» Articles » PMID: 35396036

Artificial Intelligence in Perinatal Diagnosis and Management of Congenital Heart Disease

Overview
Journal Semin Perinatol
Date 2022 Apr 9
PMID 35396036
Authors
Affiliations
Soon will be listed here.
Abstract

Prenatal diagnosis and management of congenital heart disease (CHD) has progressed substantially in the past few decades. Fetal echocardiography can accurately detect and diagnose approximately 85% of cardiac anomalies. The prenatal diagnosis of CHD results in improved care, with improved risk stratification, perioperative status and survival. However, there is much work to be done. A minority of CHD is actually identified prenatally. This seemingly incongruous gap is due, in part, to diminished recognition of an anomaly even when present in the images and the need for increased training to obtain specialized cardiac views. Artificial intelligence (AI) is a field within computer science that focuses on the development of algorithms that "learn, reason, and self-correct" in a human-like fashion. When applied to fetal echocardiography, AI has the potential to improve image acquisition, image optimization, automated measurements, identification of outliers, classification of diagnoses, and prediction of outcomes. Adoption of AI in the field has been thus far limited by a paucity of data, limited resources to implement new technologies, and legal and ethical concerns. Despite these barriers, recognition of the potential benefits will push us to a future in which AI will become a routine part of clinical practice.

Citing Articles

Artificial Intelligence in Fetal and Pediatric Echocardiography.

Wang A, Doan T, Reddy C, Jone P Children (Basel). 2025; 12(1.

PMID: 39857845 PMC: 11764430. DOI: 10.3390/children12010014.


Explainable Artificial Intelligence in Paediatric: Challenges for the Future.

Salih A, Menegaz G, Pillay T, Boyle E Health Sci Rep. 2024; 7(12):e70271.

PMID: 39669185 PMC: 11635175. DOI: 10.1002/hsr2.70271.


Accurately assessing congenital heart disease using artificial intelligence.

Khan K, Ullah F, Syed I, Ali H PeerJ Comput Sci. 2024; 10:e2535.

PMID: 39650370 PMC: 11623015. DOI: 10.7717/peerj-cs.2535.


Identifying at-risk patients for congenital heart disease using integrated predictive models and fuzzy clustering analysis: A cross-sectional study.

Salehi A, Khedmati M Heliyon. 2024; 10(20):e39609.

PMID: 39498045 PMC: 11532873. DOI: 10.1016/j.heliyon.2024.e39609.


Development and External Validation of an Artificial Intelligence-Based Method for Scalable Chest Radiograph Diagnosis: A Multi-Country Cross-Sectional Study.

Liu Z, Xu J, Yin C, Han G, Che Y, Fan G Research (Wash D C). 2024; 7:0426.

PMID: 39109248 PMC: 11301699. DOI: 10.34133/research.0426.