Department of Radiology, Mayo Clinic, Rochester, Minnesota, USA.
Med Phys. 2022 Aug;49(8):4988-4998. doi: 10.1002/mp.15832. Epub 2022 Jul 10.
A common rule of thumb for object detection is the Rose criterion, which states that a signal must be five standard deviations above background to be detectable to a human observer. The validity of the Rose criterion in CT imaging is limited due to the presence of correlated noise. Recent reconstruction and denoising methodologies are also able to restore apparent image quality in very noisy conditions, and the ultimate limits of these methodologies are not yet known.
To establish a lower bound on the minimum achievable signal-to-noise ratio (SNR) for object detection, below which detection performance is poor regardless of reconstruction or denoising methodology.
We consider a numerical observer that operates on projection data and has perfect knowledge of the background and the objects to be detected, and determine the minimum projection SNR that is necessary to achieve predetermined lesion-level sensitivity and case-level specificity targets. We define a set of discrete signal objects that encompasses any lesion of interest and could include lesions of different sizes, shapes, and locations. The task is to determine which object of is present, or to state the null hypothesis that no object is present. We constrain each object in to have equivalent projection SNR and use Monte Carlo methods to calculate the required projection SNR necessary. Because our calculations are performed in projection space, they impose an upper limit on the performance possible from reconstructed images. We chose to be a collection of elliptical or circular low contrast metastases and simulated detection of these objects in a parallel beam system with Gaussian statistics. Unless otherwise stated, we assume a target of 80% lesion-level sensitivity and 80% case-level specificity and a search field of view that is 6 cm by 6 cm by 10 slices.
When contains only a single object, our problem is equivalent to two-alternative forced choice (2AFC) and the required projection SNR is 1.7. When consists of circular 6-mm lesions at different locations in space, the required projection SNR is 5.1. When is extended to include ellipses and circles of different sizes, the required projection SNR increases to 5.3. The required SNR increases if the sensitivity target, specificity target, or search field of view increases.
Even with perfect knowledge of the background and target objects, the ideal observer still requires an SNR of approximately 5. This is a lower bound on the SNR that would be required in real conditions, where the background and target objects are not known perfectly. Algorithms that denoise lesions with less than 5 projection SNR, regardless of the denoising methodology, are expected to show vanishing effects or false positive lesions.
目标检测的一个常见经验法则是罗斯准则,该准则规定信号必须比背景高出五个标准差才能被人类观察者检测到。由于存在相关噪声,CT 成像中的罗斯准则的有效性受到限制。最近的重建和去噪方法也能够在非常嘈杂的条件下恢复明显的图像质量,而这些方法的最终极限尚不清楚。
为目标检测确定可实现的最低信噪比 (SNR) 下限,在此下限以下,无论使用哪种重建或去噪方法,检测性能都很差。
我们考虑一种在投影数据上运行的数字观察者,该观察者具有完美的背景和要检测的目标知识,并确定实现预定病变水平灵敏度和病例水平特异性目标所需的最小投影 SNR。我们定义了一组离散的信号目标 ,它包含任何感兴趣的病变,并且可以包括不同大小、形状和位置的病变。任务是确定 中哪个目标存在,或者声明不存在目标的零假设。我们约束 中的每个目标具有等效的投影 SNR,并使用蒙特卡罗方法计算所需的投影 SNR。由于我们的计算是在投影空间中进行的,因此它们对重建图像可能达到的性能施加了上限。我们选择 是一组椭圆形或圆形低对比度转移瘤,并在具有高斯统计的平行束系统中模拟这些物体的检测。除非另有说明,我们假设目标病变水平灵敏度为 80%,病例水平特异性为 80%,搜索视场为 6cm×6cm×10 片。
当 只包含单个目标时,我们的问题等效于二选一强制选择 (2AFC),所需的投影 SNR 为 1.7。当 由空间中不同位置的 6mm 圆形病变组成时,所需的投影 SNR 为 5.1。当 扩展到包含不同大小的椭圆和圆形时,所需的投影 SNR 增加到 5.3。如果灵敏度目标、特异性目标或搜索视场增加,所需的 SNR 会增加。
即使具有背景和目标物体的完美知识,理想观察者仍然需要大约 5 的 SNR。这是真实条件下所需 SNR 的下限,在真实条件下,背景和目标物体并不完全已知。使用少于 5 个投影 SNR 对病变进行去噪的算法,无论去噪方法如何,预计都会显示出消失效应或假阳性病变。