Blood-based metabolic signature outperforms standard method for predicting diet, disease risk

Researchers have found a method using molecular profiling and machine learning to develop blood-based dietary signatures that more accurately assess diet and predict the risk of cardiovascular disease and type 2 diabetes. They say the metabolic snapshot could allow those studying food science to better understand the implications of diet and nutrition on health.

Source: sciencedaily.com

Related posts

Geologists, biologists unearth the atomic fingerprints of cancer

Venus has almost no water: A new study may reveal why

Past and guides future efforts to reduce cancer disparities