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Physicians often form quick judgments about the risk for serious disease when interacting with patients. Underestimating risk can lead to underuse of diagnostic testing and untreated illness, which can worsen patient outcomes. On the other hand, overestimating risk can lead to overuse of diagnostic testing, which is costly for health systems.
To form judgments of risk, physicians should attend to a host of validated factors that are predictive of disease. However, research suggests that physicians may rely on demographic factors-such as race and gender. Physicians' judgments could also be influenced by non-health-related, personal information about their patients (e.g., hobbies, nicknames), which may moderate the impact of demographics on those judgments.
The investigators examine these dynamics in the context of heart disease. The History, Electrocardiogram, Age, Risk factors and Troponin (HEART) Score is a validated model that specifies a correspondence between certain risk factors and the likelihood of Major Adverse Cardiac Event (MACE). Importantly, there are substantially different diagnostic tests (e.g., noninvasive stress test versus coronary angiogram) that should be used depending on a patient's MACE likelihood.
Specifically, the investigators have three research questions:
Note that when the investigators discuss accuracy and error, they are referring to the comparison of physician judgments to the HEART score model benchmarks.
Full description
The investigators designed a survey to assess physicians' perception of MACE likelihood. Each physician rates a panel of patient profiles. The profiles randomly vary in risk factors, race, gender, and personal information disclosure (e.g., non-health related information about their hobbies). Using the HEART Score model as a benchmark, the investigators will assess how accurately physicians perceive MACE Likelihood based on the risk factors in a given profile. The investigators will further estimate how race, gender, and personal information disclosure causally affect physician judgments.
To do this, the investigators designed a mixed-design experiment. Each participant will respond to eight patient profiles that vary along three fully-crossed within-subject factors: (i) race: black vs. white, (ii) gender: man vs. woman, and (iii) risk factors: low vs. medium risk (based on risk levels from the HEART score model). Each participant will also be randomly assigned (between-subjects) to (iv) either see non-health-related personal information (e.g., hobbies) for all eight of their patients, or not see this information for any of their patients. The investigators refer to each factor as a profile attribute.
For each profile, participants indicate the perceived risk of a major adverse cardiac event in the six weeks following the visit. Our primary outcome is a measure of absolute error in perceived risk of MACE (described under the Primary Outcome section). They also indicate the diagnostic test they believe is most appropriate (Secondary Outcome #4).
Analysis plan
For all analyses, the investigators will format the data such that there are eight observations per participant, each corresponding to a patient profile the participant responded to.
As secondary analyses,
The investigators will also measure and explore (i) qualitative open-ended responses about how they made their risk estimations, (ii) whether participants use the HEART score model at their jobs (or another model), (iii) if they use a model, why they use it, (iv) if they have heard of the HEART score model, (v) if they looked up anything while taking the study, and (vi) if yes, what they looked up.
The investigators plan to recruit 300 physicians using the Medscape panel.
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300 participants in 2 patient groups
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Central trial contact
Joseph S Reiff, PhD; Aneesh Rai, PhD
Data sourced from clinicaltrials.gov
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