Testing the Accuracy of a Digital Test to Diagnose Covid-19

NCT ID: NCT04407585

Last Updated: 2022-03-31

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

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Recruitment Status

UNKNOWN

Total Enrollment

1000000 participants

Study Classification

OBSERVATIONAL

Study Start Date

2020-06-01

Study Completion Date

2023-05-10

Brief Summary

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The Covid-19 viral pandemic has caused significant global losses and disruption to all aspects of society. One of the major difficulties in controlling the spread of this coronavirus has been the delayed and mild (or lack of) presentation of symptoms in infected individuals, and the insufficient Covid-19 testing capacity in the UK. This warrants the development of alternative diagnostic tools that reliably assess Covid-19 infection in the early stages of infection, while also being low- cost, low-burden, and easily administered to a wide proportion of the population.

This study aims to validate machine learning models as a diagnostic tool that predicts infection with SARS-CoV-2 based on app-reported symptoms and phenotypic data, against the 'gold-standard' swab PCR-test. This study will take place within the Covid Symptom Study app, the free symptom tracking mobile application launched in March 2020.

Detailed Description

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The Covid-19 viral pandemic has caused significant global losses and disruption to all aspects of society (including health, education, and business and economic security). One of the major difficulties in controlling the spread of this coronavirus has been the delayed and mild (or lack of) presentation of symptoms in infected individuals. Moreover, there is insufficient Covid-19 testing capacity in the UK, and only moderate accuracy of such tests at confirming coronavirus infection. Together, these obstacles have led to countless unknown coronavirus cases going unobserved and fuelling the viral spread in the population, by compromising the stringency of self- isolation measures undertaken by infected individuals who may have otherwise curbed or prevented their transmission of the virus. The profound and widespread cost of the continuing Covid-19 progression, coinciding with the lack of testing capacity, warrants the development of alternative diagnostic tools that reliably assess Covid-19 infection in the early stages of infection, while also being low- cost, low-burden, and easily administered to a wide proportion of the population.

The free symptom-monitoring app 'Covid Symptom Study' was launched in mid-March by health technology start-up Zoe Global Ltd, and is currently being used in the UK, US and Sweden, with more than 2.7 million users in the UK alone who use the app to self-report their Covid-19 symptoms. Upon registering to use the app, users are asked to report demographic and phenotypic data such as age, sex, BMI, ethnicity, contact with infected individuals (through a healthcare professional capacity), smoking behaviour, existing health conditions, among other information. From then on, users are asked to report, on a daily basis, their presentation of symptoms attributable to Covid-19 (or lack thereof) through the use of app-administered questionnaires, thus enabling real-time tracking of disease progression across the UK. The app also allows users to report their Covid-19 test results, thus enabling the development of prediction algorithms based solely on self-reported user data to predict the presence of infection in untested users.

On behalf of Zoe Global Ltd, the UK Department of Health and Social Care with support from the UK's Chief Scientific Advisor has committed to test up to 10,000 app-users per week for infection with SARS-CoV-2 across England and Northern Ireland, for the purpose of rapidly improving the accuracy of symptom-based predictions. Similar testing allowance may follow in Scotland and Wales.

Symptomatic app-users will be asked to get tested for SARS-CoV-2 infection, using the popular swab and qRT-PCR technique, and asked to report their test results in the app, while continuing to log their symptoms.

This validation study, conducted at King's College London, aims to validate the sensitivity and specificity of machine learning models as a diagnostic tool that predicts infection with SARS-CoV-2 based on app-reported symptoms and phenotypic data, against the 'gold-standard' swab PCR-test, by utilising the Covid Symptom Study app as a research platform.

It is hypothesised that by training the symptom-based models using swab test results and through multiple model iterations following continuous data input from reporting and tested app users, predictions of infection will be made with considerable accuracy, thus enabling the Covid Symptom Study app to be used as a diagnostic tool that alleviates the strain of testing capacity in the UK while being easily accessible and posing low user burden.

Study Design:

Due to the rapidly developing and uncertain duration and intensity of the Covid-19 pandemic, the present study design is prospective and one that enables regular iteration on prediction models and continuous accumulation of validation data. The study consists of a series of phases, each lasting 14 days. Before the start of each phase (day 0), a set of machine learning models will be frozen and submitted for validation on data collected during this and subsequent phases.

Machine learning algorithms improve with increasing data. Therefore, validation phases will continue as long as tests are available and app users consent to joining the study. Due to the uncertainty around the progression of UK infection rates, the validation study will be continue whilst it is of value to public health.

A detailed statistical analysis plan is described in the document attached to this record. A record of all machine learning models used for validation will be regularly updated on GitHub (https://github.com/zoe/covid-validation-study).

Conditions

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Covid-19

Study Design

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Observational Model Type

COHORT

Study Time Perspective

PROSPECTIVE

Study Groups

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Covid-19 Symptom Study app-user

UK-based Covid-19 Symptom Study primary app-user completing self-reports in the app

Covid-19 swab PCR test

Intervention Type DIAGNOSTIC_TEST

Participants satisfying machine learning test criteria will be asked to take a swab test for Covid-19.

Interventions

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Covid-19 swab PCR test

Participants satisfying machine learning test criteria will be asked to take a swab test for Covid-19.

Intervention Type DIAGNOSTIC_TEST

Eligibility Criteria

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Inclusion Criteria

* Are based in the UK (are using the UK version of the Covid-19 Symptom Study app, and have listed a UK postcode)
* Are the primary app user (are reporting directly for themselves)
* Are at least 18 years of age
* Have not tested positive for a Covid-19 test before (but may have been tested)

* Do not provide informed consent to participate

Participants will be subject to further screening to identify them as eligible for swab testing during the course of the study.


* Have reported in the app at least once in the previous 3 days (days -2 to 0), and at least two times in the previous 9 days (days -8 to 0). All reports must be healthy (i.e. not experiencing any symptoms).
* On the previous day (day 1), have reported that they are experiencing at least one symptom described in the app. Symptoms in the app are updated when deemed appropriate by study investigators using evidence based reports in the scientific and medical field.
* Have answered the phenotype fields required for the prediction model with physiologically plausible values.


Insufficient testing capacity:

If insufficient testing capacity is available for the study population as described, then recruitment will be prioritised according to:

* Firstly, most recent final healthy report before reporting symptoms
* Secondly, highest number of healthy reports during the previous 9 days before reporting symptoms
* Thirdly, randomised selection to stratify between participants of equal priority according to the first two rules above.

Excess testing capacity:


Specifically, on day 7 of each validation phase, investigators will assess:

* What excess testing capacity is available, if any
* Which subgroups are under-represented compared to their proportion in the UK population (as best as can be established given that some participants may not have completed some phenotype fields):

(i) Age decade (ii) Sex (iii) Ethnicity (iv) BMI category

For underrepresented groups, investigators may additionally recruit participants with only one report during the previous 3 days (days -2 to 0) and no other report during the previous 9 days (days -8 to 0).

Exclusion Criteria

* Are asymptomatic
Minimum Eligible Age

18 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

No

Sponsors

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Zoe Global Limited

OTHER

Sponsor Role collaborator

Department of Health, United Kingdom

OTHER_GOV

Sponsor Role collaborator

King's College London

OTHER

Sponsor Role lead

Responsible Party

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Responsibility Role SPONSOR

Locations

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King's College London

London, , United Kingdom

Site Status RECRUITING

Countries

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United Kingdom

Central Contacts

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Inbar Linenberg, MSc

Role: CONTACT

+447791871699

Facility Contacts

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Inbar Linenberg, MSc

Role: primary

+447791871699

Provided Documents

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Document Type: Statistical Analysis Plan

View Document

Other Identifiers

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Covid-19 Validation Study

Identifier Type: -

Identifier Source: org_study_id

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