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Review article

https://doi.org/10.11613/BM.2023.030502

Diagnostic value and utility of commonly used biomarkers of cardiac and renal function in cardiorenal syndromes: a narrative review

Điđi Delalić ; University of Zagreb School of Medicine, Zagreb, Croatia
Tanja Brežni ; Faculty of Pharmacy and Biochemistry, University of Zagreb, Zagreb, Croatia
Ingrid Prkačin ; University of Zagreb School of Medicine, Zagreb, Croatia


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Abstract

Cardiorenal syndrome (CRS), first defined in 2004 as a consequence of the interactions between the kidneys and other circulatory departments leading to acute heart failure, has since been recognized as a complex clinical entity that is hard to define, diagnose and classify. The framework for the classification of CRS according to pathophysiologic background was laid out in 2008, dividing CRS into five distinct phenotypes. However, determining the timing of individual organ injuries and making a diagnosis of either renal or cardiac failure remains an elusive task. In clinical practice, the diagnosis and phenotyping of CRS is mostly based on using laboratory biomarkers in order to directly or indirectly estimate the degree of end-organ functional decline. Therefore, a well-educated clinician should be aware of the effects that the reduction of renal and cardiac function has on the diagnostic and predictive value and properties of the most commonly used biomarkers (e.g. troponins, N-terminal pro-brain natriuretic peptide, serum creatinine etc). They should also be acquainted, on a basic level, with emerging biomarkers that are specific to either the degree of glomerular integrity (cystatin C) or tubular injury (neutrophil gelatinase-associated lipocalin). This narrative review aims to provide a scoping overview of the different roles that biomarkers play in both the diagnosis of CRS and the prognosis of the disease in patients who have been diagnosed with it, along with highlighting the most important pitfalls in their interpretation in the context of impaired renal and/or cardiac function.

Keywords

acute kidney injury; biomarkers; cardiorenal syndrome; heart failure; renal insufficiency

Hrčak ID:

306655

URI

https://hrcak.srce.hr/306655

Publication date:

15.10.2023.

Visits: 684 *




Defining cardiorenal syndrome

The pathophysiologic relationship between the heart and the kidney has been well known and studied throughout the history of modern medicine, however it was not until the early 2000s that an attempt was made to formally describe and classify the disruption of homeostasis arising from the interactions between these two organ systems. In 2004, the National Heart, Blood and Lung Institute established the term “cardiorenal dysregulation” and described it as a result of interactions between the kidneys and other circulatory compartments that increase circulatory volume, thereby exacerbating the degree of heart failure severity (1). In that context, cardiorenal syndrome (CRS) was defined as the extreme end of the cardiorenal dysregulation spectrum, a situation where efforts to relieve heart failure by stimulating diuresis are stifled by the decline in renal function. Several groups of authors and clinical societies have since modified the original definition of CRS. In 2008, the Acute Dialysis Quality Initiative (ADQI) made the distinction between cardiorenal and renocardiac syndromes, with the nomenclature being determined by the organ system of the primary disease process. The same group also divided CRS into five different phenotypes, based on the primary organ system affected and the chronicity of the disease process (2). The phenotypes are outlined inTable 1. Although these phenotypes have provided an abundant amount of utility to clinicians by providing them with a framework for classifying a wide spectrum of clinical entities into categories and deciding on the appropriate treatment course and modality based on the specific phenotype, there is often overlap between two different phenotypes. In addition, during the progression of the disease process, it is possible that one phenotype evolves into another, further complicating the diagnostic and treatment processes. Another layer of complexity is added by the fact that many patients suffer from comorbidities that further compromise both renal and cardiac function, such as arterial hypertension, anaemia, atherosclerosis and diabetes mellitus. An attempt to account for these factors was made by Hatamizadeh et al., suggesting a classification of CRS based on the predominant clinical symptoms and manifestations (3) (Table 2). Besides the disagreements on the basis for classification of CRS, another significant challenge for clinicians is making the distinction between chronic and acute kidney injury (AKI). Several different diagnostic criteria and tools have been described and established in everyday clinical use, with the most common ones being the Acute Kidney Injury Network (AKIN) criteria, ADQI’s Risk, Injury, Failure, Loss of Function, End Stage Renal Disease (RIFLE) criteria and the Kidney Disease: Improving Global Outcomes (KDIGO) criteria, which combined RIFLE and AKIN (4-6) (Table 3). As can be seen inTable 3, all of the listed criteria use serum creatinine and/or estimated glomerular filtration rate (eGFR) as components for determining the presence of AKI. However, there is evidence that temporary fluctuations in serum creatinine (and by extent, eGFR) in the context of the treatment of heart failure may not accurately reflect the structural and functional integrity of the kidney or serve as a reliable indicator of acute kidney injury (7). Therefore, it is of crucial importance to be acquainted with the biomarkers used for estimating cardiac and/or renal function, their prognostic and diagnostic utility, and indications for their use, in order to accurately diagnose, classify and treat CRS.

Table 1 Pathophysiology-based classification of cardiorenal syndrome
Cardiorenal syndrome phenotypeNamePathophysiologyExample
Type IAcute cardiorenal syndromeHeart failure leading to acute kidney injuryAcute decompensated heart failure leading to acute kidney injury
Type IIChronic cardiorenal syndromeChronic heart failure leading to chronic kidney diseaseChronic heart failure
Type IIIAcute renocardiac syndromeAcute kidney injury leading to acute heart failureAcute kidney injury leading to uraemia and volume overload, resulting in acute heart failure
Type IVChronic renocardiac syndromeChronic kidney disease leading to chronic heart failureHeart failure and left ventricular hypertrophy as a result of cardiomyopathy associated with chronic kidney disease
Type VSecondary cardiorenal syndromeSystemic disease process leading to simultaneous renal injury and heart failureHepatic cirrhosis, sepsis
Adapted from Ronco et al. (2).
Table 2 Classification of cardiorenal syndrome according to leading clinical presentation
Class of cardiorenal syndromeDescription
1 HaemodynamicHaemodynamic compromise is the leading clinical manifestation
2 UremicUremic manifestations are the leading clinical presentation
3 VascularCardiovascular and/or renovascular manifestations are the leading clinical presentation
4 NeurohumoralElectrolyte disorders, acid-base disorders or dysautonomia are the leading clinical manifestation
5 Anaemia/iron metabolismAnaemia and/or iron metabolism dysregulation are the leading clinical manifestations
6 Mineral metabolismDysregulation of calcium and phosphorus and their regulators including vitamin D and fibroblast growth factor 23 (FGF23) are the leading clinical manifestations
7 Malnutrition/inflammation/cachexiaMalnutrition, cachexia and inflammation are the leading clinical manifestations
Adapted from Hatamizadeh et al. (3)
Table 3 Most commonly used criteria for diagnosing acute kidney injury
Criteria nameComponents
RIFLEDialysis for > 3 months
Renal replacement therapy for > 4 weeks
Serum creatinine increase relative to baseline (1.5x for risk, 2x for injury, 3x or creatinine ≥ 354 µmol/L with acute rise of ≥ 44 µmol/L for failure)
Glomerular filtration rate decrease relative to baseline (> 25% for risk, > 50% for injury, > 75% for failure)
Urine output (< 0.5 mL/kg/h through 6 hours for risk, < 0.5 mL/kg/h through 12 hours for injury, < 0.3 mL/kg/h through 24 hours or anuria for 12 hours for failure)
AKINAbsolute increase in serum creatinine concentration > 26.4 µmol/L
Increase in serum creatinine concentration > 1.5x relative to baseline
Urine output < 0.5 mL/kg/h for > 6 hours
KDIGOSerum creatinine
Urine output
RIFLE – Risk, Injury, Failure, Loss of kidney function, and End-stage kidney disease, criteria first described by Bellomo et al. (5). AKIN – Acute Kidney Injury Network, criteria first described by Mehta et al. (4). KDIGO – Kidney Disease Improving Global Outcomes, criteria first described by the Kidney Disease: Improving Global Outcomes (KDIGO) Acute Kidney Injury Work Group (6).

Renal biomarkers in cardiorenal syndrome

Creatinine

Serum creatinine is the most commonly used biomarker of renal function, applicable both for evaluating the progression of chronic kidney disease and the onset of acute kidney injury. It is the end product of creatine metabolism in the human body (8). Due to its low molecular weight and not being bound to albumin, creatinine is mostly eliminated through glomerular filtration, with a small amount secreted actively by the proximal renal tubules (evident by the fact that medication which block the secretion from proximal tubules increase the concentration of serum creatinine) (9). It has been proven that in patients with chronic kidney disease (CKD), clearance of creatinine by proximal tubular secretion increases as glomerular filtration decreases. Therefore, in patients with CKD, estimating glomerular function with creatinine clearance or serum creatinine concentration alone may actually lead to overestimation of the GFR (10). In the setting of acute kidney injury, aggressive intravenous fluid resuscitation may either decrease the serum creatinine concentration by causing dilution or increase it by causing venous congestion and increasing the renal interstitial pressure, making it an unreliable marker of actual renal function (11,12). Another important point to make is that estimating the GFR from a single serum creatinine measurement is a rather serious pitfall that should be avoided. A study of patients visiting the emergency department (ED) in The Netherlands showed that almost a third of the patients had a significant change (> 15% increase or > 18% decrease) in the measured serum creatinine when the value obtained in the ED was compared to either their baseline or the repeat value measured 6 to 24 hours following admission to the hospital ward (13). Caution should also be applied with acute heart failure patients - data obtained from the Diuretic Optimization Strategies Evaluation (DOSE) trial showed that an increase in serum creatinine concentration during the application of diuretic therapy was associated with lower rates of death and hospital readmission within 60 days, while a decrease in serum creatinine concentration (i.e. improvement in renal function) was associated with significantly higher rates of adverse outcomes within 60 days (14). It is important to note that while serum creatinine by itself may not be a reliable marker of AKI, some studies have demonstrated an increase in diagnostic accuracy when it is combined with other biomarkers. For example, one study found that a nomogram which combined serum creatinine concentration values measured on the first day of hospitalization and neutrophil gelatinase-associated lipocalin (NGAL) serum concentrations had an area-under-the-curve (AUC) of 0.79 for predicting the development of type I CRS, demonstrating a significantly higher diagnostic accuracy than serum creatinine alone (15). While there are several pitfalls to using creatinine as the principal biomarker of renal function and tissue integrity, it is necessary to note that calculations like the Modification of Diet in Renal Disease (MDRD) formula and the CKD Epidemiology Collaboration (CKD-EPI) formula, which are the ones most frequently used to estimate GFR, use the serum creatinine concentration as an essential part of their equations. A recent position statement by the European Federation of Clinical Chemistry and Laboratory Medicine (EFLM) recommended using the 2009 version of the CKD-EPI formula for the estimation of GFR, but also mentioned cystatin C-based equations as growing in popularity (16).

Cystatin C

Cystatin C is a protein with an important role in the regulation of extracellular proteolysis (17). It is produced in the body at a constant rate, freely filtered through the glomeruli and reabsorbed at the brush border of the proximal renal tubules, where it is ultimately degraded. It is also independent of age, gender or muscle mass, unlike creatinine (18). Cystatin C is an important marker in CRS and it has been studied as a prognostic marker of both renal and cardiac outcomes. The findings of a meta-analysis of studies using cystatin C as a prognostic marker in patients with acute heart failure point to an increased risk of all-cause mortality (hazard ratio (HR) = 2.33; 95% confidence interval (CI): 1.67-3.27, P < 0.001) in patients with elevated serum cystatin C concentrations (19). The increased risk was observed in the subgroup analyses of the included studies and persisted regardless of heart failure type (acute versus chronic), study sample size or cystatin C cut-off value. A study by Pinsino et al. compared the accuracy of eGFR estimated with creatinine to eGFR estimated with cystatin C for predicting a composite outcome of in-hospital mortality, the need for renal replacement therapy or severe right ventricular outcome in patients with a recently implanted left ventricular assist device (LVAD) due to advanced heart failure. The authors found that eGFR estimated by cystatin C was significantly correlated to the composite outcome (odds ratio (OR) 1.16, 95%CI 1.02-1.31; for each 5mL/min/1.72m2 decrease in eGFR). No significant correlation with the primary endpoint was found with eGFR estimated with creatinine (20). A longitudinal Chinese study of more than 7000 participants found that increased serum cystatin C concentrations compared to baseline were significantly associated with the occurrence of new-onset cardiovascular disease (defined as newly diagnosed heart disease, stroke or both) (21). Cystatin C has also been studied as a predictor of outcomes in CRS in several studies, either by itself or combined with other biomarkers. Ruan et al. studied 162 patients with acute heart failure and found that increased cystatin C serum concentrations were significantly associated with increased 12-month mortality (OR 2.72, 95%CI 1.92-4.28, P = 0.017), while patients with AKI and an increased serum cystatin C had significantly higher rates of both in-hospital and 12-month mortality compared to patients without AKI (22). Rafouli-Stergiou et al. performed serial measurements of serum cystatin C in 96 patients with acute decompensated heart failure with an ejection fraction < 35% and creatinine clearance < 60mL/min and observed their post-discharge outcomes. They found that an in-hospital increase in serum cystatin C of ≥ 0.4 mg/L was an independent predictor of death or hospital readmission due to decompensated heart failure within 60 days (23). Cystatin C is also extremely valuable as an exclusively renal biomarker. The findings of a meta-analysis of 30 prospective studies with more than 4000 patients indicate that an increased serum cystatin C is significantly associated with all-cause AKI, with an AUC of 0.89, 82% sensitivity (95% CI 0.75-0.87), 82% specificity (95% CI 0.78-0.86), and a positive likelihood ratio of 4.6 (95% CI 3.6-5.9), making it a reliable marker of AKI (24). Studies have also been conducted to determine the value of cystatin C in chronic kidney disease classification. The Renal Risk in Derby (RRD) study examined 1741 primary care adult patients over the age of 70 with chronic kidney disease grade 3a or 3b determined by eGFR estimated from serum creatinine. Following serum cystatin C concentration measurements, 7.7% of patients were reclassified as not having CKD, while 59% were reclassified to a more advanced stage of CKD (25). In a study with younger patients (aged 55-60), 12% of patients with CKD G3a were reclassified as not having CKD and 6% were reclassified to a more advanced CKD stage (26). Regardless of age, it has been proven that cystatin C, when used together with creatinine to estimate eGFR, improves the strength of association of eGFR with adverse outcomes and is therefore a useful biomarker in improving the staging of CKD, especially in the cases where clinical suspicion of an inaccurate creatinine-based eGFR value exists (25,26). Summarily, cystatin C is a better marker of renal function in CKD than serum creatinine and can help clinicians appropriately and accurately determine the stage CKD in order to avoid over or undertreating patients. In the context of acute heart failure and CRS, elevated cystatin C values are a decent predictor of post-discharge outcomes and can serve as a valuable tool in stratifying patients based on risk of adverse post-discharge outcomes. This may assist clinicians in recognizing the patients who are at the greatest risk of repeat decompensation in order to provide more aggressive treatment and more frequent follow-ups.

Neutrophil gelatinase-associated lipocalin

Neutrophil gelatinase-associated lipocalin (NGAL) is a member of the lipocalin family, a group of proteins in the human body serving mostly as transporters of other molecules (27). It is increasingly synthesized and expressed on the cells of the proximal and distal renal tubules following acute ischemia and is therefore a marker of acute renal tubular injury and necrosis (28). It has been investigated as a diagnostic and predictive factor in both acute kidney injury and CRS. Song et al. studied the association between type I CRS and serum NGAL concentration. They found that increased serum NGAL concentrations were an adequate diagnostic tool for type I CRS, with an AUC of 0.88 (95%CI 0.81-0.94), 95% sensitivity and 81% specificity. When combined with NT-proBNP, the AUC was 0.92 (95%CI 0.87-0.96), with a 93% sensitivity and 80% specificity (29). Another prospective study by Alvelos et al. demonstrated that above a cut-off concentration value of 170 ng/L, serum NGAL determined type I CRS with an AUC of 0.93 (95%CI 0.88-0.98), 100% sensitivity and 87% specificity (30). However, in a retrospective study of patients with type I CRS by Ferrari et al., serum NGAL had an AUC of only 0.45 (95%CI 0.36-0.54) and its concentration was not significantly associated with the risk of developing CRS. The authors hypothesize that the result may be skewed due to the studied population suffering from relatively mild renal impairment and low-grade heart failure (31). Other studies have investigated the predictive value of NGAL for the development of AKI in acute heart failure patients. The AKINESIS study found that serum NGAL was not superior to serum creatinine for prediction of worsening of renal function or adverse in-hospital outcomes in patients with acute heart failure (32). Soyler et al. studied the utility of urinary NGAL for prediction of AKI in patients with acute decompensated heart failure and found that urinary NGAL concentrations above the cut-off value of 12 ng/mL were predictive of AKI with a sensitivity of 79% and a specificity of 67% (33). Another study conducted by Nasonova et al. showed an AUC of 0.83 with a sensitivity of 83% for urinary NGAL in the prediction of AKI in patients with acute decompensated heart failure (34). Palazzuoli et al. showed that serum NGAL concentrations above the cut-off value of 134 ng/mL are significantly related to worsening of renal function, with an AUC of 0.83, 92% sensitivity and 71% specificity. Serum NGAL concentrations above the cut-off value of 134 ng/mL also statistically significantly correlated with death (HR = 1.75, 95%CI 1.24-2.45, P < 0.001) (35). Maybe the most important and clinically useful characteristic of NGAL is its apparent ability to indicate subclinical AKI. Haase et al. found that in patients who had subclinical acute kidney injury with serum creatinine concentrations within reference intervals, but had increased concentrations of NGAL, there was a significantly increased risk of needing renal replacement therapy during hospitalization (OR 16.4, 95%CI 3.6-76.9, P < 0.001), with the results consistent regardless of using serum or urinary NGAL measurements (36). This feature of NGAL allows clinicians to make a timely diagnosis of AKI and initiate proper preventive and curative measures in time to prevent further short and long-term renal function decline. Neutrophil gelatinase-associated lipocalin has also been demonstrated as a reliable diagnostic biomarker of AKI within the clinical context of systemic inflammation in critical illness, accurately predicting the development of AKI in patients with sepsis regardless of its severity (categorized by serum procalcitonin concentration) (37).

In summary, literature on NGAL as a diagnostic biomarker of type I CRS features a certain degree of heterogeneity in findings and results. Some studies have found excellent sensitivities (> 90%) and satisfactory specificities (> 80%), indicating NGAL as a useful marker for both including and excluding the diagnosis of type I CRS (29,30). Others (31) have failed to demonstrate its utility and found its diagnostic accuracy to be grossly inadequate, although their results must be interpreted in the context of the study population featuring less severe clinical presentations and disease severity compared to the populations in other studies on the topic. The effects of the degree of severity of type I CRS on the diagnostic utility of NGAL should be further studied in order to find the patient and disease characteristics that point to no benefit of using NGAL as a diagnostic tool.

Albuminuria

Albuminuria is an important marker of renal function and has been recognized as such for a long time. In the 2012 KDIGO classification of chronic kidney disease, CKD was divided into five grades numbered 1 through 5, with grade 3 being further divided into a and b subgrades based on eGFR and into three stages based on the degree of albuminuria calculated using the albumin/creatinine ratio (38). The presence of albuminuria as an essential factor in staging the severity of CKD is the result of several large population studies showing strong significant correlation between albuminuria and all-cause mortality, cardiovascular disease, and end stage renal disease (39-41). Recent in vitro studies of a type I CRS model using human kidney cells have demonstrated that albumin damages renal tubules in a dose-dependent fashion, thereby implicating it as an important pathophysiological factor further exacerbating AKI in experimental conditions (42). Albuminuria has been studied as a disease prognosis marker in both acute and chronic heart failure as well. A study by Jackson et al. investigated the association between albuminuria and outcomes in chronic heart failure and found a significant association between both microalbuminuria and macroalbuminuria and all-cause mortality (for microalbuminuria: HR = 1.62, 95%CI 1.32-1.99, P < 0.001; for macroalbuminuria: HR = 1.76, 95%CI 1.32-2.35, P = 0.001) after adjusting for diabetes mellitus, renal function and glycated haemoglobin (HbA1c) (43). A study of cardiac morphology in patients with CKD by Landler et al. found more than a 4-fold increase in the prevalence of left ventricular hypertrophy (LVH) on echocardiography in patients with CKD compared to healthy controls and a significant independent association between LVH and albuminuria (P = 0.002) (44). In a study of 1818 patients with acute decompensated heart failure, Wang et al. found that patients with albuminuria had a significantly increased risk of all-cause death or heart transplantation/LVAD implantation than those without albuminuria, even after adjustment for other significant clinical factors (age, history of arterial hypertension, presence of atrial fibrillation/flutter, New York Heart Association (NYHA) class, heart rate, systolic blood pressure, body mass index (BMI), haemoglobin, serum albumin, serum creatinine, eGFR, N-terminal pro-brain natriuretic peptide (NT‐proBNP), left ventricular diastolic dysfunction, left ventricular ejection fraction (LVEF) and prescription of angiotensin converting enzyme inhibitors/angiotensin receptor blockers, β‐blockers or diuretics) (HR = 1.28, 95%CI 1.09-1.50, P = 0.003). The risk of the adverse events listed was proportional with the increase in the degree of albuminuria (P = 0.004) (45). Kato et al. studied the association between serum albumin concentrations and 1-year adverse outcomes in acute decompensated heart failure patients and found that increased serum albumin concentrations were significantly associated with a lower risk of death or hospitalization due to heart failure (HR = 0.78, 95% CI 0.69-0.90, P < 0.001) after adjusting for baseline albumin concentrations, anaemia, age, eGFR, BMI, NYHA and history of diabetes mellitus (46). A study by Alatas et al. demonstrated that the microalbuminuria was a predictor of in-hospital mortality in acute heart failure patients with restricted and mid-range ejection fractions, but not in patients with preserved ejection fraction (47).

To summarize, albuminuria, regardless of the degree of its severity (micro or macro) is an important predictor of adverse short- and long-term outcomes in patients with both acute and chronic heart failure. Given its general availability and low cost as a laboratory test, it should be utilized whenever possible in order to stratify heart failure patients into groups based on risk of adverse outcomes and therefore guide their in-hospital and out-of-hospital management and long-term plans of care.

Biomarkers of cardiac injury

Troponin

Troponins are a family of proteins that play an important part in the regulation of skeletal and cardiac muscle contractility mechanism. There are three isoforms of troponin: C, T and I. Troponin C is found in both cardiac and skeletal muscle, but troponin T and I are highly specific for cardiac muscle tissue, therefore being suitable markers of myocardial injury (48). Immunohistological evidence has demonstrated that extent of myocardial injury is positively correlated with serum troponin concentrations (49). Serum troponin concentrations may also increase in the context of decreased respiratory function and intense physical exercise without a myocardial tissue injury (50). In patients with CKD, there is a persistent elevation of serum troponin concentration, regardless of the existence of myocardial injury. This phenomenon is explained by both the lowered rate of serum troponin clearance (troponin is eliminated by the kidneys) and a higher rate of troponin release from cardiomyocytes due to subclinical injury (i.e. uremic toxicity, hypertensive heart disease) (51). A recent retrospective study conducted on Chronic Renal Insufficiency Cohort (CRIC) participants analysed ambulatory CKD patients’ serum high sensitivity troponin T (hsTnT) concentrations in order to test the reliability of the conventional upper reference limits (URLs) for hsTnT in CKD patients. The authors found that among 2312 patients with CKD, 43% had a resting hsTnT concentration above the conventional URL. This finding was even more pronounced in patients with advanced renal failure (CKD grade IV, eGFR < 30 mL/min/1.73m2), 68% of which had a resting hsTnT concentration above the conventional URL. Further data analysis provided a model demonstrating that, in patients with CKD, the threshold for the 99th percentile of serum hsTnT concentrations increases by 44% for every eGFR decrease of 15 mL/min/1.73m2 (52). However, despite those findings, elevated hsTnT serum concentrations have been demonstrated as a significant predictor of 2-year mortality (AUC 0.69, 74% sensitivity, 63% specificity, 90% negative predictive value) in patients with acute chest pain and impaired renal function (defined as eGFR < 60 mL/min/m2) (53). Another study investigating the predictive value of high sensitivity troponin I (hsTnI) serum concentrations in patients with CKD had similar findings. Although the diagnostic accuracy of hsTnI concentrations was lower in CKD patients compared to patients with preserved renal function (positive predictive value 50% vs. 63%, specificity 71% vs. 92%), CKD patients with hsTnI concentrations above the 99th percentile had a significantly higher risk of myocardial infarction or cardiac death at 1-year follow up compared to patients with elevated hsTnI concentrations and preserved renal function (24% vs. 10%, HR = 2.19, 95%CI 1.54-3.11) (54). There is evidence that, with several modifications, the diagnostic accuracy of hsTnT concentrations for acute myocardial injury in patients with CKD can be significantly improved – Alushi et al. found that, by using hsTnT cut-offs 4 times greater than the conventional ones, the specificity rose from 10% to 65%, but the sensitivity decreased from 98% to 83%. This was mitigated by designing a model combining the baseline hsTnT concentration with an absolute change in hsTnT concentration 3 hours following the index measurement. Such a model yielded improved diagnostic accuracy – 98% sensitivity, 55% specificity, 93% positive predictive value, 86% negative predictive value (55). The predictive value of troponin in CRS is limited and debatable. Ledwoch et al. found that in patients with acute heart failure and impaired renal function (defined as eGFR < 45 mL/min/1.73m2), hsTnT had a significantly lower predictive accuracy for 30-day mortality compared to patients with acute heart failure and preserved renal function (AUC 0.63 vs. 0.74, P = 0.049) (56). He et al. evaluated the diagnostic accuracy of cardiac troponin I (cTnI) in predicting the development of type I CRS in patients with acute myocardial infarction. The AUC for cTnI was 0.76, however, when cTnI was combined with NT-proBNP, baseline eGFR and white blood cell count in a statistical model, the AUC rose to 0.92, indicating that other biomarkers can supplement and increase the predictive and diagnostic value of cTnI for CRS when combined (57).

Although serum troponin concentrations are elevated at baseline in patients with CKD due to impaired renal clearance, making the usage of regular cut-off values ineffective and inaccurate, it would seem that any serial elevation of serum troponin concentration in patients with chest pain, regardless of renal function, is a predictor of adverse long-term outcomes. Therefore, an elevation in serial troponin concentrations in chest pain patients should alarm the clinician and place the patient into a higher risk category.

While serum troponin by itself is not a great predictor of the development of type I CRS following an acute myocardial infarction, if combined with indicators of cardiac and renal function (eGFR, NT-proBNP), it can predict complications with an excellent diagnostic accuracy.

N-terminal pro-brain natriuretic peptide

N-terminal pro-brain natriuretic peptide is a prohormone of brain natriuretic peptide - a peptide secreted by cardiomyocytes as a response to ventricular stretching caused by an increase in circulatory volume. As a surrogate for volume overload, NT-proBNP has been extensively researched in acute heart failure, acute kidney injury and CRS. Yamashita et al. studied several different cardiac biomarkers in patients hospitalized through the emergency department for cardiac emergencies and found that patients with a serum NT-proBNP < 689 pg/mL had significantly higher rates of survival than those with a serum NT-proBNP > 689 pg/mL, regardless of the primary cardiac diagnosis (58). Zhang et al. studied the role of NT-proBNP in predicting type I CRS in patients with acute myocardial infarction and found that elevated NT-proBNP serum concentrations independently predicted type I CRS with an AUC of 0.72 (95%CI 0.78-0.85). When NT-proBNP was combined with eGFR and high sensitivity C-reactive protein (hsCRP), the AUC rose to 0.86 (95%CI 0.83-0.89) (59). N-terminal pro-brain natriuretic peptide as a biomarker of fluid overload is especially valuable in acute heart failure patients and has even been shown to predict renal function decline. McCallum et al. analysed data from the Efficacy of Vasopressin Antagonism in Heart Failure Outcome Study With Tolvaptan (EVEREST) trial and found that patients suffering from heart failure with reduced ejection fraction (HFrEF) who had elevated NT-proBNP serum concentrations were at significantly higher risk of developing a > 40% eGFR decline (HR = 2.62, 95%CI 1.62-4.23) (60). Another study by McCallum et al. analysed patient data from the Ultrafiltration in Decompensated Heart Failure with Cardiorenal Syndrome Study (CARRESS) and Diuretic Optimization Strategies Evaluation (DOSE) trials. In this patient pool, consisting of patients with acute decompensated heart failure, the authors found that an in-hospital decline in eGFR was not significantly associated with an increased risk of death or rehospitalization, while an in-hospital decline in NT-proBNP was significantly associated with a lower risk of death or rehospitalization. The authors also found that a decline in eGFR was associated with decreased risk of death or rehospitalization if the NT-proBNP declined along with the eGFR (61). De la Espriella et al. evaluated the prognostic value of NT-proBNP in acute heart failure patients based on renal function and found that while serum NT-proBNP concentration was positively and linearly associated with mortality in this patient group, its predictive value significantly decreased in patients with eGFR < 45 mL/min/1.73m2 (62). N-terminal pro-brain natriuretic peptide has also been researched as a urinary biomarker – Zhao et al. investigated the predictive value of urinary NT-proBNP (uNT-proBNP) for the development of type I CRS in patients with acute decompensated heart failure. They found that uNT-proBNP was a significant and reliable predictor of type I CRS development, with an AUC of 0.93 (95%CI 0.87-0.97) (63).

It can be inferred from the findings of the studies cited in this paragraph that while NT-proBNP has a decent diagnostic accuracy for CRS, especially if combined with markers of inflammation and indicators of renal function, its greatest value lies in the fact that it can be utilized in order to guide pharmacologic therapy. As demonstrated by McCallum et al., NT-proBNP is a significantly more reliable indicator of the effectiveness of diuretic therapy than eGFR (65). Furthermore, relying on eGFR exclusively for the titration of diuretic therapy in fluid overloaded CRS patients would lead to premature cessation or de-escalation of treatment due to observed (falsely) worsened renal function. Instead, diuretic therapy should be directed and guided by NT-proBNP measurements and clinical findings (physical examination and ultrasonography), given that NT-proBNP is the only reliable predictor of adverse short- and long-term outcomes in this patient population.

Fibrosis index 4 and 5

Fibrosis index 4 (FIB-4) is a simple score for estimating the degree of hepatic fibrosis, that is calculated from patient age, platelet count, aspartate aminotransferase (AST) and alanine aminotransferase (ALT) serum activities (64). Researchers have found predictive value in FIB-4 for the prognosis of long-term outcomes in hospitalized heart failure patients. Nakashima et al. studied patients with acute decompensated heart failure with preserved ejection fraction and found that a high FIB-4 before hospital discharge was significantly associated with major adverse cardiovascular events (MACE) (HR = 1.27, 95%CI 1.05-1.53) after adjusting for patient sex, serum haemoglobin concentration and serum creatinine concentration. They found that the cut-off for increased risk of MACE was a FIB-4 of ≥ 3.11 (65). Okamoto et al. also found that in patients with subclinical heart failure with preserved ejection fraction, FIB-4 is an independent predictor of all-cause mortality and hospitalization for heart failure (HR = 1.31, 95%CI 1.14-1.50, P < 0.001) (66). Ewid et al. found that an AST/ALT ratio ≥ 1 was associated with and predictive of a LVEF < 30% on echocardiography, with an AUC of 0.64 (95%CI 0.54-0.73) (P < 0.05), 44% sensitivity and 81% specificity (67). Fibrosis index 5 (FIB-5), another score for estimating hepatic fibrosis, was studied by Maeda et al. Their research showed that FIB-5, calculated from serum albumin, AST, ALT, alkaline phosphatase (ALP) serum activities and platelet count was superior to FIB-4 at predicting death or hospital readmission for heart failure in patients hospitalized with acute decompensated heart failure, after adjusting for significant clinical factors. Another interesting finding is that, while high FIB-4 scores before hospital discharge are associated with an increased risk of MACE, patients with high FIB-5 scores have a lowest risk of death or hospital readmission, while those with low FIB-5 scores have a significantly increased risk of adverse events (68).

Due to primarily being markers of hepatic injury and fibrosis, FIB-4 and FIB-5 scores have not been extensively researched in the context of heart failure. However, the available literature suggests a potential value of those scores in stratifying hospitalized heart failure patients based on the risk of long-term adverse outcomes. Since they are simple scores utilizing routinely measured laboratory biomarkers, they should be used more often in heart failure patients prior to hospital discharge along with other predictors of long-term outcomes in order to risk stratify patients and formulate an optimal long-term care strategy tailored to individual patient risk.

Conclusions

With the advancements made in the field medical biochemistry, novel biochemical markers of renal and cardiac function are emerging as a possible replacement or supplement to existing ones. At the same time, the utility and roles of traditional cardiorenal biomarkers are being re-examined in order to maximize their diagnostic and prognostic utility in the appropriate patient populations and disease states. While cystatin C is gaining popularity as a marker of glomerular function and is possibly more accurate than serum creatinine, creatinine measurements are still the mainstay of glomerular function estimation, being recommended as the basis of calculations endorsed by current guidelines. Neutrophil gelatinase-associated lipocalin as a marker of early, subclinical AKI may serve as a tool for timely detection of renal injury and can indicate the need for initiation of specific protective and curative measures. N-terminal pro-brain natriuretic peptide is the most reliable marker of response to treatment in type I CRS and should be used to guide the duration and intensity of diuretic therapy. Troponins are valuable predictors of adverse long-term outcomes in patients with acute myocardial infarction and AKI or CKD. Albuminuria can be used as a reliable predictor of adverse outcomes in patients with CRS and should be measured during the patients’ hospital stay, before discharge and on follow-up examinations. Finally, indicators of hepatic damage or fibrosis, like FIB-4 and FIB-5, might be a reliable prognostic tool of long term adverse outcomes for heart failure patients being discharged from the hospital. Physicians managing patients with CRS should be acquainted with the diagnostic accuracy and specific features of different biomarkers in order to gain more value from their use, predict patient important outcomes more accurately and provide goal-directed management and therapy.

Notes

[1] Conflicts of interest Conflict of interest statement

None declared.

Data availability statement

No data was generated during this study.

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