Prediction Model for Annual Variation in Total Pollen by Allergenic Trees in Korean Cities.

IF 4.1 2区 医学 Q2 ALLERGY
Kyu Rang Kim, Mae Ja Han, Young Jong Han, Yong Hee Lee, Jae-Won Oh
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引用次数: 0

Abstract

Purpose: Pollen forecasting systems can provide information for coping with respiratory allergies. They estimate daily pollen production, dispersal, deposition, and removal based on daily weather conditions to predict daily pollen concentrations and provide allergy warnings. As of 2023, the Korea Meteorological Administration (KMA) provides 2-day forecast of allergenic pollens. However, unlike these models, long-term analysis of annual observations of tree pollen reveal annual variations. Therefore, in this study, we aimed to develop annual prediction models for allergenic tree pollens based on long-term multi-site pollen and meteorological data.

Methods: Daily pollen concentrations were observed using Hirst-type volumetric spore traps at nine sites in Korea from 1998 to 2021, and daily weather data from the closest KMA stations were utilized. Models were developed to predict the seasonal pollen integral of seven tree species based on monthly mean temperature, wind speed, and total precipitation using three variable selection methods: 1) the t-test based key variable screening followed by linear regression with stepwise procedure (TM), 2) direct linear regression with stepwise procedure from the full variable model (FM), and 3) LASSO regression from the full variable model (LM).

Results: Data obtained during 1998-2017 and 2018=2021 were utilized for model development and validation, respectively. The root mean squared error, mean absolute error, mean error, and coefficient of determination (R²) revealed that the TM models were best suited for actual forecasting, even though R² in the TM model was lower than those of the FM and LM models.

Conclusions: The annual variation model in this study can be integrated with the daily pollen forecast model by controlling the annual pollen potential, and the accuracy of the daily forecast can be improved accordingly.

韩国城市致敏树种花粉总量年变化预测模型
目的:花粉预报系统可为应对呼吸道过敏提供信息。花粉预报系统根据每天的天气情况估算每天的花粉产生、散布、沉积和清除情况,从而预测每天的花粉浓度并发出过敏警告。截至 2023 年,韩国气象局(KMA)提供了两天的过敏原花粉预报。然而,与这些模型不同的是,对树木花粉年度观测数据的长期分析显示出每年的变化。因此,在本研究中,我们的目标是根据长期多站点花粉和气象数据,建立过敏原树木花粉的年度预测模型:方法:从 1998 年到 2021 年,我们在韩国的九个地点使用赫斯特式体积孢子捕集器观测了每日的花粉浓度,并利用了距离最近的韩国气象厅站点的每日气象数据。根据月平均气温、风速和总降水量建立了七个树种的季节性花粉积分预测模型,采用了三种变量选择方法:1)基于t检验的关键变量筛选,然后采用逐步法进行线性回归(TM);2)从全变量模型中采用逐步法进行直接线性回归(FM);3)从全变量模型中采用LASSO回归(LM):1998-2017年和2018=2021年的数据分别用于模型开发和验证。均方根误差、平均绝对误差、平均误差和判定系数(R²)显示,尽管 TM 模型的 R² 低于 FM 和 LM 模型,但 TM 模型最适合实际预测:本研究中的年变化模型可通过控制年花粉潜势与日花粉预报模型相结合,并可相应提高日预报的准确性。
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来源期刊
CiteScore
6.10
自引率
6.80%
发文量
53
审稿时长
>12 weeks
期刊介绍: The journal features cutting-edge original research, brief communications, and state-of-the-art reviews in the specialties of allergy, asthma, and immunology, including clinical and experimental studies and instructive case reports. Contemporary reviews summarize information on topics for researchers and physicians in the fields of allergy and immunology. As of January 2017, AAIR do not accept case reports. However, if it is a clinically important case, authors can submit it in the form of letter to the Editor. Editorials and letters to the Editor explore controversial issues and encourage further discussion among physicians dealing with allergy, immunology, pediatric respirology, and related medical fields. AAIR also features topics in practice and management and recent advances in equipment and techniques for clinicians concerned with clinical manifestations of allergies and pediatric respiratory diseases.
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