A Clinical Measure for Evaluating Patient Functioning in Diabetics

Author(s):  
R. W. Elford ◽  
R. T. Connis ◽  
T. R. Taylor ◽  
M. J. Gordon ◽  
J. E. Liljenquist ◽  
...  
2011 ◽  
Vol 21 (2) ◽  
pp. 44-54
Author(s):  
Kerry Callahan Mandulak

Spectral moment analysis (SMA) is an acoustic analysis tool that shows promise for enhancing our understanding of normal and disordered speech production. It can augment auditory-perceptual analysis used to investigate differences across speakers and groups and can provide unique information regarding specific aspects of the speech signal. The purpose of this paper is to illustrate the utility of SMA as a clinical measure for both clinical speech production assessment and research applications documenting speech outcome measurements. Although acoustic analysis has become more readily available and accessible, clinicians need training with, and exposure to, acoustic analysis methods in order to integrate them into traditional methods used to assess speech production.


Author(s):  
J. Treleaven ◽  
M. Dillon ◽  
C. Fitzgerald ◽  
C. Smith ◽  
B. Wright ◽  
...  

2021 ◽  
Vol 13 (1) ◽  
pp. 46-58
Author(s):  
João Paulo Branco ◽  
Filipa Rocha ◽  
João Sargento-Freitas ◽  
Gustavo C. Santo ◽  
António Freire ◽  
...  

The objective of this study is to assess the impact of recanalization (spontaneous and therapeutic) on upper limb functioning and general patient functioning after stroke. This is a prospective, observational study of patients hospitalized due to acute ischemic stroke in the territory of the middle cerebral artery (n = 98). Patients completed a comprehensive rehabilitation program and were followed-up for 24 weeks. The impact of recanalization on patient functioning was evaluated using the modified Rankin Scale (mRS) and Stroke Upper Limb Capacity Scale (SULCS). General and upper limb functioning improved markedly in the first three weeks after stroke. Age, gender, and National Institutes of Health Stroke Scale (NIHSS) score at admission were associated with general and upper limb functioning at 12 weeks. Successful recanalization was associated with better functioning. Among patients who underwent therapeutic recanalization, NIHSS scores ≥16.5 indicate lower general functioning at 12 weeks (sensibility = 72.4%; specificity = 78.6%) and NIHSS scores ≥13.5 indicate no hand functioning at 12 weeks (sensibility = 83.8%; specificity = 76.5%). Recanalization, either spontaneous or therapeutic, has a positive impact on patient functioning after acute ischemic stroke. Functional recovery occurs mostly within the first 12 weeks after stroke, with greater functional gains among patients with successful recanalization. Higher NIHSS scores at admission are associated with worse functional recovery.


2021 ◽  
Vol 10 (3) ◽  
pp. 1-17
Author(s):  
Laura D Wainwright ◽  
Gillian Haddock ◽  
Charlotte Dunster-Page ◽  
Katherine Berry

Background/Aims Inpatient wards provide an opportunity to intervene with medical, psychological and social care to contain distress and prevent future relapse. However, they have been criticised for an over-reliance on medication and risk management with limited psychosocial interventions. The aim of this study was to investigate clinical trials of psychosocial interventions for inpatients to identify interventions that are effective at improving quality of life, symptoms or patient functioning. Methods An electronic search of six databases was conducted for papers published from 1806 up until February 2017. A total of 18 randomised controlled trials was identified in which outcomes for symptoms, quality of life or functioning were reported. Results Overall, 15 trials showed a statistically significant result for at least one outcome. Seven categories were identified from the 18 studies, at least one in each category was found to be effective for symptoms, quality of life or functioning. The majority were effective (15 out of 18). Conclusions Given that the methodological quality was generally low and number of randomised controlled trials were small, it is difficult to draw definitive conclusions. Recommendations include more and repeated trials using rigorous methods of testing and reporting.


2021 ◽  
Vol 2 ◽  
Author(s):  
Denis Newman-Griffis ◽  
Jonathan Camacho Maldonado ◽  
Pei-Shu Ho ◽  
Maryanne Sacco ◽  
Rafael Jimenez Silva ◽  
...  

Background: Invaluable information on patient functioning and the complex interactions that define it is recorded in free text portions of the Electronic Health Record (EHR). Leveraging this information to improve clinical decision-making and conduct research requires natural language processing (NLP) technologies to identify and organize the information recorded in clinical documentation.Methods: We used natural language processing methods to analyze information about patient functioning recorded in two collections of clinical documents pertaining to claims for federal disability benefits from the U.S. Social Security Administration (SSA). We grounded our analysis in the International Classification of Functioning, Disability, and Health (ICF), and used the Activities and Participation domain of the ICF to classify information about functioning in three key areas: mobility, self-care, and domestic life. After annotating functional status information in our datasets through expert clinical review, we trained machine learning-based NLP models to automatically assign ICF categories to mentions of functional activity.Results: We found that rich and diverse information on patient functioning was documented in the free text records. Annotation of 289 documents for Mobility information yielded 2,455 mentions of Mobility activities and 3,176 specific actions corresponding to 13 ICF-based categories. Annotation of 329 documents for Self-Care and Domestic Life information yielded 3,990 activity mentions and 4,665 specific actions corresponding to 16 ICF-based categories. NLP systems for automated ICF coding achieved over 80% macro-averaged F-measure on both datasets, indicating strong performance across all ICF categories used.Conclusions: Natural language processing can help to navigate the tradeoff between flexible and expressive clinical documentation of functioning and standardizable data for comparability and learning. The ICF has practical limitations for classifying functional status information in clinical documentation but presents a valuable framework for organizing the information recorded in health records about patient functioning. This study advances the development of robust, ICF-based NLP technologies to analyze information on patient functioning and has significant implications for NLP-powered analysis of functional status information in disability benefits management, clinical care, and research.


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