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Optimization of Low-Contrast Detectability in Thin-Collimated Modern Multidetector CT Using an Interactive Sliding-Thin-Slab Averaging Algorithm.

机译:使用交互式滑动薄板平均算法优化薄平行现代多探测器CT中的低对比度可检测性。

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OBJECTIVES:: To analyze the effects of the sliding-thin-slab averaging algorithm on low-contrast performance in MDCT imaging and to find reasonable parameters for clinical routine work. MATERIALS AND METHODS:: A low-contrast phantom simulating hypodense lesions (20 HU object contrast) was scanned with a 16-slice spiral CT scanner using different mAs-settings of 25, 50, 100, and 195 mAs. Other scan parameters were as follows: tube voltage = 120 kVp, slice collimation = 0.625 mm, pitch = 1.375 (high speed), reconstruction interval = 0.5 mm. Images were reconstructed with soft, standard, and bone algorithms, resulting in a total of 12 datasets. A sliding-thin-slab averaging algorithm was applied to these primary datasets, systematically varying the slab thickness between 0.5 and 5.0 mm. The low-contrast performance of the resulting datasets was semi-automatically analyzed using a statistical reader-independent approach: A size-dependent analysis of the image noise within the phantom was used to empirically generate a contrast discrimination function (CDF). The ratio between the actual contrast and the minimum contrast necessary for the detection (as given by the CDF) was calculated for all lesions in each dataset and used to evaluate the low-contrast detectability of the different lesions at increasing slab thickness. The results were compared with the original datasets to calculate the improvement in low-contrast detectability. RESULTS:: Using the sliding-thin-slab algorithm, low-contrast performance was increased by a factor between 1.1 and 1.7 when compared with the primary dataset. The improvement of the visibility index at optimal slab thickness when compared with the original slice thickness (0.625 mm) was statistically significant (P < 0.05, Student t test) for the following datasets: 8 mm: all datasets; 6 mm: 25 mAs/soft, 195 mAs/bone, 25 mAs/bone; 5 mm: 25 mAs/soft, 25 mAs/bone. The ideal slab thickness over all datasets was 43% (+/-3%) of the diameter of the lesion to be detected. CONCLUSIONS:: The use of an interactive sliding-thin-slab averaging algorithm can be readily applied to optimize low-contrast detectability in thin-collimated CT datasets. As a general rule for daily routine, a slice thickness of approximately 2.5 to 3.0 mm can be regarded as a reasonable preset, resulting in an optimized detectability of lesions with a diameter of 5 mm and above.
机译:目的:分析薄板平均算法对MDCT成像低对比度性能的影响,并为临床常规工作寻找合理的参数。材料和方法:使用16层螺旋CT扫描仪,使用25、50、100和195 mAs的不同mAs设置扫描模拟低密度病变(20 HU对象对比度)的低对比度体模。其他扫描参数如下:管电压= 120 kVp,切片准直= 0.625 mm,间距= 1.375(高速),重建间隔= 0.5 mm。使用软算法,标准算法和骨骼算法重建图像,从而形成总共12个数据集。将滑动薄板平均算法应用于这些主要数据集,系统地将板厚在0.5到5.0 mm之间变化。使用独立于统计读取器的方法对生成的数据集的低对比度性能进行了半自动分析:幻像中图像噪声的大小依赖分析用于凭经验生成对比度判别函数(CDF)。计算每个数据集中所有病变的实际对比度和检测所需的最小对比度之间的比率(由CDF给出),并用于评估在增加平板厚度时不同病变的低对比度可检测性。将结果与原始数据集进行比较,以计算出低对比度可检测性的提高。结果:使用滑动薄板算法,与主要数据集相比,低对比度性能提高了1.1到1.7之间。对于以下数据集,与原始切片厚度(0.625毫米)相比,在最佳平板厚度下可见性指数的改善具有统计学意义(P <0.05,Student t检验):8毫米:所有数据集; 6毫米:25 mAs /软,195 mAs /骨,25 mAs /骨; 5毫米:25 mAs /软,25 mAs /骨。所有数据集上的理想平板厚度为要检测的病变直径的43%(+/- 3%)。结论:交互式薄板平均算法的使用可以很容易地用于优化薄准直CT数据集的低对比度可检测性。作为日常工作的一般规则,可以将大约2.5到3.0毫米的切片厚度视为合理的预设值,从而可以优化直径5毫米及以上的病变的可检测性。

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