School of Medicine, University of New Mexico, Albuquerque, NM, USA.
College of Nursing, University of New Mexico College of Nursing, Albuquerque, NM, USA.
J Expo Sci Environ Epidemiol. 2024 May;34(3):529-537. doi: 10.1038/s41370-023-00607-0. Epub 2023 Oct 17.
Understanding lung deposition dose of black carbon is critical to fully reconcile epidemiological evidence of combustion particles induced health effects and inform the development of air quality metrics concerning black carbon. Macrophage carbon load (MaCL) is a novel cytology method that quantifies lung deposition dose of black carbon, however it has limited feasibility in large-scale epidemiological study due to the labor-intensive manual counting.
To assess the association between MaCL and episodic elevation of combustion particles; to develop artificial intelligence based counting algorithm for MaCL assay.
Sputum slides were collected during episodic elevation of ambient PM (n = 49, daily PM > 10 µg/m for over 2 weeks due to wildfire smoke intrusion in summer and local wood burning in winter) and low PM period (n = 39, 30-day average PM < 4 µg/m) from the Lovelace Smokers cohort.
Over 98% individual carbon particles in macrophages had diameter <1 µm. MaCL levels scored manually were highly responsive to episodic elevation of ambient PM and also correlated with lung injury biomarker, plasma CC16. The association with CC16 became more robust when the assessment focused on macrophages with higher carbon load. A Machine-Learning algorithm for Engulfed cArbon Particles (MacLEAP) was developed based on the Mask Region-based Convolutional Neural Network. MacLEAP algorithm yielded excellent correlations with manual counting for number and area of the particles. The algorithm produced associations with ambient PM and plasma CC16 that were nearly identical in magnitude to those obtained through manual counting.
Understanding lung black carbon deposition is crucial for comprehending health effects of combustion particles. We developed "Machine-Learning algorithm for Engulfed cArbon Particles (MacLEAP)", the first artificial intelligence algorithm for quantifying airway macrophage black carbon. Our study bolstered the algorithm with more training images and its first use in air pollution epidemiology. We revealed macrophage carbon load as a sensitive biomarker for heightened ambient combustion particles due to wildfires and residential wood burning.
理解黑碳的肺部沉积剂量对于充分解释燃烧颗粒引起的健康影响的流行病学证据以及为黑碳空气质量指标的制定提供信息至关重要。巨噬细胞碳负荷(MaCL)是一种新型细胞学方法,可定量测量黑碳的肺部沉积剂量,但由于其手动计数的劳动强度大,在大规模流行病学研究中可行性有限。
评估 MaCL 与燃烧颗粒的偶发性升高之间的关联;开发用于 MaCL 测定的人工智能计数算法。
在夏季因野火烟雾入侵和冬季当地木柴燃烧导致环境 PM (n=49,每日 PM > 10μg/m 超过 2 周)和低 PM 期(n=39,30 天平均 PM < 4μg/m )期间从洛弗莱斯吸烟者队列中收集痰片。
超过 98%的巨噬细胞内碳颗粒的直径 <1μm。手动评分的 MaCL 水平对环境 PM 的偶发性升高高度敏感,并且与肺损伤生物标志物血浆 CC16 相关。当评估重点集中在碳负荷较高的巨噬细胞上时,与 CC16 的关联更加稳健。基于基于掩模区域的卷积神经网络,开发了用于吞噬碳颗粒的机器学习算法(MacLEAP)。MacLEAP 算法与手动计数的颗粒数量和面积具有极好的相关性。该算法与环境 PM 和血浆 CC16 的关联在幅度上与通过手动计数获得的关联几乎相同。
了解肺部黑碳沉积对于理解燃烧颗粒的健康影响至关重要。我们开发了“用于吞噬碳颗粒的机器学习算法(MacLEAP)”,这是第一个用于量化气道巨噬细胞黑碳的人工智能算法。我们用更多的训练图像和它在空气污染流行病学中的首次应用来增强该算法。我们揭示了巨噬细胞碳负荷作为因野火和居民木柴燃烧而导致的环境中燃烧颗粒升高的敏感生物标志物。