| Literature DB >> 26633558 |
Juliet Usher-Smith1, Jon Emery2, Willie Hamilton3, Simon J Griffin1, Fiona M Walter1.
Abstract
Numerous risk tools are now available, which predict either current or future risk of a cancer diagnosis. In theory, these tools have the potential to improve patient outcomes through enhancing the consistency and quality of clinical decision-making, facilitating equitable and cost-effective distribution of finite resources such as screening tests or preventive interventions, and encouraging behaviour change. These potential uses have been recognised by the National Cancer Institute as an 'area of extraordinary opportunity' and an increasing number of risk prediction models continue to be developed. The data on predictive utility (discrimination and calibration) of these models suggest that some have potential for clinical application; however, the focus on implementation and impact is much more recent and there remains considerable uncertainty about their clinical utility and how to implement them in order to maximise benefits and minimise harms such as over-medicalisation, anxiety and false reassurance. If the potential benefits of risk prediction models are to be realised in clinical practice, further validation of the underlying risk models and research to assess the acceptability, clinical impact and economic implications of incorporating them in practice are needed.Entities:
Mesh:
Year: 2015 PMID: 26633558 PMCID: PMC4701999 DOI: 10.1038/bjc.2015.409
Source DB: PubMed Journal: Br J Cancer ISSN: 0007-0920 Impact factor: 7.640
Examples of risk prediction models for asymptomatic individuals that have been validated in different populations
| Colditz | 0.63 (0.63–0.64) | 1.01 (0.94–1.09) |
| Gail 2 | 0.63 (0.59–0.67) | 0.95 (0.88–1.01) |
| Rosner and Colditz | 0.57 (0.55–0.59) | 0.96 (0.92–1.02) |
| Tyrer and Cusick | 0.762 (0.70–0.82) | 1.09 (0.85–1.41) |
| Bach | 0.81 (0.76–0.86) | 0.88 (0.72–1.08) |
| Sptiz | 0.78 (0.73–0.83) | 3.75 (3.06–4.60) |
| LLP | 0.79 (0.73–0.83) | 1.12 (0.92–1.37) |
| PLCOM2012 | 0.81 (0.76–0.86) | 1.03 (0.87–1.23) |
| Harvard Cancer Risk Index | Men: 0.71 (0.68–0.74) Women: 0.67 (0.64–0.70) | — |
| Imperiale | 0.74 (SD=0.06) | — |
| Freedman | Men: 0.61 (0.60–0.62) Women: 0.61 (0.59–0.62) | Men: 0.99 (0.95–1.04) Women: 1.05 (0.98–1.11) |
| Ma | 0.64 (0.61–0.67) | 1.09 (0.98–1.23) |
| Prostataclass | 0.79 (0.75–0.84) | — |
| Finne | 0.74 (0.70–0.77) | — |
| Karakiewcz | 0.74 (0.69–0.80) | — |
| Prostate Cancer Prevention Trial | 0.66 (0.63–0.68) | — |
| Chun | 0.76 (0.72–0.79) | — |
| ERSPC RC3 | 0.79 (0.77–0.81) | — |
| Fortes | 0.79 (0.70–0.86) | — |
| Williams | 0.70 (0.64–0.77) | |
Abbreviations: AUROC=area under receiver operator characteristic curve; CI=confidence interval; LLP, liverpool lung project; O/E=ratio of observed to expected events.
In a high-risk sample.
The 2012 version of the prostate, lung, colorectal, and ovarian cancer screening trial model.
European Randomized Study of Screening for Prostate Cancer Risk Calculator 3.