Since the project start, AIMIX has made substantial progress across multiple dimensions, including AI model development, data collection, community engagement, and federated learning implementation.
• Data collection and management: Over 1,349 pregnant women were recruited in Kenya, generating a dataset of more than 2,400 standard scans and over 1,900 blind sweeps up to date. This is one of the most comprehensive fetal ultrasound datasets from sub-Saharan Africa, ensuring diversity in AI model training. Additionally, an advanced data de-identification pipeline was developed to comply with data privacy regulations while enabling cross-border AI collaboration.
• AI development: A federated learning-based framework was designed and deployed across five African countries and Spain, significantly improving AI model generalisability without requiring high-end computational resources. This system preserves data privacy while allowing collaborative AI training across multiple sites with different imaging environments.
• Human-centred design and socio-ethical research: A qualitative study with 84 participants highlighted key ethical and cultural concerns regarding AI in maternal healthcare, informing AI model development to enhance trust and usability.
• Technical innovations: The project introduced a novel blind-sweep ultrasound scanning protocol, improving data collection efficiency and AI training. This protocol enables trained healthcare workers with minimal sonography expertise to acquire diagnostic-quality scans, thereby addressing the shortage of specialised personnel.
• Stakeholder engagement: Over 47 community meetings and two major consortium workshops were held, involving healthcare workers, community leaders, and pregnant women to ensure the project's relevance and adoption. AIMIX also established a Community Advisory Board in Kenya to guide implementation and dissemination strategies, ensuring local perspectives are integrated into project decisions.
• Knowledge transfer and capacity building: AIMIX facilitated AI and ultrasound training sessions for healthcare professionals and research personnel, equipping them with skills to sustain and expand the project’s impact. This includes hands-on workshops on federated learning, AI ethics, and ultrasound data interpretation.
These achievements demonstrate AIMIX's effectiveness in translating AI research into real-world applications that can positively impact maternal health outcomes.