# Untargeted metabolic analysis in serum samples reveals metabolic signature in children with congenital heart failure on enalapril therapy

**Authors:** N. J. L. Smeets, I. N. van Hoek, J. J. M. Jans, M. Dalinghaus, S. Laer, M. Bajcetic, C. Male, S. N. de Wildt

PMC · DOI: 10.3389/fped.2025.1530063 · Frontiers in Pediatrics · 2025-04-28

## TL;DR

The study finds a unique metabolic pattern in children with heart failure treated with enalapril, which could help predict treatment response.

## Contribution

This is the first study to identify a metabolic signature in children with congenital heart disease on ACE inhibitor therapy.

## Key findings

- Metabolic profiles distinguished responders from non-responders to enalapril using 94 features.
- Unsupervised learning revealed 278 features differentiating patients from healthy controls.
- Stronger treatment response was linked to more severe heart failure based on metabolite concentrations.

## Abstract

Enalapril is an angiotensin-converting enzyme (ACE) inhibitor (ACEi) which is widely used in the management of (paediatric) hypertension and heart failure (HF). There is a significant interindividual variability in the patient's response to enalapril that is not completely understood. Therefore, we aimed to examine the potential of metabolic profiling for stratifying paediatric patients with HF due to congenital heart disease (CHD) in terms of treatment response to enalapril. Additionally, we investigated metabolic profiles in CHD patients and healthy controls.

CHD patients aged 0–6 years of age who previously participated in a multi-centre and multinational pharmacokinetic safety bridging study of enalapril were included. Patients were defined as responder when aldosterone levels decreased after a single administration of enalapril. Non-responders were those with an increase in their aldosterone levels. We applied an untargeted mass spectrometry-based metabolomics approach on serum. By using both supervised and unsupervised learning algorithms, we compared metabolic profiles between responders and non-responders as well as between patients and age and sex matched healthy controls.

In total, 63 patients were included with a median age of 132 (IQR 54–211) days and 46 controls [97 (63–160) days]. 41 of 63 patients responded to enalapril therapy. Their baseline characteristics were similar to non-responders (n = 22). A total of 1,820 unique features were identified. Responders were distinguished from non-responders using a supervised learning algorithm based on 94 features (p = 0.05). Furthermore, metabolic profiles could distinguish between patients and controls based on an unsupervised learning algorithm which revealed 278 relevant features (p = 0.001).

These are the first data to demonstrate a clear metabolic signature in children with CHD using ACEi. We identified metabolites whose concentrations were both associated with ACEi response and HF. This indicates more severe HF in patients with more profound treatment response. Our results will therefore allow further studies aiming at disentangling variability in ACEi treatment response.

## Linked entities

- **Chemicals:** enalapril (PubChem CID 5388962), aldosterone (PubChem CID 5839)
- **Diseases:** congenital heart disease (MONDO:0005453), heart failure (MONDO:0005252)

## Full-text entities

- **Diseases:** CHD (MESH:D006330), HF (MESH:D006333), hypertension (MESH:D006973)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

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## References

41 references — full list in the complete paper: https://tomesphere.com/paper/PMC12066549/full.md

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Source: https://tomesphere.com/paper/PMC12066549