| Literature DB >> 20377882 |
Michael V Boland1, Harold P Lehmann.
Abstract
BACKGROUND: The concept of risk thresholds has been studied in medical decision making for over 30 years. During that time, physicians have been shown to be poor at estimating the probabilities required to use this method. To better assess physician risk thresholds and to more closely model medical decision making, we set out to design and test a method that derives thresholds from actual physician treatment recommendations. Such an approach would avoid the need to ask physicians for estimates of patient risk when trying to determine individual thresholds for treatment. Assessments of physician decision making are increasingly relevant as new data are generated from clinical research. For example, recommendations made in the setting of ocular hypertension are of interest as a large clinical trial has identified new risk factors that should be considered by physicians. Precisely how physicians use this new information when making treatment recommendations has not yet been determined.Entities:
Mesh:
Year: 2010 PMID: 20377882 PMCID: PMC2865441 DOI: 10.1186/1472-6947-10-20
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Figure 1A graphical representation of the role of ordinal regression in this method. The four risk levels are arbitrary and chosen for illustrative purposes only. The normal distribution shown at each risk level represents the assumed underlying continuous probability of treatment recommendation that is being assessed using the ordinal scale (Yes, Unsure, No). The two thresholds (αU, αY) are the intercepts derived from ordinal regression analysis of physician responses and form the boundaries between the three response levels.
Figure 2The distribution of the 5-year risk of glaucoma. The distribution of the 5-year risk of glaucoma in the population from which the 50 simulated cases were drawn. The solid line is a log-normal distribution with the same mean and variance of risk as the simulated cases.
Demographics of study participants
| Number [%] | |
|---|---|
| Gender (Male) | 48 [83] |
| Racial Background | |
| Asian | 9 [16] |
| Black | 2 [3.4] |
| White | 41 [71] |
| Other or None | 6 [10] |
| Glaucoma Training | 57 [98] |
| Risk Calculator Use | |
| Never | 31 [53] |
| Sometimes | 25 [43] |
| Always | 2 [3.4] |
| Mean (std. dev.) | |
| Length of practice (years) | 16.8 (10.2) |
| Patients seen per month | 444 (217) |
| Percentage of Practice Devoted to Glaucoma | 77 (20) |
All values are derived from self-reported data provided by study participants (N = 58). Glaucoma Training refers to the number of participants who had subspecialty training and Risk Calculator Use indicates how frequently the participants used one of the available risk calculators in their practice.
Figure 3The distribution of estimated treatment thresholds for glaucoma specialists. The solid line shows a beta distribution with coefficients α = 2.56 and β = 9.14. The coefficients of the beta distribution were obtained using a maximum-likelihood method (fitdistr in R) and have standard errors of 0.48 and 1.83 respectively.