Identifying the Active Ingredients of a Computerized Speech and Language Therapy Intervention for Poststroke Aphasia: Multiple Methods Investigation Alongside a Randomized Controlled Trial.

Q2 Medicine
Madeleine Harrison, Rebecca Palmer, Cindy Cooper
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引用次数: 0

Abstract

Background: Aphasia is a communication disorder affecting more than one-third of stroke survivors. Computerized Speech and Language Therapy (CSLT) is a complex intervention requiring computer software, speech and language therapists, volunteers, or therapy assistants, as well as self-managed practice from the person with aphasia. CSLT was found to improve word finding, a common symptom of aphasia, in a multicenter randomized controlled trial (Clinical and Cost Effectiveness of Computer Treatment for Aphasia Post Stroke [Big CACTUS]).

Objective: This study provides a detailed description of the CSLT intervention delivered in the Big CACTUS trial and identified the active ingredients of the intervention directly associated with improved word finding for people with aphasia.

Methods: We conducted a multiple methods study within the context of a randomized controlled trial. In study 1, qualitative interviews explored key informants' understanding of the CSLT intervention, how the components interacted, and how they could be measured. Qualitative data were transcribed verbatim and analyzed thematically. Qualitative findings informed the process measures collected as part of a process evaluation of the CSLT intervention delivered in the Big CACTUS trial. In study 2, quantitative analyses explored the relationship between intervention process measures (length of computer therapy access; therapists' knowledge of CSLT; degree of rationale for CSLT tailoring; and time spent using the software to practice cued confrontation naming, noncued naming, and using words in functional sentences) and change in word-finding ability over a 6-month intervention period.

Results: Qualitative interviews were conducted with 7 CSLT approach experts. Thematic analysis identified four overarching components of the CSLT approach: (1) the StepByStep software (version 5; Steps Consulting Ltd), (2) therapy setup: tailoring and personalizing, (3) regular independent practice, and (4) support and monitoring. Quantitative analyses included process and outcome data from 83 participants randomized to the intervention arm of the Big CACTUS trial. The process measures found to be directly associated with improved word-finding ability were therapists providing a thorough rationale for tailoring the computerized therapy exercises and the amount of time the person with aphasia spent using the computer software to practice using words in functional sentences.

Conclusions: The qualitative exploration of the CSLT approach provided a detailed description of the components, theories, and mechanisms underpinning the intervention and facilitated the identification of process measures to be collected in the Big CACTUS trial. Quantitative analysis furthered our understanding of which components of the intervention are associated with clinical improvement. To optimize the benefits of using the CSLT approach for word finding, therapists are advised to pay particular attention to the active ingredients of the intervention: tailoring the therapy exercises based on the individual's specific language difficulties and encouraging people with aphasia to practice the exercises focused on saying words in functional sentences.

Trial registration: ISRCTN Registry ISRCTN68798818; https://www.isrctn.com/ISRCTN68798818.

确定针对脑卒中后失语症的计算机化言语和语言治疗干预措施的有效成分:随机对照试验的多重方法调查。
背景:失语症是一种影响超过三分之一中风幸存者的交流障碍。计算机化言语和语言治疗(CSLT)是一种复杂的干预措施,需要计算机软件、言语和语言治疗师、志愿者或治疗助理,以及失语症患者的自我管理练习。在一项多中心随机对照试验(脑卒中后失语症计算机治疗的临床和成本效益[Big CACTUS])中发现,CSLT 能够改善失语症的常见症状--找词:本研究详细描述了在 Big CACTUS 试验中实施的 CSLT 干预措施,并确定了与改善失语症患者找词能力直接相关的干预措施的有效成分:我们在随机对照试验的背景下开展了一项多方法研究。在研究 1 中,定性访谈探讨了关键信息提供者对 CSLT 干预的理解、各组成部分之间的相互作用以及如何对其进行测量。对定性数据进行了逐字记录和专题分析。定性研究结果为过程测量提供了依据,过程测量是对大型 CACTUS 试验中实施的 CSLT 干预进行过程评估的一部分。在研究 2 中,定量分析探讨了干预过程测量(使用计算机治疗的时间;治疗师对 CSLT 的了解;CSLT 量身定制的合理程度;使用软件练习提示对抗命名、非提示命名和在功能句中使用单词的时间)与 6 个月干预期内单词查找能力变化之间的关系:对 7 位 CSLT 方法专家进行了定性访谈。主题分析确定了 CSLT 方法的四个主要组成部分:(1)StepByStep 软件(第 5 版;Steps 咨询有限公司);(2)治疗设置:量身定制和个性化;(3)定期独立练习;以及(4)支持和监控。定量分析包括 83 名随机参加 Big CACTUS 试验干预组的参与者的过程和结果数据。发现与找词能力提高直接相关的过程测量是治疗师为量身定制计算机化治疗练习提供的详尽理由,以及失语症患者使用计算机软件练习在功能性句子中使用单词的时间:对 CSLT 方法的定性探索详细描述了该干预方法的组成部分、理论和机制,并有助于确定将在大型 CACTUS 试验中收集的过程测量指标。定量分析进一步加深了我们对干预的哪些组成部分与临床改善相关的理解。为了优化使用CSLT方法找词的益处,建议治疗师特别关注干预的有效成分:根据个人的具体语言困难量身定制治疗练习,并鼓励失语症患者练习以功能性句子中的词语为重点的练习:ISRCTN Registry ISRCTN68798818; https://www.isrctn.com/ISRCTN68798818。
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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来源期刊
CiteScore
4.20
自引率
0.00%
发文量
31
审稿时长
12 weeks
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