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1.
J Am Coll Health ; 71(6): 1879-1886, 2023.
Article in English | MEDLINE | ID: mdl-34292853

ABSTRACT

OBJECTIVE: Campus sexual assault (SA) prevention programs are widely implemented, despite few having strong empirical support. To inform the development and refinement of prevention programs, we collected pilot qualitative data to capture undergraduates' perspectives regarding desirable program characteristics. PARTICIPANTS: Undergraduates completed an audio-taped interview (n = 19) or a focus group (n = 16) in June - November 2016. METHODS: We double-coded transcripts for a priori and emerging themes using NVivo 11. A third coder resolved disagreements; we assessed intercoder reliability using Cohen's Kappa. RESULTS: Participants preferred SA prevention programming to be delivered in-person to small, coed groups of unfamiliar students. Students preferred programming with peer-facilitated, candid conversation about SA outcomes and prevention strategies. Participants also preferred for the tone of these training sessions to match the serious subject matter. CONCLUSIONS: Students' perceptions of desirable program characteristics differ somewhat from current evidence-based programs in several ways, highlighting important future directions for SA prevention research.

2.
Am J Ophthalmol ; 222: 54-59, 2021 02.
Article in English | MEDLINE | ID: mdl-32926847

ABSTRACT

PURPOSE: To assess the feasibility of automated text parsing screening of physician notes in the electronic health record (EHR) to identify glaucoma patients with poor medication compliance. DESIGN: Cross-sectional study. METHODS: An automated EHR extraction identified a cohort of patients at the University of Michigan with a diagnosis of glaucoma, ≥40 years old, taking ≥1 glaucoma medication, and having no cognitive impairment. Self-reported medication adherence was assessed with 2 validated instruments: the Chang scale and the Morisky medication adherence scale. In tandem, a text parsing tool that abstracted data from the EHR was used to search for combinations of the following words in patient visit notes: "not," "non," "n't," "no," or "poor" accompanied by "adherence," "adherent, "adhering," "compliance," "compliant," or "complying." The proportion of patients with self-reported poor adherence was compared between the EHR extraction and text parsing identification using a Fisher exact test. RESULTS: Among 736 participants, 20.0% (n = 147) self-reported poor adherence and 6.1% (n = 45) had EHR documentation of poor adherence (P < .0001). Using text parsing as a pre-screening tool, 22 of the 45 patients (48.9%) with non-adherence identified by text parsing also self-reported poor medication adherence compared to the 20.0% by self-report overall (P < .0001). CONCLUSIONS: Text parsing physician notes to identify patients' noncompliance to their medications identified a larger proportion of patients who then self-reported poor medication adherence than an automated EHR pull alone but was limited by the small number of patients identified. Optimizing the documentation of medication adherence would maximize the utility of this automated approach to identify medication noncompliance.


Subject(s)
Antihypertensive Agents/therapeutic use , Electronic Health Records , Glaucoma/drug therapy , Intraocular Pressure/drug effects , Medication Adherence , Text Messaging , Aged , Cross-Sectional Studies , Female , Glaucoma/physiopathology , Humans , Male , Middle Aged , Ophthalmic Solutions/therapeutic use , Self Report , Surveys and Questionnaires
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