Patient Decision-Making Factors in Aggressive Treatment of Low-Risk Prostate Cancer

JNCI CANCER SPECTRUM(2022)

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摘要
Background: Active surveillance (AS) is underutilized for low-risk prostate cancer. This study examines decision-making factors associated with AS vs aggressive treatment in a population-based cohort of low-risk patients. Methods: Newly diagnosed patients (n = 599) were enrolled through the North Carolina Central Cancer Registry from 2011 to 2013 and surveyed regarding 5 factors that may impact treatment decision making: perceived cancer aggressiveness, aggressiveness of treatment intent, most important goal (eg, cure, quality of life), primary information source, and primary decision maker. We examined the association between treatment decision-making factors with patient choice for AS vs aggressive treatment using multivariable logistic regression analysis. Results: This is a sociodemographically diverse cohort reflective of the population-based design, with 37.6% overall (47.6% among very low-risk patients) choosing AS. Aggressive treatment intent (odds ratio [OR] = 7.09, 95% confidence interval [CI] = 4.57 to 11.01), perceived cancer aggressiveness (OR = 4.93, 95% CI = 2.71 to 8.97), most important goal (cure vs other, OR = 1.72, 95% CI = 1.12 to 2.63), and primary information source (personal and family vs physician, OR = 1.76, 95% CI = 1.10 to 2.82) were associated with aggressive treatment. Overall, 88.4% of patients (92.2% among very low-risk) who indicated an intent to treat the cancer "not very aggressively" chose AS. Conclusions: These data from the patient's perspective shed new light on potentially modifiable factors that can help further increase AS uptake among low-risk patients. Helping more low-risk patients feel comfortable with a "not very aggressive" treatment approach may be especially important, which can be facilitated through patient education interventions to improve the understanding of the cancer diagnosis and AS having a curative intent.
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