An exploratory assessment of the impact of a novel risk assessment test on breast cancer clinic waiting times and workflow: a discrete event simulation model

Author:

Smith Alison F.ORCID,Frempong Samuel N.,Sharma Nisha,Neal Richard D.,Hick Louise,Shinkins Bethany

Abstract

AbstractBackgroundBreast cancer clinics across the UK have long been struggling to cope with high demand. Novel risk prediction tools – such as the PinPoint test – could help to reduce unnecessary clinic referrals. Using early data on the expected accuracy of the test, we explore the potential impact of PinPoint on: (a) the percentage of patients meeting the two-week referral target, and (b) the number of clinic ‘overspill’ appointments generated.MethodsA simulation model was built to reflect the annual flow of patients through a single UK clinic. Due to current uncertainty around the exact impact of PinPoint testing on standard care, two primary scenarios were assessed. Scenario 1 assumed complete GP adherence to testing, with only non-referred cancerous cases returning for delayed referral. Scenario 2 assumed GPs would overrule 20% of low-risk results, and that 10% of non-referred non-cancerous cases would also return for delayed referral. A range of sensitivity analyses were conducted to explore the impact of key uncertainties on the model results. Service reconfiguration scenarios, removing individual weekly clinics from the clinic schedule, were also explored.ResultsUnder standard care, 66.3% (95% CI: 66.0 to 66.5) of patients met the referral target, with 1,685 (1,648 to 1,722) overspill appointments. Under both PinPoint scenarios, >98% of patients met the referral target, with overspill appointments reduced to between 727 (707 to 746) [Scenario 1] and 886 (861 to 911) [Scenario 2]. The reduced clinic demand was sufficient to allow removal of one weekly low-capacity clinic [N=10], and the results were robust to sensitivity analyses.ConclusionsThe findings from this early analysis indicate that risk prediction tools could have the potential to alleviate pressure on cancer clinics, and are expected to have increased utility in the wake of heightened pressures resulting from the COVID-19 pandemic. Further research is required to validate these findings with real world evidence; evaluate the broader clinical and economic impact of the test; and to determine outcomes and risks for patients deemed to be low-risk on the PinPoint test and therefore not initially referred.

Publisher

Cold Spring Harbor Laboratory

Reference29 articles.

1. Referral patterns, cancer diagnoses, and waiting times after introduction of two week wait rule for breast cancer: prospective cohort study

2. Impact of the ‘2 week wait’ on referrals to breast units in the UK;The Breast,2002

3. National Collaborating Centre for Cancer. Suspected cancer: recognition and referral. NICE Guideline [NG12]. https://www.nice.org.uk/guidance/ng12. Accessed April 2021.

4. NHS England. Annual NHS cancer checks top two million for the first time. https://www.england.nhs.uk/2019/04/annual-nhs-cancer-checks-top-two-million-for-the-first-time/. Accessed April 2021.

5. NHS England. Cancer Waiting Times Annual Report, 2015-16. https://www.england.nhs.uk/statistics/statistical-work-areas/cancer-waiting-times/cwt-annual-reports/cwt-annual-report-2015-16/. Accessed April 2021.

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