Integrated analysis of remote sensing with meteorological and health data for allergic rhinitis forecasting in Tianjin

IF 3 3区 地球科学 Q2 BIOPHYSICS
Yu-Di Guo, Yuan Wang, Wen-Yan Fan, Gen Li
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Abstract

Long time series of vegetation monitoring can be carried out by remote sensing data, the level of urban greening is objectively described, and the spatial characteristics of plant pollen are indirectly understood. Pollen is the main allergen in patients with seasonal allergic rhinitis. Meteorological factors affect the release and diffusion of pollen. Therefore, studying of the complex relationship between meteorological factors and allergic rhinitis is essential for effective prevention and treatment of the disease. In this study, we leverage remote sensing data for a comprehensive decade-long analysis of urban greening in Tianjin, which exhibits an annual increase in vegetative cover of 0.51 per annum, focusing on its impact on allergic rhinitis through changes in pollen distribution. Utilizing high-resolution imagery, we quantify changes in urban Fractional Vegetation Coverage (FVC) and its correlation with pollen types and allergic rhinitis cases. Our analysis reveals a significant correlation between FVC trends and pollen concentrations, with a surprising value of 0.71, highlighting the influence of urban greenery on allergenic pollen levels. We establish a robust connection between the seasonal patterns of pollen outbreaks and allergic rhinitis consultations, with a noticeable increase in consultations during high pollen seasons. our findings indicate a higher allergenic potential of herbaceous compared to woody vegetation. This nuanced understanding underscores the importance of pollen sensitivity, alongside concentration, in driving allergic rhinitis incidents. Utilizing a Generalized Linear Model, significant features influencing the number of visits for allergic rhinitis (P < 0.05) were identified. Both GLM and LSTM models were employed to forecast the visitation volumes for rhinitis during the spring and summer-autumn of 2022. Upon validation, it was found that the R² values between the simulated and actual values for both GLM and LSTM models surpassed the 95% confidence threshold. Moreover, the R² values for the summer-autumn seasons (GLM: 0.56, LSTM: 0.72) were higher than those for spring (GLM: 0.22, LSTM: 0.47). Comparing the errors between the simulated and actual values of GLM and LSTM models, LSTM exhibited higher simulation precision in both spring and summer-autumn seasons, demonstrating superior simulation performance. Overall, our study pioneers the integration of remote sensing with meteorological and health data for allergic rhinitis forecasting. This integrative approach provides valuable insights for public health planning, particularly in urban settings, and lays the groundwork for advanced, location-specific allergenic pollen forecasting and mitigation strategies.

Abstract Image

Abstract Image

遥感与气象和健康数据在天津过敏性鼻炎预报中的综合分析。
通过遥感数据可以对植被进行长时间序列监测,客观描述城市绿化水平,间接了解植物花粉的空间特征。花粉是季节性过敏性鼻炎患者的主要过敏原。气象因素会影响花粉的释放和扩散。因此,研究气象因素与过敏性鼻炎之间的复杂关系对于有效预防和治疗过敏性鼻炎至关重要。在本研究中,我们利用遥感数据对天津城市绿化进行了长达十年的综合分析,天津的植被覆盖率每年增加 0.51%,重点分析了其通过花粉分布变化对过敏性鼻炎的影响。利用高分辨率图像,我们量化了城市植被覆盖率(FVC)的变化及其与花粉类型和过敏性鼻炎病例的相关性。我们的分析表明,植被覆盖率的变化趋势与花粉浓度之间存在明显的相关性,其相关性值达到了令人惊讶的 0.71,这凸显了城市绿化对过敏性花粉水平的影响。我们在花粉爆发的季节性模式与过敏性鼻炎就诊之间建立了强有力的联系,在花粉高发季节,就诊人数明显增加。这种细致入微的理解强调了花粉敏感性和浓度在过敏性鼻炎发病中的重要性。利用广义线性模型,影响过敏性鼻炎就诊次数的重要特征(P
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来源期刊
CiteScore
6.40
自引率
9.40%
发文量
183
审稿时长
1 months
期刊介绍: The Journal publishes original research papers, review articles and short communications on studies examining the interactions between living organisms and factors of the natural and artificial atmospheric environment. Living organisms extend from single cell organisms, to plants and animals, including humans. The atmospheric environment includes climate and weather, electromagnetic radiation, and chemical and biological pollutants. The journal embraces basic and applied research and practical aspects such as living conditions, agriculture, forestry, and health. The journal is published for the International Society of Biometeorology, and most membership categories include a subscription to the Journal.
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