Division of Pulmonary Medicine, Department of Internal Medicine, Keio University School of Medicine, 35 Shinanomachi, Shinjuku-ku, Tokyo, 160-8582, Japan.
Department of Respiratory Medicine, Graduate School of Medicine, Kyoto University, 54 Kawahara-cho, Shogoin, Sakyo-ku, Kyoto, 606-8507, Japan.
Respir Res. 2023 Oct 5;24(1):241. doi: 10.1186/s12931-023-02530-2.
Computed tomography (CT) imaging and artificial intelligence (AI)-based analyses have aided in the diagnosis and prediction of the severity of COVID-19. However, the potential of AI-based CT quantification of pneumonia in assessing patients with COVID-19 has not yet been fully explored. This study aimed to investigate the potential of AI-based CT quantification of COVID-19 pneumonia to predict the critical outcomes and clinical characteristics of patients with residual lung lesions.
This retrospective cohort study included 1,200 hospitalized patients with COVID-19 from four hospitals. The incidence of critical outcomes (requiring the support of high-flow oxygen or invasive mechanical ventilation or death) and complications during hospitalization (bacterial infection, renal failure, heart failure, thromboembolism, and liver dysfunction) was compared between the groups of pneumonia with high/low-percentage lung lesions, based on AI-based CT quantification. Additionally, 198 patients underwent CT scans 3 months after admission to analyze prognostic factors for residual lung lesions.
The pneumonia group with a high percentage of lung lesions (N = 400) had a higher incidence of critical outcomes and complications during hospitalization than the low percentage group (N = 800). Multivariable analysis demonstrated that AI-based CT quantification of pneumonia was independently associated with critical outcomes (adjusted odds ratio [aOR] 10.5, 95% confidence interval [CI] 5.59-19.7), as well as with oxygen requirement (aOR 6.35, 95% CI 4.60-8.76), IMV requirement (aOR 7.73, 95% CI 2.52-23.7), and mortality rate (aOR 6.46, 95% CI 1.87-22.3). Among patients with follow-up CT scans (N = 198), the multivariable analysis revealed that the pneumonia group with a high percentage of lung lesions on admission (aOR 4.74, 95% CI 2.36-9.52), older age (aOR 2.53, 95% CI 1.16-5.51), female sex (aOR 2.41, 95% CI 1.13-5.11), and medical history of hypertension (aOR 2.22, 95% CI 1.09-4.50) independently predicted persistent residual lung lesions.
AI-based CT quantification of pneumonia provides valuable information beyond qualitative evaluation by physicians, enabling the prediction of critical outcomes and residual lung lesions in patients with COVID-19.
计算机断层扫描(CT)成像和基于人工智能(AI)的分析已有助于 COVID-19 的诊断和严重程度预测。然而,基于人工智能的 CT 定量肺炎在评估 COVID-19 患者方面的潜力尚未得到充分探索。本研究旨在探讨基于人工智能的 CT 定量 COVID-19 肺炎预测具有残留肺部病变的患者发生危急结局和临床特征的可能性。
这是一项回顾性队列研究,纳入了来自四家医院的 1200 名住院 COVID-19 患者。根据基于人工智能的 CT 定量,比较肺炎高/低百分比肺病变组之间的危急结局(需要高流量氧或有创机械通气支持或死亡)和住院期间并发症(细菌感染、肾功能衰竭、心力衰竭、血栓栓塞和肝功能障碍)的发生率。此外,198 名患者在入院后 3 个月进行 CT 扫描,以分析残留肺部病变的预后因素。
肺炎高百分比肺病变组(N=400)的危急结局和住院期间并发症的发生率高于低百分比组(N=800)。多变量分析表明,基于人工智能的肺炎 CT 定量与危急结局独立相关(调整优势比[OR] 10.5,95%置信区间[CI] 5.59-19.7),与氧需求(OR 6.35,95% CI 4.60-8.76)、有创机械通气需求(OR 7.73,95% CI 2.52-23.7)和死亡率(OR 6.46,95% CI 1.87-22.3)相关。在有随访 CT 扫描的患者中(N=198),多变量分析显示,入院时肺炎高百分比肺病变组(OR 4.74,95% CI 2.36-9.52)、年龄较大(OR 2.53,95% CI 1.16-5.51)、女性(OR 2.41,95% CI 1.13-5.11)和高血压病史(OR 2.22,95% CI 1.09-4.50)是预测持续存在残留肺部病变的独立因素。
基于人工智能的肺炎 CT 定量提供了医生定性评估之外的有价值信息,能够预测 COVID-19 患者的危急结局和残留肺部病变。