Exploration of Sex and Age-Based Associations in Clinical Characteristics, Predictors of Severity, and Duration of Stay among COVID-19 Patients at the University Hospital of Saudi Arabia
Abstract
:1. Introduction
1.1. Objectives of the Study
1.1.1. Aim of the Study
1.1.2. Specific Objectives
- To assess the severity of different symptoms and signs of COVID-19 disease that developed in patients.
- To investigate the differences in clinical variables with age, sex, and different co-morbidities.
- To compare the outcome of COVID-19 patients by severity levels.
- To assess the predictors of severity and duration of hospital stay (DoHS).
2. Materials and Methods
2.1. Study Design and Setting
2.2. Population
2.3. Institutional Ethical Approval
2.4. Data Collection
2.5. Data Management and Analysis Plan
3. Results
3.1. Age and Sex
3.2. Clinical Characteristics of COVID-19 among Study Participants
3.3. A. Different Age Groups
3.4. B. Sex-Based Differences
3.5. Co-Morbidities in the Study Participants
3.6. A. Different Age Groups
3.7. B. Sex-Based Differences
3.8. The Severity of COVID-19
3.9. Predictors of Severity and Duration of Hospital Stay (DoHS)
3.10. The Outcome of COVID-19 Patients with Severity Level, Age, and Sex
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Asymptomatic | Mild COVID-19 | Moderate COVID-19 | Severe COVID-19 | |
---|---|---|---|---|
Severe Cases | Critical Cases | |||
COVID-19 PCR + ve, no symptoms | Symptoms (fever, cough, myalgia), RR < 24, SPo2 > 94% in room air, no pneumonia | Symptoms with shortness of breath, RR 24–30, SPo2 90–94 in room air, pneumonia | Pneumonia plus any one of the following: RR > 30, SPo2 < 90 in room air, severe respiratory distress, requiring respiratory support | ARDS, respiratory failure requiring ventilation support, sepsis, septic shock, MODS |
Clinical Characteristics | N | Percentage |
---|---|---|
Fever | 247 | 55.76% |
Cough | 236 | 53.27% |
Dyspnea | 168 | 37.92% |
Headache | 99 | 22.35% |
Nausea/Vomiting | 76 | 17.16% |
Myalgia | 86 | 19.41% |
Diarrhea | 90 | 20.32% |
Ageusia | 28 | 6.32% |
Abdominal pain | 36 | 8.13% |
Arthralgia | 11 | 2.48% |
Anosmia | 15 | 3.39% |
Symptoms | Age Groups (Years) | Sex | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
18–29 | 30–39 | 40–49 | 50–59 | 60–69 | 70–79 | 80 and Above | p-Value | Female % | Male % | p-Value | |
Fever | <0.0001 **** | 0.0103 * | |||||||||
Yes | 8.80% | 9.03% | 11.51% | 9.03% | 10.38% | 4.97% | 2.03% | 51.38% | 64.05% | ||
No | 11.06% | 14.00% | 7.45% | 3.84% | 4.29% | 2.48% | 1.13% | 48.62% | 35.95% | ||
Cough | <0.0001 **** | 0.3679 | |||||||||
Yes | 8.35% | 8.35% | 10.84% | 9.48% | 9.48% | 4.97% | 1.81% | 51.72% | 56.21% | ||
No | 11.51% | 14.67% | 8.13% | 3.39% | 5.19% | 2.48% | 1.35% | 48.28% | 43.79% | ||
Dyspnea | <0.0001 **** | 0.4136 | |||||||||
Yes | 3.61% | 6.09% | 7.45% | 7.45% | 8.80% | 3.16% | 1.35% | 36.55% | 40.52% | ||
No | 16.25% | 16.93% | 11.51% | 5.42% | 5.87% | 4.29% | 1.81% | 63.45% | 59.48% | ||
Headache | 0.09 | 0.1329 | |||||||||
Yes | 6.09% | 5.42% | 3.39% | 3.16% | 3.39% | 0.68% | 0.23% | 24.48% | 18.30% | ||
No | 13.77% | 17.61% | 15.58% | 9.71% | 11.29% | 6.77% | 2.93% | 75.52% | 81.70% | ||
Nausea/Vomiting | 0.058 | 0.8424 | |||||||||
Yes | 3.61% | 2.48% | 3.84% | 2.93% | 3.61% | 0.45% | 0.23% | 16.90% | 17.65% | ||
No | 16.25% | 20.54% | 15.12% | 9.93% | 11.06% | 7.00% | 2.93% | 83.10% | 82.35% | ||
Myalgia | 0.438 | 0.2299 | |||||||||
Yes | 2.48% | 4.06% | 4.06% | 3.39% | 3.39% | 1.58% | 0.45% | 21.03% | 16.34% | ||
No | 17.38% | 18.96% | 14.90% | 9.48% | 11.29% | 5.87% | 2.71% | 78.97% | 83.66% | ||
Diarrhoea | 0.180 | 0.9834 | |||||||||
Yes | 4.06% | 3.16% | 5.64% | 3.16% | 2.71% | 1.13% | 0.45% | 20.34% | 20.26% | ||
No | 15.80% | 19.86% | 13.32% | 9.71% | 11.96% | 6.32% | 2.71% | 79.66% | 79.74% | ||
Ageusia | 0.006 ** | 0.3459 | |||||||||
Yes | 1.58% | 2.26% | 2.03% | 0.23% | 0.00% | 0.23% | 0.00% | 5.52% | 7.84% | ||
No | 18.28% | 20.77% | 16.93% | 12.64% | 14.67% | 7.22% | 3.16% | 94.48% | 92.16% | ||
Abdominal pain | 0.025 * | 0.0937 | |||||||||
Yes | 2.48% | 1.81% | 2.03% | 0.00% | 1.13% | 0.23% | 0.45% | 9.66% | 5.23% | ||
No | 17.38% | 21.22% | 16.93% | 12.87% | 13.54% | 7.22% | 2.71% | 90.34% | 94.77% | ||
Anosmia | 0.212 | 0.5056 | |||||||||
Yes | 0.45% | 1.58% | 0.90% | 0.23% | 0.23% | 0.00% | 0.00% | 3.79% | 2.61% | ||
No | 19.41% | 21.44% | 18.06% | 12.64% | 14.45% | 7.45% | 3.16% | 96.21% | 97.39% | ||
Arthralgia | 0.550 | 0.1697 | |||||||||
Yes | 0.45% | 0.90% | 0.23% | 0.23% | 0.68% | 0.00% | 0.00% | 1.72% | 3.92% | ||
No | 19.41% | 22.12% | 18.74% | 12.64% | 14.00% | 7.45% | 3.16% | 98.28% | 96.08% |
Co-Morbidities | Age Groups (Years) | Sex | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
18–29 | 30–39 | 40–49 | 50–59 | 60–69 | 70–79 | 80 and Above | p-Value | Female % | Male % | p-Value | |
Diabetes | <0.0001 **** | ||||||||||
Yes | 1.13% | 1.81% | 4.51% | 5.64% | 7.67% | 4.74% | 2.03% | 25.17% | 32.03% | 0.1272 | |
No | 18.74% | 21.22% | 14.45% | 7.22% | 7.00% | 2.71% | 1.13% | 74.83% | 67.97% | ||
Hypertension | <0.0001 **** | 0.0119 * | |||||||||
Yes | 0.68% | 0.68% | 4.29% | 4.51% | 8.80% | 5.42% | 2.26% | 22.76% | 33.99% | ||
No | 19.19% | 22.35% | 14.67% | 8.35% | 5.87% | 2.03% | 0.90% | 77.24% | 66.01% | ||
Asthma and any other respiratory disorders | 0.1663 | 0.3063 | |||||||||
Yes | 2.48% | 4.97% | 2.71% | 1.35% | 1.35% | 0.45% | 0.68% | 12.76% | 16.34% | ||
No | 17.38% | 18.06% | 16.25% | 11.51% | 13.32% | 7.00% | 2.48% | 87.24% | 83.66% | ||
Obesity | 0.102 | 0.0467 * | |||||||||
Yes | 6.55% | 10.16% | 9.26% | 7.45% | 8.13% | 4.06% | 0.68% | 52.76% | 33.99% | ||
No | 13.32% | 12.87% | 9.71% | 5.42% | 6.55% | 3.39% | 2.48% | 47.24% | 66.01% | ||
CVD | <0.0001 **** | 0.0467 * | |||||||||
Yes | 0.00% | 0.45% | 1.13% | 1.13% | 2.48% | 2.26% | 0.68% | 6.21% | 11.76% | ||
No | 19.86% | 22.57% | 17.83% | 11.74% | 12.19% | 5.19% | 2.48% | 93.79% | 88.24% | ||
Renal disease | 0.6263 | 0.1933 | |||||||||
Yes | 0.45% | 0.23% | 0.23% | 0.45% | 0.45% | 0.00% | 0.23% | 1.38% | 3.27% | ||
No | 19.41% | 22.80% | 18.74% | 12.42% | 14.22% | 7.45% | 2.93% | 98.62% | 96.73% | ||
Stroke | 0.2038 | 0.3252 | |||||||||
Yes | 0.23% | 0.00% | 0.00% | 0.23% | 0.45% | 0.23% | 0.23% | 1.72% | 0.65% | ||
No | 19.64% | 23.02% | 18.96% | 12.64% | 14.22% | 7.22% | 2.93% | 98.28% | 99.35% | ||
Vitamin D deficiency | 0.2782 | 0.0235 * | |||||||||
Yes | 0.23% | 0.45% | 0.00% | 0.00% | 0.23% | 0.45% | 0.00% | 2.07% | 0.00% | ||
No | 19.64% | 22.57% | 18.96% | 12.87% | 14.45% | 7.00% | 3.16% | 97.93% | 100.00% | ||
Hematological disorders | 0.7098 | 0.3623 | |||||||||
Yes | 1.13% | 0.45% | 0.45% | 0.45% | 0.23% | 0.23% | 0.00% | 3.45% | 1.96% | ||
No | 18.74% | 22.57% | 18.51% | 12.42% | 14.45% | 7.22% | 3.16% | 96.55% | 98.04% | ||
Hypothyroidism | 0.0481 * | 0.0448 * | |||||||||
Yes | 0.45% | 1.81% | 2.48% | 1.58% | 2.03% | 0.23% | 0.23% | 10.69% | 5.23% | ||
No | 19.41% | 21.22% | 16.48% | 11.29% | 12.64% | 7.22% | 2.93% | 89.31% | 94.77% | ||
Hyperthyroidism | 0.7658 | 0.357 | |||||||||
Yes | 0.00% | 0.00% | 0.23% | 0.00% | 0.00% | 0.00% | 0.00% | 0.34% | 0.00% | ||
No | 19.86% | 23.02% | 18.74% | 12.87% | 14.67% | 7.45% | 3.16% | 99.66% | 100.00% |
Parameters | Age Groups (Years) | Sex | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
18–29 | 30–39 | 40–49 | 50–59 | 60–69 | 70–79 | 80 and Above | p-Value | Female % | Male % | p-Value | |
Required O2 on arrival | <0.0001 **** | 0.0081 * | |||||||||
Yes | 1.13% | 1.35% | 4.06% | 2.71% | 4.97% | 2.48% | 1.35% | 14.48% | 24.84% | ||
No | 18.74% | 21.67% | 14.90% | 10.16% | 9.71% | 4.97% | 1.81% | 85.52% | 75.16% | ||
Systemic IV steroids | <0.0001 **** | 0.0294 * | |||||||||
Yes | 1.35% | 3.39% | 4.97% | 4.74% | 6.32% | 3.16% | 1.81% | 22.41% | 32.03% | ||
No | 18.51% | 19.64% | 14.00% | 8.13% | 8.35% | 4.29% | 1.35% | 77.59% | 67.97% | ||
Transferred to ICU | <0.0001 **** | 0.0417 * | |||||||||
Yes | 0.90% | 0.90% | 3.39% | 2.26% | 3.61% | 2.48% | 0.68% | 11.72% | 18.95% | ||
No | 18.96% | 22.12% | 15.58% | 10.61% | 11.06% | 4.97% | 2.48% | 88.28% | 81.05% | ||
Required intubation | 0.0024 ** | 0.0609 | |||||||||
Yes | 0.00% | 0.23% | 0.90% | 0.68% | 1.13% | 1.13% | 0.00% | 2.76% | 6.58% | ||
No | 19.91% | 22.85% | 17.87% | 12.22% | 13.57% | 6.33% | 3.17% | 97.24% | 93.42% | ||
Home isolation | 2.26% | 3.61% | 3.16% | 0.23% | 0.68% | 0.45% | 0.00% | 0.0037 ** | 11.38% | 8.50% | 0.3373 |
A | |||
---|---|---|---|
Clinical Parameters | Severity of Disease | ||
Mild % | Severe % | p-Value | |
I. Symptoms | |||
Fever | 45.1 | 75.16 | <0.0001 **** |
Cough | 41.26 | 75.16 | <0.0001 **** |
Dyspnea | 24.83 | 61.78 | <0.0001 **** |
Headache | 24.48 | 18.47 | 0.1424 |
Nausea/Vomiting | 15.73 | 19.75 | 0.2879 |
Myalgia | 17.83 | 22.29 | 0.2597 |
Diarrhea | 17.13 | 26.11 | 0.0264 * |
Ageusia | 8.39 | 2.55 | 0.0096 ** |
Abdominal pain | 9.09 | 6.37 | 0.3075 |
Arthralgia | 3.15 | 1.27 | 0.2016 |
Anosmia | 3.5 | 3.18 | 0.8616 |
II. Co-morbidities | |||
Diabetes | 21.51 | 40.4 | <0.0001 **** |
Hypertension | 45.22 | 54.78 | <0.0001 **** |
Asthma and any other RS disorders | 12.54 | 16.56 | 0.2567 |
Obesity | 44.8 | 50.33 | 0.2729 |
Cardiovascular disease (MI, CHF, others) | 3.94 | 15.23 | <0.0001 **** |
Renal disease | 2.15 | 1.99 | 0.9095 |
Cancer/leukemia | 0.00% | 0.00% | |
Stroke | 1.08 | 1.99 | 0.4523 |
Vitamin D deficiency | 1.79 | 0.66 | 0.3114 |
Hematological disorders | 3.58 | 0.66 | 0.067 |
Hypothyroidism | 7.53 | 10.6 | 0.2851 |
Hyperthyroidism | 0.36 | 0.00% | 0.352 |
B | |||
Mild | Severe | p-Value | |
I. Age Groups (Years) | |||
18–29 | 27.27% (78) | 6.37% (10) | <0.0001 **** |
30–39 | 29.37% (84) | 11.46% (18) | |
40–49 | 16.78% (48) | 22.93% (46) | |
50–59 | 10.49% (30) | 17.20% (27) | |
60–69 | 9.79% (28) | 23.57% (37) | |
70–79 | 5.24% (15) | 11.46% (18) | |
80 and Above | 1.05% (3) | 7.01% (11) | |
II. Gender | |||
Female | 70.98% | 55.41% | 0.0011 ** |
Male | 29.02% | 44.59% | |
C | |||
Parameters | Severity of Disease | ||
Mild % | Severe % | p-Value | |
Home isolation | 12.59 | 6.37 | 0.0336 * |
Required O2 on arrival | 3.5 | 44.59 | <0.0001 **** |
Transferred to ICU | 0.7 | 38.85 | <0.0001 **** |
Required intubation | 0.35 | 10.9 | <0.0001 **** |
Chest X-ray: pneumonia | 23.78 | 92.99 | <0.0001 **** |
Systemic IV steroids | 11.89 | 50.96 | <0.0001 **** |
Systemic oral steroids | 22.93 | 6.64 | <0.0001 **** |
Level1 | Level2 | Odds Ratio | Lower 95% | Upper 95% | Prob > Chisq | |
---|---|---|---|---|---|---|
Sex | Male | Female | 1.49 | 0.74 | 2.98 | 0.26 |
Required O2 on arrival | Yes | No | 7.89 | 2.64 | 23.60 | 0.0002 *** |
Transferred to ICU | Yes | No | 26.01 | 3.52 | 192.32 | 0.0014 ** |
Diabetes | Yes | No | 0.88 | 0.39 | 1.96 | 0.75 |
Hypertension | Yes | No | 0.79 | 0.33 | 1.86 | 0.58 |
Asthma and any other respiratory disorders | Yes | No | 2.40 | 0.95 | 6.06 | 0.06 |
CVD (MI, CHF, others) | Yes | No | 3.37 | 1.04 | 10.89 | 0.0425 * |
Renal disease | Yes | No | 0.14 | 0.01 | 4.13 | 0.26 |
Stroke | Yes | No | 20.52 | 1.29 | 326.53 | 0.0324 * |
Hematological disorders | Yes | No | 0.21 | 0.01 | 5.62 | 0.35 |
Hypothyroidism | Yes | No | 1.15 | 0.37 | 3.56 | 0.80 |
Hyperthyroidism | Yes | No | 0.00 | 0.00 | 1.00 | |
Chest X-ray: Pneumonia | Yes | No | 27.90 | 11.63 | 66.96 | <0.0001 **** |
Duration of Hospital Stay | Standard Least Squares Method Estimates | |||||
---|---|---|---|---|---|---|
Term | Mean | Std ERROR | Estimate | Std Error | t Ratio | Prob > |t| |
Duration of hospital stay (days): maximum = 118, minimum = 1, mean = 9.72 ± 14.2 (SD), median = 6 | ||||||
Intercept | 24.493488 | 7.154958 | 3.42 | 0.0007 *** | ||
Systemic IV steroids | ||||||
No | 6.5915 | 7.1781791 | −1.756811 | 0.755274 | −2.33 | 0.0205 * |
Yes | 18.7281 | 7.2112043 | Reference | |||
Transferred to ICU | ||||||
No | 6.4316 | 7.2047820 | −6.417144 | 1.196474 | −5.36 | <0.0001 **** |
Yes | 29.8871 | 7.3034964 | Reference | |||
Required intubation | ||||||
No | 8.3420 | 7.1128093 | −5.656731 | 1.717231 | −3.29 | 0.0011 ** |
Yes | 42.2222 | 7.5955612 | Reference | |||
Cardiovascular disease (MI, CHF, others) | ||||||
No | 9.5074 | 7.0680036 | 2.1945388 | 1.082989 | 2.03 | 0.0434 * |
Yes | 12.1389 | 7.4010742 | Reference | |||
Stroke | ||||||
No | 9.5092 | 6.9696932 | −5.621868 | 2.442903 | −2.30 | 0.0219 * |
Yes | 25.1667 | 8.1083768 | Reference | |||
Severity of disease | ||||||
Asymptomatic | 5.5385 | 7.4129636 | −3.295884 | 1.507726 | −2.19 | 0.0294 * |
Mild | 5.5577 | 7.2660448 | −3.364786 | 1.06918 | −3.15 | 0.0018 ** |
Moderate | 11.2455 | 7.2969359 | −1.7349 | 1.191134 | −1.46 | 0.1460 |
Severe | 32.0000 | 7.2273743 | Reference |
Outcome | 18–29 | 30–39 | 40–49 | 50–59 | 60–69 | 70–79 | 80 and Above | Total | p-Value |
---|---|---|---|---|---|---|---|---|---|
Cured and discharged | 85 | 99 | 80 | 55 | 60 | 28 | 12 | 419 | 0.0013 ** |
100% | 100% | 98.77% | 98.21% | 95.24% | 87.50% | 85.71% | |||
Death | 0 | 0 | 1 | 1 | 3 | 4 | 2 | 11 | |
0% | 0% | 1.23% | 1.79% | 4.76% | 12.50% | 14.29% | |||
Total | 85 | 99 | 81 | 56 | 63 | 32 | 14 | 430 |
Parameters | Main Results of Current Study | Results of Previous Studies | New Contributions/Important Highlights of Current Study | |
---|---|---|---|---|
Clinical characteristics | Fever | Most frequent symptoms | Similar results seen [30,31,32,33] | Statistically more commonly in older patients of age groups 60–69 years, 70–79 years, and 80 years old and more compared to younger groups. |
Cough | ||||
Dyspnea | ||||
Ageusia | Other symptoms found | Nonspecific symptoms | Statistically higher in younger age groups than in older patients. | |
Abdominal pain | ||||
Co-morbidities | Diabetes | Most frequent co-morbidities | Diabetes and HTN were the most common co-morbid conditions [22,39] | a. More 60–69 years older patients had statistically higher HTN, DM, CHF, and hypothyroidism. b. Diabetes and HTN were common in ages 70–79 years, 50–59 years, and 40–49 years. In contrast, asthma and other respiratory disorders were comparatively higher in the younger age group of 30–39 years. c. More males suffered HTN and cardiovascular disease, while obesity, hypothyroidism, and vitamin D deficiencies were comparatively higher in females. |
Hypertension | ||||
Asthma/respiratory disorders | ||||
Predictors of severity | Pneumonia on chest X-ray | Statistically significant differences found for pneumonia, CVD, stroke, ICU, and mechanical ventilation | Older age, male sex, and presence of co-morbidities associated with severe disease at admission [22] | a. The age groups of 70–79 years and 60–69 years required intubation, which was statistically significant compared to younger patients. b. A higher percentage of males were given oxygen support on arrival and treated with systemic steroids. c. Age groups 70–79 years and 80 and above were significantly associated with in-hospital mortality. d. Nearly 55.67% of “70–79 years” and the majority of “80 and above” were suffering severe disease at the time of admission, and nearly 15% of each group succumbed to the disease. |
Co-morbid conditions such as CVD, stroke | ||||
ICU stay | ||||
Mechanical ventilation | ||||
Length of hospital stay | The median period of hospital stay was six days | Similar results seen [49] | It was significantly longer in patients with severe disease who needed oxygen support or mechanical ventilation, as expected, and also longer in patients with CVD or stroke and administered systemic intravenous steroids. |
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Assiri, R.A.; Bepari, A.; Patel, W.; Hussain, S.A.; Niazi, S.K.; Alshangiti, A.; Alshangiti, S.A.; Cordero, M.A.W.; Sheereen, S. Exploration of Sex and Age-Based Associations in Clinical Characteristics, Predictors of Severity, and Duration of Stay among COVID-19 Patients at the University Hospital of Saudi Arabia. Healthcare 2023, 11, 751. https://doi.org/10.3390/healthcare11050751
Assiri RA, Bepari A, Patel W, Hussain SA, Niazi SK, Alshangiti A, Alshangiti SA, Cordero MAW, Sheereen S. Exploration of Sex and Age-Based Associations in Clinical Characteristics, Predictors of Severity, and Duration of Stay among COVID-19 Patients at the University Hospital of Saudi Arabia. Healthcare. 2023; 11(5):751. https://doi.org/10.3390/healthcare11050751
Chicago/Turabian StyleAssiri, Rasha Assad, Asmatanzeem Bepari, Waseemoddin Patel, Syed Arif Hussain, Shaik Kalimulla Niazi, Asma Alshangiti, Safia Ali Alshangiti, Mary Anne Wong Cordero, and Shazima Sheereen. 2023. "Exploration of Sex and Age-Based Associations in Clinical Characteristics, Predictors of Severity, and Duration of Stay among COVID-19 Patients at the University Hospital of Saudi Arabia" Healthcare 11, no. 5: 751. https://doi.org/10.3390/healthcare11050751
APA StyleAssiri, R. A., Bepari, A., Patel, W., Hussain, S. A., Niazi, S. K., Alshangiti, A., Alshangiti, S. A., Cordero, M. A. W., & Sheereen, S. (2023). Exploration of Sex and Age-Based Associations in Clinical Characteristics, Predictors of Severity, and Duration of Stay among COVID-19 Patients at the University Hospital of Saudi Arabia. Healthcare, 11(5), 751. https://doi.org/10.3390/healthcare11050751