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Predicting Working Memory Training Responsiveness in Parkinson’s Disease: Both 'System Hardware' and Room for Improvement Are Needed
- Source :
- Neurorehabilitation and neural repair 35(2), 117-130 (2021). doi:10.1177/1545968320981956
- Publication Year :
- 2021
- Publisher :
- SAGE Publications, 2021.
-
Abstract
- Background. Patients with Parkinson’s disease (PD) are highly vulnerable to develop cognitive dysfunctions, and the mitigating potential of early cognitive training (CT) is increasingly recognized. Predictors of CT responsiveness, which could help to tailor interventions individually, have rarely been studied in PD. This study aimed to examine individual characteristics of patients with PD associated with responsiveness to targeted working memory training (WMT). Methods. Data of 75 patients with PD (age: 63.99 ± 9.74 years, 93% Hoehn & Yahr stage 2) without cognitive dysfunctions from a randomized controlled trial were analyzed using structural equation modeling. Latent change score models with and without covariates were estimated and compared between the WMT group ( n = 37), who participated in a 5-week adaptive WMT, and a waiting list control group ( n = 38). Results. Latent change score models yielded adequate model fit (χ2-test p > .05, SRMR ≤ .08, CFI ≥ .95). For the near-transfer working memory composite, lower baseline performance, younger age, higher education, and higher fluid intelligence were found to significantly predict higher latent change scores in the WMT group, but not in the control group. For the far-transfer executive function composite, higher self-efficacy expectancy tended to significantly predict larger latent change scores. Conclusions. The identified associations between individual characteristics and WMT responsiveness indicate that there has to be room for improvement (e.g., lower baseline performance) and also sufficient “hardware” (e.g., younger age, higher intelligence) to benefit in training-related cognitive plasticity. Our findings are discussed within the compensation versus magnification account. They need to be replicated by methodological high-quality research applying advanced statistical methods with larger samples.
- Subjects :
- Male
physiopathology [Cognitive Dysfunction]
Intelligence
rehabilitation [Parkinson Disease]
Psychological intervention
Audiology
physiology [Psychomotor Performance]
etiology [Cognitive Dysfunction]
law.invention
cognitive training
0302 clinical medicine
Randomized controlled trial
law
Outcome Assessment, Health Care
physiology [Neuronal Plasticity]
Medicine
Single-Blind Method
Precision Medicine
Expectancy theory
Neuronal Plasticity
05 social sciences
Age Factors
Parkinson Disease
Cognition
General Medicine
Middle Aged
Prognosis
Cognitive training
Memory, Short-Term
physiology [Memory, Short-Term]
Female
physiopathology [Parkinson Disease]
complications [Parkinson Disease]
Working memory training
medicine.medical_specialty
precision medicine
physiology [Intelligence]
structural equation modeling
working memory
050105 experimental psychology
Structural equation modeling
03 medical and health sciences
Humans
Cognitive Dysfunction
0501 psychology and cognitive sciences
ddc:610
Aged
business.industry
Working memory
Cognitive Remediation
predictors of training responsiveness
Therapy, Computer-Assisted
Parkinson’s disease
business
Psychomotor Performance
030217 neurology & neurosurgery
rehabilitation [Cognitive Dysfunction]
Subjects
Details
- ISSN :
- 15526844 and 15459683
- Volume :
- 35
- Database :
- OpenAIRE
- Journal :
- Neurorehabilitation and Neural Repair
- Accession number :
- edsair.doi.dedup.....821e683e8362e4db02106baa3cd94a76
- Full Text :
- https://doi.org/10.1177/1545968320981956