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基于人工智能迭代重建的超低剂量 CT 肺部筛查:利用自动结节检测软件进行评估。

Ultra-low-dose CT lung screening with artificial intelligence iterative reconstruction: evaluation via automatic nodule-detection software.

机构信息

Department of Radiology, The Fourth Hospital of Hebei Medical University, Shijiazhuang, Hebei, China.

United Imaging Healthcare, Shanghai, China.

出版信息

Clin Radiol. 2023 Jul;78(7):525-531. doi: 10.1016/j.crad.2023.01.006. Epub 2023 Feb 3.

Abstract

AIM

To test the feasibility of ultra-low-dose (ULD) computed tomography (CT) combined with an artificial intelligence iterative reconstruction (AIIR) algorithm for screening pulmonary nodules using computer-assisted diagnosis (CAD).

MATERIALS AND METHODS

A chest phantom with artificial pulmonary nodules was first scanned using the routine protocol and the ULD protocol (3.28 versus 0.18 mSv) to compare the image quality and to test the acceptability of the ULD CT protocol. Next, 147 lung-screening patients were enrolled prospectively, undergoing an additional ULD CT immediately after their routine CT examination for clinical validation. Images were reconstructed with filtered back-projection (FBP), hybrid iterative reconstruction (HIR), the AIIR, and were imported to the CAD software for preliminary nodule detection. Subjective image quality on the phantom was scored using a five-point scale and compared using the Mann-Whitney U-test. Nodule detection using CAD was evaluated for ULD HIR and AIIR images using the routine dose image as reference.

RESULTS

Higher image quality was scored for AIIR than for FBP and HIR at ULD (p<0.001). As reported by CAD, 107 patients were presented with fewer than five nodules on routine dose images and were chosen to represent the challenging cases at an early stage of pulmonary disease. Among such, the performance of nodule detection by CAD on ULD HIR and AIIR images was 75.2% and 92.2% of the routine dose image, respectively.

CONCLUSION

Combined with AIIR, it was feasible to use an ULD CT protocol with 95% dose reduction for CAD-based screening of pulmonary nodules.

摘要

目的

测试超低剂量(ULD)计算机断层扫描(CT)结合人工智能迭代重建(AIIR)算法用于计算机辅助诊断(CAD)筛查肺结节的可行性。

材料与方法

首先使用常规方案和 ULD 方案(3.28 与 0.18 mSv)对带有人工肺结节的胸部体模进行扫描,以比较图像质量并测试 ULD CT 方案的可接受性。接下来,前瞻性地纳入 147 例肺筛查患者,在常规 CT 检查后立即进行额外的 ULD CT 检查以进行临床验证。使用滤波反投影(FBP)、混合迭代重建(HIR)、AIIR 对图像进行重建,并将其导入 CAD 软件进行初步结节检测。使用五点量表对体模的主观图像质量进行评分,并使用曼-惠特尼 U 检验进行比较。使用常规剂量图像作为参考,评估 CAD 在 ULD HIR 和 AIIR 图像上的结节检测性能。

结果

ULD 时 AIIR 的图像质量评分高于 FBP 和 HIR(p<0.001)。如 CAD 报告,107 例患者在常规剂量图像上显示少于 5 个结节,被选为代表疾病早期具有挑战性的病例。在这些病例中,CAD 在 ULD HIR 和 AIIR 图像上的结节检测性能分别为常规剂量图像的 75.2%和 92.2%。

结论

结合 AIIR,使用 95%剂量降低的 ULD CT 方案结合 CAD 进行肺结节筛查是可行的。

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