Wang Hongwei, Jia Qiyue, Wang Yan, Xue Wenming, Jiang Qiyue, Ning Fuao, Wang Jiaxin, Zhu Zhonghui, Tian Lin
Department of Occupational and Environmental Health, School of Public Health, Capital Medical University, Beijing, 100069, China.
Beijing Key Laboratory of Environmental Toxicology, Capital Medical University, Beijing, 100069, China.
Heliyon. 2024 May 6;10(9):e30651. doi: 10.1016/j.heliyon.2024.e30651. eCollection 2024 May 15.
Silicosis is a progressive pulmonary fibrosis disease caused by long-term inhalation of silica. The early diagnosis and timely implementation of intervention measures are crucial in preventing silicosis deterioration further. However, the lack of screening and diagnostic measures for early-stage silicosis remains a significant challenge. In this study, silicosis models of varying severity were established through a single exposure to silica with different doses (2.5mg/mice or 5mg/mice) and durations (4 weeks or 12 weeks). The diagnostic performance of computed tomography (CT) quantitative analysis was assessed using lung density biomarkers and the lung density distribution histogram, with a particular focus on non-aerated lung volume. Subsequently, we developed and evaluated a stacking learning model for early diagnosis of silicosis after extracting and selecting features from CT images. The CT quantitative analysis reveals that while the lung densitometric biomarkers and lung density distribution histogram, as traditional indicators, effectively differentiate severe fibrosis models, they are unable to distinguish early-stage silicosis. Furthermore, these findings remained consistent even when employing non-aerated areas, which is a more sensitive indicator. By establishing a radiomics stacking learning model based on non-aerated areas, we can achieve remarkable diagnostic performance to distinguish early-stage silicosis, which can provide a valuable tool for clinical assistant diagnosis. This study reveals the potential of using non-aerated lung areas as a region of interest in stacking learning for early diagnosis of silicosis, providing new insights into early detection of this disease.
矽肺是一种因长期吸入二氧化硅而导致的进行性肺纤维化疾病。早期诊断并及时采取干预措施对于防止矽肺进一步恶化至关重要。然而,缺乏针对早期矽肺的筛查和诊断措施仍然是一项重大挑战。在本研究中,通过单次暴露于不同剂量(2.5毫克/只小鼠或5毫克/只小鼠)和不同时长(4周或12周)的二氧化硅建立了不同严重程度的矽肺模型。使用肺密度生物标志物和肺密度分布直方图评估计算机断层扫描(CT)定量分析的诊断性能,特别关注非充气肺体积。随后,在从CT图像中提取和选择特征后,我们开发并评估了一种用于矽肺早期诊断的堆叠学习模型。CT定量分析表明,作为传统指标的肺密度生物标志物和肺密度分布直方图虽然能有效区分重度纤维化模型,但无法区分早期矽肺。此外,即使采用更敏感的指标非充气区域,这些结果仍然一致。通过基于非充气区域建立放射组学堆叠学习模型,我们能够实现卓越的诊断性能以区分早期矽肺,这可为临床辅助诊断提供有价值的工具。本研究揭示了将非充气肺区域用作堆叠学习中早期诊断矽肺的感兴趣区域的潜力,为该疾病的早期检测提供了新的见解。