Web of Science: 1 cites, Scopus: 1 cites, Google Scholar: cites,
Toward Personalized Web-Based Cognitive Rehabilitation for Patients With Ischemic Stroke : Elo Rating Approach
Garcia-Rudolph, Alejandro (Institut Germans Trias i Pujol. Institut Guttmann)
Opisso, Eloy (Institut Germans Trias i Pujol. Institut Guttmann)
Tormos, Jose M. (Institut Germans Trias i Pujol. Institut Guttmann)
Madai, Vince Istvan (Birmingham City University. School of Computing and Digital Technology)
Frey, Dietmar (Charité - Universitätsmedizin Berlin)
Becerra, Helard (University College Dublin. School of Computer Science)
Kelleher, John D. (Technological University Dublin. Information, Communication and Entertainment Research Institute)
Bernabeu Guitart, Montserrat (Institut Germans Trias i Pujol. Institut Guttmann)
López, Jaume (Institut Germans Trias i Pujol. Institut Guttmann)
Universitat Autònoma de Barcelona

Data: 2021
Resum: Stroke is a worldwide cause of disability; 40% of stroke survivors sustain cognitive impairments, most of them following inpatient rehabilitation at specialized clinical centers. Web-based cognitive rehabilitation tasks are extensively used in clinical settings. The impact of task execution depends on the ratio between the skills of the treated patient and the challenges imposed by the task itself. Thus, treatment personalization requires a trade-off between patients' skills and task difficulties, which is still an open issue. In this study, we propose Elo ratings to support clinicians in tasks assignations and representing patients' skills to optimize rehabilitation outcomes. This study aims to stratify patients with ischemic stroke at an early stage of rehabilitation into three levels according to their Elo rating; to show the relationships between the Elo rating levels, task difficulty levels, and rehabilitation outcomes; and to determine if the Elo rating obtained at early stages of rehabilitation is a significant predictor of rehabilitation outcomes. The PlayerRatings R library was used to obtain the Elo rating for each patient. Working memory was assessed using the DIGITS subtest of the Barcelona test, and the Rey Auditory Verbal Memory Test (RAVLT) was used to assess verbal memory. Three subtests of RAVLT were used: RAVLT learning (RAVLT075), free-recall memory (RAVLT015), and recognition (RAVLT015R). Memory predictors were identified using forward stepwise selection to add covariates to the models, which were evaluated by assessing discrimination using the area under the receiver operating characteristic curve (AUC) for logistic regressions and adjusted R 2 for linear regressions. Three Elo levels (low, middle, and high) with the same number of patients (n=96) in each Elo group were obtained using the 50 initial task executions (from a total of 38,177) for N=288 adult patients consecutively admitted for inpatient rehabilitation in a clinical setting. The mid-Elo level showed the highest proportions of patients that improved in all four memory items: 56% (54/96) of them improved in DIGITS, 67% (64/96) in RAVLT075, 58% (56/96) in RAVLT015, and 53% (51/96) in RAVLT015R (P <. 001). The proportions of patients from the mid-Elo level that performed tasks at difficulty levels 1, 2, and 3 were 32. 1% (3997/12,449), 31. % (3997/12,449), and 36. 9% (4595/12,449), respectively (P <. 001), showing the highest match between skills (represented by Elo level) and task difficulties, considering the set of 38,177 task executions. Elo ratings were significant predictors in three of the four models and quasi-significant in the fourth. When predicting RAVLT075 and DIGITS at discharge, we obtained R 2 =0. 54 and 0. 43, respectively; meanwhile, we obtained AUC=0. 73 (95% CI 0. 64-0. 82) and AUC=0. 81 (95% CI 0. 72-0. 89) in RAVLT075 and DIGITS improvement predictions, respectively. Elo ratings can support clinicians in early rehabilitation stages in identifying cognitive profiles to be used for assigning task difficulty levels.
Ajuts: European Commission. Horizon 2020 777107
Drets: Aquest document està subjecte a una llicència d'ús Creative Commons. Es permet la reproducció total o parcial, la distribució, la comunicació pública de l'obra i la creació d'obres derivades, fins i tot amb finalitats comercials, sempre i quan es reconegui l'autoria de l'obra original. Creative Commons
Llengua: Anglès
Document: Article ; recerca ; Versió publicada
Matèria: Cognitive rehabilitation ; Elo rating ; Predictors ; Stroke rehabilitation ; Web-based tasks
Publicat a: JMIR Medical Informatics, Vol. 9 (november 2021) , ISSN 2291-9694

DOI: 10.2196/28090
PMID: 34757325


16 p, 332.4 KB

El registre apareix a les col·leccions:
Documents de recerca > Documents dels grups de recerca de la UAB > Centres i grups de recerca (producció científica) > Ciències de la salut i biociències > Institut d'Investigació en Ciencies de la Salut Germans Trias i Pujol (IGTP)
Articles > Articles de recerca
Articles > Articles publicats

 Registre creat el 2022-01-11, darrera modificació el 2022-09-16



   Favorit i Compartir