低千兆电子伏特虚拟单色对比度增强计算机断层扫描与深度学习图像重建技术在改善胰腺导管腺癌分界中的应用。

Yasutaka Ichikawa, Yoshinori Kanii, Akio Yamazaki, Mai Kobayashi, Kensuke Domae, Motonori Nagata, Hajime Sakuma
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摘要

目的:与传统的混合迭代重建(HIR)相比,评估采用深度学习图像重建(DLIR)的低keV多相计算机断层扫描(CT)在改善胰腺导管腺癌(PDAC)分界方面的作用。对 35 名接受多相 CT 检查的 PDAC 患者进行了回顾性评估。使用 HIR(ASiR-V50%)和 DLIR(TrueFidelity-H)对原始数据进行了两种能量水平(40 keV 和 70 keV)的虚拟单色成像(VMI)重建。根据胰腺实质相图像中肿瘤和正常胰腺感兴趣区内的 CT 值计算对比-噪声比(CNRtumor)。两名放射科医生以 70-keV HIR 图像为参照,对 40-keV HIR、40-keV DLIR 和 70-keV DLIR 图像上胰腺实质相中 PDAC 病变的清晰度进行了 5 级定性评分(1 分 = 差;3 分 = 与参照相当;5 分 = 极佳)。40-keV DLIR 图像的 CNRtumor(中位数 10.4,四分位数间距 (IQR) 7.8-14.9)明显高于其他 VMI(40keV HIR,中位数 6.2,IQR 4.4-8.5,P),40-keV DLIR 图像的 CNRtumor 明显优于 40-keV HIR 和 70-keV HIR 图像,分别为 72 ± 22% 和 211 ± 340%。40-keV DLIR 图像上的病灶清晰度评分(观察者 1,4.5 ± 0.7;观察者 2,3.4 ± 0.5)明显高于 40-keV HIR 图像(观察者 1,3.3 ± 0.9,P<0.05)。
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The Usefulness of Low-Kiloelectron Volt Virtual Monochromatic Contrast-Enhanced Computed Tomography with Deep Learning Image Reconstruction Technique in Improving the Delineation of Pancreatic Ductal Adenocarcinoma.

To evaluate the usefulness of low-keV multiphasic computed tomography (CT) with deep learning image reconstruction (DLIR) in improving the delineation of pancreatic ductal adenocarcinoma (PDAC) compared to conventional hybrid iterative reconstruction (HIR). Thirty-five patients with PDAC who underwent multiphasic CT were retrospectively evaluated. Raw data were reconstructed with two energy levels (40 keV and 70 keV) of virtual monochromatic imaging (VMI) using HIR (ASiR-V50%) and DLIR (TrueFidelity-H). Contrast-to-noise ratio (CNRtumor) was calculated from the CT values within regions of interest in tumor and normal pancreas in the pancreatic parenchymal phase images. Lesion conspicuity of PDAC in pancreatic parenchymal phase on 40-keV HIR, 40-keV DLIR, and 70-keV DLIR images was qualitatively rated on a 5-point scale, using 70-keV HIR images as reference (score 1 = poor; score 3 = equivalent to reference; score 5 = excellent) by two radiologists. CNRtumor of 40-keV DLIR images (median 10.4, interquartile range (IQR) 7.8-14.9) was significantly higher than that of the other VMIs (40 keV HIR, median 6.2, IQR 4.4-8.5, P < 0.0001; 70-keV DLIR, median 6.3, IQR 5.1-9.9, P = 0.0002; 70-keV HIR, median 4.2, IQR 3.1-6.1, P < 0.0001). CNRtumor of 40-keV DLIR images were significantly better than those of the 40-keV HIR and 70-keV HIR images by 72 ± 22% and 211 ± 340%, respectively. Lesion conspicuity scores on 40-keV DLIR images (observer 1, 4.5 ± 0.7; observer 2, 3.4 ± 0.5) were significantly higher than on 40-keV HIR (observer 1, 3.3 ± 0.9, P < 0.0001; observer 2, 3.1 ± 0.4, P = 0.013). DLIR is a promising reconstruction method to improve PDAC delineation in 40-keV VMI at the pancreatic parenchymal phase compared to conventional HIR.

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