How GenAI is Helping Reimagine Antenatal Care in A Low-Resource Setting: From Provider Enablement to Patient Empowerment
Maryam Mustafa, Imaan Hameed, Amna Shahnawaz, Bilal A Mateen
TLDR
Awaaz-e-Sehat is a speech-based AI system that evolved from clinician support to a patient-centered WhatsApp platform, reimagining antenatal care in low-resource settings.
Key contributions
- Developed Awaaz-e-Sehat, a speech-based AI system for maternal health EMR generation and decision support.
- Evolved from a clinician-facing AI assistant to a patient-centered WhatsApp platform for self-generated notes and guidance.
- Enables women to generate structured clinical notes, receive AI guidance, and share QR-coded records.
- Transforms EMRs into dynamic tools for patient self-advocacy and shared accountability in maternal health.
Why it matters
This paper introduces Awaaz-e-Sehat, a GenAI system tackling high maternal mortality in Pakistan by empowering patients to own their health data. It reimagines antenatal care, fostering self-advocacy and shared accountability, crucial for low-resource settings with limited clinician time and documentation incentives.
Original Abstract
Despite steady global advances, maternal mortality remains alarmingly high in Pakistan (155 deaths per 100,000 live births in 2023); largely as a consequence of fragmented paper records, low literacy, poor access to quality healthcare, and gendered barriers that compromise care continuity. Over three years, we designed, deployed, and iteratively developed Awaaz-e-Sehat, a speech-based artificial intelligence (AI) system that generates electronic medical records (EMRs) and supports decision-making in maternal health. The tool evolved from a clinician-facing AI assistant that automated Urdu speech-to-EMR generation into a patient-centred WhatsApp-based platform, enabling women to generate their own structured clinical notes, receive AI-generated antenatal guidance, and share QR-coded records with providers anywhere in the country. This case study documents that translational journey, i.e., how the ground realities of workload, linguistic nuance, and infrastructural constraints reshaped our design. The result is not merely a new method of record-keeping, but a reimagining of antenatal care and electronic medical records themselves. In settings where clinicians are time-constrained and have little institutional incentive to document, Awaaz-e-Sehat proposes a model of care that centres patients as active participants in generating and owning their health data. By keeping patients informed about their own risk factors and integrating them into the clinical decision-support loop, the system transforms EMRs and CDSS from static institutional artefacts into dynamic tools for self-advocacy and shared accountability in maternal health.
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