Survival and Predictors of Mortality Among Patients Admitted to Intensive Care Unit in Southern Ethiopia: A Multi-center Retrospective Cohort Study

DOI: https://doi.org/10.21203/rs.3.rs-97694/v1

Abstract

Background: The burden of life-threatening conditions requiring intensive care unit has grown substantially in low-income countries related to an emerging pandemic, urbanization, and hospital expansion. The rate of ICU mortality is varied from region to region in Ethiopia. However, body of evidence on ICU mortality and its predictors is uncertain. This study was designed to investigate the pattern of disease and predictors of mortality in Southern Ethiopia.

Methods: After obtaining Ethical clearance from institutional Review Board (IRB), a multi-center retrospective Cohort study was conducted among three teaching referral hospital ICUs of southern Ethiopia from June, 2018 to May, 2020. Five hundred and seventeen Adult ICU patients were selected. Data were entered in Statistical Package for Social Sciences version 22 and STATA version 16 for analysis.  Descriptive statistics were run to see the overall distribution of the variables. Chi square test and odds ratio were determine to identify the association between independent and dependent variables. Multivariate analysis was conducted to control possible confounders and identify independent predictors of ICU mortality.

Results: The mean (± SD) of the patients admitted in ICU was 34.25(±5.25). The overall ICU mortality rate was 46.8%. The study identified different independent predictors of mortality. Patients with cardiac arrest were approximately 12 times more likely to die as compared to who didn’t,  AOR=11.9 (95% CI:6.1 to 23.2).

Conclusion: The overall mortality rate in ICU was very high as compared to other studies in Ethiopia as well as globally which entails a rigorous activity from different stakeholders.

Background

The modern intensive care medicine emerged during the Polio epidemics in the 1950s, which was pioneered by a Danish anesthetist, Bjorn Ibsen at the Kommune hospital of Copenhagen in 1953[1, 2].

The Intensive Care Unit (ICU) is a specially staffed, well equipped, separate, and self-contained area of a hospital dedicated to providing aggressive therapy using state-of-the-art technology and both invasive and noninvasive monitoring for critically ill and high-risk patients[3-6].

The burden of life-threatening conditions requiring management in the intensive care unit has grown substantially in the last couple of decades in low and middle-income countries because of an emerging pandemic, motorization, urbanization, and hospital expansion[7-12]. However, the advancement of ICU care is very limited in these countries due to the high cost of infrastructure, training medical staff, failure to incorporate international guidelines for evidence-based care, and availing medical supplies[9, 11, 13-16].

Intensive care unit comprises of only 10 percent of hospital bed but it costs more than 30 percent of acute hospital care which is equivalent to 20 percent of the hospital budget and this cost becomes higher in a patient with a severe critical illness which hinders the low resource setting to establish intensive care units[3, 17].

Critical ill patients are admitted to ICU for some reasons including but not limited to respiratory failure, severe infectious diseases, multiple trauma and shock, myocardial infarction, heart failure, renal failure, poisoning, postoperative care, and therapeutic[18-37].

Evidence showed that the incidence of ICU admission ranged from 1 to 54% globally [17, 35, 37-40]. The cause of ICU admission is not consistent across the globe and the majority of available evidence showed that cardiovascular and respiratory disorders were the commonest causes of admission in middle and high-income countries accounting for 27 to 41% of admission[17, 35, 37-40] while trauma and postoperative care were the main reasons for ICU admission in low-income countries which varied from 10 to 50%[6, 37, 38, 41].

Evidence revealed that the outcomes of patients in ICU is greatly related to different factors including but not limited to the pattern of diseases, the severity of the disease, infrastructure, trained medical staff, nursing care, medical supplies, age of patient, presence of comorbidities and multiorgan failure, pre-hospital and emergency care trauma score, mechanical ventilation, length of ICU stay, complications in ICU, dissemination of antimicrobial-resistant microorganisms and inappropriate or suboptimal use of antibiotics[6, 9, 18, 24-28, 30, 34, 36, 37, 40-48].

The global prevalence of mortality in ICU roughly ranges from 9 to 61%. An international study recruiting 13, 796 participants from Africa, Asia, America, Europe, and Oceania revealed that the prevalence of mortality in ICU was 18.2%[49].

Other evidence from Sub-Saharan Africa showed that mortality in ICU was ranged from 27% to 61% [38, 41, 50, 51]. A systematic review and meta-analysis by Vincent et al showed that ICU mortality related to septic shock in Europe and North America was 37.3% (95% CI:35.5 to 43.5%)[52].

The mortality is very high in the low-income country which is as high as 61% as compared to developed countries which varied from 9 to 18%[28, 38, 41, 50, 51, 53].

The rate of ICU mortality in Ethiopia varied from region to region ranging from 27 to 38% [4, 6, 28, 32, 46, 53]. However, the pattern of disease and predictors of mortality in the Southern part of Ethiopia is not well investigated. This multicenter observational study was designed to investigate the pattern of disease and predictors of mortality in selected Southern Ethiopia ICUs.

Materials And Methods

Study design and setting

This is a multi-center retrospective observational study conducted in three teaching and referral hospitals in Southern Ethiopia; namely, Hawassa university referral hospital (HURH), Dilla University referral hospital (DURH), and Wolaita Sodo referral hospital (WURH) from June 20, 2018, to May 20, 2020. These teaching and referral hospital ICUs are administered by the Federal Ministry of health and education of Ethiopia. The ICUs are providing a similar level of care with almost similar staff profiles, monitoring modalities, ICU infrastructure, medical supplies, and admission patterns. The care of patients in these ICUs is to the minimum standard because of lack of medical supplies (mechanical ventilator, integrated monitors, vasopressor/inotropes, nutritional support), lack of well-trained staff (lack of intensivist, dentition/nutritionist, physiotherapist). Besides, Dilla University referral hospital, and Wolyta Soso University hospital ICUs didn’t have Computerized Tomography (CT), portable chest X-ray Machine, Spirometer, and appropriate Biochemical tests. 

Eligibility

The inclusion criteria for this observational study were all adult patients who were 12 years and above admitted in three of the referral and teaching hospital ICUs during the study period. All patients with incomplete data were excluded.

Variables

Dependent variables

The dependent variables were the clinical outcomes in ICU including 30-day mortality, length of ICU stay, the incidence of cardiac arrest, and some days on a mechanical ventilator and complication in ICU

Independent variables

Socio-demographic characteristics (age and gender), causes of admission, presence of comorbid illness, category of admission, the vital sign at admission, intervention during ICU stay were the independent variables.

Data collection procedures

The data was collected by three trained bachelors Anesthetist with standardized questionnaire adapted from previous literature [28, 32, 36, 41, 44, 49, 50, 54-56]. A total of 524 patient charts were recruited from 2119 patients admitted in ICU from June 20, 2018, to 2020 in three hospitals with systematic allocation proportion based on the number of patients admitted during the study period (Fig 1).

The data extraction includes: Socio-demographic characteristics (age of the patient, gender, weight, Height, BMI); Admission variables (admission category, causes of category, vital si9gn at admission; intervention in ICU (mechanical ventilation, vasopressor requirement); complication in ICU (cardiac arrest, infection, aspiration) and outcomes (mortality, length of ICU stay and some mechanical ventilator).

Data analysis

Data will be checked, coded, and entered into Epi-info version 7.0 and imported to SPSS version 22 and STATA version 16 for analysis. Descriptive statistics were summarizing with tables and figures. The categorical variables were reported in Frequency and percentage and the statistical difference was determined by Chi-square and Fisher exact test where appropriate. The numerical data were reported in mean ± SD for symmetric and median (Interquartile range) for asymmetric numeric data. The outlier of the data will be checked with standardized residual while Shapiro Wilk tests were employed for the normality test. The multi-collinearity among independent variables was checked by Variance inflation factor and tolerance.

Association of demographic characteristics, admission category, causes of admission, and intervention in ICU, a complication in ICU and mortality in ICU was analyzed by using binary logistic regression. The Model fitness was checked using Hosmer-Lemeshow goodness of fitness test, Pseudo R2, and Pearson chi-square statistics. All Variables are significant on bivariate analysis at p-value less than 0.25 were taken to multivariate analysis one after the other to investigate model prediction and independent predictors of the explanatory variables. In multivariate analysis, a p-value of less than 0.05 was considered for the statistical association. This study was conducted in compliance with Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) guidelines for observational studies[57]. 

Ethical statement

This study was reviewed and approved by the Institutional Review Board (IRB) of Dilla University and was given a reference number (007/19-10). The study was conducted in compliance with the Helsinki declaration for observational studies. A formal letter was written to each University hospital ICU director to get permission to access the patients’ data and all the patient identifiers were kept anonymous.

Results

A total of 2119 patients were admitted to the three teaching referral Hospitals’ ICU from June 2018 to May 2020. Five Hundred and twenty-four patients were selected with systematic proportion allocation from three ICUs. Finally, Five hundred and seventeen were included in the analysis, and the rest seven were excluded due to incomplete data.

 Admission characteristics

The mean (± SD) of the patients admitted in ICU was 34.25(±5.25). The majority of patients were in the age range of 19 to 39 years while the lowest was in the less than 18 years range. Among 517 patients, the majority 274(53%) were female while males accounted for 247(47%).

The majority of Admissions were from emergency department 223(43.1%) followed by Medical ward 180(34.8%), gynecology/Obstetrics ward 50(9.7%) while the lowest were from operation theatre 47(9.1%) and surgical ward 17(3.3%). The commonest causes of ICU admissions were acute respiratory distress syndrome, Congestive heart failure, and severe pneumonia, stroke, myocardial infarction, and acute kidney injury respectively.

The majority of patients had a respiratory rate greater than twenty breaths per minute while less than twenty-three of patients had respiratory rate less than twelve breaths per minute. Seventy percent of the patients had a pulse rate greater than a hundred beats per minute while only six percent of patients had no palpable pulse at admission.

More than half 272(53.2) of patients had GCS score less than eight while 197(37.1%) of the patients were hypoxemic (PSO2 less than 90%) at admission (Table 1).

Table 1 Admission characteristics of patients admitted to Teaching and Referral Hospitals’ ICUs in Southern Ethiopia, June 2018 to May 2020.

Characteristics

All admissions

 (n=517)

survivors (n=275)

Non-survivors

(n=242)

 P-value

Age range (years)

<18

19 to 39

>40

 

102(19.7)

233(45.1)

182(35.2)

 

39(35.3)

117(50.2)

86(47.3)

 

63(64.7)

116(49.8)

96(52.7)

 

 

>0.05

Gender

Female

Male

 

274(53.0)

243(47.0)

 

149(54.4)

126(51.9)

 

125(45.6)

117(48.1)

 

>0.05

Admission vital sign

Respiratory rate

<12

12 to 20

>20

Pulse rate

>100

60 to 100

<60

Not palpable

 Oxygen Saturation (PS02, %)

>90

<90

Glasgow coma scale

<8

9-12

>12

 

 

23(4.4)

119(23.0)

375(72.5)

 

330(63.8)

141(27.3)

13(2.5)

33(6.4)

 

325(62.9)

197(37.1)

 

272(53.2)

196(37.9)

46(8.9)

 

 

20(86.9)

42(35.3)

180(48.0)

 

169(51.2)

36(25.5)

9(69.2)

28(84.8)

 

184(56.6)

58(29.4)

 

184(67.6)

51(26.0)

7(15.2)

 

 

3(13.1)

77(64.7)

195(52.0)

 

161(48.8)

105(74.5)

4(30.8)

5(15.2)

 

141(43.4)

134(70.6)

 

91(32.4)

145(74.0)

39(84.8)

 

 

 

<0.0001**

 

 

 

<0.0001**

 

 

 

<0.0001**

 

 

 

<0.0001**

 

Sources of admission

Emergency department

Medical ward

Surgical ward

Gynecology/obstetrics ward

Operation Room

 

223(43.1)

180(34.8)

17(3.3)

50(9.7)

47(9.1)

 

109(48.9)

79(43.9)

8(47.1)

21(42.0)

25(53.2)

 

114(51.1)

101(56.1)

9(52.9)

29(58.0)

22(46.8)

 

 

 

>0.05

 

 

Causes of admission

Myocardial infarction

Congestive heart failure

Septic shock

HIV/AIDS

ARDS

Diabetic ketoacidosis

stroke

Acute kidney injury

Severe Pneumonia

Others

 

 

33(6.4)

55(10.6)

30(5.8)

18(3.5)

57(11.0)
19(3.7)

40(7.7)

31(6.0)

45(8.7)

257(49.7)

 

10(30.3)

21(38.2)

22(73.3)

8(44.4)

29(50.9)

7(36.8)

14(35.0)

16(51.6)

23(51.1)

112(43.6)

 

23(69.7)

34(61.8)

8(26.7)

10(55.6)

28(49.1)

12(63.2)

26(70.0)

15(48.4)

22(48.9)

145(56.4)

 

0.036*

>0.05

0.02*

>0.05

>0.05

>0.05

>0.05

>0.05

>0.05

>0.05

Note: ** very significant; *significant; ARDS: Acute Respiratory Distress Syndrome; PSO2: percutaneous oxygen saturation

Comorbidity, Intervention, and outcomes

All Patients admitted to ICU had some comorbidity. The cardiovascular disorders were the commonest comorbidity 183(35.4%) followed by respiratory disorders 153(29.6%), neurologic disorders 133(25.7%), and infectious disorders 59(11.4%). However, none of the comorbidities didn’t show a significant association with 60 days of mortality (P>0.05). The majority of 278(53.8%) of patients admitted to ICU were on a mechanical ventilator where 187(67.3%) of them died during follow up. One-hundred eighty-five patients were on inotropes while 236(45.6%) of them were on a fluid challenge. All patients admitted to ICU experienced at least one complication during ICU stay. One hundred twenty-five sustained cardiac arrest and 102(81.6%) of them in time during follow up while 15(2.9%) had aspiration and from which 11(73.3%) of them died. The median and IQR of the length of ICU stay was 5(0.2- 40) days where the minimum and Maximum ICU stays were 4 hours to 40 days respectively. The median survival time for patients with cardiac arrest was approximately seven days as compared to those who didn’t where the median time of survival was more than 15 days (Fig 3). The incidence rate of mortality among ICU patients was 46.8 % (Table 2). The mortality of patients in ICU among admission categories was the highest in gynecology/obstetrics followed by other and surgical categories (Fig 2).

 

Table 2: prevalence of comorbidities, Intervention, complication, and outcomes of patients admitted to Teaching Referral Hospitals’ ICUs in Southern Ethiopia, June 2018 to May 2020.

Characteristics

All admissions

(n=517)

survivors (n=275)

Non-survivors

(n=242)

P-value

Comorbidities, n (%)

Cardiovascular disease

Respiratory disease

Renal disease

Infectious disease

Neurological disease

Endocrine disease

Gastrointestinal

Hematological disease

Rheumatic disease

Others

 

183(35.4)

153(29.6)

31(6.0)

59(11.4)

133(25.7)

29(5.6)

35(6.8)

27(5.2)

5(1.0)

30(5.8)

 

97(53.0)

79(51.6)

15(48.4)

25(42.4)

77(57.9)

15(51.7)

16(45.7)

14(51.9)

3(60.0)

15(50.0)

 

86(47.0)

74(48.4)

16(51.6)

34(57.6)

56(42.1)

14(48.3)

19(54.3)

13(48.1)

2(40.0)

15(50.0)

 

 

 

 

>0.05

Intervention

Mechanical Ventilation

Inotropes

Vasopressors

Fluid

Blood Transfusion

Feeding

Surgery

GIT prophylaxis

Antibiotics

others

 

 

278(53.8)

185(35.8)

274(53.0)

236(45.6)

20(3.9)

78(15.1)

9(1.7)

35(6.8)

324(62.7)

248(48.0)

 

91(32.7)

86(46.5)

145(52.9)

123(25.1)

8(40.0)

38(48.7)

5(55.6)

16(45.7)

142(43.8)

139(56.0)

 

187(67.3)

99(53.5)

129(47.1)

113(47.9)

12(60.0)

40(51.3)

4(44.4)

19(54.3)

51(56.2)

109(44.0)

 

<0.0001**

 0.027*

>0.05

>0.05

>0.05

>0.05

>0.05

>0.05

<0.05*

<0.0001**

Complications

Cardiac arrest

Anemia

Arrhythmia

Infection

Hypotension

Hypertension

Aspiration

 

125()24.2)

177(34.2)

43(8.3)

99()19.1

332(64.2)

94(18.2)

15(2.9)

 

23(18.4)

93(52.5)

24(55.8)

44(44.4)

176(53.0)

54(57.4)

4(26.7)

 

102(81.6)

84(47.5)

19(44.2)

55(55.6)

156(47.0)

40(42.6)

11(73.3)

 

<0.0001**

>0.05

>0.05

0.034*

>0.05

>0.05

0.033*

Note: ** very significant; *significant; ARDS: Acute Respiratory Distress Syndrome; PSO2: percutaneous oxygen saturation

 

Determinants of ICU mortality

The variables showing a p-value of less than 0.25 in bivariate analysis were entered in multivariate analysis with a forward selection method as the explanatory variables were more than fifteen. The model fitness was estimated with Pearson chi-square statistics(X2=282, DF =9, p=0.0001) and Pseudo R2 = 0.561 and insignificant Hosmer –Lemeshow goodness of fit (p= .412). Fifty-six percent of the variation of ICU mortality was explained by the independent variables entered in the final regression model and the rest forty-four percent of the variation may be due to chance or other factors.

The variables that showed a significant difference in multivariate analysis were cardiac arrest, GCS score, aspiration, antibiotic use, mechanical ventilation, hypoxia, infection, and ICU length of stay. The multivariate analysis revealed that Patients who sustained cardiac arrest in ICU were approximately 12 times more likely to die as compared to those who didn’t have a cardiac arrest, OR=11.9(95% confidence interval(CI): 6.1 to 23.2). The Multivariate analysis also showed that patients whose GCS score less than eight were 8 times more likely to die, OR=8.2(95% confidence interval(CI): 2.7 to 25.5) (Table 3).

 

Table 3: Bivariate and multivariate analysis of 30-days mortality among patients admitted to ICU in Southern Ethiopia Teaching referral hospitals (N=517), 2020.

Variables

All admission

 (n=517)

Survivors (n=275)

Non-survivors

(n=242)

COR(95% CI)

AOR(95% CI)

Cardiac arrest, n (%)

125(24.2)

102(81.6)

23(18.4)

7.9[4.9, 13.1]

11.9(6.1, 23.2)***

Antibiotics(yes),

192(37.3)

51(26.4)

142(73.6)

3.9[2.7, 5.9]

5.7(3.2, 10.2)***

Aspiration(yes)

15(2.9)

11(73.3)

4(26.7)

3.2[1.0, 10.3]

5.6(1.1, 29.4)

Infection(yes)

99(19.1)

55(55.6)

44(44.4)

1.5[0.9, 2.4]

3.1(1.6, 5.9)**

MV(yes)

278(53.8)

187(67.3)

91(32.7)

6.9[4.6, 10.2]

5.8(3.3, 10.3)***

Hypoxia (Ps02 <90)

325(62.9)

184(56.6)

141(43.4)

3.0[2.1,4.4]

1.9(1.1, 3.3)

GCS

below 8

9 to 12

Above 12

 

275(53.2)

196(37.9)

46(8.9)

 

184(66.9) 51(26.0)

7(37.0)

 

91(33.1)

145(74.0)

39(63.0)

 

11.3[4.8, 26.2] 1.9[0.83, 4.7]

Ref

 

8.2(2.7, 25.5)**

1.9(0.6, 6.1)

Ref

Septic shock(yes)

30(5.8)

8(26.7)

22(73.3)

0.3[0.13, 0.7]

0.6(0.2, 2.0)

ICU LOS

< 1 week

1 to 2 weeks

> 2 weeks

 

383(74.1)

85(16.4)

49(9.5)

 

202(52.7)

27(31.8)

36(73.5)

 

181(47.3)

58(68.2)

13()

 

Ref

1.3[0.6,2.8]

3.1[1.6,6.0]

 

Ref

1.5(0.6, 4.1)

8.7(3.6, 20.1)***

Note: ***: very significant (p-value <0.000; **: significant (p-value <0.0001); ICU LOS: Intensive Care Unit Length of stay; MV: Mechanical Ventilation; Ps02: Percutaneous Oxygen saturation; Ref: reference; GCS: Glasgow Coma Scale

Discussion

This multi-center observational study revealed that the majority of patients admitted to ICU were female and younger productive age groups, 19 to 39 years old which are in line with other studies conducted in Sub-Saharan African countries [6, 19, 28, 32, 38, 41, 46]. The possible explanation for this difference in this age group in low-income countries might be due to engagement in violence, road traffic accident and relatively educated with high health-seeking behavior. On the contrary, the rate of admission to ICU in developed nations was among older patients that might be due to a sedentary lifestyle and high prevalence of the non-communicable disease among these patients [23, 27, 33, 35].

The commonest causes of ICU admissions in our study were cardiovascular and respiratory disorders which are comparable with studies conducted globally [2, 6, 20, 28, 32, 45, 48, 49, 52, 53, 56, 58]. However, there are discrepancies on the causes of admission to intensive care unit where studies conducted in Kenya, Tanzania, Uganda, Nigeria revealed postoperative events were the major causes of Admission[38, 41, 54] while studies were done from Jimma University referral hospital and Addis Ababa Black Lion hospital was due to trauma[46, 53]. An international study from six continents including 10069 patients and another study from Belgium and the UK showed that the major causes of admission were cardiovascular and respiratory disease [20, 40, 45]. This difference may be explained by the types of ICU, level of care of the hospital, types of study design, and socio-demographic characteristics of the population.

This study revealed that the majority of patients were hypotensive, septic, comatose, and hypoxemic with unstable vital signs which were strongly associated with 30-days ICU mortality. In our study, more than fifty percent of patients were on a mechanical ventilator and from which more than sixty percent of died during follow up. This high rate of mortality in patients with mechanical ventilator may be related to a frequent power cut, improper nursing care as they were not trained formally, lack of medication, malnutrition as there was no standard nutrition supplement, and ventilator-associated complications.

The overall ICU mortality rate of this study was higher than studies done in a different region of Ethiopia such as Addis Ababa (39%), Gondar (38.7%), Jimma (37.7%), Mekelle (27%) [32, 46, 59, 60] and other studies conducted in sub-Saharan Africa namely: Nigeria (34.6%), Uganda (40.1%), and Tanzania (41.1%) [38, 41, 61]). On the other hand, it is lower than studies conducted in Jimma (50.4%), National Hospital of Abuja (68.4%), and Burkina Faso 60% [62-64]. This discrepancy might be due to differences in sample size, level of ICU care, availability of medical supplies, and stratification of skilled staff.

In this study, cardiac arrest, aspiration, being on a mechanical ventilator, hypoxemia at admission and low GCS, and the use of antibiotics and length of stay were independent predictors of mortality. This study revealed that patients who sustained cardiac arrest were approximately 12 times more likely to die as compared to those who didn’t, AOR=11.9(95% CI:6.1 to 23.2). This high risk of death might be related to inadequate resuscitation drugs and equipment, lack of well-trained staff in advanced cardiac life support (ACLS), inappropriate post-cardiac arrest care, and compliance with ACLS protocol.

The study also revealed that patients with aspiration were 5.6 times more likely to die, AOR=5.6(95% CI: 1.1. to 29.4) and patients on antibiotics for a prolonged period were still 5.7 times more likely to die as compared to those who didn’t have, AOR= 5.7(95% CI: 3.2 to 10.2) which was in line with an observational and systematic review[33, 47, 65, 66]. The possible explanation might be the rapid emergence and dissemination of antimicrobial-resistant microorganisms, administering unnecessary broad-spectrum antibiotics, and undue antibiotics for a prolonged period.

Limitation of the study

This is a multi-center observational study with more than one month follow up and a relatively large sample size. However, this study is not without limitations. The nature of data handling management, unavailability of biochemical tests to determine the severity and prognostic score such as acute physiologic and chronic health evaluation (APACHE), sequential organ failure assessment (SOFA), Simplified Acute Physiology Score (SAPS) was the possible limitations.

Political implication

This multi-center observational study revealed that the overall mortality rate in ICU was very high as compared to other studies in Ethiopia as well as globally. The main independent predictors of mortality were traced and this entails a rigorous activity from different stakeholders. The majority of predictors could be prevented by availing emergency drugs for management of shock, cardiac arrest, aspiration, intracranial hypertension, arrhythmia, pain management, and sedation; integrative patient monitors as most of the monitors were not functional; training of ICU nurse because most of the nurses didn’t have formal intensive care training; provision of adequate calories; availing bedside tests including portable X-ray, ultrasound, and biochemical tests.

The implication for further research

It has been known that retrospective study has its limitations as some important parameters may not be available. Besides, we didn’t assess the severity and prognostic scores due to the unavailability of biochemical tests in some centers. Therefore, a multi-center prospective cohort study is in demand.

Conclusion

The overall ICU mortality rate was very high. The majority of independent predictors were cardiac arrest, aspiration, infection, unstable vital signs at admission, and being on a mechanical ventilator which could be minimized by implementing appropriate ICU care with a set of guidelines and protocols.

Abbreviations

APACHE: Acute Physiologic and Chronic Health Evaluation; AOR: Adjusted Odds Ratio; ACLS: advanced cardiac life support; ARDS: Acute Respiratory Distress Syndrome; BMI: Body Mass Index; CI: Confidence Interval; CT: Computerized Tomography; DURH: Dilla University referral hospital; GCS: Glasgow Coma Scale; HURH: Hawassa university referral hospital; ICU: Intensive Care Unit; IRB: Institutional Review Board; IQR: Inter Quartile e Range; LOS: Length of Stay; SAPS: Simplified Acute Physiology Score; SD: Standard Deviation; SOFA: Sequential Organ Failure Assessment; STROBE: Strengthening the Reporting of Observational Studies in Epidemiology; WURH: Wolaita Sodo referral hospital

Declarations

Ethics approval and consent to participate

 Ethical clearance and approval were obtained from the ethical review board of the College of Health Science and Medicine.

Consent for publication

Not applicable

Availability of data and materials

Data and material can be available where appropriate.

Competing interests

The authors declare that there are no competing interests

Funding

This research was funded a total of USD 833 by Dilla University postgraduate program.

Authors’ contribution

MY conceived the idea, design the research, and collect the data. SA and SA perform the analysis and supervise the research project. All authors read and approved the final manuscript

Acknowledgements

The authors would like to acknowledge Dilla University for financial and technical support encouragement to carry out the project.

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