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Ben Snaith

Coronavirus response in the UK and France - 0 views

  • Perhaps the largest difference between the UK and France has been in the quality of data that is being provided to the public, to the media, and (I suspect) to the politicians making decisions about what to do. National, regional, sub-regional, and demographic breakdowns of deaths, hospital admissions, intensive care capacity and occupancy, excess deaths, and much more are provided regularly by French government bodies. The data.gouv.fr site hosts discussions where data is improved, improvements are requested, and analysis is shared. While The Financial Times has undoubtedly provided the best data analysis to the world, no UK paper has access to the data that would let it provide as good analysis to the country as the French press and French society have been able to provide to the French public and its politicians.
Ben Snaith

How will Coronavirus affect jobs in different parts of the country? | Centre for Cities - 0 views

  • Self-employed people in the North and Midlands are more likely to be in insecure, lower-paid roles at high risk from economic shocks
  • Cities in the Greater South East are more likely to be able to shift to working from home
  • The jobs that could be more easily done from home – such as consultants or finance – are concentrated in cities in the Greater South East (see the figure below). Assuming some sectors could completely shift to home working if necessary, up to one in two workers in London could shift to working from home. Meanwhile in Reading, Aldershot and Edinburgh over 40 per cent of workers could too.
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  • On the other hand, less than 20 per cent of all workers in Barnsley, Burnley and Stoke could work from home, suggesting the economies of many northern cities are likely to be hardest hit by a complete lockdown.
Ben Snaith

Open Data Being Used to Help Track COVID-19 in Scotland - 0 views

  • “In a perfect world we would have data at a regional, or even more granular level, and cover not just broad-brush numbers of positive and negative tests and deaths. It would have more-localised data, breakdowns by gender and age bands. It would cover numbers of ITU patients, numbers of people recovered, the number of test kits we have, staffing, ventilators etc,” Watt says.
Ben Snaith

Corona Positive Deviance - 0 views

  • Positive Deviants are individuals, groups, cities, regions etc. who outperform their peers in a comparable context thanks to creative and highly adaptive solutions they have come up with.
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    We want to contribute to this effort and have come together as individuals from diverse backgrounds and professions to join forces in analyzing the data available and identifying what we call the "positive deviants".
Ben Snaith

Mobile phone data for informing public health actions across the COVID-19 pandemic life... - 0 views

  • Decision-making and evaluation or such interventions during all stages of the pandemic life cycle require specific, reliable, and timely data not only about infections but also about human behavior, especially mobility and physical copresence. We argue that mobile phone data, when used properly and carefully, represents a critical arsenal of tools for supporting public health actions across early-, middle-, and late-stage phases of the COVID-19 pandemic.
  • Seminal work on human mobility has shown that aggregate and (pseudo-)anonymized mobile phone data can assist the modeling of the geographical spread of epidemics (7–11).
  • Although ad hoc mechanisms leveraging mobile phone data can be effectively (but not easily) developed at the local or national level, regional or even global collaborations seem to be much more difficult given the number of actors, the range of interests and priorities, the variety of legislations concerned, and the need to protect civil liberties. The global scale and spread of the COVID-19 pandemic highlight the need for a more harmonized or coordinated approach.
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  • Government and public health authorities broadly raise questions in at least four critical areas of inquiries for which the use of mobile phone data is relevant. First, situational awareness questions seek to develop an understanding of the dynamic environment of the pandemic. Mobile phone data can provide access to previously unavailable population estimates and mobility information to enable stakeholders across sectors better understand COVID-19 trends and geographic distribution. Second, cause-and-effect questions seek to help identify the key mechanisms and consequences of implementing different measures to contain the spread of COVID-19. They aim to establish which variables make a difference for a problem and whether further issues might be caused. Third, predictive analysis seeks to identify the likelihood of future outcomes and could, for example, leverage real-time population counts and mobility data to enable predictive capabilities and allow stakeholders to assess future risks, needs, and opportunities. Finally, impact assessments aim to determine which, whether, and how various interventions affect the spread of COVID-19 and require data to identify the obstacles hampering the achievement of certain objectives or the success of particular interventions.
  • During the acceleration phase, when community transmission reaches exponential levels, the focus is on interventions for containment, which typically involve social contact and mobility restrictions. At this stage, aggregated mobile phone data are valuable to assess the efficacy of implemented policies through the monitoring of mobility between and within affected municipalities. Mobility information also contributes to the building of more accurate epidemiological models that can explain and anticipate the spread of the disease, as shown for H1N1 flu outbreaks (29). These models, in turn, can inform the mobilization of resources (e.g., respirators and intensive care units).
  • Continued situational monitoring will be important as the COVID-19 pandemic is expected to come in waves (4, 31). Near real-time data on mobility and hotspots will be important to understand how lifting and reestablishing various measures translate into behavior, especially to find the optimal combination of measures at the right time (e.g., general mobility restrictions, school closures, and banning of large gatherings), and to balance these restrictions with aspects of economic vitality.
  • After the pandemic has subsided, mobile data will be helpful for post hoc analysis of the impact of different interventions on the progression of the disease and cost-benefit analysis of mobility restrictions. During this phase, digital contact-tracing technologies might be deployed, such as the Korean smartphone app Corona 100m (32) and the Singaporean smartphone app TraceTogether (33), that aim at minimizing the spread of a disease as mobility restrictions are lifted.
  • Origin-destination (OD) matrices are especially useful in the first epidemiological phases, where the focus is to assess the mobility of the population. The number of people moving between two different areas daily can be computed from the mobile network data, and it can be considered a proxy of human mobility.
  • Amount of time spent at home, at work, or other locations are estimates of the individual percentage of time spent at home/work/other locations (e.g., public parks, malls, and shops), which can be useful to assess the local compliance with countermeasures adopted by governments. The home and work locations need to be computed in a period of time before the deployment of mobility restrictions measures.
  • The use of mobile phone data for tackling the COVID-19 pandemic has gained attention but remains relatively scarce.
  • First, governments and public authorities frequently are unaware and/or lack a “digital mindset” and capacity needed for both for processing information that often is complex and requires multidisciplinary expertise (e.g., mixing location and health data and specialized modeling) and for establishing the necessary interdisciplinary teams and collaborations. Many government units are understaffed and sometimes also lack technological equipment.
  • Second, despite substantial efforts, access to data remains a challenge. Most companies, including mobile network operators, tend to be very reluctant to make data available—even aggregated and anonymized—to researchers and/or governments. Apart from data protection issues, such data are also seen and used as commercial assets, thus limiting the potential use for humanitarian goals if there are no sustainable models to support operational systems. One should also be aware that not all mobile network operators in the world are equal in terms of data maturity. Some are actively sharing data as a business, while others have hardly started to collect and use data.
  • Third, the use of mobile phone data raises legitimate public concerns about privacy, data protection, and civil liberties.
  • Control of the pandemic requires control of people—including their mobility and other behaviors. A key concern is that the pandemic is used to create and legitimize surveillance tools used by government and technology companies that are likely to persist beyond the emergency. Such tools and enhanced access to data may be used for purposes such as law enforcement by the government or hypertargeting by the private sector. Such an increase in government and industry power and the absence of checks and balance is harmful in any democratic state. The consequences may be even more devastating in less democratic states that routinely target and oppress minorities, vulnerable groups, and other populations of concern.
  • Fourth, researchers and technologists frequently fail to articulate their findings in clear, actionable terms that respond to practical political and technical questions. Researchers and domain experts tend to define the scope and direction of analytical problems from their perspective and not necessarily from the perspective of governments’ needs. Critical decisions have to be taken, while key results are often published in scientific journals and in jargon that are not easily accessible to outsiders, including government workers and policy makers.
  • Last, there is little political will and resources invested to support preparedness for immediate and rapid action. On country levels, there are too few latent and standing mixed teams, composed of (i) representatives of governments and public authorities, (ii) mobile network operators and technology companies, and (iii) different topic experts (virologists, epidemiologists, and data analysts); and there are no procedures and protocols predefined. None of these challenges are insurmountable, but they require a clear call for action.
  • To effectively build the best, most up-to-date, relevant, and actionable knowledge, we call on governments, mobile network operators, and technology companies (e.g. Google, Facebook, and Apple), and researchers to form mixed teams.
  • For later stages of the pandemic, and for the future, stakeholders should aim for a minimum level of “preparedness” for immediate and rapid action.
Ben Snaith

Wall Street Mines Apple and Google Mobility Data to Spot Revival - 0 views

  • LGIM’s asset allocation team takes Apple users’ requests for travel directions and adjusts them for weekly seasonality before projecting the data onto estimates for gross domestic product. So far, their analysis shows that the U.S. economy is holding up better than other regions and is gradually reopening, while there are signs of improvement in southern Europe as countries like Italy relax their movement restrictions.
  • In addition to LGIM, Societe Generale SA and Deutsche Bank AG are among those tracking mobility data. SocGen quant strategists led by Andrew Lapthorne said in a note on Monday that the data has helped them see that despite the easing of lockdowns in major economies, activity continues to be weak.
  • Over at Deutsche Bank, strategists are using Google data to monitor any pick-up in activity in various New York communities.
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  • Torsten Slok, chief economist at Deutsche Bank Securities, said the analysts are beginning to see early signs of a turnaround in daily and weekly indicators of New York City subway usage, but those improvements are more modest than the pick-up in activity at parks, grocery stores and pharmacies.
olivierthereaux

CovidJSON | Standards based GeoJSON data model for infection data - 0 views

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    A proposed data standard (GeoJSON data model) for exchanging data for viral infection tests, contact events used for contact tracing and regional infection statistics. The model is based on OGC/ISO Observations & measurements Standard (OGC O&M, ISO 19156) concepts. Created specifically for recording and exchanging data on SARS-CoV-2 infection tests, but likely applicable also to describing test data for detecting other infectious diseases too.
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