The study’s results confirm that using whole blood, rather than just the blood plasma fraction, can identify people who are at high risk of developing full-blown Alzheimer’s disease. In addition, the machine learning software shows which biomarkers are most useful for this purpose.
“We are particularly pleased to find that our ALZmetrix blood test can differentiate between patient groups that are amyloid positive or amyloid negative with 97% accuracy to predict those at highest risk of Alzheimer’s Disease,” said Professor Andrew Doig, Head of R&D at PharmaKure and researcher at The University of Manchester. “Age, APOE4 and pTau are the most useful features in the prediction. We have also shown that blood can track disease progression, primarily using levels of Tau and pTau.”
“These results represent an important step in developing whole blood tests to address a major unmet need for an alternative to PET and CSF scans”, said Dr Farid Khan, CEO at PharmaKure Limited. “This study has demonstrated how to get early warning signs of cognitive decline using whole blood. We will be using the exciting data to expand our ALZmetrix test to additional patients and new biomarkers.”
“Using the ALZmetrix test for Alzheimer’s could provide a low cost, easily accessible test for stratifying patients for clinical studies, as an alternative to expensive brain scans or other plasma-based tests,” said Dr Bob Smith, Clinical Director at PharmaKure.
One of the key advantages of using whole blood is that it may enable the development of a screening system to catch Alzheimer’s before any major memory problems become apparent. This would allow treatments to be offered earlier, thus providing better population-based health outcomes, lowering health system costs and improving the quality of life of millions of patients.
Though the scientific team will be publishing the results a journal in the next few months, they feel it is in the public interest to disseminate the result as soon as possible as there are no tests available to diagnose the early stages of the disease.