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针对欠采样磁共振成像(MRI)中不同数据采集情况,为二选一强制选择(2-AFC)和强制定位任务建立人类观察者检测模型。

Modeling human observer detection for varying data acquisition in undersampled MRI for two-alternative forced choice (2-AFC) and forced localization tasks.

作者信息

Mehta Rehan, Kawakita Tetsuya A, Pineda Angel R

机构信息

Mathematics Department, Manhattan College, Riverdale, NY, 10471, USA.

出版信息

Proc SPIE Int Soc Opt Eng. 2024 Feb;12929. doi: 10.1117/12.3005839. Epub 2024 Mar 29.

Abstract

Undersampling in the frequency domain (k-space) in MRI enables faster data acquisition. In this study, we used a fixed 1D undersampling factor of 5x with only 20% of the k-space collected. The fraction of fully acquired low k-space frequencies were varied from 0% (all aliasing) to 20% (all blurring). The images were reconstructed using a multi-coil SENSE algorithm. We used two-alternative forced choice (2-AFC) and the forced localization tasks with a subtle signal to estimate the human observer performance. The 2-AFC average human observer performance remained fairly constant across all imaging conditions. The forced localization task performance improved from the 0% condition to the 2.5% condition and remained fairly constant for the remaining conditions, suggesting that there was a decrease in task performance only in the pure aliasing situation. We modeled the average human performance using a sparse-difference of Gaussians (SDOG) Hotelling observer model. Because the blurring in the undersampling direction makes the mean signal asymmetric, we explored an adaptation for irregular signals that made the SDOG template asymmetric. To improve the observer performance, we also varied the number of SDOG channels from 3 to 4. We found that despite the asymmetry in the mean signal, both the symmetric and asymmetric models reasonably predicted the human performance in the 2-AFC experiments. However, the symmetric model performed slightly better. We also found that a symmetric SDOG model with 4 channels implemented using a spatial domain convolution and constrained to the possible signal locations reasonably modeled the forced localization human observer results.

摘要

磁共振成像(MRI)中在频域(k空间)进行欠采样能够实现更快的数据采集。在本研究中,我们使用了固定的1D欠采样因子5倍,仅采集20%的k空间。完全采集的低k空间频率的比例从0%(全为混叠)到20%(全为模糊)变化。图像使用多线圈敏感度编码(SENSE)算法进行重建。我们使用二选一强迫选择(2-AFC)和带有微弱信号的强迫定位任务来评估人类观察者的表现。在所有成像条件下,2-AFC中人类观察者的平均表现保持相当稳定。强迫定位任务的表现从0%的情况改善到2.5%的情况,并在其余条件下保持相当稳定,这表明仅在纯混叠情况下任务表现有所下降。我们使用高斯稀疏差分(SDOG)霍特林观察者模型对人类的平均表现进行建模。由于欠采样方向上的模糊使得平均信号不对称,我们探索了一种针对不规则信号的适配方法,使SDOG模板不对称。为了提高观察者的表现,我们还将SDOG通道数从3个变化到4个。我们发现,尽管平均信号存在不对称性,但对称和不对称模型在2-AFC实验中都能合理地预测人类表现。然而,对称模型的表现略好。我们还发现,使用空间域卷积实现并限制在可能信号位置的具有4个通道的对称SDOG模型能够合理地模拟强迫定位人类观察者的结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c7c7/11128320/4385283bb2a8/nihms-1994015-f0001.jpg

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