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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Robustness-Driven Feature Selection in Classification of Fibrotic Interstitial Lung Disease Patterns in Computed Tomography Using 3D Texture Features
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Robustness-Driven Feature Selection in Classification of Fibrotic Interstitial Lung Disease Patterns in Computed Tomography Using 3D Texture Features

机译:使用3D纹理特征在计算机断层扫描中纤维化间质性肺疾病模式分类中的鲁棒性驱动特征选择

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Lack of classifier robustness is a barrier to widespread adoption of computer-aided diagnosis systems for computed tomography (CT). We propose a novel Robustness-Driven Feature Selection (RDFS) algorithm that preferentially selects features robust to variations in CT technical factors. We evaluated RDFS in CT classification of fibrotic interstitial lung disease using 3D texture features. CTs were collected for 99 adult subjects separated into three datasets: training, multi-reconstruction, testing. Two thoracic radiologists provided cubic volumes of interest corresponding to six classes: pulmonary fibrosis, ground-glass opacity, honeycombing, normal lung parenchyma, airway, vessel. The multi-reconstruction dataset consisted of CT raw sinogram data reconstructed by systematically varying slice thickness, reconstruction kernel, and tube current (using a synthetic reduced-tube-current algorithm). Two support vector machine classifiers were created, one using RDFS (“with-RDFS”) and one not (“without-RDFS”). Classifier robustness was compared on the multi-reconstruction dataset, using Cohen's kappa to assess classification agreement against a reference reconstruction. Classifier performance was compared on the testing dataset using the extended g-mean (EGM) measure. With-RDFS exhibited superior robustness (kappa 0.899–0.989) compared to without-RDFS (kappa 0.827–0.968). Both classifiers demonstrated similar performance on the testing dataset (EGM 0.778 for with-RDFS; 0.785 for without-RDFS), indicating that RDFS does not compromise classifier performance when discarding nonrobust features. RDFS is highly effective at improving classifier robustness against slice thickness, reconstruction kernel, and tube current without sacrificing performance, a result that has implications for multicenter clinical trials that rely on accurate and reproducible quantitative analysis of CT images collected under varied conditions across mu- tiple sites, scanners, and timepoints.
机译:分类器鲁棒性的缺乏是计算机辅助计算机断层扫描(CT)诊断系统被广泛采用的障碍。我们提出了一种新颖的鲁棒性驱动特征选择(RDFS)算法,该算法优先选择对CT技术因素变化具有鲁棒性的特征。我们使用3D纹理特征在纤维化间质性肺疾病的CT分类中评估了RDFS。收集了99位成人受试者的CT,并将其分为三个数据集:训练,多次重建,测试。两名胸腔放射科医生提供了六类感兴趣的立方体积:肺纤维化,玻璃液混浊,蜂窝状,正常肺实质,气道,血管。多重重建数据集由CT原始正弦图数据组成,这些数据通过系统地改变切片厚度,重建内核和管电流(使用合成的减小管电流算法)进行重建。创建了两个支持向量机分类器,一个使用RDFS(“ with-RDFS”),另一个不使用(“ without-RDFS”)。使用Cohen的kappa评估参考重建的分类一致性,在多重重建数据集上比较了分类器的鲁棒性。使用扩展g均值(EGM)度量在测试数据集上比较了分类器性能。与没有RDFS(kappa 0.827-0.968)相比,有-RDFS表现出更好的鲁棒性(kappa 0.899-0.989)。两种分类器在测试数据集上均表现出相似的性能(带-RDFS的EGM为0.778;不带-RDFS的为EGM 0.785),这表明RDFS在丢弃非鲁棒特征时不会损害分类器的性能。 RDFS可以有效提高分类器对切片厚度,重建核和管电流的稳健性,而不会牺牲性能,这一结果对多中心临床试验具有重要意义,该试验依赖于对在各种条件下采集的CT图像进行准确且可重复的定量分析网站,扫描仪和时间点。

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