» Articles » PMID: 36792642

Generalisability of Fetal Ultrasound Deep Learning Models to Low-resource Imaging Settings in Five African Countries

Abstract

Most artificial intelligence (AI) research and innovations have concentrated in high-income countries, where imaging data, IT infrastructures and clinical expertise are plentiful. However, slower progress has been made in limited-resource environments where medical imaging is needed. For example, in Sub-Saharan Africa, the rate of perinatal mortality is very high due to limited access to antenatal screening. In these countries, AI models could be implemented to help clinicians acquire fetal ultrasound planes for the diagnosis of fetal abnormalities. So far, deep learning models have been proposed to identify standard fetal planes, but there is no evidence of their ability to generalise in centres with low resources, i.e. with limited access to high-end ultrasound equipment and ultrasound data. This work investigates for the first time different strategies to reduce the domain-shift effect arising from a fetal plane classification model trained on one clinical centre with high-resource settings and transferred to a new centre with low-resource settings. To that end, a classifier trained with 1792 patients from Spain is first evaluated on a new centre in Denmark in optimal conditions with 1008 patients and is later optimised to reach the same performance in five African centres (Egypt, Algeria, Uganda, Ghana and Malawi) with 25 patients each. The results show that a transfer learning approach for domain adaptation can be a solution to integrate small-size African samples with existing large-scale databases in developed countries. In particular, the model can be re-aligned and optimised to boost the performance on African populations by increasing the recall to [Formula: see text] and at the same time maintaining a high precision across centres. This framework shows promise for building new AI models generalisable across clinical centres with limited data acquired in challenging and heterogeneous conditions and calls for further research to develop new solutions for the usability of AI in countries with fewer resources and, consequently, in higher need of clinical support.

Citing Articles

Enhancing fetal ultrasound image quality and anatomical plane recognition in low-resource settings using super-resolution models.

Boumeridja H, Ammar M, Alzubaidi M, Mahmoudi S, Benamer L, Agus M Sci Rep. 2025; 15(1):8376.

PMID: 40069254 PMC: 11897392. DOI: 10.1038/s41598-025-91808-0.


Integrating radiological and clinical data for clinically significant prostate cancer detection with machine learning techniques.

Esteban L, Borque-Fernando A, Escorihuela M, Esteban-Escano J, Abascal J, Servian P Sci Rep. 2025; 15(1):4261.

PMID: 39905119 PMC: 11794621. DOI: 10.1038/s41598-025-88297-6.


LPC-SonoNet: A Lightweight Network Based on SonoNet and Light Pyramid Convolution for Fetal Ultrasound Standard Plane Detection.

Yu T, Tsui P, Leonov D, Wu S, Bin G, Zhou Z Sensors (Basel). 2024; 24(23).

PMID: 39686049 PMC: 11644059. DOI: 10.3390/s24237510.


Body Surface Potential Mapping: A Perspective on High-Density Cutaneous Electrophysiology.

Ruiz-Mateos Serrano R, Farina D, Malliaras G Adv Sci (Weinh). 2024; 12(4):e2411087.

PMID: 39679757 PMC: 11775574. DOI: 10.1002/advs.202411087.


Advancements in Artificial Intelligence for Fetal Neurosonography: A Comprehensive Review.

Weichert J, Scharf J J Clin Med. 2024; 13(18).

PMID: 39337113 PMC: 11432922. DOI: 10.3390/jcm13185626.


References
1.
Martin-Isla C, Campello V, Izquierdo C, Raisi-Estabragh Z, Baessler B, Petersen S . Image-Based Cardiac Diagnosis With Machine Learning: A Review. Front Cardiovasc Med. 2020; 7:1. PMC: 6992607. DOI: 10.3389/fcvm.2020.00001. View

2.
Burgos-Artizzu X, Coronado-Gutierrez D, Valenzuela-Alcaraz B, Bonet-Carne E, Eixarch E, Crispi F . Evaluation of deep convolutional neural networks for automatic classification of common maternal fetal ultrasound planes. Sci Rep. 2020; 10(1):10200. PMC: 7311420. DOI: 10.1038/s41598-020-67076-5. View

3.
Wang X, Liu Z, Du Y, Diao Y, Liu P, Lv G . Recognition of Fetal Facial Ultrasound Standard Plane Based on Texture Feature Fusion. Comput Math Methods Med. 2021; 2021:6656942. PMC: 8195636. DOI: 10.1155/2021/6656942. View

4.
Matthew J, Skelton E, Day T, Zimmer V, Gomez A, Wheeler G . Exploring a new paradigm for the fetal anomaly ultrasound scan: Artificial intelligence in real time. Prenat Diagn. 2021; 42(1):49-59. DOI: 10.1002/pd.6059. View

5.
Montero A, Bonet-Carne E, Burgos-Artizzu X . Generative Adversarial Networks to Improve Fetal Brain Fine-Grained Plane Classification. Sensors (Basel). 2021; 21(23). PMC: 8659720. DOI: 10.3390/s21237975. View