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Improving the Accuracy of Artificial Intelligence Triage in Primary Care

U

University of Manchester

Status

Enrolling

Conditions

Primary Care
Artificial Intelligence (AI)

Treatments

Other: AI triage
Other: No AI triage

Study type

Interventional

Funder types

Other

Identifiers

NCT07237919
7hzfm (Other Identifier)
340776

Details and patient eligibility

About

WHY ARE WE DOING THIS? When patients contact their GP practice, the first step is to work out what kind of help they need and how quickly it's needed. This is called 'triage' and is important for patient safety.

Artificial Intelligence (AI) can help make triage faster. While AI is already being used in the NHS, we don't know how accurate it is or if it treats all patients fairly.

WHAT WILL WE DO?

We will collect anonymised data from patients that use an AI triage system called Patchs in GP practices in England. The project will last four years. We will analyse the data in four steps:

  1. Look at data from GP practices using Patchs without AI triage to see how they currently triage patients and what problems they face.
  2. Use data from GP practices using Patchs (both with AI on and off) to make the AI triage more accurate.
  3. Check data from GP practices using Patchs with AI triage off to measure how well the updated AI system works.
  4. Give the improved AI triage system to GP practices already using AI.

At each step, we will check whether patients from different backgrounds are treated fairly.

HOW WILL WE ANALYSE THE DATA? We will use statistical methods to compare the triage decisions made by the AI with those made by clinical staff. This analysis will also be used to check that the AI works fairly for patients from different backgrounds.

WHAT DIFFERENCE WILL WE MAKE? Our research will show the problems with triage and explain how an improved AI system could help patients get the care they need more quickly.

Full description

Background GP practice staff triage patients contacting them to make the best use of resources and maintain patient safety. Online consultation systems are used by most GP practices and allow patients to contact their GP practice using an online form. They can be submitted without talking to a member of staff, thereby circumventing the usual triage process. Online consultation systems can triage patients using 'Artificial Intelligence' (AI), though there is a lack of research on their performance. We (The University of Manchester; UoM) propose to fill this gap by collaborating with an online consultation system provider with optional AI triage functionality (Patchs).

Research questions Overall research question: is it possible to develop AI models that can replicate clinicians' triage decisions?

  1. What challenges do patients and GP practices face when triaging patients in primary care, and what are their drivers?
  2. What is the best performing AI model for triaging patients in primary care?
  3. Is AI triage performance maintained across different geographical regions?
  4. Is AI triage performance maintained over time?
  5. How does AI triage performance compare to current clinical practice?
  6. Does AI triage performance change when deployed into clinical practice?
  7. Does AI triage work fairly for all patients? Methods Workstream 1: Triage problem quantification. We will analyse anonymised historic data from GP practices using Patchs with AI triage disabled. Where publicly available, we will compare this to practice-level data from GP practices not using Patchs (control practices). We will undertake descriptive and inferential analyses to understand potential triage problems and factors that influence them, such as delays in providing patient care.

Workstream 2: AI development. We will use anonymised historic data from GP practices using Patchs to build new versions of the AI triage models currently in use with four different approaches: logistic regression, XGBoost, long short-term memory (LSTM), and large language model (LLM). We will use internal-external cross-validation by geographical region and compare their performance using random-effects meta-analysis and sub-group analyses to assess fairness (e.g. across ethnicities). We will compare their performance to the current AI triage models in use. The final version of the best-performing AI models will be developed using the entire dataset.

Workstream 3: Prospective background evaluation. We will obtain predictions from the best-performing AI models on prospectively collected data from GP practices using Patchs without AI triage by running the models in the 'background'. We will undertake sub-group analyses to assess fairness as described above.

Workstream 4: Prospective implementation evaluation. In accordance with the normal Patchs software updates, we will update the AI models in GP practices already using AI triage with the best-performing versions. We will prospectively measure how often GP practice staff and patients agree with the new versions' triage predictions to test whether its performance translates to real patient care. We will undertake sub-group analyses to assess fairness as described above.

Anticipated benefits We will help understand the problems currently faced by GP practices during online consultation triage. If we developed improved AI models, there may be improved patient safety (e.g. by helping patients receive help sooner) and reduced GP practice workload (e.g. by automating the triage process). GP practices and their patients in Workstream 4 would benefit immediately. We will provide evidence for GP practices not currently using AI triage whether to adopt it.

Enrollment

226,821 estimated patients

Sex

All

Volunteers

Accepts Healthy Volunteers

Inclusion criteria

  • GP practices using the Patchs system

Exclusion criteria

  • N/A

Trial design

Primary purpose

Health Services Research

Allocation

Non-Randomized

Interventional model

Parallel Assignment

Masking

Triple Blind

226,821 participants in 2 patient groups

AI triage
Experimental group
Description:
GP practices using AI triage
Treatment:
Other: AI triage
No AI triage
Active Comparator group
Description:
GP practices not using AI triage
Treatment:
Other: No AI triage

Trial documents
3

Trial contacts and locations

1

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Central trial contact

Benjamin C Brown, MRCGP, PhD

Data sourced from clinicaltrials.gov

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