predict4法语全开源词预测和词校正引擎的可行性研究。

IF 1.9 4区 医学 Q2 REHABILITATION Disability and Rehabilitation-Assistive Technology Pub Date : 2024-12-24 DOI:10.1080/17483107.2024.2445009
Mathieu Thebaud, Jean-Yves Antoine, Willy Allegre, Véronique Tsimba, Isabelle Bossard, Marion Crochetet, Emmanuelle Lopez, Céline Arbizu, Samuel Pouplin
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引用次数: 0

摘要

目的:信息和通信技术对社会和职业融合至关重要,但身体有缺陷的人很难获得技术。文本输入可能是缓慢和累人的。我们开发了一个名为Predict4All的免费开源模块,用于法语的AAC(辅助/替代通信)软件。它提供拼写容错的单词预测。我们的目的是评估在有学习障碍或身体障碍的人群中使用该系统的可行性,并对其在拼写正确性和文本输入速度方面的功效进行初步评估。材料和方法:我们于2020年2月至2022年3月进行了一项前瞻性介入、双中心可行性研究。我们包括有学习困难或影响口头或书面交流的神经系统疾病的人。我们评估了疲劳程度、认知负荷和满意度、拼写正确性、文本输入速度和技术问题。我们使用了3种实验设置:WITHOUT(既不预测也不校正)、PRED(不校正的预测)、PREDCORR(有校正的预测)。结果:12名参与者完成了研究。疲劳(所有条件)、认知负荷、满意度(PRED和PREDCORR)在第0天、第30天和第120天之间没有差异。没有技术问题的报告。在使用单词预测软件的第30天和第120天之间,错误率显著下降(p = 0.026), PRED和PREDCORR之间没有差异(p)。结论:我们的研究揭示了Predict4All引擎的潜力,并取得了成功的结果,因为该系统在没有技术或方法障碍的情况下有效地运行。此外,该引擎已在两个中心的临床实践中被医疗保健专业人员和用户采用。
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The Predict4All open-source word prediction and word correction engine in French language: a feasibility study.

Purpose: Information and communication technologies are crucial for social and professional integration, but access to technology can be difficult for people with physical impairments. Text entry can be slow and tiring. We developed a free and open-source module called Predict4All for use with AAC (augmentative/alternative communication) software in French language. It offers spelling error-tolerant word prediction. We aimed to evaluate the feasibility of using the system in people with learning or physical impairments and to perform a preliminary evaluation of its efficacy on spelling correctness and text input speed.

Materials and methods: We conducted a prospective interventional, two-center feasibility study between February 2020 and March 2022. We included people with learning difficulties or neurological diseases impacting verbal or written communication. We evaluated fatigue, cognitive load and satisfaction, spelling correctness and text input speed and technical issues. We used 3 experimental setups: WITHOUT (neither prediction nor correction), PRED (prediction without correction), PREDCORR (prediction with correction).

Results: Twelve participants completed the study. Fatigue (all conditions), cognitive load, satisfaction (PRED and PREDCORR) did not differ between Day 0, Day 30 and Day 120, for either center. No technical issues were reported. The percentage of errors decreased significantly between Day 30 and Day 120 with word prediction software (p = 0.026), with no difference between PRED and PREDCORR (p < 0.447).

Conclusion: Our study has shed light on the potential of the Predict4All engine with successful results, as the system performed effectively without technical or methodological obstacles. Furthermore, the engine has been adopted in clinical practice at both centers by both healthcare professionals and users.

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CiteScore
5.70
自引率
13.60%
发文量
128
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