Identifying Clinical Behaviors Using the Motor Learning Classification Framework: A Pilot Study.

2021 
Summary Context Although differences in clinical interactions with patients between students and experienced clinicians are well described, differences in therapeutic training behaviors have not been explored, especially in relation to motor learning principles. Aims This pilot study compared clinical behaviors between speech language pathology (SLP) students and experienced SLPs in a voice therapy task, using prepractice variables in the Motor Learning Classification Framework (MLCF). Methods Using a quasi-experimental design, five final-year undergraduate SLP students and four experienced SLPs with a voice therapy caseload taught a standardized patient to produce a vocal siren. Two trained raters categorized the clinicians’ behaviors using the MLCF. Results High intrarater reliability (91.9%, 92.3%) and interrater reliability (89.6%, 82.1%) were shown across both raters. Both clinician groups used the same percentage of behaviors classified as verbal information but differed in the subtypes of these behaviors. Experienced clinicians used behaviors categorized as problem-solving and only experienced clinicians used repeated behavior sequences that included perceptual training. Both groups used significantly more talking behaviors than doing behaviors. Conclusions The MLCF can be reliably used to identify prepractice behaviors during client interactions in voice therapy. Students and experienced clinicians showed similarities in behaviors, but experienced clinicians used more problem solving and perceptual training behaviors than students. These differences have implications for student training. The greater use of talking behaviors than doing behaviors warrants further investigation into whether this impacts the subsequent quality of practice engaged by the client and ultimately treatment effectiveness.
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