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Synergistic combination of clinical and imaging features predicts abnormal imaging patterns of pulmonary infections

机译:临床和影像学特征的协同组合可预测肺部感染的异常影像学模式

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摘要

We designed and tested a novel hybrid statistical model that accepts radiologic image features and clinical variables, and integrates this information in order to automatically predict abnormalities in chest computed-tomography (CT) scans and identify potentially important infectious disease biomarkers. In 200 patients, 160 with various pulmonary infections and 40 healthy controls, we extracted 34 clinical variables from laboratory tests and 25 textural features from CT images. From the CT scans, pleural effusion (PE), linear opacity (or thickening) (LT), tree-in-bud (TIB), pulmonary nodules, ground glass opacity (GGO), and consolidation abnormality patterns were analyzed and predicted through clinical, textural (imaging), or combined attributes. The presence and severity of each abnormality pattern was validated by visual analysis of the CT scans. The proposed biomarker identification system included two important steps: (i) a coarse identification of an abnormal imaging pattern by adaptively selected features (AmRMR), and (ii) a fine selection of the most important features from the previous step, and assigning them as biomarkers, depending on the prediction accuracy. Selected biomarkers were used to classify normal and abnormal patterns by using a boosted decision tree (BDT) classifier. For all abnormal imaging patterns, an average prediction accuracy of 76.15% was obtained. Experimental results demonstrated that our proposed biomarker identification approach is promising and may advance the data processing in clinical pulmonary infection research and diagnostic techniques.
机译:我们设计并测试了一种新型的混合统计模型,该模型可以接受放射图像特征和临床变量,并整合这些信息,以便自动预测胸部计算机断层扫描(CT)扫描中的异常并识别潜在的重要传染病生物标记。在200名患者中,有160名患有各种肺部感染和40名健康对照,我们从实验室测试中提取了34个临床变量,并从CT图像中提取了25个纹理特征。通过CT扫描分析并预测了胸腔积液(PE),线性不透明(或增厚)(LT),预算内树(TIB),肺结节,毛玻璃样不透明(GGO)和巩固异常模式,纹理(成像)或组合属性。通过CT扫描的视觉分析验证了每种异常模式的存在和严重性。拟议的生物标志物识别系统包括两个重要步骤:(i)通过自适应选择的特征(AmRMR)粗略识别异常成像模式,以及(ii)从上一步骤中对最重要的特征进行精细选择,并将其分配为生物标志物,取决于预测的准确性。通过使用增强决策树(BDT)分类器,使用选定的生物标记物对正常和异常模式进行分类。对于所有异常成像模式,获得的平均预测准确度为76.15%。实验结果表明,我们提出的生物标志物鉴定方法是有前途的,并可能促进临床肺部感染研究和诊断技术中的数据处理。

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