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Task-based Evaluation of Deep Image Super-Resolution in Medical Imaging

机译:基于任务的医学成像深映像超分辨率的评估

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In medical imaging, it is sometimes desirable to acquire high resolution images that reveal anatomical and physiological information to support clinical practice such as diagnosis and image-guided therapies. However, for certain imaging modalities (i.e., magnetic resonance imaging (MRI)), acquiring high resolution images can be a very time-consuming and resource-intensive process. One popular solution recently developed is to create a high resolution version of the acquired low-resolution image by use of deep image super-resolution (DL-SR) methods. It has been demonstrated in literature that deep super-resolution networks can improve the image quality measured by traditional physical metrics such as mean square error (MSE). structural similarity index metric (SSIM) and peak signal-to-noise ratio (PSNR). However, it is not clear how well these metrics quantify the diagnostic value of the generated SR images. Here, a task-based super-resolution (SR) image quality assessment is conducted to quantitatively evaluate the efficiency and performance of DL-SR methods. A Rayleigh task is designed to investigate the impact of signal length and super-resolution network complexity on s binary detection performance. Numerical observers (NOs) including the regularized Hotelling Observer (RHO), the anthropomorphic Gabor channelized observers (Gabor CHO) and the ResNet-approximated ideal observer (ResNet-IO) are implemented to assess the Rayleigh task performance. For the datasets considered in this study, little to no improvement in task performance of the considered NOs due to the considered DL-SR SR networks, despite substantial improvement in traditional IQ metrics.
机译:在医学成像中,有时希望获得高分辨率图像,该图像显示解剖和生理信息,以支持临床实践,例如诊断和图像引导的疗法。然而,对于某些成像模式(即,磁共振成像(MRI)),获取高分辨率图像可以是非常耗时和资源密集的过程。最近开发的一个流行解决方案是通过使用深图像超分辨率(DL-SR)方法来创建获得的低分辨率图像的高分辨率版本。它已经在文献中证明了深层超分辨率网络可以通过传统物理度量来改善诸如均方误差(MSE)的传统物理度量来改善图像质量。结构相似性指数度量(SSIM)和峰值信噪比(PSNR)。但是,目前尚不清楚这些度量如何量化生成的SR图像的诊断值。这里,进行任务的超分辨率(SR)图像质量评估,以定量评估DL-SR方法的效率和性能。瑞利任务旨在探讨信号长度和超分辨率网络复杂性对S二元检测性能的影响。在包括正则化的Hotellate观察者(RHO)的数值观察者(NOS),实施了拟人古代牧师信道化观察者(Gabor Cho)和Reset近似的理想理想观察者(Reset-IO)以评估瑞利任务性能。对于本研究中考虑的数据集,尽管传统的智商指标实质性改善,但由于考虑的DL-SR网络,但由于考虑的DL-SR网络而言,对于所考虑的NOS的任务表现没有提高。

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