Literature DB >> 33502000

Digital contact tracing technologies in epidemics: a rapid review.

Andrew Anglemyer1,2, Theresa Hm Moore3,2,4, Lisa Parker5, Timothy Chambers6, Alice Grady7, Kellia Chiu8, Matthew Parry9, Magdalena Wilczynska10, Ella Flemyng11, Lisa Bero12.   

Abstract

BACKGROUND: Reducing the transmission of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) is a global priority. Contact tracing identifies people who were recently in contact with an infected individual, in order to isolate them and reduce further transmission. Digital technology could be implemented to augment and accelerate manual contact tracing. Digital tools for contact tracing may be grouped into three areas: 1) outbreak response; 2) proximity tracing; and 3) symptom tracking. We conducted a rapid review on the effectiveness of digital solutions to contact tracing during infectious disease outbreaks.
OBJECTIVES: To assess the benefits, harms, and acceptability of personal digital contact tracing solutions for identifying contacts of an identified positive case of an infectious disease. SEARCH
METHODS: An information specialist searched the literature from 1 January 2000 to 5 May 2020 in CENTRAL, MEDLINE, and Embase. Additionally, we screened the Cochrane COVID-19 Study Register. SELECTION CRITERIA: We included randomised controlled trials (RCTs), cluster-RCTs, quasi-RCTs, cohort studies, cross-sectional studies and modelling studies, in general populations. We preferentially included studies of contact tracing during infectious disease outbreaks (including COVID-19, Ebola, tuberculosis, severe acute respiratory syndrome virus, and Middle East respiratory syndrome) as direct evidence, but considered comparative studies of contact tracing outside an outbreak as indirect evidence. The digital solutions varied but typically included software (or firmware) for users to install on their devices or to be uploaded to devices provided by governments or third parties. Control measures included traditional or manual contact tracing, self-reported diaries and surveys, interviews, other standard methods for determining close contacts, and other technologies compared to digital solutions (e.g. electronic medical records). DATA COLLECTION AND ANALYSIS: Two review authors independently screened records and all potentially relevant full-text publications. One review author extracted data for 50% of the included studies, another extracted data for the remaining 50%; the second review author checked all the extracted data. One review author assessed quality of included studies and a second checked the assessments. Our outcomes were identification of secondary cases and close contacts, time to complete contact tracing, acceptability and accessibility issues, privacy and safety concerns, and any other ethical issue identified. Though modelling studies will predict estimates of the effects of different contact tracing solutions on outcomes of interest, cohort studies provide empirically measured estimates of the effects of different contact tracing solutions on outcomes of interest. We used GRADE-CERQual to describe certainty of evidence from qualitative data and GRADE for modelling and cohort studies. MAIN
RESULTS: We identified six cohort studies reporting quantitative data and six modelling studies reporting simulations of digital solutions for contact tracing. Two cohort studies also provided qualitative data. Three cohort studies looked at contact tracing during an outbreak, whilst three emulated an outbreak in non-outbreak settings (schools). Of the six modelling studies, four evaluated digital solutions for contact tracing in simulated COVID-19 scenarios, while two simulated close contacts in non-specific outbreak settings. Modelling studies Two modelling studies provided low-certainty evidence of a reduction in secondary cases using digital contact tracing (measured as average number of secondary cases per index case - effective reproductive number (R eff)). One study estimated an 18% reduction in R eff with digital contact tracing compared to self-isolation alone, and a 35% reduction with manual contact-tracing. Another found a reduction in R eff for digital contact tracing compared to self-isolation alone (26% reduction) and a reduction in R eff for manual contact tracing compared to self-isolation alone (53% reduction). However, the certainty of evidence was reduced by unclear specifications of their models, and assumptions about the effectiveness of manual contact tracing (assumed 95% to 100% of contacts traced), and the proportion of the population who would have the app (53%). Cohort studies Two cohort studies provided very low-certainty evidence of a benefit of digital over manual contact tracing. During an Ebola outbreak, contact tracers using an app found twice as many close contacts per case on average than those using paper forms. Similarly, after a pertussis outbreak in a US hospital, researchers found that radio-frequency identification identified 45 close contacts but searches of electronic medical records found 13. The certainty of evidence was reduced by concerns about imprecision, and serious risk of bias due to the inability of contact tracing study designs to identify the true number of close contacts. One cohort study provided very low-certainty evidence that an app could reduce the time to complete a set of close contacts. The certainty of evidence for this outcome was affected by imprecision and serious risk of bias. Contact tracing teams reported that digital data entry and management systems were faster to use than paper systems and possibly less prone to data loss. Two studies from lower- or middle-income countries, reported that contact tracing teams found digital systems simpler to use and generally preferred them over paper systems; they saved personnel time, reportedly improved accuracy with large data sets, and were easier to transport compared with paper forms. However, personnel faced increased costs and internet access problems with digital compared to paper systems. Devices in the cohort studies appeared to have privacy from contacts regarding the exposed or diagnosed users. However, there were risks of privacy breaches from snoopers if linkage attacks occurred, particularly for wearable devices. AUTHORS'
CONCLUSIONS: The effectiveness of digital solutions is largely unproven as there are very few published data in real-world outbreak settings. Modelling studies provide low-certainty evidence of a reduction in secondary cases if digital contact tracing is used together with other public health measures such as self-isolation. Cohort studies provide very low-certainty evidence that digital contact tracing may produce more reliable counts of contacts and reduce time to complete contact tracing. Digital solutions may have equity implications for at-risk populations with poor internet access and poor access to digital technology. Stronger primary research on the effectiveness of contact tracing technologies is needed, including research into use of digital solutions in conjunction with manual systems, as digital solutions are unlikely to be used alone in real-world settings. Future studies should consider access to and acceptability of digital solutions, and the resultant impact on equity. Studies should also make acceptability and uptake a primary research question, as privacy concerns can prevent uptake and effectiveness of these technologies.
Copyright © 2020 The Cochrane Collaboration. Published by John Wiley & Sons, Ltd.

Entities:  

Mesh:

Year:  2020        PMID: 33502000      PMCID: PMC8241885          DOI: 10.1002/14651858.CD013699

Source DB:  PubMed          Journal:  Cochrane Database Syst Rev        ISSN: 1361-6137


  45 in total

1.  Show evidence that apps for COVID-19 contact-tracing are secure and effective.

Authors: 
Journal:  Nature       Date:  2020-04       Impact factor: 49.962

2.  Digital contact tracing technologies in epidemics: a rapid review.

Authors:  Andrew Anglemyer; Theresa Hm Moore; Lisa Parker; Timothy Chambers; Alice Grady; Kellia Chiu; Matthew Parry; Magdalena Wilczynska; Ella Flemyng; Lisa Bero
Journal:  Cochrane Database Syst Rev       Date:  2020-08-18

3.  Introduction of Mobile Health Tools to Support Ebola Surveillance and Contact Tracing in Guinea.

Authors:  Jilian A Sacks; Elizabeth Zehe; Cindil Redick; Alhoussaine Bah; Kai Cowger; Mamady Camara; Aboubacar Diallo; Abdel Nasser Iro Gigo; Ranu S Dhillon; Anne Liu
Journal:  Glob Health Sci Pract       Date:  2015-11-12

4.  Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement.

Authors:  David Moher; Alessandro Liberati; Jennifer Tetzlaff; Douglas G Altman
Journal:  PLoS Med       Date:  2009-07-21       Impact factor: 11.069

5.  Commercialization of User Data by Developers of Medicines-Related Apps: a Content Analysis.

Authors:  Quinn Grundy; Kellia Chiu; Lisa Bero
Journal:  J Gen Intern Med       Date:  2019-12       Impact factor: 5.128

6.  Quarantine alone or in combination with other public health measures to control COVID-19: a rapid review.

Authors:  Barbara Nussbaumer-Streit; Verena Mayr; Andreea Iulia Dobrescu; Andrea Chapman; Emma Persad; Irma Klerings; Gernot Wagner; Uwe Siebert; Claudia Christof; Casey Zachariah; Gerald Gartlehner
Journal:  Cochrane Database Syst Rev       Date:  2020-04-08

7.  Epidemic risk from friendship network data: an equivalence with a non-uniform sampling of contact networks.

Authors:  Julie Fournet; Alain Barrat
Journal:  Sci Rep       Date:  2016-04-15       Impact factor: 4.379

8.  Applying GRADE-CERQual to qualitative evidence synthesis findings: introduction to the series.

Authors:  Simon Lewin; Andrew Booth; Claire Glenton; Heather Munthe-Kaas; Arash Rashidian; Megan Wainwright; Meghan A Bohren; Özge Tunçalp; Christopher J Colvin; Ruth Garside; Benedicte Carlsen; Etienne V Langlois; Jane Noyes
Journal:  Implement Sci       Date:  2018-01-25       Impact factor: 7.327

9.  Acceptability of App-Based Contact Tracing for COVID-19: Cross-Country Survey Study.

Authors:  Samuel Altmann; Luke Milsom; Hannah Zillessen; Raffaele Blasone; Frederic Gerdon; Ruben Bach; Frauke Kreuter; Daniele Nosenzo; Séverine Toussaert; Johannes Abeler
Journal:  JMIR Mhealth Uhealth       Date:  2020-08-28       Impact factor: 4.773

10.  Feasibility, Acceptability, and Adoption of Digital Fingerprinting During Contact Investigation for Tuberculosis in Kampala, Uganda: A Parallel-Convergent Mixed-Methods Analysis.

Authors:  Mari Armstrong-Hough; John Lucian Davis; Elizabeth B White; Amanda J Meyer; Joseph M Ggita; Diana Babirye; David Mark; Irene Ayakaka; Jessica E Haberer; Achilles Katamba
Journal:  J Med Internet Res       Date:  2018-11-15       Impact factor: 5.428

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  38 in total

1.  The Potential Role of an Adjunctive Real-Time Locating System in Preventing Secondary Transmission of SARS-CoV-2 in a Hospital Environment: Retrospective Case-Control Study.

Authors:  Min Hyung Kim; Un Hyoung Ryu; Seok-Jae Heo; Yong Chan Kim; Yoon Soo Park
Journal:  J Med Internet Res       Date:  2022-10-18       Impact factor: 7.076

Review 2.  The Lancet Commission on lessons for the future from the COVID-19 pandemic.

Authors:  Jeffrey D Sachs; Salim S Abdool Karim; Lara Aknin; Joseph Allen; Kirsten Brosbøl; Francesca Colombo; Gabriela Cuevas Barron; María Fernanda Espinosa; Vitor Gaspar; Alejandro Gaviria; Andy Haines; Peter J Hotez; Phoebe Koundouri; Felipe Larraín Bascuñán; Jong-Koo Lee; Muhammad Ali Pate; Gabriela Ramos; K Srinath Reddy; Ismail Serageldin; John Thwaites; Vaira Vike-Freiberga; Chen Wang; Miriam Khamadi Were; Lan Xue; Chandrika Bahadur; Maria Elena Bottazzi; Chris Bullen; George Laryea-Adjei; Yanis Ben Amor; Ozge Karadag; Guillaume Lafortune; Emma Torres; Lauren Barredo; Juliana G E Bartels; Neena Joshi; Margaret Hellard; Uyen Kim Huynh; Shweta Khandelwal; Jeffrey V Lazarus; Susan Michie
Journal:  Lancet       Date:  2022-09-14       Impact factor: 202.731

3.  Expert insights on digital contact tracing: interviews with contact tracing policy professionals in New Zealand.

Authors:  Tim Chambers; Richard Egan; Karyn Maclennan; Tepora Emery; Sarah Derrett
Journal:  Health Promot Int       Date:  2022-06-01       Impact factor: 3.734

4.  What Went Wrong with the IMMUNI Contact-Tracing App in Italy? A Cross-Sectional Survey on the Attitudes and Experiences among Healthcare University Students.

Authors:  Claudia Isonne; Maria Roberta De Blasiis; Federica Turatto; Elena Mazzalai; Carolina Marzuillo; Corrado De Vito; Paolo Villari; Valentina Baccolini
Journal:  Life (Basel)       Date:  2022-06-10

Review 5.  Best Practice Guidance for Digital Contact Tracing Apps: A Cross-disciplinary Review of the Literature.

Authors:  James O'Connell; Manzar Abbas; Sarah Beecham; Jim Buckley; Muslim Chochlov; Brian Fitzgerald; Liam Glynn; Kevin Johnson; John Laffey; Bairbre McNicholas; Bashar Nuseibeh; Michael O'Callaghan; Ian O'Keeffe; Abdul Razzaq; Kaavya Rekanar; Ita Richardson; Andrew Simpkin; Cristiano Storni; Damyanka Tsvyatkova; Jane Walsh; Thomas Welsh; Derek O'Keeffe
Journal:  JMIR Mhealth Uhealth       Date:  2021-06-07       Impact factor: 4.773

6.  Digital contact tracing technologies in epidemics: a rapid review.

Authors:  Andrew Anglemyer; Theresa Hm Moore; Lisa Parker; Timothy Chambers; Alice Grady; Kellia Chiu; Matthew Parry; Magdalena Wilczynska; Ella Flemyng; Lisa Bero
Journal:  Cochrane Database Syst Rev       Date:  2020-08-18

7.  Impact of COVID-19 contact tracing on human resources for health - A Caribbean perspective.

Authors:  N P Sobers; C H Howitt; S M Jeyaseelan; N S Greaves; H Harewood; M M Murphy; K Quimby; I R Hambleton
Journal:  Prev Med Rep       Date:  2021-04-03

8.  Mass Testing With Contact Tracing Compared to Test and Trace for the Effective Suppression of COVID-19 in the United Kingdom: Systematic Review.

Authors:  Mathew Mbwogge
Journal:  JMIRx Med       Date:  2021-04-12

Review 9.  Future developments in training.

Authors:  Katharina Last; Nicholas R Power; Sarah Dellière; Petar Velikov; Anja Šterbenc; Ivana Antal Antunovic; Maria João Lopes; Valentijn Schweitzer; Aleksandra Barac
Journal:  Clin Microbiol Infect       Date:  2021-06-28       Impact factor: 8.067

10.  Mobile Clustering Scheme for Pedestrian Contact Tracing: The COVID-19 Case Study.

Authors:  Mario E Rivero-Angeles; Víctor Barrera-Figueroa; José E Malfavón-Talavera; Yunia V García-Tejeda; Izlian Y Orea-Flores; Omar Jiménez-Ramírez; José A Bermúdez-Sosa
Journal:  Entropy (Basel)       Date:  2021-03-10       Impact factor: 2.524

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