Optimizing BCI-FIT: Brain Computer Interface - Functional Implementation Toolkit

Study Purpose:

This project adds to non-invasive BCIs for communication for adults with severe speech and physical impairments due to neurodegenerative diseases. Researchers will optimize & adapt BCI signal acquisition, signal processing, natural language processing, & clinical implementation. BCI-FIT relies on active inference and transfer learning to customize a completely adaptive intent estimation classifier to each user's multi-modality signals simultaneously. 3 specific aims are: 1. develop & evaluate methods for on-line & robust adaptation of multi-modal signal models to infer user intent; 2. develop & evaluate methods for efficient user intent inference through active querying, and 3. integrate partner & environment-supported language interaction & letter/word supplementation as input modality. The same 4 dependent variables are measured in each SA: typing speed, typing accuracy, information transfer rate (ITR), & user experience (UX) feedback. Four alternating-treatments single case experimental research designs will test hypotheses about optimizing user performance and technology performance for each aim.Tasks include copy-spelling with BCI-FIT to explore the effects of multi-modal access method configurations (SA1.3a), adaptive signal modeling (SA1.3b), & active querying (SA2.2), and story retell to examine the effects of language model enhancements. Five people with SSPI will be recruited for each study. Control participants will be recruited for experiments in SA2.2 and SA3.4. Study hypotheses are: (SA1.3a) A customized BCI-FIT configuration based on multi-modal input will improve typing accuracy on a copy-spelling task compared to the standard P300 matrix speller. (SA1.3b) Adaptive signal modeling will allow people with SSPI to typing accurately during a copy-spelling task with BCI-FIT without training a new model before each use. (SA2.2) Either of two methods of adaptive querying will improve BCI-FIT typing accuracy for users with mediocre AUC scores. (SA3.4) Language model enhancements, including a combination of partner and environmental input and word completion during typing, will improve typing performance with BCI-FIT, as measured by ITR during a story-retell task. Optimized recommendations for a multi-modal BCI for each end user will be established, based on an innovative combination of clinical expertise, user feedback, customized multi-modal sensor fusion, and reinforcement learning.

Study Status:

Recruiting

Disease:

Amyotrophic Lateral Sclerosis , Brainstem Stroke , Muscular Dystrophies , Parkinson's Disease and Parkinsonism , Multiple System Atrophy , Brain Tumor Adult , Spinal Cord Injuries , Locked-in Syndrome

Study Type:

Interventional

Type of Intervention:

Behavioral

Intervention Name:

BCI-FIT multi-modal access, BCI-FIT adaptive signal modeling, BCI-FIT active querying, BCI-FIT language modeling

Placebo:

Phase:

N/A

Study Chair(s)/Principal Investigator(s):

Melanie Fried-Oken, PhD, Oregon Health and Science University

Clinicaltrials.gov ID:

NCT04468919

Neals Affiliated?

No

Coordinating Center Contact Information

Oregon Health & Science University

Melanie Fried-Oken, PhD / email hidden; JavaScript is required / 503-494-7587

Portland, Oregon, 97239 United States

Full Study Summary:

For each specific aim, the development of new assistive technology BCI access methods will be evaluated in one or more experiments using alternating-treatments single-case research design (SCRD) with healthy controls and/or participants with SSPI. SCRD is ideal for examining small, heterogenous populations such as individuals with SSPI. It allows for detailed examination of performance trends and changes over time, and for participant-specific modifications to the intervention as part of an iterative design process. Because each participant serves as their own control, a sample size of five is sufficient to demonstrate and replicate an initial effect. Please see the Statistical Design and Power section for additional information about SCRD and data visualization and analysis.

A total of 60 participants will evaluate the BCI advancements; 15 individuals with SSPI and 45 controls. Participants with SSPI who currently have a reliable means of communication, either using speech and/or an AAC device, will be enrolled. All participants will be within the ages of 18-89 years (NIH-defined adults), with an equal number of men and women. Healthy controls will be matched for age, gender, and education level. In SCRD studies, each participant serves as their own control, so participants will experience all of the baseline and intervention conditions included in each individual study, as described below. Condition order will be randomized in the alternating-treatments, controlled such that each participant completes an equal number of sessions with each intervention, with no more than two consecutive sessions with the same intervention. Blinding is not possible as each subject must know their condition in an alternating treatment design.

All study visits with people with SSPI will be conducted in participants' homes by OHSU staff. Study visits with healthy controls will take place at the OHSU BCI laboratory. For all typing tasks, participants are seated approximately 75cm from an LCD display, set up for the BCI-FIT system. Depending on the user's customized BCI-FIT configuration (procedures described in SA1.1), one or more of the following control signals will be used in each typing session: EEG (ERP, Code or SSVEP), eye movements (gaze position or velocity), or binary switches. The experiments for SA1.3a, SA1.3b, and SA2.2 all involve copy-spelling tasks, in which participants will copy five common 5-letter English words of approximately equal typing difficulty (according to LM input), and correct mistakes by choosing the backspace character when appropriate. Individual signal models will be initialized to population models and will be personalized and refined with each acquired copy-spelling task data set. The experiment for SA3.4 involves a story-retell task, described below in the paragraph about that experiment.

Experiment 1.3a will test the hypothesis that a customized BCI-FIT configuration based on multi-modal input will improve typing accuracy on a copy-spelling task compared to a standard P300 matrix speller. We will pilot test new multi-modal input features with control participants before every SCRD with participants who present with SSPI. It will include five participants with SSPI in an alternating-treatments SCRD and will concentrate on typing accuracy as the primary DV. An initial baseline phase will involve weekly copy-spelling sessions with each participant's existing access method. Three or more baseline sessions will be conducted until stable performance is observed, then the alternating-treatments phase will begin. Treatments consist of two different BCI-FIT configurations: 1) a multi-modal configuration chosen by a combination of the approaches described in SA1.1. (clinically-supported and performance data-supported) and 2) a standard P300 matrix speller. In weekly data-collection visits, participants will complete copy-spelling sessions with each BCI-FIT configuration, with counterbalanced session order. Participants complete at least five sessions with each configuration, more if needed to achieve stable performance.

In Experiment 1.3b, it is hypothesized that adaptive individualized signal modeling will allow people with SSPI to type accurately during a copy-spelling task with BCI-FIT without training a new model for each use. This experiment will also include five participants with SSPI in an alternating-treatments SCRD with typing accuracy as the primary DV. In this study, no baseline is planned, as the comparison of interest is between versions of BCI-FIT with and without adaptive signal modeling. Initially, each participant will complete system optimization procedures described in SA1.1 and SA1.2 to identify their customized BCI-FIT configuration. During each visit, in the alternative treatments experiment, the participant will attempt three copy-spelling sessions with their customized BCI-FIT configuration, using three different model types: (1) a single calibration completed by the same user immediately before copy spelling; (2) multiple calibrations completed by the same user on previous days; (3) multiple calibrations completed by other users. Data will be graphed and analyzed separately (following procedures in the Statistical Design and Power section) to evaluate effects on performance with both system versions.

The experiment in SA2.2 will test the hypothesis that either of two methods of adaptive querying will improve BCI-FIT typing accuracy for users with mediocre AUC scores. It will include five controls and five participants with SSPI, each with an AUC score in the range of 70-80%. (Based on pilot testing, adaptive querying is expected to provide the most benefit to users with this level of baseline performance.) The experiment will follow an alternating-treatments SCRD. In the baseline phase, participants will complete weekly copy-spelling sessions with BCI-FIT without adaptive querying. Each weekly visit will include two copy-spelling sessions with BCI-FIT either with or without adaptive querying techniques. Condition order will be counterbalanced such that conditions occur in random order (with no more than two instances of the same condition in a row) and participants will experience each condition an equal number of times (at least five times each, until stable performance is achieved).

The experiment in SA3.4 will use an alternating-treatments SCRD experiment to test the hypothesis that language model enhancements, including a combination of partner and environmental input and word completion during typing, will improve typing performance with BCI-FIT, as measured by ITR during a story-retell task. This experiment will include five controls and five participants with SSPI, each paired with a partner to provide partner input (total enrollment of 10 dyads). In each weekly data-collection visit, participants will engage in two structured story-retell activities, one with and one without the enhanced language model features. Condition order will be counterbalanced such that conditions occur in random order (with no more than two instances of the same condition in a row) and participants will experience each condition an equal number of times (at least five times each, until stable performance is achieved). The story-retell activity will involve the participant watching a short video along with a communication partner, then using BCI-FIT to answer questions posed by a third person. The primary DV in this experiment will be ITR.

Study Sponsor:

Oregon Health and Science University

Estimated Enrollment:

60

Estimated Study Start Date:

07 / 15 / 2022

Estimated Study Completion Date:

06 / 30 / 2025

Posting Last Modified Date:

09 / 13 / 2022

Date Study Added to neals.org:

07 / 13 / 2020

Minimum Age:

18 Years

Maximum Age:

89 Years

Can participants use Riluzole?

Yes

Inclusion Criteria:

Controls

- Able to read and communicate in English

- Capable of participating in study visits lasting 1-3 hours

- Adequate visuospatial skills to select letters, words, or icons to copy or generate messages

- Live within a 2-hour drive of OHSU or is willing to travel to OHSU

Participants with severe speech and physical impairment:

- Adults between 18-89 years of age

- SSPI that may result from a variety of degenerative or neurodevelopmental conditions, including but not limited to: Duchenne muscular dystrophy, Rett Syndrome, ALS, brainstem CVA, SCI, and Parkinson-plus disorders (MSA, PSP)

- Able to read and communicate in English with speech or AAC device

- Capable of participating in study visits lasting 1-3 hours

- Adequate visuospatial skills to select letters, words or icons to copy or generate basic messages

- Life expectancy greater than 6 months

- Able to give informed consent or assent according to IRB approved policy

Exclusion Criteria:

- Participants with severe speech and physical impairment:

- Unstable medical conditions (fluctuating health status resulting in multiple hospitalizations within a 6 week interval)

- Unable to tolerate weekly data collection visits

- Photosensitive seizure disorder

- Presence of implanted hydrocephalus shunt, cochlear implant or deep brain stimulator

- High risk of skin breakdown from contact with data acquisition hardware.

Oregon Health & Science University | Recruiting

Melanie Fried-Oken, PhD / 503-702-2108 / email hidden; JavaScript is required

Betts Peters, PhD / 5034942732 / email hidden; JavaScript is required

Principal Investigator : Melanie Fried-Oken, PhD

Portland, Oregon 97239
United States