A machine learning approach to improve implementation monitoring of family-based preventive interventions in primary care.

Implementation research and practice Pub Date : 2023-07-25 eCollection Date: 2023-01-01 DOI:10.1177/26334895231187906
Cady Berkel, Dillon C Knox, Nikolaos Flemotomos, Victor R Martinez, David C Atkins, Shrikanth S Narayanan, Lizeth Alonso Rodriguez, Carlos G Gallo, Justin D Smith
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引用次数: 0

Abstract

Background: Evidence-based parenting programs effectively prevent the onset and escalation of child and adolescent behavioral health problems. When programs have been taken to scale, declines in the quality of implementation diminish intervention effects. Gold-standard methods of implementation monitoring are cost-prohibitive and impractical in resource-scarce delivery systems. Technological developments using computational linguistics and machine learning offer an opportunity to assess fidelity in a low burden, timely, and comprehensive manner.

Methods: In this study, we test two natural language processing (NLP) methods [i.e., Term Frequency-Inverse Document Frequency (TF-IDF) and Bidirectional Encoder Representations from Transformers (BERT)] to assess the delivery of the Family Check-Up 4 Health (FCU4Health) program in a type 2 hybrid effectiveness-implementation trial conducted in primary care settings that serve primarily Latino families. We trained and evaluated models using 116 English and 81 Spanish-language transcripts from the 113 families who initiated FCU4Health services. We evaluated the concurrent validity of the TF-IDF and BERT models using observer ratings of program sessions using the COACH measure of competent adherence. Following the Implementation Cascade model, we assessed predictive validity using multiple indicators of parent engagement, which have been demonstrated to predict improvements in parenting and child outcomes.

Results: Both TF-IDF and BERT ratings were significantly associated with observer ratings and engagement outcomes. Using mean squared error, results demonstrated improvement over baseline for observer ratings from a range of 0.83-1.02 to 0.62-0.76, resulting in an average improvement of 24%. Similarly, results demonstrated improvement over baseline for parent engagement indicators from a range of 0.81-27.3 to 0.62-19.50, resulting in an approximate average improvement of 18%.

Conclusions: These results demonstrate the potential for NLP methods to assess implementation in evidence-based parenting programs delivered at scale. Future directions are presented.

Trial registration: NCT03013309 ClinicalTrials.gov.

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一种机器学习方法,用于改善初级保健中基于家庭的预防干预措施的实施监测。
背景:基于证据的育儿计划有效地预防了儿童和青少年行为健康问题的发生和升级。当项目规模化时,实施质量的下降会减少干预效果。在资源匮乏的交付系统中,执行情况监测的黄金标准方法成本高昂且不切实际。使用计算语言学和机器学习的技术发展为以低负担、及时和全面的方式评估保真度提供了机会。方法:本研究中,我们测试了两种自然语言处理(NLP)方法[即术语频率逆文档频率(TF-IDF)和变压器双向编码器表示(BERT)],以评估在主要为拉丁裔家庭服务的初级保健环境中进行的2型混合有效性实施试验中家庭检查4健康(FCU4Health)计划的实施情况。我们使用113个启动FCU4Health服务的家庭的116份英语和81份西班牙语成绩单对模型进行了培训和评估。我们评估了TF-IDF和BERT模型的同时有效性,使用了项目会议的观察员评级,使用了COACH对合格依从性的测量。根据实施级联模型,我们使用父母参与的多个指标评估了预测有效性,这些指标已被证明可以预测育儿和儿童结果的改善。结果:TF-IDF和BERT评分均与观察者评分和参与结果显著相关。使用均方误差,结果表明观察者评分在0.83-1.02至0.62-0.76之间比基线有所改善,平均改善24%。同样,研究结果表明,父母参与度指标在0.81-27.3至0.62-19.50之间比基线有所改善,平均改善率约为18%。结论:这些结果表明,NLP方法有潜力评估大规模实施的循证育儿计划的实施情况。介绍了未来的发展方向。试验注册:NCT03013309 ClinicalTrials.gov。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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