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Identifying predictive behavioral markers: A demonstration using automatically reinforced self‐injurious behavior
Authors:Louis P. Hagopian  Griffin W. Rooker  Gayane Yenokyan
Affiliation:1. The Kennedy Krieger Institute;2. Johns Hopkins University School of Medicine;3. Johns Hopkins University Bloomberg School of Public Health
Abstract:Predictive biomarkers (PBioMs) are objective biological measures that predict response to medical treatments for diseases. The current study translates methods used in the field of precision medicine to identify PBioMs to identify parallel predictive behavioral markers (PBMs), defined as objective behavioral measures that predict response to treatment. We demonstrate the utility of this approach by examining the accuracy of two PBMs for automatically reinforced self‐injurious behavior (ASIB). Results of the analysis indicated both functioned as good to excellent PBMs. We discuss the compatibility of this approach with applied behavior analysis, describe methods to identify additional PBMs, and posit that variables related to the mechanisms of problem behavior and putative mechanism of treatment action hold the most promise as potential PBMs. We discuss how this technology could guide individualized treatment selection, inform our understanding of problem behavior and mechanisms of treatment action, and help determine the conditional effectiveness of clinical procedures.
Keywords:automatically reinforced self‐injurious behavior  conditional effectiveness  conditional probability analysis  precision medicine  predictive behavioral markers
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