| Literature DB >> 30799690 |
Olga Kostopoulou1, Martine Nurek1, Simona Cantarella1, Grace Okoli2, Francesca Fiorentino1, Brendan C Delaney1.
Abstract
BACKGROUND: Signal detection theory (SDT) describes how respondents categorize ambiguous stimuli over repeated trials. It measures separately "discrimination" (ability to recognize a signal amid noise) and "criterion" (inclination to respond "signal" v. "noise"). This is important because respondents may produce the same accuracy rate for different reasons. We employed SDT to measure the referral decision making of general practitioners (GPs) in cases of possible lung cancer.Entities:
Keywords: cancer referral; conversion rate; detection rate; primary care; signal detection theory
Mesh:
Year: 2019 PMID: 30799690 PMCID: PMC6311616 DOI: 10.1177/0272989X18813357
Source DB: PubMed Journal: Med Decis Making ISSN: 0272-989X Impact factor: 2.583
Figure 1Hypothetical probability distributions of a decision variable, in units of standard deviation, across signal and noise trials. Mnoise = 0, Msignal = 2, and d ′ = 2.
Figure 2Screenshot of a vignette and the questions asked. All questions were compulsory, except for the last one. To avoid order effects, general practitioners (GPs) were randomly assigned to view the response categories in 1 of 2 orders: order 1 (depicted here) presented the response categories in the order of “yes,”“no” (chest X-ray question) and “refer to specialist urgently,”“refer to specialist routinely,”“not refer at this stage” (referral question). Order 2 presented the response categories in the opposite order for both questions. Order was held constant for a given GP across parts A and B.
Mean Number of Urgent Referrals, Hits, Misses, False Alarms (FAs), and Correct Rejections (CRs); Mean Discrimination (d ′); and Mean Criterion (c) of the Whole Sample of 216 GPs and by Experience Group
| Performance Measure | Whole Sample, Mean (SD) | Experience Groups (Years in General Practice), Mean (SD) | |||
|---|---|---|---|---|---|
| Group 1 (0–6 Years) | Group 2 (7–10 Years) | Group 3 (11–17 Years) | Group 4 (18–36 Years) | ||
| Urgent referrals | 15.22 (9.97) | 16.23 (9.58) | 16.36 (10.05) | 15.06 (8.96) | 13.13 (11.07) |
| Hits | 10.20 (5.77) | 10.98 (5.44) | 10.86 (5.89) | 10.45 (5.55) | 8.46 (5.98) |
| Misses | 11.80 (5.77) | 11.01 (5.44) | 11.13 (5.89) | 11.55 (5.55) | 13.54 (5.98) |
| FAs | 5.02 (4.57) | 5.25 (4.49) | 5.50 (4.46) | 4.61 (3.82) | 4.67 (5.39) |
| CRs | 16.98 (4.57) | 16.75 (4.49) | 16.5 (4.46) | 17.39 (3.82) | 17.33 (5.39) |
| .77 (.36) | .83 (.35) | .77 (.34) | .83 (.38) | .66 (.37) | |
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| .50 (.75) | .41 (.70) | .43 (.77) | .51 (.68) | .67 (.84) |
Frequencies of Referral and Nonreferral Decisions across the 9504 Responses (216 GPs Responding to 44 Vignettes)
| Positive Cases, No. | Negative Cases, No. | Total, No. | |
|---|---|---|---|
| Urgent referrals | 2204 | 1084 | 3288 |
| No urgent referrals | 2548 | 3668 | 6216 |
| Total | 4752 | 4752 | 9504 |
Figure 3Scatterplot of the hit and false alarm rates of the 216 general practitioners (GPs), with superimposed theoretical receiver operating characteristic curves produced by d ′ = 0, d ′ = 1, d ′ = 2, and d ′ = 3. The dots of the scatterplot are sized by frequency (number of GPs with the same hit and false alarm rates).
Figure 4Distribution of the decision variable across positive and negative case presentations based on the standardized hit and false alarm rates of the 216 general practitioners. The distribution for negative cases has a mean of 0 and that for positive cases a mean of 0.77 (i.e., the separation is 0.77, which is equal to the sample’s d ′). The sample’s c is 0.50, which is the distance between the neutral point (0.77/2 = 0.39) and the criterion location (0.39 + 0.50 = 0.89).
Results (Odds Ratio [95% Confidence Interval], P Value) of the Multilevel Mixed-Effects Logistic Regression Models Predicting Misses and False Alarms Separately[a]
| Misses | False Alarms | |
|---|---|---|
| Patient age | 0.97 [0.96–0.99], | 1.00 [0.98–1.02], |
| Smoking status | ||
| Ex-smokers v. never-smokers |
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| Current v. never-smokers |
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| Pack years | 1.00 [0.99–1.00], | 1.02 [1.01–1.03], |
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| Fatigue | 2.09 [1.63–2.69], | 1.31 [0.87–1.96], |
| Breathlessness | 2.79 [2.15–3.62], | 1.18 [0.67–2.06], |
| Appetite loss | 1.94 [1.49–2.52], | 2.26 [1.44–3.55], |
Bold font indicates that the variable has a statistically significant effect and behaves consistently across models (increasing the likelihood of one type of error and decreasing the likelihood of the other). Coding notes: Model predicting misses: 1 = misses, 0 = hits. Model predicting false alarms: 1 = false alarms, 0 = correct rejections. Smoking status: 0 = never-smoker, 1 = ex-smoker, 2 = current smoker. Pack years: (number of cigarettes per day/20) * years of smoking. Pack years for never-smokers = 0. Symptoms: 0 = absent, 1 = present.