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The diagnostic accuracy of cardiac ultrasound for acute myocardial ischemia in the emergency department: a systematic review and meta-analysis

Abstract

Background

Chest pain is responsible for millions of visits to the emergency department (ED) annually. Cardiac ultrasound can detect ischemic changes, but varying accuracy estimates have been reported in previous studies. We synthetized the available evidence to yield more precise estimates of the accuracy of cardiac ultrasound for acute myocardial ischemia in patients with chest pain in the ED and to assess the effect of different clinical characteristics on test accuracy.

Methods

A systematic search for studies assessing the diagnostic accuracy of cardiac ultrasound for myocardial ischemia in the ED was conducted in MEDLINE, EMBASE, CENTRAL, CINAHL, LILACS, Web of Science, two trial registries and supplementary methods, from inception to December 6th, 2022. Prospective cohort, cross-sectional, case–control studies and randomized controlled trials (RCTs) that included data on diagnostic accuracy were included. Risk of bias was assessed with the QUADAS-2 tool and a bivariate hierarchical model was used for meta-analysis with paired Forest and SROC plots used to present the results. Subgroup analyses was conducted on clinically relevant factors.

Results

Twenty-nine studies were included, with 5043 patients. The overall summary sensitivity was 79.3% (95%CI 69.0–86.8%) and specificity was 87.3% (95%CI 79.9–92.2%), with substantial heterogeneity. Subgroup analyses showed increased sensitivity in studies where ultrasound was conducted at ED admission and increased specificity in studies that excluded patients with previous heart disease, when the target condition was acute coronary syndrome, or when final chart review was used as the reference standard. There was very low certainty in the results based on serious risk of bias and indirectness in most studies.

Conclusions

Cardiac ultrasound may have a potential role in the diagnostic pathway of myocardial ischemia in the ED; however, a pooled accuracy must be interpreted cautiously given substantial heterogeneity and that important patient and test characteristics affect its diagnostic performance.

Protocol Registration: PROSPERO (CRD42023392058).

Background

Chest pain is one of the leading causes for emergency department (ED) visits among adults with more than one million cases reported in England's emergency services during the 2021–2022 period [1] and more than 7 million ED visits in the United States in 2020, corresponding to approximately 5.5–5.7% of all ED visits and to 20% of hospital admissions [1,2,3].

Chest pain can be caused by a wide range of diseases from life-threatening conditions such as acute coronary syndrome (ACS), aortic dissection, pulmonary embolism or pericardial effusion, to more benign and harmless entities [4, 5], making it a diagnostic challenge for emergency physicians. Ultimately, only 5.1% of all chest pain visits are diagnosed with acute coronary syndrome [5], but a missed diagnosis can be clinically devastating with high impact on morbidity and mortality [6, 7].

Transthoracic echocardiography (TTE) has been traditionally performed by cardiologists to provide comprehensive information on structural, functional, and hemodynamic aspects of the heart and great vessels and requires an extensive knowledge base with training standards [8,9,10]. The development of smaller and portable devices along with ultrasound education, training and certification in different medical specialties has led to the emergence of cardiac ultrasound protocols for different clinical settings, and to other specialists taking care of patients with cardiovascular emergencies becoming proficient in cardiac ultrasound imaging [10,11,12,13,14].

Cardiac ultrasound is superior to physical examination in correctly identifying the majority of cardiovascular conditions and can provide and an early assessment of left and right ventricular function, regional wall motion abnormalities (RWMA), pericardial effusion or valvular disorders [15,16,17,18]. Furthermore, clinical examination assisted by a focused cardiac ultrasound (FoCUS) increases sensitivity by 41% compared to clinical examination alone for the diagnosis of left ventricular dysfunction and 25% for the detection of moderate to severe aortic and mitral valve disease [19, 20].

Changes in regional wall motion can be visualized by echocardiography within seconds of myocardial ischemia even before electrocardiographic changes, as shown in patients undergoing coronary angioplasty after balloon inflation [21, 22] RWMA can be seen during transient ischemia with normal cardiac markers [21, 23, 24], and the absence of RWMA in patients with on-going chest pain has been reported to have a high negative predictive value for acute myocardial ischemia [25], giving cardiac ultrasound a potential role in the early detection of acute coronary syndromes in patients with chest pain in the ED.

Several studies have assessed cardiac ultrasound diagnostic accuracy for acute myocardial ischemia in patients with acute chest pain with a wide range of sensitivities (21% to 100%) [26, 27] and specificities (33% to 100%) reported [28, 29]. This uncertainty may be due to the fact that many of these studies are small, and the patient spectrum, ultrasound timing, protocols, devices and providers vary [24, 25, 30,31,32]. The aim of this systematic review is to identify, evaluate and synthetize all the available evidence to yield more precise estimates of the accuracy of cardiac ultrasound for the diagnosis of acute myocardial ischemia in patients with chest pain in the ED and to assess how different patient populations, and clinical or ultrasound characteristics may impact test accuracy [33].

Methods

This review was conducted according to the Cochrane Handbook for Systematic Reviews of Diagnostic Test Accuracy [34], and results reported according to the preferred reporting items for systematic review and meta-analysis of diagnostic test accuracy studies (PRISMA-DTA), included in e-Appendix 1 (Additional File 1) [35]. The protocol for this review was registered in PROSPERO (CRD42023392058).

Search methods

Systematic searches were conducted in MEDLINE, EMBASE, CENTRAL, CINAHL and LILACS from the date of inception to December 6th, 2022, with no language restrictions, and no additional filters. Supplementary searches were conducted in the Web of Science Complete Core Collection (including the Science citation index and the Conference Proceedings citation index), two trial registries (ClinicalTrials.gov and International Clinical Trials Registry Platform), Google Scholar and Google (until 5 pages with no relevant results were retrieved) and finally, by checking reference lists of studies included in the review. Consultation with an experienced librarian was undertaken during the development and implementation of the search strategy [36]. Search terms included a combination of MeSH terms (Medical Subject Headings) and free text using permutations of the search terms “ultrasonography”, “myocardial ischemia” and “emergency” (see e-Appendix 2 in Additional File 1 for details).

Eligibility criteria

The review included prospective cohort, cross-sectional, case–control studies and randomized controlled trials of interventions that included data on diagnostic accuracy. Case reports/series, animal studies, and retrospective studies were excluded [37, 38]. We included studies conducted in adults with chest pain or chest pain equivalents of any duration, alone or in combination with other signs or symptoms presenting to the ED or chest pain units within the ED. In cases of a mixed clinical presentation, studies that reported separate data for patients with chest pain and studies where the majority of patients presented with chest pain were included. Trauma, postcardiac arrest, and mechanically ventilated patients were excluded as well as prehospital, primary/ambulatory care, hospital wards, and intensive/coronary care unit settings. Index test was any cardiac ultrasound protocol including transthoracic echocardiography (comprehensive or limited) or point-of-care ultrasound (POCUS) protocols, assessing regional wall motion abnormalities or left ventricular decreased contractility, conducted at the patient’s bedside, performed by physicians, training physicians or sonographers with the intention of identifying acute myocardial ischemia or evaluating the etiology of chest pain. Studies using only speckle-tracking and strain echocardiography were excluded based on limited availability of this technology in emergency settings affecting generalizability of findings as well as ultrasounds performed by radiologists, nurses, or conducted inside a radiology suite. Studies that assessed any type of myocardial ischemia as target condition (ACS, myocardial infarction and/or unstable angina, significant coronary artery stenosis), using any test positivity criteria and using any relevant reference standard or combination of reference standards to diagnose acute myocardial ischemia were included. ACS was defined as the spectrum of disease including unstable angina, non-ST and ST-segment elevation myocardial infarction [39, 40]. Any definition of significant coronary artery stenosis was included. Studies that did not provide sufficient data to construct a 2 × 2 table were excluded.

Screening, selection, and data extraction

Literature searches were uploaded into Covidence systematic review software, Veritas Health Innovation, Melbourne, Australia (available at www.covidence.org) and underwent de-duplication. Two independent review authors conducted title and abstract screening (VZ and RMN), full text review of all potentially relevant studies identified (VZ and MCAG) and data extraction (VZ and MCAG). Discrepancies were resolved by discussion and disagreements were resolved by referral to a third reviewer. Multiple reports from the same study were merged to avoid bias [41, 42] and additional information from authors was sought to resolve any questions regarding eligibility if needed. Data was extracted into a pre-defined data extraction template (e-Appendix 3).

Assessment of methodological quality

Risk of bias and applicability was assessed by two independent reviewers (VZ and MCAG) using the QUADAS-2 tool [43, 44]and disagreements were resolved through consensus. A predefined quality assessment template was used.

Data synthesis and statistical analyses

Data extracted from all studies was used to construct the two-by-two tables and individual study estimates of sensitivity and specificity were presented graphically in paired Forest plots. Meta-analysis was conducted using a bivariate hierarchical random-effects model [33, 45,46,47]. An overall summary point with 95% confidence region and 95% prediction region were estimated and displayed in a summary receiver operator characteristic (SROC) plot. Planned subgroup analyses were conducted to assess how diagnostic accuracy varied across different subgroups (ultrasound protocol, operator, device, timing of ultrasound, and reference standard) [48]. Exploratory analyses for other sources of heterogeneity were conducted by visual inspection of forest plots and summary points and confidence regions in SROC plots. Based on these exploratory analyses, additional post-hoc subgroup analyses were conducted for patient spectrum and target condition. Summary estimates of sensitivity and specificity for each subgroup were calculated, SROC plots with summary points and 95% confidence regions were obtained for the different subgroups [33, 45, 46] and the Likelihood Ratio test was used for hypothesis testing of statistical significance between subgroups [49, 50].

All statistical analyses were conducted using STATA 18.0 Basic Edition with the recently developed and validated Metadta command [49, 51] Deek’s funnel plot was constructed to assess for publication bias and other sample size related effects and Deek’s test was conducted to assess funnel plot asymmetry using midas command for STATA [47, 52] Sensitivity analyses were conducted removing studies judged to be at high risk of bias, studies with inappropriate reference standard and unpublished studies, respectively. The GRADE approach was used to assess the certainty of evidence and results displayed using GRADEpro GDT [53,54,55].

Results

Searching in databases and registers identified 8760 studies. After removing duplicates and title and abstract screening, 56 full text studies were assessed for eligibility and 19 studies were identified. An additional 10 eligible studies were identified through search engines and handsearching of reference lists of included studies, with a total of 29 studies included in the review (Fig. 1) [24,25,26,27,28,29,30, 56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76,77].

Fig. 1
figure 1

PRISMA flow diagram of search results and study selection

Characteristics of included studies

Key characteristics of the included studies are summarized in Table 1. Mean age of the population across studies ranged from 49 to 68 years (average: 59 years [SD 5.2]) and the proportion of male patients ranged from 42.3 to 84.5% (mean 62.6% [SD 11.9]). Patient spectrum varied across the studies, mainly in the inclusion (13 studies) [24, 29, 30, 56, 61, 63, 65, 70, 72,73,74, 76, 77] or exclusion (13 studies) [25, 27, 57,58,59,60, 62, 64, 66, 67, 69, 71, 75] of patients with previous heart disease. See e-Table 1 (Additional File 1: e-Appendix 4) for additional information.

Table 1 Description of included studies

Cardiac ultrasound was conducted as POCUS in 5 studies [28, 30, 59, 72, 74] and as a TTE in 20 studies (either standard [24, 26, 29, 60,61,62, 66, 67, 70, 71, 73, 75, 76] or limited-TTE).[25, 27, 57, 58, 63, 64, 69] Cardiac ultrasound operators were from the cardiology department in 6 studies (cardiologists, cardiology fellows or sonographers),[27, 60, 63, 66, 67, 76] emergency department in 6 studies (emergency physicians or residents),[28, 30, 57, 59, 72, 77] sonographers without a description of department or training backgrounds in 3 studies[24, 29, 75], and not reported in 11 studies.[25, 26, 56, 58, 62, 64, 65, 68,69,70,71] In two studies, the person performing the ultrasound was described as “an experienced operator” [61, 73] and in one study was performed by 3rd year medical students [74]. The timing of cardiac ultrasound varied widely across all studies. Of note, nine studies reported ultrasound was conducted at arrival to the ED or immediately after arrival [24, 29, 60, 69, 70, 72, 73, 75, 76], during the first 4 h[63], 8 h [25], 12 h [62],or 24 h [71], and in most studies [16] the timing of ultrasound was not reported [27, 28, 30, 56,57,58,59, 61, 64,65,66,67,68, 74, 77]. Full echocardiography devices were used in 69% of studies [20], hand-held or cart/tray based devices in four studies [28, 57, 74, 76] and not reported in five studies [26, 56, 59, 65, 77]. The characteristics of the index test for the included studies are summarized in Table 2.

Table 2 Characteristics of the included studies: index test

The reference standard varied widely across studies, using final diagnosis or chart review [26, 29, 30, 57, 59, 64, 71, 72, 76, 77], cardiac enzymes results [61, 70, 73], a combination of tests (between ECG, cardiac enzymes, non-invasive testing, and coronary angiography) [24, 25, 27, 62, 63, 65,66,67, 74] or significant coronary artery stenosis [28, 58, 60, 68, 69, 75]. The definition of significant coronary stenosis varied between ≥ 50% [58, 69] to ≥ 70% narrowing in epicardial coronary arteries [23, 66]. It is important to mention that cardiac enzymes varied across time, with studies conducted in the 1990’s and early 2000’s using CK and CKMB and studies from the late 2000’s onwards using troponin and high sensitivity troponin.

Quality assessment of included studies.

Overall, most studies were at high risk of bias due to patient selection and reference standard factors. High risk of bias was found in the patient selection domain (22 studies, 76%) [24,25,26,27,28,29, 56,57,58,59,60, 62,63,64,65,66,67, 69,70,71,72, 74, 75] due to convenience sampling or inappropriate exclusions (patients with previous heart disease, low or high risk of ACS and/or inadequate ultrasound windows); in the reference standard domain (15 studies, 52%) [24, 26, 27, 29, 57, 61, 63, 66,67,68, 70,71,72,73,74] due to lack of blinding or because it was not likely to correctly classify myocardial ischemia [24, 26, 27, 29, 57, 61, 63, 66,67,68, 70,71,72,73,74]; and in the flow and timing (13 studies, 45%) [24,25,26, 28, 29, 57, 66, 68,69,70,71,72, 74] due to partial or differential verification or the exclusion of patients from the analysis (i.e., patients with inadequate echocardiographic windows) [24,25,26, 28, 29, 57, 66, 68, 70, 71, 74]. The index test domain was judged to be at low risk of bias in most studies (28 studies, 97%).

Nineteen studies (65%) [25,26,27, 30, 56,57,58,59,60, 62, 64,65,66,67, 69,70,71,72, 75], were judged to have high concerns of applicability for patient selection due to the inappropriate exclusion of patients (either previous heart disease or low/high probability of coronary disease) limiting the applicability of the findings to patients commonly presenting to the ED with chest pain. Thirteen studies (45%) were judged to have high concerns of applicability in the reference standard domain [24, 25, 27,28,29, 57, 61,62,63, 67, 70, 73, 74] due to the use of CK, CK-MB and LDH as cardiac biomarkers, which are not currently used in the diagnostic pathway of myocardial ischemia and in some studies, the definition of myocardial ischemia as target condition does not match the current definition [24, 25, 27,28,29, 57, 61,62,63, 67, 70, 73, 74]. Index test was found to have uncertain (16 studies) [24,25,26,27, 56, 59, 61, 62, 64, 65, 67,68,69,70,71, 73, 77] or low concerns (11 studies), [23, 28, 30, 57, 58, 63, 66, 72, 75, 76] and two studies with high concerns for applicability.[29, 74] (Fig. 2 and e-Appendix 5 in Additional File 1).

Fig. 2
figure 2

Risk of bias and applicability concerns graph (A) and summary table (B): Review author’s judgements about each domain are presented as percentages across included studies and for each included study

Summary of findings

There was substantial heterogeneity across the 29 studies, with sensitivities ranging from 21%[26] to 100%[77] and specificities from 33%[28] to 100%[29] (Fig. 3).

Fig. 3
figure 3

Paired Forest plot of sensitivity and specificity of all included studies. TP = true positive, TN = true negative, FP = false positive, FN = false negative

Results are displayed in chronological order to assess possible trends with technological developments or diagnostic criteria over time, however, no clear trend was identified across time according to the year of publication [78].

The median proportion of patients with the target condition across studies was 26.9% (IQR 15.2—53.2%). The summary estimate of sensitivity and specificity was 79.3% (95%CI 69.0 to 86.8%) and 87.3% (95%CI 79.9 to 92.2%), respectively, with a wide 95% predictive region in the SROC plot (Fig. 4). Based on GRADE, the overall assessment of certainty was very low based on very serious risk of bias, and indirectness and serious imprecision (Table 3). More detailed explanations on each domain grading are provided in e-Table 2 (Additional File 1e-Appendix 6). [53,54,55].

Fig. 4
figure 4

SROC plot of sensitivity and specificity of all included studies. Each study is represented by a circle, with the size of the circle indicating the size of the sample

Table 3 Summary of findings

Investigation of heterogeneity and subgroup analyses

Subgroup analyses were conducted to identify sources of heterogeneity and to assess the effect of specific study characteristics on the diagnostic accuracy of cardiac ultrasound in patients admitted with chest pain to the ED. Table 4 describes subgroup analyses for key study characteristics. Forest plots and a detailed description of all subgroup analyses are included in e-Appendix 7 (Additional File 1).

Table 4 Diagnostic Accuracy of cardiac ultrasound—Subgroup Analyses

Studies that excluded patients with previous heart disease showed a significantly higher specificity (91.0%, [95%CI 84.1 to 95.1%]) compared to studies that included patients with or without heart disease (78.0% [95%CI 66.1 to 86.6%], P = 0.029). Sensitivity was similar across both groups, with substantial heterogeneity between studies, as displayed by the wide prediction region (Fig. 5A).

Fig. 5
figure 5

SROC plot of sensitivity and specificity in subgroup analyses, according to A = Patient Spectrum, B = Ultrasound Operator, C = Timing of Ultrasound, D = Ultrasound Device, E = Type of Ultrasound Protocol, F = Reference Standard, G = Target Condition. Diamond: summary estimate, dashed line: 95% confidence region, dotted line: 95% prediction region

There was no significant difference in sensitivity and specificity according to the ultrasound operator, the type of ultrasound device or the ultrasound scanning protocol used, as depicted in Fig. 5B, D and E respectively.

There was a significantly higher sensitivity in studies where ultrasound was conducted at admission or immediately after admission (89.5% [95%CI 78.9 to 95.1]), compared to studies where the timing of ultrasound was conducted at any time during the first 24 h (62.8% [95%CI 34.6 to 84.3, p = 0.038]) with similar specificity across both groups (P = 0.945) with substantial heterogeneity between studies in both groups represented in the wide 95% prediction region (Fig. 5C).

There was a significant difference in specificity across studies according to the reference standard used. Studies that used final chart review showed a high specificity (93.0% [95% CI 86.7 to 96.4%]), in contrast to studies that used cardiac enzymes only (50.7% [95% CI 23.8 to 77.3%]). Studies where the reference standard was coronary angiography, or a combination of tests had a specificity of 88.7% (95% CI 76.2 to 95%) and 85.2% (95% CI 70.6 to 93.2) respectively (Fig. 5F). Sensitivity was not significantly different across these groups.

The target condition also had a significant effect on sensitivity (P = 0.035) and specificity (P = 0.002) across groups (Fig. 5G). Pooled sensitivity was higher (90.7% [95%CI 78.3 to 96.3%]) in studies that used myocardial infarction as the target condition and lower in studies that used ACS (68.0%; 95%CI 53.3 to 79.8%). Pooled specificity was higher (93.2% [95%CI 88.2 to 96.2%]) for studies with ACS as the target condition and lower (67.4%; [95%CI 49.4 to 81.4%]) for myocardial infarction without an overlap between the 95% confidence regions.

Sensitivity analyses were conducted by removing studies with high risk of bias, studies with inappropriate reference standard and unpublished studies and did not show substantial changes in the effects estimates. A detailed description of these analyses is included in e-Appendix 8 (Additional File 1). Deek’s funnel plot for publication bias showed an acceptable symmetry with a P value of 0.91, suggesting no publication or small sample size study effect (Additional File 1: e-Fig. 15, e-Appendix 9).

Discussion

This systematic review assessed the available evidence on cardiac ultrasound for the diagnosis of acute myocardial ischemia in patients with chest pain in the ED. Twentynine relevant studies were included in this review, with 5043 patients. The overall summary estimate for sensitivity and specificity was 79.3% (95%CI 69.0 to 86.8%) and 87.3% (95%CI 79.9 to 92.2%), respectively, but must be interpreted with caution given the substantial heterogeneity between studies.

Potential differences in patient spectrum, timing of ultrasound, reference standard and definition of the target condition suggested a significant effect on the performance of ultrasound. Studies that excluded patients with previous heart disease had a higher pooled specificity compared to studies that included patients with or without heart disease, with similar sensitivity, probably reflecting that excluding patients with previous RWMAs or reduced left ventricular ejection fraction may allow an easier identification of new RWMAs and decrease the number of false positives. Studies where cardiac ultrasound was conducted at admission or immediately after admission showed higher pooled sensitivity, compared to studies where the timing of ultrasound was conducted at any time during the first 24 h, most likely reflecting the transient nature of the myocardial RWMA during myocardial ischemia [21, 22].

The reference standard used significantly affected specificity of cardiac ultrasound, with a very low pooled specificity if only cardiac enzymes were used, compared to final chart review, coronary angiography or a combination of tests, probably because cardiac enzymes may also be elevated in myocardial injury of different etiologies not related to ischemia [79, 80]. Finally, the target condition also had a significant effect on sensitivity and specificity of cardiac ultrasound, showing a low pooled sensitivity in studies that assessed ACS (including unstable angina and myocardial infarction), likely reflecting the transient nature of RWMA in unstable angina. Studies that assessed myocardial infarction compared to the other target conditions had a low pooled specificity, since transient ischemic changes seen by ultrasound do not necessarily result in myocardial necrosis and infarction. The diagnostic accuracy of cardiac ultrasound was not significantly affected by the ultrasound operator, device or protocol used.

The diagnosis of acute myocardial ischemia in the ED is currently based on multiple criteria, with patients initially assessed according to history and physical examination, ECG findings, and high-sensitive troponins [5, 81]. Individually, these tests have limited diagnostic value. Clinical features and physical findings have sensitivities that range from 6.8% to 85.1% and specificities from 34.1% to 94.8% [82, 83]. The ECG has a very low sensitivity (29–45%) and a specificity from 67 to 94% [84, 85], and even ST-segment elevations have a false positive rate of 9% for coronary disease leading to unnecessary invasive procedures.[86] High-sensitivity troponin at admission has a sensitivity of 90% (95%CI 85–94%) and specificity of 78% (95%CI 72–83%), and multiple sampling protocols report a sensitivity and specificity of 99% (95%CI 98 to 100%) and 68% (95%CI 67 to 70%). A great limitation of high-sensitivity troponin is that it might be elevated in other disease states different than myocardial ischemia, like heart failure or chronic kidney disease and should not be used solely as a rule-in test [87]. Additionally, troponin laboratory turnaround time takes more than 90 min in most institutions in the United States [88] and frequently there is a need for a repeated sample at 1, 2 or 3 h, to avoid false negative results if blood samples are drawn too soon after the initiation of chest pain [87, 89]. Cardiac ultrasound can detect early regional myocardial wall motion abnormalities induced by ischemia [21, 22], and has been shown to be more accurate than history and physical exam for the detection of many cardiac conditions [18,19,20]. Early echocardiographic detection of myocardial ischemia may also help decrease physician’s diagnostic uncertainty [32, 90,91,92], improve patient’s outcomes by improving time to treatment [90], or shortening length of stay, and it could help reduce downstream testing and overall costs [18, 92, 93] by narrowing the differential diagnosis in patients with chest pain. Nevertheless, its role in the diagnostic pathway for myocardial ischemia in the ED is currently limited to a downstream test for uncertain cases. Thus, the first step to include cardiac ultrasound in this diagnostic pathway is to assess its accuracy and to understand the different clinical or technical factors that may affect its performance. This systematic review summarizes all available evidence, providing an overall diagnostic accuracy for cardiac ultrasound in patients with chest pain in the ED, which, in lieu of the individual diagnostic accuracy of currently used tests, may provide additional valuable information to the clinician to make a prompt and accurate diagnosis. Most importantly, this review provides an insight into the probable causes for the substantial heterogeneity, showing that the diagnostic performance of cardiac ultrasound may be significantly affected by different clinical and technical characteristics that will likely be encountered in the ED, where some patients admitted with chest pain will have previous heart disease, or some patients will be able to receive the cardiac ultrasound at admission, or later depending on training, equipment, and personnel availability. Therefore, an overall diagnostic accuracy must be interpreted carefully, and each specific factor must be considered for the clinician to assess the diagnostic value of the cardiac ultrasound in the individual patient. Most likely, a cardiac ultrasound performed at ED admission or in patients with on-going pain without previous heart disease would be the most clinically useful based on its diagnostic performance, with the additional potential of identifying and/or ruling out other possible causes of chest pain.

Strengths and limitations

This review has several strengths and limitations. The large comprehensive search strategy is likely to have captured all relevant studies; a substantial number of studies and patients were included leading to greater precision in summary estimates, and a thorough evaluation of heterogeneity was based on clinical and physiological factors that are clinically relevant. Nevertheless, patient spectrum and target condition differences were found on post-hoc exploratory analysis. Some subgroups had a high degree of uncertainty in the estimates (i.e., timing of ultrasound during the first 24 h or cardiac enzymes reference standard) limiting the interpretation since the statistical power of the comparison also depends on the precision of the accuracy estimates. Individual patient data was not used for comparisons and uncontrolled bias from study-level comparisons and other confounders may have influenced the results. Significant differences found in these subgroup analyses are only exploratory in nature and may not reflect the true causal difference. Important temporal differences in the reference standard with the evolution of myocardial injury markers throughout the years may have influence the results, which was acknowledged in the quality assessment of the studies. However, there was no substantial temporal trend observed in the Forest Plot. Also, there was significant underreporting of important study characteristics and missing information that did not allow for a more robust assessment of its effect. There were only minor deviations from the protocol (Additional File 1: e-Table 7, e-Appendix 10).

Important consequences may arise from applying a cardiac ultrasound in the diagnostic pathway of patients with chest pain in the ED and significant uncertainty in the evidence from this review limits recommendations for clinical practice. Considering that ultrasound is a bedside, accessible and low-cost diagnostic test and that ultrasound training is becoming part of routine medical education in many countries, there is need for a well-designed diagnostic randomized trial that clarifies the potential role of cardiac ultrasound in the diagnostic pathway of patients with chest pain, ideally powered to assess differences according to patient’s previous heart disease, considering the complete spectrum of myocardial ischemia (unstable angina as well as myocardial infarction), and providing evidence of its effect on relevant patient clinical outcomes, resource-use outcomes and costs [94].

Conclusion

Cardiac ultrasound may have a potential role in the diagnostic pathway of myocardial ischemia in the emergency department; however, the overall pooled accuracy must be interpreted cautiously given substantial heterogeneity and that important patient and test characteristics affect its diagnostic performance in this clinical context. Further well-designed research that clarifies its role in the diagnostic pathway and its clinical utility as an adjunct to clinical evaluation, ECG, and troponins for patients with chest pain in the emergency department needs to be conducted.

Availability of data and materials

The datasets used and/or analysed during the current study are available from the corresponding author on reasonable request.

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This research was submitted by VZ as final dissertation for the MSc in Evidence Based Healthcare degree at the University of Oxford, UK.

Funding

AP receives funding from the National Institute for Health and Care Research (NIHR) School for Primary Care Research. JPS receives funding from the NIHR, British Heart Foundation and Wellcome Trust/Royal Society via a Sir Henry Dale Fellowship (ref: 211182/Z/18/Z). This research was funded in part, by the Wellcome Trust. For the purpose of open access, the author has applied a CC BY public copyright license to any Author Accepted Manuscript version arising from this submission.

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VZ conceived the study and was involved in all aspects, including study design, literature search, screening and selection, data extraction, data analysis, and manuscript preparation. AP and JPS supervised all research aspects and assisted with manuscript preparation, RMN assisted with literature screening and manuscript revision, MCAG assisted with study selection, data extraction and manuscript revision. NR assisted in the literature search strategy design and conduct and with manuscript revision.

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Correspondence to Virginia Zarama.

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Competing interests

VZ has received honorarium from Mindray as a conference speaker and from academic institutions for ultrasound training. AP receives funding from the National Institute for Health and Care Research (NIHR) School for Primary Care Research. JPS receives funding from the NIHR, British Heart Foundation and Wellcome Trust/Royal Society via a Sir Henry Dale Fellowship (ref: 211182/Z/18/Z). This research was funded in part, by the Wellcome Trust. For the purpose of open access, the author has applied a CC BY public copyright license to any Author Accepted Manuscript version arising from this submission. RM, MCA, NR declare no conflict of interest.

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Zarama, V., Arango-Granados, M.C., Manzano-Nunez, R. et al. The diagnostic accuracy of cardiac ultrasound for acute myocardial ischemia in the emergency department: a systematic review and meta-analysis. Scand J Trauma Resusc Emerg Med 32, 19 (2024). https://0-doi-org.brum.beds.ac.uk/10.1186/s13049-024-01192-3

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