Aphasia severity and factors predicting language recovery in the chronic stage of stroke

被引:0
|
作者
Anthony, Sneha Rozelena [1 ]
Babu, Praveena [2 ]
Paplikar, Avanthi [3 ]
机构
[1] Dr SR Chandrasekhar Inst Speech & Hearing, Dept Speech & Language Studies, Bangalore, India
[2] Dr SR Chandrasekhar Inst Speech & Hearing, Bangalore Speech & Hearing Res Fdn, Bangalore, India
[3] SpeakUp Ctr Speech Therapy & Neuro Rehabil HSR Lay, Bangalore, India
关键词
aphasia severity; chronic stroke; language recovery; prognostic factors; stroke aphasia; DIRECT-CURRENT STIMULATION; SOCIOECONOMIC-STATUS; POSTSTROKE APHASIA; THERAPY; MECHANISMS; PROGNOSIS; SPEECH;
D O I
10.1111/1460-6984.70030
中图分类号
R36 [病理学]; R76 [耳鼻咽喉科学];
学科分类号
100104 ; 100213 ;
摘要
Background: It is assumed that language impairments post-stroke do not show much improvement after the phase of spontaneous recovery, especially in the chronic stage. Several studies have reported language recovery and factors influencing it in the acute stages of stroke. There is limited literature focusing on language recovery in the chronic stages of stroke, especially in the Indian population, and the demographic, lesion- and aphasia-related factors that contribute towards language recovery in the chronic stages are poorly understood. Aims: To assess changes in aphasia severity at two time points in the chronic stage and to identify the factors (demographic, lesion- and aphasia-related) predicting language recovery in chronic stroke aphasia. Methods & Procedures: In this cross-sectional study, 22 individuals with chronic stroke aphasia underwent the baseline language assessment (T1) using Western Aphasia Battery (WAB) at least 2 or more months post-onset. A follow-up language assessment (T2) for the same individuals was conducted 3-12 months post-baseline assessment. The mean age of the participant group was 48.18 years (SD = 13.05) with a corresponding mean year of education of 9.18 (SD = 5.81). 81.8% of the participants (N = 18) were male and majority of them belonged to the lower middle socio-economic status (N = 9, 40%). Outcomes & Results: There was a significant change in mean language subdomain and aphasia quotient scores of WAB between two time points (p = 0.000). The majority showed a significant improvement in their AQ scores (WAB-SEM 2.5) in the absence of speech therapy. Socio-economic status (p = 0.005) and aphasia severity (AQ1) at baseline (p = 0.000) were significant in predicting language recovery. Conclusions & Implications: Significant language recovery occurs in the chronic stage of stroke, which is predicted by socio-economic status and aphasia severity at baseline assessment. This study will provide clinicians with an insight into language recovery in chronic stroke aphasia and help serve as a guide for evidence-based prognostic statements. These findings encourage patients with aphasia to seek speech and language therapy in the chronic stage of stroke.
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页数:10
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