Correlates of the Post-Stroke cognitive impairment among patients with first-ever stroke admitted at tertiary hospitals in Dodoma, Tanzania: a prospective longitudinal study

Introduction : Stroke patients develop cognitive impairment that, significantly impacting their quality of life, their families, and the community as a whole, but they are not given attention. This study aims to determine the prevalence and predictors of post-stroke cognitive impairment (PSCI) among adult stroke patients admitted to a tertiary hospital in Dodoma, Tanzania. Methodology : A prospective longitudinal study was conducted at tertiary hospitals in the Dodoma region, central Tanzania. A sample size of 158 participants with the first stroke confirmed by CT/MRI brain aged ≥ 18 years met the criteria. At baseline, social-demographic, cardiovascular risks and stroke characteristics were acquired and then at 30 days, participants were evaluated for depression and apathy.. Descriptive statistics were summarised as continuous data reported as Mean (SD) or Median (IQR), and categorical data were summarised using proportions and frequencies. Univariate and multivariable logistic regression analysis were computed to determine predictors of PSCI Results : Of 158 participants, the mean age was 58.7 years, 57.6% were female, and 80.4% of participants met the criteria for post-stroke cognitive impairment. After multivariable


Introduction
Stroke is the leading cause of death and disability, with about sixty-seven million people worldwide suffering their first stroke yearly, of which approximately 5,700,000 die and, 5000,000 are rendered incapacitated [1,2].Stroke survivors develop cognitive impairment, which significantly impacts the quality of life of the sufferer, the family, and the community as a whole.PSCI is associated with reduced quality of life, increased likelihood of depressive symptoms, high dependence [3], increased health care cost, lost wages, and social isolation [4][5][6].
Globally, PSCI prevalence ranges from 35 to 92% [7][8][9].In the few studies conducted in Sub-Saharan Africa, 40% prevalence between 3-months and 1year and 34% prevalence at two years were observed in Nigerian and Ghanaian stroke survivors, respectively, [10,11].The differences in the diagnostic tools used to assess PSCI in different studies, the timing of screening for cognitive impairment following a stroke, ethnicity, and cultural background could all explain the discrepancy in the prevalence of PSCI across settings [12].Key variables predict PSCI at different stages of stroke; these include, Previous research has linked increasing advanced age, female gender, fewer years of formal education, hypertension, diabetes, dyslipidemia, atrial fibrillation, current alcohol consumption and cigarette smoking, stroke severity on admission, type of stroke, structures involved by stroke, stroke laterality, the volume of infarct or hematoma and neuropsychiatric manifestations at baseline [13][14][15][16][17].The study aimed to assess the prevalence and predictors of PSCI in the early phase .

Study design and setting
This prospective longitudinal study design was conducted in Dodoma Referral Regional Hospital and Benjamin Mkapa Hospital, serving 20 -30 stroke patients per month.Both are the designated teaching hospitals for the University of Dodoma for medical training at both undergraduate and residency level.With its well-built and state-of-the-art infrastructure, the Benjamin Mkapa Hospital is equipped with neuroimaging services, such as CT scans and MRI, ser ving Dodoma region, which is a capital city of Tanzania

Sample size and sampling procedure
Using a formula for proportion in a prospective cohort study [18] a minimum sample size of 143 was calculated.A total of 158 samples were collected over fifteen months, from June 2021 to September 2022.Participants who were readily accessible, willing to participate, and met the inclusion criteria were recruited until the required sample size was attained.

Inclusion criteria/exclusion criteria
Patients included in the study were aged 18 years and above, who gave informed consent or proxy consent from a close relative in case the patient is incapable, presented with the first stroke within 14 days, and confirmed by CT scan or MRI brain.Those with previous history of stroke evidenced by clinical history or brain CT/MRI scans, traumatic intracerebral haemorrhage, intracerebral haemorrhage tumour, severe sensory impairment (blindness and deafness), TIA, subarachnoid haemorrhage and previous neurological disorder such as epilepsy, and patients with severe motor impairment in their dominant side were excluded. .

Outcome variable
Post-stroke cognitive impairment was defined as having a score of <23/30 on the MoCA, this score has better diagnostic accuracy than the commonly used 26/30 cut-off [19] and is useful in a less educated population.Translated and used in Swahili and. the tool examines eight major cognitive domains: visuospatial-executive (trail making B task, 3-D cube copy and clock drawing); naming (unfamiliar animals); language (sentence repetition and phonemic fluency task); short-term memory (delayed recall of words); abstraction (verbal abstraction); attention and calculation (digits forward and backwards, target detection using tapping, serial 7s subtraction) and orientation (time place and people) [20].

Independent variables
Through a questionnaire that was structured based on evidence, variables such as age, gender, level of education, history of current alcohol use, history of current cigarette smoking, diabetes mellitus (defined as a history of confirmed diabetes melltus or the use of diabetic medications) [21] were acquired.Blood pressure (BP) readings were recorded according to the 2018 AHA/ACC Hypertension guideline for standard measurement of BP [22].Hypertension was defined as BP ≥140/90 mmHg, or a patient on antihypertensive medications [23], radial pulse and heart rate was measured; a deficit of ten or more was considered indicative of atrial fibrillation [24].
A blood sample was analysed for Lipid profiles; according to the National Cholesterol Education Program (NCEP), dyslipidemia will be defined as HDL-Cholesterol <40 mg/dl and TC, LDL-Cholesterol and TG levels ≥200, ≥130 and ≥130 mg/dl, respectively [25].Hyperglycemia was defined according to American Diabetes Association [26] for non-diabetic patient's hyperglycemia was defined as random blood sugar >11.1 mmol/L, or fasting blood sugar > 7.0 mmol/L and diagnosis of diabetes was confirmed with a fasting blood sugar ≥ .7.0 mmol/L, or random blood glucose ≥ 11.1 mmo/L plus symptoms of hyperglycaemia or glycated haemoglobin≥ 6.5 % A 12-lead ECG was done on each participant under the supervision of a consultant cardiologist.Atrial Fibrillation was diagnosed by the absence of P waves and irregular-irregular RR interval [27].A 24-hour ECG Holter was done in a patient with ischemic stroke whose 12-lead ECG tracing was normal to screen for paroxysmal atrial fibrillation [28] All patients had a CT scan (SIEMENS-SOMATOM Definition Flash) or MRI brain model MAGNETUM SPECTRA A TIM +Dot System 3T, sequences 3D-T1, axial T2, 3D-FLAIR, DWI.Strokes were characterised according to type, hemisphere affected, cortical or subcortical, and the ellipsoid method measured the volume of infarct/hematoma.[29,30].All patients were evaluated for renal function status before undergoing brain imaging to reduce the risk of contrastinduced nephropathy [31] The Patient Health Questionnaire (PHQ) -9, with a total score of 27, was used to screen stroke survivors for post-stroke depression; the score was classified as (1 -4) minimal depression, (5 -9) mild depression, (10 -14) moderate depression, (15 -19) moderately severe depression, and (20 -27) severe depression.A study done in Tanzania proved that the PHQ-9 is the right tool for screening depressive symptoms in primary healthcare settings.The results favour a cut-off score of greater than or equal to 9, with a sensitivity of 78% and a specificity of 87% for depressive symptoms equivalent to a major depressive episode [32].Apathy was identified using the apathy evaluation scale, a score > 38 which has sensitivity and specificity around 80 % and 100%, respectively [33], was suggestive of apathy symptoms [34] .

Data analysis
For statistical analysis, data were entered on a Microsoft Excel sheet and then converted to IBM SPSS PC version 26.Continuous variables were reported as mean and standard deviation (SD), or Median and interquartile ranges; frequencies and percentages were used for categorical variables.Chi-square, and Mann-Whitney U test were used to determine the difference between independent variables by post-stroke cognitive outcomes; these included, Social-Demographic, cardiovascular risk factors, stroke characteristics, and neuropsychiatric manifestations, which are depression and apathy.To determine variables to use for adjustment, the predictors were evaluated by binary logistic regression and only variables that met a 20% (p-value≤0.2) statistical significance [35] were selected for multivariable Logistic regression analysis to determine independent predictors for post-stroke cognitive impairment.The adjusted odds ratio (aOR) and the 95 % confidence interval (CI) was determined.Statistical significance was determined by a two-sided p ≤ 0.05.

Ethical issues
The Vice Chancellor's office at the University of Dodoma permitted the study after obtaining ethical clearance from the Directorate of Research and Publications (reference number MA.84/261/02).The administrative departments of Benjamin Mkapa and Dodoma Regional Referral Hospitals approved data collection with reference numbers AB.150/293/01/196 and EB.21/267/01/123, respectively.Participants were informed that their participation was fully optional and that they might opt out at any moment and their standard of care was unaffected by their decision to participate.Participants' names were substituted with identification numbers to ensure privacy and confidentiality.
Stroke survivors who had depressed symptoms were referred to a psychiatrist for additional examination and treatment.Thereafter, participants were asked to provide a written or verbal informed consent under the witness of the close .relative.For those who could not provide informed consent, a custodian who had to be a close family member or guardian provided the assent on behalf.

Results
In this study, 255 stroke patients were evaluated for eligibility criteria (Fig. 1).158 participants with first-ever stroke were evaluated for the outcome of interest at 30 days of follow-up, among them, one hundred and twenty-seven (80.4%) had cognitive impairment (Fig. 2) only older age (p > 0.001), and seven or fewer years of formal education (p < 0.001) showed significant differences with post-stroke cognitive outcomes (Table 1)
Most of the participants (80.4%) met the criteria for minimal to moderate depression with the median score of 8, IQR (10 for PHQ-9 while apathy was found in (36.1%) of participants, with median EAS score 34, IQR (17).Only apathy was significantly overrepresented among participants with post-stroke cognitive impairment (p < 0.001) (Table 1)

Predictors of post-stroke cognitive impairment
On unadjusted logistic regression, increasing age, less than eight years of formal education, hypertension, history of current alcohol use, increasing infarct volume, left-sided stroke, cortical stroke, and apathy were all significantly associated with post-stroke cognitive impairment (Table 2).However, under adjusted logistic regression, only a unit cm 3 increasing infarct volume (AOR: 1.064, 95% CI:

Discussion
The main objective of this study was to determine the predictors of early cognitive impairment among patients with the first episode of stroke admitted at tertiary hospitals in Dodoma.We revealed a high prevalence of PSCI at 30 days (80.4%), which was independently associated with stroke laterality, increasing infarct volume and apathy.Moreover, we also determined the prevalence of post-stroke cognitive impairment.
Depending on the definition, stages of stroke, stroke severity at admission, population heterogeneity, and regions, the prevalence of PSCI has been reported to range from 20-70% [7][8][9].Studies screened with MoCA report a PSCI prevalence of 57-67% at an acute phase among individuals without pre-morbid cognitive impairment [36].The prevalence of PSCI increases to 66.4% and 75.2% two to eight weeks after the stroke if the history of previous stroke is not excluded [7,9,37].However, lower prevalence has been observed when comprehensive neuropsychological batter is used; for example, studies in Ghana and Nigeria showed 34% and 39% prevalence of PSCI, respectively [10,11].While the PSCI prevalence varies globally, our study supports previous observations of high incidence and prevalence of PSCI in the early phase following an episode of stroke [38].Although the study population's mean age of 58.7 may anticipate a relatively lower prevalence compared to previous studies with an older population of 60 years and above, not excluding participants with prior history of cognitive impairment may raise the PSCI prevalence [7,9], furthermore the majority of the participants had lower lever of formal educations and significant proportion residing from rural settings, these two factors may predict poor performance of neurocognitive assessment [10] Similar to previous studies that used the same assessment tool, left hemisphere stroke was a significant predictor of PSCI at one month [39] and even six months [40].The potential of left hemisphere stroke to influence cognitive performance acutely reflects that language is a left hemispheric cognitive domain for more .than 90% of the population worldwide [41].Language is a key domain in the MoCA assessment [42] and the screening tool has a relatively lower sensitivity (72%) for identifying right-hemispheric cognitive deficits compared to 94% sensitivity for left-hemispheric cognitive deficits [43].
Our study reveals that a unit (cm 3 ) increase in infarct size was a significant predictor of PSCI.The relationship between infarct volume and PSCI was first reported by Tomlison et al, [44]who found that infarct volume closer to 100 cm 3 increased the risk of PSCI significantly while Kumral et al [45] also showed that infarct volume greater than 90 cm 3 is an independent predictor of PSCI.
Although methodological diversity in measuring and calculating infarct volume could explain from differences in findings across settings [46], our findings are generally consistent with observations that increased of an infarct volume of even greater than 17cm 3 may be an independent predictor of PSCI.
In this index study, 36.1% of the subjects in our study met a criteria for apathy, while lower prevalence (28%) has been reported among patients with chronic stroke [47], a similar rate of 36% is reported in a metanalysis where symptoms of apathy are independent predictor of PSCI [14,48] .The higher prevalence of apathy in our study can be attributed to the higher sensitivity of the AES > 38 cut-off [48]and the earlier time of apathy assessment [49].The same underlying brain injury may produce apathy and cognitive impairment; in particular, the frontal lobes and associated subcortical structures that are thought to be involved in apathy are also linked to various cognitive functions [50]; additionally, loss of cognitive capacities is likely to limit a person's ability to organise goal-directed behaviour.According to this viewpoint, apathy is an inherent symptom (or indication) of cognitive impairment rather than a unique neuropsychiatric illness.
Early stratification of risk for cognitive impairment after stroke is strongly supported by the link between early cognitive dysfunction after stroke and overall functional status, as well as the level of morbidity linked to cognitive impairment after stroke in the follow-up phase [51][52][53] Even though there is not much evidence yet, pharmacological treatments, memory-improving techniques, and kinematic analysis are all possible ways to help people with cognitive impairment.This is because it is challenging for people with cognitive impairment to adhere to prescriptions and a healthy lifestyle, thus affecting their overall health [54].It is therefore, essential to identify patients who would benefit from early cognitive assessment, intervention, and counselling on the odds of improvement.

Limitation of the study
This was a longitudinal cohort study; there was no comparable non-stroke group

Conclusion
Early cognitive impairment is common in stroke survivors with unknown premorbid cognitive performance; however, stroke laterality, increasing infarct volume, and apathy are strong predictors of poor cognitive performance and may allow us to better identify and target at-risk individuals for aggressive rehabilitation in the acute setting.Well-designed studies are needed in sub-

Figure 1 :
Figure 1: Algorithm for enrolment of study participants and 30 days post-stroke cognitive outcome

Fig 2 .
Fig 2. Pie chart demonstrating the prevalence of PSCI at one month, N(158) to compare cognitive outcomes to make robust inferences.Cognitive functioning was assessed only once during the stroke recovery period, and prestroke cognitive performance was unknown.Thus, a survey such as an Informant Questionnaire for Cognitive Decline in the Elderly (IQCODE) [55] be included in research designs to collect an indicator of pre-stroke cognitive function.The use of MoCA instead of the gold standard comprehensive neuropsychological battery limited the diagnosis of participants with PSCI for whom MoCA may limited to classify accurately [58], nonetheless, MoCA has demonstrated a good screening capacity where assessment with gold standard tool is practically not possible.