一种基于CT的肺段分割的多阶段3D卷积神经网络算法。

A multi-stage 3D convolutional neural network algorithm for CT-based lung segment parcellation.

作者信息

Siddharthan Trishul, Xu Zhoubing, Spottiswoode Bruce, Schettino Chris, Siegel Yoel, Georgiou Michalis, Eluvathingal Thomas, Geiger Bernhard, Grbic Sasa, Gosh Partha, Fahmi Rachid, Punjabi Naresh

机构信息

Division of Pulmonary, Critical Care and Sleep Medicine, University of Miami, Miami, Florida, USA.

Siemens Medical Solutions USA, Inc., Malvern, Pennsylvania, USA.

出版信息

J Appl Clin Med Phys. 2025 Aug;26(8):e70193. doi: 10.1002/acm2.70193.

Abstract

BACKGROUND

Current approaches to lung parcellation utilize established fissures between lobes to provide estimates of lobar volume. However, deep learning segment parcellation provides the ability to better assess regional heterogeneity in ventilation and perfusion.

PURPOSE

We aimed to validate and demonstrate the clinical applicability of CT-based lung segment parcellation using deep learning on a clinical cohort with mixed airways disease.

METHODS

Using a 3D convolutional neural network, airway centerlines were determined using an image-to-image network. Tertiary bronchi were identified on top of the airway centerline, and the pulmonary segments were parcellated based on the spatial relationship with tertiary and subsequent bronchi. The data obtained by following this workflow was used to train a neural network to enable end-to-end lung segment parcellation directly from 123 chest CT images. The performance of the parcellation network was then evaluated quantitatively using expert-defined reference masks on 20 distinct CTs from the training set, where the Dice score and inclusion rate (i.e., percentage of the detected bronchi covered by the correct segment) between the manual segmentation and automatic parcellation results were calculated for each lung segment. Lastly, a qualitative evaluation of external validation was performed on 20 CTs prospectively collected by having two radiologists review the parcellation accuracy in healthy individuals (n = 10) and in patients with chronic obstructive pulmonary disease (COPD) (n = 10).

RESULTS

Means and standard deviation of Dice score and inclusion rate between automatic and manual segmentation of twenty patient CTs were 86.81 (SD = 24.54) and 0.75 (SD = 0.19), respectively, across all lung segments. The mean age of the qualitative dataset was 54.4 years (SD = 16.4 years), with 45% (n = 9) women. There was 99.2% intra-reader agreement on average with the produced segments. Individuals with COPD had greater mismatch compared to healthy controls.

CONCLUSIONS

A deep-learning algorithm can create parcellation masks from chest CT scans, and the quantitative and qualitative evaluations yielded encouraging results for the potential clinical usage of lung analysis at the pulmonary segment level among those with structural airway disease.

摘要

背景

目前的肺部分割方法利用叶间既定的裂沟来估计肺叶体积。然而,深度学习分割能够更好地评估通气和灌注的区域异质性。

目的

我们旨在验证并展示基于CT的肺段分割在患有混合性气道疾病的临床队列中使用深度学习的临床适用性。

方法

使用三维卷积神经网络,通过图像到图像网络确定气道中心线。在气道中心线上识别三级支气管,并根据与三级及后续支气管的空间关系对肺段进行分割。按照此工作流程获得的数据用于训练神经网络,以直接从123例胸部CT图像进行端到端的肺段分割。然后,使用训练集中20个不同CT上的专家定义参考掩码对分割网络的性能进行定量评估,计算每个肺段手动分割和自动分割结果之间的Dice分数和包含率(即正确段覆盖的检测到的支气管百分比)。最后,对前瞻性收集的20例CT进行外部验证的定性评估,让两名放射科医生审查健康个体(n = 10)和慢性阻塞性肺疾病(COPD)患者(n = 10)的分割准确性。

结果

在所有肺段中,20例患者CT自动分割和手动分割之间Dice分数和包含率的平均值及标准差分别为86.81(SD = 24.54)和0.75(SD = 0.19)。定性数据集的平均年龄为54.4岁(SD = 16.4岁),女性占45%(n = 9)。读者对生成的段平均有99.2%的一致性。与健康对照相比,COPD个体的不匹配程度更高。

结论

一种深度学习算法可以从胸部CT扫描创建分割掩码,并且定量和定性评估为结构性气道疾病患者在肺段水平进行肺分析的潜在临床应用产生了令人鼓舞的结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/89bb/12284833/d1697474c8af/ACM2-26-e70193-g005.jpg

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