Generation time

生成时间
  • 文章类型: Journal Article
    背景:这项研究确定了指数患者家庭接触者中严重急性呼吸综合征冠状病毒2感染的危险因素,并确定了潜伏期(IP),串行间隔,以及喀拉拉邦继发感染率的估计,印度。
    方法:我们在2021年1月至7月期间在喀拉拉邦的三个地区对逆转录酶聚合酶链反应阳性冠状病毒病2019患者的家庭居民进行了一项队列研究。对约147名指数患者和362名家庭接触者进行了28天的随访,以确定逆转录酶聚合酶链反应阳性和第1、7、14和28天的SARS-CoV-2总抗体的存在。
    结果:平均IP,串行间隔,世代时间分别为1.6、3和3.9天,分别。14天继发感染率为43.0%。根据多变量回归分析,外出工作的人受到保护(调整后的优势比[aOR],0.45;95%置信区间[CI],0.24-0.85),而那些在患病期间亲吻冠状病毒病2019阳性患者的感染风险超过两倍(aOR,2.23;95%CI,1.01-5.2)比没有亲吻患者的患者。与索引患者共用厕所的风险增加了两倍以上(aOR,2.5;95%CI,1.42-4.64)比不共用厕所。然而,报告使用口罩的联系人(AOR,2.5;95%CI,1.4-4.4)在家庭环境中感染的风险较高。
    结论:家庭环境具有较高的继发感染率和不断变化的传播动力,例如IP,SARS-CoV-2的预防和控制应考虑序列间隔。
    BACKGROUND: This study identified the risk factors for severe acute respiratory syndrome coronavirus 2 infection among household contacts of index patients and determined the incubation period (IP), serial interval, and estimates of secondary infection rate in Kerala, India.
    METHODS: We conducted a cohort study in three districts of Kerala among the inhabitants of households of reverse transcriptase polymerase chain reaction-positive coronavirus disease 2019 patients between January and July 2021. About 147 index patients and 362 household contacts were followed up for 28 days to determine reverse transcriptase polymerase chain reaction positivity and the presence of total antibodies against SARS-CoV-2 on days 1, 7, 14, and 28.
    RESULTS: The mean IP, serial interval, and generation time were 1.6, 3, and 3.9 days, respectively. The secondary infection rate at 14 days was 43.0%. According to multivariable regression analysis persons who worked outside the home were protected (adjusted odds ratio [aOR], 0.45; 95% confidence interval [CI], 0.24-0.85), whereas those who had kissed the coronavirus disease 2019-positive patients during illness were more than twice at risk of infection (aOR, 2.23; 95% CI, 1.01-5.2) than those who had not kissed the patients. Sharing a toilet with the index patient increased the risk by more than twice (aOR, 2.5; 95% CI, 1.42-4.64) than not sharing a toilet. However, the contacts who reported using masks (aOR, 2.5; 95% CI, 1.4-4.4) were at a higher risk of infection in household settings.
    CONCLUSIONS: Household settings have a high secondary infection rate and the changing transmissibility dynamics such as IP, serial interval should be considered in the prevention and control of SARS-CoV-2.
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  • 文章类型: Journal Article
    通过量化种群的关键生活史参数,比如增长率,长寿,和生成时间,研究人员和管理人员可以获得对其动态的宝贵见解。尽管自人口统计学作为一门科学学科成立以来,人口统计学参数的点估计就已经可用,置信区间的构建通常依赖于通过级数扩展或计算密集型技术的近似。本研究引入了第一个数学表达式,用于在无法识别个体并以生命表形式呈现数据时计算上述生活史特征的置信区间。关键发现是对r的置信区间的准确估计,瞬时增长率,这是使用具有四个任意离散分布的蒙特卡罗模拟进行测试的。与引导方法相比,所提出的区间施工方法被证明更有效,特别是对于总后代大小低于400的实验。我们将讨论处理以延长寿命表或以生命率矩阵形式组织数据的情况。
    By quantifying key life history parameters in populations, such as growth rate, longevity, and generation time, researchers and administrators can obtain valuable insights into its dynamics. Although point estimates of demographic parameters have been available since the inception of demography as a scientific discipline, the construction of confidence intervals has typically relied on approximations through series expansions or computationally intensive techniques. This study introduces the first mathematical expression for calculating confidence intervals for the aforementioned life history traits when individuals are unidentifiable and data are presented as a life table. The key finding is the accurate estimation of the confidence interval for r, the instantaneous growth rate, which is tested using Monte Carlo simulations with four arbitrary discrete distributions. In comparison to the bootstrap method, the proposed interval construction method proves more efficient, particularly for experiments with a total offspring size below 400. We discuss handling cases where data are organized in extended life tables or as a matrix of vital rates. We have developed and provided accompanying code to facilitate these computations.
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  • 文章类型: Journal Article
    抗微生物耐药性的增加引起了人们对天然产物作为抗生素替代品或增强剂的极大兴趣。这项研究的目的是从栗子粗提物中分离出单个单宁,并确定两种粗提物的影响(单宁酸提取物,栗子提取物)和单独的纯单宁(没食子酸,vescalin,vescalagin,蓖麻林,castalagin)对革兰氏阳性金黄色葡萄球菌细菌的生长。通过测量最小抑制浓度(MIC)和最小杀菌浓度(MBC)以及滞后期的持续时间来监测它们的抗菌活性。生长速度和世代时间。还研究了生长培养基强度对不同单宁的MIC的影响。用分光光度法追踪细菌生长,和MIC值通过微量稀释法测定。各种分离化合物的MIC值使我们能够确定生物活性化合物及其对抗微生物活性的贡献。发现MIC值随着生长培养基强度的增加而增加,并且滞后期随着单宁浓度的增加而延长,而增长率下降。比较两项研究的结果,单宁对金黄色葡萄球菌的抗菌活性不像大肠杆菌那样明显,这可能表明单宁对革兰氏阳性细菌的抗菌作用与对革兰氏阴性细菌的作用机制不同,或者不同的机制更明显。
    Increasing antimicrobial resistance has caused a great interest in natural products as alternatives or potentiators of antibiotics. The objective of this study was to isolate individual tannins from crude chestnut extract as well as to determine the influence of both crude extracts (tannic acid extract, chestnut extract) and individual pure tannins (gallic acid, vescalin, vescalagin, castalin, castalagin) on the growth of Gram-positive Staphylococcus aureus bacteria. Their antibacterial activity was monitored by measuring the minimum inhibitory concentration (MIC) and minimum bactericidal concentration (MBC) as well as the duration of the lag phase, growth rate and generation time. The effect of growth medium strength on the MIC of different tannins was also investigated. Bacterial growth was followed spectrophotometrically, and MIC values were determined by the microdilution method. The MIC values of various isolated compounds allowed us to determine the bioactive compounds and their contribution to antimicrobial activity. It was found that MIC values increase with increasing growth medium strength and that the lag phase lengthens with increasing tannin concentrations, while the growth rates decrease. Comparing the results of the two studies, the antimicrobial activity of tannins against S. aureus was not as pronounced as in the case of E. coli, which may indicate that a different mechanism of action is responsible for the antimicrobial effects of tannins on Gram-positive than on Gram-negative bacteria, or that a different mechanism is more pronounced.
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  • 文章类型: Journal Article
    Wang等人。(2023)最近提出了一种方法,可以根据突变谱随时间的变化来推断人类世代间隔的历史。由于不同突变类型的相对比例取决于父母的年龄,在变体出现时进行分级,可以推断平均父代和母代间隔的变化。将这种方法应用于已发表的等位基因年龄估计,Wang等人。(2023)推断了平均世代时间的长期性别差异,并令人惊讶地发现,西非人口的祖先世代时间仍然大大高于欧亚人口的世代时间,从而延长了成千上万代。在这里,我们认为Wang等人的结果和解释。(2023)主要是由输入数据中的噪声和偏差以及缺乏使用独立方法估计等位基因年龄的验证所驱动。随着最近重建全基因组基因谱系的方法的发展,聚结时间,和等位基因年龄,我们警告说,下游分析可能会受到输出中未表征偏差的强烈影响。
    Wang et al. (2023) recently proposed an approach to infer the history of human generation intervals from changes in mutation profiles over time. As the relative proportions of different mutation types depend on the ages of parents, binning variants by the time they arose allows for the inference of changes in average paternal and maternal generation intervals. Applying this approach to published allele age estimates, Wang et al. (2023) inferred long-lasting sex differences in average generation times and surprisingly found that ancestral generation times of West African populations remained substantially higher than those of Eurasian populations extending tens of thousands of generations into the past. Here, we argue that the results and interpretations in Wang et al. (2023) are primarily driven by noise and biases in input data and a lack of validation using independent approaches for estimating allele ages. With the recent development of methods to reconstruct genome-wide gene genealogies, coalescence times, and allele ages, we caution that downstream analyses may be strongly influenced by uncharacterized biases in their output.
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  • 文章类型: Journal Article
    细菌种群的生长已被描述为连续繁殖和细胞死亡的动态过程。然而,这与现实相去甚远。在一个良好的饮食,不断增长的细菌种群,固定阶段不可避免地发生,它不是由于积累的毒素或细胞死亡。人口在固定阶段花费的时间最多,细胞的表型从增殖细胞改变,一段时间后,只有菌落形成单位(CFU)减少,不是总细胞浓度。由于特定的分化过程,细菌种群可以被视为虚拟组织。其中指数期细胞发展为静止期细胞并最终达到不可培养形式。营养的丰富度对生长速率或固定细胞密度没有影响。生成时间似乎不是一个恒定值,但这取决于发酵剂的浓度。连续稀释固定种群的接种揭示了所谓的最小固定细胞浓度(MSCC)点,稀释后细胞浓度保持恒定;这在单细胞生物中似乎是普遍的。
    The growth of bacterial populations has been described as a dynamic process of continuous reproduction and cell death. However, this is far from the reality. In a well fed, growing bacterial population, the stationary phase inevitably occurs, and it is not due to accumulated toxins or cell death. A population spends the most time in the stationary phase, where the phenotype of the cells alters from the proliferating ones, and only the colony forming unit (CFU) decreases after a while, not the total cell concentration. A bacterial population can be considered as a virtual tissue as a result of a specific differentiation process, in which the exponential-phase cells develop to stationary-phase cells and eventually reach the unculturable form. The richness of the nutrient had no effect on growth rate or on stationary cell density. The generation time seems not to be a constant value, but it depended on the concentration of the starter cultures. Inoculations with serial dilutions of stationary populations reveal a so-called minimal stationary cell concentration (MSCC) point, up to which the cell concentrations remain constant upon dilutions; that seems to be universal among unicellular organisms.
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  • 文章类型: Journal Article
    背景:串行间隔是原发性病例的症状发作与继发性病例的症状发作之间的时间段。了解序列间隔对于确定COVID-19等传染病的传播动态非常重要,包括繁殖次数和二次发作率,这可能会影响控制措施。COVID-19的早期荟萃分析报告,原始野生型变体的系列间隔为5.2天(95%CI:4.9-5.5),Alpha变体的系列间隔为5.2天(95%CI:4.87-5.47)。在其他呼吸道疾病的流行过程中,连续间隔已被证明会减少,这可能是由于累积的病毒突变和实施更有效的非药物干预措施。因此,我们汇总了文献,以估计Delta和Omicron变体的序列间隔。
    方法:本研究遵循系统评价和荟萃分析指南的首选报告项目。对PubMed进行了系统的文献检索,Scopus,科克伦图书馆,ScienceDirect,和预打印服务器medRxiv,用于2021年4月4日至2023年5月23日发表的文章。搜索词为:(“串行间隔”或“生成时间”),(\"Omicron\"或\"Delta\"),和(“SARS-CoV-2”或“COVID-19”)。使用限制性最大似然估计模型对Delta和Omicron变体进行荟萃分析,每个研究都具有随机效应。报告汇总平均估计值和95%置信区间(95%CI)。
    结果:Delta的荟萃分析包括46,648个主要/次要病例对,Omicron包括18,324。纳入研究的平均连续间隔为Delta的2.3-5.8天,Omicron的2.1-4.8天。Delta的合并平均序列间隔为3.9天(95%CI:3.4-4.3)(20项研究),Omicron为3.2天(95%CI:2.9-3.5)(20项研究)。BA.1的平均估计序列间隔为3.3天(95%CI:2.8-3.7)(11项研究),BA.2为2.9天(95%CI:2.7-3.1)(六项研究),BA.5为2.3天(95%CI:1.6-3.1)(三项研究)。
    结论:Delta和Omicron的序列间隔估计比祖先的SARS-CoV-2变体短。最近的Omicron亚变体的串行间隔甚至更短,这表明串行间隔可能会随着时间的推移而缩短。这表明从一代病例到下一代病例的传播更快,与它们的祖先相比,这些变异体观察到的更快的生长动态一致。随着SARS-CoV-2继续循环和发展,串行间隔可能会发生其他变化。人群免疫力的变化(由于感染和/或疫苗接种)可能会进一步改变它。
    BACKGROUND: The serial interval is the period of time between symptom onset in the primary case and symptom onset in the secondary case. Understanding the serial interval is important for determining transmission dynamics of infectious diseases like COVID-19, including the reproduction number and secondary attack rates, which could influence control measures. Early meta-analyses of COVID-19 reported serial intervals of 5.2 days (95% CI: 4.9-5.5) for the original wild-type variant and 5.2 days (95% CI: 4.87-5.47) for Alpha variant. The serial interval has been shown to decrease over the course of an epidemic for other respiratory diseases, which may be due to accumulating viral mutations and implementation of more effective nonpharmaceutical interventions. We therefore aggregated the literature to estimate serial intervals for Delta and Omicron variants.
    METHODS: This study followed Preferred Reporting Items for Systematic Reviews and Meta-analyses guidelines. A systematic literature search was conducted of PubMed, Scopus, Cochrane Library, ScienceDirect, and preprint server medRxiv for articles published from April 4, 2021, through May 23, 2023. Search terms were: (\"serial interval\" or \"generation time\"), (\"Omicron\" or \"Delta\"), and (\"SARS-CoV-2\" or \"COVID-19\"). Meta-analyses were done for Delta and Omicron variants using a restricted maximum-likelihood estimator model with a random effect for each study. Pooled average estimates and 95% confidence intervals (95% CI) are reported.
    RESULTS: There were 46,648 primary/secondary case pairs included for the meta-analysis of Delta and 18,324 for Omicron. Mean serial interval for included studies ranged from 2.3-5.8 days for Delta and 2.1-4.8 days for Omicron. The pooled mean serial interval for Delta was 3.9 days (95% CI: 3.4-4.3) (20 studies) and Omicron was 3.2 days (95% CI: 2.9-3.5) (20 studies). Mean estimated serial interval for BA.1 was 3.3 days (95% CI: 2.8-3.7) (11 studies), BA.2 was 2.9 days (95% CI: 2.7-3.1) (six studies), and BA.5 was 2.3 days (95% CI: 1.6-3.1) (three studies).
    CONCLUSIONS: Serial interval estimates for Delta and Omicron were shorter than ancestral SARS-CoV-2 variants. More recent Omicron subvariants had even shorter serial intervals suggesting serial intervals may be shortening over time. This suggests more rapid transmission from one generation of cases to the next, consistent with the observed faster growth dynamic of these variants compared to their ancestors. Additional changes to the serial interval may occur as SARS-CoV-2 continues to circulate and evolve. Changes to population immunity (due to infection and/or vaccination) may further modify it.
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  • 文章类型: Journal Article
    尽管在欧洲许多地区,针对牛结核病(bTB)的控制措施已取得成功,在牛分枝杆菌在多宿主系统中循环的地区,这种疾病尚未根除。在这里,我们分析了在2007年至2019年之间在141个农场中检测到的11种牛分枝杆菌基因型(根据spoligotyping和MIRU-VNTR定义)的复苏,在法国西南部的一个地区,从2012年开始在65只the中检测到野生动物感染。我们使用空间显式模型来重建11种基因型在牛场和of种群中的同时扩散。2007-2011年的有效繁殖数R估计为1.34,这表明尽管种内Rs均<1,但维持群落却自我维持牛分枝杆菌的传播,这表明牛和badge种群都不是单独的水库宿主。从2012年开始实施控制措施,我们观察到R下降到1以下。基本繁殖率的空间对比表明,引入新农场后,当地的田间条件可能会有利于(或惩罚)bTB的局部传播。世代时间分布的计算表明,牛M.bovis在养牛场(0.5-0.7年)的传播比badge组(1.3-2.4年)的传播更快。尽管在研究区域可能根除bTB(因为R<1),该模型表明这是一个长期的前景,由于the组感染的持续时间长(2.9-5.7年)。补充工具和努力更好地控制bTB感染bTB在br中(包括疫苗接种)似乎是必要的。
    Although control measures to tackle bovine tuberculosis (bTB) in cattle have been successful in many parts of Europe, this disease has not been eradicated in areas where Mycobacterium bovis circulates in multi-host systems. Here we analyzed the resurgence of 11 M. bovis genotypes (defined based on spoligotyping and MIRU-VNTR) detected in 141 farms between 2007 and 2019, in an area of Southwestern France where wildlife infection was also detected from 2012 in 65 badgers. We used a spatially-explicit model to reconstruct the simultaneous diffusion of the 11 genotypes in cattle farms and badger populations. Effective reproduction number R was estimated to be 1.34 in 2007-2011 indicating a self-sustained M. bovis transmission by a maintenance community although within-species Rs were both < 1, indicating that neither cattle nor badger populations acted as separate reservoir hosts. From 2012, control measures were implemented, and we observed a decrease of R below 1. Spatial contrasts of the basic reproduction ratio suggested that local field conditions may favor (or penalize) local spread of bTB upon introduction into a new farm. Calculation of generation time distributions showed that the spread of M. bovis has been more rapid from cattle farms (0.5-0.7 year) than from badger groups (1.3-2.4 years). Although eradication of bTB appears possible in the study area (since R < 1), the model suggests it is a long-term prospect, because of the prolonged persistence of infection in badger groups (2.9-5.7 years). Supplementary tools and efforts to better control bTB infection in badgers (including vaccination for instance) appear necessary.
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  • 文章类型: Journal Article
    最近的研究表明,人类种系突变率和光谱进化迅速。生成时间的变化与这些变化有关,但其贡献尚不清楚。我们开发了一个框架来表征种群内部和种群之间多态性的时间变化,同时控制自然选择和偏向基因转换的影响。对1000个基因组项目数据集的应用揭示了大陆群分裂后出现的多个独立变化,包括之前报道的,欧洲人中TCC>TTC突变的瞬时升高和群体样本中C>G和T>A突变率的新差异信号。我们还发现,在非洲内外抽样的群体之间存在显著差异,在非洲外迁移之前的旧T>C多态性中。这个令人惊讶的信号是由TpG>CpG突变驱动的,部分源于错误极化的CpG跃迁,更有可能发生复发性突变。最后,通过将多态性的突变谱与父母年龄对从头突变的影响联系起来,我们表明,代时的合理变化不能共同解释不同突变类型的模式。因此,其他因素-遗传修饰或环境暴露-必须对人类突变景观产生不可忽视的影响。
    Recent studies have suggested that the human germline mutation rate and spectrum evolve rapidly. Variation in generation time has been linked to these changes, though its contribution remains unclear. We develop a framework to characterize temporal changes in polymorphisms within and between populations, while controlling for the effects of natural selection and biased gene conversion. Application to the 1000 Genomes Project dataset reveals multiple independent changes that arose after the split of continental groups, including a previously reported, transient elevation in TCC>TTC mutations in Europeans and novel signals of divergence in C>Gand T>A mutation rates among population samples. We also find a significant difference between groups sampled in and outside of Africa in old T>C polymorphisms that predate the out-of-Africa migration. This surprising signal is driven by TpG>CpG mutations and stems in part from mis-polarized CpG transitions, which are more likely to undergo recurrent mutations. Finally, by relating the mutation spectrum of polymorphisms to parental age effects on de novo mutations, we show that plausible changes in the generation time cannot explain the patterns observed for different mutation types jointly. Thus, other factors - genetic modifiers or environmental exposures - must have had a non-negligible impact on the human mutation landscape.
    Each human has 23 pairs of chromosomes, one set inherited from each parent. But the child\'s chromosomes are not an exact copy of their parents\' chromosomes. Spontaneous changes or mutations in the DNA during the formation of the egg or sperm cells, or early development of the embryo, can change a small fraction of the nucleotides or ‘letters’ that make up the DNA. These modifications are an important source of genetic diversity in human populations and contribute to the evolution of new traits. Each genetic variant in present-day human populations represents a mutation in one of their ancestors. The types and frequencies of variants vary across human populations and have changed over time, suggesting that mutation patterns have evolved in the past. But the processes driving these population-level differences remain elusive. One possible factor may be changes in the average age of reproduction or the generation time in a population . For example, older parents contribute more – and also different types of – new mutations to their children than younger parents do. Populations, where it is customary to have children at older ages, may therefore have a different mutation landscape. To find out if this is indeed the case, Gao et al. used computer algorithms to analyze the genomes of hundreds of people living on three continents who participated in ‘the 1,000 Genomes Project’. The analysis identified differences in mutation patterns across continental groups and estimated when these changes occurred. Further, they showed that although the age of reproduction had an impact on the mutation landscape, differences in generation time alone could not explain the observed changes in the human mutation spectrum. Factors other than generation time, such as environmental exposures, may have played a role in shifting these patterns. The study provides new insights into the changes in the mutation landscape over the course of human evolution. Mapping these patterns in humans worldwide may help scientists understand the causes underlying these changes. The techniques used by Gao et al. may also help analyze changes in mutation patterns in other organisms.
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  • 文章类型: Journal Article
    环境条件下的时间自相关通过其对生命率的影响来影响人口动态。然而,对时间自相关如何以及在多大程度上影响人口动态的全面理解仍然缺乏,因为大多数实证研究都不切实际地假设环境条件在时间上是独立的。肥大播种是一种生物事件,其特征是在树木种群规模上种子生产高度波动和同步,以及明显的负时间自相关。在当前全球变化的背景下,桅杆播种事件预计将变得更加频繁,导致增强的负时间自相关,从而放大了桅杆播种动力学的周期性。理论预测,当消费者资源的环境周期性与其世代时间紧密匹配时,人口增长率将最大化。为了测试这个预测,我们利用了对野猪种群的长期监测,一种广泛的种子消费物种,其特征是生成时间短(~2年)。不出所料,模拟表明,随着肥大播种动力学变得更加负相关,其随机种群增长率增加。我们的发现表明,需要考虑环境条件中相对于焦点人群的生成时间的时间自相关,尤其是在全球变暖的情况下,其中资源动态的周期性可能会改变。
    AbstractTemporal autocorrelation in environmental conditions influences population dynamics through its effects on vital rates. However, a comprehensive understanding of how and to what extent temporal autocorrelation shapes population dynamics is still lacking because most empirical studies have unrealistically assumed that environmental conditions are temporally independent. Mast seeding is a biological event characterized by highly fluctuating and synchronized seed production at the tree population scale as well as a marked negative temporal autocorrelation. In the current context of global change, mast seeding events are expected to become more frequent, leading to strengthened negative temporal autocorrelations and thereby amplified cyclicality in mast seeding dynamics. Theory predicts that population growth rates are maximized when the environmental cyclicality of consumer resources and their generation times are closely matched. To test this prediction, we took advantage of the long-term monitoring of a wild boar population, a widespread seed consumer species characterized by a short generation time (∼2 years). As expected, simulations indicated that its stochastic population growth rate increased as mast seeding dynamics became more negatively autocorrelated. Our findings demonstrate that accounting for temporal autocorrelations in environmental conditions relative to the generation time of the focal population is required, especially under conditions of global warming, where the cyclicality in resource dynamics is likely to change.
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  • 文章类型: Journal Article
    关于流行病学数量的定量信息,例如严重急性呼吸道综合症冠状病毒2(SARS-CoV-2)变种的潜伏期和产生时间,很少。我们分析了雷焦艾米利亚省接触者追踪活动期间收集的数据集,意大利,整个2021年。我们使用有关阴性聚合酶链反应测试的信息以及282例有症状病例的最后暴露日期,确定了Alpha和Delta变体的潜伏期分布。我们使用贝叶斯推断方法估计了固有生成时间的分布,该方法适用于聚集在3545个家庭中的9724例SARS-CoV-2病例,其中至少记录了一个次要病例。我们估计平均潜伏期为4.9天(95%可信间隔,CrI,4.4-5.4)对于Alpha和4.5天(95%CrI4.0-5.0)对于Delta。估计固有生成时间对于Alpha平均为7.12天(95%CrI6.27-8.44),对于Delta平均为6.52天(95%CrI5.54-8.43)。家庭序列间隔为Alpha的2.43天(95%CrI2.29-2.58)和Delta的2.74天(95%CrI2.62-2.88),两种变体的症状前传播的估计比例为48-51%。这些结果表明,与祖先谱系相比,SARS-CoV-2变体Alpha和Delta的潜伏期和内在世代时间差异有限。
    Quantitative information on epidemiological quantities such as the incubation period and generation time of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) variants is scarce. We analysed a dataset collected during contact tracing activities in the province of Reggio Emilia, Italy, throughout 2021. We determined the distributions of the incubation period for the Alpha and Delta variants using information on negative polymerase chain reaction tests and the date of last exposure from 282 symptomatic cases. We estimated the distributions of the intrinsic generation time using a Bayesian inference approach applied to 9724 SARS-CoV-2 cases clustered in 3545 households where at least one secondary case was recorded. We estimated a mean incubation period of 4.9 days (95% credible intervals, CrI, 4.4-5.4) for Alpha and 4.5 days (95% CrI 4.0-5.0) for Delta. The intrinsic generation time was estimated to have a mean of 7.12 days (95% CrI 6.27-8.44) for Alpha and of 6.52 days (95% CrI 5.54-8.43) for Delta. The household serial interval was 2.43 days (95% CrI 2.29-2.58) for Alpha and 2.74 days (95% CrI 2.62-2.88) for Delta, and the estimated proportion of pre-symptomatic transmission was 48-51% for both variants. These results indicate limited differences in the incubation period and intrinsic generation time of SARS-CoV-2 variants Alpha and Delta compared to ancestral lineages.
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