Document Type
Article
Publication Date
5-2026
Identifier
DOI: 10.1007/s00467-025-06911-1; PMCID: PMC13009068
Abstract
Artificial intelligence (AI) is rapidly emerging as a transformative force in pediatric nephrology, enabling improvements in diagnostic accuracy, therapeutic precision, and operational workflows. By integrating diverse datasets-including patient histories, genomics, imaging, and longitudinal clinical records-AI-driven tools can detect subtle kidney anomalies, predict acute kidney injury, and forecast disease progression. Deep learning models, for instance, have demonstrated the potential to enhance ultrasound interpretations, refine kidney biopsy assessments, and streamline pathology evaluations. Coupled with robust decision support systems, these innovations also optimize medication dosing and dialysis regimens, ultimately improving patient outcomes. AI-powered chatbots hold promise for improving patient engagement and adherence, while AI-assisted documentation solutions offer relief from administrative burdens, mitigating physician burnout. However, ethical and practical challenges remain. Healthcare professionals must receive adequate training to harness AI's capabilities, ensuring that such technologies bolster rather than erode the vital doctor-patient relationship. Safeguarding data privacy, minimizing algorithmic bias, and establishing standardized regulatory frameworks are critical for safe deployment. Beyond clinical care, AI can accelerate pediatric nephrology research by identifying biomarkers, enabling more precise patient recruitment, and uncovering novel therapeutic targets. As these tools evolve, interdisciplinary collaborations and ongoing oversight will be key to integrating AI responsibly. Harnessing AI's vast potential could revolutionize pediatric nephrology, championing a future of individualized, proactive, and empathetic care for children with kidney diseases. Through strategic collaboration and transparent development, these advanced technologies promise to minimize disparities, foster innovation, and sustain compassionate patient-centered care, shaping a new horizon in pediatric nephrology research and practice.
Journal Title
Pediatric nephrology (Berlin, Germany)
Volume
41
Issue
5
First Page
1275
Last Page
1286
MeSH Keywords
Humans; Nephrology; Artificial Intelligence; Child; Pediatrics; Kidney Diseases
PubMed ID
40957986
Keywords
Artificial intelligence; Kidney injury; Nephrology; Pediatrics
Recommended Citation
Nada A, Ahmed Y, Hu J, et al. AI-powered insights in pediatric nephrology: current applications and future opportunities. Pediatr Nephrol. 2026;41(5):1275-1286. doi:10.1007/s00467-025-06911-1


Comments
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Publisher's Link: https://link.springer.com/article/10.1007/s00467-025-06911-1