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Featured researches published by Erik Wetter.


PLOS Currents | 2014

Commentary: containing the ebola outbreak - the potential and challenge of mobile network data.

Amy Wesolowski; Caroline O. Buckee; Linus Bengtsson; Erik Wetter; Xin Lu; Andrew J. Tatem

AW is supported by a postdoctoral fellowship by The James S. McDonnell Foundation. AJT acknowledges support from Bill & Melinda Gates Foundation grants (#49446 and #OPP1032350), NIH/NIAID grant (U19AI089674), and the RAPIDD program of the Science & Technology Directorate, Department of Homeland Security, and the Fogarty International Center, National Institutes of Health. COB was supported by the Models of Infectious Disease Agent Study program (cooperative agreement 1U54GM088558). The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institute of General Medical Sciences or the National Institutes of Health. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.


Scientific Reports | 2015

Using Mobile Phone Data to Predict the Spatial Spread of Cholera

Linus Bengtsson; Jean Gaudart; Xin Lu; Sandra Moore; Erik Wetter; Kankoe Sallah; Stanislas Rebaudet; Renaud Piarroux

Effective response to infectious disease epidemics requires focused control measures in areas predicted to be at high risk of new outbreaks. We aimed to test whether mobile operator data could predict the early spatial evolution of the 2010 Haiti cholera epidemic. Daily case data were analysed for 78 study areas from October 16 to December 16, 2010. Movements of 2.9 million anonymous mobile phone SIM cards were used to create a national mobility network. Two gravity models of population mobility were implemented for comparison. Both were optimized based on the complete retrospective epidemic data, available only after the end of the epidemic spread. Risk of an area experiencing an outbreak within seven days showed strong dose-response relationship with the mobile phone-based infectious pressure estimates. The mobile phone-based model performed better (AUC 0.79) than the retrospectively optimized gravity models (AUC 0.66 and 0.74, respectively). Infectious pressure at outbreak onset was significantly correlated with reported cholera cases during the first ten days of the epidemic (p < 0.05). Mobile operator data is a highly promising data source for improving preparedness and response efforts during cholera outbreaks. Findings may be particularly important for containment efforts of emerging infectious diseases, including high-mortality influenza strains.


PLOS Currents | 2016

Rapid and Near Real-Time Assessments of Population Displacement Using Mobile Phone Data Following Disasters: The 2015 Nepal Earthquake.

R.T. Wilson; Elisabeth zu Erbach-Schoenberg; Maximilian Albert; Daniel Power; Simon Tudge; Miguel Gonzalez; Sam Guthrie; Heather Chamberlain; Christopher James Brooks; Christopher Hughes; Lenka Pitonakova; Caroline O. Buckee; Xin Lu; Erik Wetter; Andrew J. Tatem; Linus Bengtsson

Introduction: Sudden impact disasters often result in the displacement of large numbers of people. These movements can occur prior to events, due to early warning messages, or take place post-event due to damages to shelters and livelihoods as well as a result of long-term reconstruction efforts. Displaced populations are especially vulnerable and often in need of support. However, timely and accurate data on the numbers and destinations of displaced populations are extremely challenging to collect across temporal and spatial scales, especially in the aftermath of disasters. Mobile phone call detail records were shown to be a valid data source for estimates of population movements after the 2010 Haiti earthquake, but their potential to provide near real-time ongoing measurements of population displacements immediately after a natural disaster has not been demonstrated. Methods: A computational architecture and analytical capacity were rapidly deployed within nine days of the Nepal earthquake of 25th April 2015, to provide spatiotemporally detailed estimates of population displacements from call detail records based on movements of 12 million de-identified mobile phones users. Results: Analysis shows the evolution of population mobility patterns after the earthquake and the patterns of return to affected areas, at a high level of detail. Particularly notable is the movement of an estimated 390,000 people above normal from the Kathmandu valley after the earthquake, with most people moving to surrounding areas and the highly-populated areas in the central southern area of Nepal. Discussion: This analysis provides an unprecedented level of information about human movement after a natural disaster, provided within a very short timeframe after the earthquake occurred. The patterns revealed using this method are almost impossible to find through other methods, and are of great interest to humanitarian agencies.


Journal of the Royal Society Interface | 2017

Mapping poverty using mobile phone and satellite data

Jessica Steele; Pål Sundsøy; Carla Pezzulo; Victor A. Alegana; Tomas J. Bird; Joshua Evan Blumenstock; Johannes Bjelland; Yves-Alexandre de Montjoye; Asif M. Iqbal; Khandakar N. Hadiuzzaman; Xin Lu; Erik Wetter; Andrew J. Tatem; Linus Bengtsson

Poverty is one of the most important determinants of adverse health outcomes globally, a major cause of societal instability and one of the largest causes of lost human potential. Traditional approaches to measuring and targeting poverty rely heavily on census data, which in most low- and middle-income countries (LMICs) are unavailable or out-of-date. Alternate measures are needed to complement and update estimates between censuses. This study demonstrates how public and private data sources that are commonly available for LMICs can be used to provide novel insight into the spatial distribution of poverty. We evaluate the relative value of modelling three traditional poverty measures using aggregate data from mobile operators and widely available geospatial data. Taken together, models combining these data sources provide the best predictive power (highest r2 = 0.78) and lowest error, but generally models employing mobile data only yield comparable results, offering the potential to measure poverty more frequently and at finer granularity. Stratifying models into urban and rural areas highlights the advantage of using mobile data in urban areas and different data in different contexts. The findings indicate the possibility to estimate and continually monitor poverty rates at high spatial resolution in countries with limited capacity to support traditional methods of data collection.


The Journal of Private Equity | 2009

Improving Business Failure Prediction for New Firms: Benchmarking Financial Models with Human and Social Capital

Erik Wetter; Karl Wennberg

Abstract Business failure prediction is a prominent issue in research and practice. However, the relation between financial performance and firm default in new firms is more complex than previously assumed and both finance researchers and practitioners can benefit from the existing research on entrepreneurship and new firm performance. Developing measures for human and social capital grounded in previous research, we find that either of these variables have considerably higher predictive power than the standard financial model in predicting which firms stay in business and which firms that default. With regards to new firms in high-technology and service industries, the traditional financial model does not beat the predictive accuracy of simply flipping a coin.


Journal of the Royal Society Interface | 2017

Exploring the high-resolution mapping of gender-disaggregated development indicators

Claudio Bosco; Victor A. Alegana; Tomas J. Bird; Carla Pezzulo; Linus Bengtsson; Alessandro Sorichetta; Jessica Steele; Graeme Hornby; Corrine W. Ruktanonchai; Nick W. Ruktanonchai; Erik Wetter; Andrew J. Tatem

Improved understanding of geographical variation and inequity in health status, wealth and access to resources within countries is increasingly being recognized as central to meeting development goals. Development and health indicators assessed at national or subnational scale can often conceal important inequities, with the rural poor often least well represented. The ability to target limited resources is fundamental, especially in an international context where funding for health and development comes under pressure. This has recently prompted the exploration of the potential of spatial interpolation methods based on geolocated clusters from national household survey data for the high-resolution mapping of features such as population age structures, vaccination coverage and access to sanitation. It remains unclear, however, how predictable these different factors are across different settings, variables and between demographic groups. Here we test the accuracy of spatial interpolation methods in producing gender-disaggregated high-resolution maps of the rates of literacy, stunting and the use of modern contraceptive methods from a combination of geolocated demographic and health surveys cluster data and geospatial covariates. Bayesian geostatistical and machine learning modelling methods were tested across four low-income countries and varying gridded environmental and socio-economic covariate datasets to build 1×1 km spatial resolution maps with uncertainty estimates. Results show the potential of the approach in producing high-resolution maps of key gender-disaggregated socio-economic indicators, with explained variance through cross-validation being as high as 74–75% for female literacy in Nigeria and Kenya, and in the 50–70% range for many other variables. However, substantial variations by both country and variable were seen, with many variables showing poor mapping accuracies in the range of 2–30% explained variance using both geostatistical and machine learning approaches. The analyses offer a robust basis for the construction of timely maps with levels of detail that support geographically stratified decision-making and the monitoring of progress towards development goals. However, the great variability in results between countries and variables highlights the challenges in applying these interpolation methods universally across multiple countries, and the importance of validation and quantifying uncertainty if this is undertaken.


Malaria Journal | 2016

Census-derived migration data as a tool for informing malaria elimination policy

Nick W. Ruktanonchai; Darlene Bhavnani; Alessandro Sorichetta; Linus Bengtsson; Keith H. Carter; Roberto C. Córdoba; Arnaud Le Menach; Xin Lu; Erik Wetter; Elisabeth zu Erbach-Schoenberg; Andrew J. Tatem

BackgroundNumerous countries around the world are approaching malaria elimination. Until global eradication is achieved, countries that successfully eliminate the disease will contend with parasite reintroduction through international movement of infected people. Human-mediated parasite mobility is also important within countries near elimination, as it drives parasite flows that affect disease transmission on a subnational scale.MethodsMovement patterns exhibited in census-based migration data are compared with patterns exhibited in a mobile phone data set from Haiti to quantify how well migration data predict short-term movement patterns. Because short-term movement data were unavailable for Mesoamerica, a logistic regression model fit to migration data from three countries in Mesoamerica is used to predict flows of infected people between subnational administrative units throughout the region.ResultsPopulation flows predicted using census-based migration data correlated strongly with mobile phone-derived movements when used as a measure of relative connectivity. Relative population flows are therefore predicted using census data across Mesoamerica, informing the areas that are likely exporters and importers of infected people. Relative population flows are used to identify community structure, useful for coordinating interventions and elimination efforts to minimize importation risk. Finally, the ability of census microdata inform future intervention planning is discussed in a country-specific setting using Costa Rica as an example.ConclusionsThese results show long-term migration data can effectively predict the relative flows of infected people to direct malaria elimination policy, a particularly relevant result because migration data are generally easier to obtain than short-term movement data such as mobile phone records. Further, predicted relative flows highlight policy-relevant population dynamics, such as major exporters across the region, and Nicaragua and Costa Rica’s strong connection by movement of infected people, suggesting close coordination of their elimination efforts. Country-specific applications are discussed as well, such as predicting areas at relatively high risk of importation, which could inform surveillance and treatment strategies.


Scientific Data | 2016

Data from a pre-publication independent replication initiative examining ten moral judgement effects

Warren Tierney; Martin Schweinsberg; Jennifer Jordan; Deanna M. Kennedy; Israr Qureshi; S. Amy Sommer; Nico Thornley; Nikhil Madan; Michelangelo Vianello; Eli Awtrey; Luke Lei Zhu; Daniel Diermeier; Justin E. Heinze; Malavika Srinivasan; David Tannenbaum; Eliza Bivolaru; Jason Dana; Christilene du Plessis; Quentin Frederik Gronau; Andrew C. Hafenbrack; Eko Yi Liao; Alexander Ly; Maarten Marsman; Toshio Murase; Michael Schaerer; Christina M. Tworek; Eric-Jan Wagenmakers; Lynn Wong; Tabitha Anderson; Christopher W. Bauman

We present the data from a crowdsourced project seeking to replicate findings in independent laboratories before (rather than after) they are published. In this Pre-Publication Independent Replication (PPIR) initiative, 25 research groups attempted to replicate 10 moral judgment effects from a single laboratory’s research pipeline of unpublished findings. The 10 effects were investigated using online/lab surveys containing psychological manipulations (vignettes) followed by questionnaires. Results revealed a mix of reliable, unreliable, and culturally moderated findings. Unlike any previous replication project, this dataset includes the data from not only the replications but also from the original studies, creating a unique corpus that researchers can use to better understand reproducibility and irreproducibility in science.


International Journal of Health Geographics | 2017

Mathematical models for predicting human mobility in the context of infectious disease spread: introducing the impedance model

Kankoe Sallah; Roch Giorgi; Linus Bengtsson; Xin Lu; Erik Wetter; Paul Adrien; Stanislas Rebaudet; Renaud Piarroux; Jean Gaudart

BackgroundMathematical models of human mobility have demonstrated a great potential for infectious disease epidemiology in contexts of data scarcity. While the commonly used gravity model involves parameter tuning and is thus difficult to implement without reference data, the more recent radiation model based on population densities is parameter-free, but biased. In this study we introduce the new impedance model, by analogy with electricity. Previous research has compared models on the basis of a few specific available spatial patterns. In this study, we use a systematic simulation-based approach to assess the performances.MethodsFive hundred spatial patterns were generated using various area sizes and location coordinates. Model performances were evaluated based on these patterns. For simulated data, comparison measures were average root mean square error (aRMSE) and bias criteria. Modeling of the 2010 Haiti cholera epidemic with a basic susceptible–infected–recovered (SIR) framework allowed an empirical evaluation through assessing the goodness-of-fit of the observed epidemic curve.ResultsThe new, parameter-free impedance model outperformed previous models on simulated data according to average aRMSE and bias criteria. The impedance model achieved better performances with heterogeneous population densities and small destination populations. As a proof of concept, the basic compartmental SIR framework was used to confirm the results obtained with the impedance model in predicting the spread of cholera in Haiti in 2010.ConclusionsThe proposed new impedance model provides accurate estimations of human mobility, especially when the population distribution is highly heterogeneous. This model can therefore help to achieve more accurate predictions of disease spread in the context of an epidemic.


International Journal of Epidemiology | 2018

Population mobility reductions associated with travel restrictions during the Ebola epidemic in Sierra Leone: use of mobile phone data

Corey M. Peak; Amy Wesolowski; Elisabeth zu Erbach-Schoenberg; Andrew J. Tatem; Erik Wetter; Xin Lu; Daniel Power; Elaine Weidman-Grunewald; Sergio Ramos; Simon Moritz; Caroline O. Buckee; Linus Bengtsson

Abstract Background Travel restrictions were implemented on an unprecedented scale in 2015 in Sierra Leone to contain and eliminate Ebola virus disease. However, the impact of epidemic travel restrictions on mobility itself remains difficult to measure with traditional methods. New ‘big data’ approaches using mobile phone data can provide, in near real-time, the type of information needed to guide and evaluate control measures. Methods We analysed anonymous mobile phone call detail records (CDRs) from a leading operator in Sierra Leone between 20 March and 1 July in 2015. We used an anomaly detection algorithm to assess changes in travel during a national ‘stay at home’ lockdown from 27 to 29 March. To measure the magnitude of these changes and to assess effect modification by region and historical Ebola burden, we performed a time series analysis and a crossover analysis. Results Routinely collected mobile phone data revealed a dramatic reduction in human mobility during a 3-day lockdown in Sierra Leone. The number of individuals relocating between chiefdoms decreased by 31% within 15 km, by 46% for 15–30 km and by 76% for distances greater than 30 km. This effect was highly heterogeneous in space, with higher impact in regions with higher Ebola incidence. Travel quickly returned to normal patterns after the restrictions were lifted. Conclusions The effects of travel restrictions on mobility can be large, targeted and measurable in near real-time. With appropriate anonymization protocols, mobile phone data should play a central role in guiding and monitoring interventions for epidemic containment.

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Andrew J. Tatem

University of Southampton

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Xin Lu

Central South University

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Carla Pezzulo

University of Southampton

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Jessica Steele

University of Southampton

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