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Inter-algorithm Lesion Volumetry Comparison of Real and 3D Simulated Lung Lesions in CT

机译:CT中真实和3D模拟肺部病变的算法间病变体积比较

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The purpose of this study was to establish volumetric exchangeability between real and computational lung lesions in CT. We compared the overall relative volume estimation performance of segmentation tools when used to measure real lesions in actual patient CT images and computational lesions virtually inserted into the same patient images (i.e., hybrid datasets). Pathologically confirmed malignancies from 30 thoracic patient cases from Reference Image Database to Evaluate Therapy Response (RIDER) were modeled and used as the basis for the comparison. Lesions included isolated nodules as well as those attached to the pleura or other lung structures. Patient images were acquired using a 16 detector row or 64 detector row CT scanner (Lightspeed 16 or VCT; GE Healthcare). Scans were acquired using standard chest protocols during a single breath-hold. Virtual 3D lesion models based on real lesions were developed in Duke Lesion Tool (Duke University), and inserted using a validated image-domain insertion program. Nodule volumes were estimated using multiple commercial segmentation tools (iNtuition, TeraRecon, Inc., Syngo.via, Siemens Healthcare, and IntelliSpace, Philips Healthcare). Consensus based volume comparison showed consistent trends in volume measurement between real and virtual lesions across all software. The average percent bias (± standard error) shows -9.2±3.2% for real lesions versus -6.7±1.2% for virtual lesions with tool A, 3.9±2.5% and 5.0±0.9% for tool B, and 5.3±2.3% and 1.8±0.8% for tool C, respectively. Virtual lesion volumes were statistically similar to those of real lesions (< 4% difference) with p >.05 in most cases. Results suggest that hybrid datasets had similar inter-algorithm variability compared to real datasets.
机译:这项研究的目的是建立CT中实际和计算肺部病变之间的体积交换性。我们比较了分割工具用于测量实际患者CT图像中的实际病变和虚拟插入相同患者图像(即混合数据集)的计算病变时的总体相对体积估计性能。对来自参考图像数据库以评估治疗反应(RIDER)的30例胸科患者经病理证实的恶性肿瘤进行建模,并将其用作比较的基础。病变包括孤立的结节以及附着于胸膜或其他肺部结构的结节。使用16排检测器或64排检测器CT扫描仪(Lightspeed 16或VCT; GE Healthcare)获取患者图像。在一次屏气期间使用标准的胸部协议进行扫描。在Duke Lesion Tool(杜克大学)中开发了基于实际病变的虚拟3D病变模型,并使用经过验证的图像域插入程序将其插入。使用多种商业分割工具(iNtuition,TeraRecon,Inc.,Syngo.via,Siemens Healthcare和IntelliSpace,Philips Healthcare)估计了结节量。基于共识的体积比较显示了跨所有软件的真实和虚拟病变之间的体积测量趋势一致。实际病变的平均偏倚百分比(±标准误差)显示为-9.2±3.2%,使用工具A的虚拟病变为-6.7±1.2%,使用工具B的为3.9±2.5%和5.0±0.9%,以及工具为5.3±2.3%和工具C分别为1.8±0.8%。在大多数情况下,虚拟病变体积在统计学上与真实病变相似(差异<4%),p> 0.05。结果表明,与真实数据集相比,混合数据集具有相似的算法间可变性。

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