Abstract
Exclusion of pulmonary hypertension secondary to left-sided heart disease (left heart failure (LHF)) is pivotal in the diagnosis of pulmonary arterial hypertension (PAH). In case of doubt, invasive measurements are recommended. The aim of the present study was to investigate whether it is possible to diagnose LHF using noninvasive parameters in a population suspected of PAH.
300 PAH and 80 LHF patients attended our pulmonary hypertension clinic before August 2010, and were used to build the predictive model. 79 PAH and 55 LHF patients attended our clinic from August 2010, and were used for prospective validation.
A medical history of left heart disease, S deflection in V1 plus R deflection in V6 in millimetres on ECG, and left atrial dilation or left valvular heart disease that is worse than mild on echocardiography were independent predictors of LHF. The derived risk score system showed good predictive characteristics: R2=0.66 and area under the curve 0.93. In patients with a risk score ≥72, there is 100% certainty that the cause of pulmonary hypertension is LHF. Using this risk score system, the number of right heart catheterisations in LHF may be reduced by 20%.
In a population referred under suspicion of PAH, a predictive model incorporating medical history, ECG and echocardiography data can diagnose LHF noninvasively in a substantial percentage of cases.
Abstract
A risk score system can identify left-heart failure as alternative PH cause in patients suspected of PAH clinically http://ow.ly/JAIkR
Introduction
Pulmonary arterial hypertension (PAH) is a progressive disease of the pulmonary vasculature, leading to high morbidity, right heart failure and death within 2–3 years if left untreated [1, 2]. While PAH is rare, pulmonary hypertension (PH) secondary to left heart failure (LHF) is more common [3]. Right heart catheterisation (RHC) is recommended for final diagnosis when PAH is suspected clinically [4]. An invasively measured pulmonary capillary wedge pressure of 15 mmHg and/or increased left ventricular end-diastolic pressure (LVEDP) are used to discriminate between LHF and PH from other causes. LHF is caused by chronic heart failure attributed to left ventricular systolic or diastolic dysfunction, or by valvular diseases [5]. PH with normal wedge pressure fits a diagnosis of PAH, provided other causes of PH with normal wedge, including lung disease and chronic thromboembolic PH, are excluded [6]. Increased PH awareness in combination with high LHF prevalence and, in particular, difficulties in diagnosing heart failure with preserved ejection fraction noninvasively have increased referrals to PAH centres and the number of RHCs performed [7]. A model to predict, in advance, the likelihood of LHF could decrease the burden to the patient and economic cost associated with these referrals. Although rare, complications of RHC, such as ventricular tachyarrhythmia, vascular or ventricular perforation, bleeding, pneumothorax, and even death, may occur [8].
The aim of this study was to develop a noninvasive predictive model of LHF as a cause of PH in a patient population referred to a PH centre, suspected of PAH clinically. Predictors of heart failure in patient medical history, ECG and echocardiography were used in order to identify referred patients in whom a firm diagnosis of LHF could be made noninvasively [9–13].
Methods
Study design and patients
The VU University Medical Centre is a referral centre for diagnosis and treatment of PH in Amsterdam, The Netherlands. All patients suspected of PAH and referred to our PH unit and in whom a diagnosis of PAH (PH group 1) or PH secondary to LHF (PH group 2) was made were included. The retrospective patient cohort attended our clinic between April 1998 and July 2010, and was used to build the predictive model. The patient cohort attending our clinic from August 2010 to December 2012 was used to prospectively validate our model.
All patients underwent RHC, since interpretation of the echocardiography was not conclusive for the diagnosis of PH secondary to left heart disease in this patient cohort. In all patients, PH was present based on a mean pulmonary artery pressure ≥25 mmHg. We used the following decision rule to discriminate between precapillary PH and PH secondary to LHF [14]. If wedge pressure was >15 mmHg at rest or increased >15 mmHg after 500 mL of saline infusion, the diagnosis of PH secondary to LHF was made [15]. If no reliable wedge was obtained, LVEDP was measured. In precapillary PH, chronic thromboembolic PH (PH group 4) was ruled out by the combination of ventilation/perfusion scintigraphy and computed tomography (CT) angiography. PH due to parenchymal lung disease (PH group 3) was excluded by lung function testing and high-resolution CT; in addition, polysomnography was performed to exclude sleep disordered breathing.
Potential LHF predictors known from the literature were recorded from the medical history, ECG and echocardiographic parameters. Predictors recorded were: age; body mass index; sex; a medical history of hypertension, diabetes, dyslipidaemia or left heart disease (either coronary artery disease or left valvular heart disease that was worse than mild); and smoking history >1 pack-year. From ECG, the S deflection in V1 (SV1) in millimetres, the R deflection in V6 (RV6) in millimetres and ECG evidence of left atrial dilation (yes/no), and from the echocardiographic parameters, the echocardiographic presence of left atrial dilation (yes/no) or left valvular heart disease that was worse than mild (yes/no) were included in the analysis. Echocardiographic left atrial dilation was defined according to recommendations for chamber quantification from the American Society of Echocardiography [16]. Severity of valvular heart disease was assessed according to European Association of Echocardiography guidelines [17–19]. Echocardiographic parameters were scored by a cardiologist blinded to the diagnosis; ECG data were measured by an observer blinded to the definite diagnosis.
Data analysis
Patient characteristics in both groups were described. Continuous variables are presented as mean±sd and categorical data as n or %.
Model building
The effect of the predictor variables was evaluated by univariate logistic regression. A potential nonlinear behaviour of continuous factors was tested and examined using restricted cubic spline functions and spline plots. These tests showed that the linearity assumption was not violated and that transformation of continuous variables was not necessary. We used multiple imputation to fill in variables with missing values by using the multivariate imputation by chained equation (MICE) procedure. This method estimates several plausible values to fill in the missing values in the variables. We imputed 10 data sets. Multivariable logistic regression with backward elimination determined the final model. Variable selection was done by taking into account the imputed data sets. This means that logistic regression models were estimated in each imputed data set, that regression coefficients and standard errors were pooled, and that the p-value of each coefficient in the multivariable model determined [20]. This step was repeated until variables with a p-value <0.10 were retained in the final model. Regression coefficients and standard errors were converted to odds ratios and corresponding 95% confidence intervals.
Performance of the prediction model
The performance of the prediction model was studied in terms of discrimination, explained variance and calibration. Discrimination expresses how well the prognostic model distinguishes between patients with LHF and PAH, and was obtained by the area under the receiver operating characteristic curve (AUC). The explained variance, calculated as Nagelkerke's R2, gives an indication of how much of the variance in the outcome can be explained by the predictors. To reflect how well predicted and observed probabilities agreed and to obtain an insight into the model's calibration, the calibration slope was calculated. The calibration slope can also be used as a shrinkage factor to shrink the regression coefficients. This is performed because prognostic models usually perform better in subjects used to build the model than in new subjects due to optimism in regression coefficients and performance measures [21]. To determine the shrinkage factor, an internal validation procedure using bootstrapping techniques was used. The AUC, explained variation and slope were calculated for each imputed data set, and averaged over the 10 imputed data sets.
Derivation and prospective validation of the clinical risk score
The coefficients in the model were transformed into easy-to-use risk scores by dividing all regression coefficients by the lowest coefficient value. The clinical performance of the risk scores was also evaluated. For this evaluation, we considered the test characteristics of the clinical risk score in terms of sensitivity, specificity, and positive and negative predictive values, at different categories of risk scores. The Hosmer–Lemeshow test was used to test the goodness of fit of the risk score model.
In the prospective patient cohort, the developed clinical risk score was calculated for each patient, and sensitivity, specificity, and positive and negative predictive values were calculated at different risk score values, which were suggested as cut off values in the developmental set. Discrimination (AUC) and explained variance (Nagelkerke's R2) were determined in the prospective cohort.
Analysis was performed using SPSS18 (IBM, Armonk, NY, USA) and R [22]. We used versions of the MICE and RMS libraries. Requirements of the hospital research and ethical review board (Medisch Ethische Toetsingscommissie) were met, including patient informed consent.
Results
Patient characteristics
Between April 1998 and July 2010, 300 PAH and 80 LHF patients were diagnosed. Patient characteristics and haemodynamics at diagnosis in LHF and PAH patients are defined in table 1.
Logistic regression, model and LHF risk score
Univariate logistic regression was used descriptively and results are presented in table 2. Using backward regression, a medical history of left heart disease (LHD; yes=1, no=0), the sum of SV1 and RV6 on electrocardiography (ECG; in millimetres), the presence of left atrial dilation on echocardiography (LAD; yes=1, no=0) and the presence of left valvular heart disease that was worse than mild on echocardiography (LVD; yes=1, no=0) were identified as predictors of LHF (table 3). After correction for optimism (after boot strapping) the following model was constructed:
This model had high predictive value with R2=0.67 and an AUC of 0.93. After correction for optimism, these values were 0.65 and 0.93, respectively (fig. 1). From the model, a LHF risk scoring system was derived (table 3). The LHF risk scores resulted in similar predictive characteristics (R2=0.66, AUC 0.93). Goodness of fit of the risk score model was confirmed by the Hosmer–Lemeshow test (p=0.99). Table 4 shows the performance of the risk score model in terms of sensitivity, specificity, and positive and negative predictive values at different risk score categories. In figure 2, the numbers of true and false positives and true and false negatives in the same risk score categories are presented. Using a risk score cut-off value of ≥72, LHF could be diagnosed noninvasively in 44% (95% CI 33–55%) of patients, with a PPV of 100% (95% CI 88–100%) and 100% (95% CI 98–100%) specificity. Alternatively, using a cut-off value of ≥64, LHF was diagnosed noninvasively in 53% (95% CI 42–63%), with a PPV of 98% (95% CI 87–100%) and 100% (95% CI 98–100%) specificity. Using the risk score with a ≥72 cut-off, no PAH patients were falsely classified as LHF, while using a ≥64 cut-off, one in 300 (0.3%, 95% CI 0–2%) PAH patients were falsely classified as having LHF.
Risk scores and wedge pressures
Patients were divided into the following categories according to wedge pressure at diagnosis: <10, 10–15, 16–20 and >20 mmHg. Risk scores were calculated for patients in these groups. Mean±sd (median) risk scores were 19±15 (12), 23±18 (16), 54±30 (56) and 57±21 (61), respectively (fig. 3).
Prospective validation
In the prospective validation cohort, 134 patients (79 PAH and 55 LHF) attended our clinic between August 2010 and December 2012. Mean±sd (median) risk scores were 23±16 (21) and 46±24 (40), respectively. Using the proposed risk score cut off ≥72, PPV remained 100% (95% CI 70–100%), and specificity was 100% (95% CI 94–100%), sensitivity 20% (95% CI 11–33%) and NPV 64% (95% CI 55–72%). At this cut-off, LHF was diagnosed noninvasively in 20%, without misclassifying any PAH. Using a cut off score ≥64, PPV was 92% (95% CI 65–100%), specificity 99% (95% CI 93–100%), and sensitivity and NPV 22% (95% CI 13–35%) and 64% (95% CI 56–72%), respectively. AUC in the prospective cohort was 0.80 (95% CI 0.72–0.87) and Nagelkerke's R2=0.36.
Discussion
Risk factors for heart failure are well known from the literature [9, 10]. Current LHF guidelines recommend diagnosing LHF using patient history, physical examination, laboratory, ECG and echocardiographic measures [7, 12]. Whether these algorithms apply in the setting of PH is unknown. In PH, signs of LHF might be mimicked on echocardiography due to underfilling of the left ventricle. This is especially the case for diastolic LHF [23]. Therefore, a substantial proportion of patients referred to a PAH centre has LHF as an underlying cause. Signs that can unmask the presence of an underlying LHF are left atrial enlargement and left ventricular hypertrophy (LVH) on echocardiography [6]. However, the predictive value of these parameters as a single measurement or in combination with medical history data is insufficient [24], in a setting where other signs of LHF are absent. For this reason, wedge pressure or LVEDP measurement are demanded to confirm the diagnosis of LHF as a cause of PH invasively. Any effort made to improve referral patterns to PAH centres should not lead to missed PAH diagnosis in any patient, since early detection and treatment of PAH improves exercise capacity and pulmonary haemodynamics [25] and delayed start of PAH-specific medications decreases survival even with a short interval [26]. Incidence rates of LHF are high, whereas PAH remains a rare disease, which further challenges a correct diagnosis by non-invasive means [27, 28]. Our results show that in a group of patients referred with a diagnosis of PAH, by means of a set of easy-to-use parameters from medical history, echocardiography and ECG, LHF can be diagnosed noninvasively in a substantial number of patients.
From our data, coronary artery disease and left valvular heart disease were independent LHF predictors. This is not surprising, since both were important predictors in the Framingham and National Health and Nutrition Examination Survey I studies [9, 10]. Coronary artery disease is the most common cause of LHF [12]. Left heart disease leads to heart failure and subsequent PH only through increased left ventricular filling pressures, causing subsequent mitral insufficiency, increased left atrial filling pressures, and left atrial dilation and subsequent pulmonary venous hypertension [11]. ECG evidence of LVH had well predictive characteristics. LVH is a feature of left heart disease, whereas in PAH, left ventricular atrophy can be present [29]. Left atrial dilation on MRI has high predictive value when comparing PAH and left heart failure [30]. However, echocardiography underestimates cardiovascular magnetic resonance-derived left atrial volume [31]. This explains why echocardiographic left atrial dilation, though more frequently present in pulmonary venous hypertension, has insufficient discriminatory power as a single parameter [24, 32]. ECG evidence of left atrial dilation was not significantly correlated with LHF. This may be due to suboptimal correlation with echocardiographic left atrial dilation [33, 34], further affected by nonspecific P-wave changes due to severe right-sided atrial strain. It should be stressed that for accurate noninvasive predictions, the data from medical history, ECG and echocardiography need to be combined.
Although our study is limited by its single-centre design and our model was developed from a historical cohort, we internally validated our model by bootstrapping and performed a prospective validation study, which validated our results for external use. The echocardiography parameters were measured by a cardiologist blinded to the final diagnosis, according to current guidelines, and are widely used. Therefore, it is unlikely that these observations were operator dependent. The proportion of LHF in our study is substantial, but still relatively low compared to nontertiary secondary referral centres or primary care settings [28]. Since predictive values are strongly dependent on disease prevalence in the patient cohort studied, the higher PPV for LHF is to be expected at lower patient risk scores in settings with a smaller PAH prevalence. Validation in community hospitals is warranted before use of the model is recommended outside PH centres. Bonderman et al. [35] developed a decision tree to exclude PAH, relying on the Chi-squared automatic interaction detection procedure; two out of 28 clinical, echocardiographic or ECG parameters were automatically identified (right ventricular strain on ECG, defined as ST-segment deviation and T-wave inversion in leads V1–V3; and N-terminal pro-brain natriuretic protein (NT-proBNP) with a cut off of 80 pg·mL−1). Bonderman et al. [35] showed that in the absence of right ventricular strain and, subsequently, an NT-proBNP level ≤80 pg·mL−1, PAH can be excluded. Our model differs from the study by Bonderman et al. [35], as we specifically aimed to identify LHF as alternative cause of PH, whereas the model of Bonderman et al. [35] aimed to exclude PAH and included patients with normal pulmonary pressures. Considering this, and as logistic regression models have better predictive characteristics compared to regression trees, the model of Bonderman et al. [35] and our own model may have additional value in reducing the need for RHC [36]. The LHF patient cohort in our study displays specific characteristics, with relatively elevated PVR and pulmonary artery pressures. From the REVEAL registry, a cohort with a clinical diagnosis of PAH was described with elevated wedge pressures between 16 and 18 mmHg who nonetheless, in many ways, behaved like pure group 1 patients [37]. The flip side is the recognition that some patients with heart failure with preserved ejection fraction, in particular those on diuretic medications, may have a wedge pressure of ≤15 mmHg and an elevated PVR at the time of RHC. This phenomenon may be recognised with volume loading [15] or invasive exercise testing [38]. Even though the final diagnosis was reached after discussion by an expert panel and volume loading was routinely performed at high normal wedge pressures (12–15 mmHg), we cannot exclude that an occasional patient was misclassified. Medicine is rarely black and white, and occasional patients present with many characteristics of group 1 PH, but may be considered a comorbidity of left heart disease (e.g. marked elevation of PVR, scleroderma, older age with hypertension and a component of heart failure with preserved ejection fraction). Such a patient may well benefit from referral to a tertiary PH centre for thoughtful discussion about management strategies. In addition, we emphasise that RHC may remain useful in selected LHF patients (e.g. in risk evaluation before valvular surgery or heart transplantation).
The advantage of the approach used in our study is that it does not require sophisticated measures. More complex echocardiographic parameters, such as the ratio of mitral velocity to early diastolic velocity of the mitral annulus, were not included not only to provide for simplicity of the model, but also because left atrial dilation measured by echocardiography had better ROCs for determining the presence or absence of diastolic dysfunction in an earlier study [39]. In addition, a notching pattern in the right ventricular outflow tract Doppler flow velocity envelope was not included as a predictor, as earlier studies showed this has insufficient predictive value in excluding PAH [40]. To conclude, our data show that LVH on ECG, left atrial dilation and left valvular heart disease on echocardiography, and medical history data of coronary artery disease and past valvular heart disease, measured in combination, can be used in a noninvasive prediction model of LHF, when echocardiography is inconclusive in excluding LHF as cause of PH. Using simple clinical parameters LHF can be diagnosed with a high level of certainty. In addition, although RHC remains necessary in case of doubt, the number of RHC can be reduced. Finally, although our data require validation in a nonreferral setting, they might be of help for the referring specialist to select patients.
Footnotes
For editorial comments see Eur Respir J 2015; 46: 299–302 [DOI: 10.1183/13993003.00456-2015]
Conflict of interest: None declared.
- Received November 2, 2014.
- Accepted February 19, 2015.
- Copyright ©ERS 2015