MULTI-KNOWLEDGE

The MULTI-KNOWLEDGE Project aims to integrate different biomedical information from heterogeneous sources (clinical, laboratory and metabolic) with data on gene and protein expression provided by new high throughput technologies in a system committed to cardiovascular risk profiling.

The classical approach in global cardiovascular (CV) risk assessment can be faulty: classical risk factors (such as high cholesterol, high blood pressure, smoking, etc) are able to explain only 50% cases of CV events; it is furthermore not possible to assess the differential impact of risk factors in different subjects and it is still unclear whether the correction of risk factors can fetch CV risk to zero. There arises the need to to get a better prediction of the clinical events and a more efficient prevention strategy.

The MULTI-KNOWLEDGE Project's general goal is therefore the construction and implementation of a predictive algorithm combining clinical, laboratory, metabolic, gene and protein expression data to identify the presence of early signs of vessel wall atherosclerotic disease in subjects at different degree of cardiovascular disease (CVD) risk on the basis of traditional risk factors and insulin resistance level.

Scientific-medical objectives:

  • To investigate the impact of CV risk factors on systemic inflammation using gene expression profiling
  • To integrate clinical and molecular data to predict the presence of early signs of atherosclerosis

Technical aim:

  • To implement mutliuser collaborative instruments to manage and analyze data from high-throughput technologies and clinical data

For further information, please visit:
http://www.multiknowledge.eu

Project co-ordinator:
Centro di Cultura Scientifica A.Volta

Partners:

  • AGILENT TECHNOLOGIES, ISRAEL Ltd. (Israel)
  • UNIVERSITÀ DEGLI STUDI DI PARMA (Italy)
  • KING'S COLLEGE LONDON (UK)
  • PCS PROFESSIONAL CLINICAL SOFTWARE GMBH (Austria)
  • S.A.T.A. - S.R.L. (Italy)
  • INFORMATION MANAGEMENT GROUP LTD (UK)
  • DATAMED A.E. HEALTHCARE INTEGRATOR (Greece)
  • THE STANFORD LELAND JUNIOR UNIVERSITY (Usa)

Timetable: from 01/06 to 03/2008

Total cost: €3.776.148,00

EC funding: 2.440.00,00

Instrument: STREP

Project Identifier: IST-2004-027106

Source: FP6 eHealth Portfolio of Projects

Most Popular Now

Is AI in Medicine Playing Fair?

As artificial intelligence (AI) rapidly integrates into health care, a new study by researchers at the Icahn School of Medicine at Mount Sinai reveals that all generative AI models may...

Generative AI's Diagnostic Capabili…

The use of generative AI for diagnostics has attracted attention in the medical field and many research papers have been published on this topic. However, because the evaluation criteria were...

New System for the Early Detection of Au…

A team from the Human-Tech Institute-Universitat Politècnica de València has developed a new system for the early detection of Autism Spectrum Disorder (ASD) using virtual reality and artificial intelligence. The...

AI Tool can Track Effectiveness of Multi…

A new artificial intelligence (AI) tool that can help interpret and assess how well treatments are working for patients with multiple sclerosis (MS) has been developed by UCL researchers. AI uses...

Diagnoses and Treatment Recommendations …

A new study led by Prof. Dan Zeltzer, a digital health expert from the Berglas School of Economics at Tel Aviv University, compared the quality of diagnostic and treatment recommendations...

Dr Jason Broch Joins the Highland Market…

The Highland Marketing advisory board has welcomed a new member - Dr Jason Broch, a GP and director with a strong track record in the NHS and IT-enabled transformation. Dr Broch...

Surrey and Sussex Healthcare NHS Trust g…

Surrey and Sussex Healthcare NHS Trust has marked an important milestone in connecting busy radiologists across large parts of South East England, following the successful go live of Sectra's enterprise...

Multi-Resistance in Bacteria Predicted b…

An AI model trained on large amounts of genetic data can predict whether bacteria will become antibiotic-resistant. The new study shows that antibiotic resistance is more easily transmitted between genetically...

DMEA 2025 Ends with Record Attendance an…

8 - 10 April 2025, Berlin, Germany. DMEA 2025 came to a successful close with record attendance and an impressive program. 20,500 participants attended Europe's leading digital health event over the...