Artificial Intelligence May Predict Alzheimer's Disease

Posted: Jul 6 2016, 4:04am CDT | by , Updated: Jul 6 2016, 4:07am CDT, in Latest Science News


This story may contain affiliate links.

Artificial Intelligence may Predict Alzheimer's Disease
Application of Machine Learning to Arterial Spin Labeling in Mild Cognitive Impairment and Alzheimer Disease.” Dr. Meije Wink et. al.

Combining machine learning method -- a type of artificial intelligence -- with a special MRI technique may help physicians predict who is more likely to develop Alzheimer's disease, a study says.

Machine learning is a type of artificial intelligence that allows computer programs to learn when exposed to new data without being programmed.

"With standard diagnostic MRI, we can see advanced Alzheimer's disease, such as atrophy of the hippocampus," said principal investigator Alle Meije Wink from VU University Medical Centre in Amsterdam.

"But at that point, the brain tissue is gone and there's no way to restore it. It would be helpful to detect and diagnose the disease before it's too late," Meije Wink explained.

For the new study, published online in the journal Radiology, the researchers applied machine learning methods to special type of MRI called arterial spin labelling (ASL) imaging.

ASL MRI is used to create images called perfusion maps, which show how much blood is delivered to various regions of the brain.

The automated machine learning program is taught to recognize patterns in these maps to distinguish among patients with varying levels of cognitive impairment and predict the stage of Alzheimer's disease in new (unseen) cases.

The study included 260 of 311 participants from the Alzheimer Center of the VU University Medical Center dementia cohort who underwent ASL MRI between October 2010 and November 2012.

The study group included 100 patients diagnosed with probable Alzheimer's disease, 60 patients with mild cognitive impairment (MCI) and 100 patients with subjective cognitive decline (SCD), and 26 healthy controls.

The automated system was able to distinguish effectively among participants with Alzheimer's disease, MCI and SCD.

Using classifiers based on the automated machine learning training, the researchers were then able to predict the Alzheimer's diagnosis or progression of single patients with a high degree of accuracy, ranging from 82 per cent to 90 percent.


"Application of Machine Learning to Arterial Spin Labeling in Mild Cognitive Impairment and Alzheimer Disease.” Collaborating with Dr. Meije Wink were Lyduine E. Collij, B.Sc., Fiona Heeman, B.Sc., Joost P. A. Kuijer, Ph.D., Rik Ossenkoppele, Ph.D., Marije R. Benedictus, Ph.D., Christiane Möller, Ph.D., Sander C. J. Verfaillie, M.Sc., Ernesto J. Sanz-Arigita, Ph.D., Bart N. M. van Berckel, Prof. M.D., Ph.D., Wiesje M. van der Flier, Prof. Ph.D., Philip Scheltens, Prof. M.D., Ph.D., and Frederik Barkhof, Prof. M.D., Ph.D.

This story may contain affiliate links.


Find rare products online! Get the free Tracker App now.

Download the free Tracker app now to get in-stock alerts on Pomsies, Oculus Go, SNES Classic and more.

Latest News


The Author

<a href="/latest_stories/all/all/59" rel="author">IANS</a>
The Indo-Asian News Service (IANS) was established in 1986, initially to serve as an information bridge between India and its thriving Diaspora in North America. Now IANS is a full-fledged wire agency, putting out news 24x7 from around the world.




comments powered by Disqus