What Works in Paediatric Feeding? Our Publication Featured by the Association for Science in Autism Treatment: Research Synopsis
“In this month’s issue, Sheila Klick, MEd, BCBA and Dr. Mary Jane Weiss, highlight the importance of carefully searching for and selecting, evidence-based treatment options when children are experiencing feeding issues. While reviewing research by Taylor & Taylor (2021), the authors describe how current recommendations may not align with current research, and how parents can beware of adverse reactions to these treatment options.” The distance between empirically-supported treatment and actual practice for paediatric feeding problems
ausEE Feeding Tube Awareness Week Virtual Education Presentation: From Tube Feeding to Eating: Home-based Behavioural Intervention (Taylor & Taylor, 2022)
From Dr. Sarah Leadley Taylor in Auckland, NZ’s social validity assessment scale development research on caregiver perspectives: Ana & Temika’s Experience Anderson, R., Taylor, S., Taylor, T., & Virues-Ortega, J. (2021). Thematic and textual...
New free full text article: Thematic and textual analysis methods for developing social validity questionnaires in applied behavior analysis
https://doi.org/10.1002/bin.1832 New free full text article! Social validity is such an important issue especially in paediatric feeding treatment. However, despite it being a hot topic, there is a big lack of research on it both overall, and on how to assess it....
New Article: Use of a Move-on Component to Increase Consumption for a Clinical Paediatric Feeding Case In-home
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New article: Machine Learning to Support Visual Inspection of Data: A Clinical Application
I love data analysis and graphing. I was trained separately on group statistics and single-case experimental design, but not trained on objective supplements for visual inspection of single-case designs. After much searching I finally found this novel approach (machine learning/artificial intelligence) that is being used in many other fields such as medicine (e.g., data-driven COVID-19 care at Johns Hopkins).