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Quantitative CT texture analysis for diagnosing systemic sclerosis: Effect of iterative reconstructions and radiation doses

机译:定量CT纹理分析在诊断系统性硬化症中的作用:迭代重建和放射剂量的影响

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To test whether texture analysis (TA) can discriminate between Systemic Sclerosis (SSc) and non-SSc patients in computed tomography (CT) with different radiation doses and reconstruction algorithms. In this IRB-approved retrospective study, 85 CT scans at different radiation doses [49 standard dose CT (SDCT) with a volume CT dose index (CTDIvol) of 4.86 ± 2.1 mGy and 36 low-dose (LDCT) with a CTDIvol of 2.5 ± 1.5 mGy] were selected; 61 patients had Ssc (“cases”), and 24 patients had no SSc (“controls”). CT scans were reconstructed with filtered-back projection (FBP) and with sinogram-affirmed iterative reconstruction (SAFIRE) algorithms. 304 TA features were extracted from each manually drawn region-of-interest at 6 pre-defined levels: at the midpoint between lung apices and tracheal carina, at the level of the tracheal carina, and 4 between the carina and pleural recesses. Each TA feature was averaged between these 6 pre-defined levels and was used as input in the machine learning algorithm artificial neural network (ANN) with backpropagation (MultilayerPerceptron) for differentiating between SSc and non-SSc patients. Results were compared regarding correctly/incorrectly classified instances and ROC-AUCs. ANN correctly classified individuals in 93.8% (AUC = 0.981) of FBP-LDCT, in 78.5% (AUC = 0.859) of FBP-SDCT, in 91.1% (AUC = 0.922) of SAFIRE3-LDCT and 75.7% (AUC = 0.815) of SAFIRE3-SDCT, in 88.1% (AUC = 0.929) of SAFIRE5-LDCT and 74% (AUC = 0.815) of SAFIRE5-SDCT. Quantitative TA-based discrimination of CT of SSc patients is possible showing highest discriminatory power in FBP-LDCT images.
机译:若要测试质地分析(TA)是否可以在计算机X线断层摄影(CT)中使用不同的辐射剂量和重建算法来区分系统性硬化症(SSc)和非SSc患者。在这项IRB批准的回顾性研究中,以不同的放射剂量进行了85次CT扫描[49个标准剂量CT(SDCT),体积CT剂量指数(CTDIvol)为4.86±2.1 mGy,36个低剂量(LDCT),CTDIvol为2.5选择了±1.5 mG​​y]; 61例患有Ssc(“病例”),而24例没有SSc(“对照”)。 CT扫描通过反滤波投影(FBP)和正弦图确认的迭代重建(SAFIRE)算法进行重建。从6个预定义级别的每个手动绘制的感兴趣区域中提取了304个TA特征:在肺尖和气管隆突之间的中点,在气管隆隆的水平以及在隆突和胸膜凹之间的4个。每个TA功能均在这6个预定义级别之间取平均值,并用作带有反向传播(MultilayerPerceptron)的机器学习算法人工神经网络(ANN)的输入,以区分SSc和非SSc患者。比较了正确/错误分类的实例和ROC-AUC的结果。人工神经网络将个体正确分类为FBP-LDCT的93.8%(AUC = 0.981),FBP-SDCT的78.5%(AUC = 0.859),SAFIRE3-LDCT的91.1%(AUC = 0.922)和75.7%(AUC = 0.815) SAFIRE3-SDCT中的SAFIRE5-SDCT中的88.1%(AUC = 0.929)和SAFIRE5-SDCT中74%(AUC = 0.815)。 SSc患者CT的基于TA的定量鉴别可能显示出FBP-LDCT图像中最高的鉴别能力。

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