Abstract
Objectives
Computed tomography (CT) pulmonary angiography is widely used in patients with suspected pulmonary hypertension (PH). However, the diagnostic and prognostic significance remains unclear. The aim of this study was to (a) build a diagnostic CT model and (b) test its prognostic significance.
Methods
Consecutive patients with suspected PH undergoing routine CT pulmonary angiography and right heart catheterisation (RHC) were identified. Axial and reconstructed images were used to derive CT metrics. Multivariate regression analysis was performed in the derivation cohort to identify a diagnostic CT model to predict mPAP ≥ 25 mmHg (the existing ESC guideline definition of PH) and > 20 mmHg (the new threshold proposed at the 6th World Symposium on PH). In the validation cohort, sensitivity, specificity and compromise CT thresholds were identified with receiver operating characteristic (ROC) analysis. The prognostic value of the CT model was assessed using Kaplan-Meier analysis.
Results
Between 2012 and 2016, 491 patients were identified. In the derivation cohort (n = 247), a CT model was identified including pulmonary artery diameter, right ventricular outflow tract thickness, septal angle and left ventricular area. In the validation cohort (n = 244), the model was diagnostic, with an area under the ROC curve of 0.94/0.91 for mPAP ≥ 25/> 20 mmHg respectively. In the validation cohort, 93 patients died; mean follow-up was 42 months. The diagnostic thresholds for the CT model were prognostic, log rank, all p < 0.01.
Discussion
In suspected PH, a diagnostic CT model had diagnostic and prognostic utility.
Key Points
• Diagnostic CT models have high diagnostic accuracy in a tertiary referral population of with suspected PH.
• Diagnostic CT models stratify patients by mortality in suspected PH.
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Introduction
Pulmonary hypertension (PH) has been defined arbitrarily as a mean pulmonary artery pressure of at least 25 mmHg at rest [1]. However, data from normal subjects have suggested that a mean pulmonary artery pressure in excess of 20 mmHg is abnormal [2]. The 6th World Symposium on PH has therefore proposed a threshold of > 20 mmHg to define PH and a requirement for a pulmonary vascular resistance of at least 3 Wood Units to define pre-capillary PH. PH has many causes and its presence is associated with a high morbidity and a high mortality [3]. Due to the non-specificity of symptoms, PH is often diagnosed late. Given the availability of therapies for specific forms of PH, there is increasing interest in better patient phenotyping and improving diagnostic rates with imaging [4].
Transthoracic Doppler echocardiography is a non-invasive test, which is widely available, is relatively inexpensive and is recommended in international guidelines if the diagnosis of PH is suspected [1]. In a meta-analysis of diagnostic studies, the pooled sensitivity for the diagnosis of PH was 88% (84–92) and specificity was 56% (46–66) [5]. In patients with obesity or lung disease, views of the tricuspid regurgitant jet and cardiac chambers may be inadequate [6, 7]. A recent study has shown that, in a large population of patients undergoing echocardiography, tricuspid regurgitant jet velocity can be measured in 50% of patients [8]. More recently, there has been interest in the role of MRI techniques to identify patients with PH and a number of features visible on MRI such as elevated ventricular mass index [9,10,11], reduced pulmonary artery pulsatility [12, 13] and pulmonary flow [14, 15] may suggest the diagnosis of PH. However, MRI is expensive and less available than other imaging modalities. Right heart catheterisation (RHC) is the gold standard test for pressure measurement and thus diagnosis of PH.
Computed tomography has been seen to have several technological advances over the last three decades, and the introduction of iterative reconstruction CT algorithms has led to a significant reduction in image noise and radiation dose [16]. CT is frequently used in the evaluation of breathlessness and in the assessment of lung and increasingly cardiac disease [17,18,19,20,21,22,23,24]. The majority of studies using CT as a diagnostic tool have concentrated primarily on pulmonary artery size. However, remodelling of the cardiac chambers and bowing of the interventricular septum can also be detected on CT pulmonary angiography [18, 19, 25,26,27] in patients with PH. The aim of this study was to (a) build a diagnostic CT model in patients with suspected PH using the current guideline definition of PH (mPAP ≥ 25 mmHg) and the recent proposed definition of > 20 mmHg, and (b) test its prognostic significance.
Materials and methods
Patients
Consecutive treatment-naïve patients with suspected PH referred to a nationally designated PH centre (Sheffield Pulmonary Vascular Disease Unit) between April 2012 and March 2016 were identified from the ASPIRE Registry MRI database [28]. Inclusion criteria required CT pulmonary angiography to be performed within 90 days of RHC. All patients underwent MRI within 48 h of RHC. Ethical approval for this analysis of imaging techniques and routinely collected data was granted by our institutional review board.
CT pulmonary angiography acquisition
All CT pulmonary angiograms in Sheffield were performed on a light-speed 64-slice MDCT scanner (GE Healthcare). Standard acquisition parameters were used: 100 mA with automated dose reduction, 120 kV, pitch 1, rotation time 0.5 s and 0.625 mm collimation. A 400 mm × 400 mm field of view was used with an acquisition matrix of 512 × 512. One hundred millilitres of intravenous contrast agent (Ultravist, Bayer) was administered at a rate of 5 mL/s. HRCTs were reconstructed using the contrast-enhanced acquisitions with 1.25 mm collimation from the apex of the lung to the diaphragm. Inclusion criteria for studies performed outside of Sheffield included CT pulmonary angiography with volumetric coverage of the pulmonary vasculature and cardiac structures and reconstructed slice thickness of 2 mm or less.
CT image analysis
Vessel measurements
Main pulmonary artery (PA) diameter was measured perpendicular to the vessel axis at the widest point. At the same level as the main PA measurement, the diameter of the ascending and descending aorta was recorded and the pulmonary artery to aortic ratio was calculated (Fig. 1a). Right and left main pulmonary artery diameters were measured at the widest point. The IVC diameter was measured just below the entry level to the right atrium. The extent of hepatic reflux was measured using an adapted 4 grade score of regurgitation.
Cardiac measurements
Maximal biventricular areas and diameters (mid-ventricular) and atrial areas were manually traced on axial images. Slices were chosen to ensure the greatest area or diameter was measured. Ventricle and atrial diameters were measured on the same slices as area measurements. Ventricular muscle area and circumference walls were measured for both right and left ventricles. The muscular thickness of the RV outflow tract was measured anteriorly ~ 1 cm below the pulmonary valve (Fig. 1b). Maximal LV area is shown in Fig. 1d and maximal RV and LV diameters are shown in Fig. 1e and f respectively.
Reconstructed short-axis images
Images were reconstructed using multi-planar reformat software (IMPAX, volume viewer, Agfa HealthCare) to generate a mid-chamber short-axis image and 4-chamber image. On the short-axis image, the interventricular septal angle was measured, defined as the angle from the RV insertion points to the mid-interventricular septum (Fig. 1c). On the reconstructed 4-chamber image, biventricular areas and diameters (mid-ventricular) and atrial areas were manually traced.
MR image acquisition and analysis methods and details on right heart catheterisation are found in the Supplementary Methods.
Statistics
Normal distribution was assessed through visual and statistical analysis, using histograms and quantile-quantile (Q-Q) plots as a way of determining normality of all variables. Where appropriate, continuous data was presented with mean and standard deviation. Group comparison of continuous data was made using independent t test and categorical group comparisons was made using chi-square and Fisher’s exact test. Correlations between CT measurement and mPAP, PVR and cardiac MRI data were made using Pearson’s correlation test. Derivation and validation cohorts were identified using random number generation. CT variables significant at independent t test or chi-square at univariate analysis (p < 0.05) in the derivation cohort were entered into a binary logistic regression model using forward stepwise selection. CT diagnostic model A was the resultant model. Sensitive, compromise and specific diagnostic thresholds were identified in the derivation cohort by visual inspection of ROC curves. In the validation cohort, the derived thresholds were tested using the 2 × 2 contingency table to determine sensitivity, specificity and positive and negative predictive values. A second model, CT diagnostic model B, was developed without septal angle; septal angle is the only measurement that requires image reconstruction, and some observers will not have access to a reconstruction tool when reporting or in situations where there is limited time; therefore, we elected to develop a model that could be used on the axial images alone.
The prognostic value of CT sensitive, compromise and specific diagnostic thresholds and right heart catheterisation thresholds of ≥ 25 mmHg and > 20 mmHg was assessed using Kaplan-Meier and Cox proportional hazards regression analysis. The intra-class correlation co-efficient (ICC) was used to test the reproducibility of CT metrics. IBM SPSS Statistics 22 was used to perform the statistical analysis. A p value of < 0.05 was considered statistically significant.
Results
Between April 2012 and March 2016, 840 consecutive treatment-naïve patients with suspected PH were identified who underwent MRI and RHC, of whom 491 patients underwent CT pulmonary angiography within 90 days. Patients underwent CT imaging at 68 different institutions and 78% of CT pulmonary angiograms were performed at the Sheffield Pulmonary Vascular Disease Unit. Patient demographics, RHC and CT metrics for patients with PH (n = 420), with mPAP < 25 mmHg (n = 71) and with mPAP ≤ 20 mmHg are shown in Table 1. Patients with PH were older (p < 0.001) and more likely to be female (p < 0.013) and have a higher WHO functional class (p < 0.001) and lower walking distance (p < 0.001), than patients without PH. Correlation of CT metrics with mPAP and PVR is presented in Supplementary Table 1 and key correlations are in Fig. 2. Table 2 presents the sensitivity, specificity and positive and negative predictive value of pulmonary artery diameter, right ventricular outflow tract thickness, interventricular septal angle and RV/LV diameter ratio.
Derivation cohort
Random patient selection identified a derivation cohort of 247 and a validation cohort of 244 patients. There were no significant differences in age, proportion of patients with PH, WHO functional class or right heart catheterisation metrics between the two cohorts (p > 0.05). However, there was a higher proportion of females in the derivation cohort as compared with the validation cohort (Supplementary Table 2).
CT diagnostic model A
In the derivation cohort, a regression model was identified. The model incorporated main pulmonary artery diameter, right ventricle outflow tract thickness, left ventricular area and interventricular septal angle as follows: model A score = − 14.299 + (0.192 × main pulmonary artery diameter, mm) + (0.518 × right ventricle outflow tract thickness, mm) − (0.001 × left ventricular area, mm2) + (0.068 × interventricular septal angle, degrees). The area under the curve (AUC) in the derivation cohort was 0.92 (see Fig. 3). The AUC in the derivation cohort with adjustment for body surface area was 0.86. The following thresholds were identified in the derivation cohort: high sensitivity (model A score 0), high specificity (model A score 2.5) and a compromise threshold (model A score 1.25). The diagnostic model performed better than individual CT metrics. Of the individual CT metrics, the AUC for pulmonary artery diameter was 0.79, right ventricular outflow tract thickness 0.79, left ventricular area 0.64 and interventricular septal angle 0.84.
For the prediction of mPAP > 20 mmHg, a model of − 13.843 + (0.94 × right ventricle outflow tract thickness, mm) + (0.094 × interventricular septal angle, degrees) was identified. The diagnostic accuracy of this model was AUC 0.88 for detecting mPAP > 20 mmHg; this was of lower accuracy in comparison with model A that had a diagnostic accuracy of 0.90 for detecting mPAP > 20 mmHg.
CT diagnostic model B
In the derivation cohort, a second model was developed; the model incorporated main pulmonary artery diameter, right ventricle outflow tract thickness and RV/LV diameter ratio, as follows: model B score = − 9.181 + (0.174 × main pulmonary artery diameter, mm) + (0.480 × right ventricle outflow tract thickness, mm) + (2.539 × RV/LV diameter, ratio). This model had an AUC of 0.89 in the derivation cohort. The following thresholds were identified in the derivation cohort: high sensitivity (model B score 0.5), compromise threshold (model B score 1.0) and a high specificity threshold (model B score 1.5) (see Table 4). CT diagnostic prediction model to detect mPAP > 20 mmHg was also derived: − 4.553 + (0.661 × right ventricle outflow tract thickness, mm) + (3.027 × RV/LV diameter, ratio). This model had lower accuracy for prediction of mPAP > 20 mmHg at ROC analysis: AUC 0.86 compared with 0.89 for model B.
Validation cohort
Identification of patients with mPAP greater than or equal to 25 mmHg
CT diagnostic model A
In the validation cohort, the CT diagnostic model A showed high diagnostic accuracy for the detection of PH (AUC at 0.94; Fig. 3). The CT diagnostic model A adjusted for BSA did not improve the diagnostic performance of the model (AUC 0.92). Sensitivity, specificity and positive and negative predictive values are presented for high sensitivity, specificity and compromise thresholds in Table 3.
CT diagnostic model B
Model B was derived excluding the single parameter that required reconstruction (interventricular septal angle). In the validation cohort, diagnostic CT model B had an accuracy of 0.92. Table 3 details the sensitivity, specificity and positive and negative predictive values for high sensitivity, specificity and compromise thresholds.
Identification of patients with mPAP greater than 20 mmHg
CT diagnostic model A
In the validation cohort, the CT diagnostic model A showed high diagnostic accuracy for the detection of PH (AUC at 0.91). The CT diagnostic model A adjusted for BSA marginally improved the diagnostic performance of the model (AUC 0.93).
CT diagnostic model B
Model B was derived excluding the single parameter that required reconstruction (interventricular septal angle). In the validation cohort, diagnostic CT model B was marginally weaker than model A with an accuracy of 0.87.
Table 4 details the sensitivity, specificity and positive and negative predictive values for high sensitivity, specificity and compromise thresholds for identification of patients with mPAP greater than or equal to 20 mmHg.
Prognostic significance of CT and right heart catheterisation thresholds
CT diagnostic model A
In the validation cohort, 93 patients died; mean follow-up was 42 months. The CT diagnostic model A sensitive (0), compromise (1.25) and (2.5) specific thresholds for mPAP ≥ 25 mmHg were strongly predictive of mortality log rank 11.13 (p = 0.0009 and 9.70; p = 0.002 and 9.49; p = 0.002 respectively). The CT diagnostic model A sensitive (0), compromise (1.0) and (2.25) specific thresholds for mPAP > 20 mmHg were also strongly predictive of mortality log rank 11.13 (p = 0.0009 and 6.25; p = 0.010 and 10.57; p = 0.001).
CT diagnostic model B
The CT diagnostic model B sensitive (0.5), compromise (1.0) and (1.5) specific thresholds for mPAP ≥ 25 mmHg were as follows (mortality log rank 6.92): p = 0.009 and 3.25; p = 0.071 and 6.28; p = 0.012 respectively. The CT diagnostic model B sensitive (0.5), compromise (0.8) and (1.4) specific thresholds for mPAP > 20 mmHg were also strongly predictive of mortality log rank 6.92 (p = 0.009 and 6.56; p = 0.010 and 535; p = 0.021).
At Cox regression analysis, CT diagnostic models A and B were prognostic; z score hazard ratios were 1.56 and 1.42, both p < 0.0001.
Right heart catheter diagnostic thresholds
RHC diagnostic thresholds ≥ 25 mmHg and > 20 mmHg were not prognostic in this cohort (log rank 2.86, p = 0.09 and log rank 1.77, p = 0.18 respectively; see Fig. 4).
Correlations and diagnostic value of individual CT metrics with pulmonary haemodynamics and MRI metrics in the full cohort
Correlations between CT vascular and cardiac measures are shown in Supplementary Table 1. Figure 2 shows the correlation of CT metrics and mean pulmonary artery pressure. A detailed description of the MRI findings is found in Supplementary Results.
Reproducibility
High reproducibility of interventricular septal angle (ICC 0.921), pulmonary artery diameter (ICC 0.954) and left ventricular area (ICC 0.953) was demonstrated. In comparison, good reproducibility was recorded for the variables RV/LV diameter ratio (ICC 0.810) and right ventricular outflow tract thickness (ICC 0.76) (see Table 5).
Discussion
In this study, we have shown that CT diagnostic models combining multiple metrics are superior to individual metrics in predicting the likelihood of PH. We have created models that utilise axial and reconstructed images and have also developed pragmatic scoring systems based on axial only images to improve the accessibility of CT to both radiologists and physicians. This approach could be used to increase or reduce the pre-test probability of PH. In addition, the CT diagnostic model had prognostic value with a negative score particularly at the sensitive threshold, indicating excellent survival.
Regression analysis identified pulmonary artery diameter, right ventricular outflow tract thickness, left ventricular area and interventricular septal angle as having additive value for the diagnosis of PH (CT diagnostic model A). Using a threshold of ≥ 0 units had a sensitivity of 96% and specificity of 58%, whereas a threshold of ≥ 2.5 units had a sensitivity of 71% and specificity of 100% in the validation cohort. An alternative model (CT diagnostic model B), utilising measurements from axial images alone, pulmonary artery diameter, right ventricular outflow tract thickness and the RV/LV diameter ratio, although marginally weaker also had good diagnostic accuracy. This model may provide a practical alternative if reconstruction tools are not available when reviewing CT images. In this model, a score of ≥ 0.5 units had a sensitivity of 92% and specificity of 71%, whereas a score of ≥ 1.5 units had a sensitivity of 75% and specificity of 90%.
The most commonly measured vessel on CT pulmonary angiograms in suspected PH is the pulmonary artery. The Framingham study established a reference range for normal and established 27 mm and 29 mm as representing the upper limits of normal for female and male patients, respectively. Previous studies using pulmonary artery size to diagnose PH have shown that a pulmonary artery diameter greater than 29 mm had a sensitivity of 75% and specificity of 89% for the presence of PH [29]. The utility of measuring the main pulmonary artery diameter and the pulmonary artery to aortic ratio has also been studied in suspected PH. Ng et al found that a pulmonary artery to aortic ratio > 1 was 92% specific for a mPAP > 20 mmHg [30]; other reports indicate diagnostic value in suspected PH [31, 32]. However, the pulmonary artery may be enlarged in the absence of PH and increases in pulmonary artery size over time are a feature of PH and are not necessarily an indication of increasing pulmonary artery pressure; as such, the correlation with mPAP is weak [33]. Although some investigators have suggested that pulmonary artery diameter may be unreliable in patients with underlying interstitial lung disease [34], we have recently shown that PA size has equivalent diagnostic utility in all patients with suspected PH and interstitial lung disease [35]. The present study confirms pulmonary artery diameter as an independent predictor of the presence of PH. We identified three thresholds: ≥ 28 mm as sensitive, ≥ 30 mm as a compromise and ≥ 32 mm as a specific threshold. These three thresholds can be used depending on the clinical scenario. Of CT measures used, the pulmonary artery diameter was the most reproducible. PA diameter, however, did not prove to be a significant independent predictor of patients with PH defined by mPAP ≥ 20 mmHg. We suspect this is due to underpowering based on the small number of patients with mPAP < 20 mmHg; further work in populations with larger number of patients with mild disease is required to better develop a predictive model for identification of patients with mPAP ≥ 20 mmHg.
Interventricular septal angle also showed strong diagnostic value and, when increased, had high specificity for the presence of PH. In the present study, CT images were reconstructed into the short-axis plane and a moderate correlation was identified with mPAP (r = 0.62), though weaker than that identified previously using MRI-derived systolic septal angle (r = 0.82) [36]. However, in this population, the diagnostic accuracy of CT septal angle was similar to that of MRI-derived systolic septal angle [11], which was an unexpected finding given the non-gated nature of CT. This may reflect the impact of RV enlargement and pressure overload both in diastole and systole which is seen frequently in the setting of significant pre-capillary disease. However, gating may be more important when minor elevations of pulmonary artery pressure are being investigated. Min et al also studied CT septal angle using ungated CT pulmonary angiography demonstrating a close correlation with pulmonary vascular resistance with high accuracy for detecting elevated PVR [21]. Septal angle may also have a role in the identification of patients with combined pre- and post-capillary PH, which has been demonstrated using MRI [37]. The ratio of the right ventricular to left ventricular diameter has prognostic value in PAH [17] and we have also demonstrated diagnostic value in this study. However, using reconstructed short-axis images to calculate septal angle, rather than using this ratio, improved diagnostic certainty. The ratio of the right ventricular to left ventricular diameter, however, still provides additional diagnostic value when added to pulmonary artery size and right ventricular outflow tract diameter and should be combined with these measures, when images cannot be reconstructed, to improve the diagnostic performance of CT pulmonary angiography.
The musculature of the right ventricular outflow tract is compacted and subjectively easier to measure than the trabeculated right ventricular free wall. Hence, it is not unexpected that the outflow tract thickness had higher diagnostic accuracy. Nonetheless, of all the metrics used in the diagnostic models, the right ventricular outflow tract thickness was the least reproducible. Right ventricular mass measured by MRI has also been shown previously to increase with pulmonary arterial pressure [9, 10]. This study has also examined the correlation of CT metrics with pulmonary haemodynamics. Septal angle had the highest correlation with mean pulmonary artery pressure of any of the CT metrics (r = 0.62) and was superior to RV/LV diameter ratio, demonstrating the value of reconstructing images.
Limitations
The CT scans were not cardiac-gated, but despite this, CT measurements still had diagnostic value. Cardiac-gated CT allows for imaging of specific stages during a cardiac cycle and reduces cardiac motion artefacts seen in a CTPA and would help capture maximal deviation of the interventricular septum and volumetric metrics in future studies. Positive and negative predictive values will differ depending on the diagnostic setting; here, we show data from a tertiary referral centre population of patients with PH with a high pre-test probability of PH. This data may be particularly helpful when triaging patients with suspected severe PH for consideration of targeted pulmonary vascular therapies, although the diagnostic performance of CT in a community diagnostic setting has not been assessed.
Conclusions
This study has developed and validated predictive thresholds using a combination of CT metrics in separate derivation and validation cohorts. Sensitive and specific thresholds have been identified that may be of value in both screening and for more definitive diagnosis depending on the clinical scenario. The diagnostic CT thresholds are also of prognostic value; patients found not to have PH on CT have an excellent outcome. Given the widespread use of CT to investigate unexplained breathlessness, a more systematic approach to CT evaluation may improve PH diagnostic rates.
Abbreviations
- ASPIRE:
-
Assessing the spectrum of PH identified at a referral centre
- CMR:
-
Cardiac magnetic resonance
- CTEPH:
-
Chronic thromboembolic PH
- CTPA:
-
Computerised tomography pulmonary angiogram
- ICC:
-
Intra-class correlation co-efficient
- MRI:
-
Magnetic resonance imaging
- PA:
-
Pulmonary artery
- PAH:
-
Pulmonary artery hypertension
- PH:
-
Pulmonary hypertension
- Q-Q:
-
Quantile-quantile
- RHC:
-
Right heart catheter
- ROC:
-
Receiver operating characteristic
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Funding
This study has received funding from Wellcome Trust (205188/Z/16/Z), NIHR (NIHR – RP-R3-12-027) and MRC (MR/M008894/1) POLARIS. Bayer support DC.
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Currie BJ, Johns C, Chin M et al (2018) CT derived left atrial size identifies left heart disease in suspected pulmonary hypertension: Derivation and validation of predictive thresholds. Int J Cardiol 260:172–177.
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Swift, A.J., Dwivedi, K., Johns, C. et al. Diagnostic accuracy of CT pulmonary angiography in suspected pulmonary hypertension. Eur Radiol 30, 4918–4929 (2020). https://doi.org/10.1007/s00330-020-06846-1
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DOI: https://doi.org/10.1007/s00330-020-06846-1