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深度学习图像重建技术在超低剂量肺 CT 中改善图像质量和结节特征。

Improving Image Quality and Nodule Characterization in Ultra-low-dose Lung CT with Deep Learning Image Reconstruction.

机构信息

Department of Radiology, Affiliated Hospital of Shaanxi University of Chinese Medicine, Xianyang 712000, China.

Department of Radiology, Affiliated Hospital of Shaanxi University of Chinese Medicine, Xianyang 712000, China.

出版信息

Acad Radiol. 2024 Jul;31(7):2944-2952. doi: 10.1016/j.acra.2024.01.010. Epub 2024 Feb 29.

Abstract

RATIONALE AND OBJECTIVE

To investigate the influence of the deep learning image reconstruction (DLIR) on the image quality and quantitative analysis of pulmonary nodules under ultra-low dose lung CT conditions.

MATERIALS AND METHODS

This was a prospective study with patient consent and included 56 patients with suspected pulmonary nodules. Patients were examined by both standard-dose CT (SDCT) and ultra-low-dose CT (ULDCT). SDCT images were reconstructed with adaptive statistical iterative reconstruction-V 40% (ASIR-V40%) (group A), while ULDCT images were reconstructed using ASIR-V40% (group B) and high-strength DLIR (DLIR-H) (group C). The three image sets were analyzed using a commercial computer aided diagnosis (CAD) software. Parameters such as nodule length, width, density, volume, risk, and classification were measured. The CAD quantitative data of different nodule types (solid, calcified, and subsolid nodules) and nodule image quality scores evaluated by two physicians on a 5-point scale were compared.

RESULT

The radiation dose in ULDCT was 0.25 ± 0.08mSv, 7.2% that of the 3.48 ± 1.08mSv in SDCT (P < 0.001). 104 pulmonary nodules were detected (51/53 solid, 26/24 calcified and 27/27 subsolid in Groups A and (B&C), respectively). Group B had lower density for solid, calcified nodules, and lower volume and risk for subsolid nodules than Group A, while Group C had lower density for calcified nodules (P < 0.05), There were no significant differences in other parameters among the three groups (P > 0.05). Group A and C had similar image quality for nodules and were higher than Group B (P < 0.05).

CONCLUSION

DLIR-H significantly improves image quality than ASIR-V40% and maintains similar nodule detection and characterization with CAD in ULDCT compared to SDCT.

摘要

背景与目的

研究深度学习图像重建(DLIR)对超低剂量肺部 CT 条件下肺结节的图像质量和定量分析的影响。

材料与方法

这是一项前瞻性研究,征得患者同意后,纳入 56 名疑似肺结节患者。患者均接受标准剂量 CT(SDCT)和超低剂量 CT(ULDCT)检查。SDCT 图像采用自适应统计迭代重建-V40%(ASIR-V40%)重建(A 组),ULDCT 图像分别采用 ASIR-V40%(B 组)和高强度 DLIR(DLIR-H)重建(C 组)。使用商业计算机辅助诊断(CAD)软件对三组图像进行分析。测量结节长度、宽度、密度、体积、风险和分类等参数。比较两位医师采用 5 分制对不同结节类型(实性、钙化和部分实性结节)和结节图像质量评分的 CAD 定量数据。

结果

ULDCT 辐射剂量为 0.25±0.08mSv,为 SDCT(3.48±1.08mSv)的 7.2%(P<0.001)。三组均检出 104 个肺结节(A 组和(B+C)组分别为 51/53 个实性、26/24 个钙化和 27/27 个部分实性)。B 组实性、钙化结节密度及部分实性结节体积和风险均低于 A 组,C 组钙化结节密度低于 A 组(P<0.05),其余参数三组间差异均无统计学意义(P>0.05)。A 组和 C 组结节图像质量相似,均高于 B 组(P<0.05)。

结论

与 ASIR-V40%相比,DLIR-H 可显著提高图像质量,与 SDCT 相比,在 ULDCT 中使用 DLIR-H 可保持与 CAD 相似的结节检出和特征描述。

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