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Unpacking Low-Value Castration Practices Using Behavior Specification to Guide De-Implementation in Prostate Cancer Care.

Ted A. Skolarus,Jane Forman Varad Deolankar, S. Sriram

JOURNAL OF CLINICAL ONCOLOGY(2022)

University of Michigan Medical School

Cited 0|Views38
Abstract
e17055 Background: Many men with prostate cancer will be exposed to ADT at some point during cancer survivorship. Unfortunately, ADT overuse in low-value scenarios is not uncommon (e.g., monotherapy in localized prostate cancer, biochemically-recurrent non-metastatic disease) resulting in more harms than benefits. We conducted an innovative survey study to unpack ADT overuse to inform behavior change and de-implementation strategies. Methods: Our survey used the Theoretical Domains Framework (TDF), and the Capability, Opportunity, Motivation – Behavior (COM-B) Model. The survey was fielded to the Society of Government Service Urologists listserv in December 2020. We stratified respondents based on their likelihood of stopping ADT monotherapy in the case of a localized prostate cancer patient presenting to their office (yes/probably yes, probably no/no), and characterized Likert scale responses to 7 COM-B statements. We used multivariable logistic regression to identify associations between stopping ADT and COM-B responses across a dichotomized Likert scale of “strongly disagree/disagree/neutral” and “agree/strongly agree.”. Results: Our survey was completed by 84 respondents (13% response rate), with 27% indicating ‘probably no’/‘no’ to stopping low-value ADT monotherapy in the case of a localized prostate cancer patient presenting to their office. Our multivariable model identified 2 COM-B statements significantly associated with lower likelihood of stopping low-value ADT. Conclusions: Using an innovative, behavioral theory-informed survey, we identified that providers less likely to stop low-value ADT had greater concern about patient worry and were more interested in providing ADT recommendations consistent with peers, informing de-implementation strategy selection. Clinical trial information: MCT03579680. [Table: see text]
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