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Audience segmentation to disseminate behavioral health evidence to legislators: an empirical clustering analysis

机译:观众细分向立法者传播行为卫生证据:实证聚类分析

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Elected officials (e.g., legislators) are an important but understudied population in dissemination research. Audience segmentation is essential in developing dissemination strategies that are tailored for legislators with different characteristics, but sophisticated audience segmentation analyses have not been conducted with this population. An empirical clustering audience segmentation study was conducted to (1) identify behavioral health (i.e., mental health and substance abuse) audience segments among US state legislators, (2) identify legislator characteristics that are predictive of segment membership, and (3) determine whether segment membership is predictive of support for state behavioral health parity laws. Latent class analysis (LCA) was used. Data were from a multi-modal (post-mail, e-mail, telephone) survey of state legislators fielded in 2017 (N?=?475). Nine variables were included in the LCA (e.g., perceptions of behavioral health treatment effectiveness, mental illness stigma). Binary logistic regression tested associations between legislator characteristics (e.g., political party, gender, ideology) and segment membership. Multi-level logistic regression assessed the predictive validity of segment membership on support for parity laws. A name was developed for each segment that captured its most salient features. Three audience segments were identified. Budget-oriented skeptics with stigma (47% of legislators) had the least faith in behavioral health treatment effectiveness, had the most mental illness stigma, and were most influenced by budget impact. This segment was predominantly male, Republican, and ideologically conservative. Action-oriented supporters (24%) were most likely to have introduced a behavioral health bill, most likely to identify behavioral health issues as policy priorities, and most influenced by research evidence. This was the most politically and ideologically diverse segment. Passive supporters (29%) had the greatest faith in treatment effectiveness and the least stigma, but were also least likely to have introduced a behavioral health bill. Segment membership was a stronger predictor of support for parity laws than almost all other legislator characteristics. State legislators are a heterogeneous audience when it comes to behavioral health. There is a need to develop and test behavioral health evidence dissemination strategies that are tailored for legislators in different audience segments. Empirical clustering approaches to audience segmentation are a potentially valuable tool for dissemination science.
机译:Elected officials (e.g., legislators) are an important but understudied population in dissemination research.观众细分对于制定具有不同特征的立法者量身定制的传播策略至关重要,但是本人尚未进行复杂的观众细分分析。进行了经验集群观众分割研究(1)识别美国州立法者中的行为健康(即心理健康和药物滥用)观众细分,(2)确定预测分部成员资格的立法者特征,(3)确定是否分部成员资格是对国家行为健康奇偶校正法的支持。使用潜在阶级分析(LCA)。数据来自2017年(n?= 475)的国家立法者的多模态(发邮件,电子邮件,电话)调查。 LCA中包含九个变量(例如,对行为健康治疗有效性,精神疾病耻辱的看法)。二进制物流回归立法者特征(例如,政党,性别,意识形态)和分部会员资格之间的关联。多级逻辑回归评估分部成员资格的预测有效性,以支持均衡法。为每个捕获其最突出功能的段开发了一个名称。确定了三个受众群。以耻辱(47%的立法者)的预算为导向的怀疑论者对行为健康治疗效果的最不信任,具有最严重的精神疾病耻辱,并且受到预算影响的最大影响。这个部分主要是男性,共和党和思想保守。面向行动的支持者(24%)最有可能引入行为卫生法案,最有可能将行为健康问题视为政策优先事项,并受研究证据的影响最大。这是最政治和意识形态的段。被动支持者(29%)对治疗效果和最低耻辱的信任最大,但也最不可能引入行为卫生法案。分部会员资格是一个强大的预测因素,对阶段法律的支持而不是几乎所有其他立法者特征。谈到行为健康时,州立法者是一种异质观众。有必要开发和测试在不同受众群体中针对立法者量身定制的行为健康证据传播策略。观众分割的经验集群方法是一个潜在的传播科学工具。

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