Predicting COPD exacerbations based on quantitative CT analysis: an external validation study

Ji Wu, Yao Lu, Sunbin Dong, Luyang Wu, Xiping Shen
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Abstract

Quantitative computed tomography (CT) analysis is an important method for diagnosis and severity evaluation of lung diseases. However, the association between CT-derived biomarkers and chronic obstructive pulmonary disease (COPD) exacerbations remains unclear. We aimed to investigate its potential in predicting COPD exacerbations.Patients with COPD were consecutively enrolled, and their data were analyzed in this retrospective study. Body composition and thoracic abnormalities were analyzed from chest CT scans. Logistic regression analysis was performed to identify independent risk factors of exacerbation. Based on 2-year follow-up data, the deep learning system (DLS) was developed to predict future exacerbations. Receiver operating characteristic (ROC) curve analysis was conducted to assess the diagnostic performance. Finally, the survival analysis was performed to further evaluate the potential of the DLS in risk stratification.A total of 1,150 eligible patients were included and followed up for 2 years. Multivariate analysis revealed that CT-derived high affected lung volume/total lung capacity (ALV/TLC) ratio, high visceral adipose tissue area (VAT), and low pectoralis muscle cross-sectional area (CSA) were independent risk factors causing COPD exacerbations. The DLS outperformed exacerbation history and the BMI, airflow obstruction, dyspnea, and exercise capacity (BODE) index, with an area under the ROC (AUC) value of 0.88 (95%CI, 0.82–0.92) in the internal cohort and 0.86 (95%CI, 0.81–0.89) in the external cohort. The DeLong test revealed significance between this system and conventional scores in the test cohorts (p < 0.05). In the survival analysis, patients with higher risk were susceptible to exacerbation events.The DLS could allow accurate prediction of COPD exacerbations. The newly identified CT biomarkers (ALV/TLC ratio, VAT, and pectoralis muscle CSA) could potentially enable investigation into underlying mechanisms responsible for exacerbations.
基于 CT 定量分析预测慢性阻塞性肺病恶化:一项外部验证研究
定量计算机断层扫描(CT)分析是诊断和评估肺部疾病严重程度的重要方法。然而,CT 衍生的生物标志物与慢性阻塞性肺疾病(COPD)恶化之间的关系仍不清楚。在这项回顾性研究中,我们连续招募了慢性阻塞性肺病患者,并对他们的数据进行了分析。这项回顾性研究连续纳入了慢性阻塞性肺病患者,并对他们的数据进行了分析。根据胸部 CT 扫描结果分析了身体成分和胸廓异常。通过逻辑回归分析找出导致病情恶化的独立风险因素。根据两年的随访数据,开发了深度学习系统(DLS)来预测未来的病情加重。进行了接收者操作特征(ROC)曲线分析,以评估诊断性能。最后,进行了生存分析,以进一步评估 DLS 在风险分层方面的潜力。多变量分析显示,CT得出的高受影响肺容积/总肺活量(ALV/TLC)比值、高内脏脂肪组织面积(VAT)和低胸肌横截面积(CSA)是导致慢性阻塞性肺疾病加重的独立风险因素。在内部队列中,DLS 的 ROC (AUC) 值为 0.88(95%CI,0.82-0.92),在外部队列中为 0.86(95%CI,0.81-0.89),优于恶化史和体重指数、气流阻塞、呼吸困难和运动能力(BODE)指数。DeLong 检验显示,在测试队列中,该系统与传统评分之间存在显著性差异(P < 0.05)。在生存分析中,风险较高的患者容易发生病情加重事件。新发现的 CT 生物标记物(ALV/TLC 比值、VAT 和胸肌 CSA)可能有助于研究导致病情恶化的潜在机制。
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