Published May 29, 2025 | Version v1
Project deliverable Open

D3.2 / First report on predictive modelling for PD

Description

The deliverable D3.2 provides an overview of all methodologies, findings and future directions of the AI-PROGNOSIS predictive models for Parkinson’s disease (PD). The deliverable focuses on three main pillars of prognostic modelling: a) estimation of the risk of developing PD, b) estimation of progression in PD, and c) estimation of response to medication. Hence, three distinct modelling approaches are presented, following the TRIPOD+AI reporting guidelines. The models use multimodal data, including sociodemographic factors, wearable device data and genetic profiles from wealthy, open large-scale datasets, such as the PPMI and AMP-PD. Pre-modelling achievements of the project include the successful harmonization of the core dataset using the observational medical outcomes partnership (OMOP) common data model, as well as efficient data pre-processing, such as bias mitigation, outlier detection, data imputation to improve model robustness, generalizability and fairness. Challenges were faced and addressed to ensure seamless data harmonisation, paving the way for harmonising datasets to be accessed in the future.

Files

AI-PROGNOSIS_D3.2 First report on predictive modelling for PD_v1.0_24122024.pdf

Additional details

Funding

European Commission
AI-PROGNOSIS - Artificial intelligence-based Parkinson’s disease risk assessment and prognosis 101080581