Strategy training is a multidisciplinary rehabilitation approach that teaches skills to reduce disability among those with cognitive impairments following a stroke. Strategy training has been shown in randomized, controlled clinical trials to be a more feasible and efficacious intervention for promoting independence than traditional rehabilitation approaches. A standardized fidelity assessment is used to measure adherence to treatment principles by examining guided and directed verbal cues in video recordings of rehabilitation sessions. Although the fidelity assessment for detecting guided and directed verbal cues is valid and feasible for single-site studies, it can become labor intensive, time consuming, and expensive in large, multi-site pragmatic trials. To address this challenge to widespread strategy training implementation, we leveraged natural language processing (NLP) techniques to automate the strategy training fidelity assessment, i.e., to automatically identify guided and directed verbal cues from video recordings of rehabilitation sessions. We developed a rule-based NLP algorithm, a long-short term memory (LSTM) model, and a bidirectional encoder representation from transformers (BERT) model for this task. The best performance was achieved by the BERT model with a 0.8075 F1-score. This BERT model was verified on an external validation dataset collected from a separate major regional health system and achieved an F1 score of 0.8259, which shows that the BERT model generalizes well. The findings from this study hold widespread promise in psychology and rehabilitation intervention research and practice.
翻译:战略培训是一种多学科的康复方法,它教有认知障碍者减少残疾的技能; 战略培训在随机的、受控制的临床试验中显示,比传统的康复方法更可行和有效,对促进独立性的干预比传统的康复方法更加可行和有效; 标准化的忠诚评估,通过检查康复会议录像中的指导和引导口头提示,衡量治疗原则的遵守情况; 虽然对单一地点研究来说,对发现有指导的和直接的口头提示进行忠诚评估是有效和可行的,但在大型、多地点的务实试验中,它可能会成为劳动密集型、耗时和昂贵的双向电解码模型; 为了应对广泛战略培训执行的这一挑战,我们利用自然语言处理(NLP)技术使战略培训忠诚评估自动化,即自动确定康复会议录像中的指导和引导的口头提示; 我们开发了一个基于规则的NLP算法,一个长期短期记忆模型,以及一个来自变压器(BER)的双向导导导导导导体代表模型; 为了应对广泛实施战略培训,我们利用自然语言处理技术,利用了战略培训的自动化处理技术,即自动识别结果,从0.80751区域测试系统采集了这一模型,在BREER的外部测试中,在进行了基础测试中,这一模型和B10的外部测试中,在进行了BBRisal-xxx。