학술논문

深度学习图像重建结合计算机辅助诊断在肺结节CT筛查中的应用研究 / Application of deep learning image reconstruction combined with computer-aided diagnosis in CT screening of pulmonary nodules
Document Type
Academic Journal
Source
实用放射学杂志 / Journal of Practical Radiology. 40(1):135-139
Subject
深度学习图像重建
自适应统计迭代重建算法
肺结节筛查
计算机辅助检测
计算机体层成像
图像质量
deep learning image reconstruction
adaptive statis-tical iterative reconstruction V
pulmonary nodule screening
com-puter-aided diagnosis
computed tomography
image quality
Language
Chinese
ISSN
1002-1671
Abstract
目的 分析深度学习图像重建(DLIR)、自适应统计迭代重建算法(ASIR-V)对胸部CT肺结节成像质量的影响,评估不同图像重建技术下计算机辅助诊断(CAD)对肺结节检测效能的差异.方法 胸部CT肺结节筛查患者80例,分别行ASIR-V 80%、DLIR-低(DLIR-L)、DLIR-中等(DLIR-M)、DLIR-高(DLIR-H)图像重建,对比分析4组图像的客观图像质量和主观图像质量,其中客观图像质量包括图像感兴趣区(ROI)的CT值、噪声、信噪比(SNR)、对比噪声比(CNR)和图像平均梯度.评估4组图像CAD检测肺结节的诊断效能.结果 4组图像相同ROI的CT值无统计学差异(P>0.05).DLIR-H图像的噪声、SNR、CNR与ASIR-V 80%相当(P>0.05),优于 DLIR-L 与 DLIR-M(P<0.05).DLIR-L、DLIR-M、DLIR-H 图像的平均梯度均高于 ASIR-V 80%(P<0.05).DLIR-L、DLIR-M、DLIR-H图像的主观图像质量评分均高于ASIR-V 80%(P<0.05),DLIR-H图像的主观图像质量评分最高.DLIR-H图像CAD检测肺结节的真阳性率最高(P<0.05),ASIR-V 80%图像CAD检测肺结节的人均假阳性数最高(P<0.05).结论 DLIR-H图像的噪声、SNR、CNR与ASIR-V 80%相当,但图像清晰度和主观图像质量评分更高,在CAD检测肺结节时亦有优势,是目前较为理想的胸部CT肺结节筛查图像重建技术.
Objective To analyze the effects of deep learning image reconstruction(DLIR)and adaptive statistical iterative recon-struction V(ASIR-V)on the imaging quality of chest CT in patient with pulmonary nodules,and to evaluate the differences based on different image reconstruction techniques in the detection of efficiency of computer-aided diagnosis(CAD)for pulmonary nodules.Methods The image data of pulmonary nodules of eighty patients with chest CT screening were reconstructed with ASIR-V 80%,DLIR-low(DLIR-L),DLIR-medium(DLIR-M)and DLIR-high(DLIR-H)images,respectively.The objective image quality and sub-jective image quality of the four groups were compared and analyzed.Objective image quality includes CT value of region of interest(ROI),noise,signal-to-noise ratio(SNR),contrast-to-noise ratio(CNR)and image average gradient.The diagnostic efficacy of CAD in detecting pulmonary nodules of reconstructed images among four groups were further evaluated.Results There were no signifi-cant difference in CT value of ROI of reconstructed images among the four groups(P>0.05).The noise,SNR and CNR of DLIR-H images were similar to those of ASIR-V 80%(P>0.05),but significantly better than those of DLIR-L and DLIR-M(P<0.05).The average gradient of DLIR-L,DLIR-M and DLIR-H images were significantly higher than those of ASIR-V 80%(P<0.05).The subjective image quality scores of DLIR-L,DLIR-M and DLIR-H images were significantly higher than those of ASIR-V 80%(P<0.05),and the subjective image quality score of DLIR-H image was the highest.CAD showed the highest true positive rate in DLIR-H images for detecting pulmonary nodules(P<0.05),and CAD showed the highest false positives per capita in ASIR-V 80%images for detecting pulmonary nodules(P<0.05).Conclusion The noise,SNR and CNR of DLIR-H images are similar to those of ASIR-V 80%,with the significantly higher image clarity and subjective image quality scores.DLIR-H has advantages in CAD detection of pulmonary nodules,which is an ideal image reconstruction technology for chest CT pulmonary nodule screening.