组成的数据集上评估算法,为每个案例计算组合的特征向量,并且使用SVM分类器(RBF内核)将它们分类为UIP或正常使用十倍交叉验证。曲线下(AUC)下的接收器操作特征(ROC)区域用于评估。通过使用连贯的特征和27的N为0.95的最高AUC。使用肺分区(n = 27,64)的级联特征在不使用分区(n = 1)(p值<0.05)的情况下显着更好。因此,这种平等分配分数高密度体积法可用于区分正常情况的早期UIP。

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