Treffer: Determinants of Physicians' Referrals for Suspected Cancer Given a Risk-Prediction Algorithm: Linking Signal Detection and Fuzzy Trace Theory.

Title:
Determinants of Physicians' Referrals for Suspected Cancer Given a Risk-Prediction Algorithm: Linking Signal Detection and Fuzzy Trace Theory.
Authors:
Kostopoulou O; Imperial College London, UK., Pálfi B; Goldsmiths University of London, UK., Arora K; Imperial College London, UK., Reyna V; Cornell University, Cornell, NY, USA.
Source:
Medical decision making : an international journal of the Society for Medical Decision Making [Med Decis Making] 2026 Jan; Vol. 46 (1), pp. 88-101. Date of Electronic Publication: 2025 Oct 16.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Sage Publications Country of Publication: United States NLM ID: 8109073 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1552-681X (Electronic) Linking ISSN: 0272989X NLM ISO Abbreviation: Med Decis Making Subsets: MEDLINE
Imprint Name(s):
Publication: <2001->: Thousand Oaks, CA : Sage Publications
Original Publication: Cambridge, MA : Birkhäuser, c1981-
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Contributed Indexing:
Keywords: algorithms; decision making; gist; primary care; risk assessment; risk prediction
Entry Date(s):
Date Created: 20251016 Date Completed: 20251217 Latest Revision: 20251218
Update Code:
20251218
PubMed Central ID:
PMC12705883
DOI:
10.1177/0272989X251376024
PMID:
41099585
Database:
MEDLINE

Weitere Informationen

BackgroundPrevious research suggests that physicians' inclination to refer patients for suspected cancer is a relatively stable characteristic of their decision making. We aimed to identify its psychological determinants in the presence of a risk-prediction algorithm.MethodsWe presented 200 UK general practitioners with online vignettes describing patients with possible colorectal cancer. Per the vignette, GPs indicated the likelihood of referral (from highly unlikely to highly likely) and level of cancer risk (negligible/low/medium/high), received an algorithmic risk estimate, and could then revise their responses. After completing the vignettes, GPs responded to questions about their values with regard to harms and benefits of cancer referral for different stakeholders, perceived severity of errors, acceptance of false alarms, and attitudes to uncertainty. We tested whether these values and attitudes predicted their earlier referral decisions.ResultsThe algorithm significantly reduced both referral likelihood ( b = -0.06 [-0.10, -0.007], P = 0.025) and risk level ( b = -0.14 [-0.17, -0.11], P < 0.001). The strongest predictor of referral was the value GPs attached to patient benefits ( b = 0.30 [0.23, 0.36], P < 0.001), followed by benefits ( b = 0.18 [0.11, 0.24], P < 0.001) and harms ( b = -0.14 [-0.21, -0.08], P < 0.001) to the health system/society. The perceived severity of missing a cancer vis-à-vis overreferring also predicted referral ( b = 0.004 [0.001, 0.007], P = 0.009). The algorithm did not significantly reduce the impact of these variables on referral decisions.ConclusionsThe decision to refer patients who might have cancer can be influenced by how physicians perceive and value the potential benefits and harms of referral primarily for patients and the moral seriousness of missing a cancer vis-à-vis over-referring. These values contribute to an internal threshold for action and are important even when an algorithm informs risk judgments.HighlightsPhysicians' inclination to refer patients for suspected cancer is determined by their assessment of cancer risk but also their core values; specifically, their values in relation to the perceived benefits and harms of referrals and the seriousness of missing a cancer compared with overreferring.We observed a moral prioritization of referral decision making, in which considerations about benefits to the patient were foremost, considerations about benefits but also harms to the health system or the society were second, while considerations about oneself carried little or no weight.Having an algorithm informing assessments of risk influences referral decisions but does not remove or significantly reduce the influence of physicians' core values.

The research was carried out at Imperial College London, Department of Surgery and Cancer. During that time, Bence Pálfi was Research Associate at Imperial College London. The authors declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article. The authors disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: The study was funded by a Cancer Research UK grant awarded to Olga Kostopoulou. Funding scheme: Population Research Committee - Project Award, reference A28634. V.R.’s contribution was supported by the National Institute of Standards and Technology (grant 60NANB22D052) and the Institute for Trustworthy AI in Law and Society (supported by both National Science Foundation and National Institute of Standards and Technology grant IIS-2229885).