Meteorological factors

气象因素
  • 文章类型: Journal Article
    目的:蒿属(菊科)是生长在世界北温带地区的杂草和红土植物。其中许多用于医学和化妆品行业以及烹饪目的。该属植物的花粉粒含有最重要的空气过敏原。
    方法:2001-2022年在卢布林进行的一项用容量法进行的空气生物学研究。建立了季节参数的趋势线。进行了Spearman的相关性和逐步回归分析,以确定花粉季节的各种参数与气象因子之间的关系。还进行了PCA分析以在视觉上比较花粉季节。
    结果:在卢布林,波兰中东部,蒿属花粉季节平均从7月的第二个十天持续到8月底,它的开始取决于4月和5月的温度。最高的花粉浓度主要记录在8月上半月,并且在很大程度上取决于6月和7月的平均温度。9月记录的花粉季节的第二个高峰与黄花蒿花粉的存在有关。6月的强烈阳光以及6月和7月的较高温度导致22年中蒿的年花粉总量显着减少(减少了65%)。寻常蒿在卢布林地区很丰富,对浮游生物中的蒿花粉量有很大贡献。
    结论:蒿属花粉数量的下降趋势是夏季观察到的温度升高的结果,以及不断下降的降雨率。全球变暖效应对青蒿属植物极为不利,因为它们需要潮湿的土壤基质来生长。
    OBJECTIVE: Species of the genus Artemisia (Asteraceae) are weeds and ruderal plants growing in northern temperate regions of the world. Many of them are used in medicine and the cosmetic industry and for culinary purposes. Pollen grains of plants of this genus contain the most important aeroallergens.
    METHODS: An aerobiological study conducted with the volumetric method in Lublin in 2001-2022. Trend lines for the season parameters were established. Spearman\'s correlation and stepwise regression analyses were carried out to determine relationships between various parameters of the pollen season and meteorological factors. PCA analysis was also carried out to visually compare the pollen seasons.
    RESULTS: In Lublin, central-eastern Poland, the Artemisia pollen season lasted on average from the second ten days of July to the end of August, with its beginning depending on the temperature in April and May. The highest pollen concentrations were mainly recorded in the first half of August and were largely dependent on the mean temperature in June and July. The second peak in the pollen season recorded in September was associated with the presence of Artemisia annua pollen. Intense sunshine in June and the higher temperatures in June and July resulted in significant reduction in the Artemisia annual pollen sum (by 65%) over 22 years. Artemisia vulgaris is abundant in the Lublin region and contributes substantially to the amount of Artemisia pollen in the aeroplankton.
    CONCLUSIONS: The downward trend in the amount of Artemisia pollen was a result of the increase in temperatures observed in the summer months, and the declining rainfall rates. The global warming effect is extremely unfavourable for plants of Artemisia vulgaris, as they require moist soil substrates for growth.
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  • 文章类型: Journal Article
    鼠疫是一种重要的全球性传染病,它的传播与宿主和跳蚤种群有关。气象条件会影响跳蚤种群和寄主密度,从而影响鼠疫的爆发。调查气象因素之间的联系,跳蚤种群,内蒙古自然鼠疫疫源地的啮齿动物密度可以帮助预测和管理鼠疫的暴发。
    跳蚤指数的月度数据,啮齿动物密度,气象因素,并收集了研究区的归一化植被指数(NDVI)。采用广义加法模型(GAM)分析了气象因素对跳蚤指数和啮齿动物密度的非线性和滞后效应。采用结构方程模型(SEM)研究了气象因素之间的关系,NDVI,跳蚤索引,和啮齿动物密度。
    GAM分析表明,温度,降水,相对湿度,NDVI具有显著的线性,非线性,以及对蒙古沙鼠密度和跳蚤指数的时滞影响。SEM分析表明,气象因素可以直接影响蒙古沙鼠的密度和跳蚤指数。或间接影响NDVI,随后影响沙鼠密度和跳蚤指数。
    气象因素主要通过影响NDVI以及跳蚤指数与沙鼠密度的关系间接影响沙鼠密度和跳蚤指数。这项研究为气象因素和NDVI在影响媒介啮齿动物系统中的重要性提供了额外的支持,为预测和管理鼠疫疫情提供有价值的见解。
    UNASSIGNED: Plague is a significant global infectious disease, its spread is linked to host and flea populations. Meteorological conditions can impact flea populations and host densities, hence influencing plague outbreaks. Investigating the connection between meteorological factors, flea populations, and rodent densities in Inner Mongolia\'s natural plague foci can aid in predicting and managing plague outbreaks.
    UNASSIGNED: Monthly data on flea index, rodent density, meteorological factors, and normalized difference vegetation index (NDVI) were collected for the study area. Generalized additive modeling (GAM) was used to analyze the non-linear and lag effects of meteorological factors on flea index and rodent density. Structural equation modeling (SEM) was employed to investigate the relationships among meteorological factors, NDVI, flea index, and rodent density.
    UNASSIGNED: GAM analysis revealed that temperature, precipitation, relative humidity, and NDVI had significant linear, non-linear, and time-lagged impacts on the density of Mongolian gerbils and the flea index. SEM analysis indicated that meteorological factors could directly influence the density and flea index of Mongolian gerbils, or indirectly impact NDVI, subsequently influencing gerbil density and the flea index.
    UNASSIGNED: Meteorological factors primarily influence gerbil density and flea index indirectly by affecting NDVI and the relationship between flea index and gerbil density. This study offers additional support for the significance of meteorological factors and NDVI in influencing the vector-rodent system, offering valuable insights for predicting and managing plague outbreaks.
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  • 文章类型: Journal Article
    在2019年冠状病毒病(COVID-19)大流行的全球挑战中,准确预测每日新病例对于防疫和社会经济计划至关重要。与传统的当地相比,基于一维时间序列数据的感染模型,这项研究引入了一种创新的方法,将一个地区新病例的短期预测问题表述为多维,输入和预测目标的网格化时间序列。提出了COVID-19(ConvLSTM)的时空深度预测模型,并通过整合历史气象因素(Meteor-ConvLSTM)进一步完善ConvLSTM,考虑气象因素对COVID-19传播的影响。评价10个气象因子与COVID-19动态进展的相关性,采用空间分析技术(空间自相关分析,趋势面分析,等。)来描述疫情的时空特征。利用原始的ConvLSTM,引入了人工神经网络层,以了解气象因素如何影响感染传播,以0.01°×0.01°像素分辨率提供5天的预测。使用来自上海3.15疫情的真实数据集的模拟结果证明了Meteor-ConvLSTM的有效性,RMSE降低为0.110,R2增加为0.125(原始ConvLSTM:RMSE=0.702,R2=0.567;流星-ConvLSTM:RMSE=0.592,R2=0.692),展示其对流行病学特征调查的效用,传输动力学,和流行病的发展。
    In the global challenge of Coronavirus disease 2019 (COVID-19) pandemic, accurate prediction of daily new cases is crucial for epidemic prevention and socioeconomic planning. In contrast to traditional local, one-dimensional time-series data-based infection models, the study introduces an innovative approach by formulating the short-term prediction problem of new cases in a region as multidimensional, gridded time series for both input and prediction targets. A spatial-temporal depth prediction model for COVID-19 (ConvLSTM) is presented, and further ConvLSTM by integrating historical meteorological factors (Meteor-ConvLSTM) is refined, considering the influence of meteorological factors on the propagation of COVID-19. The correlation between 10 meteorological factors and the dynamic progression of COVID-19 was evaluated, employing spatial analysis techniques (spatial autocorrelation analysis, trend surface analysis, etc.) to describe the spatial and temporal characteristics of the epidemic. Leveraging the original ConvLSTM, an artificial neural network layer is introduced to learn how meteorological factors impact the infection spread, providing a 5-day forecast at a 0.01° × 0.01° pixel resolution. Simulation results using real dataset from the 3.15 outbreak in Shanghai demonstrate the efficacy of Meteor-ConvLSTM, with reduced RMSE of 0.110 and increased R 2 of 0.125 (original ConvLSTM: RMSE = 0.702, R 2 = 0.567; Meteor-ConvLSTM: RMSE = 0.592, R 2 = 0.692), showcasing its utility for investigating the epidemiological characteristics, transmission dynamics, and epidemic development.
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  • 文章类型: Journal Article
    基于湘潭臭氧(O3)监测数据和2020-2022年的气象观测数据,我们研究了臭氧污染特征以及气象因素对湘潭日最大8-h平均臭氧(O3-8h)浓度的影响。因此,在所考虑的时期内,我们观察到湘潭的O3-8h浓度显着增加以及显着的季节性变化。臭氧和温度变化响应斜率(KO3-T)表明局部排放对O3-8h生成没有显著影响。Further,平均O3-8h浓度和最高温度(Tmax)值呈多项式分布。具体来说,在Tmax<27°C时,随着温度的升高,它几乎呈线性增加,Tmax在27和37°C之间,随着温度的升高,它显示出向上的曲线趋势,但速度要低得多。然后,在Tmax>37°C时,它随着温度的升高而降低。相对于相对湿度(RH),当RH在45-65%范围内变化时,平均O3-8h浓度主要超过标准值,这是O3污染的关键湿度范围,O3-8h浓度与RH之间的相关曲线拐点出现在〜55%。此外,在风速(WSs)低于1.5m·s-1时,O3-8h浓度迅速增加,而在WSs在1.5-2米·s-1范围内,它以更快的速度增长。然而,在WSs>2m·s-1时,随WS的增加缓慢下降。O3-8h浓度在湘潭主导风向偏东或偏东南时也有超过标准值的趋势。
    Based on ozone (O3) monitoring data for Xiangtan and meteorological observation data for 2020-2022, we examined ozone pollution characteristics and the effects of meteorological factors on daily maximum 8-h average ozone (O3-8h) concentrations in Xiangtan. Thus, we observed significant increases as well as notable seasonal variations in O3-8h concentrations in Xiangtan during the period considered. The ozone and temperature change response slope (KO3-T) indicated that local emissions had no significant effect on O3-8h generation. Further, average O3-8h concentration and maximum temperature (Tmax) values showed a polynomial distribution. Specifically, at Tmax < 27 °C, it increased almost linearly with increasing temperature, and at Tmax between 27 and 37 °C, it showed an upward curvilinear trend as temperature increased, but at a much lower rate. Then, at Tmax > 37 °C, it decreased with increasing temperature. With respect to relative humidity (RH), the average O3-8h concentration primarily exceeded the standard value when RH varied in the range of 45-65%, which is the key humidity range for O3 pollution, and the inflection point for the correlation curve between O3-8h concentration and RH appeared at ~55%. Furthermore, at wind speeds (WSs) below 1.5 m∙s-1, O3-8h concentration increased rapidly, and at WSs in the 1.5-2 m∙s-1 range, it increased at a much faster rate. However, at WSs > 2 m∙s-1, it decreased slowly with increasing WS. O3-8h concentration also showed the tendency to exceed the standard value when the dominant wind directions in Xiangtan were easterly or southeasterly.
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  • 文章类型: Journal Article
    猩红热(SF)是一种主要影响儿童的急性呼吸道传播疾病。气象因素和空气污染物对儿童SF的影响已被证明。但西北地区的相关证据仍然缺乏。根据兰州每周报告的儿童SF病例,中国西北,从2014年到2018年,我们使用了地理探测器,分布滞后非线性模型(DLNM),和双变量响应模型,探讨气象因素和空气污染物对SF的影响。发现臭氧(O3),一氧化碳(CO),二氧化硫(SO2),温度,压力,基于地理探测器的水汽压力和风速与SF显着相关。以中位数为参考,高温的影响,低压和高压对SF有风险影响(相对风险(RR)>1),在极端条件下,危险影响仍然显著。高O3在6周延迟时效果最强,RR为5.43(95CI:1.74,16.96)。高SO2的风险效应在暴露的一周内最强,最大风险效应为1.37(95CI:1.08,1.73)。相互作用显示出高温与O3,高压与高SO2,高二氧化氮(NO2)和直径小于10μm的高颗粒物(PM10)之间的协同作用,分别。总之,高温,压力,高O3和SO2是影响儿童SF发生的最重要因素,为后续研究和疾病预防政策制定提供理论支持。
    Scarlet fever (SF) is an acute respiratory transmitted disease that primarily affects children. The influence of meteorological factors and air pollutants on SF in children has been proved, but the relevant evidence in Northwest China is still lacking. Based on the weekly reported cases of SF in children in Lanzhou, northwest China, from 2014 to 2018, we used geographical detectors, distributed lag nonlinear models (DLNM), and bivariate response models to explore the influence of meteorological factors and air pollutants with SF. It was found that ozone (O3), carbon monoxide (CO), sulfur dioxide (SO2), temperature, pressure, water vapor pressure and wind speed were significantly correlated with SF based on geographical detectors. With the median as reference, the influence of high temperature, low pressure and high pressure on SF has a risk effect (relative risk (RR) > 1), and under extreme conditions, the dangerous effect was still significant. High O3 had the strongest effect at a 6-week delay, with an RR of 5.43 (95%CI: 1.74,16.96). The risk effect of high SO2 was strongest in the week of exposure, and the maximum risk effect was 1.37 (95%CI: 1.08,1.73). The interactions showed synergistic effects between high temperatures and O3, high pressure and high SO2, high nitrogen dioxide (NO2) and high particulate matter with diameter of less than 10 μm (PM10), respectively. In conclusion, high temperature, pressure, high O3 and SO2 were the most important factors affecting the occurrence of SF in children, which will provide theoretical support for follow-up research and disease prevention policy formulation.
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  • 文章类型: Journal Article
    背景:急性中耳炎(AOM)是一种常见的儿童急性疾病,每年有1360万儿科就诊,通常源于上呼吸道感染(URI),并受到空气污染和寒冷季节等环境因素的影响。
    方法:这里,我们利用全港住院数据来调查气象因素之间的关系,空气污染物,流感感染,以及1998年至2019年在香港观察到的儿童AOM。拟泊松广义可加模型,结合分布滞后非线性模型,被用来检查儿童每周AOM入院率与每周流感样疾病阳性(ILI+)率之间的关系,以及空气污染物(即,氧化剂气体,二氧化硫,和细颗粒物),同时考虑气象变化。
    结果:在整个22年期间,年龄≤15岁的儿童因AOM入院21,224例。在氧化剂气体(65.9ppm)和细颗粒物(62.2μg/m3)的第95百分位数浓度下,AOM的累积调整相对风险(ARR)分别为1.15(95%CI,1.04-1.28)和1.07(95%CI,0.97-1.18)。参照他们的浓度中位数。所有类型和类型特异性ILI+率的ARR表现出单调增加趋势。将引用设置为零,在ILI+总比率的第95百分位数,AOM的累积ARR上升到1.42(95%CI,1.29-1.56),至1.07(95%CI,1.01-1.14),1.19(95%CI,1.11-1.27),和1.22(95%CI,1.13-1.32)ILI+A/H1N1、A/H3N2和B,分别。
    结论:我们的研究结果表明,需要实施空气污染控制和儿童流感疫苗接种的政策,这可能对预防儿童AOM有重大影响。
    BACKGROUND: Acute otitis media (AOM) is a prevalent childhood acute illness, with 13.6 million pediatric office visits annually, often stemming from upper respiratory tract infections (URI) and affected by environmental factors like air pollution and cold seasons.
    METHODS: Herein, we made use of territory-wide hospitalization data to investigate the relationships between meteorological factors, air pollutants, influenza infection, and AOM for children observed from 1998 to 2019 in Hong Kong. Quasi-Poisson generalized additive model, combined with a distributed-lag non-linear model, was employed to examine the relationship between weekly AOM admissions in children and weekly influenza-like illness-positive (ILI +) rates, as well as air pollutants (i.e., oxidant gases, sulfur dioxide, and fine particulate matter), while accounting for meteorological variations.
    RESULTS: There were 21,224 hospital admissions due to AOM for children aged ≤ 15 years throughout a 22-year period. The cumulative adjusted relative risks (ARR) of AOM were 1.15 (95% CI, 1.04-1.28) and 1.07 (95% CI, 0.97-1.18) at the 95th percentile concentration of oxidant gases (65.9 ppm) and fine particulate matter (62.2 μg/m3) respectively, with reference set to their medians of concentration. The ARRs exhibited a monotone increasing trend for all-type and type-specific ILI + rates. Setting the reference to zero, the cumulative ARRs of AOM rose to 1.42 (95% CI, 1.29-1.56) at the 95th percentile of ILI + Total rate, and to 1.07 (95% CI, 1.01-1.14), 1.19 (95% CI, 1.11-1.27), and 1.22 (95% CI, 1.13-1.32) for ILI + A/H1N1, A/H3N2, and B, respectively.
    CONCLUSIONS: Our findings suggested that policy on air pollution control and influenza vaccination for children need to be implemented, which might have significant implications for preventing AOM in children.
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  • 文章类型: Journal Article
    背景:肾综合征出血热(HFRS)继续对中国人口构成重大公共卫生威胁。先前的流行病学证据表明,HFRS对气候敏感,并受气象因素的影响。然而,过去的研究要么集中在太窄的地理区域,要么调查的时间段太早。迫切需要进行全面分析,以解释影响不同气候区HFRS发病率的气象因素的流行病学模式。
    目的:在本研究中,我们旨在描述HFRS的总体流行特征,并探讨中国不同气候水平下每月HFRS病例与气象因素之间的联系。
    方法:报告的HFRS病例和气象数据来自2015年至2021年期间中国151个城市。我们进行了三阶段分析,采用分布滞后非线性模型和广义加性模型来估计气象因素对HFRS的相互作用和边际效应。
    结果:本研究共纳入63,180例HFRS;流行趋势呈现季节性波动,模式在不同的气候区有所不同。温度对HFRS发病率的影响最大,最大滞后效应在中温带1个月时(-19ºC;相对风险[RR]1.64,95%CI1.24-2.15),0个月(28ºC;RR3.15,95%CI2.13-4.65)在暖温带,亚热带地区为0个月(4ºC;RR1.72,95%CI1.31-2.25)。发现了平均温度之间的相互作用,相对湿度,和不同温度区的降水。此外,不同温度层下降水和相对湿度对HFRS发病率的影响具有不同的特征。气象因素的滞后效应并没有在一个流行季节之后结束,但在接下来的1或2个季节逐渐减弱。
    结论:天气变化,尤其是低温,在我国HFRS的流行中起着重要作用。长期的滞后效应表明,在HFRS流行后必须进行持续干预。这一发现可以帮助公共卫生部门指导HFRS的预防和控制,并制定应对特定地区气候变化影响的策略。
    BACKGROUND: Hemorrhagic fever with renal syndrome (HFRS) continues to pose a significant public health threat to the population in China. Previous epidemiological evidence indicates that HFRS is climate sensitive and influenced by meteorological factors. However, past studies either focused on too-narrow geographical regions or investigated time periods that were too early. There is an urgent need for a comprehensive analysis to interpret the epidemiological patterns of meteorological factors affecting the incidence of HFRS across diverse climate zones.
    OBJECTIVE: In this study, we aimed to describe the overall epidemic characteristics of HFRS and explore the linkage between monthly HFRS cases and meteorological factors at different climate levels in China.
    METHODS: The reported HFRS cases and meteorological data were collected from 151 cities in China during the period from 2015 to 2021. We conducted a 3-stage analysis, adopting a distributed lag nonlinear model and a generalized additive model to estimate the interactions and marginal effects of meteorological factors on HFRS.
    RESULTS: This study included a total of 63,180 cases of HFRS; the epidemic trends showed seasonal fluctuations, with patterns varying across different climate zones. Temperature had the greatest impact on the incidence of HFRS, with the maximum hysteresis effects being at 1 month (-19 ºC; relative risk [RR] 1.64, 95% CI 1.24-2.15) in the midtemperate zone, 0 months (28 ºC; RR 3.15, 95% CI 2.13-4.65) in the warm-temperate zone, and 0 months (4 ºC; RR 1.72, 95% CI 1.31-2.25) in the subtropical zone. Interactions were discovered between the average temperature, relative humidity, and precipitation in different temperature zones. Moreover, the influence of precipitation and relative humidity on the incidence of HFRS had different characteristics under different temperature layers. The hysteresis effect of meteorological factors did not end after an epidemic season, but gradually weakened in the following 1 or 2 seasons.
    CONCLUSIONS: Weather variability, especially low temperature, plays an important role in epidemics of HFRS in China. A long hysteresis effect indicates the necessity of continuous intervention following an HFRS epidemic. This finding can help public health departments guide the prevention and control of HFRS and develop strategies to cope with the impacts of climate change in specific regions.
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  • 文章类型: Journal Article
    自2019年COVID-19大流行爆发以来,天气条件在影响传播中的作用一直不清楚,不同研究的结果各不相同。鉴于边境政策的变化和疫苗接种率比以前更高,这项研究旨在重新评估天气对COVID-19的影响,重点关注当地的气候影响。我们分析了每日COVID-19病例数据和天气因素,如温度,湿度,湿度风速,台湾六个地区的昼夜温度范围为2022年3月1日至8月15日。这项研究发现,新的COVID-19病例与每日最高温度和相对湿度呈正相关,而风速与日气温范围呈负相关。此外,在不稳定的环境条件因素(UECF,以RH*Tmax/WS计算),气候因子复合体(CFC)的种类,和确诊病例。调查结果强调了当地天气条件对COVID-19传播的影响,表明这些因素可以改变环境舒适度和人类行为,从而影响疾病传播。我们还引入了火气时期的概念来解释影响全球传染病爆发的周期性气候变化。这项研究强调了考虑局部和全球气候对传染病的影响的必要性。
    Since the onset of the COVID-19 pandemic in 2019, the role of weather conditions in influencing transmission has been unclear, with results varying across different studies. Given the changes in border policies and the higher vaccination rates compared to earlier conditions, this study aimed to reassess the impact of weather on COVID-19, focusing on local climate effects. We analyzed daily COVID-19 case data and weather factors such as temperature, humidity, wind speed, and a diurnal temperature range from 1 March to 15 August 2022 across six regions in Taiwan. This study found a positive correlation between maximum daily temperature and relative humidity with new COVID-19 cases, whereas wind speed and diurnal temperature range were negatively correlated. Additionally, a significant positive correlation was identified between the unease environmental condition factor (UECF, calculated as RH*Tmax/WS), the kind of Climate Factor Complex (CFC), and confirmed cases. The findings highlight the influence of local weather conditions on COVID-19 transmission, suggesting that such factors can alter environmental comfort and human behavior, thereby affecting disease spread. We also introduced the Fire-Qi Period concept to explain the cyclic climatic variations influencing infectious disease outbreaks globally. This study emphasizes the necessity of considering both local and global climatic effects on infectious diseases.
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  • 文章类型: Journal Article
    在过去的三年里,COVID-19对人类健康和经济稳定都造成了重大损害。分析COVID-19的原因和机制对其预防和缓解具有重要的理论和实践意义。气象因素在COVID-19传播中的作用至关重要,然而,他们的关系仍然是激烈辩论的主题。
    为了缓解短时间序列带来的问题,大型研究单位,以往研究中没有代表性的数据和线性研究方法,这项研究使用人口超过10万或50万的县或地区作为研究单位。当地爆发的开始取决于累计确诊病例超过100例。皮尔逊相关分析,采用广义加性模型(GAM)和分布滞后非线性模型(DLNM)分析了COVID-19每日新发病例与气象因素(温度,相对湿度,太阳辐射,表面压力,降水,风速)跨越美洲七个国家的440个县或地区,从2020年1月1日到2021年12月31日。
    每日新病例与气温等气象指标之间的线性相关性,相对湿度和太阳辐射不显著。然而,非线性相关性显著。温度关系的转折点,相对湿度和太阳辐射分别为5°C和23°C,74%和750kJ/m2,分别为。
    气象因素对COVID-19的影响是非线性的。与温度的关系有两个阈值:5°C和23°C。低于5°C和高于23°C,存在正相关,在5°C至23°C之间,相关性是负的。相对湿度和太阳辐射呈负相关,但是坡度的变化分别约为74%和750kJ/m2。
    UNASSIGNED: In the last three years, COVID-19 has caused significant harm to both human health and economic stability. Analyzing the causes and mechanisms of COVID-19 has significant theoretical and practical implications for its prevention and mitigation. The role of meteorological factors in the transmission of COVID-19 is crucial, yet their relationship remains a subject of intense debate.
    UNASSIGNED: To mitigate the issues arising from short time series, large study units, unrepresentative data and linear research methods in previous studies, this study used counties or districts with populations exceeding 100,000 or 500,000 as the study unit. The commencement of local outbreaks was determined by exceeding 100 cumulative confirmed cases. Pearson correlation analysis, generalized additive model (GAM) and distributed lag nonlinear model (DLNM) were used to analyze the relationship and lag effect between the daily new cases of COVID-19 and meteorological factors (temperature, relative humidity, solar radiation, surface pressure, precipitation, wind speed) across 440 counties or districts in seven countries of the Americas, spanning from January 1, 2020, to December 31, 2021.
    UNASSIGNED: The linear correlations between daily new cases and meteorological indicators such as air temperature, relative humidity and solar radiation were not significant. However, the non-linear correlations were significant. The turning points in the relationship for temperature, relative humidity and solar radiation were 5 °C and 23 °C, 74 % and 750 kJ/m2, respectively.
    UNASSIGNED: The influence of meteorological factors on COVID-19 is non-linear. There are two thresholds in the relationship with temperature: 5 °C and 23 °C. Below 5 °C and above 23 °C, there is a positive correlation, while between 5 °C and 23 °C, the correlation is negative. Relative humidity and solar radiation show negative correlations, but there is a change in slope at about 74 % and 750 kJ/m2, respectively.
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  • 文章类型: Journal Article
    背景:尽管环境温度与呼吸系统疾病死亡率之间的关联已有大量文献记载,不同环境温度水平与呼吸急诊科(ED)就诊之间的关联尚未得到很好的研究.最近在北京对呼吸性ED就诊次数与各种环境温度之间的关系进行了调查,中国。
    方法:每日气象数据,空气污染数据,收集北京2017-2018年呼吸性ED访视数据。使用分布式滞后非线性模型(DLNM)探索环境温度与呼吸ED访问之间的关系。然后根据年龄和性别进行亚组分析。最后,荟萃分析用于汇总环境温度对中国各地呼吸性ED就诊的总影响。
    结果:极端寒冷的单日滞后风险在滞后21天时达到相对风险(RR)为1.048[95%置信区间(CI):1.009,1.088]的峰值,具有长时间的滞后效应。至于极热的单日滞后风险,在滞后7天时显示出短暂的滞后效应,RR为1.076(95%CI:1.038,1.114).热效应和冷效应的累积滞后效应在滞后0-21天时达到峰值,发病的累积风险为3.690(95%CI:2.133,6.382)和1.641(95%CI:1.284,2.098),分别,对高温有更强的影响。此外,老年人对环境温度更敏感。雄性比雌性更容易受到炎热天气的影响。在女性中发现了更长的低温滞后效应。与荟萃分析相比,环境温度的汇集效应总体上是一致的.在亚组分析中,性别差异显着。
    结论:温度水平,特定年龄,环境温度和急诊就诊次数之间的性别影响提供了预防和控制呼吸系统疾病的预警措施的信息。
    BACKGROUND: Although the association between ambient temperature and mortality of respiratory diseases was numerously documented, the association between various ambient temperature levels and respiratory emergency department (ED) visits has not been well studied. A recent investigation of the association between respiratory ED visits and various levels of ambient temperature was conducted in Beijing, China.
    METHODS: Daily meteorological data, air pollution data, and respiratory ED visits data from 2017 to 2018 were collected in Beijing. The relationship between ambient temperature and respiratory ED visits was explored using a distributed lagged nonlinear model (DLNM). Then we performed subgroup analysis based on age and gender. Finally, meta-analysis was utilized to aggregate the total influence of ambient temperature on respiratory ED visits across China.
    RESULTS: The single-day lag risk for extreme cold peaked at a relative risk (RR) of 1.048 [95% confidence interval (CI): 1.009, 1.088] at a lag of 21 days, with a long lag effect. As for the single-day lag risk for extreme hot, a short lag effect was shown at a lag of 7 days with an RR of 1.076 (95% CI: 1.038, 1.114). The cumulative lagged effects of both hot and cold effects peaked at lag 0-21 days, with a cumulative risk of the onset of 3.690 (95% CI: 2.133, 6.382) and 1.641 (95% CI: 1.284, 2.098), respectively, with stronger impact on the hot. Additionally, the elderly were more sensitive to ambient temperature. The males were more susceptible to hot weather than the females. A longer cold temperature lag effect was found in females. Compared with the meta-analysis, a pooled effect of ambient temperature was consistent in general. In the subgroup analysis, a significant difference was found by gender.
    CONCLUSIONS: Temperature level, age-specific, and gender-specific effects between ambient temperature and the number of ED visits provide information on early warning measures for the prevention and control of respiratory diseases.
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