Čes-slov Pediat 2025, 80(5):235-238 | DOI: 10.55095/CSPediatrie2025/041
Seven current trends in artificial intelligence in pediatrics
- 1 Klinika ortodoncie a regeneratívnej a forenznej stomatológie, Lekárska fakulta Univerzity Komenského, Bratislava
- 2 Detská klinika, Lekárska fakulta Univerzity Komenského, Národný ústav detských chorôb, Bratislava
Artificial intelligence (AI) is rapidly finding its application in pediatrics across various areas of medicine. This review presents seven of the most current topics in the use of AI in pediatric care, including diagnostic imaging, predictive analytics for early warning of
deterioration, personalized medicine with a focus on genomics and pharmacogenomics, support in diagnosing neurodevelopmental and behavioral disorders, intelligent clinical decision support systems, telemedicine and remote monitoring, as well as the ethical challenges related to implementing AI in children. In each of these domains, research already demonstrates tangible benefits - from improving t
he accuracy and speed of diagnosis to enabling individualized treatment and more efficient care. At the same time, we highlight the specific characteristics of the pediatric population that require caution when developing and deploying AI, especially regarding data quality, safety, transparency, and ethical standards. For pediatricians, it is important to become familiar with both the possibilitie
s and limitations of artificial intelligence in order to responsibly harness its potential to improve child healthcare.
Keywords: artificial intelligence, pediatrics, machine learning, diagnostics, personalized medicine, telemedicine, AI ethics
Accepted: September 3, 2025; Published: June 1, 2025 Show citation
References
- . Rajpurkar P, Irvin J, Zhu K, et al. CheXNet: radiologist-level pneumonia detection on chest X-rays with deep learning. [Internet]. 2017 [cit. 12. 7. 2025]. Dostupné z: https: //arxiv.org/pdf/1711.05225
- . Field EL, Tam W, Moore N, McEntee M. Efficacy of artificial intelligence in the categorisation of paediatric pneumonia on chest radiographs: a systematic review. Children 2023; 10(3): 576.
Go to original source... - . Fairchild KD. Predictive monitoring for early detection of sepsis in neonatal ICU patients. Curr Opin Pediatr 2013; 25(2): 172-179.
Go to original source... - . Daniel R, Jones H, Gregory JW, et al. Predicting type 1 diabetes in children using electronic health records in primary care in the UK: development and validation of a machine-learning algorithm. Lancet Digit Health 2024; 6(6): e386-e395.
Go to original source... - . Hassan M, Awan FM, Naz A, et al. Innovations in genomics and big data analytics for personalized medicine and health care: a review. Int J Mol Sci 2022; 23(9): 4645.
Go to original source... - . Kováč P, Jackuliak P, Bražinová A, et al. Artificial intelligence-driven facial image analysis for the early detection of rare diseases: legal, ethical, forensic, and cybersecurity considerations. AI 2024; 5(3): 990-1010.
Go to original source... - . Barker CIS, Groeneweg G, Maitland-van der Zee AH, et al. Pharmacogenomic testing in paediatrics: clinical implementation strategies. Br J Clin Pharmacol 2022; 88(10): 4297-4310.
Go to original source... - . Clark MM, Hildreth A, Batalov S, et al. Diagnosis of genetic diseases in seriously ill children by rapid whole-genome sequencing and automated phenotyping and interpretation. Sci Transl Med 2019; 11(489).
Go to original source... - . Kyselicová K, Baroková Ž, Dukonyová D, et al. Language deficit in boys with autism spectrum disorder in relation to maternal reproductive health, endocrine disruptors, and delivery method. Ceska Gynekol 2024; 89(5): 360-369.
Go to original source... - . Megerian JT, Dey S, Melmed RD, et al. Evaluation of an artificial-intelligence-based medical device for diagnosis of autism spectrum disorder. NPJ Digit Med 2022; 5(1): 57.
Go to original source... - . Chen J, Chen C, Xu R, Liu L. Autism identification based on the intelligent analysis of facial behaviors: an approach combining coarse- and fine-grained analysis. Children 2024; 11(11): 1306.
Go to original source... - . Ramgopal S, Sanchez-Pinto LN, Horvat CM, et al. Artificial intelligence-based clinical decision support in pediatrics. Pediatr Res 2023; 93(2): 334-341.
Go to original source... - . Thurzo A. Provable AI ethics and explainability in medical and educational AI agents: trustworthy ethical firewall. Electronics 2025; 14(7): 1294.
Go to original source... - . Peyroteo M, Ferreira IA, Elvas LB, et al. Remote monitoring systems for patients with chronic diseases in primary health care: systematic review. JMIR Mhealth Uhealth 2021; 9(12): e28285.
Go to original source... - . Palacios C, Hernandez J, Ajmal A, et al. Digital health, technology-driven or technology-assisted interventions for the management of obesity in children and adolescents. Cochrane Database Syst Rev. 2025; 7(7).
Go to original source... - . Thurzo A, Kurilová V, Varga I. Artificial intelligence in orthodontic smart application for treatment coaching and its impact on clinical performance of patients monitored with AI-teleHealth system. Healthcare 2021; 9(12): 1695.
Go to original source... - . Surovková J, Haluzová S, Strunga M, et al. The new role of the dental assistant and nurse in the age of advanced artificial intelligence in telehealth orthodontic care with Dental Monitoring: preliminary report. Appl Sci 2023; 13(8): 5212.
Go to original source... - . Thurzo A, Thurzo V. Embedding fear in medical AI: a risk-averse framework for safety and ethics. AI 2025; 6(5): 101.
Go to original source... - . Muralidharan V, Burgart A, Daneshjou R, Rose S. Recommendations for the use of pediatric data in artificial intelligence and machine learning (ACCEPT-AI). NPJ Digit Med 2023; 6(1): 166.
Go to original source...
This is an open access article distributed under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0), which permits use, distribution, and reproduction in any medium, provided the original publication is properly cited. No use, distribution or reproduction is permitted which does not comply with these terms.




