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Multidisciplinary ecosystem to study lifecourse determinants and prevention of early-onset burdensome multimorbidity (MELD-B) - protocol for a research collaboration.

Simon D S FraserSebastian StannardEmilia HollandMichael BonifaceRebecca B HoyleRebecca WilkinsonAshley AkbariMark AshworthAnn BerringtonRoberta ChiovoloniJessica EnrightNick A FrancisGareth GilesMartin GullifordSara MacdonaldFrances S MairRhiannon K OwenShantini ParanjothyHeather ParsonsRuben J Sanchez-GarciaMozhdeh ShiraniradZlatko ZlatevNisreen Alwan
Published in: Journal of multimorbidity and comorbidity (2023)
We will develop deeper understanding of 'burdensomeness' and 'complexity' through a qualitative evidence synthesis and a consensus study. Using safe data environments for analyses across large, representative routine healthcare datasets and birth cohorts, we will apply AI methods to identify early-onset, burdensome MLTC-M clusters and sentinel conditions, develop semi-supervised learning to match individuals across datasets, identify determinants of burdensome clusters, and model trajectories of LTC and burden accrual. We will characterise early-life (under 18 years) risk factors for early-onset, burdensome MLTC-M and sentinel conditions. Finally, using AI and causal inference modelling, we will model potential 'preventable moments', defined as time periods in the life course where there is an opportunity for intervention on risk factors and early determinants to prevent the development of MLTC-M. Patient and public involvement is integrated throughout.
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