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基于人工智能的常规胸部计算机断层扫描肺气肿定量:与肺量计和视觉肺气肿分级的相关性。

Artificial Intelligence-Based Emphysema Quantification in Routine Chest Computed Tomography: Correlation With Spirometry and Visual Emphysema Grading.

机构信息

Department of Applied Mathematics, Wrocław University of Environmental and Life Sciences, Wroclaw, Poland.

出版信息

J Comput Assist Tomogr. 2024;48(3):388-393. doi: 10.1097/RCT.0000000000001572. Epub 2023 Dec 18.

Abstract

OBJECTIVE

The aim of the study is to assess the correlation between artificial intelligence (AI)-based low attenuation volume percentage (LAV%) with forced expiratory volume in the first second to forced vital capacity (FEV1/FVC) and visual emphysema grades in routine chest computed tomography (CT). Furthermore, optimal LAV% cutoff values for predicting a FEV1/FVC < 70% or moderate to more extensive visual emphysema grades were calculated.

METHODS

In a retrospective study of 298 consecutive patients who underwent routine chest CT and spirometry examinations, LAV% was quantified using an AI-based software with a threshold < -950 HU. The FEV1/FVC was derived from spirometry, with FEV1/FVC < 70% indicating airway obstruction. The mean time interval of CT from spirometry was 3.87 ± 4.78 days. Severity of emphysema was visually graded by an experienced chest radiologist using an established 5-grade ordinal scale (Fleischner Society classification system). Spearman correlation coefficient between LAV% and FEV1/FVC was calculated. Receiver operating characteristic determined the optimal LAV% cutoff values for predicting a FEV1/FVC < 70% or a visual emphysema grade of moderate or higher (Fleischner grade 3-5).

RESULTS

Significant correlation between LAV% and FEV1/FVC was found (ϱ = -0.477, P < 0.001). Increasing LAV% corresponded to higher visual emphysema grades. For patients with absent visual emphysema, mean LAV% was 2.98 ± 3.30, for patients with trace emphysema 3.22 ± 2.75, for patients with mild emphysema 3.90 ± 3.33, for patients with moderate emphysema 6.41 ± 3.46, for patients with confluent emphysema 9.02 ± 5.45, and for patients with destructive emphysema 16.90 ± 8.19. Optimal LAV% cutoff value for predicting a FEV1/FVC < 70 was 6.1 (area under the curve = 0.764, sensitivity = 0.773, specificity = 0.665), while for predicting a visual emphysema grade of moderate or higher, it was 4.7 (area under the curve = 0.802, sensitivity = 0.766, specificity = 0.742). Furthermore, correlation between visual emphysema grading and FEV1/FVC was found. In patients with FEV1/FVC < 70% a high proportion of subjects had emphysema grade 3 (moderate) or higher, whereas in patients with FEV1/FVC ≥ 70%, a larger proportion had emphysema grade 3 (moderate) or lower. The sensitivity for visual emphysema grading predicting a FEV1/FVC < 70% was 56.3% with an optimal cutoff point at a visual grade of 4 (confluent), demonstrating a lower sensitivity compared with LAV% (77.3%).

CONCLUSIONS

A significant correlation between AI-based LAV% and FEV1/FVC as well as visual CT emphysema grades can be found in routine chest CT suggesting that AI-based LAV% measurement might be integrated as an add-on functional parameter in the evaluation of chest CT in the future.

摘要

目的

本研究旨在评估基于人工智能(AI)的低衰减体积百分比(LAV%)与用力呼气量第一秒与用力肺活量(FEV1/FVC)之间的相关性,以及常规胸部计算机断层扫描(CT)中的视觉肺气肿分级。此外,还计算了预测 FEV1/FVC < 70%或中度至更广泛视觉肺气肿分级的最佳 LAV%截断值。

方法

在一项回顾性研究中,对 298 例接受常规胸部 CT 和肺量计检查的连续患者进行了研究,使用基于 AI 的软件对 LAV%进行量化,阈值为 <-950 HU。FEV1/FVC 源自肺量计,FEV1/FVC < 70%表示气道阻塞。CT 与肺量计之间的平均时间间隔为 3.87 ± 4.78 天。肺气肿的严重程度由经验丰富的胸部放射科医生使用既定的 5 级序数量表(Fleischner 学会分类系统)进行视觉分级。计算 LAV%与 FEV1/FVC 之间的 Spearman 相关系数。接受者操作特征确定了预测 FEV1/FVC < 70%或视觉肺气肿分级为中度或更高(Fleischner 等级 3-5)的最佳 LAV%截断值。

结果

发现 LAV%与 FEV1/FVC 之间存在显著相关性(ρ=-0.477,P<0.001)。LAV%的增加与更高的视觉肺气肿等级相对应。对于没有视觉肺气肿的患者,平均 LAV%为 2.98 ± 3.30,对于有微量肺气肿的患者为 3.22 ± 2.75,对于有轻度肺气肿的患者为 3.90 ± 3.33,对于有中度肺气肿的患者为 6.41 ± 3.46,对于有融合性肺气肿的患者为 9.02 ± 5.45,对于有破坏性肺气肿的患者为 16.90 ± 8.19。预测 FEV1/FVC < 70 的最佳 LAV%截断值为 6.1(曲线下面积=0.764,灵敏度=0.773,特异性=0.665),而预测视觉肺气肿分级为中度或更高的最佳 LAV%截断值为 4.7(曲线下面积=0.802,灵敏度=0.766,特异性=0.742)。此外,还发现视觉肺气肿分级与 FEV1/FVC 之间存在相关性。在 FEV1/FVC < 70%的患者中,有相当比例的患者存在肺气肿等级 3(中度)或更高,而在 FEV1/FVC ≥ 70%的患者中,有更大比例的患者存在肺气肿等级 3(中度)或更低。视觉肺气肿分级预测 FEV1/FVC < 70%的灵敏度为 56.3%,最佳截断点为 4 级(融合性),与 LAV%(77.3%)相比,灵敏度较低。

结论

在常规胸部 CT 中可以发现基于 AI 的 LAV%与 FEV1/FVC 以及视觉 CT 肺气肿分级之间存在显著相关性,这表明基于 AI 的 LAV%测量可能会作为附加的功能参数集成到未来的胸部 CT 评估中。

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