...
首页> 外文期刊>Administration and policy in mental health >Blending Qualitative and Computational Linguistics Methods for Fidelity Assessment: Experience with the Familias Unidas Preventive Intervention
【24h】

Blending Qualitative and Computational Linguistics Methods for Fidelity Assessment: Experience with the Familias Unidas Preventive Intervention

机译:融合定性和计算语言学方法进行保真度评估:Familias Unidas预防性干预的经验

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Careful fidelity monitoring and feedback are critical to implementing effective interventions. A wide range of procedures exist to assess fidelity; most are derived from observational assessments (Schoenwald and Garland, Psycholog Assess 25:146-156, 2013). However, these fidelity measures are resource intensive for research teams in efficacy/effectiveness trials, and are often unattainable or unmanageable for the host organization to rate when the program is implemented on a large scale. We present a first step towards automated processing of linguistic patterns in fidelity monitoring of a behavioral intervention using an innovative mixed methods approach to fidelity assessment that uses rule-based, computational linguistics to overcome major resource burdens. Data come from an effectiveness trial of the Familias Unidas intervention, an evidence-based, family-centered preventive intervention found to be efficacious in reducing conduct problems, substance use and HIV sexual risk behaviors among Hispanic youth. This computational approach focuses on "joining," which measures the quality of the working alliance of the facilitator with the family. Quantitative assessments of reliability are provided. Kappa scores between a human rater and a machine rater for the new method for measuring joining reached 0.83. Early findings suggest that this approach can reduce the high cost of fidelity measurement and the time delay between fidelity assessment and feedback to facilitators; it also has the potential for improving the quality of intervention fidelity ratings.
机译:认真的保真度监控和反馈对于实施有效的干预至关重要。存在多种评估逼真度的程序;大多数来自观察评估(Schoenwald和Garland,Psycholog评估25:146-156,2013)。但是,这些保真度措施对于功效/功效试验中的研究团队来说是资源密集型的,并且对于宿主组织在大规模实施该计划时进行评估通常是无法实现或难以管理的。我们提出了在行为干预的保真度监视中自动处理语言模式的第一步,使用创新的混合方法对保真度进行评估,该方法使用基于规则的计算语言学来克服主要资源负担。数据来自Familias Unidas干预措施的有效性试验,这是一项以证据为基础,以家庭为中心的预防性干预措施,被发现可有效减少西班牙裔青少年的品行问题,药物滥用和HIV性危险行为。这种计算方法侧重于“加入”,它衡量协调人与家庭的工作联盟的质量。提供了可靠性的定量评估。对于新的连接度量方法,人类评估者和机器评估者之间的Kappa得分达到0.83。早期发现表明,这种方法可以降低保真度测量的高成本,以及降低保真度评估和反馈给促进者之间的时间延迟;它还具有提高干预保真度等级质量的潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号