Factors associated with favorable outcomes in acute severe stroke patients: A real‑world, national database study
- Authors:
- Published online on: July 22, 2022 https://doi.org/10.3892/br.2022.1557
- Article Number: 74
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Copyright: © Kasemsap et al. This is an open access article distributed under the terms of Creative Commons Attribution License.
Abstract
Introduction
Acute severe ischemic stroke, defined as a baseline National Institutes of Health Stroke Scale (NIHSS) score >15(1), accounts for ~12.7% of stroke cases (2). Patients with this condition suffer from high rates of morbidity, severe complications, and mortality (2). A previous study found that the NIHSS scores of severe stroke patients at 7 days after treatment were significantly higher than those with non-severe stroke (22 vs. 2; P<0.01). The rate of favorable outcomes in these patients has been reported to be only 28%, and they have a mortality rate of 80% (2,3).
A meta-analysis found that alteplase therapy significantly improved outcomes in patients with acute severe ischemic stroke with NIHSS scores of 16-21 with an odds ratio of 1.50 [95% confidence interval (CI), 1.03-2.17] (4). However, the meta-analysis included only randomized clinical trials, suggesting that it may not reflect real-world results. Additionally, alteplase may increase intracerebral hemorrhage by up to 6.4%. (5) Thus, it is important to determine the predictors of good outcomes of alteplase or thrombolytic therapy.
In Thailand, the rate of thrombolytic therapy in acute ischemic stroke patients since the practice was implemented in 2008 has increased from 0.38 to 4.78% in 2016(10). Due to the lack of availability of neurologists and the country's stroke fast-track program, thrombolytic therapy may have limited use in Thailand (6). A previous study conducted at a university hospital found that severe stroke treated with thrombolytic therapy was associated with a poorer outcome at 3 months compared with non-severe stroke patients (7). However, there are limited data available on outcomes and predictors of patients with severe stroke in Thailand. This study, therefore, aimed to evaluate stroke outcomes in acute severe ischemic stroke in a real-world setting. Additionally, predictors of good stroke outcomes were explored.
Patients and methods
Study design
This was a retrospective cohort study. Data were extracted from medical admission records submitted to the National Health Security Office (NHSO). The NHSO oversees the reimbursement of medical costs for Thailand's universal health coverage scheme, which covers ~75% of the Thai population. Data used in this study was obtained from between October 2015 and September 2018. The inclusion criteria were: >18 years or older, diagnosed with acute severe ischemic stroke (defined by an admission NIHSS score of 15-24), and available stroke outcome data. Patients with incomplete data were excluded.
Studied variables and outcomes
The admission record of each patient was reviewed to evaluate their eligibility. Data were retrospectively retrieved from the medical records including baseline characteristics, co-morbidities, NIHSS score, modified Rankin score (mRS), Barthel index, complications, cost of treatment, and length of stay at the time of stroke diagnosis (8,9). Outcomes were evaluated at discharge using the mRS. An mRS score of 0-2 was defined as a good outcome and 3-6 as a poor outcome.
Statistical analysis
The patients were divided into two groups based on outcomes (good and poor). Clinical data at baseline were compared between the two groups using descriptive statistics. Factors associated with good outcomes were determined using univariate and multivariate logistic regression analysis. Univariate logistic regression analysis was used to determine the P-value of each factor to predict good outcomes. Factors with a P-value <0.20 by univariate logistic regression analysis were entered into the multivariate logistic regression analysis. The final multivariate logistic regression analysis model was calculated using a stepwise method. Factors retained in the final model of multivariate logistic regression analysis were those with a P-value <0.20. The best model was defined based on the lowest Akaike information criterion (AIC). Factors in the final model for good outcomes in severe stroke were tested for interaction with other factors using multivariate logistic regression analysis. A P-value <0.10 of interaction was considered statistically significant. The predictive model was also applied to patients who underwent thrombolysis treatment. All statistical analyses were performed using R software version 3.6.1. (R Foundation for Statistical Computing, Vienna, Austria) (10).
Results
Baseline characteristics
During the study period, there were 268 severe stroke patients who met the study criteria. Of those, 38 (14.18%) had good outcomes at discharge. There were four factors that differed significantly between the good and poor outcome groups (Table I). The good outcome group had a higher proportion of male patients (65.8 vs. 45.2%) and patients who underwent thrombolysis treatment (100 vs. 80.4%) but a lower proportion who underwent atrial fibrillation (18.4 vs. 39.1%) and shorter admission duration (4 vs. 6 days). Additionally, scores on the three stroke outcome indexes (mRS, Barthel index, and NIHSS) were significantly better at discharge in the good outcome group. The total cost of admission did not differ significantly between the groups (~1,760 vs. ~1,730 USD).
Table IBaseline characteristics of patients with severe stroke (NIHSS 15-24) by stroke outcome (mRS 0-2) at discharge. |
Outcomes
There were 223 patients who received rtPA (83.21%). Of those, 38 (17.04%) had good outcomes (Table II). A predictive model for good outcomes revealed two independent factors: Male sex and atrial fibrillation, with adjusted odds ratios (95% CI) of 2.30 (1.10-4.82) and 0.38 (0.16-0.91), respectively (Table III). Neither stroke nor atrial fibrillation was found to have significant interactions in the final model (Table IV). In patients who received rtPA treatment (n=223), only atrial fibrillation was negatively and independently associated with good outcomes; the adjusted odds ratio (95% CI) was 0.36 (0.15-0.88), as shown in Table V.
Table IIrtPA treatment of patients with severe stroke (NIHSS 15-24) by stroke outcome (mRS 0-2) at discharge. |
Table IIIFactors related with good outcomes in patients with severe stroke (NIHSS 15-24) (n=268) using univariate and multivariate logistic regression analysis. |
Table IVInteractions tested for factors in the final model for good outcomes in patients with severe stroke (NIHSS 15-24) using multivariate logistic regression analysis. |
Table VFactors related to good outcomes in patients with severe stroke (NIHSS 15-24) who received rtPA treatment (n=223) using univariate and multivariate logistic regression analysis. |
Discussion
The percentage of patients with good stroke outcomes in this study was somewhat lower than in previous reports (17.04% vs. 28-47%) (2,7,11). There are several possible explanations for this. The first is that few of the patients were able to undergo advanced treatment modalities such as endovascular treatment. In addition, thrombolytic therapy may not have been available in all health care facilities (6). Finally, the median onset-to-needle time in our study was higher than in a previous study of patients undergoing thrombolytic therapy (150-155 vs. 140 min) (12).
However, rtPA treatment perfectly predicted good outcomes in acute severe ischemic stroke according to multivariate logistic regression analysis. The patients who did not receive rtPA treatment did not have favorable outcomes. This implies that acute severe ischemic stroke patients have a 17.04% chance of improvement with rtPA treatment, but none if thrombolysis is not administered. Note that patients in the good outcome group had shorter hospital stays but comparable hospital costs, likely due to the rtPA treatment (13).
Previous studies have found atrial fibrillation to be a predictor of severe stroke (2,14). Here, it was found that atrial fibrillation was negatively associated with good outcomes in severe stroke. However, it was a poor predictor of outcomes in cases of severe stroke, both overall and in patients receiving rtPA treatment (Tables III and IV). These findings may be due to the larger infarct size from atrial fibrillation. Stroke patients who undergo atrial fibrillation have significantly larger infarct sizes compared with those who do not (48.1 vs. 36.4 mm; P<0.001), leading to a higher risk of hemorrhagic transformation and a 1.7x higher mortality rate (15). Additionally, patients with atrial fibrillation have a higher risk of thrombogenicity associated with larger thrombus formation (16), diminished cerebral autoregulation resulting in cerebral dysfunction after stroke (17), poor collateral circulation due to chronic hypoperfusion from cervical atherosclerosis (18,19), and no recanalization after thrombolytic therapy, as old and large thrombi in the left atrium are more resistant to thrombolysis (20). However, the Danish Stroke Registry found atrial fibrillation was associated with a higher rate of mortality, which is primarily driven by worse stroke severity and not atrial fibrillation itself (21). On the other hand, the present study found atrial fibrillation was still associated with higher odds of worse outcomes after adjustment for severity of stroke.
Previous reports have also shown that women tend to have more severe strokes than men (44 vs. 36%), which may account for the better stroke outcomes in men in this study (Table III) (22,23). Sex was an independent predictor for stroke outcome overall, but narrowly failed to reach statistical significance in those treated with rtPA (P=0.054). Note that there was no association between sex and outcome in patients who underwent atrial fibrillation (24).
Predictors for good stroke outcomes in this study differed slightly from those found in a previous study conducted in Switzerland, despite comparable population sizes (223 and 243, respectively) (2). The predictors for good stroke outcomes in the previous study were age, physical signs, lab test results, and endovascular treatment. Here, atrial fibrillation and sex were predictors of a good outcome, neither of which were included in the Swiss study. In this study, age was included in the initial model but not in the final model. In addition, treatment with rtPA was an independent predictor for good stroke outcome, while there was no endovascular treatment in this study. Finally, there were differences in the ethnicity of the study populations, which may account for some of the differences observed.
There were some limitations in this study. First, a predictive model for those who did not receive rtPA treatment was not created, as no patient in this group had good outcomes. Second, only those patients whose stroke severity scores were available were included, which limited the available sample size. However, there were still independent predictors for good outcomes. Third, the outcomes were evaluated only at discharge and not over a longer term. Fourth, some factors possibly related to both stroke and atrial fibrillation were not examined such as laboratory tests and obstructive sleep apnea (25-33). Finally, authorization to access the database was only for the mentioned study period (2015-2017). Thus, data may not be up-to-date. Further studies are required to validate the results of this study.
In conclusion, predictors for good stroke outcomes in severe stroke patients included rtPA treatment, atrial fibrillation, and male sex.
Acknowledgements
We would like to thank Dr Dylan Southard (Khon Kaen University, Thailand) for his kind review of the final manuscript.
Funding
Funding: No funding was received.
Availability of data and materials
The datasets used and/or analyzed during the present study are available from the corresponding author on reasonable request.
Authors' contributions
NK designed the study, analyzed and interpretated the data, and wrote the manuscript. NV, KK, ST, and WB interpretated the data. KS participated in data analysis and interpretation and prepared the manuscript. All authors read and approved the final manuscript. NK and NV confirm the authenticity of all the raw data.
Ethics approval and consent to participate
The study protocol was approved by the Khon Kaen University Ethics Committee for Human Research (approval no. HE611014).
Patient consent for publication
Not applicable.
Competing interests
The authors declare that they have no competing interests.
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