Despite growing research and policy attention, perinatal behavioral health conditions (i.e., mental health and substance use disorders) remain prevalent, burdensome for families, and largely untreated in the US. Researchers have documented an array of barriers to accurate detection, linkage with effective treatment, and improved outcomes for perinatal women with behavioral health disorders. It is clear that a multi-component approach that integrates evidence-based detection and management of perinatal behavioral health in the context of obstetrics care can be effective. This paper presents the initial development of a clinical quality improvement program that includes evidence-based components of behavioral health integration in obstetrics in the state of Florida in the US. The FL BH Impact (Improving Maternal and Pediatric Access, Care and Treatment for Behavioral Health) program, guided by the RE-AIM model for program implementation, has been developed over the past 2 years. Program components, initial implementation, and preliminary findings are presented. Following the implementation phase, the program has enrolled 12 obstetrics practices and 122 obstetrics providers in program engagement and training activities. The primary program component allows for obstetrics clinician telephone access to a statewide listing of behavioral health referral resources for patients and access to consultation with psychiatry. Since program implementation, the program has received a total of 122 calls to this line, with an expected increasing trajectory of calls over time. Results suggest this program is feasible to implement across a large geographic area. Challenges to implementation and future directions are discussed. These types of multi-component approaches to improved management and outcomes for perinatal behavioral health are promising and must be expanded and sustained in the US.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8649687 | PMC |
http://dx.doi.org/10.3389/fpsyt.2021.734883 | DOI Listing |
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