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增益和偏移校准可减少具有相同数字平板探测器的系统之间与曝光相关的 SNR 的变化。

Gain and offset calibration reduces variation in exposure-dependent SNR among systems with identical digital flat-panel detectors.

机构信息

Department of Imaging Physics, The University of Texas M. D. Anderson Cancer Center, Houston, Texas 77030-3721, USA.

出版信息

Med Phys. 2011 Jul;38(7):4422-9. doi: 10.1118/1.3602458.

Abstract

PURPOSE

The conditions under which vendor performance criteria for digital radiography systems are obtained do not adequately simulate the conditions of actual clinical imaging with respect to radiographic technique factors, scatter production, and scatter control. Therefore, the relationship between performance under ideal conditions and performance in clinical practice remains unclear. Using data from a large complement of systems in clinical use, the authors sought to develop a method to establish expected performance criteria for digital flat-panel radiography systems with respect to signal-to-noise ratio (SNR) versus detector exposure under clinical conditions for thoracic imaging.

METHODS

The authors made radiographic exposures of a patient-equivalent chest phantom at 125 kVp and 180 cm source-to-image distance. The mAs value was modified to produce exposures above and below the mAs delivered by automatic exposure control. Exposures measured free-in-air were corrected to the imaging plane by the inverse square law, by the attenuation factor of the phantom, and by the Bucky factor of the grid for the phantom, geometry, and kilovolt peak. SNR was evaluated as the ratio of the mean to the standard deviation (SD) of a region of interest automatically selected in the center of each unprocessed image. Data were acquired from 18 systems, 14 of which were tested both before and after gain and offset calibration. SNR as a function of detector exposure was interpolated using a double logarithmic function to stratify the data into groups of 0.2, 0.5, 1.0, 2.0, and 5.0 mR exposure (1.8, 4.5, 9.0, 18, and 45 microGy air KERMA) to the detector.

RESULTS

The mean SNR at each exposure interval after calibration exhibited linear dependence on the mean SNR before calibration (r2=0.9999). The dependence was greater than unity (m = 1.101 +/- 0.006), and the difference from unity was statistically significant (p <0.005). The SD of mean SNR after calibration also exhibited linear dependence on the SD of the mean SNR before calibration (r2 = 0.9997). This dependence was less than unity (m = 0.822 +/- 0.008), and the difference from unity was also statistically significant (p < 0.005). Systems were separated into two groups: systems with a precalibration SNR higher than the median SNR (N = 7), and those with a precalibration SNR lower than the median SNR (N= 7). Posthoc analysis was performed to correct for expanded false positive results. After calibration, the authors noted differences in mean SNR within both high and low groups, but these differences were not statistically significant at the 0.05 level. SNR data from four additional systems and one system from those previously tested after replacement of its detector were compared to the 95% confidence intervals (CI) calculated from the postcalibration SNR data. The comparison indicated that four of these five systems were consistent with the CI derived from the previously tested 14 systems after calibration. Two systems from the paired group that remained outside the CI were studied further. One system was remedied with a grid replacement. The nonconformant behavior of the other system was corrected by replacing the image receptor.

CONCLUSIONS

Exposure-dependent SNR measurements under conditions simulating thoracic imaging allowed us to develop criteria for digital flat-panel imaging systems from a single manufacturer. These measurements were useful in identifying systems with discrepant performance, including one with a defective grid, one with a defective detector, and one that had not been calibrated for gain and offset. The authors also found that the gain and offset calibration reduces variation in exposure-dependent SNR performance among the systems.

摘要

目的

数字射线照相系统的供应商性能标准是在与实际临床成像条件不充分模拟的情况下获得的,涉及射线照相技术因素、散射产生和散射控制。因此,理想条件下的性能与临床实践中的性能之间的关系仍不清楚。利用来自大量临床使用系统的数据,作者试图开发一种方法,为数字平板射线照相系统建立预期的性能标准,以在临床胸部成像条件下实现信噪比(SNR)与探测器曝光的关系。

方法

作者对 125kVp 和 180cm 源-像距的患者等效胸部体模进行射线照相曝光。通过修改 mAs 值,在自动曝光控制提供的 mAs 之上和之下产生曝光。在自由空气中测量的曝光值通过平方反比定律、体模的衰减系数和体模、几何形状和千伏峰的格栅的 Bucky 系数进行校正,以达到成像平面。SNR 被评估为在每个未处理图像的中心自动选择的感兴趣区域的平均值与标准偏差(SD)的比值。从 18 个系统中获取数据,其中 14 个系统在增益和偏移校准前后都进行了测试。使用双对数函数对探测器暴露的 SNR 进行插值,将数据分层为 0.2、0.5、1.0、2.0 和 5.0mR 探测器曝光(1.8、4.5、9.0、18 和 45 微 Gy 空气 KERMA)。

结果

校准后的每个曝光间隔的平均 SNR 呈线性依赖于校准前的平均 SNR(r2=0.9999)。这种依赖性大于 1(m=1.101+/-0.006),与 1 的差异具有统计学意义(p<0.005)。校准后的平均 SNR 的 SD 也呈线性依赖于校准前的平均 SNR 的 SD(r2=0.9997)。这种依赖性小于 1(m=0.822+/-0.008),与 1 的差异也具有统计学意义(p<0.005)。系统分为两组:校准前 SNR 高于中位数 SNR 的系统(N=7),以及校准前 SNR 低于中位数 SNR 的系统(N=7)。进行了事后分析,以纠正扩展的假阳性结果。校准后,作者注意到高低组内的平均 SNR 存在差异,但在 0.05 水平上没有统计学意义。从另外四个系统和之前测试的一个系统(更换其探测器后)获得的 SNR 数据与从校准后的 SNR 数据计算的 95%置信区间(CI)进行了比较。比较表明,这五个系统中的四个与校准后从之前测试的 14 个系统得出的 CI 一致。配对组中仍在 CI 之外的两个系统进一步研究。一个系统通过更换格栅得到修复。另一个系统的非一致性行为通过更换图像接收器得到纠正。

结论

在模拟胸部成像的条件下进行的与曝光相关的 SNR 测量使我们能够从单个制造商开发数字平板成像系统的标准。这些测量有助于识别性能不一致的系统,包括一个带有缺陷格栅的系统、一个带有缺陷探测器的系统,以及一个没有进行增益和偏移校准的系统。作者还发现,增益和偏移校准降低了系统之间与曝光相关的 SNR 性能的变化。

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