BACKGROUND: Atrial Fibrillation (AF) is a common cardiac arrhythmia and has been identified as a major risk factor for acute ischemic stroke (AIS). Gender differences in the disease process, causative mechanisms and outcomes of AF have been investigated. In the current study, we determined whether there is a gender-based disparity in AIS patients with baseline AF, and whether such a discrepancy is associated with specific risk factors and comorbidities. METHODS: Baseline factors including comorbidities, risk and demographic factors associated with a gender difference were examined using retrospective data collected from a registry from January 2010 to June 2016 in a regional stroke center. Univariate analysis was used to differentiate between genders in terms of clinical risk factors and demographics. Variables in the univariate analysis were further analyzed using logistic regression. The adjusted odds ratios (ORs) and 95% confidence intervals (CIs) for each factor were used to predict the increasing odds of an association of a specific comorbidity and risk factor with the male or female AIS with AF. RESULTS: In the population of AIS patients with AF, a history of drug and alcohol use (OR = 0.250, 95% CI, 0.497-1.006, P = 0.016), sleep apnea (OR = 0.321, 95% CI, 0.133-0.777, P = 0.012), and higher serum creatinine (OR = 0.693, 95% CI, 0.542-0.886 P = 0.003) levels were found to be significantly associated with the male gender. Higher levels of HDL-cholesterol (OR = 1.035, 95% CI, 1.020-1.050, P < 0.001), LDL-cholesterol (OR = 1.006, 95% CI, 1.001-1.011, P = 0.012), and the inability to ambulate on admission to hospital (OR = 2.258, 95% CI, 1.368-3.727, P = 0.001) were associated with females. CONCLUSION: Our findings reveal that in the AIS patients with atrial fibrillation, migraines, HDL, LDL and poor ambulation were associated with females, while drugs and alcohol, sleep apnea, and serum creatinine level were associated with male AIS patients with AF. Further studies are necessary to determine whether gender differences in risk factor profiles and commodities require consideration in clinical practice when it comes to AF as a risk factor management in AIS patients.
BACKGROUND:Atrial Fibrillation (AF) is a common cardiac arrhythmia and has been identified as a major risk factor for acute ischemic stroke (AIS). Gender differences in the disease process, causative mechanisms and outcomes of AF have been investigated. In the current study, we determined whether there is a gender-based disparity in AISpatients with baseline AF, and whether such a discrepancy is associated with specific risk factors and comorbidities. METHODS: Baseline factors including comorbidities, risk and demographic factors associated with a gender difference were examined using retrospective data collected from a registry from January 2010 to June 2016 in a regional stroke center. Univariate analysis was used to differentiate between genders in terms of clinical risk factors and demographics. Variables in the univariate analysis were further analyzed using logistic regression. The adjusted odds ratios (ORs) and 95% confidence intervals (CIs) for each factor were used to predict the increasing odds of an association of a specific comorbidity and risk factor with the male or female AIS with AF. RESULTS: In the population of AISpatients with AF, a history of drug and alcohol use (OR = 0.250, 95% CI, 0.497-1.006, P = 0.016), sleep apnea (OR = 0.321, 95% CI, 0.133-0.777, P = 0.012), and higher serum creatinine (OR = 0.693, 95% CI, 0.542-0.886 P = 0.003) levels were found to be significantly associated with the male gender. Higher levels of HDL-cholesterol (OR = 1.035, 95% CI, 1.020-1.050, P < 0.001), LDL-cholesterol (OR = 1.006, 95% CI, 1.001-1.011, P = 0.012), and the inability to ambulate on admission to hospital (OR = 2.258, 95% CI, 1.368-3.727, P = 0.001) were associated with females. CONCLUSION: Our findings reveal that in the AISpatients with atrial fibrillation, migraines, HDL, LDL and poor ambulation were associated with females, while drugs and alcohol, sleep apnea, and serum creatinine level were associated with male AISpatients with AF. Further studies are necessary to determine whether gender differences in risk factor profiles and commodities require consideration in clinical practice when it comes to AF as a risk factor management in AISpatients.
Atrial Fibrillation (AF) is a significant public health concern due to its growing prevalence and association with increased risk of cardiovascular events and death [1]. It is a common arrhythmia characterized by rapid, uncoordinated contraction of the atria, often resulting in thrombus formation and subsequent ischemia [2]. AF is a well-known independent risk factor in the development of acute ischemic stroke (AIS), as it is associated with a fivefold increase in the risk of stroke [3], and estimated to cause approximately one-fifth of all ischemic strokes, particularly of stronger severity and worse stroke-related outcomes [4]. Ischemic strokes in AF populations are associated with higher mortality, increased stroke recurrence, and greater functional deficits when compared to non-AF populations [5].Although AF is less prevalent in females than in males, females with AF have an overall greater risk of stroke than males with AF [6, 7]. Studies also indicate that females with AF suffer from more severe strokes [8-10]. A recent study [8] found that within the AF population, male strokepatients presented with an average NIHSS score of 6 while female stroke patients had an average score of 9, indicating greater stroke severity and poorer functional outcomes among female stroke survivors. This finding is consistent with other studies that suggest that females with AF are more likely to suffer from debilitating or fatal strokes compared to males [3, 11, 12]. AF itself is a risk factor for stroke, we know that males have a higher incidence of AF at all age groups, while AF is less prevalent in females. However, females with AF have an overall greater risk of stroke than males with AF, suggesting that comorbidities and risk factors may be more pronounced in females. However, the risk factors and comorbidities associated with the observed gender difference in AIS with baseline AF are not clear. Since female AFpatients are at higher risk of stroke severity and poor functional outcomes [13], it is possible that within the population of AISpatients with baseline AF, risk factors and comorbidities are not present in the same proportions. More risk factors and comorbidities maybe present among AF females presenting with stroke than among males. The first objective of this study is to identify the different risk factors and comorbidities in AIS population with AF and determine whether these risk factors and comorbidities are different between male and female AIS populations with a baseline AF. Since males and females do not present the same risk factors and comorbidities in the general AIS population, our second objective is to determine the association of males and females with the different comorbidities and risk factors using a retrospective data of AISpatients admitted between 2010 and 2016 to a primary stroke center. In this study, we analyzed risk factors, comorbidities and demographic variables to determine gender disparities in a stroke population with a baseline AF in a stroke center with an active patient protocol for the treatment of AIS population. Knowledge of these factors in males and females with AIS and baseline AF may necessitate different approaches to secondary prevention of stroke in patients with AF.
Methods
Study population
This is a population based cross sectional study for the retrospective analysis of patients’ data collected from PRISMA Health ischemic stroke population. This study was approved by the PRISMA Health Ethics Committee. PRISMA Health is a primary stroke center serving patients from an 8-county region located in upper South Carolina. Data for all patients treated between January 2010 and December 2016 in the Stroke Unit of PRISMA Health were used in this study. Stroke was defined according to the World Health Organization (WHO) criteria, as “a rapidly developing clinical symptoms of focal or global disturbance of cerebral function, lasting more than 24 h, with no apparent cause other than that of vascular origin” [14]. In this retrospective data analysis, data for ischemic stroke was based on neurologist assessment according to neuroimaging (including brain computed tomography scan and magnetic resonance imaging). Data for subtypes of stroke including subarachnoid and hemorrhagic stroke were excluded.For each AISpatient, demographic information, risk factors, comorbidities or past medical history, and standard laboratory values were collected and analyzed. The registry has been described in previous retrospective studies [15-17]. For demographic data, information on age, race, gender, and ethnicity were retrieved in addition to their past medical and medication histories. This past medical history included data on atrial fibrillation, coronary artery disease (CAD), carotid stenosis, chronic renal disease (CRD), congestive heart failure (CHF), depression, diabetes mellitus, dyslipidemia, family history of stroke, hormone replacement therapy, hypertension, migraine, obesity, previous stroke or TIA, prosthetic heart valve, peripheral vascular disease (PVD), sleep apnea, substance use, and tobacco use. Additionally, data on site of admission (emergency department or direct admit) as well as ambulation were collected. Data on ambulation was recorded as either not documented (0), unable to ambulate (1), able to ambulate with assistance (2), and able to ambulate independently (3) at admission, during admission, and after discharge. Improvement was based on an increase in ambulation classification from admission to discharge.
Data analysis
We conducted descriptive analyses to determine the distribution of the demographic data and risk factors in the AIS population using SPSS 24.0 (SPSS Inc. New York, New York, USA). All data have been previously normalized using the Shapiro–Wilk and Levene test to assess the data for homogeneity. Categorical variables were presented as proportions or expressed as frequencies (percentage) and quantitative variables as mean ± standard deviation. Variables were compared between male and female patients using Pearson x2 tests to identify demographic, comorbidities, risk factors, and laboratory values associated with males or females. For ordinal and dichotomous variables (such as ambulatory status or gender), a Pearson x2 test was used while a Student’s t-test was performed for all interval variables (such as age or BMI). A second univariate analysis was performed to differentiate between patients with and without a history of atrial fibrillation. Thereafter, three binary logistic multivariate analyses were performed; the first identified factors associated with gender in the whole AISpatients with and without AF. The dependent variable includes male or female patients. The second analysis focused on factors associated with males or females in the AIS population without AF, while the final analysis identified factors associated with males or females in the AIS population with baseline AF. These analyses were post-hoc adjusted logistic regression with a backward selection method. We used the backward approach because it has the advantage of considering the effects of all parameters simultaneously in fitting our regression models. This allows us to address the potential problem of multicollinearity by reducing the number of predictors and resolving the problem of overfitting. In the logistic regression, the association between the independent variables (the demographic information, comorbidities, risk factors, and laboratory values) and male or female (dependent variables) was determined for the atrial fibrillation and no atrial fibrillation group. The primary outcome is the adjusted odds ratios (ORs) and 95% confidence intervals (CIs) for each factor associated with each gender group, fully adjusting for all confounding factors identified in our univariate analyses. The resulting ORs were used to predict the increasing odds of an association of a specific factor with the male or female AIS with or without AF. A probability value of < 0.05 was considered statistically significant in the analyses. The Hosmer-Lemeshow test was used to validate our model, and the overall correct classification percentage including the area under the Receiver Operating Curve (ROC) for score prediction was determined to test the sensitivity, specificity and accuracy of our logistic model.
Results
A total of 5469 AISpatients were identified. Of this, 2662 were males and 2807 were females. Table 1 presents the demographic and clinical characteristics of ischemic strokepatients stratified by male or female. As shown in Table 1, female patients were older (69.26 ± 15.657 vs 65.13 ± 13.372) and presented with a significantly higher BMI (28.61 ± 7.795 vs 28.04 ± 5.983) than the male patients. For past medical history, female patients presented with significantly higher rates of atrial fibrillation (19.3% vs 14.3%), depression (16.0% vs 10.2), heart failure (12.3% vs 9.2%), hypertension (80.2% vs 77.2%), and migraines (3.7% vs 1.1%). On the other hand, male patients were more likely to present with a history of coronary artery disease (35.1% vs 25.9%), carotid artery stenosis (7.2 to 5.1%), sleep apnea (3.8% vs 2.5%), substance use (9.6% vs 2.9%), and tobacco use (33.2% vs 21.5%). Regarding medication history, females were more likely to be on antihypertensives and antidepressants (72.4% vs 66.2%; 16.4% vs 9.4%) while males were more likely to be on cholesterol reducers (46.1% vs 42.8%). Initial laboratory values also differed between male and female patients. Male patients presented with significantly higher levels of serum creatinine (1.40 ± 1.22 vs 1.18 ± 1.09) whereas female patients had higher total cholesterol (177.54 ± 50.89 mg/dL vs. 165.96 ± 52.10 mg/dL), HDL-cholesterol (45.03 ± 14.23 mg/dL vs. 38.43 ± 12.57 mg/dL), and LDL-cholesterol (107.31 ± 42.58 mg/dL vs. 101.83 ± 39.72 mg/dL). Female patients also presented with a higher heart rate (83.50 ± 18.57 vs 80.43 ± 15.35) and a lower diastolic blood pressure (80.39 ± 19.59 vs 84.60 ± 18.37). Finally, a significant gender difference was observed in ambulation and stroke severity with female patients presenting with a less improved ambulation (34.3 to 37.5%) and higher NIHSS scores (42.1% vs 35.0%) when compared to males.
Table 1
Demographic and clinical characteristics of acute ischemic stroke patients compared by gender. Results for continuous variables are presented as Mean ± SD, while discrete data are presented as percentage and frequency. Student T-test and Pearson’s Chi-Square were used
Characteristic
Male
Female
Number of patients
2662
2807
P-value
Age Group: No. (%)
< 50
305 (11.5)
353 (12.6)
< 0.001*a
50–59
603 (22.7)
393 (14.0)
60–69
740 (27.8)
559 (19.9)
70–79
592 (22.2)
639 (22.8)
> =80
422 (15.9)
30.7)
Mean ± SD
65.13 ± 13.372
69.26 ± 15.657
< 0.001*b
Race: No (%)
White
2090 (78.5)
2198 (78.3)
0.544
Black
492 (18.5)
510 (18.2)
Other
80 (3.0)
99 (3.5)
Hispanic Ethnicity: No. (%)
38 (1.4)
47 (1.7)
0.461
BMI: Mean ± SD
28.04 ± 5.983
28.61 ± 7.795
0.002*b
Medical History: No. (%)
Atrial Fib
381 (14.3)
543 (19.3)
< 0.001*a
Coronary Artery Disease
935 (35.1)
726 (25.9)
< 0.001*a
Carotid Artery Stenosis
191 (7.2)
143 (5.1)
0.001*a
Depression
271 (10.2)
450 (16.0)
< 0.001*a
Diabetes
951 (35.7)
984 (35.1)
0.605
Drugs or Alcohol
256 (9.6)
81 (2.9)
< 0.001*a
Dyslipidemia
1364 (51.2)
1391 (49.6)
0.213
Stroke Family History
224 (8.4)
270 (9.6)
0.121
Heart Failure
245 (9.2)
345 (12.3)
< 0.001*a
Hypertension
2056 (77.2)
2250 (80.2)
0.008*a
Migraine
29 (1.1)
105 (3.7)
< 0.001*a
Obesity
1148 (43.1)
1163 (41.4)
0.205
Previous Stroke
671 (25.2)
753 (26.8)
0.173
Previous TIA (> 24 h)
213 (8.0)
264 (9.4)
0.066
Prosthetic Heart Valve
35 (1.3)
27 (1.0)
0.218
Peripheral Vascular Disease
192 (7.2)
208 (7.4)
0.779
Chronic Renal Disease
232 (8.7)
215 (7.7)
0.154
Sleep Apnea
101 (3.8)
69 (2.5)
0.004*a
Smoker
883 (33.2)
603 (21.5)
< 0.001*a
Medication History: No (%)
HTN medication
1763 (66.2)
2031 (72.4)
< 0.001*a
Cholesterol Reducer
1227 (46.1)
1201 (42.8)
0.014*a
Diabetic Medication
735 (27.6)
760 (27.1)
0.657
Antidepressant
251 (9.4)
460 (16.4)
< 0.001*a
Initial NIHSS Score: No (%)
0–9
1677 (74.0)
1612 (69.5)
0.005*a
10–14
235 (10.4)
272 (11.7)
15–20
218 (9.6)
283 (12.2)
21–25
137 (6.0)
153 (6.6)
Mean ± SD
7.63 ± 7.84
8.90 ± 8.56
< 0.001*b
Lab values: Mean ± SD
Total cholesterol
165.96 ± 52.10
177.54 ± 50.89
< 0.001*b
Triglycerides
142.60 ± 110.95
136.78 ± 99.16
0.057
HDL
38.43 ± 12.57
45.03 ± 14.23
< 0.001*b
LDL
101.83 ± 39.72
107.31 ± 42.58
< 0.001*b
Lipids
6.51 ± 1.82
6.54 ± 3.11
0.709
Blood Glucose
146.75 ± 78.26
147.82 ± 83.62
0.626
Serum Creatinine
1.40 ± 1.22
1.18 ± 1.09
< 0.001*b
INR
1.15 ± 0.51
1.18 ± 1.09
0.069
Vital Signs: Mean ± SD
Heart Rate
80.43 ± 15.35
83.50 ± 18.57
< 0.001*b
Blood Pressure Systolic
152.09 ± 28.86
151.57 ± 29.74
0.508
Blood Pressure Diastolic
84.60 ± 18.37
80.39 ± 19.59
< 0.001*b
Ambulation Status Prior to Event: No. (%)
Ambulate Independently
2453 (92.1)
2434 (86.7)
< 0.001*a
Ambulate with Assistance
74 (2.8)
129 (4.6)
Unable to Ambulate
79 (3.0)
134 (4.8)
Not Documented
56 (2.1)
109 (3.9)
Ambulation Status on Admission: No. (%)
Ambulate Independently
727 (27.3)
604 (21.5)
< 0.001*a
Ambulate with Assistance
790 (29.7)
836 (29.8)
Unable to Ambulate
744 (27.9)
984 (35.1)
Not Documented
401 (15.1)
383 (13.6)
Ambulation Status on Discharge: No. (%)
Ambulate Independently
1184 (44.5)
990 (35.3)
< 0.001*a
Ambulate with Assistance
846 (31.8)
974 (34.7)
Unable to Ambulate
429 (16.1)
640 (22.8)
Not Documented
203 (7.6)
203 (7.2)
rtPA received: No. (%)
668 (25.1)
659 (23.5)
0.163
First Care Received: No. (%)
Emergency Department
2085 (79.1)
2212 (79.4)
0.806
Direct Admission
550 (20.9)
574 (20.6)
Improved Ambulation: No. (%)
927 (37.5)
898 (34.4)
0.019*a
NIHSS > 7: No. (%)
824 (35.0)
1043 (42.1)
< 0.001*a
Diastolic Blood Pressure ≥ 80 mmHg
1576 (59.3)
1312 (46.8)
< 0.001*a
Notes:
aPearson’s Chi-Squared test
bStudent’s T test
* P-value < 0.05
Demographic and clinical characteristics of acute ischemic strokepatients compared by gender. Results for continuous variables are presented as Mean ± SD, while discrete data are presented as percentage and frequency. Student T-test and Pearson’s Chi-Square were usedNotes:aPearson’s Chi-Squared testbStudent’s T test* P-value < 0.05Table 2 presents demographic and clinical characteristics of male and AISpatients stratified by the presence or absence of AF. In the AIS with no AF group, females presented with a higher age and BMI (66.66 ± 15.581 vs 63.65 ± 13.156; 29.084 ± 28.1229 ± 6.041); higher rates of depression (16.6% vs 9.9%), hormone replacement therapy (2.8% vs 0.0%), migraines (4.2% vs 1.2%), previous TIAs (9.5% vs 7.7%); and higher laboratory values such as total cholesterol (181.17 ± 51.94 vs 168.81 ± 46.97), HDL (44.94 ± 14.44 vs 38.45 ± 12.60), and LDL (110.03 ± 43.69 vs 104.33 ± 40.11).In addition, females presented with a higher rate for the use of antihypertensive and antidepressants (68.3% vs 62.6%; 16.6% vs 9.2%), and with a higher mean heart rate (83.21 ± 18.03 vs 80.20 ± 18.10). Male patients without atrial fibrillation presented with a higher rate of coronary artery disease (32.1% vs 23.0%), substance (10.4% vs 3.3%), and tobacco use (36.6% vs 25%), higher serum creatine level (1.39 ± 1.21 vs 1.18 ± 1.17), INR (1.09 ± 0.29 vs 1.07 ± 0.28), diastolic blood pressure (85.23 ± 18.26 vs 80.26 ± 19.36) and ambulation improvement.
Table 2
Demographic and clinical characteristics of compared between atrial fibrillation status in ischemic stroke patients stratified by gender. Results for continuous variables are presented as Mean ± SD, while discrete data are presented as percentage frequency. Student T-test and Pearson’s Chi-Square were used
No Atrial Fibrillation
With Atrial Fibrillation
Characteristic
Male
Female
Male
Female
Number of patients
2281
2264
P-value
381
543
P-Value
Age Group: No. (%)
< 50 years
295 (12.9)
348 (15.4)
< 0.001* a
10 (2.6)
5 (0.9)
< 0.001* a
50–59
568 (24.9)
374 (16.5)
35 (9.2)
19 (3.5)
60–69
666 (29.2)
499 (22.0)
74 (19.4)
60 (11.0)
70–79
468 (20.5)
510 (22.5)
124 (32.5)
129 (23.8)
> =80
284 (12.5)
533 (23.5)
138 (36.2)
330 (60.8)
Age Mean ± SD
63.65 ± 13.156
66.66 ± 15.581
< 0.001* b
74.01 ± 11.013
80.09 ± 10.475
< 0.001* b
Race: No (%)
White
1753 (76.9)
1728 (76.3)
0.425
337 (88.5)
470 (86.6)
0.692
Black
452 (19.8)
444 (19.6)
40 (10.5)
66 (12.2)
Other
76 (3.3)
92 (4.1)
4 (1.0)
7 (1.3)
Hispanic Ethnicity: No. (%)
37 (1.6)
41 (1.8)
0.624
1 (0.3)
6 (1.1)
0.146
BMI: Mean ± SD
28.1229 ± 6.041
29.084 ± 7.847
< 0.001* b
27.578 ± 5.619
26.669 ± 7.263
0.034* b
Medical History: No. (%)
Coronary Artery Disease
732 (32.1)
521 (23.0)
< 0.001* a
203 (53.3)
205 (37.8)
< 0.001* a
Carotid Artery Stenosis
152 (6.7)
120 (5.3)
0.053
39 (10.2)
23 (4.2)
< 0.001* a
Depression
226 (9.9)
375 (16.6)
< 0.001* a
45 (11.8)
75 (13.8)
0.373
Diabetes
798 (35.0)
817 (36.1)
0.438
153 (40.2)
167 (30.8)
0.003* a
Drugs or Alcohol
238 (10.4)
75 (3.3)
< 0.001* a
18 (4.7)
6 (1.1)
0.001* a
Dyslipidemia
1112 (48.8)
1104 (48.8)
0.993
252 (66.1)
287 (52.9)
< 0.001
Stroke Family History
190 (8.3)
216 (9.5)
0.152
34 (8.9)
54 (9.9)
0.603
Heart Failure
156 (6.8)
187 (8.3)
0.070
89 (23.4)
158 (29.1)
0.052
HRT
1 (0.0)
64 (2.8)
< 0.001* a
0 (0.0)
14 (2.6)
0.002* a
Hypertension
1727 (75.7)
1763 (77.9)
0.085
329 (86.4)
487 (89.7)
0.120
Migraine
28 (1.2)
95 (4.2)
< 0.001* a
1 (0.3)
10 (1.8)
0.029* a
Obesity
982 (43.1)
992 (43.8)
0.603
166 (43.6)
171 (31.5)
< 0.001* a
Previous Stroke
559 (24.5)
590 (26.1)
0.228
112 (29.4)
163 (30.0)
0.839
Previous TIA (> 24 h)
175 (7.7)
214 (9.5)
0.032* a
38 (10.0)
50 (9.2)
0.696
Prosthetic Heart Valve
22 (1.0)
16 (0.7)
0.340
13 (3.4)
11 (2.0)
0.192
Peripheral Vascular Disease
153 (6.7)
154 (6.8)
0.899
39 (10.2)
54 (9.9)
0.885
Chronic Renal Disease
184 (8.1)
160 (7.1)
0.203
48 (12.6)
55 (10.1)
0.240
Sleep Apnea
77 (3.4)
55 (2.4)
0.57
24 (6.3)
14 (2.6)
0.005* a
Smoker
834 (36.6)
567 (25.0)
< 0.001* a
49 (12.9)
36 (6.6)
0.001* a
HTN medication
1428 (62.6)
1546 (68.3)
< 0.001* a
335 (87.9)
485 (89.3)
0.510
Cholesterol Reducer
989 (43.4)
951 (42.0)
0.357
238 (62.5)
250 (46.0)
< 0.001* a
Diabetic Medication
615 (27.0)
644 (28.4)
0.264
120 (31.5)
116 (21.4)
0.001* a
Antidepressant
209 (9.2)
375 (16.6)
< 0.001* a
42 (11.0)
85 (15.7)
0.044* a
Lab values: Mean ± SD
Total cholesterol
168.81 ± 46.974
181.17 ± 51.94
< 0.001* b
148.72 ± 73.92
161.76 ± 42.702
0.002
Triglycerides
146.89 ± 114.017
142.5 ± 103.031
0.205
116.65 ± 85.91
111.91 ± 75.410
0.414
HDL
38.45 ± 12.601
44.94 ± 14.437
< 0.001* b
38.33 ± 12.396
45.39 ± 13.337
< 0.001* b
LDL
104.33 ± 40.106
110.03 ± 43.688
< 0.001* b
86.78 ± 33.636
95.52 ± 35.111
0.001* b
Lipids
6.5401 ± 1.86633
6.6506 ± 3.3761
0.209
6.3937 ± 1.518
6.0918 ± 1.3526
0.005* b
Blood Glucose
147.41 ± 80.058
150.25 ± 87.482
0.254
142.83 ± 66.47
137.65 ± 64.136
0.239
Serum Creatinine
1.3927 ± 1.21170
1.1840 ± 1.1746
< 0.001* b
1.501 ± 1.3264
1.1714 ± 0.70412
< 0.001* b
INR
1.0963 ± 0.29154
1.0714 ± 0.2832
0.010* b
1.4824 ± 1.049
1.3406 ± 0.8496
0.042* b
Vital Signs: Mean ± SD
Heart Rate
80.20 ± 18.099
83.21 ± 18.034
< 0.001* b
81.79 ± 19.790
84.72 ± 20.642
0.031* b
Blood Pressure Systolic
152.82 ± 29.094
151.69 ± 30.417
0.204
147.77 ± 27.06
151.04 ± 26.749
0.069
Blood Pressure Diastolic
85.23 ± 18.257
80.26 ± 19.358
< 0.001* b
80.84 ± 18.633
80.94 ± 20.540
0.939
Ambulation Status Prior to Event:
No. (%)
Ambulate Independently
2119 (92.9)
2033 (89.8)
0.003* a
334 (87.7)
401 (73.8)
< 0.001* a
Ambulate with Assistance
58 (2.5)
79 (3.5)
16 (4.2)
50 (9.2)
Unable to Ambulate
65 (2.8)
95 (4.2)
14 (3.7)
39 (7.2)
Not Documented
39 (1.7)
57 (2.5)
17 (4.5)
52 (9.6)
Ambulation Status on Admission:
No. (%)
Ambulate Independently
660 (28.9)
542 (23.9)
< 0.001* a
67 (17.6)
62 (11.4)
< 0.001* a
Ambulate with Assistance
671 (29.4)
722 (31.9)
119 (31.2)
114 (21.0)
Unable to Ambulate
611 (26.8)
686 (30.3)
133 (34.9)
298 (54.9)
Not Documented
339 (14.9)
314 (13.9)
62 (16.3)
69 (12.7)
Ambulation Status on Discharge:
No. (%)
Ambulate Independently
1061 (46.5)
887 (39.2)
< 0.001* a
123 (32.3)
103 (19.0)
< 0.001* a
Ambulate with Assistance
718 (31.5)
796 (35.2)
128 (33.6)
178 (32.8)
Unable to Ambulate
338 (14.8)
449 (19.8)
91 (23.9)
191 (35.2)
Not Documented
164 (7.2)
132 (5.8)
39 (10.2)
71 (13.1)
rtPA Administration
584 (25.6)
532 (23.5)
First Care Received
No. (%)
Emergency Department
1772 (78.5)
1767 (78.7)
0.895
313 (82.8)
445 (82.4)
0.876
Direct Admission
485 (21.5)
479 (21.3)
65 (17.2)
95 (17.6)
Notes:
aPearson’s Chi-Squared test
bStudent’s T test
* P-value < 0.05
Demographic and clinical characteristics of compared between atrial fibrillation status in ischemic strokepatients stratified by gender. Results for continuous variables are presented as Mean ± SD, while discrete data are presented as percentage frequency. Student T-test and Pearson’s Chi-Square were usedAmbulation Status Prior to Event:No. (%)Ambulation Status on Admission:No. (%)Ambulation Status on Discharge:No. (%)First Care ReceivedNo. (%)Notes:aPearson’s Chi-Squared testbStudent’s T test* P-value < 0.05For AISpatients with a past medical history of AF, females were older (80.09 ± 10.48 vs 74.01 ± 11.01), use antidepressants (15.7% vs 11.0%), HDL-cholesterol (45.39 ± 13.34 vs 38.33 ± 12.40), and presents with higher HRT (2.6% vs 0.0%), migraines (1.8% vs 0.3%), LDL-cholesterol (95.52 ± 35.11 vs 86.78 ± 33.64), and heart rate (84.72 ± 20.64 vs 81.79 ± 19.79). Male AISpatients with AF were more likely to present with higher BMI (27.58 ± 5.62 vs 26.67 ± 7.26), a past medical history of coronary artery disease (53.3% vs 37.8%), carotid artery stenosis (10.2% vs 4.2%), diabetes (40.2% vs 30.8%), substance use (4.7% vs 1.1%), obesity (43.6% vs 31.5%), sleep apnea (6.3% vs 2.6%), tobacco use (12.9% vs 6.6%), cholesterol reducers (62.5% vs 46.0%), and diabetic medication (31.5% vs 21.4%); and higher laboratory values including serum creatinine (1.50 ± 1.33 vs 1.17 ± 0.70) and INR (1.48 ± 1.05 vs 1.34 ± 0.85).In the adjusted analysis for the whole AIS population with and without AF (Fig. 1), coronary artery disease (OR = 0.544, 95% CI, 0.457–0.65, P < 0.001), history of smoking (OR = 0.608, 95% CI, 0.511–0.72, P < 0.001), increasing serum creatinine (OR = 0.788, 95% CI, 0.712–0.87, P < 0.001), increasing diastolic blood pressure (OR = 0.979, 95% CI, 0.975–0.98, P = 0.001), changes or improvement in ambulation (OR = 0.829, 95% CI, 0.711–0.97, P = 0.017) were associated with males, while atrial fibrillation (OR = 1.308, 95% CI, 1.051–1.63, P = 0.016), heart failure (OR = 1.468, 95% CI, 1.124–1.92, P = 0.005), anti-HTN medication (OR = 1.549, 95% CI, 1.085–2.21, P = 0.016), increasing total cholesterol l(OR = 1.005, 95% CI, 1.003–1.01, P < 0.001), increasing HDL-cholesterol (OR = 1.037, 95% CI, 1.03–1.04, P < 0.001), and increasing NIHSS (OR = 1.022, 95% CI, 1.01–1.04, P < 0.001) were associated with females. As shown in Fig. 2, the ROC Curve (AUC = 0.729, 95% CI, 0.7112–0.746, P < 0.001) demonstrates a strong sensitivity and specificity of our regression model.
Fig. 1
Forest Plot representation for clinical and demographic factors associated with ischemic stroke patients with and without atrial fibrillation. Adjusted OR < 1 denotes factors that are associated with male while OR > 1 denote factors that are associated with females. Hosmer-Lemeshow test (P = 0.546), Cox & Snell (R = 0.149) were analyzed. The overall classified percentage of 67.1% was applied to check for fitness of the logistic regression model. *Indicates statistical significance (P < 0.05) with a 95% confidence interval. ^Indicates that data were modified by taking the 5th square root for graphing purposes
Fig. 2
ROC curve associated with acute ischemic stroke patients with and without atrial fibrillation. Elevated area under the curve (AUC) values in ROC analysis indicate stronger discrimination of the score for being female. ROC curve (AUC = 0.729, 0.712–0.746) was used to analyze sensitivity and specificity of the model
Forest Plot representation for clinical and demographic factors associated with ischemic strokepatients with and without atrial fibrillation. Adjusted OR < 1 denotes factors that are associated with male while OR > 1 denote factors that are associated with females. Hosmer-Lemeshow test (P = 0.546), Cox & Snell (R = 0.149) were analyzed. The overall classified percentage of 67.1% was applied to check for fitness of the logistic regression model. *Indicates statistical significance (P < 0.05) with a 95% confidence interval. ^Indicates that data were modified by taking the 5th square root for graphing purposesROC curve associated with acute ischemic strokepatients with and without atrial fibrillation. Elevated area under the curve (AUC) values in ROC analysis indicate stronger discrimination of the score for being female. ROC curve (AUC = 0.729, 0.712–0.746) was used to analyze sensitivity and specificity of the modelIn the adjusted analysis for the AISpatients without AF, increasing age (OR = 0.992, 95% CI, 0.986–0.999, P = 0.032), BMI (OR = 0.968, 95% CI, 0.955–0.981, P < 0.001), depression (OR = 0.500, 95% CI, 0.392–0.639), HRT (OR = 0.016, 95% CI, 0.001–0.171, P = 0.001), migraine (OR = 0.379, 95% CI, 0.223–0.642, P < 0.001), increasing HDL-cholesterol (OR = 0.959, 95% CI, 0.953–0.966, P < 0.001), increasing heart rate (OR = 0.980, 95% CI, 0.975–0.985, P < 0.001), and antihypertensive (OR = 0.810, 95% CI, 0.673–0.976, P = 0.026) were associated with females without AF, while CAD (OR = 1.754, 95% CI, 1.450–2.121, P < 0.0001), drugs and alcohol (OR = 3.560, 95% CI, 2.379–5.327, P < 0.0001), higher serum creatinine level (OR = 1.218, 95% CI, 1.101–1.348, P < 0.0001), INR(OR = 1.749, 95% CI, 1.208–2.532, P = 0.003), and increasing diastolic blood pressure (OR = 1.024, 95% CI, 1.019–1.029, P < 0.0001), were associated with males (Fig. 3). The ROC Curve (AUC = 0.757, 95% CI, 0.740–0.774, P < 0.001) demonstrates a strong sensitivity and specificity of the model (Fig. 4).
Fig. 3
Forest Plot representation for clinical factors associated with ischemic stroke patients without atrial fibrillation. Adjusted OR < 1 denote factors that are associated with females while OR > 1 denote factors that are associated with males. Hosmer-Lemeshow test (P = 0.866), Cox & Snell (R = 0.189) were analyzed. The overall classified percentage of 70.0% was applied to check for fitness of the logistic regression model. *Indicates statistical significance (P < 0.05) with a 95% confidence interval. ^Indicates that data were modified by taking the 5th square root for graphing purposes
Fig. 4
ROC curve associated with acute ischemic stroke patients without atrial fibrillation. Area under the curve (AUC) values in ROC analysis indicate better discrimination of the score for being male. ROC curve (AUC = 0.757, 0.740–0.774) was used to analyze sensitivity and specificity of the model
Forest Plot representation for clinical factors associated with ischemic strokepatients without atrial fibrillation. Adjusted OR < 1 denote factors that are associated with females while OR > 1 denote factors that are associated with males. Hosmer-Lemeshow test (P = 0.866), Cox & Snell (R = 0.189) were analyzed. The overall classified percentage of 70.0% was applied to check for fitness of the logistic regression model. *Indicates statistical significance (P < 0.05) with a 95% confidence interval. ^Indicates that data were modified by taking the 5th square root for graphing purposesROC curve associated with acute ischemic strokepatients without atrial fibrillation. Area under the curve (AUC) values in ROC analysis indicate better discrimination of the score for being male. ROC curve (AUC = 0.757, 0.740–0.774) was used to analyze sensitivity and specificity of the modelIn the AISpatients with atrial fibrillation (Fig. 5), migraines (OR = 10.748, 95% CI, 0.954–121.135, P = 0.016), increasing HDL (OR = 1.035, 95% CI, 1.020–1.050, P < 0.001), increasing LDL-cholesterol (1.006, 95% CI, 1.001–1.011, P = 0.003), and the inability to ambulate on admission (OR = 2.258, 95% CI, 1.368–3.727, P = 0.001) were associated with females, while history of drug and alcohol abuse (OR = 0.250, 95% CI, 0.081–0.776, P = 0.016), sleep apnea (OR = 0.321, 95% CI, 0.133–0.777, P = 0.012), and increasing serum creatinine level (OR = 0.693, 95% CI, 0.542–0.886, P = 0.003) were associated with males. The ROC curve (Fig. 6) demonstrates the sensitivity and specificity of the model to be strong with an AUC of 0.757, 95% CI, 0.721–0.793, and P < 0.001).
Fig. 5
Forest Plot representation for clinical factors associated with ischemic stroke patients with atrial fibrillation. Adjusted OR < 1 denote factors that are associated with males while OR > 1 denote factors that are associated with females. Hosmer-Lemeshow test (P = 0.866), Cox & Snell (R = 0.189) were analyzed. The overall classified percentage of 70.0% was applied to check for fitness of the logistic regression model. *Indicates statistical significance (P < 0.05) with a 95% confidence interval. ^Indicates that data were modified by taking the 5th square root for graphing purposes
Fig. 6
ROC curve associated with acute ischemic stroke patients with atrial fibrillation. Area under the curve (AUC) values in ROC analysis indicate better discrimination of the score for being female. ROC curve (AUC = 0.757, 0.721–0.793) was used to analyze sensitivity and specificity of the model
Forest Plot representation for clinical factors associated with ischemic strokepatients with atrial fibrillation. Adjusted OR < 1 denote factors that are associated with males while OR > 1 denote factors that are associated with females. Hosmer-Lemeshow test (P = 0.866), Cox & Snell (R = 0.189) were analyzed. The overall classified percentage of 70.0% was applied to check for fitness of the logistic regression model. *Indicates statistical significance (P < 0.05) with a 95% confidence interval. ^Indicates that data were modified by taking the 5th square root for graphing purposesROC curve associated with acute ischemic strokepatients with atrial fibrillation. Area under the curve (AUC) values in ROC analysis indicate better discrimination of the score for being female. ROC curve (AUC = 0.757, 0.721–0.793) was used to analyze sensitivity and specificity of the model
Discussion
Three major findings arise from this study. First, we found that in the whole AIS population with and without AF, coronary artery disease, history of smoking, increasing serum creatinine, increasing diastolic blood pressure, changes or improvement in ambulation, were associated with males, while atrial fibrillation, heart failure, anti-HTN medication, increasing total cholesterol, increasing HDL-cholesterol and increasing NIHSS, were associated with females. Second, in AISpatients without AF, increasing age, BMI, depression, HRT, migraine, increasing HDL-cholesterol, increasing heart rate, and antihypertensive were associated with females without AF, while CAD, drugs and alcohol, higher serum creatinine level, INR, and increasing diastolic blood pressure were associated with males. Finally, in the AISpatients with AF, migraines, increasing HDL, LDL-cholesterol, and the inability to ambulate on admission were associated with females, while history of drug and alcohol abuse, sleep apnea, and increasing serum creatinine level were associated with males.The effect of HDL-cholesterol which was significant in the whole AIS with and without AF was sustained in the adjusted analysis for the female AISpatients without AF. Although age, BMI, depression, HRT, migraine, heart rate, and antihypertensive medications were not associated with female patients in the whole AIS population, these factors were significant and associated with females in the adjusted analysis for the AISpatients without AF. The effect of coronary artery disease, smoking and higher rates of improved ambulation which were more likely to be associated with male patients in the whole AIS with and without AF were attenuated in male patients for the adjusted analysis of AISpatients without AF. In addition, higher serum creatinine levels and diastolic blood pressure were significant among males in the whole AIS with and without AF, and such an effect was sustained and associated with male AISpatients without AF in the adjusted analysis. While CAD, drugs and alcohol were not significant in the whole AIS population, they were significantly associated with males in the adjusted analysis for the AIS without AF.Our finding that in the AIS population without AF, older AISpatients that present with depression, HRT, migraine, elevated HDL-cholesterol, elevated heart rate, and take antihypertensive medications were associated with females, while CAD, history of drugs and alcohol abuse, high serum creatinine level, elevated INR and increased diastolic blood pressure were associated with males are consistent with other studies for both females [18-21] and for males [22-26]. Findings indicate that female AISpatients present a worse prognosis than men overall [27]. Precisely, hypertension and use of antihypertensive medications were more frequent in females than in males [21, 28]. The effect of depression [29], HRT [30], migraine [31], HDL [32] and heart rate [33] were more severe in females, while CAD [34], drugs and alcohol use [35], high serum creatinine level [36], INR [25] and diastolic blood pressure [26] were more prevalent in male AISpatients.We observed that in AISpatients with atrial fibrillation, migraines, elevated HDL-cholesterol and LDL-cholesterol with the inability to ambulate on admission were associated with females, while history of drug and alcohol abuse, sleep apnea, and higher serum creatinine level were associated with male AISpatients with AF. Our finding of the association of poor ambulatory outcome with female AIS with AF is consistent with existing evidence on strokepatients [37]. This finding indicates that stroke is not only a leading cause of death, but it is also a leading cause of disability including poor ambulatory outcome particularly in females in whom poor functional outcomes due to a stroke consistently exceeds male patients [38]. Our findings indicate that in AISpatients with AF, excess risk of stroke and poor prognosis may be caused by specific comorbidities and risk factors including migraines, higher HDL-cholesterol, and LDL-cholesterol in female AIS with AF. Migraineurs are known to present with increased levels of cholesterol, HDL-cholesterol, and LDL-cholesterol [39]. In addition, a large population-based cohort study found an increased odd of migraine among those with elevated total cholesterol. This effect was stronger among females that experience migraine than among males [40]. Moreover, females with higher total cholesterol present with an increased risk for AIS compared to females whose cholesterol was lower [31]. Increased risk of stroke is also associated with an elevated ratio of total cholesterol: HDL-cholesterol, or decreased HDL-cholesterol [41]. While previous studies have suggested an increased risk of AIS in males with a high total cholesterol: HDL ratio [42], the current study extends the possibility of HDL-cholesterol and LDL-cholesterol to female AISpatients with a baseline AF.Therefore, our findings that in the AISpatients with AF, migraines, elevated HDL-cholesterol, elevated LDL-cholesterol, and poor ambulation were associated with females, while history of drug and alcohol abuse, sleep apnea, and increased serum creatinine level were associated with male AISpatients with AF supports our hypothesis that a gender based disparity in comorbidities and risk factors occurs in AIS population with baseline AF. While the frequencies of vascular disease vary between the males and females AISpatients, and the rates of hypertension (60% versus 56%) are higher in females than in males [33], we show that some risk factors including migraines, HDL-cholesterol, LDL-cholesterol maybe specific to female AISpatients with a baseline AF. Moreover, rates of drugs and alcohol abuse history, sleep apnea, and serum creatinine level were higher in male AIS with baseline AF compared to females.The prevalence of stroke in the female gender is predicted to rise rapidly due to the continuous increase in the global elderly female population [38]. Our current findings support the possibility that specific baseline risk factors and or comorbidities may have significant effect in females than males, and this may contribute to the observed gender difference among strokepatients with baseline AF. Although our current data does not provide evidence for why a specific comorbidity and or risk factor may have a stronger effect on female AIS with AF than males, there are several possibilities. They include the possibility of under-treatment of females and physiological differences between the male and females [43, 44]. Stroke onset occurs later in age among females compared with males, and rates of AF(24% versus 22%) are higher in females than in males [45]. Atrial fibrillation is associated with a double the risk of stroke in females compared with the risk in males [43], and females with atrial fibrillation are known to present with more severe strokes than males [46]. Therefore, existing evidence together with our current findings support the possibility that specific comorbidity and or risk factors may have more effect in female than male strokepatients with baseline AF. In this context, the different burden of comorbidities and risk factors in both males and female AISpatients with AF needs to be thoroughly explored to personalize prevention and treatment.There some limitations in the interpretation of the results of this study. This study was conducted at a single institution; therefore, the findings cannot be generalized to other institutions. Retrospective studies are known to have biases for selection because the data is not randomized. We predetermined all our subgroup analyses and repeated our analysis several times to eliminate the possibility of type 1 statistical errors. Our female subgroup analyses conducted reveal more significant variables associating more risk factors and comorbidities in females more than that of male AIS with AF. While this is a single study, the demonstration of consistent gender disparities in the AIS with and without AF increases the generalizability of our findings. Since mRS as a validated index of function for outcome was not included in the registry data based, therefore functional outcome could not be determined.
Conclusion
Our findings reveal that migraines, elevated HDL, and elevated LDL were associated with female AISpatients with a baseline AF, while drugs and alcohol abuse history, sleep apnea, and higher serum creatinine level were associated with male AIS with baseline AF. Improved management strategies for baseline risk factors for AISpatients with a history of AF will be beneficial for both males and females AISpatients with AF.
Authors: Felipe de los Ríos; Dawn O Kleindorfer; Jane Khoury; Joseph P Broderick; Charles J Moomaw; Opeolu Adeoye; Matthew L Flaherty; Pooja Khatri; Daniel Woo; Kathleen Alwell; Jane Eilerman; Simona Ferioli; Brett M Kissela Journal: Stroke Date: 2012-11-15 Impact factor: 7.914
Authors: Lin Y Chen; Mina K Chung; Larry A Allen; Michael Ezekowitz; Karen L Furie; Pamela McCabe; Peter A Noseworthy; Marco V Perez; Mintu P Turakhia Journal: Circulation Date: 2018-04-16 Impact factor: 29.690
Authors: Sarah Appleton; Tiffany Gill; Anne Taylor; Douglas McEvoy; Zumin Shi; Catherine Hill; Amy Reynolds; Robert Adams Journal: Int J Environ Res Public Health Date: 2018-05-07 Impact factor: 3.390
Authors: Oluyemi R Rotimi; Iretioluwa F Ajani; Alexandria Penwell; Shyyon Lari; Brittany Walker; Thomas I Nathaniel Journal: Womens Health (Lond) Date: 2020 Jan-Dec