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. 2021 May 7;9:631547. doi: 10.3389/fped.2021.631547

Epidemiological, Clinical, and Laboratory Features of Children With COVID-19 in Turkey

Adem Karbuz 1, Gulsen Akkoc 2, Tugba Bedir Demirdag 3,*, Dilek Yilmaz Ciftdogan 4, Arife Ozer 5, Deniz Cakir 6, Selda Hancerli Torun 7, Eda Kepenekli 8, Tugba Erat 9, Nazan Dalgic 10, Sare Ilbay 11, Ayse Karaaslan 12, Emine H Erdeniz 13, F Deniz Aygun 14, S Elmas Bozdemir 15, Nevin Hatipoglu 16, Melike Emiroglu 17, Zumrut Sahbudak Bal 18, Ergin Ciftci 19, Gulsum Iclal Bayhan 20, Zeynep Gokce Gayretli Aydin 21, Sevliya Ocal Demir 22, Omer Kilic 23, Mustafa Hacimustafaoglu 24, Dicle Sener Okur 25, Semra Sen 26, Aysun Yahsi 27, Hacer Akturk 28, Benhur Cetin 29, Murat Sutcu 30, Manolya Kara 31, Hatice Uygun 32, Tugce Tural Kara 33, Gulay Korukluoglu 34, Ozlem Akgun 35, Gülnihan Üstündağ 36, Mevsim Demir Mis 37, Enes Sali 6, Ozge Kaba 7, Nurhayat Yakut 8, Orhan Kılıc 38, M Kemal Kanik 10, Ceren Cetin 12, Adem Dursun 39, Muharrem Cicek 40, Esra Kockuzu 41, Esra Sevketoglu 42, Gulsum Alkan 17, Gizem Guner Ozenen 18, Erdal İnce 19, Zekiye Baydar 43, Ahmet Kagan Ozkaya 44, Husnu Fahri Ovali 45, Seher Tekeli 46, Solmaz Celebi 24, Birgul Cubukcu 47, Alkan Bal 48, Fidan Khalilova 49, Mehmet Kose 50, Halil Ugur Hatipoglu 51, Tahir Dalkiran 52, Mehmet Turgut 32, Ayse Basak Altas 34, Hatice Nilgün Selcuk Duru 35, Ahu Aksay 36, Sevcan Saglam 37, Mehpare Sari Yanartas 7, Zeynep Ergenc 8, Yasemin Akin 53, Yeter Duzenli Kar 39, Sabit Sahin 41, Sadiye Kubra Tuteroz 17, Nimet Melis Bilen 18, Halil Ozdemir 19, Mine Cidem Senoglu 43, Burcu Pariltan Kucukalioglu 54, Gulser Esen Besli 45, Yalcin Kara 46, Cansu Turan 24, Burcu Selbest Demirtas 47, Aydın Celikyurt 49, Yasemin Cosgun 34, Murat Elevli 35, Aslihan Sahin 36, Serife Bahtiyar Oguz 37, Ayper Somer 7, Bulent Karadag 55, Recep Demirhan 56, Hatice Turk Dagi 57, Zafer Kurugol 18, Esra Cakmak Taskin 19, Aysegul Sahiner 43, Edanur Yesil 24, Yildiz Ekemen Keles 36, Remzi Sarikaya 37, Ela Erdem Eralp 55, Ferda Ozkinay 18, Hatice Kubra Konca 19, Songul Yilmaz 43, Yasemin Gokdemir 55, Gul Arga 19, Seval Ozen 19, Fevziye Coksuer 19, Goksel Vatansever 58, Hasan Tezer 3, Ates Kara 11
PMCID: PMC8161543  PMID: 34055680

Abstract

Objectives: The aim of this study is to identify the epidemiological, clinical, and laboratory features of coronavirus disease 2019 (COVID-19) in children.

Methods: A retrospective study was conducted by pediatric infectious disease specialists from 32 different hospitals from all over Turkey by case record forms. Pediatric cases who were diagnosed as COVID-19 between March 16, 2020, and June 15, 2020 were included. Case characteristics including age, sex, dates of disease onset and diagnosis, family, and contact information were recorded. Clinical data, including the duration and severity of symptoms, were also collected. Laboratory parameters like biochemical tests and complete blood count, chest X-ray, and chest computed tomography (CT) were determined.

Results: There were 1,156 confirmed pediatric COVID-19 cases. In total, male cases constituted 50.3% (n = 582) and females constituted 49.7% (n = 574). The median age of the confirmed cases was 10.75 years (4.5–14.6). Of the total cases, 90 were younger than 1 year of age (7.8%), 108 were 1–3 years of age (9.3%), 148 were 3–6 years of age (12.8%), 298 were 6–12 years of age (25.8%), 233 were 12–15 years of age (20.2%), and 268 cases were older than 15 years of age (23.2%). The most common symptom of the patients at the first visit was fever (50.4%) (n = 583) for a median of 2 days (IQR: 1–3 days). Fever was median at 38.4°C (38.0–38.7°C). The second most common symptom was cough (n = 543, 46.9%). The other common symptoms were sore throat (n = 143, 12.4%), myalgia (n = 141, 12.2%), dyspnea (n = 118, 10.2%), diarrhea (n = 112, 9.7%), stomachache (n = 71, 6.1%), and nasal discharge (n = 63, 5.4%). When patients were classified according to disease severity, 263 (22.7%) patients were asymptomatic, 668 (57.7%) patients had mild disease, 209 (18.1%) had moderate disease, and 16 (1.5%) cases had severe disease. One hundred and forty-nine (12.9%) cases had underlying diseases among the total cases; 56% of the patients who had severe disease had an underlying condition (p < 0.01). The need for hospitalization did not differ between patients who had an underlying condition and those who do not have (p = 0.38), but the need for intensive care was higher in patients who had an underlying condition (p < 0.01). Forty-seven (31.5%) of the cases having underlying conditions had asthma or lung disease (38 of them had asthma).

Conclusions: To the best of our knowledge, this is one of the largest pediatric data about confirmed COVID-19 cases. Children from all ages appear to be susceptible to COVID-19, and there is a significant difference in symptomatology and laboratory findings by means of age distribution.

Keywords: COVID-19, pediatric, epidemiology, laboratory findings, disease severity

Introduction

At the end of January 2020, a new and unknown disease presenting with pneumonia and acute respiratory distress syndrome arose from China. In a few weeks, many different regions were affected globally, including the USA and Europe (1). The disease was named as coronavirus disease 2019 (COVID-19) because of the etiologic agent, which was a new coronavirus. By March 2020, COVID-19 was declared to reach a pandemic status (2). According to the latest data by the WHO, there are 98.3 million cumulative cases globally of which 4.1 million were reported by the end of January, and there are 2.1 million cumulative deaths of which 95,991 occurred by the end of January (3).

At the early stages of the outbreak, the disease was known to be more common among adults, and children were less susceptible to the disease and composed a very small part of the chart. Suggested reasons for this theory were having a more active innate immune response, healthier respiratory tracts (because of not being exposed to cigarette smoke and air pollution as compared with adults), virus–virus interaction and competition, age-related ACE-2 expression, and ADE mechanism with fewer underlying disorders (4, 5). Later on, the number of child infection cases has increased significantly. It is known that the majority of pediatric cases are asymptomatic or mild, but still some infected children may develop multisystem inflammatory syndrome (6).

While the incidence of MIS-C is uncertain, it appears to be a rare complication of COVID-19 in children.

Since then, it was confirmed that children were also at risk because of the difficulty in preventative and infection control measures (7). Besides, it was argued that children might become a spreader at the explosion phase of the outbreak (8).

On March 11, 2020, the first COVID-19 case was reported from Turkey, and cases increased gradually like in other parts of the world. Pediatric patients were also diagnosed and treated as much as adults. Despite the worldwide spread, the epidemiological and clinical patterns of COVID-19 in pediatric patients still remain largely unclear (9).

This report aims to identify the epidemiological characteristics and clinical findings in pediatric patients with the 2019 novel coronavirus disease in Turkey by May 1, 2020.

Materials and Methods

Data Acquisition

A retrospective study was conducted by pediatric infectious disease specialists from 32 different hospitals from all over Turkey by case record forms. Patients were diagnosed by pediatricians according to the guidelines developed by the Turkish Republic, Ministry of Health. Case definitions, either suspected or confirmed, (10).

Pediatric cases who were diagnosed as COVID-19 between March 16, 2020, and June 15, 2020 were included. Diagnosis was confirmed by nasopharyngeal and oropharyngeal polymerase chain reaction (PCR). After diagnosis, the clinical and laboratory data of cases were extracted from patient records and database. Case characteristics including age, sex, dates of disease onset and diagnosis, family, and contact information were recorded. Clinical data, including the duration and severity of symptoms, were also collected. Laboratory parameters like biochemical tests and complete blood count, chest X-ray, and chest computerized tomography (CT) were recorded.

Finally, respiratory support (if present) and the duration of hospitalization were also determined. Data were entered by the participating pediatric infectious disease specialists.

Definitions

Disease severity was defined based mainly on the clinical features and laboratory testing and, also if available, chest radiograph imaging and was classified as asymptomatic infection, mild, moderate, severe, or critical disease. The diagnostic criteria were as follows (9):

  • a- Asymptomatic infection: There was no clinical sign or symptom; the chest imaging results were normal, but the 2019-nCoV nucleic acid test result was positive.

  • b- Mild: There were symptoms of upper respiratory tract infection. Physical examination showed congestion of the pharynx and no auscultatory abnormalities.

  • c- Moderate: Patients with pneumonia, frequent fever, and cough were included; some had wheezing or rales. Cases who had no clinical signs and symptoms, but chest computed tomography showed subclinical lung lesions, were also included in this group.

  • d- Severe/critical: There was obvious hypoxemia and respiratory support (invasive or non-invasive) and intensive care are required.

Sampling and Molecular Analysis

Both nasopharyngeal and oropharyngeal swabs were collected from suspected cases as recommended by Turkish COVID-19 guidelines (10). Collected respiratory samples taken from COVID-19 suspicious cases in hospitals were delivered to laboratories using viral transport media for respiratory viruses and following the cold chain rules. Viral transport media were prepared as 2 ml viral transport medium (VTM; MEM) supplemented with penicillin–streptomycin, and bovine serum albumin (BSA) was added, vortexed, homogenized, and transferred to 2 ml volumes of cryovial tubes. Nasopharyngeal aspirate, nasal wash water, throat wash water, transtracheal aspiration, and bronchoalveolar lavage samples were transferred directly to the cryovial tubes.

The process of extraction was done using the Bio-Speedy® Viral Nucleic Acid Extraction Kit (Cat No. BS-N-109, Bioeks R&D Ltd., Turkey) and PCR was made by the PCR run Bio-Speedy® Covidien-19 RT-qPCR Detection Kit (Cat No. BS SY–WC-305, Bioeks R&D Ltd., Turkey). After extraction and PCR, Bio-Rad CFX96 Touch™ (Bio-Rad Laboratories, Inc., USA) was included in the real-time PCR instrument. In the evaluation of the results, the proliferation curves obtained in the FAM/HEX channels were examined. Non-sigmoidal curves were recorded as negative. In cases where positive negative and internal control values met appropriate criteria, when Ct <40, the result was considered positive.

Samples before March 20 were analyzed in the National Molecular Microbiology Reference Laboratory; after March 20, all samples were tested in each center's microbiology laboratory individually by the same standard method.

Statistical Analysis

The data were analyzed with SPSS (Statistical Package for the Social Sciences) 22.0 software (IBM SPSS Statistics, IBM Corporation). The numerical data were evaluated using visual (histograms, probability plots) and analytical methods (Kolmogorov–Smirnov test) to determine the distribution of normality. Median, range [interquartile range (IQR)], mean, standard deviation, number, and percentage were used as descriptive statistics, according to the normality of distribution.

Comparisons of categorical variables were made using the chi-square test. Comparisons of laboratory parameters between the two groups were made using t-test for independent samples or Mann–Whitney U test depending on the normality of distribution. The level of significance was considered as p < 0.05.

Results

Patient Demographics

There were 1,156 confirmed pediatric COVID-19 cases. In total, male cases constituted 50.3% (n = 582) and females constituted 49.7% (n = 574). The median age of the confirmed cases was 10.75 years (IQR: 4.5–14.6). Of the total cases, 90 were younger than 1 year of age (7.8%), 108 were 1–3 years of age (9.3%), 148 were 3–6 years of age (12.8%), 298 were 6–12 years of age (25.8%), 233 were 12–15 years of age (20.2%), and 268 cases were older than 15 years of age (23.2%). The age of 11 patients was not available. There were 893 patients who were symtomatic (77.2%). Among symptomatic cases, 81 (9.0%) were under 1 year of age and 217 of the cases (24.3%) were older than 15 years of age. The difference between age groups in case of symptom presence was statistically significant (p < 0.01).

Only 36 (3.1%) patients had a history of travel abroad (6 direct and 30 patients were housemates with people who had a history of travel). There was at least one COVID-19 case among family members of the 843 (75.2%) patients. Patient demographics and age distribution are shown in Table 1.

Table 1.

Patient Demographics.

Total Cases Symptomatic Cases
n % n %
Sex* Male 582 50.3 457 51.2
Female 574 49.7 436 48.8
Age groups* 0–1 year 90 7.8 81 9.0
1–3 years 108 9.3 87 9.7
3–6 years 148 12.8 117 13.1
6–12 years 298 25.8 220 24.6
12–15 years 233 20.2 169 18.9
>15 years 268 23.2 217 24.3
History of travel abroad (direct or indirect) * 1,104 96.9 870 97.1
+ 36 3.1 26 2.9
House-hold contact* 278 27.1 247 28.1
+ 843 72.9 631 71.9
One case 273 37.3 213 38.5
More than one case 457 62.7 340 61.5
Co-morbidities* None 982 86.8 759 86.1
Asthma/lung disease 47 4.1 41 4.6
Malignancy 9 0.7 5 0.5
Other immunosupressive situations 10 0.8 10 1.1
Other 83 7.6 66 7.7
*

There are missing data in laboratory data, therefore sum is not equal to total number of patients.

Clinical Findings

The most common symptom of the patients at the first visit was fever (50.4%) (n = 583) for a median of 2 days (IQR: 1–3 days). Fever was median at 38.4°C (38.0–38.7°C). The second most common symptom was cough (n = 543, 46.9%). The other common symptoms were sore throat (n = 143, 12.4%), myalgia (n = 141, 12.2%), dyspnea (n = 118, 10.2%), diarrhea (n = 112, 9.7%), stomachache (n = 71, 6.1%), and nasal discharge (n = 63, 5.4%). Symptoms and their duration are summarized in Table 2.

Table 2.

Clinical features.

N % Duration (median) (IQR)
Fever* + 583 50.4 2 (1–3)
<38.3°C 120
38.3–38.5°C 62
≥38.6°C 83
530 45.8
Cough* + 543 46.9 3 (2–4)
561 48.5
Myalgia* + 141 12.2 2 (2–3)
977 84.5
Dyspnea* + 118 10.2 2 (1–3)
1,011 87.4
Stomachache* + 71 6.1 3 (1-3)
1,046 90.5
Nasal discharge* + 63 5.4 2.5 (2–3)
1,062 91.8
Diarrhea* + 112 9.7 2 (1–3)
1,017 87.9
Sore throat* + 143 12.4 2 (1–3)
980 84.7
*

There are missing data in laboratory data, therefore sum is not equal to total number of patients.

Analyses of clinical symptoms based on sex revealed that fever was more common in males than in female cases (p < 0.01). Other symptoms did not differ according to sex (Tables 3, 4). Cough was more common in patients 6–12 years of age and fever was more common in patients older than 15 years of age (p < 0.01). Myalgia (43.6%) and diarrhea (21.3%) were more common in patients older than 15 years of age (p < 0.01). There was at least one family contact in 72.9% of the patients who had fever, in 65.8% of the patients who had diarrhea, and in 70.3% of the patients who had cough (p < 0.01). There was no difference between having one or more home-contact cases in case of symptoms and severity.

Table 3.

Comparison of symptoms and laboratory parameters by means of sex and age groups among total cases.

SEX (n/%) AGE GROUPS (year) (n/%) p
Male Female P 0–1 1–3 3–6 6–12 12–15 >15
Symptoms Fever* + 315
(56.6%)
268
(48.2%)
0.005 58
(69.9%)
76
(71.0%)
82
(57.3%)
145
(50.3%)
103
(45.8%)
118
(45.2%)
<0.001
242
(43.4%)
288
(51.2%)
25
(30.1%)
31
(29.0%)
61
(42.7%)
143
(49.7%)
122
(54.2%)
143
(54.8%)
Cough* + 271
(49.0%)
272
(49.3%)
0.9 50
(59.5%)
39
(37.5%)
67
(47.2%)
124
(42.4%)
115
(51.6%)
148
(58.5%)
<0.001
282
(51.0%)
279
(50.7%)
34
(40.5%)
65
(62.5%)
75
(52.8%)
168
(57.6%)
108
(48.4%)
105
(41.5%)
Nasal discharge* + 28
(5.0%)
35
(6.2%)
0.21 3
(3.5%)
15
(14.2%)
12
(8.2%)
9
(3.1%)
12
(5.3%)
12
(4.6%)
0.001
536
(95.0%)
526
(93.8%)
82
(96.5%)
91
(85.8%)
134
(91.8%)
284
(96.9%)
215
(94.7%)
250
(95.4%)
Myalgia* + 63
(11.2%)
78
(14.0%)
0.15 1
(1.3%)
4
(3.8%)
14
(9.7%)
24
(8.2%)
39
(17.1%)
59
(22.5%)
<0.001
499
(88.8%)
478
(86.0%)
77
(98.7%)
102
(96.2%)
131
(90.3%)
269
(91.8%)
189
(82.9%)
203
(77.5%)
Stomachache* + 36
(6.4%)
35
(6.3%)
0.51 3
(3.8%)
2
(1.9%)
11
(7.5%)
25
(8.5%)
13
(5.7%)
17
(6.5%)
0.19
526
(93.6%)
520
(93.7%)
75
(96.2%)
104
(98.1%)
135
(92.5%)
268
(91.5%)
215
(94.3%)
243
(93.5%)
Diarrhea* + 52
(9.2%)
60
(10.7%)
0.39 20
(23.3%)
13
(12%)
17
(13%)
15
(5.1%)
21
(9.6%)
23
(8.8%)
0.002
515
(90.8%)
502
(89.3%)
66
(76.7%)
95
(88%)
127
(87%)
278
(94.9%)
206
(90.4%)
239
(91.2%)
Dyspnea* + 57
(10.0%)
61
(10.9%)
0.64 20
(23%)
10
(9.3%)
9
(6.2%)
21
(7.2%)
16
(7%)
41
(15.6%)
<0.001
511
(90.0%)
500
(89.1%)
67
(77%)
98
(90.7%)
137
(93.8%)
272
(92.8%)
211
(93%)
221
(84.4%)
Lab Anemia + 41
(8.7%)
44
(9.2%)
0.77 26
(31%)
19
(20.7%)
13
(11.2%)
9
(3.8%)
9
(4.8%)
9
(4%)
<0.001
431
(91.3%)
435
(90.8%)
58
(69%)
73
(79.3%)
103
(88.8%)
229
(96.2%)
179
(95.2%)
218
(96%)
Leucopenia + 23
(4.8%)
44
(9.1%)
0.009 2
(2.3%)
2
(2.2%)
8
(6.8%)
13
(5.4%)
13
(6.9%)
28
(12.3%)
0.005
452
(95.2%)
437
(90.9%)
85
(97.7%)
90
(97.8%)
109
(93.2%)
226
(94.6%)
175
(93.1%)
199
(87.7%)
Lypmhopenia + 95
(20%)
143
(29.9%)
<0.001 5
(5.7%)
4
(4.4%)
20
(17.2%)
54
(22.8%)
55
(29.3%)
99
(43.6%)
<0.001
379
(80%)
336
(70.1%)
82
(94.3%)
88
(95.7%)
96
(82.8%)
183
(77.2%)
133
(70.7%)
128
(56.4%)
Thrombocytopenia + 34
(7.2%)
24
(5%)
0.39 3
(3.4%)
3
(3.3%)
7
(6%)
16
(6.7%)
8
(4.3%)
21
(9.3%)
0.45
441
(92.8%)
457
(95%)
84
(96.6%)
89
(96.7%)
110
(94%)
223
(93.3%)
180
(95.7%)
206
(90.7%)
CRP High 191
(39.9%)
142
(29.6%)
0.001 29
(33.7%)
33
(35.9%)
43
(37.4%)
93
(38.1%)
58
(30.9%)
75
(32.9%)
0.74
Normal 288
(60.1%)
338
(70.4%)
57
(66.3%)
59
(64.1%)
72
(62.6%)
151
(61.9%)
130
(69.1%)
153
(67.1%)
AST High 72
(16.7%)
53
(12.2%)
0.06 48
(60%)
30
(34.9%)
13
(11.9%)
22
(10.2%)
5
(3.1%)
7
(3.4%)
<0.001
Normal 358
(83.3%)
380
(87.8%)
32
(40%)
56
(65.1%)
96
(88.1%)
194
(88.8%)
156
(96.9%)
198
(96.6%)
ALT High 36
(7.7%)
16
(3.4%)
0.004 6
(6.9%)
6
(6.6%)
2
(1.8%)
18
(7.7%)
8
(4.3%)
12
(5.4%)
0.25
Normal 429
(92.3%)
457
(96.6%)
81
(93.1%)
85
(93.4%)
110
(98.2%)
216
(92.3%)
177
(95.7%)
211
(94.6%)
CK level High 99
(26.2%)
59
(14.9%)
<0.001 33
(49.3%)
32
(42.7%)
18
(19.8%)
25
(13.2%)
20
(13.1%)
30
(15.6%)
<0.001
Normal 279
(73.8%)
337
(85.1%)
34
(50.7%)
43
(57.3%)
73
(80.2%)
165
(86.8%)
133
(86.9%)
162
(84.4%)
Troponin level High 9
(2.6%)
7
(1.9%)
0.35 5
(8.3%)
2
(3.1%)
1
(1.3%)
5
(2.8%)
0
(0%)
3
(1.7%)
0.01
Normal 335
(97.4%)
356
(98.1%)
55
(91.7%)
62
(96.9%)
79
(98.8%)
172
(97.2%)
149
(100%)
172
(98.3%)
**

There are missing data in laboratory data, therefore sum is not equal to total number of patients.

*

The age of 6 patients was not known.

Table 4.

Comparison of symptoms and laboratory parameters by means of sex and age groups among symptomatic cases*.

SEX (n/%) AGE GROUPS (month) (n/%) p
Male Female p 0–1 1–3 3–6 6–12 12–15 >15
Symptoms Fever + 315
(71.6%)
268
(62.9%)
0.006 58
(78.4%)
76
(87.4%)
82
(72.6%)
145
(68.1%)
103
(62%)
117
(55.5%)
<0.001
125
(28.4%)
158
(37.1%)
16
(21.6%)
11
(12.6%)
31
(27.4%)
68
(31.9%)
63
(38%)
94
(44.5%)
Cough + 271
(62.3%)
272
(64.5%)
0.53 50
(66.7%)
39
(47%)
67
(59.8%)
124
(57.4%)
115
(70.1%)
148
(72.2%)
<0.001
164
(37.7%)
150
(35.5%)
25
(33.3%)
44
(53%)
45
(40.2%)
92
(42.6%)
49
(29.9%)
57
(27.8%)
Nasal discharge + 28
(6.3%)
35
(8.1%)
0.29 3
(3.9%)
15
(17.6%)
12
(10.3%)
9
(4.1%)
12
(7.1%)
12
(5.6%)
0.001
418
(93.7%)
398
(91.9%)
74
(96.1%)
70
(82.4%)
104
(89.7%)
209
(95.9%)
156
(92.9%)
201
(94.4%)
Myalgia + 63
(14.2%)
78
(18.3%)
0.09 1
(1.4%)
4
(4.7%)
14
(12.2%)
24
(11%)
39
(23.1%)
59
(27.7%)
<0.001
381
(85.8%)
349
(81.7%)
68
(98.6%)
81
(95.3%)
101
(87.8%)
194
(89%)
130
(76.9%)
154
(72.3%)
Stomach-ache + 36
(8.1%)
35
(8.2%)
0.94 3
(4.3%)
2
(2.4%)
11
(9.5%)
25
(11.5%)
13
(7.7%)
17
(8.1%)
0.08
408
(91.9%)
391
(91.8%)
66
(95.7%)
83
(97.6%)
105
(90.5%)
193
(88.5%)
156
(92.3%)
194
(91.9%)
Diarrhea + 52
(11.6%)
60
(13.9%)
0.30 20
(26%)
13
(1.9)
19
(16.4%)
15
(6.9%)
22
(13%)
23
(10.8%)
0.04
397
(88.4%)
373
(86.1%)
57
(74%)
74
(85.1%)
97
(83.6%)
203
(93.1%)
147
(87%)
190
(88.2%)
Dyspnea + 57
(12.7%)
61
(14.2%)
0.51 20
(25.6%)
10
(11.5%)
9
(7.8%)
21
(9.6%)
16
(9.5%)
41
(19.2%)
<0.001
393
(87.3%)
371
(85.8%)
58
(74.4%)
77
(88.5%)
107
(92.2%)
197
(90.4%)
152
(90.5%)
172
(80.8%)
Lab Anemia + 35
(9.2%)
35
(9.4%)
0.93 25
(33.3%)
14
(18.7%)
11
(11.8%)
5
(2.8%)
8
(5.7%)
7
(3.7%)
<0.001
346
(90.8%)
339
(90.6%)
50
(66.7%)
61
(81.3%)
82
(88.2%)
174
(97.2%)
133
(94.3%)
183
(96.3%)
Leukopenia + 20
(5.2%)
35
(9.3%)
0.02 2
(2.6%)
2
(2.7%)
6
(6.4%)
12
(6.7%)
8
(5.7%)
25
(13.2%)
0.01
364
(94.8%)
341
(90.7%)
76
(97.4%)
73
(97.3%)
88
(93.6%)
168
(93.3%)
133
(94.3%)
165
(86.8%)
Lypmhopenia + 80
(20.9%)
122
(32.6%)
<0.001 5
(6.4%)
4
(5.3%)
18
(19.4%)
44
(24.7%)
46
(32.6%)
85
(44.7%)
<0.001
303
(79.1%)
252
(67.4%)
73
(93.6%)
71
(94.7%)
75
(80.6%)
134
(75.3%)
95
(67.4%)
105
(55.3%)
Thrombocytopenia + 26
(6.8%)
21
(5.6%)
0.49 2
(2.6%)
2
(2.7%)
5
(5.3%)
14
(7.8%)
8
(5.7%)
16
(8.4%)
0.31
358
(93.2%)
355
(94.4%)
76
(97.4%)
73
(97.3%)
89
(94.7%)
166
(92.2%)
133
(94.3%)
174
(91.6%)
CRP High 174
(45.3%)
121
(32.3%)
<0.001 28
(36.4%)
31
(41.3%)
41
(44.1%)
78
(43.3%)
46
(32.6%)
69
(36.1%)
0.36
Normal 210
(54.7%)
254
(67.7%)
49
(63.6%)
44
(58.7%)
52
(55.9%)
102
(56.7%)
95
(67.4%)
122
(63.9%)
CK level High 83
(27.1%)
55
(17.5%)
0.004 31
(50.8%)
31
(50%)
13
(18.1%)
20
(13.4%)
18
(15.5%)
25
(15.7%)
<0.001
Normal 224
(73%)
259
(82.5%)
30
(49.2%)
31
(50%)
59
(81.9%)
129
(86.6%)
98
(84.5%)
134
(84.3%)
Troponin level High 7
(2.5%)
7
(2.4%)
0.93 5
(8.9%)
2
(3.8%)
1
(1.6%)
4
(3.0%)
0
(0%)
2
(1.3%)
0.01
Normal 270
(97.5%)
283
(97.6%)
51
(91.1%)
51
(96.2%)
61
(98.4%)
127
(96.9%)
113
(100%)
148
(98.7%)
AST High 65
(18.4%)
289
(81.6%)
0.07 43
(60.6%)
28
(38.9%)
11
(12.5%)
19
(11.4%)
4
(3.2%)
6
(3.4%)
<0.001
Normal 46
(13.3%)
301
(86.7%)
28
(39.4%)
44
(61.1%)
77
(87.5%)
147
(88.6%)
122
(96.8%)
170
(96.6%)
ALT High 29
(7.7%)
14
(3.8%)
0.02 5
(6.4%)
5
(6.7%)
2
(2.2%)
16
(9.1%)
5
(3.6%)
10
(5.3%)
0.14
Normal 346
(92.3%)
358
(96.2%)
73
(93.6%)
70
(93.3%)
87
(97.8%)
160
(90.9%)
134
(96.4%)
178
(94.7%)
*

There are missing data in some variables, therefore sum is not equal to total number of patients.

Of the total cases, 149 (12.9%) had underlying diseases, and 56% of the patients who had severe disease had an underlying condition (p < 0.01). The need for hospitalization did not differ between patients who had an underlying condition and those who do not have (p = 0.38), but the need for intensive care was higher in patients who had an underlying condition (p < 0.01). Forty-seven (31.5%) of the cases having underlying conditions had asthma or lung disease (38 of them had asthma). The prevalence of asthma was 3.2% in this study group. Cough was observed mainly in asthmatic patients (80.0%) and 87.6% of patients with asthma were symptomatic (p = 0.016). However, having asthma was not significantly related to disease severity (p = 0.62). There were 19 immunocompromised patients (because of malignancies or other conditions) and fever was present in 78.6% of them, but this relationship was not statistically significant (p = 0.36).

When patients were classified according to disease severity, 263 (22.7%) patients were asymptomatic, 668 (57.7%) patients had mild disease, 209 (18.1%) had moderate disease, and 16 (1.5%) cases had severe disease. There was no statistically significant difference between girls and boys in case of symptom presence (p = 0.108), but when asymptomatic cases were excluded, it was observed that girls tend to have the disease more seriously (p = 0.04) (Table 5). Nineteen (1.6%) patients needed intensive care during follow-up. Eleven of them had underlying diseases and two of the underlying diseases were immune-suppressive conditions. Five (0.4%) patients needed mechanical ventilation and two patients died (0.1%).

Table 5.

Comparison of groups due to severity*.

Aymptomatic Symptomatic p
Mild Moderate Severe p
SEX Female 130 (23%) 311 (55%) 113 (20.0%) 11 (1.9%) 0.04 0.32
Male 118 (20.6%) 355 (61.8%) 96 (16.7%) 5 (0.9%)
Age Groups 0–1 yr 9 (3.5%) 54 (58.3%) 23 (27.4%) 4 (4.8%) <0.001 0.006
1–3 yrs 21 (8.3%) 70 (63.0%) 15 (14.0%) 2 (2.0%)
3–6 yrs 31 (12.2%) 99 (63.9%) 16 (12.0%) 2 (1.5%)
6–12 yrs 78 (30.7%) 181 (58.0%) 35 (12.6%) 4 (1.5%)
12–15 yrs 64 (25.2%) 124 (52.2%) 43 (20.9%) 2 (1.0%)
>15 yrs 51 (20.1%) 139 (50.4%) 76 (29.8%) 2 (0.8%)
Symptoms Fever
+
215 (76.0%)
438 (75.1%)
65 (23.0%)
132 (22.6%)
3 (1.1%)
13 (2.2%)
0.48
Cough
+
265 (84.4%)
392 (72.2%)
41 (13.1%)
143 (26.3%)
8 (2.5%)
8 (1.5%)
0.007
Myalgia
+
558 (76.4%)
101 (71.6%)
161 (22.1%)
38 (27.0%)
11 (1.5%)
2 (1.4%)
0.44
Diarrhea
+
581 (75.5%)
82 (73.2%)
177 (23.0%)
26 (23.2%)
12 (1.6%)
4 (3.6%)
0.32
Dyspnea
+
610 (79.8%)
54 (45.8%)
150 (19.6%)
52 (44.1%)
4 (0.5%)
12 (10.2%)
<0.001
Radiology X-Ray Finding –
Finding +
163 (87.6%)
22 (12.4%)
523 (91.4%)
79 (34.5%)
43 (7.5%)
143 (62.4%)
6 (1.1%)
7 (3.1%)
<0.001 <0.001
CT Finding –
Finding +
45 (81.8%)
10 (18.2%)
227 (98.7%)
1 (0.5%)
2 (0.9%)
191 (95.5%)
1 (0.4%)
8 (4.0%)
<0.001 <0.001
*

There are missing data in some variables, therefore sum is not equal to total number of patients.

Asymptomatic disease was higher in the 6–12 year age group (36.8%) and moderate disease was higher in cases who were older than 15 years of age (p < 0.01). Cough, dyspnea, and fever were significantly related to severe disease (p < 0.01), whereas myalgia, diarrhea, rhinorrhea, sore throat, and stomachache were not related to severe disease (p > 0.05) (Table 5).

Laboratory Findings

In 85 of the total cases (8.9%), 70 of the symptomatic cases had anemia (9.3%). In 67 of the total cases (7.0%), 55 of the symptomatic cases (7.3%) had leukopenia. Lymphopenia was seen in a total of 238 patients (20.5%) and 202 of them were symptomatic. There was a statistically significant difference between symptomatic and asymptomatic cases in case of leukocyte count (p = 0.009) but not in case of lymphocyte count (p = 0.09) (Table 5). There were 58 cases among the total cases who had thrombocytopenia (5.0%) as well as 47 cases among symptomatic cases (5.3%). Three hundred and thirty-three cases among the total cases had high C-reactive protein (CRP) levels (34.7%), whereas among symptomatic cases, 295 had normal levels (33.0%). Patients who had symptoms had higher CRP levels than those who were asymptomatic (p < 0.01) (Table 5). Alanine transaminase (ALT) level of 52 cases was high among the total cases (5.5%) as well as of 43 cases (5.8%) of the symptomatic cases. One hundred and twenty-five cases (14.5%) of the total study population and 110 (15.7%) of the symptomatic cases had high aspartate transaminase (AST) levels (p = 0.02). Both ALT and AST levels did not differ between symptomatic and asymptomatic cases. The laboratory examination of the patients is summarized in Table 6.

Table 6.

Laboratory findings.

Total Cases Symptomatic Cases Asymptomatic Cases p
Median (IQR) Median (IQR) Median (IQR)
Hemoglobin (g/dL) 12.9 (12-14) 12.8 (11.9–13.9) 13.0 (12.1–14.0) 0.09
Leukocyte count (/uL) 6,615 (5,222–9,187) 6,780 (5,275–9,560) 6,219 (5,157–8,260) 0.009
Lymphocyte count (/uL) 2,200 (1,490–3,285) 2,100 (1,435–3,300) 2,320 (1,700–3,235) 0.09
Thrombocyte (/uL) 248,000 (207,000–306,750) 245,000 (204,000–306,000) 262,500 (219,000–312,000) 0.13
C-reactive protein (mg/L) 2.73 (2.73–7.78) 3.1 (1.0–10.7) 1.1 (0.7–3.0) <0.001
Aspartate transaminase (U/L) 28 (21–37) 27 (20.7–35) 28 (22.0–33.5) 0.6
Alanin transaminase (U/L) 17 (13–24) 15 (12–21) 17 (13.0–24.0) 0.9
Creatin kinase (U/L) 89 (65–121) 89 (63–123) 91 (68–115) 0.8
Troponin (ng/L) 0.1 (0.1–2.3) 0.1 (0.1–2.7) 0.1 (0.1–2.3) 0.6

Leukopenia and lymphopenia were more common in female cases (p < 0.01). CRP levels were significantly higher in male patients (p < 0.01). According to age classification, leukopenia (12.6%) and lymphopenia (44.1%) were more common in patients who were ≥15 years of age (p < 0.01) (Table 4).

Chest X-ray was performed in 988 patients. Among these patients, 736 (74.5%) had normal results, whereas 252 (25.5%) had at least one pathologic finding. CT was performed in 485 patients. Of these patients, 275 (56.7%) had normal results. The most common finding was one or more ground-glass opacities in 126 (43.2%) patients. Computerized tomography was performed in 269 patients (38.8%) whose chest X-ray was normal, and there were pathologic findings on CT in 48 (17.8%) of the patients (p < 0.01) (Table 5).

Discussion

To the best of our knowledge, this is one of the largest pediatric data reported about COVID-19, with 1,156 cases. Supporting the current literature, male cases were slightly more than female cases in our study (1114).

According to the age distribution of patients, the majority of patients in our study were between 6 and 12 years of age, which constituted 25.8% of the total confirmed cases. Interestingly, this age group is composed of school-age children, although school education was interrupted just 2 days after the first case reported in Turkey. This finding was also similar to the study of Lu et al. (11). In a review by Ding et al., the majority of pediatric patients with COVID-19 were older than 5 years of age (13). These findings might be due to the difficulties in providing personal hygiene procedures and infection control precautions, ideally in this age group. However, as the ages ranged from 1 day to 18 years, it was shown that all ages of childhood were susceptible to 2019-nCoV. Neither difference between sex groups nor age groups can be explained by the susceptibility of these groups to COVID-19 infection because no sufficient data is available yet. Further studies should be warranted about this topic.

There were 75.2% of the patients who had household contacts; no cases caused by schoolmates were reported. According to the report of Hoang et al., 75.6% of pediatric patients were exposed to a family member who was diagnosed with COVID-19 (14). This ratio is as high as 86.4% in another review by Ding et al. (13).

Another important point is that there were only 36 cases who had a direct/indirect history of travel. This finding emphasizes that quarantine after traveling abroad is important for the prevention of the spread of the virus. On the other hand, home contact and exposure still remain an important issue for the spread of COVID-19 in children (11, 12).

Xia et al. indicated that patients with a history of congenital or acquired diseases would have a greater susceptibility to COVID-19 (15). According to the CDC-MMWR, 23% of pediatric patients had underlying conditions. The most common underlying conditions were chronic lung disease (including asthma) followed by cardiovascular disease and immunosuppression (16). In another report, 6.1% of all the included children had underlying diseases (13). According to another report, the most common underlying medical condition was immunosuppression history of a respiratory or cardiac condition (65%) (14). Similarly, our findings also support that having an underlying disease was a risk factor for disease severity and the need for intensive care (p < 0.01) but interestingly not for hospitalization (p = 0.37).

There were 12.9% of our patients who had underlying conditions; the most common were asthma and lung disease. According to a review, only one report was found describing asthma/recurrent wheezing as a potential risk factor for COVID-19 in children (17), but none of the largest epidemiological studies including children with COVID-19 reported clinical findings or underlying characteristics to help assess whether asthma—or other chronic lung diseases—constitutes a risk factor for SARS-CoV-2 infection or COVID-19 severity. Our data also do not conclude that asthma increases the risk for COVID-19, but may draw attention to this issue and shed light on further studies. Besides, despite the rate of 3.2%, the fact that asthmatic patients generally have symptomatic but not severe COVID-19 is a new and important finding in the literature and must be supported by future prospective studies.

Two hundred and sixty-three (22.7%) patients were asymptomatic, whereas 893 (77.3%) were symptomatic. Among symptomatic patients, 668 (74.8%) patients had mild disease, 209 (23.4%) had moderate disease, and 16 (1.8%) had severe disease. Dong et al. reported that 43.1% of the confirmed cases were asymptomatic, and 12.9% had mild disease (12). In the systematic review of Hoang et al., 19.2% of the cases were asymptomatic (14). According to the study of Lu et al., patients who were asymptomatic revealed 15.8% and who had mild disease revealed 19.3% of confirmed patients (11). The findings of our study were similar to the literature in general as children with COVID-19 tend to be asymptomatic or just have mild symptoms.

Similar to the current literature, the most common symptoms were fever and cough in our study (1113, 16). In the report of Hoang et al., the common clinical manifestations included fever (60%), whereas nasal congestion and rhinorrhea were the second most common symptoms (28%) (14). In contrast, cough (24%) was not reported as high as in our study. In addition, although myalgia is known as one of the leading symptoms of COVID-19 in children, frequency information is not common in the literature (15, 1820), but myalgia was reported as 12.2% of the total cases and 15.7% of the symptomatic cases in our study, which is a significant proportion. Besides, it was significantly high in patients who were older than 15 years (p < 0.01).

There are many reports about the laboratory findings in pediatric COVID-19 patients, but generally, no classification by age groups or sex or disease severity was given. In a pediatric review, according to laboratory findings, leukopenia and leukocytosis were present in 7.3 and 10.7% of the cases, respectively (11, 15, 1824). According to another review, the most frequent abnormal laboratory findings in pediatric patients were leukopenia/lymphopenia and increased creatine kinase (13). Lymphopenia and lymphocytosis were present in 21 and 5% of the cases, respectively; thrombocytopenia was found in only 4% of the cases (13). According to our findings, leukopenia was observed in 5.7% of the cases, and lymphopenia was observed in 20.5% of the total cases. It seems likely that COVID-19 has an effect in the direction of cytopenia, like other viral infections, especially in adolescents.

Chest X-ray was performed in 988 patients. Among these patients, 736 (74.5%) had normal results, whereas 252 (25.5%) had at least one pathologic finding. CT was performed in 485 patients. Of these patients, 275 (56.7%) had normal results. Computerized tomography was performed in 269 patients (38.8%) whose chest X-ray was normal, and there were pathologic findings on CT in 48 (17.8%) of the patients (p < 0.01). These findings support that CT does not need to be used as frequently as in adults because of the less severe character of the disease in children. It makes more sense to consider computerized tomography in moderate or severe patients, to avoid exposure of this sensitive population to radiation.

One of the limitations of this study is the retrospective nature of the study. Secondly, there were missing data especially in case of symptomatology and diagnostic tests and this caused difficulty in standardizing the results for the whole study population.

Conclusion

To the best of our knowledge, this is the largest pediatric data about confirmed COVID-19 cases in the current literature from Turkey and also the largest globally. Similar to the current literature, according to our study, children seem to be less frequently infected. However, current evidence is still limited regarding children with the virus infecting other people.

Firstly, it is remarked that myalgia is one of the major symptoms of COVID-19, which is present in up to 16.2% of the symptomatic cases, especially in adolescents. According to our study, asthma seems to be a significant underlying disease for COVID-19 patients, but future studies are warranted to prove it as a risk factor. Finally, we state that computerized tomography is mostly normal except for severe cases actually, and it is important to use it in selected patients to avoid unnecessary exposure to radiation. As we all know, huge data are changing every day, and future studies are needed to support our findings in the field of pediatrics.

Data Availability Statement

The original contributions presented in the study are included in the article/supplementary material, further inquiries can be directed to the corresponding author/s.

Ethics Statement

The studies involving human participants were reviewed and approved by the Turkish Republic, Ministry of Health.

Author Contributions

All authors contributed to the study equally by means of conception, protocol development, data collection, data interpretation, and critical revision of the manuscript.

Conflict of Interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

The original contributions presented in the study are included in the article/supplementary material, further inquiries can be directed to the corresponding author/s.


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