Abstract
Introduction
Bilinguals with aphasia (BWA) present varying degrees of lexical access impairment and recovery across their two languages. Because both languages may benefit from therapy, identifying the optimal target language for treatment is a current challenge for research and clinical practice. Prior research has demonstrated that the BiLex computational model can accurately simulate lexical access in healthy bilinguals, and language impairment and treatment response in bilingual aphasia. Here, we aim to determine whether BiLex can predict treatment outcomes in BWA in the treated and the untreated language and compare these outcome predictions to determine the optimal language for rehabilitation.
Methods and analysis
The study involves a prospective parallel-group, double-blind, randomised controlled trial. Forty-eight Spanish–English BWA will receive 20 sessions of semantic treatment for lexical retrieval deficits in one of their languages and will complete assessments in both languages prior and after treatment. Participants will be randomly assigned to an experimental group receiving treatment in the optimal language determined by the model or a control group receiving treatment in the language opposite to the model’s recommendation. Primary treatment outcomes include naming probes while secondary treatment outcomes include tests tapping additional language domains. Treatment outcomes will be compared across the two groups using 2×2 mixed effect models for repeated measures Analysis of variance (ANOVA) on metrics of treatment effects commonly employed in rehabilitation studies (ie, effect size and percentage change).
Ethics and dissemination
All procedures included in this protocol (protocol number 29, issue date: 19 March 2019) were approved by the Boston University Charles River Campus Institutional Review Board at Boston, Massachusetts (reference number: 4492E). The results of this study will be published in peer-reviewed scientific journals and will be presented at national and international conferences.
Trial registration number
Keywords: bilingual aphasia, anomia therapy, semantic treatment, stroke, rehabilitation, computational modeling, randomized controlled trial, therapeutics, clinical trials, internal medicine, rehabilitation medicine, neurology, adult neurology
Strengths and limitations of the study.
This study uses computational modeling to predict language therapy outcomes in bilinguals with aphasia accounting for their bilingual background and language impairment.
The computational model can accurately simulate lexical access in healthy bilinguals and lexical access deficits and treatment response in bilinguals with aphasia.
We will evaluate the potential of computational modeling to guide clinical practice with bilinguals with aphasia by predicting the most beneficial target language for rehabilitation.
The effects of semantic treatment on word finding deficits in both languages will be examined in a large sample including 48 bilinguals with aphasia.
The use of a non-stratified randomisation approach may limit comparisons between treatment groups regarding baseline characteristics that may influence prognosis.
Introduction
Aphasia, a common speech and language disorder after brain damage, is a crucial target for bilingual rehabilitation given its contribution to the long-term disability and impact on the quality of life of stroke survivors1 in bilingual societies worldwide. Bilinguals with aphasia (BWA) experience deficits that affect one or both of their languages with varying degrees and patterns of impairment and recovery,2 3 resulting in communicational limitations across multiple sociocultural and linguistic contexts. Speech and language therapy is effective for poststroke aphasia,4 however, most existing evidence on its effectiveness in BWA comes from single case studies or studies with small heterogeneous samples. Current reviews addressing language rehabilitation outcomes in BWA suggest that both languages show potential for treatment-induced recovery5–7 although evidence is mixed and remains inconclusive. For instance, some studies have shown that BWA can present treatment gains in the treated language and generalisation effects to the untreated language.8–13 Yet, other studies have shown benefits in just the treated language but lack of generalisation to the untreated language,14 15 and even cross-language interference effects.16 17 Several factors can modulate individual differences in treatment outcomes in BWA18 including prestroke factors such as bilingual background19 20 and poststroke factors such as language impairment10 and lesion location.17 Inter-individual variability may further be influenced by differences in the methodological approach and interventions employed across studies and the language combinations examined across participants, thus limiting the generalisation of prior findings. Overall, the existing behavioural research has contributed to our current understanding of language dysfunction and treatment-induced recovery in BWA. However, the abovementioned limitations have resulted in a lack of evidence-based guidelines that can help clinicians develop optimal rehabilitation plans for BWA21 and crucially, inform them which language should be targeted in treatment to observe maximum treatment gains across the treated and the untreated language.
Predictive models of rehabilitation outcomes in aphasia can help evaluate the contribution of relevant factors to language therapy outcomes.22 23 In BWA, such models may further allow identifying the optimal treatment language and developing treatment plans that increase the likelihood of observing maximum benefits. However, making reliable predictions of treatment effects is challenging as collecting representative patient datasets requires large scale longitudinal studies that are highly demanding and often unfeasible. Computational modeling can offer an alternative promising approach to the prediction of treatment outcomes in BWA while accounting for relevant prestroke and poststroke factors that influence language recovery. Computational models have been used to examine multiple aspects of second language processing in healthy bilinguals24–26 and simulate language impairment27 and treatment response in BWA.28 Building on our prior research,25 27 28 we developed BiLex, a neural network model that can accurately simulate lexical access in Spanish–English healthy bilinguals in both their native (L1) and second (L2) language, while accounting for individual differences in their L2 age of acquisition (AOA), and the relative amounts of lifetime use and exposure to each language.29 The BiLex model has been further employed to simulate lexical access impairment and treatment outcomes in a retrospective sample of 13 Spanish–English BWA.30 This simulation was successfully achieved by (1) modeling prestroke naming ability for each BWA accounting for their age at testing, L2 AoA, and prestroke exposure and use of each language, (2) modeling their L1 and L2 naming impairment by implementing damage to the semantic and phonetic systems of the neural network simulating the bilingual lexicon of each individual and (3) retraining the neural network to simulate treatment effects in each language when therapy is provided in just one language. These simulations demonstrated that BiLex can accurately capture poststroke lexical access impairment and treatment outcomes in each language, thus validating its use to predict treatment response in BWA.30
The primary objective of this randomised control trial (RCT) is to determine the capacity of our computational model to predict language therapy outcomes in a sample of 48 Spanish–English BWA. Specifically, we aim to examine whether BiLex can accurately determine the optimal treatment language that will result in maximum gains in the treated and the untreated language for each patient by comparing simulated treatment effects when treatment is provided in one language versus the other. To this aim, we will randomly allocate participants to a model-prescribed experimental group receiving therapy in the language defined as optimal by the model, or a model-opposite control group receiving therapy in the opposite language. We hypothesise that BWA treated following the model’s recommendation will show greater treatment outcomes than those who are trained opposite to the model’s recommendation. This RCT involves semantic feature analysis31 treatment with proved effectiveness in BWA.8 11 32 Because this treatment entails strengthening semantic representations which are shared across languages in bilinguals33 we expect positive treatment effects in the treated language and some degree of generalisation to the untreated language as shown in prior research.8–13 Thus, we will examine treatment effects on primary and secondary treatment outcome measures in the treated language and will employ the same metrics to determine the degree of cross-language transfer effects in the untreated language. Secondary objectives include providing a computational explanation for different patterns of cross-language generalisation arising from facilitation and inhibitory mechanisms11 32 and expanding the architecture and function of the model to Chinese–English to account for a different bilingual combination.
Methods
Design
The study will employ a prospective parallel-group, double-blind, RCT design to test the efficacy of the BiLex computational model to predict treatment gains in both languages in each BWA. Figure 1 depicts all procedures for participants throughout the trial, which are reported here following the Standard Protocol Items: Recommendations for Interventional Trials guidelines for RCTs.34
Patient and public involvement
Patients or the general public were not involved in the design, conduct, reporting or dissemination of the research.
Participants and setting
Participants will be 48 Spanish–English BWA equally distributed across the model-prescribed and model-opposite groups (see the Statistical analysis section for sample size estimation). Participants will be actively recruited from hospitals in Massachusetts, and bilingual research and rehabilitation centres in other regions including San Francisco, California and Austin, Texas (see ClinicalTrials.gov for information about recruitment locations). Participants will also be recruited via referrals from neurologists, speech and language pathologists and other clinicians across the USA. The study will also be advertised so that potential participants can self-refer to the research team.
Eligibility and enrollment
As part of the initial screening process, recruiting sites will request information relevant to the eligibility of BWA to the referring clinician, institution, or caregivers to determine whether they are potential study participants. Trained clinicians will provide detailed information about study participation in the patient’s preferred language, explain all related procedures and obtain written consent from patients willing to participate in the RCT. Full eligibility will be determined according to inclusion and exclusion criteria (table 1) after clinicians obtain the signed consent form during the first session. To ensure eligibility, the patient and caregiver will fill out a patient history form collecting information about demographics, stroke history, medical history, current medications and an overview of current language difficulties. They will also complete a Language Use Questionnaire (LUQ)35 to examine the patient’s bilingual background and a HIPAA release form to request stroke-related medical records from treating physicians, hospitals and rehabilitation facilities to ensure fulfilment of inclusion criteria (table 1). Prospective enrollment will last 5 years between 2018 and 2023 and will include 32 participants in addition to the planned sample size to minimise potential patient attrition.
Table 1.
Inclusion criteria | Exclusion criteria |
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
Baseline pre-treatment assessments
Initial assessments29 35–49 will be conducted during 2 hour sessions over 7 days or more if needed (table 2). Variation in number of sessions across patients is expected reflecting individual differences in pace, degree of severity and time availability.
Table 2.
Outcome measure | Assessments | Language of administration | Measurement variable |
Primary: lexical access | Naming probes* | Spanish and English | % accuracy (ES and PC) |
Secondary: lexical access | Boston Naming Test (BNT)36 37† | Spanish and English | % accuracy |
Category generation task38† | Spanish and English | Number of words produced % accuracy |
|
Controlled Oral Word Association Test (COWAT)39 40† | Spanish and English | Number of words produced % accuracy |
|
Secondary: non-verbal semantic knowledge | Pyramid and Palm Trees(PAPT): picture modality41† | Preferred language | % accuracy |
Secondary: lexical-semantic processing | Psycholinguistic Assessments of Language Processing in Aphasia (PALPA)42 43†: subtests of spoken and written word–picture matching, auditory and written synonym judgments and word semantic association | Spanish and English | % accuracy |
Secondary: reading | Psycholinguistic Assessments of Language Processing in Aphasia (PALPA)42 43†: subtests of letter-length readingc41 42 | Spanish and English | % accuracy |
Secondary: aphasia severity | Western Aphasia Battery–Revised (WAB-R)44 45† | Spanish and English | WAB-AQ Score |
Secondary: production and comprehension | Bilingual Aphasia Test (BAT–B)46† | Spanish and English | % accuracy |
Secondary: translation | Bilingual Aphasia Test: (BAT–C)46† | Spanish and English | % accuracy |
Secondary: discourse | Aphasia bank47† | Spanish and English | CIU per minute |
Secondary: perception of patient’s communication abilities | Communicative Effectiveness Index (CETI)48† | Preferred language | Total score |
Secondary: executive function | Cognitive Linguistic Quick Test (CLQT)49† | Preferred language | % accuracy |
*Naming probes designed for each patient including treated and untreated items.
†Standardised tests of language and/ or cognition.
CIU, content information units; ES, effect size; PC, percentage change.
Stimuli
All patients will be tested on the Item Selection Naming Test (ISNT) developed to examine naming ability on a large set of 273 unique items of 13 broad semantic categories, including semantically related and unrelated non-cognates (ie, <50% cross-language phonemic overlap). The test will be administered in each language separately to identify items that each patient fails to retrieve correctly in both languages. These items will be used to create six stimuli sets per patient, three sets in English and three sets of their Spanish direct translations. Each set will include 15 items, for a total of 45 unique words and their translations (table 3). SET 1 will include treated words and their translations, SET 2 will include words that are semantically related to those in SET 1 (ie, semantic category coordinates) and their translations, and SET 3 will include words that are semantically unrelated to those in SET 1 and their translations. Word pairs in SET 1 and SET 2 will be sister terms as verified on the online lexical database Wordnet available at https://wordnet.princeton.edu/. If the ISNT does not provide enough items that the patient fails to name in both languages to create the stimuli sets, clinicians can select items from the 60-item naming screener29 or test the patient on an additional naming screener with novel items. All stimuli sets will be unique to each patient reflecting their particular naming deficits across both languages.
Table 3.
Stimuli set | Description | Outcome measured | Example * |
SET 1: treatment words | 15 words used as treatment items | Treatment gains in the treated language | SET 1— English ‘apple’ |
SET 1: treatment translations | 15 translations of treatment words | Cross-language generalisation to untreated translations | SET 1— Spanish ‘manzana’ |
SET 2: semantically related words | 15 words semantically related to treatment words in SET 1 (ie, category coordinates) | Within-language generalisation to semantically related untreated words in the same language | SET 2— English ‘orange’ |
SET 2: semantically related translations | 15 translations of the semantically related words in SET 2 (ie, category coordinates) | Cross-language generalisation to semantically related words in the untreated language | SET 2— Spanish ‘naranja’ |
SET 3: semantically unrelated control words | 15 words semantically unrelated to treatment words in SET 1 | Reference set for gains in the treated language | SET 3— English ‘ship’ |
SET 3: semantically unrelated control translations | 15 translations of the semantically unrelated words in SET 3 | Reference set for gains in the untreated translations | SET 3—Spanish ‘barco’ |
All word sets for each patient will be similar in average word frequency and length.
*Example of sets created for a patient for whom English is the treated language.
Naming probes
All 45 pictures corresponding to the 45 words in English and their Spanish translations will be included in baseline naming probes, treatment naming probes and post-treatment naming probes, which are similar in structure but are labelled differently according to the time point of their administration. Three baseline naming probes will be conducted on three different sessions (maximum gap of 1 week between probes) prior to treatment to establish individual baseline naming performance. Baselines will be considered stable when they show no more than 30% variability.8 Two additional baseline probes will be administered for patients showing larger performance variability. Ten treatment naming probes will be conducted, one at the beginning of every second session of a week of treatment. Three post-treatment naming probes will be completed after treatment on three different sessions (maximum gap of 1 week between probes) to examine the maintenance of treatment effects once treatment is interrupted.
Each naming probe will present all 45 pictures with a language-blocked design (ie, all items tested in one language first and tested again in the other language) and language order will be counterbalanced across sessions. The order of presentation will be pseudo-randomised to avoid the sequential order of items from the same semantic category. Pictures will be presented on a computer and clinicians will record responses without providing accuracy feedback. All naming probes will credit one point for each response produced in the target language that involves the target word, an acceptable variation of it or a production that deviates from the correct response by one phoneme. Incorrect responses including instances of language mixing will be analysed following an error scoring system reported elsewhere.50 Naming probe scores will be recorded on a spreadsheet that graphs the trend lines across baseline, treatment and post-treatment naming probes for each patient.
Primary outcome measures
Naming probes will serve as primary treatment outcomes (table 2). The percentage of accuracy on treatment naming probes will serve as the primary dependent measure to monitor change over time in word finding ability during treatment. Specifically, SET 1 will allow assessing treatment effects on treated words and untreated translations, SET 2 will allow evaluating treatment effects on semantically related untreated words and translations and SET 3 will allow examining change in unrelated/untreated control words (table 3). Additionally, the percentage of accuracy on baseline and post-treatment naming probes will help evaluating change in word finding ability post-treatment relative to pre-treatment in both languages (see the Statistical analysis section).
Secondary outcome measures
Treatment steps encompassed in our intervention may target additional language domains other than naming ability. Although BiLex will not predict treatment responsiveness as measured by secondary outcome measures, treatment effects will also be reported using secondary outcome measures of semantic knowledge, lexical-semantic processing, comprehension, single word and sentence production, and executive function (see table 2 for standardised tests and specific measurement variables). In all cases, pre-treatment and post-treatment will be the specific measurement time points of interest for analysis. Change from pre-treatment to post-treatment will be considered the metric for participant-level analysis and mean group values will be computed as method of aggregation. All outcome measures are considered reproducible, relevant and sensitive to measure change in post-stroke aphasia and have been used in prior bilingual aphasia rehabilitation research.6 8–17 21 32
Computational simulations
The BiLex computational model29 will be employed to conduct 50 independent simulations per patient, with each simulation leading to a predicted treatment outcome in each language separately (ie, percentage of items incorrectly named in the baseline naming probes that were correctly named after treatment). Next, BiLex will compare treatment outcomes (eg, outcomes in the treated and untreated language when treatment is provided in English, vs outcomes in the treated and untreated language when treatment is provided in Spanish) by adding up the treatment effects in both treated and untreated language for each simulation and computing the number of simulations that predict a larger overall effect for treatment in English versus treatment in Spanish. This comparison will enable BiLex to predict the optimal language for treatment (ie, the language with ≥10% of all 50 simulations showing superior outcomes when treatment is provided in one language over the other). When BiLex has no clear recommendation (ie, the difference in simulated outcomes for treatment in English vs treatment in Spanish is <10%), it will compute the median treatment effect for all 50 simulations for each treatment language and will predict the optimal language of treatment using a different criterion (ie, the language showing a median difference ≥5% relative to the other language will be determined as being more optimal for treatment). All simulations will use the same input data for each patient including their age at testing, LUQ metrics including L2 AoA, lifetime exposure to each language, and prestroke language use to simulate prestroke naming abilities in each language (the use of these LUQ metrics in simulations will be similar to our previous work described in detail elsewhere.29 Also, their age at stroke onset, and poststroke semantic (ie, Pyramid and Palm Trees Test41 Scores) and naming performance (ie, scores on the Boston Naming Test,36 37 60-item naming screener29 and baseline naming probes) in each language will be used to simulate post-stroke language deficits and treatment response as previously reported.30
Randomisation and group allocation
The laboratory manager will use a pre-defined non-stratified randomisation module in REDCap51 (concealed to all other team members involved in the RCT) to randomly assign each patient to one of the 25 slots available for each intervention group in the randomisation sequence: the experimental model-prescribed group receiving language therapy in the optimal language defined by the computational model, or the control model-opposite group receiving therapy in the opposite non-prescribed language (allocation ratio of 1:1). Following the order of enrollment and on completion of baseline assessments, the computer scientist of the team will receive the relevant input data of each patient to conduct the simulations that will define his or her optimal language of treatment, and will inform the laboratory manager about the treatment language chosen for each patient. Next, the laboratory manager will enter the patient ID code into the randomisation module to assign the patient to the model-prescribed or the model-opposite group and will inform the treating clinician of the language chosen for treatment (eg, if the predicted language for a given patient is English and the randomisation module returns ‘model-opposite group’, the laboratory manager will inform the treating clinician that Spanish will be the treatment language and the patient will receive treatment accordingly). Because current clinical services for BWA depend on geographic location, availability of bilingual speech-language pathologists, the patient’s language proficiency and personal preference, it is surmised that when all these factors are considered, patients may receive English or Spanish treatment at a 50% probability. Our experimental design reflects this 50% probability of receiving treatment in any one language by using a fully randomised allocation to the model-prescribed or model-opposite group. The same procedure schedule (ie, 10 weeks of treatment with testing prior and after treatment) will be followed by each group and the language targeted in treatment (ie, prescribed vs opposite) will be the only characteristic differing across groups. For consistency with the computational procedure, treatment will only be provided in one language whether or not cross-language generalisation is observed.
Blinding
This is a double-blind RCT. The researcher conducting the computational simulations determining the optimal language of treatment and the clinicians conducting assessments and treatment will be blind to each patient’s group assignation. The principal investigator and other researchers will be blind to each patient’s group allocation. Patients will know the language chosen for treatment but they will remain blind to their treatment group allocation.
Intervention
Patients will receive a semantic-feature analysis based treatment31 with large evidence of effectiveness in improving word retrieval deficits in BWA.8 11 32 Treatment will be provided over 20 sessions, two times per week during 2 hour sessions, and will be delivered in person or via videoconference following our teletherapy protocol if patients cannot attend one of the recruitment sites. Treatment will be conducted on a laptop computer using the Qualtrics survey software available at https://www.qualtrics.com. A Qualtrics survey will be developed for each patient’s treatment session presenting the 15 treated items in the targeted language in randomised order. All sessions will be conducted using the Zoom communication software available at https://zoom.us/ to enable video-recording. Videos will be reviewed later for treatment fidelity and scoring of patient responses. Treatment steps emphasising semantic feature attributes of each treated item (table 4) will be guided by a trained clinician who will use a treatment key to provide response feedback (including requests to provide responses in the target language when instances of language mixing occur), and annotate all verbal responses.
Table 4.
Treatment steps * | Description |
Step 1. Naming | Patient names the picture of the treated item on the screen. Clinician provides feedback. |
Step 2. Feature selection | Patient reviews a list of 15 semantic features and selects the ones that do not apply to the treated item. Patient classifies the features that apply to the treated item according to their function, general characteristics, physical attributes, location and superordinate category. |
Step 3. Association | Patient provides an association between the trained item and another item/ concept and explains how the two are related. |
Step 4. Yes/ no questions | Patient reviews a list of 15 semantic features and determines whether they apply or do not apply to the treated item. |
Step 5. Naming | Patient names the picture of the treated item on the screen. |
Step 6. Sentence | Patient creates a short sentence with the trained word. |
*Clinician provides feedback in all treatment steps (ie, correct response following patient’s performance).
Other interventions
Patients will not be engaged in other language interventions during treatment. No strict criteria are set for other concomitant interventions. Allowed interventions include the use of medications not known to exert significant effects on cognition.
Evaluation of progress and adherence to treatment
Individual progress during treatment will be discussed in weekly research meetings by reviewing treatment probe scores and corresponding trend lines across treatment sessions. To promote participant retention, all patients will have the opportunity to discuss their progress and concerns during each session. Adherence to treatment (ie, at least 80% of sessions attended) will be assessed in weekly research meetings. Patients who cannot make the required study visits will be withdrawn from the study.
Treatment fidelity
Clinicians will receive training to provide therapy according to our protocol. Treatment fidelity will be conducted by two trained bilingual research assistants who will watch treatment videos to determine the percentage of treatment steps performed correctly by clinicians on 25% of treatment sessions of each patient. Likewise, reliability will be conducted on 25% of the baseline and treatment naming probes and will also be performed on error analysis. Intra-class correlation statistics will be calculated for interrater reliability.
Post-treatment assessments
Three post-treatment naming probes and all primary and secondary outcome measures (table 2) will be administered to measure potential changes after treatment. Post-treatment assessments will be conducted during 2 hour sessions over 7 days or more if needed. Patients who drop out of the study for practical reasons (ie, transportation or health issues) will complete post-treatment assessments in an accelerated schedule.
Data management and confidentiality
Personal information and assessment and treatment data will be stored using REDCap, a secure web-based software platform for research studies.51 Also, REDCap will allow to track study candidates who are contacted but not enrolled and record reasons for ineligibility and non-participation. To ensure confidentiality, patients will have a physical folder containing their signed consent form, test forms and other study materials stored in a locked cabinet at Boston University. Video-recorded sessions will be kept in password-protected computers files. Patient records will be identified only by a patient identification number to be used in all computer entry programs. Access to patient data in both paper and digital form will be restricted to authorised study research staff only.
Statistical analysis
The predictive capacity of the computational model will be confirmed when it demonstrates an accurate prediction of both optimal rehabilitation and sub-optimal rehabilitation outcomes. To this aim, we will compare primary treatment outcomes for the model-prescribed group with those of the model-opposite group using 2 (Group)×2 (Time-point: pre and post-treatment) mixed effect models for repeated measures Analysis of variance (ANOVA) on effect size (ES) and percentage change (PC) measuring treatment effects, using a random intercept and random slope for time model to account for within-subject variation over time.
ES and PC allow measuring the extent to which changes in primary treatment outcomes from prior to after treatment are statistically reliable. ES will be calculated as ((mean of post-treatment probes-mean of baseline probes)/SD of baseline).52 In our previous work using the same treatment for BWA,32 ES have ranged from 0 to 16.5 (Mean=9.0) for trained items, from 0 to 13.7 (Mean=3.1) for the semantically related items and from 0 to 10.6 (Mean=2.18) for translations. Control set effect sizes ranged from 0 to 6.8 (Mean=1.7). Thus, the average effect size based on our preliminary data is 3.4. Our RCT sample size (n=48) will have at least 80% power to detect large effect sizes (ie, ES ≥0.8) indicating significant change in primary treatment outcomes.52 PC will be calculated as (mean of three post-treatment probes−mean of three pre-treatment probes) and will also be used to measure change in secondary treatment outcomes after treatment. Additionally, each model-prescribed patient will be matched to a model-opposite patient using propensity sampling in terms of age, L2 AoA, language exposure and degree of impairment in the two languages and we will compare differences between patient pairs in their time-series slope using simple paired t-tests. We expect that model-prescribed patients will show significantly higher slopes than the model-opposite patients. While we plan to complete a per-protocol analysis, secondary analysis of the data will also include intention-to-treat analysis to avoid selection bias.
Data monitoring and interim analyses
The Data and Safety Monitoring Board will include an external statistician who will review the treatment probe data and any available treatment outcome data on a quarterly basis. If no significant positive ES are reported for the first 12 patients, the statistician and the Data and Safety Monitoring Board will review the findings to change course in the experimental design. However, we do not intend to complete an interim analysis on the data as it influences the unsealing of the randomised patient assignment.
Quality monitoring
Clinicians collecting outcome measures will receive training on assessments and therapy including administration procedures, scoring criteria and data storing, and will demonstrate independent understanding and execution of correct study procedures. Important protocol modifications and protocol adherence will be discussed on weekly follow-up team supervision meetings.
Safety parameters and adverse events
No physical, social or legal risks are expected to arise as a direct consequence of trial participation (eg, intervention-related harms). No adverse event will be a solicited event. Adverse events will be recorded regardless of their relationship to the study intervention. The main adverse event is the occurrence of a second stroke or medical complications unrelated to their aphasia. In this case, participation will be terminated early so that patients can manage their health issues.
Discussion
The last few decades of bilingual aphasia research have shown that BWA require assessment and treatment options that respond to their specific individual patterns of deficits and communicational needs in each language while considering their individual history of bilingualism. While there is evidence that both languages show potential for recovery in BWA,5–7 the crucial question regarding which language should be targeted in their treatment to observe maximum therapy outcomes remains unanswered. This RCT will address this question employing a computational modeling approach29 that accounts for factors known to determine recovery in BWA including prestroke bilingual background and poststroke impairment to predict individual treatment response.
The results of this RCT will contribute to the field of bilingual aphasia rehabilitation in several ways. Findings from this study may be of great clinical significance as they may inform clinicians which language to target in treatment and how much cross-language generalisation can be expected by treating one language versus the other considering the particular characteristics of each patient. If therapy in either language is available and cross-language transfer effects are to be expected, choosing the optimal language for therapy becomes crucial to improve treatment cost-benefits for BWA. If therapy is available in just one language, knowing which language to target in treatment can inform monolingual clinicians about when to seek assistance to treat a patient in the other language. Given its large patient cohort, this RCT may also inform about patterns of treatment-induced recovery according to specific bilingual profiles (ie, treatment response, extent of recovery and cross-language transfer for bilinguals with balanced vs unbalanced proficiency, and according to degree and type of impairment across languages). Our study may also contribute to our understanding of the mechanisms of language recovery in BWA during rehabilitation. Because parallel activation of the two language representation systems exists in bilinguals,53 facilitation and inhibition mechanisms may provide an explanation for the presence or absence of generalisation effects in BWA11 32 although they are not well understood. Retrospective computational simulations with patient treatment data may help understanding such mechanisms via a systematic variation of (1) facilitatory spreading activation of treated to untreated language representations within the treated language and across languages or (2) lateral inhibition between specific representations within and across languages. These simulations may provide a mechanistic account for the presence and absence of generalisation, and interference effects reported in the literature.8–17 Another factor that may influence individual variation in treatment response across BWA is language distance.54 Although our computational model simulates lexical access in Spanish–English speakers, it can expand its simulations to other language combinations by changing specific language representations while preserving its essential architecture. Thus, BiLex may predict treatment outcomes for BWA with different language combinations.
Finally, this work can contribute to the development of optimal rehabilitation protocols for BWA as comprehensively described therapy protocols for this population are rather uncommon. This protocol describes a RCT looking at the effects of semantic treatment for word finding deficits in the largest sample of BWA to be studied yet. Thus, it can guide future rehabilitation studies on study feasibility, documented procedures, selection of outcome measures and methods for delivering therapy. This RCT involves a few limitations including the fact that treatment targets specific concrete nouns and may present only limited generalisation to other word types and language measures, and the absence of follow-up assessments. Future research should address simulations of outcomes for different types of language therapy and include long-term assessments to evaluate the maintenance of treatment effects. To conclude, the present work will provide evidence of the feasibility of employing computational models to predict rehabilitation outcomes for BWA and will demonstrate the validity of using this approach in RCT studies. In the future, computational models may help optimise therapeutic interventions and reduce disability in BWA by considering an accurate characterisation of bilingual background and language deficits after brain damage.
Supplementary Material
Acknowledgments
We would like to thank all participants for their time and commitment to the present study. We thank our collaborators Risto Miikkulainen and Uli Grasemann who provide their expertise in computational modeling that greatly assists the present study. We would also like to thank all clinicians involved in patient referral, recruitment and data collection and the research assistants providing support with treatment fidelity procedures.
Footnotes
Contributors: SK conceptualised and designed the study, lead the project team and provided trial management and data analysis expertise. CP wrote the manuscript, assessment and treatment protocols, developed training procedures for clinicians and coordinated multisite data collection and patient referrals. CP and MD wrote the final study protocol. CP and MS implemented the treatment fidelity protocol and oversaw all related procedures. CP, MS, EC are currently in charge of ongoing recruitment, assessment and treatment procedures. MD and NM are in charge of patient randomisation, data handling and IRB procedures. All authors have reviewed and approved the manuscript.
Funding: This work was supported by the National Institute on Deafness and Other Communication Disorders of the National Institutes of Health [grant U01DC014922] awarded to Swathi Kiran.
Disclaimer: The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health.
Competing interests: SK serves as a consultant for The Learning Corporation with no scientific overlap with the present study. Claudia Peñaloza, Michael Scimeca and Erin Carpenter are currently employed by Boston University under NIH/NIDCD grant number U01DC014922 awarded to SK.
Patient and public involvement: Patients and/or the public were not involved in the design, or conduct, or reporting, or dissemination plans of this research.
Patient consent for publication: Not required.
Provenance and peer review: Not commissioned; externally peer reviewed.
References
- 1.Hilari K, Needle JJ, Harrison KL. What are the important factors in health-related quality of life for people with aphasia? A systematic review. Arch Phys Med Rehabil 2012;93:S86–95. 10.1016/j.apmr.2011.05.028 [DOI] [PubMed] [Google Scholar]
- 2.Fabbro F. The bilingual brain: bilingual aphasia. Brain Lang 2001;79:201–10. 10.1006/brln.2001.2480 [DOI] [PubMed] [Google Scholar]
- 3.Paradis M. A neurolinguistic theory of bilingualism. Amsterdam: John Benjamins Publishing, 2004. [Google Scholar]
- 4.Brady MC, Kelly H, Godwin J, et al. . Speech and language therapy for aphasia following stroke. Cochrane Database Syst Rev 2016;24:CD000425 10.1002/14651858.CD000425.pub4 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5.Ansaldo AI, Saidi LG. Aphasia therapy in the age of globalization: cross-linguistic therapy effects in bilingual aphasia. Behav Neurol 2014;2014:1–10. 10.1155/2014/603085 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 6.Faroqi-Shah Y, Frymark T, Mullen R, et al. . Effect of treatment for bilingual individuals with aphasia: a systematic review of the evidence. J Neurolinguistics 2010;23:319–41. 10.1016/j.jneuroling.2010.01.002 [DOI] [Google Scholar]
- 7.Kohnert K. Cross-language generalization following treatment in bilingual speakers with aphasia: a review. Semin Speech Lang 2009;30:174–86. 10.1055/s-0029-1225954 [DOI] [PubMed] [Google Scholar]
- 8.Edmonds LA, Kiran S. Effect of semantic naming treatment on crosslinguistic generalization in bilingual aphasia. J Speech Lang Hear Res 2006;49:729–48. 10.1044/1092-43882006/053 [DOI] [PubMed] [Google Scholar]
- 9.Goral M, Levy ES, Kastl R. Cross-language treatment generalisation: a case of trilingual aphasia. Aphasiology 2007;103:203–4. 10.1016/j.bandl.2007.07.116 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 10.Kiran S, Iakupova R. Understanding the relationship between language proficiency, language impairment and rehabilitation: evidence from a case study. Clin Linguist Phon 2011;25:565–83. 10.3109/02699206.2011.566664 [DOI] [PubMed] [Google Scholar]
- 11.Kiran S, Roberts PM. Semantic feature analysis treatment in Spanish–English and French–English bilingual aphasia. Aphasiology 2010;24:231–61. 10.1080/02687030902958365 [DOI] [Google Scholar]
- 12.Kurland J, Falcon M. Effects of cognate status and language of therapy during intensive semantic naming treatment in a case of severe nonfluent bilingual aphasia. Clin Linguist Phon 2011;25:584–600. 10.3109/02699206.2011.565398 [DOI] [PubMed] [Google Scholar]
- 13.Miertsch B, Meisel JM, Isel F. Non-treated languages in aphasia therapy of polyglots benefit from improvement in the treated language. J Neurolinguistics 2009;22:135–50. 10.1016/j.jneuroling.2008.07.003 [DOI] [Google Scholar]
- 14.Galvez A, Hinckley JJ. Transfer patterns of naming treatment in a case of bilingual aphasia. Brain Lang 2003;87:173–4. 10.1016/S0093-934X(03)00256-6 [DOI] [Google Scholar]
- 15.Miller Amberber A. Language intervention in French–English bilingual aphasia: evidence of limited therapy transfer. J Neurolinguistics 2012;25:588–614. 10.1016/j.jneuroling.2011.10.002 [DOI] [Google Scholar]
- 16.Goral M, Naghibolhosseini M, Conner PS. Asymmetric inhibitory treatment effects in multilingual aphasia. Cogn Neuropsychol 2013;30:564–77. 10.1080/02643294.2013.878692 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 17.Keane C, Kiran S. The nature of facilitation and interference in the multilingual language system: insights from treatment in a case of trilingual aphasia. Cogn Neuropsychol 2015;32:169–94. 10.1080/02643294.2015.1061982 [DOI] [PubMed] [Google Scholar]
- 18.Peñaloza C, Kiran S. Recovery and rehabilitation patterns in bilingual and multilingual aphasia. In: The Handbook of the Neuroscience of Multilingualism. John Wiley & Sons 2019:553–71. [Google Scholar]
- 19.Peñaloza C, Barrett K, Kiran S. The influence of prestroke proficiency on poststroke lexical-semantic performance in bilingual aphasia. Aphasiology 2020;34:1223–40. 10.1080/02687038.2019.1666082 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 20.Kuzmina E, Goral M, Norvik M, et al. . What influences language impairment in bilingual aphasia? A meta-analytic review. Front Psychol 2019;10:445. 10.3389/fpsyg.2019.00445 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 21.Roberts PM, Kiran S. Assessment and treatment of bilingual aphasia and bilingual anomia : Speech and Language Disorders in Bilinguals. Nova Science Publishers, 2007: 109–31. [Google Scholar]
- 22.El Hachioui H, Lingsma HF, van de Sandt-Koenderman MWME, et al. . Long-Term prognosis of aphasia after stroke. J Neurol Neurosurg Psychiatry 2013;84:310–5. 10.1136/jnnp-2012-302596 [DOI] [PubMed] [Google Scholar]
- 23.Watila MM, Balarabe SA. Factors predicting post-stroke aphasia recovery. J Neurol Sci 2015;352:12–18. 10.1016/j.jns.2015.03.020 [DOI] [PubMed] [Google Scholar]
- 24.Fang S-Y, Zinszer BD, Malt BC, et al. . Bilingual object naming: a Connectionist model. Front Psychol 2016;7:644. 10.3389/fpsyg.2016.00644 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Miikkulainen R, Kiran S. Modeling the bilingual lexicon of an individual subject : Príncipe JC, Miikkulainen R, Advances in self-organizing maps. Berlin, Heidelberg: Springer Berlin Heidelberg, 2009: 191–9. [Google Scholar]
- 26.Zhao X, Li P. Simulating cross-language priming with a dynamic computational model of the lexicon. Biling: Lang Cogn 2013;16:288–303. 10.1017/S1366728912000624 [DOI] [Google Scholar]
- 27.Grasemann U, Sandberg C, Kiran S, et al. . Impairment and rehabilitation in bilingual aphasia: A SOM-based model : Laaksonen J, Honkela T, Advances in self-organizing maps. Berlin, Heidelberg: Springer Berlin Heidelberg, 2011: 207–17. [Google Scholar]
- 28.Kiran S, Grasemann U, Sandberg C, et al. . A computational account of bilingual aphasia rehabilitation. Biling 2013;16:325–42. 10.1017/S1366728912000533 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 29.Peñaloza C, Grasemann U, Dekhtyar M, et al. . BiLex: a computational approach to the effects of age of acquisition and language exposure on bilingual lexical access. Brain Lang 2019;195:104643. 10.1016/j.bandl.2019.104643 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 30.Peñaloza C, Grasemann U, Dekhtyar M, et al. . A neural network model of naming impairment and treatment response in bilingual speakers with aphasia. 28th annual computational neuroscience meeting, 2019. BMC Neuroscience 2019;20:56.31722661 [Google Scholar]
- 31.Boyle M, Coelho CA. Application of semantic feature analysis as a treatment for aphasic dysnomia. Am J Speech Lang Pathol 1995;4:94–8. 10.1044/1058-0360.0404.94 [DOI] [Google Scholar]
- 32.Kiran S, Sandberg C, Gray T, et al. . Rehabilitation in bilingual aphasia: evidence for within- and between-language generalization. Am J Speech Lang Pathol 2013;22:S298–309. 10.1044/1058-03602013/12-0085 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 33.French RM, Jacquet M. Understanding bilingual memory: models and data. Trends Cogn Sci 2004;8:87–93. 10.1016/j.tics.2003.12.011 [DOI] [PubMed] [Google Scholar]
- 34.Chan A-W, Tetzlaff JM, Altman DG, et al. . Spirit 2013 statement: defining standard protocol items for clinical trials. Ann Intern Med 2013;158:200–7. 10.7326/0003-4819-158-3-201302050-00583 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 35.Kastenbaum JG, Bedore LM, Peña ED, et al. . The influence of proficiency and language combination on bilingual lexical access. Biling 2019;22:300–30. 10.1017/S1366728918000366 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 36.Kohnert KJ, Hernandez AE, Bates E. Bilingual performance on the Boston naming test: preliminary norms in Spanish and English. Brain Lang 1998;65:422–40. 10.1006/brln.1998.2001 [DOI] [PubMed] [Google Scholar]
- 37.Kaplan E, Goodglass H, Weintraub S. Boston naming test. 2nd Ed Philadelphia, PA: Lea & Febiger, 2001. [Google Scholar]
- 38.Carpenter E, Rao L, Peñaloza C, et al. . Verbal fluency as a measure of lexical access and cognitive control in bilingual persons with aphasia. Aphasiology;10:1–22. 10.1080/02687038.2020.1759774 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39.Benton AL, Hamsher K. Multilingual aphasia examination. 2nd Ed Iowa City, IA: AJA Associates, 1976. [Google Scholar]
- 40.Peña-Casanova J, Quiñones-Ubeda S, Gramunt-Fombuena N, et al. . Spanish multicenter normative studies (NEURONORMA project): norms for verbal fluency tests. Arch Clin Neuropsychol 2009;24:395–411. 10.1093/arclin/acp042 [DOI] [PubMed] [Google Scholar]
- 41.Howard D, Patterson K. Pyramids and Palm Trees test. San Antonio, TX: Pearson, 1992. [Google Scholar]
- 42.Kay J, Coltheart M, Lesser R. Psycholinguistic assessments of language processing in aphasia. Hove, England: Psychology Press, 1992. [Google Scholar]
- 43.Valle F, Cuetos F. EPLA: Evaluación del procesamiento lingüístico en la afasia [EPLA: Evaluation of Language Processing in Aphasia]. Hove, UK: Lawrence Erlbaum associates Ltd, 1995. [Google Scholar]
- 44.Kertesz A. Western Aphasia Battery - Revised. San Antonio, TX: Psychological Corporation, 2006. [Google Scholar]
- 45.Kertesz A, Pascual‐Leone García A. Batería de afasias “Western” [Western Aphasia Battery en versión y adaptación castellana]. Valencia, Spain: Nau Llibres, 1990. [Google Scholar]
- 46.Paradis J, Libben G. The assessment of bilingual aphasia: The Bilingual Aphasia Test. Hove, UK: Psychology Press, 1987. [Google Scholar]
- 47.Macwhinney B, Fromm D, Forbes M, et al. . AphasiaBank: methods for studying discourse. Aphasiology 2011;25:1286–307. 10.1080/02687038.2011.589893 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 48.Lomas J, Pickard L, Bester S, et al. . The communicative effectiveness index. J Speech Hear Disord 1989;54:113–24. 10.1044/jshd.5401.113 [DOI] [PubMed] [Google Scholar]
- 49.Helm-Estabrooks N. Cognitive linguistic quick test: CLQT. San Antonio, TX: Psychological Corporation, 2001. [Google Scholar]
- 50.Kiran S, Balachandran I, Lucas J. The nature of lexical-semantic access in bilingual aphasia. Behav Neurol 2014;2014:1–18. 10.1155/2014/389565 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 51.Harris PA, Taylor R, Thielke R, et al. . Research electronic data capture (REDCap)--a metadata-driven methodology and workflow process for providing translational research informatics support. J Biomed Inform 2009;42:377–81. 10.1016/j.jbi.2008.08.010 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 52.Beeson PM, Robey RR. Evaluating single-subject treatment research: lessons learned from the aphasia literature. Neuropsychol Rev 2006;16:161–9. 10.1007/s11065-006-9013-7 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 53.Costa A, HEIJ WLA, Navarrete E. The dynamics of bilingual lexical access. Biling: Lang Cogn 2006;9:137–51. 10.1017/S1366728906002495 [DOI] [Google Scholar]
- 54.Conner PS, Goral M, Anema I, et al. . The role of language proficiency and linguistic distance in cross-linguistic treatment effects in aphasia. Clin Linguist Phon 2018;32:739–57. 10.1080/02699206.2018.1435723 [DOI] [PMC free article] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.