Optimized and Predictive Phonemic Interfaces for Augmentative and Alternative Communication

Author:

Cler Gabriel J.12,Kolin Katharine R.2,Noordzij Jacob P.23,Vojtech Jennifer M.23,Fager Susan K.4,Stepp Cara E.1235

Affiliation:

1. Graduate Program for Neuroscience–Computational Neuroscience, Boston University, MA

2. Department of Speech, Language, and Hearing Sciences, Boston University, MA

3. Department of Biomedical Engineering, Boston University, MA

4. Institute for Rehabilitation Science and Engineering, Madonna Rehabilitation Hospital, Lincoln, NE

5. Department of Otolaryngology—Head and Neck Surgery, Boston University School of Medicine, MA

Abstract

Purpose We empirically assessed the results of computational optimization and prediction in communication interfaces that were designed to allow individuals with severe motor speech disorders to select phonemes and generate speech output. Method Interface layouts were either random or optimized, in which phoneme targets that were likely to be selected together were located in proximity. Target sizes were either static or predictive, such that likely targets were dynamically enlarged following each selection. Communication interfaces were evaluated by 36 users without motor impairments using an alternate access method. Each user was assigned to 1 of 4 interfaces varying in layout and whether prediction was implemented (random/static, random/predictive, optimized/static, optimized/predictive) and participated in 12 sessions over a 3-week period. Six participants with severe motor impairments used both the optimized/static and optimized/predictive interfaces in 1–2 sessions. Results In individuals without motor impairments, prediction provided significantly faster communication rates during training (Sessions 1–9), as users were learning the interface target locations and the novel access method. After training, optimization acted to significantly increase communication rates. The optimization likely became relevant only after training when participants knew the target locations and moved directly to the targets. Participants with motor impairments could use the interfaces with alternate access methods and generally rated the interface with prediction as preferred. Conclusions Optimization and prediction led to increases in communication rates in users without motor impairments. Predictive interfaces were preferred by users with motor impairments. Future research is needed to translate these results into clinical practice. Supplemental Material https://doi.org/10.23641/asha.8636948

Publisher

American Speech Language Hearing Association

Subject

Speech and Hearing,Linguistics and Language,Language and Linguistics

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