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    Using cancer risk algorithms to improve risk estimates and referral decisions

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    Author
    Kostopoulou, Olga
    Arora, Kavleen
    Palfi, Bence
    Keyword
    Diagnosis
    Health services
    
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    DOI
    10.1038/s43856-021-00069-1
    Abstract
    Background: Cancer risk algorithms were introduced to clinical practice in the last decade, but they remain underused. We investigated whether General Practitioners (GPs) change their referral decisions in response to an unnamed algorithm, if decisions improve, and if changing decisions depends on having information about the algorithm and on whether GPs overestimated or underestimated risk. Methods: 157 UK GPs were presented with 20 vignettes describing patients with possible colorectal cancer symptoms. GPs gave their risk estimates and inclination to refer. They then saw the risk score of an unnamed algorithm and could update their responses. Half of the sample was given information about the algorithm's derivation, validation, and accuracy. At the end, we measured their algorithm disposition. We analysed the data using multilevel regressions with random intercepts by GP and vignette. Results: We find that, after receiving the algorithm's estimate, GPs' inclination to refer changes 26% of the time and their decisions switch entirely 3% of the time. Decisions become more consistent with the NICE 3% referral threshold (OR 1.45 [1.27, 1.65], p < .001). The algorithm's impact is greatest when GPs have underestimated risk. Information about the algorithm does not have a discernible effect on decisions but it results in a more positive GP disposition towards the algorithm. GPs' risk estimates become better calibrated over time, i.e., move closer to the algorithm. Conclusions: Cancer risk algorithms have the potential to improve cancer referral decisions. Their use as learning tools to improve risk estimates is promising and should be further investigated.
    Citation
    Kostopoulou O, Arora K, Pálfi B. Using cancer risk algorithms to improve risk estimates and referral decisions. Commun Med (Lond). 2022 Jan 10;2:2. doi: 10.1038/s43856-021-00069-1. PMID: 35603307; PMCID: PMC9053195.
    Type
    Article
    URI
    http://hdl.handle.net/20.500.12904/17558
    Note
    This article relates to a research study that included patients or members of the workforce as study participants from GP practices in Nottingham and Nottinghamshire.
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