Clinical and neuroimaging data has been increasingly used in recent years to disentangle heterogeneity of treatment response to cognitive training (CT) and predict which individuals may achieve the highest benefits. CT has small to medium effects on improving cognitive and social functioning in recent onset psychosis (ROP) patients, who show the most profound cognitive and social functioning deficits among psychiatric patients. We employed multivariate pattern analysis (MVPA) to investigate the potential of cognitive data to predict social functioning improvement in response to 10 h of CT in patients with ROP. A support vector machine (SVM) classifier was trained on the naturalistic data of the Personalized Prognostic Tools for Early Psychosis Management (PRONIA) study sample to predict functioning in an independent sample of 70 ROP patients using baseline cognitive data. PRONIA is a part of a FP7 EU grant program that involved 7 sites across 5 European countries, designed and conducted with the main aim of identifying (bio)markers associated with an enhanced risk of developing psychosis in order to improve early detection and prognosis. Social functioning was predicted with a balanced accuracy (BAC) of 66.4% (Sensitivity 78.8%; Specificity 54.1%; PPV 60.5%; NPV 74.1%; AUC 0.64; P = 0.01). The most frequently selected cognitive features (mean feature weights > ± 0.2) included the (1) correct number of symbol matchings within the Digit Symbol Substitution Test, (2) the number of distracting stimuli leading to an error within 300 and 200 trials in the Continuous Performance Test and (3) the dynamics of verbal fluency between 15 and 30 s within the Verbal Fluency Test, phonetic part. Next, the SVM classifier generated on the PRONIA sample was applied to the intervention sample, that obtained 54 ROP patients who were randomly assigned to a social cognitive training (SCT) or treatment as usual (TAU) group and dichotomized into good (GF-S ≥ 7) and poor (GF-S < 7) functioning patients based on their level of Global Functioning-Social (GF-S) score at follow-up (FU). By applying the initial PRONIA classifier, using out-of-sample cross-validation (OOCV) to the sample of ROP patients who have undergone the CT intervention, a BAC of 59.3% (Sensitivity 70.4%; Specificity 48.1%; PPV 57.6%; NPV 61.9%; AUC 0.63) was achieved at T0 and a BAC of 64.8% (Sensitivity 66.7%; Specificity 63.0%; PPV 64.3%; NPV 65.4%; AUC 0.66) at FU. After SCT intervention, a significant improvement in predicted social functioning values was observed in the SCT compared to TAU group (P ≤0.05; ES[Cohens' d] = 0.18). Due to a small sample size and modest variance of social functioning of the intervention sample it was not feasible to predict individual response to SCT in the current study. Our findings suggest that the use of baseline cognitive data could provide a robust individual estimate of future social functioning, while prediction of individual response to SCT using cognitive data that can be generated in the routine patient care remains to be addressed in large-scale cognitive training trials.
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http://dx.doi.org/10.1016/j.pnpbp.2023.110864 | DOI Listing |
Alzheimers Dement
December 2024
Cleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV, USA.
Background: Prior research has demonstrated the positive association between social support and cognition. Specifically, greater social support has been linked with improved cognitive performance and reduced risk of dementia. In particular, emotional support has been identified as a key dimension in the relationship between social support and cognition.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
University College London, London, United Kingdom.
Background: The progressive nature of dementia and the complex needs means that people living with dementia require tailored approaches to address their changing care needs over time. These include physical multimorbidity, psychological, behavioural, and cognitive symptoms and possible risks arising from these and helping family caregivers. However, provision of these interventions is highly variable between and within countries, partly due to uncertainty about their efficacy and scarce resources.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Emory University, Atlanta, GA, USA.
Background: Black/African American adults (B/AAs) are 64% more likely to develop Alzheimer's disease (AD) than non-Hispanic White adults (NHWs), and risk factors, including non-biological determinants, are not fully delineated. Social determinants of health, such as socioeconomic status and lifetime discrimination, are associated with cognitive decline and increased AD risk. The purpose of this study is to examine the relationships of a perceived discrimination measure with sociodemographic characteristics and cognitive function in a racially diverse cohort of middle-aged adults with a parental history of AD.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Christ University, Bangalore, India.
Background: Research has consistently shown decreased quality of life (QoL) in people with dementia, with predictors of QoL ranging from education to emotional status. This study, along with a one year follow-up study, investigated the impact of Awe Walks as an intervention targeting emotional status for the first time in dementia. Awe-a positive emotion elicited when in the presence of vast things not immediately understood-promotes social connection and fosters well-being by encouraging a "small self".
View Article and Find Full Text PDFAlzheimers Dement
December 2024
SingHealth Community Hospitals, Singapore, Singapore.
Background: Social robots have been used in other countries for improvement of quality of life for persons with dementia.
Method: LOVOT was introduced as an adjunct to regular therapy sessions (either Physiotherapy or Occupational Therapy) and as an interactive companion during the patient's inpatient stay. The project was carried out over a span of 6 weeks (weekdays) for a maximum of 10-15 mins on an ad-hoc basis.
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