Papers by Audrey Dorelien
Demographic Research, May 4, 2016
2 Data 2.1 Demographic and health surveys data 2.1.1 Sampling weights 2.1.2 DHS data quality 2.2 ... more 2 Data 2.1 Demographic and health surveys data 2.1.1 Sampling weights 2.1.2 DHS data quality 2.2 FAO ecological zone data 3 Methods 4 Country level results 4.1 Periodicity and seasonality 4.2 Amplitude 4.3 Maternal characteristics
We know diseases such as the 2019 Novel Coronavirus (COVID-19) are spread through social contact.... more We know diseases such as the 2019 Novel Coronavirus (COVID-19) are spread through social contact. Moreover, interventions to control social contacts such as stay-home orders are required to stop disease spread in pandemics for which vaccines have not yet been developed. However, existing data on social contact patterns in the United States (U.S.) is limited. Method: Consequently, we use American Time Use Survey data from 2003-2018 to describe and quantify the number and duration of social contacts occurring at home and in non-household locations. For household locations we also estimate age contact matrices (who spends time with whom by age). This is the first study to describe variation in U.S. social contact patterns across space, time, and based on demographic characteristics. Findings: We find that gender differences in social contact patterns exist. In the home, they appear to be driven by caretaking responsibilities. Non-Hispanic Blacks have a shorter duration and fewer social...
Mapping populations at risk: improving spatial epidemiological analyses. We review sources of det... more Mapping populations at risk: improving spatial epidemiological analyses. We review sources of detailed, contemporary, freely available and relevant spatial demographic data focusing on low income regions where such data are often sparse and highlight the value of Tatem et al. Population Health Metrics 2012, 10:8
Seasonality is a characteristic and important feature of the birth rate, but hitherto largely und... more Seasonality is a characteristic and important feature of the birth rate, but hitherto largely undocumented for sub-Saharan Africa. The research we present in Chapter 2 helps close the gap by providing contemporary documentation of the seasonal patterns of births in 31 sub-Saharan African countries, and 21 ecological zones. In the remainder of the dissertation, we analyze the determinants of birth seasonality and its implications for child health, by using data from the Demographic and Health Surveys (DHS), Demographic Surveillance Sites, and weather station data, in conjunction with an interdisciplinary set of methods. Specifically in Chapter 3, we make a valuable contribution to the existing literature on determinants of birth seasonality by using multivariate analysis to look at the independent contributions of both social and ecological factors. In Chapter 4, we analyze the relationship between birth month and child growth (stunting) and survival. We also test whether the relatio...
Population and Development Review, 2019
<p>Transfer diagram for the SEIR model with seasonality in birth rate and transmission.</p
Population health metrics, Jan 16, 2012
The use of Global Positioning Systems (GPS) and Geographical Information Systems (GIS) in disease... more The use of Global Positioning Systems (GPS) and Geographical Information Systems (GIS) in disease surveys and reporting is becoming increasingly routine, enabling a better understanding of spatial epidemiology and the improvement of surveillance and control strategies. In turn, the greater availability of spatially referenced epidemiological data is driving the rapid expansion of disease mapping and spatial modeling methods, which are becoming increasingly detailed and sophisticated, with rigorous handling of uncertainties. This expansion has, however, not been matched by advancements in the development of spatial datasets of human population distribution that accompany disease maps or spatial models.Where risks are heterogeneous across population groups or space or dependent on transmission between individuals, spatial data on human population distributions and demographic structures are required to estimate infectious disease risks, burdens, and dynamics. The disease impact in ter...
PLoS ONE, 2013
We analyze the impact of birth seasonality (seasonal oscillations in the birth rate) on the dynam... more We analyze the impact of birth seasonality (seasonal oscillations in the birth rate) on the dynamics of acute, immunizing childhood infectious diseases. Previous research has explored the effect of human birth seasonality on infectious disease dynamics using parameters appropriate for the developed world. We build on this work by including in our analysis an extended range of baseline birth rates and amplitudes, which correspond to developing world settings. Additionally, our analysis accounts for seasonal forcing both in births and contact rates. We focus in particular on the dynamics of measles. In the absence of seasonal transmission rates or stochastic forcing, for typical measles epidemiological parameters, birth seasonality induces either annual or biennial epidemics. Changes in the magnitude of the birth fluctuations (birth amplitude) can induce significant changes in the size of the epidemic peaks, but have little impact on timing of disease epidemics within the year. In contrast, changes to the birth seasonality phase (location of the peak in birth amplitude within the year) significantly influence the timing of the epidemics. In the presence of seasonality in contact rates, at relatively low birth rates (20 per 1000), birth amplitude has little impact on the dynamics but does have an impact on the magnitude and timing of the epidemics. However, as the mean birth rate increases, both birth amplitude and phase play an important role in driving the dynamics of the epidemic. There are stronger effects at higher birth rates.
Demographic Research, 2016
2 Data 2.1 Demographic and health surveys data 2.1.1 Sampling weights 2.1.2 DHS data quality 2.2 ... more 2 Data 2.1 Demographic and health surveys data 2.1.1 Sampling weights 2.1.2 DHS data quality 2.2 FAO ecological zone data 3 Methods 4 Country level results 4.1 Periodicity and seasonality 4.2 Amplitude 4.3 Maternal characteristics
Population and Development Review, 2013
Biodemography and social biology, 2015
Birth month is broadly predictive of both under-5 mortality rates and stunting throughout most of... more Birth month is broadly predictive of both under-5 mortality rates and stunting throughout most of sub-Saharan Africa (SSA). Observed factors, such as mother's age at birth and educational status, are correlated with birth month but are not the main factors underlying the relationship between birth month and child health. Accounting for maternal selection via a fixed-effects model attenuates the relationship between birth month and health in many SSA countries. In the remaining countries, the effect of birth month may be mediated by environmental factors. This study found that birth month effects on mortality typically do not vary across age intervals; the differential mortality rates by birth month are evident in the neonatal period and continue across age intervals. The male-to-female sex ratio at birth did not vary by birth month, which suggests that in utero exposures are not influencing fetal loss, and that therefore the birth month effects are not likely a result of selecti...
Appraisal of urbanization trends is limited by the lack of a globally consistent definition of wh... more Appraisal of urbanization trends is limited by the lack of a globally consistent definition of what is meant by urban. This article seeks to identify and explain differences in the definition of “urbanness” as used in two largely distinct research communities. We compare the Global Rural–Urban Mapping Project (GRUMP), which defines urban areas based primarily on satellite imagery of nighttime lights, to the urban classification found in Demographic and Health Surveys (DHS), which relies on the urban definitions of individual countries' national statistical offices. We analyze the distribution of DHS clusters falling within and outside of GRUMP urban extents and examine select characteristics of these clusters (notably, household electrification). Our results show a high degree of agreement between the two data sources on what areas are considered urban; furthermore, when used together, GRUMP and DHS data reveal urban characteristics that are not evident when one data source is used independently. GRUMP urban extents are overwhelmingly medium and large highly electrified localities. DHS clusters that are classified as non-urban but that fall within GRUMP extents tend to be peri-urban areas.
The use of Global Positioning Systems (GPS) and Geographical Information Systems (GIS) in disease... more The use of Global Positioning Systems (GPS) and Geographical Information Systems (GIS) in disease surveys and reporting is becoming increasingly routine, enabling a better understanding of spatial epidemiology and the improvement of surveillance and control strategies. In turn, the greater availability of spatially referenced epidemiological data is driving the rapid expansion of disease mapping and spatial modeling methods, which are becoming increasingly detailed and sophisticated, with rigorous handling of uncertainties. This expansion has, however, not been matched by advancements in the development of spatial datasets of human population distribution that accompany disease maps or spatial models. Where risks are heterogeneous across population groups or space or dependent on transmission between individuals, spatial data on human population distributions and demographic structures are required to estimate infectious disease risks, burdens, and dynamics. The disease impact in terms of morbidity, mortality, and speed of spread varies substantially with demographic profiles, so that identifying the most exposed or affected populations becomes a key aspect of planning and targeting interventions. Subnational breakdowns of population counts by age and sex are routinely collected during national censuses and maintained in finer detail within microcensus data. Moreover, demographic and health surveys continue to collect representative and contemporary samples from clusters of communities in low-income countries where census data may be less detailed and not collected regularly. Together, these freely available datasets form a rich resource for quantifying and understanding the spatial variations in the sizes and distributions of those most at risk of disease in low income regions, yet at present, they remain unconnected data scattered across national statistical offices and websites. In this paper we discuss the deficiencies of existing spatial population datasets and their limitations on epidemiological analyses. We review sources of detailed, contemporary, freely available and relevant spatial demographic data focusing on low income regions where such data are often sparse and highlight the value of incorporating these through a set of examples of their application in disease studies. Moreover, the importance of acknowledging, measuring, and accounting for uncertainty in spatial demographic datasets is outlined. Finally, a strategy for building an open-access database of spatial demographic data that is tailored to epidemiological applications is put forward.
… and Climate Change, Jan 1, 2009
Population Reference Bureau, Jan 1, 2008
Forest Conservation and Population Growth Among Indigenous Peoples of the Amazon. by Jason Bremne... more Forest Conservation and Population Growth Among Indigenous Peoples of the Amazon. by Jason Bremner and Audrey Dorélien. (August 2008) Fertility has declined significantly throughout the developing world, and in Latin ...
World
This article will explore select aspects of the population-food crisis relationship, including se... more This article will explore select aspects of the population-food crisis relationship, including several that are not typically discussed, and provide examples from East Africa, which has been particularly hard-hit by the food crisis.
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Papers by Audrey Dorelien