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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

Which Covid-19 Data Can You Trust? - 2 views

  • In a crisis situation like the one we are in, data can be an essential tool for crafting responses, allocating resources, measuring the effectiveness of interventions, such as social distancing, and telling us when we might reopen economies. However, incomplete or incorrect data can also muddy the waters, obscuring important nuances within communities, ignoring important factors such as socioeconomic realities, and creating false senses of panic or safety, not to mention other harms such as needlessly exposing private information.
  • Unfortunately, many of these technological solutions — however well intended — do not provide the clear picture they purport to. In many cases, there is insufficient engagement with subject-matter experts, such as epidemiologists who specialize in modeling the spread of infectious diseases or front-line clinicians who can help prioritize needs. But because technology and telecom companies have greater access to mobile device data, enormous financial resources, and larger teams of data scientists, than academic researchers do, their data products are being rolled out at a higher volume than high quality studies.
  • To some extent, all data risk breaching the privacy of individual or group identities, but publishing scorecards for specific neighborhoods risks shaming or punishing communities, while ignoring the socioeconomic realities of people’s lives that make it difficult for them to stay home.
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  • Even more granular examples, such as footfalls at identifiable business locations, risks de-identifying religious groups; patients visiting cancer hospitals, HIV clinics, or reproductive health clinics; or those seeking public assistance. The medical and public health communities long ago deemed the un-masking of such information without consent unacceptable, but companies have recently been releasing it on publicly available dashboards.
  • Until we know more about how these changing movement patterns impact epidemiological aspects of the disease, we should use these data with caution.
  • Simply presenting them, or interpreting them without a proper contextual understanding, could inadvertently lead to imposing or relaxing restrictions on lives and livelihoods, based on incomplete information.
  • In the absence of a tightly coupled testing and treatment plan, however, these apps risk either providing false reassurance to communities where infectious but asymptomatic individuals can continue to spread disease, or requiring an unreasonably large number of people to quarantine. The behavioral response of the population to these apps is therefore unknown and likely to vary significantly across societies.
  • Some contact-tracing apps follow black-box algorithms, which preclude the global community of scientists from refining them or adopting them elsewhere. These non-transparent, un-validated interventions — which are now being rolled out (or rolled back) in countries such as China, India, Israel and Vietnam — are in direct contravention to the open cross-border collaboration that scientists have adopted to address the Covid-19 pandemic.
  • pidemiological models that can help predict the burden and pattern of spread of Covid-19 rely on a number of parameters that are, as yet, wildly uncertain. We still lack many of the basic facts about this disease, including how many people have symptoms, whether people who have been infected are immune to reinfection, and — crucially — how many people have been infected so far. In the absence of reliable virological testing data, we cannot fit models accurately, or know confidently what the future of this epidemic will look like for all these reasons, and yet numbers are being presented to governments and the public with the appearance of certainty
  • Telenor, the Norwegian telco giant has led the way in responsible use of aggregated mobility data from cell phone tower records. Its data have been used, in close collaboration with scientists and local practitioners, to model, predict, and respond to outbreaks around the world. Telenor has openly published its methods and provided technological guidance on how telco data can be used in public health emergencies in a responsible, anonymized format that does not risk de-identification.
  • The Covid-19 Mobility Data Network, of which we are part, comprises a voluntary collaboration of epidemiologists from around the world analyzes aggregated data from technology companies to provide daily insights to city and state officials from California to Dhaka, Bangladesh.
davetaz

Potential Coronavirus (COVID-19) symptoms reported through NHS Pathways and 111 online ... - 0 views

  • Potential Coronavirus (COVID-19) symptoms reported through NHS Pathways and 111 online
  • Summary Data published on potential COVID-19 symptoms reported through NHS Pathways and 111 online Dashboard shows the total number of NHS Pathways triages through 111 and 999, and online assessments in 111 online which have received a potential COVID-19 final disposition. This data is based on potential COVID-19 symptoms reported by members of the public to NHS Pathways through NHS 111 or 999 and 111 online,  and is not based on the outcomes of tests for coronavirus. This is not a count of people.
Ben Snaith

About this Project | COVID-19 County Social Distancing Reporter - 0 views

  • In achieving these goals, we started by applying our experience at Camber and the experience of the epidemiological teams, and taking into account the differences between aggregated human movements that are predictable and movements that are not, notably socialization. Presenting both radius of gyration and entropy gives a more complete picture of socialization patterns within a county. For example, a high RoG and low entropy could indicate a population that needs to travel far to go to work or the grocery store, but are otherwise staying home; a low RoG and high entropy could indicate a more dense area where people are staying near home but are still moving in their neighborhood. Both are important signals needing different interventions.*
    • Ben Snaith
       
      yo @fionntan this seems helpful, I just don't really get it
  • In collaboration with epidemiologists within the COVID-19 Mobility Data Network including the Harvard School of Public Health, Direct Relief, Princeton, and many others, we built this dashboard as an enhanced offering to public health officials that builds further on others’ early work product. This effort provides a more accurate and actionable understanding of the effectiveness of social distancing and other policy interventions aimed at reducing or slowing the spread of COVID-19.
  • In developing this dashboard, we began with several goals. First, we worked with public-health researchers to understand what they needed and provide them with the most-important data and metrics. Second, we worked with experts to ensure that we used privacy-forward practices in developing these metrics. Finally, we aim to iterate based on new information and feedback from the public and researchers to continue to aid the fight against COVID-19.
fionntan

GitHub - reichlab/covid19-forecast-hub: Projections of COVID-19, in standardized format - 0 views

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    The goal of this repository is to create a standardized set of data on forecasts from teams making projections of cumulative and incident deaths and incident hospitalizations due to COVID-19 in the United States.
Ben Snaith

Air pollution linked to raised Covid-19 death risk - BBC News - 0 views

  • A US study suggests Covid-19 death rates rise by about 15% in areas with even a small increase in fine-particle pollution levels in the years before the pandemic."Patterns in Covid-19 death rates generally mimic patterns in both high population density and high [particulate matter] PM2.5 exposure areas," the Harvard University report says.
Ben Snaith

Coronavirus: People with COVID-19 symptoms more than double number who tested positive,... - 0 views

  • More than 370,000 people in the UK have symptomatic COVID-19, according to an app tracking the virus "in real time".
  • The figures from the app are more than double the 148,377 who have tested positive, according to the Department of Health's official numbers.
fionntan

Use of apps in the COVID-19 response and the loss of privacy protection | Nature Medicine - 0 views

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    Mobile apps provide a convenient source of tracking and data collection to fight against the spread of COVID-19. We report our analysis of 50 COVID-19-related apps, including their use and their access to personally identifiable information, to ensure that the right to privacy and civil liberties are protected.
olivierthereaux

Coronavirus (COVID-19) harmonisation guidance - 0 views

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    Harmonised principles set out how to collect and report statistics to ensure comparability across different data collections in the Government Statistical Service (GSS). Harmonisation produces more useful statistics that give users a greater level of understanding. When it comes to collecting data about the impact of the coronavirus (COVID-19) pandemic we are proposing a harmonised set of questions. Given the lack of testing these are to be considered experimental and not a full harmonised principle.
Ben Snaith

Access-Now-recommendations-on-Covid-and-data-protection-and-privacy.pdf - 0 views

shared by Ben Snaith on 23 Apr 20 - No Cached
  • International and national laws recognize that extraordinary circumstances require extraordinary measures. This means that certain fundamental rights, including the rights to privacy and data protection, may be restricted to address the current health crisis as long as basic democratic principles and a series of safeguards are applied, and the interference is lawful, limited in time, and not arbitrary.
  • Special legal orders and measures should be written and broadcast, and disseminated broadly in appropriate languages and forums. They must have a sunset clause; indefinite term measures are not acceptable. Potential extension could be considered if necessary, but extraordinary measures must be limited in their severity, duration, and geographic scope. Governments and authorities must take every measure to restore regular rules as soon as possible at the end of a special legal order.
  • The National Health Institute of​ Perú​ developed a platform where you can consult the health reports of patients who were tested for COVID-19 by entering their national identity document. For a few days, the information was therefore accessible to the public, not limited to the patient. After receiving criticism, the national 10 authorities included a second authenticator. To connect to the platform, an SMS-based code is now necessary. 11
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  • In ​India​, at least two state governments — including the state of Karnataka, housing the tech hub of Bangalore — have uploaded PDF files online with names, house addresses, and travel history of people ordered into COVID-19 quarantines. The 12 information is accessible by everyone.
  • In particular, the ongoing crisis highlights how much the public and public authorities are depending on tech companies to function: from providing broadband access, to allowing people to work from home, to providing video-conferencing solutions or tools that respond directly to the crisis, such as diagnosis apps.
  • In ​Tunisia​,​ ​Enova Robotics signed an agreement with the Ministry of Interior to start operating PGuard robots. These robots will be equipped with a set of infrared 39 cameras and used to stop people from leaving their houses. There is no information as to where these robots will be deployed, what information they will gather, how long they will keep the data and who would have access to it.
Ben Snaith

Covid-19 UK Mobility Project - 1 views

  • These reports are based on similar analysis carried out on Italian data Pepe E. et al. 2020 and US data Klein B. et al. 2020. We aim to provide and assess the changes in commuting and mobility at local authority level across UK during the COVID-19 health crisis.
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    apologies for the obnoxiously sized images
Ben Snaith

Code red - To curb covid-19, China is using its high-tech surveillance tools | China | ... - 0 views

  • The red colour of the QR code on Ms Sun’s “Hangzhou Health Code” app indicated that she was supposed to be undergoing 14 days of self-quarantine. Had the code been yellow, it would have meant she was a lower risk and had to isolate herself for seven days. For free passage around the city, people must produce their phones at checkpoints and show they have a green QR code. Pictured is another method of keeping tabs on people: drivers have to scan the code held up by a drone to register for entry into the city, in this case Shenzhen.
  • But those efforts involve only a single province. Creating such systems is far harder when it entails data-sharing between provinces, or between provincial and central authorities. Co-operation is undermined by competition for favour in Beijing. The boss of a foreign artificial-intelligence developer in China says that fusing datasets within a single firm is often quick, but not if it involves co-operation between different institutions. “The person in charge is unwilling to take the risk,” he says, and usually reckons that doing nothing is safer than sharing.
Ben Snaith

COVID-19 Digital Rights Tracker - 0 views

  • According to the article, the mayor wrote on his website: “Compliance with the regime is constantly monitored, including with the help of facial recognition systems and other technical measures.”
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

Covid-19 Project - 1 views

For discussion of the Covid-19 project

Coronavirus Data Contact-Tracing Data-Access Models

started by Ben Snaith on 23 Apr 20 no follow-up yet
Ben Snaith

Using Location Data to Tackle Covid-19: A Primer | Institute for Global Change - 0 views

  • Aggregated Location Data Analysis of aggregated location data can be used to identify hotspots of transmission and forecast future trends on transmission. This can help governments measure the efficacy of existing measures as well as guide government decision-making going forward, on subjects such as public-health interventions and where to allocate testing and medical resources. This kind of data will be particularly significant for governments as lockdowns are eased; it is essential that governments are able to gather real-time insights on the effectiveness of their interventions.
  • Medical experts currently believe that the virus is transmissible within 2 metres – meaning a person must come in contact within 2 metres of an infected person to have a chance of contracting it from social interactions. Therefore, effective digital contract tracing requires highly precise data. However, most extant technology was not designed to rapidly geolocate devices at that level of precision, meaning most location data is less precise than 2 metres. The ongoing challenge for technologists is to either adapt extant technology for a purpose for which it was not designed or build new solutions that can deliver the required level of precision.
  • ost notably, if the data used for generating location and mobility insights is weak (low precision and low accuracy), then the privacy implications may be less stark – but the value of the exercise also decreases. Both individual tracking and generating aggregated mobility insights based on weak location data can result in flawed insights. This can have a range of undesirable costs for both individuals and governments.
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  • Policymakers must be clear about the level of analysis they are seeking, and realistic about the capabilities of technology to achieve this. It is a challenge going from achieving high level location insights on a community level such as a building, neighbourhood or street to an individual level, and governments should be prepared to be told that current data infrastructure doesn’t support exactly what they are asking for. Focusing on community data is currently much easier than focusing on individual data. Issues around precision can be solved by 5G, but we don’t currently have that capability.
  • Governments must evaluate whether the trade-off they are asking citizens to make is commensurate with the value created. For example, if you are building individual contact tracing and the data is accurate within 1 kilometre, the value of the data is low, and the trade-off may not be worth it. They must also be straightforward with the public about the expected benefits and limitations of the technologies they are pursuing, and the trade-offs with other concerns in relation to privacy and data security.
  • Governments should work with partners, but they should do so by putting out clear calls for assistance to engage with the right level and type of expertise. So far, the engagement from many governments has happened on an ad-hoc basis, and partnerships between government and companies or researchers has happened as a result of partners approaching government first. Instead, governments must be clear about their objectives from the outset and put out a call for support from technical experts. Mobile operators can help governments analyse data on a community level; working with data can give some false conclusions, which mobile operators can help to address.
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