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首页> 外文期刊>Medical Physics >Comparison of model and human observer performance for detection and discrimination tasks using dual-energy x-ray images.
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Comparison of model and human observer performance for detection and discrimination tasks using dual-energy x-ray images.

机译:使用双能X射线图像对模型和人类观察者进行检测和区分任务的性能进行比较。

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摘要

Model observer performance, computed theoretically using cascaded systems analysis (CSA), was compared to the performance of human observers in detection and discrimination tasks. Dual-energy (DE) imaging provided a wide range of acquisition and decomposition parameters for which observer performance could be predicted and measured. This work combined previously derived observer models (e.g., Fisher-Hotelling and non-prewhitening) with CSA modeling of the DE image noise-equivalent quanta (NEQ) and imaging task (e.g., sphere detection, shape discrimination, and texture discrimination) to yield theoretical predictions of detectability index (d') and area under the receiver operating characteristic (Az). Theoretical predictions were compared to human observer performance assessed using 9-alternative forced-choice tests to yield measurement of Az as a function of DE image acquisition parameters (viz., allocation of dose between the low- and high-energy images) and decomposition technique [viz., three DE image decomposition algorithms: standard log subtraction (SLS), simple-smoothing of the high-energy image (SSH), and anti-correlated noise reduction (ACNR)]. Results showed good agreement between theory and measurements over a broad range of imaging conditions. The incorporation of an eye filter and internal noise in the observer models demonstrated improved correspondence with human observer performance. Optimal acquisition and decomposition parameters were shown to depend on the imaging task; for example, ACNR and SSH yielded the greatest performance in the detection of soft-tissue and bony lesions, respectively. This study provides encouraging evidence that Fourier-based modeling of NEQ computed via CSA and imaging task provides a good approximation to human observer performance for simple imaging tasks, helping to bridge the gap between Fourier metrics of detector performance (e.g., NEQ) and human observer performance.
机译:理论上使用级联系统分析(CSA)计算的模型观察者性能与人类观察者在检测和区分任务中的性能进行了比较。双能(DE)成像提供了广泛的采集和分解参数,可以预测和测量观察者的表现。这项工作将先前导出的观察者模型(例如Fisher-Hotelling和非预增白)与DE图像等效噪声量子(NEQ)的CSA建模和成像任务(例如球体检测,形状辨别和纹理辨别)结合起来,得出接收器工作特性(Az)下可检测性指数(d')和面积的理论预测。将理论预测与使用9替代强制选择测试评估的人类观察员性能进行比较,以得出作为DE图像采集参数(即,低能和高能图像之间的剂量分配)和分解技术的函数的Az量度[即,三种DE图像分解算法:标准对数减法(SLS),高能图像的简单平滑(SSH)和反相关降噪(ACNR)]。结果表明,在广泛的成像条件下,理论与测量值之间具有良好的一致性。在观察者模型中并入了眼图滤镜和内部噪声,这表明与人类观察者的表现更加吻合。最佳的采集和分解参数显示取决于成像任务。例如,ACNR和SSH分别在软组织和骨病变的检测中表现最好。这项研究提供了令人鼓舞的证据,即通过CSA和成像任务计算的基于傅立叶的NEQ建模为简单成像任务提供了很好的人类观察者性能近似值,有助于弥合探测器性能(例如NEQ)的傅里叶度量与人类观察者之间的差距性能。

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