Quantitative CT Imaging Features Associated with Stable PRISm using Machine Learning.

IF 3.8 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Academic Radiology Pub Date : 2025-01-01 Epub Date: 2024-08-26 DOI:10.1016/j.acra.2024.08.030
Leila Lukhumaidze, James C Hogg, Jean Bourbeau, Wan C Tan, Miranda Kirby
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Abstract

Rationale and objectives: The structural lung features that characterize individuals with preserved ratio impaired spirometry (PRISm) that remain stable overtime are unknown. The objective of this study was to use machine learning models with computed tomography (CT) imaging to classify stable PRISm from stable controls and stable COPD and identify discriminative features.

Materials and methods: A total of 596 participants that did not transition between control, PRISm and COPD groups at baseline and 3-year follow-up were evaluated: n = 274 with normal lung function (stable control), n = 22 stable PRISm, and n = 300 stable COPD. Investigated features included: quantitative CT (QCT) features (n = 34), such as total lung volume (%TLCCT) and percentage of ground glass and reticulation (%GG+Reticulationtexture), as well as Radiomic (n = 102) features, including varied intensity zone distribution grainy texture (GLDZMZDV). Logistic regression machine learning models were trained using various feature combinations (Base, Base+QCT, Base+Radiomic, Base+QCT+Radiomic). Model performances were evaluated using area under receiver operator curve (AUC) and comparisons between models were made using DeLong test; feature importance was ranked using Shapley Additive Explanations values.

Results: Machine learning models for all feature combinations achieved AUCs between 0.63-0.84 for stable PRISm vs. stable control, and 0.65-0.92 for stable PRISm vs. stable COPD classification. Models incorporating imaging features outperformed those trained solely on base features (p < 0.05). Compared to stable control and COPD, those with stable PRISm exhibited decreased %TLCCT and increased %GG+Reticulationtexture and GLDZMZDV.

Conclusion: These findings suggest that reduced lung volumes, and elevated high-density and ground glass/reticulation patterns on CT imaging are associated with stable PRISm.

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利用机器学习研究与稳定的 PRISm 相关的定量 CT 成像特征。
理由和目标:目前尚不清楚肺活量保留比值受损(PRISm)患者的肺部结构特征。本研究的目的是利用机器学习模型和计算机断层扫描(CT)成像技术,将稳定的 PRISm 从稳定的对照组和稳定的慢性阻塞性肺病组中分类出来,并确定鉴别特征:共评估了 596 名在基线和 3 年随访期间未在对照组、PRISm 组和 COPD 组之间转换的参与者:n = 274 名肺部功能正常者(稳定对照组)、n = 22 名稳定 PRISm 患者和 n = 300 名稳定 COPD 患者。调查的特征包括:定量 CT(QCT)特征(n = 34),如肺总容积(%TLCCT)、磨玻璃和网状纹理百分比(%GG+Reticulationtexture),以及 Radiomic(n = 102)特征,包括不同强度区分布的颗粒纹理(GLDZMZDV)。使用各种特征组合(Base、Base+QCT、Base+Radiomic、Base+QCT+Radiomic)训练逻辑回归机器学习模型。使用接收者运算曲线下面积(AUC)对模型性能进行评估,使用 DeLong 检验对模型进行比较;使用 Shapley Additive Explanations 值对特征重要性进行排序:所有特征组合的机器学习模型的AUC值介于0.63-0.84和0.65-0.92之间,分别用于稳定的PRISm和稳定的对照,以及稳定的PRISm和稳定的COPD分类。包含成像特征的模型优于仅根据基础特征训练的模型(p CT 和增加的 %GG+Reticulationtexture 和 GLDZMZDV):这些研究结果表明,CT 成像上肺容积减少、高密度和磨玻璃/网状结构模式升高与 PRISm 稳定相关。
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来源期刊
Academic Radiology
Academic Radiology 医学-核医学
CiteScore
7.60
自引率
10.40%
发文量
432
审稿时长
18 days
期刊介绍: Academic Radiology publishes original reports of clinical and laboratory investigations in diagnostic imaging, the diagnostic use of radioactive isotopes, computed tomography, positron emission tomography, magnetic resonance imaging, ultrasound, digital subtraction angiography, image-guided interventions and related techniques. It also includes brief technical reports describing original observations, techniques, and instrumental developments; state-of-the-art reports on clinical issues, new technology and other topics of current medical importance; meta-analyses; scientific studies and opinions on radiologic education; and letters to the Editor.
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