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Active RESEARCH GRANT UKRI Gateway to Research

Next Generation Assessment of Fetal Wellbeing using Artificial Intelligence

£16.15M GBP

Funder Medical Research Council
Recipient Organization University of Oxford
Country United Kingdom
Start Date Jun 30, 2023
End Date Jun 29, 2026
Duration 1,095 days
Number of Grantees 5
Roles Co-Investigator; Principal Investigator; Award Holder
Data Source UKRI Gateway to Research
Grant ID MR/X029689/1
Grant Description

Electronic Fetal Heart monitoring (also called CTG) is the measurement of the fetal heart rate using probes that are placed on the mother's abdomen. It is the commonest test of fetal wellbeing worldwide (>200M tests per year are performed). It is used to try and assess how healthy the baby is and produces a readout that is very complex; surprisingly this readout is usually analyzed visually (by eye) and the clinician performing this analysis will use this to justify whether a baby needs to be delivered or not.

There is a substantial amount of published data that shows this visual assessment is extremely poor and groups of clinicians disagree about a CTG and even the same doctor can interpret a CTG differently on different days. This means that some babies are delivered too soon and many sick babies are delivered too late - both create major problems for the babies, their parents, the NHS and society.

CTG can be performed in pregnancy before labour or during labour. Most stillbirths occur before labour (>80%) and we have focused on this area.

Many groups (including ourselves) have tried to standardize assessment of the CTG readouts using rudimentary computerised assessment. These systems certainly reduce the disagreements between clinicians but can't account for the multiple factors that make a CTG normal or abnormal (e.g. no systems account for the gestational age of a baby - e.g. treating a 28 week baby the same as a 38 week baby.

These systems don't incorporate maternal or fetal disease into the analysis and none of these systems can tell clinicians what will happen to the baby in the coming days or weeks.

We have brought together a team with expertise in CTG and artificial intelligence to deliver next generation assessment of the fetus.

We will develop a suite of artificial intelligence based machine-learning models to revolutionise antepartum CTG analysis. Recent advances in deep-neural-networks (DNN) enable advanced analysis and identification of novel features within these complex signal patterns which we can exploit in conjunction with detailed maternal and fetal clinical outcomes to generate high fidelity diagnostic and prognostic tools.

At our disposal is a unique unrivaled database of >165,000 fully classified CTG signals with associated maternal and neonatal outcome data from >56,000 pregnancies. Leveraging these data, we will develop artificial intelligence based technologies specific to the unique context of the mother and the fetus (at any gestational age). We have proven experience of analysing large datasets using these AI based tools.

We have built into our plans the ability to validate our findings with prospective data from Oxford and Melbourne. The potential health benefits are substantial.

Our work streams will allow us to generate clean data, generate tools that will allow our AI solution to be used on any CTG from any manufacturer. We will incorporate gestational age, maternal and fetal disease status and provide clinicians with a precise risk assessment of the fetus that will significantly improve the way we care for babies in the UK and beyond.

All Grantees

University of Oxford; University of Melbourne

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