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Polish Journal of Radiology
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vol. 87
 
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Cardiovascular radiology
Review paper

Comparative imaging findings among different primary beta-coronaviruses

Wilson Sharp
1
,
Isabel Jang
2
,
Michael J. Diaz
3
,
Leila C. Tou
4
,
Charles A. Agyemang
5
,
Rebekah E. Carter
3
,
Sarah Sevigny
1
,
Muhammad Umair
6

1.
Campbell University School of Osteopathic Medicine, USA
2.
Boston University, USA
3.
College of Medicine, University of Florida, Gainesville, FL, USA
4.
Charles E. Schmidt College of Medicine at Florida Atlantic University, USA
5.
The Johns Hopkins University, Zanvyl Krieger School of Arts and Sciences, USA
6.
The Johns Hopkins Hospital, USA
© Pol J Radiol 2022; 87: e641-e651
Online publish date: 2022/11/30
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- Comparative.pdf  [0.36 MB]
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Introduction

Coronaviruses (CoV) are single-stranded RNA viruses that repeatedly cross between species and emerge into human pathologies [1]. Betacoronaviruses (b-CoVs) – SARS-CoV-1, MERS-CoV, SARS-CoV-2 – are grouped together based on their genetic makeup and antigenic cross-reactivity, and they have the unique tendency to be transmitted from bats to humans [2]. The emergence of SARS-CoV-1 in 2002 and MERS-CoV in 2012 resulted in zoonosis from bats as a threat to global health [3]. In December 2019, a novel b-CoVs identified as severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) emerged in Wuhan, China. The constellation of symptoms caused by SARS-CoV-2 is called COVID-19. Studies have identified SARS-CoV-2 as the same b-CoVs lineage as SARS-CoV-1 and MERS-CoV [1].However, when comparing there are significant differences in the genomic sequences among the 3 b-CoVs. The major difference is found in the sequence for the receptor-binding domain between SARS-CoV-2 and SARS-CoV-1. The greater infectivity of SARS-CoV-2 may be due to the new mutations and the acquisition of the furin cleavage site that enhances the ability of the virus to internalize into the cells [4].

COVID-19 is the new infectious disease caused by SARS-CoV-2. The virus is easily transmitted human-to-human by the spread of respiratory droplets or aerosols from actions such as coughing and sneezing [5]. Most COVID-19 patients present flu-like symptoms; however, few patients develop respiratory failure, multiple organ failure, and even death. By the end of 2021, there were over 300 million confirmed cases globally, including over 5 million deaths [6].

Diagnostic techniques

Reverse transcription polymerase chain reaction (RT-PCR) is one of the detection techniques for SARS-CoV-2 RNA. However, RT-PCR specificity for SARS-CoV-2 is subject to limitations including insufficient viral load, failure in dia-gnostic kits, and nonstandard sampling techniques [7]. Treanor et al. observed that limited use of computed tomo-graphy (CT) at the onset of the COVID-19 pandemic was due to the low specificity of chest CT scanning for COVID-19 [8], which has since improved [9]. Specifically, Shao et al. reported that chest CT specificity for COVID-19increased from September 2020 (specificity = 18.1%, sensitivity = 86.2%) to March 2021 (specificity = 80.1%, sensitivity = 87.9%) (n = 2346, n = 16,133, respectively) [9]. The improvement in specificity and sensitivity can be attributed to the increasing knowledge surrounding COVID-19,and the implementation of formal scoring systems that clearly indicate positive findings [9]. Moreover, deep learning neural networks may improve the specificity of COVID-19 imaging, although they are not ready for clinical application at the time of writing. Many other studies have also suggested the potential of convolutional neural networks to aid in distinguishing COVID-19 pneumonia from other viral pneumonia and normal lungs based on X-ray imaging. Nikolaou et al. described the use of a CNN algorithm that differentiated COVID-19 from other viral pneumonia and normal lungs using chest radiography, with 93% accuracy, 94% sensitivity, and 95% specificity (n = 15,153) [10]. For instance, Chaudhary et al. (95% accuracy and 100% sensitivity) and Luz et al. (90% accuracy and 93.5% sensitivity) described high accuracy and sensitivity in differentiating COVID-19 from non-COVID-19 using normal X-rays with the aid of CNN [11,12]. Chaddad et al. employed CNN architectures to achieve 82.3% accuracy in differentiating between COVID-19 and normal lung CT images from 60 patients infected with SARS-CoV-2 [13].Polsinelli et al. also discriminated COVID-19 CT images with CNN with 83% accuracy and 85% sensitivity [14]. Considering the findings from these studies, the advent of deep learning neural networks may improve the accuracy and sensitivity of the chest X-ray and chest CT scans and increase the utility of chest X-rays in the early diagnosis of COVID-19.

Similar imaging findings exist between the 3 viral strains. For example, ground-glass opacities (GGOs), consolidation, and interlobular septal thickening are common to the 3 b-CoVs [15-19]. The presence of key distinctions, such as the predilection of bilateral lung involvement in SARS-CoV-2 and MERS-CoV infection [20], and markedly common unilateral involvement associated with SARS-CoV-1 infection, are also extensively described in the available literature [18,21]. Damage to the lungs and the occurrence of cardiovascular disease were common in all 3 b-CoVs. Common sequelae involved the gastrointestinal system, nervous system, and the haematological presentation of those infected.

The purpose of this review was to present a comprehensive understanding of the similarities and differences that are known to exist between b-CoVs that have caused pandemics, with a focus on imaging characteristics. The researchers intend for this to provide clinicians with useful insight into the clinical and imaging features of different b-CoVs and to provide a framework for future comparative studies.

Material and methods

We searched the PubMed and Google Scholar databases for articles published between May 2003 and December 2021. All conducted keyword searches included the keyword query “SARS-CoV” OR “COVID-19” OR “MERS-CoV”. Imaging-specific searches included keyword search queries for “CT” AND “imaging”. Clinical presentation-specificsearches included keyword search query “clinical” AND “manifestation” AND “chest” OR “lungs” OR “neurology” OR “gastrointestinal” OR “hematology”. We decided to also include non-English sources because the outbreaks related to all b-CoVs affected populations globally, especially in non-English populations in past b-CoVs outbreaks. Exclusion criteria included original research articles with a sample size smaller than 10 and other systematic reviews comparing the 3 b-CoVs. Seventy-seven articles were select-ed for discussion in the current literature review. The authors WS and IJ searched and selected referenced studies, and MD resolved any article selection disputes.

Results

Chest imaging findings

Tables 1 and 2 report the hallmark and frequency, respectively, of chest CT imaging findings for SARS-CoV-1, SARS-CoV-2, and MERS-CoV infection. Human b-CoV infection consistently revealed GGOs and consolidation. Wang et al. reported GGO in 82% (92/112) and mixed air-space opacities with irregular consolidation in 21% (24/112) of SARS-CoV-1-infected patients [22]. Das et al.identified GGO in 66% (36/55), with consolidation in 18% (10/55) of MERS-CoV-infected patients [23]. By comparison, Xu et al. reported GGO in 72% (65/90), with conso-lidation in 13% (12/90) of SARS-CoV-2-infected patients [19]. A sister review of SARS-CoV-2 infection reported 94.5% incidence of GGO with or without consolidation (n = 55) [24].

Table 1

Comparative chest imaging findings of patients infected with SARS-CoV-1, MERS-CoV, and SARS-CoV-2

AuthorBeta-CoV typeImaging modalityFindings
Sotoudeh H, Gity M (2021) [7]SARS-CoV-2Chest radiograph (CXR)Multiple foci GGOs, consolidations in peripheral and lower lungs
Sotoudeh H, Gity M (2021) [7]SARS-CoV-2Chest CTGGOs, consolidation, crazy paving pattern, pulmonary vascular enlargement, air bronchograms, thickening of interlobular septa, pleural effusion and thickening, diffuse pulmonary involvement, lung cavitary lesions, parenchymal calcification
Li et al. (2020) [17]SARS-CoV-2Chest CTGGOs, linear opacities, consolidation, interlobular septal thickening, crazy paving pattern, bronchial wall thickening
Song et al. (2020) [28]SARS-CoV-2Chest CTGGOs, consolidation, air bronchograms, reticulation, small pleural effusion, small pericardial effusion, lymphadenopathy
Lan et al. (2015) [21]MERS-CoVCXRBilateral lung involvement, large patchy consolidation, lower lung lesions
Ajlan et al. (2014) [20]MERS-CoVChest CTUnilateral and bilateral abnormalities, GGOs consolidation, centrilobular nodules, septal thickening, peri-lobular opacities, reticulation, architectural distortion, subpleural bands, traction bronchiectasis, bronchial wall thickening, and pleural effusions
Das et al. (2015) [23]MERS-COVCXRGGOs, consolidation, irregular linear airspace disease, air bronchogram, multicentric cavitation, pleural effusion
Hsieh et al. (2004) [26]SARS-CoV-1CXRMultifocal and unifocal involvement, consolidations, GGOs, pleural effusion
Muller et al. (2004) [15]SARS-CoV-1Chest CTUnilateral and bilateral GGOs, consolidation, thickening of interlobular septa

[i] GGOs – ground-glass opacities

Table 2

Frequency of radiological findings at presentation

Radiological featuresSARS-COV-1SARS-CoV-2MERS-CoV
Ground glass opacities82.0% [21]72.0-94.5% [15,26]66.0% [22]
Interlobular septal thickeningN/A15.1%-62.7% [9,12]26.0-40.0% [11,13]
Unilateral lung involvement50.0% [14]21.8-50.0% [3,15]14.0% [10]
Crazy paving pattern36.4% [11]12.0-36.1% [9,11,12,15]27.0% [11]
Pleural effusion15.0-22.7% [11,22,23]3.0-4.0% [15,20]30.0%-60.0% [11,22,23]

[i] N/A – not applicable, i.e. lack of data in a form or table.

Pleural effusion was identified among cases for all described b-CoVs, but it was least common in SARS-CoV-2infection [25]. Das et al. and Hsieh et al. reported that 15% of SARS-CoV-1 and 30% of MERS patients developed pleural effusion, respectively (n = 26, n = 55) [23,26]. Interestingly, Xu et al. reported pleural effusion in only 4% of SARS-CoV-2-infected patients (n = 90) [19]. Wong et al. also corroborated its rarity, observing pleural effusion in a mere 3% (2/64) of SARS-CoV-2 patients (n = 64) [27].

Crazy-paving pattern [17,19] was uniquely identified in SARS-CoV-2 infection cases. One study found crazy-paving patterns in 36% of SARS-CoV-2-infected patients (30/n = 83) compared to another study that reported 12% of patients (11/n = 90) [17,19]. Although the literature is sparse, a comparable difference is described for the finding of air bronchogram between patients infected with SARS-CoV-2 and MERS-CoV. Song et al. reported that 80% of SARS-CoV-2-infected patients had air bronchogram (n = 51) [28]. Das et al. reported air bronchogram in only 11% of MERS-CoV-infected patients (n = 55) [23].

Bilateral lung involvement is common to both MERS-CoV and SARS-CoV-2 infection. According to Ajlan et al.,86% (6/7) of MERS-CoV-infected patients experience bilateral lung involvement [20]. Huang et al. reported 97.5% of the initial chest radiographs from patients infected with SARS-CoV-2 presented with bilateral involvement (n = 41),as shown in Figures 1 and 2 [18]. One of the common findings that distinguished SARS-CoV-1 from both MERS-CoV and SARS-CoV-2 is the predominance of unilateral lung involvement [15,29]. According to Wong et al., based on chest radiographs, unifocal involvement (54.5%) was more prevalent compared to bilateral involvement (38.0%) in patients infected with SARS-CoV-1 (n = 108) [29]. In another study conducted by Müller et al.,during the initial presentation of the disease, CT findings showed more prevalent unilateral GGOs than bilateral (50% vs. 16.7%) among a sample size of 12 [15]. However, as the disease progressed, follow-up CT scans obtained after 2-27 days (median, 9 days) of hospitalization showed a greater percentage of bilateral involvement compared to unilateral for GGOs (52% vs. 8%) and consolidation (20% vs. 8%) (n = 25) [15].

Figure 1

Non-contrast axial chest computed tomography (CT) of a 60-yearold female patient diagnosed with COVID-19. Presentation of multilobar and bilateral ground-glass opacities with lobular and rounded morphology mostly in the periphery of both lungs. Case courtesy of Dr Bahman Rasuli, Radiopaedia.org, rID: 74560

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Figure 2

Chest computed tomography (CT) of a 40-year-old female patient diagnosed with COVID-19. Presentation of multifocal bilateral patchy and confluent ground-glass opacities with crazy paving on both lungs. Case courtesy of Dr Bahman Rasuli, Radiopaedia.org, rID: 93230

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Cardiovascular imaging findings

Clinical features include hypertension [30-32], acute myocarditis [33-35], and coronary heart disease [34]. Abnormal echocardiography was found in 55% (667/n = 1216) of SARS-CoV-2-infected patients [36]. Left (39%) and right (33%) ventricular abnormalities, myocardial infarction (3%), and myocarditis (3%) were reported (n = 1216) [36].When comparing the echocardiographic findings of SARS-CoV-1 patients in the acute stage of infection compared to 30 days later, patients exhibited diastolic impairment with left ventricular systolic involvement upon infection [37]. Patients reported with lower mean left ventricular ejection fraction (65.3 ± 12.8% vs. 71.4 ± 5.7%, p = 0.03) and higher mean index of myocardial performance (0.51 ± 0.11 vs. 0.40 ± 0.12, p = 0.017) [37].

Common cardiac magnetic resonance (CMR) findings in patients infected with SARS-CoV-2 include myocardial oedema, pericardial effusion, late gadolinium enhancement (LGE) in the myocardium, global higher T1 and T2 relaxation time, and elevated extracellular volume (ECV) percentage [33-35]. Participants of the study conducted by Luetkens et al. were infected with SARS-CoV-2 and were suspected myocarditis cases experiencing dyspnoea and fever, exhibiting positive radiographic findings of COVID pneumonia on chest CT or radiograph [33]. 38% of participants had small pericardial effusions, and 88% of patients had LGE present in the sub-epicardium of the lateral wall or in the basal septal midmyocardium [33]. Higher T1 and T2 relaxation times were seen in patients compared to healthy controls (T1, 1046 vs. 953 ms; T2, 61.7 vs. 52.9 ms) [33]. The ECV for COVID-19 patients was elevated compared to healthy controls (29.2% vs. 28.1%); however, the data were not significantly different (p-value 0.25) [33]. Similarly, in another study conducted by Huang et al. (2020), CMR findings consisted of myocardial oedema (54%), positive LGE (58%), and elevated T1, T2, and ECV (n = 26), as shown in Figure 3 [35]. 60% of the patients observed with positive late gadolinium enhancement exhibited lesions located sub-epicardium of the inferior and inferior-lateral segments at the base and mid-chamber [35]. Comparing patients with positive CMR findings to patients without positive findings and healthy controls, T1, T2, and ECV values were elevated (T1, 1,271 vs. 1,237 vs. 1,224 ms; T2, 42.7 vs. 38.1 vs. 39.1 ms; ECV, 28.2% vs. 24.8% vs. 23.7%) [35]. In an observational cohort study, researchers reported that CMR revealed cardiac involvement in 78% of patients and ongoing myocardial inflammation in 60% of COVID patients who recovered from lower left ventricular ejection fraction (LVEF), higher left ventricle volumes, and raised native T1 and T2 (n = 100) [38]. It is important to note that this data are obviously a representation of the COVID patients who presented with heart failure with low LVEF and left ventricular chamber dilation, and they are not applicable to all COVID patients. Compared to healthy controls, patients exhibited raised myocardial native T1 (73/100) and T2 (60/100), myocardial LGE (32/100), and pericardial enhancement (22/100) [38]. In comparison, not enough literature exists on the cardiac magnetic resonance imaging (MRI) findings of the remaining 2 b-coronaviruses.

Figure 3

Cardiac magnetic resonance of a 60-year-old male COVID-19 patient 2 months after the onset of palpitations. A) Short-axis short tau inversion recovery (STIR) sequence shows no signs of myocardial oedema. However, (B) phase-sensitive inversion recovery (PSIR) image shows evidence of focal late gadolinium enhancement (LGE) in left ventricular septal and inferior segments (black arrows). Increased native T1 (1434 ± 43 ms), extracellular volume (ECV) (30 ± 2%), and normal T2 values (38 ± 2 ms) were shown in the corresponding location of focal LGE on the T1 (C), T2 (D), and ECV maps (E) (black arrows)

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Contrast-enhanced CT pulmonary angiograms (CTPA) in patients infected with SARS-CoV-2 exhibited dilated pulmonary vasculature in 85% of cases (41/45) [39]. Venous thromboembolism, including pulmonary pmbolism (PE)and deep vein thrombosi (DVT), are frequent findings in SARS-CoV-2-infected patients. Patients infected with SARS-CoV-2 are likely to have venous and arterial thromboembolism due to excessive inflammation, hypoxia, immobilization, and diffuse intravascular coagulation [40]. In a study conducted by Cui et al., 25% (20/81) of SARS-CoV-1-infected patients were diagnosed with venous thromboembolism (VTE) [41]. Similarly, a study conducted by Klok et al. reported a composite outcome of 31% of which CTPA confirmed VTE (27%) [42]. Noncompressible veins, echogenic clots, and minimal or absent flow within a swollen vein were common imaging findings for DVT among these patients, and not different from patients with DVT from any aetiology [43].

Contrarily to SARS-CoV-2 cases, reports of PE are less frequent for SARS-CoV-1 cases, which may suggest a lower incidence of thromboembolic phenomena among those viruses; however, insufficient literature currently exists to reach this conclusion. Although coagulation abnormalities are common in SARS-CoV-1 patients, thromboembolic events are rarely detected. Ng et al. reported the first case of pulmonary artery thrombosis for a SARS-CoV-1-infected patient. CT angiogram of the thorax showed GGOs in the left upper and right lower lobes, and a blood clot in the right main pulmonary artery that extended to the segmental artery of the right lower lobe [44].

Neurological presentation

Neurological manifestation in the described b-CoVs included, but was not limited to, fatigue, headache, and reduced consciousness [45-47]. Acute cerebrovascular complications, specifically acute ischaemic stroke, are the most common COVID-19 manifestations of neurological pathologies [48]. In contrast, a study conducted by Umapathi et al. reported that 5 patients (2%) infected with SARS-CoV-1 experienced stroke (n = 206) [49]. However, researchers suggest that a correlation between SARS-CoV-1 and stroke may be coincidental because the patients who experienced a stroke were diagnosed with multiple co-morbidities such as cardiac dysfunction, DIC, and hypertension [49]. Figure 4 shows images of non-contrast head CT from COVID-19 patients with common neuroimaging findings including multifocal ischaemic infarcts (25%), acute white matter encephalopathic changes (37.5%), and cortical or intracranial haemorrhage (6%) (n = 16) [50]. Again, the contribution of the confounding factors here remains unclear.

Figure 4

Non-contrast head computed tomography (CT) shows bilateral thalamic and scattered subcortical white matter hypodensities (arrowhead). Evidence of nonconfluent scattered subcortical and patchy white matter hypodensities with asymmetric involvement of the left temporal lobe (arrows)

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In the comparison, brain MRIs for 3 MERS-CoV infected patients presented bilateral hyperintense lesions in the subcortical white matter of the frontal, temporal, and parietal lobes, basal ganglia, and corpus callosum, as shown in Figure 5 [51]. Another case study involving CT scans of a MERS-CoV-infected patient showed right frontal lobe intracerebral haemorrhage with massive brain oedema and midline shift [52]. For patients infected with SARS-CoV-1, there were limited abnormalities found through neuroimaging. A case study reported that an MRI examination of a SARS-CoV-1-infected patient’s brain during the acute stage of SARS-CoV-1 showed no definite lesion [53]. Again, the literature is limited regarding these findings among the setting of comparison of b-CoVs.

Figure 5

Axial FLAIR images of a 57-year-old male patient with MERS-CoV. Results showed bilateral confluent subcortical areas and deep white matter hyperintense lesions in the frontal lobes, basal ganglia, and corpus callosum

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Haematological presentation

SARS-CoV-1, MERS-CoV, and SARS-CoV-2 have all been associated with haematological abnormalities [54-57]. For example, thrombocytopaenia incidence was reported at rates greater than 35%; a retrospective analysis reported an incidence of 55% (87/157) in SARS-CoV-1-infected patients (n = 157) and an incidence of 58% (7/12) among critically ill patients infected with MERS-CoV (n = 12) [55,58]. Disseminated intravascular coagulation (DIC) represented another shared consequence of b-CoV infection [52,54,59].

As the pandemic has progressed more information has been obtained on the incidence and imaging characteristics of SARS-CoV-2-associated DVT and DIC. Suh et al. performed a meta-analysis of 3342 SARS-CoV-2 patients and found the incidence of PE and DVT to be 16.5% and 14.8 %, respectively [60]. In the study it was noted that incidence rates were elevated among ICU-admitted patients (PE = 24.7%; DVT: 21.2%), and the studies that used CTPA to screen all ICU admitted patients reported higher incidence rates than studies that sparingly used CTPA [60]. A sufficiently large study uniformly using CTPA to screen PE and DVT has yet to be completed, leaving the true incidence unknown. Espallargas et al. completed a study to describe the laboratory and imaging findings in confirmed PE-diagnosed SARS-Cov-2 patients [61]. On CTPA, the incidence of lobar PE was 25% of total cases, purely segmental in 31.25%, and subsegmental in 25%, with the right lung being affected in 93.75% of cases [61].

The available literature on both SARS-CoV-2 and SARS-CoV-1 infection corroborates findings of increased D-dimer plasma levels and fibrinogen [62]. Elevated D-dimer can be related to deep vein thrombosis (DVT) and acute pulmonary embolism (PE) [63]. However, D-dimer levels alone cannot be an indicator of PE because cancer, peripheral vascular disease, pregnancy, inflammatory diseases, and other medical conditions can elevate levels [63]. Therefore, CTPA is an effective imaging technique to detect PE and its severity [64].

Gastrointestinal presentation

All 3 b-CoV infections reported viral replication in intestinal epithelial cells and detection of viral RNA in the stool of patients with MERS-CoV and SARS-CoV-1 infection [64-67]. Infection with any of the primary b-CoVs manifested symptoms of gastrointestinal abnormality including diarrhoea, nausea, and abdominal pain during illness. Contrast-enhanced CT scans showed diffuse, circumferential, homogeneously enhancing bowel wall thickening [68]. A case study conducted with a SARS-CoV-2-infected patient showed severe colonic inflammation characterized by circumferential wall thickening in CT scan with IV contrast, as shown in Figure 6 [69]. Another retrospective cross-sectional study also reported bowel wall thickening (29%), colon or rectal thickening (17%), and small-bowel thickening (12%) (n = 42) on CT scans with IV contrast [70].

Figure 6

Initial computed tomography (CT) scan of the abdomen and pelvis of patients infected with SARS-CoV-2. A) Axial CT image of the lower thorax shows no airspace disease in the lungs. A small, right pleural effusion is present (arrow). B-D) Intravenous contrast-enhanced CT scan of the abdomen and pelvis in the coronal (B and D) and axial (C) planes shows severe inflammation of the ascending colon (B), transverse colon (C), and descending colon (D) characterized by circumferential wall thickening, mural hyperenhancement, mesenteric hypervascularity, and pericolic fat stranding (arrows)

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Discussion

The zoonotic action of beta-CoVs implicated concern for global health. With the recent COVID-19 pandemic, studies show how SARS-CoV-2 generates similar chest imaging abnormalities (Table 1) to its familial predecessors. However, despite its shared lineage with SARS-CoV-1 and MERS-CoV, key presentation and imaging differences do indeed exist. These differences represent opportunities for unique treatment plans, diagnostic criteria, and preparation for sequelae to avoid delayed or inappropriate care. Herein, we contrasted the available clinical and imaging features of the most notable b-CoVs to date.

The current review primarily focused on the similarities and differences in radiological findings for various known clinical presentations. Chest CT scans noted in the SARS-Cov-2 infection may appear similar to other infections including influenza virotypes, connective tissue diseases, acute lung injuries from drug reactions, and especially pathologies caused by other coronaviruses [71]. Regardless, several studies have demonstrated notable imaging findings apparent on chest CT and radiographs. In the early stages of the disease course, findings of chest radiography and CT may range from a normal appearance to unilateral or bilateral lung opacities, which can have a basilar or peripheral distribution [72]. Several characteristics including higher incidences of bilateral lung involvement, multifocal consolidation, and crazy-paving pattern were uniquely noted in the presentation of SARS-CoV-2 infection [15,18,19,24,25,27]. While there was relatively little documentation of bilateral lung involvement in CT findings of SARS-CoV-1 infection [18], it was described markedly earlier and less frequently compared to the SARS-CoV-2 disease course [15,17-19,24,25,27]. Early lung involvement, bilateral and symmetric GGOs and consolidations and crazy-paving pattern, which is associated with ARDS on chest CT, may be consistent with a more severe presentation of SARS-CoV-2 infection compared to other beta-CoVs. As the number of patients post-hospitalization with SARS-CoV-2 continues to rise more is being uncovered, such as the presence of organizing pneumonia patterns following more prolonged or complicated disease courses [73-75]. Studies are showing the presence of common radiographic findings of organizing pneumonia (peripheral subpleural consolidations or GGOs, peri-bronchovascular opacities or thickening, nodules, masses, and interstitial opacities/septal wall thickening in similar distribution) alongside the needed histological sample that confirms its presence in SARS-CoV-2 cases [73-76].

There are similar extra-pulmonary clinical presentations across the 3 b-CoVs. Notably, patients infected with the b-CoVs exhibited cardiovascular, gastrointestinal, neurological, and haematological presentation among other systems involved.

Reports of abnormal echography are reported for patients infected with SARS-CoV-1 and SARS-CoV-2 for cardiovascular presentation [36,37]. In SARS-CoV-1 infection, results show that there are significant diastolic impairments compared to systolic [37]. Pericardial effusion, myocardial scar represented by delayed gadolinium enhancement, and abnormal T1 and T2 relaxation time, were common findings of cardiac MRI in patients infected with SARS-CoV-2. Venous thromboembolism was frequently reported in patients infected with SARS-CoV-2 with incompressible veins, echogenic clots, and minimal or absent flow within a swollen vein as common imaging findings [40-43]. CT pulmonary angiogram in patients infected with SARS-CoV-2 reported high rates of dilated pulmonary vasculature. Reports of thromboembolism were less frequent in SARS-CoV-1 [44]. Common cardiac MRI findings in patients infected with SARS-CoV-2 include myocardial oedema, pericardial effusion, LGE, and elevated T1, T2, and ECV. Even after recovery, patients who experienced cardiac symptoms continuously exhibited myocardial scar represented by LGE, and raised T1, T2, and ECV levels. At the time of writing, findings on cardiac MRI for SARS-CoV-1 and MERS-CoV are limited.

With gastrointestinal manifestation, imaging results exhibit bowel wall thickening in SARS-CoV-2 infection [64,68,69]. Although patients infected with SARS-CoV-1 and MERS-CoV reported gastrointestinal clinical manifestations, there are limited reports on the imaging findings [64-67]. Neuroimaging findings identified white matter changes and lesions common to SARS-CoV-2 and MERS-CoV [50-52]. Lastly, haematological abnormalities were present in all b-CoVs, such as thrombocytopaenia, disseminated intravascular coagulation, and venous thromboembolism [52,54,59]. Notably, SARS-CoV-1 and SARS-CoV-2 were associated with increases in acute phase reactants such as D-dimer and fibrinogen [68]. However, only SARS-CoV-2 infections reported thrombotic complications such as PE and venous thromboembolism [44].

Current challenges in diagnosing SARS-CoV-2 infection and its evolving nature could potentially lead to increased disease complications and poorer prognosis amongst cases with delayed diagnosis. Because it is difficult to differentiate SARS-CoV-2 pneumonia from many other viral respiratory infections using thoracic imaging alone, a combination of clinical manifestations, laboratory testing, and contact history should be considered in the final diagnosis.

Limitations

The chief limitation of the current study is the consistency of available literature. Herein we examined numerous retrospective studies (e.g. systematic reviews and epidemiological data), which naturally lent themselves to methodological bias, selection bias, and confounding variables previously described by Waller et al. [77]. For example, many studies reported radiological evidence of SARS-CoV-2 infection only from strictly clinically symptomatic patients. Furthermore, analysis of imaging findings representing beta-CoV infection captures only a snapshot of the disease course.

Future directions

The recent emergence of novel SARS-CoV-2 variants further underscores the need for improvements in the diagnostic methods for detecting SARS-CoV-2 infection, given its continuous evolution in the setting of a prolonged pandemic. Future investigations should examine the role of imaging in the screening of SARS-CoV-2 infection of both clinically asymptomatic and symptomatic patients, coupled with assessment of the disease course. In line with the above discussion, detection of SARS-CoV-2 infection by RT-PCR alone may still be limited. While RT-PCR kits improve, clinicians may need to interpret SARS-CoV-2 test results in the overall context of the patient’s clinical presentation, aided by laboratory results and imaging findings.

Conclusions

As of January 2022, more than 300 million cases of SARS-CoV-2 infection have been verified, and 5.5 million SARS-CoV-2-infected persons have died [6]. The key to understanding and increasing diagnostic accuracy for current and future b-CoV strains is having the best possible understanding of their clinical courses and pertinent, although subtle, imaging differences. Herein we reviewed the properties unique to and shared among the primary b-CoV – SARS-CoV-1 (2002), MERS-CoV (2012), and SARS-CoV-2 (2019) in the context of commonly involved organ systems and pertinent imaging findings.

Conflict of interests

The authors declare no conflict of interest.

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