ISCHEMIC STROKE REGISTRY IN EGYPT: HOSPITAL BASED STUDY

Document Type : Original Article

Authors

Department of Neurology, Faculty of Medicine, Al-Azhar University, Egypt

Abstract

Background: Stroke is defined by the World Health Organization(WHO) as ‘a clinical syndrome consisting of rapidly developing clinical signs of focal (or sometimes global) disturbance of cerebral function lasting more than 24 hours or leading to death with no apparent cause other than a vascular origin.
Objective: To study the pattern of ischemic stroke subtypes in a sample Egyptian patients, common risk factor profiles and management methods.
Patients: A retrospective study was conducted on 321 patients who were admitted to Al-Azhar University Hospitals and Nasser Institute with a main primary diagnosis of acute ischemic stroke during the period from January 2017 until December 2018.
Results: Small vessel strokes were the most common accounting for 51.1% of all patients, followed by large vessel getting affected 24% of the cases. Cardio embolic stroke was present in 20.8%of the cases, Hypertension was the most prevalent risk factor among patients accounting for 61.1%, diabetes (49.5%), obesity (38.6%), and smoking (32.1%). A significant difference in stroke severity among stroke patients regarding smoking status was found in univariate analysis and obesity. Multivariate analysis using multiple linear regressions showed that the relationship with obesity was significant.
Conclusion: In spite of the high prevalence of stroke risk factors among the study patients, the power wasn’t enough to show any association with stroke severity except for smoking and obesity, where smokers and obese patients are more likely to have higher stroke severity.

Keywords

Main Subjects


ISCHEMIC STROKE REGISTRY IN EGYPT: HOSPITAL BASED STUDY

By

Tarek Ibrahim Meneci, Ahmed Hassan El-Sheshiny and Mohamed Saber Mohamed

Department of Neurology, Faculty of Medicine, Al-Azhar University, Egypt

E-mail: afathyneuro@gmail.com

ABSTRACT

Background: Stroke is defined by the World Health Organization(WHO) as ‘a clinical syndrome consisting of rapidly developing clinical signs of focal (or sometimes global) disturbance of cerebral function lasting more than 24 hours or leading to death with no apparent cause other than a vascular origin.

Objective: To study the pattern of ischemic stroke subtypes in a sample Egyptian patients, common risk factor profiles and management methods.

Patients: A retrospective study was conducted on 321 patients who were admitted to Al-Azhar University Hospitals and Nasser Institute with a main primary diagnosis of acute ischemic stroke during the period from January 2017 until December 2018.

Results: Small vessel strokes were the most common accounting for 51.1% of all patients, followed by large vessel getting affected 24% of the cases. Cardio embolic stroke was present in 20.8%of the cases, Hypertension was the most prevalent risk factor among patients accounting for 61.1%, diabetes (49.5%), obesity (38.6%), and smoking (32.1%). A significant difference in stroke severity among stroke patients regarding smoking status was found in univariate analysis and obesity. Multivariate analysis using multiple linear regressions showed that the relationship with obesity was significant.

Conclusion: In spite of the high prevalence of stroke risk factors among the study patients, the power wasn’t enough to show any association with stroke severity except for smoking and obesity, where smokers and obese patients are more likely to have higher stroke severity.

Keywords: Stroke, retrospective, ischemic, Egyptian, vascular.

 

 

INTRODUCTION

     Stroke is defined by the World Health Organization as ‘a clinical syndrome consisting of rapidly developing clinical signs of focal (or sometimes global) disturbance of cerebral function lasting more than 24 hours or leading to death with no apparent cause other than a vascular origin (Coupland and Thapar, 2017).

     There were an estimated 42 million prevalent cases of cerebrovascular disease worldwide, including an estimated 5.39 million acute first ischemic strokes, and 3.58 million acute first hemorrhagic and other strokes (Feigin et al., 2015). Stroke considered as the second most common cause of deaths (Roth et al., 2017).

     The World Health Organization (WHO) estimates that 85% of stroke deaths now occur in low and middle-income countries and that disability-adjusted life years lost to stroke are almost seven times that in high-income countries. Egypt is the most populated nation in the Middle East and the third most populous on the African continent. Stroke is a major health problem among the Egyptian population, furthermore, although Egypt is the most populous nation in the middle east, there is no active national wide registry for stroke and accurate data on stroke epidemiology are scarce, However, Researches on this topic is essential for planning appropriate management programs, effectively applying primary prevention strategies and improving health resources in Egypt (Abd-Allah et al., 2014).

     A number of community base studies, particularly investigation conducted in governorates in Upper Egypt between 1992 and 2013 have reported the incidences and prevalence of stroke in Egypt. Arterial hypertension, diabetes mellitus, cigarette smoking, hyperlipidemia, and advancing age have been identified as risk factors for stroke (Khedr et al., 2014).

     The present work aimed to study the pattern of ischemic stroke in Egyptian patients as regard the relative prevalence of ischemic stroke subtypes, the demographic data, common risk factor profiles and management methods, comparing these data with national and international data for more clarification of the situation in Egypt.

PATIENTS AND METHODS

     This was a retrospective study on patients who were admitted to Stroke unit and/or intensive care unit of Al-Azhar University Hospitals and Nasser Institute with a main discharge diagnosis of acute ischemic stroke during the period from January 2017 until December 2018.

Exclusion criteria:

     Transient Ischemic Attack (TIA), intracerebral hemorrhage, subarachnoidal hemorrhage and cerebral sinus venous thrombosis.

     The data encoded in this study was registered in safe implementation of treatment in stroke (SITS international) and was divided into the following categories:

Demographic data and Risk factors:

1.  Hypertension (on antihypertensive medications or established history of Bp> 160/90 mm hg on at least two occasions).

2.  Diabetes Mellitus (past history of Diabetes Mellitus, at two independent readings before the stroke or elevated glycated hemoglobin on admission or on anti-diabetic medications).

3.  Hyperlipidemia (previous history of hyperlipidemia, on cholesterol lowering drugs or persistent elevation of plasma level of cholesterol, triglycerides, LDL and HDL BMI >30 kg/m2.

4.  Smoking Classified into two categories: Nonsmokers/former smoker (never smoked regularly or quit regular smoking >5 years) and Smokers (regular daily cigarettes smoking > 5 years).

5.  History of TIA, Migraine and family history of strokes.

6.  Laboratory.

7.  ECG.

8.  Carotid duplex.

9.  Trans thoracic or trans esophageal Echo if needed.

10.       Neuro imaging data.

11.       Clinical outcome and complications.

 

Statistical analysis:

     Statistical analysis of the study results are presented as the mean, median standard deviation, frequency; chi-square and linear regression model were used to test significance for qualitative data. P


 

RESULTS

 

 

     This stroke registry gathered data from 321 stroke patients in Al-Azhar university hospitals and Nasser institute hospital. Mean age of stroke patients was 59 years and (76.6%) of cases were more than 50 years old, there were 53.3% male and 46.7% females, 61.1% of cases were hypertensive, 49.5% were diabetic, 41.1% of cases had hyperlipidemia, 38.6% were obese while 32.1% were Smokers. 54.5% of cases had no intervention, 40.8% were taken rTPA and only 4.7% had Thrombectomy Intervention. More than half of cases (78.5%) had no history of TIA. The range of systolic blood pressure at admission was 80.0 – 210.0 and its mean was 146, the range of diastolic blood pressure at admission was 40.0 – 140.0 and its mean was 90, the range of RBS at admission was 85.0 – 450.0 and its mean was 184 and the range of total leucocytes count (TLC) 3.3_46 and its mean 8.758. 49.8% of cases were arrived in the golden hours (4.5 hours or less), 31.8% of cases came after 4.5 hours but within the first 24 hours and only 18.4% of cases came after 24 hours. 83.4% of cases initially admitted to stroke unit (Table 1).


 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Table (1):   Distribution of the studied cases according to demographic data and baseline clinical factors (n = 321)

Patients

Variables

Number of patients

Percentage

Sex

Male

171

53.3

Female

150

46.7

Age

≤50

75

23.4

>50

246

76.6

Hypertensive

No

125

38.9

Yes

196

61.1

Diabetic

No

162

50.5

Yes

159

49.5

Obese

No

197

61.4

Yes

124

38.6

Smoking

Non-smoker

178

55.4

Smoker

103

32.1

X– smoker

40

12.5

TIA history

No

252

78.5

Yes

69

21.5

Hyperlipidemia

No

Yes

189

132

58.9

41.1

Onset

≤ 4.5

160

49.8

4.5 to < 24 hr.

102

31.8

24 ≥

59

18.4

Intervention

No

175

54.5

Thrombectomy

15

4.7

rTPA

131

40.8

Type of admission

Stroke Unit

Ward

269

52

83.8

14.2

complications

Hemorrhagic transformation

Pneumonia

UTI

Pulmonary embolism

DVT

14

22

8

0

2

4.4

6.9

2.5

0

.6

Variable

Mean ± SD

Range

Age

58.66± 13.36

17.0 – 89.0

Blood pressure

146.3 ± 27.05

130.0–160.0

Pulse rate

89.60 ± 13.59

80.0 – 100.0

Random blood sugar

183.6 ± 89.08

115.0–235.0

Total leucocytes count

8.758 ± 5.403

3.3_46

 

 

     Small vessels strokes were the most common accounting for 51.1% of all patients followed by large vessels getting affected in 24%, cardio embolic stroke was present in 20.8% of the cases. 82.3% of cases had anterior circulation distribution, and 17.1% had posterior circulation distribution (Table 2).

 

 

 

 

 

Table (2):   Distribution of the stroke-sub types among the study patients

Patients

Variables

Number of patients

Percentage

Stroke type

Small

164

51.1

Large

Embolic

Un-determined

77

67

13

24.0

20.9

4

Site

Anterior

264

82.3

Posterior

55

17.1

Both

2

0.6

     Most common infarcts location was in parietal 29%, basal ganglia 24.3% and cerebellar in 8.4% (Table 3).

Table (3):   Infarct Location (n=321)

Location of infarct

n (%)

Frontal

16(5%)

Parietal

93(29%)

Temporal

27(8.4%)

Occipital

5(1.6%)

Basal ganglia

78(24.3%)

Internal capsule

19(5.9%)

Thalamus

14(4.4%)

Cerebellar

27(8.4%)

Mid brain

4(1.2%)

Pontine

8(2.5%)

Medullary

11(3.4%)

More than one site

19(5.9%)

 

 

     ECG was done for all patients, cardiac co-morbidity was present in 39.9% of cases on ECG, Atrial fibrillation was the most common cardiac abnormality (20.9% of all cases), and ischemic changes in 18.1%.

 
   


     The hospital stays for the studied cases range from 1 day to 45 days with a mean stay of 7.31 ±6.35.

     48.0% of cases was Moderate (6 – 11) NIHs, 27.4% Mild (0 – 5), 24.6% Severe (12 or more) NIHs, and Mean ± SD. of NIHs is8.37 ± 4.08 as (Figure 1).

 

Figure (1):  Bar charts showing Comprise the studied cases as regard NIHSs

Most of cases (94.7 %) had no Fits on onset (Table 4).

 

Table (4):   Distribution of the studied cases according to present of fits on onset

Patients

Variables

Number of patients

Percentage

Fits on onset

YES

304

94.7

NO

17

5.3

 

 

     Comparison between TLC regarding to age, gender, stroke subtype, circulation and stroke severity, this table shows there was a statistical significant difference between TLC as a marker of infection as regard Age and gender where old age and female cases were more liable to infection (Table 5).

 

 

Table (5):   Relation between Total Leucocytic Count and other factors (n=321)

TLC

Factors

Normal TLC ( >11)

High TLC (≤11)

x2

P

Age

>50

≤50

 

197

38

 

49

37

25.3549

0.00001

Gender

Males

Females

 

131

90

 

40

60

10.2765

0.001347

Stroke subtype

Large

Small

Embolic

Undetermined

 

58

146

20

12

 

19

59

6

1

3.1978

0.36212

Circulation

Anterior

posterior

 

190

43

 

76

12

1.0446

0.306762

Severity

Mild

Moderate

Sever

 

63

110

60

 

23

44

19

0.5447

0.761587

Tests of significance were conducted using Chi-Square with Monte-Carlo method

 

 

     There was no statistical significant difference between the grades of NIHSs as regard Age and that there was a statistical significant difference between NIHSs as regard Smoking and obesity, there was no statistical significant difference between NIHSs as regard hypertension and Diabetes (Table 6).

 

 

 

 

 

 

 

 

 

Table (6):   Relation between NIHs and age (n= 321)

Levels

 

Variables

Mild (0 – 5)
(n= 88)

Moderate (6 – 11)

(n= 154)

Severe (>12) (n= 79)

x2

P

 

No.

%

No.

%

No.

%

≤50

20

22.7

35

22.7

20

25.3

0.223

0.894

>50

68

77.3

119

77.3

59

74.7

Diabetic

No

Yes

 

44

44

 

50.0

50.0

 

81

73

 

52.6

47.4

 

37

42

 

46.8

53.2

0.7041

0.70321

HTN

No

Yes

 

38

50

 

43.2

56.8

 

63

91

 

40.9

59.1

 

24

55

 

30.4

69.6

3.3518

0.18714

Smoker

Non smoker

Smoker

X– smoker

 

55

17

16

 

62.5

19.3

18.2

 

84

57

13

 

54.5

37.0

8.4

 

39

29

11

49.40

36.7

13.4

11.944

0.01777

Obesity

NO

YES

 

66

22

 

75

25

 

91

63

 

59.1

40.9

 

40

39

 

50.6

49.4

10.596

0.05001

*: P value < 0.05. Tests of significance were conducted using Chi-Square with Monte-Carlo method

 

 

     The linear regression model showed that males, hypertensive patients or smokers were higher in NIHSs score, although the effects of each of age, gender, DM, HTN, smoking, and TIA history on NIHS score after adjusting for other variables were not significant. However, obesity had an independent significant effect on NIHS score adjusted for other variables where obese patients were more likely to have 1.83 more NIHS score than non-obese patients (Table 7).

 

 

Table (7):   The relationship between NIHS score (dependent variable) and each of gender, age, DM, HTN, smoking, obesity, and history of TIA using linear regression model

Independent variables

Beta

Std. Error

T

P-value

VIF

(Constant)

8.587

1.192

7.205

0.000

 

Female

-0.369

0.732

-0.505

0.614

2.650

Age

-0.013

0.018

-0.709

0.479

1.225

Diabetic

-0.440

0.541

-0.815

0.416

1.451

HTN

0.199

0.566

0.351

0.726

1.516

Smoker or ex-smoker

0.564

0.744

0.758

0.449

2.703

Obese (BMI>30kg/m2)

1.828

0.570

3.206

0.001*

1.530

TIA

-0.509

0.559

-.911

0.363

1.053

VIF = variance inflation factor

 

 

 

 

 

 

DISCUSSION

     Epidemiological studies have identified several risk factors for ischemic stroke, including hypertension, smoking, diabetes mellitus and hemostatic factors. However, few prospective studies have characterized risk factors for specific subtypes of ischemic stroke. 2–4 Because the pathogenesis, prognosis, and treatment differ among subtypes, evaluating risk factors for individual subtypes may contribute to more effective primary and secondary prevention of ischemic stroke (Habibi-koolaee and Shahmoradi, 2018).

     Regarding socio demographic data of the studied patients, their age is ranged from 17.0 – 89.0 years with mean of 58.66 ± 13.36 years and (76.6%) more than 50 years, there were 53.3% male and 46.7% females. Mean ± SD. of age among male was 59.49 ± 12.72 years old, and was 57.73 ± 14.04 years old among female, 54.7% of male and 52.8% of female were ≤50 years old.

     Our study reported that small vessels strokes were the most common accounting for 51.1% of all patients followed by large vessels getting affected in 24%, cardio embolic stroke was present in 20.8% of the cases which in agreement with Asian studies like Bum and Jong (2014) who record high proportion of small artery subtypes in Asian population.

     The lower incidence of cardio embolic stroke in our hospital based study which was (20.8%), so it is in contrast to the rates generally noted in stroke registries, which are often above 30%  also stroke of undetermined a etiology was (4.1%) of patients which also often around 30% in most studies (Arboix and Alio, 2010).

     Our results are supported by study of Khedr et al. (2014), as they reported that concerning the demographic and clinical data of studied prevalent cases of stroke, the mean age of our patients was 59.6 6 11 years (range 28-91). This study conducted on 46 males and 28 females.

     Furthermore, Soliman et al. (2018) demonstrated that one hundred sixty-seven patients with acute ischemic stroke were included in this cross-sectional descriptive study. Their age ranged from 15 to 90 years, with mean and standard deviation of 59.3 ± 13.45 years. In 90 males (53.9%), 11 patients of them were ≤ 45 years old, and in 77 females (46.1%), 13 patients of them were ≤ 45 years old.

     The current study shows that 49.5 % of cases were diabetic and 61.1% was hypertensive. There was high statistically significant difference between NIHs as regard smoking obesity, while there was no statistically significant difference between NIHs as regard Age, HTN and Diabetes.

     Our results are supported by study of Soliman et al. (2018) reported that in their study, diabetes mellitus was recorded in 34.7% of patients which is slightly lower than El Tallawy et al. (2015) study done in Upper Egypt where diabetes mellitus was recorded in 36.5% of patients, whereas in Essa et al. (2011) study in Alexandria, diabetes mellitus was recorded in 66.8% of patients.

     Similarly, Al Baghli et al. (2010) reported that the significant risk factors for stroke among Saudi population are hypertension followed by diabetes mellitus, heart disease, and smoking. It has been estimated that hypertension causes 54% of stroke in low-income and middle-income countries, followed by hypercholesterolemia (15%) and tobacco smoking (12%). More recent studies again found elevated blood pressure is by far the most important risk factor for stroke.

     The present study shows that 55.5% of cases were nonsmoker, while 32.1% was Smoker. More than half of cases (61.4%) were not obese. 77.6% of cases had abnormal cholesterol, with Mean ± SD. is 184.1 ± 56.85, 72.3% of cases had abnormal TGA with Mean ± SD. 155.7 ± 85.80, and only 12.1% had abnormal LDL with Mean ± SD. 92.18 ± 45.80. There was no statistically significant difference between the Vessels as regard Cholesterol, TGA and there was high statistically significant difference between the Vessels as regard LDL.

     Our results are supported by study of El Tallawy et al., (2015), as they reported that Smoking, diabetes, and hyperlipidemia were recorded in higher rates among ischemic strokes, and this is similar to results from a previous study done by Shah and Cole (2011) found that smoking was associated with 50% of hemorrhagic and 55% of ischemic stroke cases. He also found that cigarette smokers have an overall 51% increased risk of having a stroke. Patients with diabetes are two to three times more likely to have ischemic stroke when compared with non-diabetic individuals. Diabetes mellitus was associated with 26.25% of ischemic stroke.

     Furthermore, Khedr et al. (2014) found that 67.57% had 1 or more risk factors of stroke, 37.84% had 2 risks factors and 20.27% had 3 risk factors. Hypertension being the most common risk factor (62.16%), followed by diabetes mellitus (36.49%). Ischemic heart disease was recorded in 9.46% and a history of transient ischemic attack in 6.76%, whereas rheumatic heart in 5.4%, and systemic lupus erythromatosis in 1.35%. 10.8% had a family history of stroke.

     In the present study, more than half of cases (78.5%) had not previous TIA. There was no statistically significant difference between the TIA as regard Duplex. In the study of El Tallawy et al. (2015) the prevalence of TIAs in this study was 0.15/1,000 and the incidence was 0.05/1,000. This is lower than the reported crude overall annual incidence of TIA in Northern Portugal per 1,000 populations (0.67; 95% CI 0.45 to 1.04). The lower prevalence rate of this study could be attributed to undervaluation of TIA cases. Thus, the lack of neurologists in Al Quseir, Egypt, can result in such cases being misdiagnosed as syncope attacks or any other medical conditions.

     Surprisingly, 49.8% of cases arrived in the golden hours ( 4.5 hours or less ), 31.8% of cases came after 4.5 hours but within the first 24 hours and only 18.4% of cases came after 24 hours ,this high percentage of early arrival could be explained by the restriction of our study on admitted patients and the higher probability of admission in patients viable to interventions rTPA and thrombectomy due to hospitals beds shortage and that is supported by another hospital based study in Egypt done by Al Serafy et al. (2016).

     The current study showed that the most common site of infarct was parietal 29%, basal ganglia 24.3% followed by cerebellar 8.4% and temporal 8.4%, The first two locations were similar to previous study done by Bhowmik and Abbas (2016) where parietal infarct counted 34.8%  and basal ganglia 27.1%. In this study the third most common site was internal capsule 26.2%.

     The current study showed that the linear regression model shows that males, hypertensive patients or smokers were higher in NIHS score, although the effect of each of age, gender, DM, HTN, smoking, and TIA history on NIHS score after adjusting for other variables was not significant. However, obesity had an independent significant effect on NIHS score adjusted for other variables where obese patients were more likely to have 1.83 more NIHS score than non-obese patients. The ordinal logistic regression shows that males, hypertensive patients or smokers were more likely to be in a higher category of severity (adjusted OR = 1.13, 1.08, 1.3 respectively), although their effects were not significant after controlling other variables. However, the effect of obesity on stroke severity was significant where obese patients were 2.34 more likely to be in a higher category of stroke severity (adjusted OR = 2.34) after adjusting for other predictors.

     The cumulative risk of stroke recurrence within 5 years after a first episode range was between 15% and 40%. The most relevant predictors of stroke recurrence identified in epidemiological trials include advancing age, hypertension, atrial fibrillation, diabetes mellitus, hyperlipidemia, and previous TIA. In the study of El Tallawy et al. (2015) previous stroke was reported in 12.9% of patients and was not correlated to age, sex, or risk factors except for diabetes. Moreover, stroke recurrence was significantly more among patients with ischemic stroke.

     Robert and Zamzami (2014) found positive family history of stroke in 14% of stroke patients in Saudi Arabia. In the study of El Tallawy et al. (2015), a lower rate (5%) was recorded, which can be attributed to lower level of consanguinity among Egyptians compared to Saudi Arabian population. Number of risk factors was significantly correlated with increasing age. While 20.3% of patients in the age group 40 years to

CONCLUSION

     In spite of the high prevalence of stroke risk factors among the study patients, the power was not enough to show any association with stroke severity except for smoking and obesity, where smokers and obese patients are more likely to have higher stroke severity.

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دراسة مستشفوية عن السکتة الدماغية الاحتشائية فى مصر

محمد صابر محمد حسن, طارق ابراهيم المنيسى, أحمدحسن الشيشينى

قسم طب المخ و الاعصاب، کلية الطب، جامعة الأزهر

E-mail: afathyneuro@gmail.com

خلفية البحث: تعتبر السکتة الدماغية طبقا لمنظمة الصحة العالمية متلازمة مرضية تتکون من علامات إکلينيکية سريعة التطور موضعية, وفي بعض الأحيان کلية, واضطراب فى وظائف الدماغ تستمر أکثر من 24 ساعة, أوتؤدي إلى الوفاة مع عدم وجود سبب واضح غير الأوعية الدموية.

الهدف من البحث: دراسة أشکال السکتة الدماغية الاحتشائية وأنواعها فى مصر وأسبابها وطرق علاجها.

المرضي وطرق البحث: تم إجراء دراسة إستعادية على 321 مريضاً تم إدخالهم إلى مستشفيات جامعة الأزهر ومعهد ناصر مع التشخيص الأساسي الرئيسي للسکتة الدماغية الحادة خلال الفترة من يناير 2017 حتى ديسمبر 2018.

نتائج البحث: کانت السکتات الدماغية التى تؤثر على الشرايين الصغيرة هي الأکثر شيوعاً بالنسبة لـ 51.1% من جميع المرضى, تليها إصابة الشرايين الکبيرة بنسبة 24% من الحالات، والجلطة التى مصدرها القلب کانت موجودة في 20.8% من الحالات، وکان إرتفاع ضغط الدم العامل, الخطر الأکثر إنتشاراً بين المرضى الذين يمثلون 61.1%، والسکري 49.5%، والسمنة 38.6%، والتدخين 32.1%. هناک اختلاف کبير في شدة السکتة الدماغية بين مرضى السکتة الدماغية فيما يتعلق بحالة التدخين في تحليل أحادي المتغير والسمنة. أظهر التحليل المتعدد المتغيرات باستخدام الانحدار الخطي المتعدد أن العلاقة مع السمنة کانت ذات دلالية احصائية.

الاستنتاج: على الرغم من ارتفاع انتشار عوامل خطر السکتة الدماغية بين المرضى محل الدراسة, فإن الدراسات ليست کافية لإظهار أي ارتباط مع شدة السکتة الدماغية باستثناء التدخين والسمنة, حيث المدخنين والمرضى الذين يعانون من السمنة المفرطة هم أکثر عرضة لجلطات اکثر شدة.

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