HE ALTH TECH
Alzheimer’s AI
Algorithm predicts eventual Alzheimer’s diagnoses from brain scans
An estimated 5.7 million people in the
U.S. have Alzheimer’s disease—the most
common type of dementia—and that number is expected to more than double by
2050. Early diagnosis is crucial for patients
to benefit from the few therapies available.
But no single assay or scan can deliver a
conclusive diagnosis while a person is alive;
instead doctors have to conduct numerous
clinical and neuropsychological tests. So
there is growing interest in developing
artificial intelligence to identify Alzheimer’s
based on brain imaging.
Researchers at the University of California, San Francisco, have now successfully
trained an AI algorithm to recognize one of
the early signs of Alzheimer’s—a reduction
in the brain’s glucose consumption—in positron emission tomography (PET) imaging.
The algorithm accurately predicted an
eventual Alzheimer’s diagnosis in nearly all
the test cases, according to the study.
In PET imaging, trace amounts of a
radioactive compound are ingested or
injected into the body, producing threedimensional images of metabolism, circulation and other cellular activity. PET is
well suited for an AI diagnostic tool because Alzheimer’s causes subtle changes
in the brain’s metabolism that begin years
before neural tissue starts to degrade,
says study co-author Jae Ho Sohn, a radiologist at U.C.S.F. These changes are “very
hard for radiologists to pick up,” he notes.
The algorithm was trained and tested on
2,100 PET brain images from about 1,000
people 55 years and older. The images
came from a 12-year study that tracked
people who would ultimately be diagnosed
with Alzheimer’s, as well as those with mild
memory declines and healthy control subjects. The algorithm was trained on 90 percent of the data and tested on the remaining
10 percent. It was then retested on a second, independent data set from 40 patients
monitored for 10 years. The algorithm was
highly sensitive and was able to recognize
81 percent of the patients in the first test
group and 100 percent in the second who
would be diagnosed with Alzheimer’s six
years later, on average. The findings were
published in February in Radiology.
The algorithm is based on “deep learning,” a machine-learning technique that uses
artificial neural networks programmed to
learn from examples. “This is one of the first
promising, preliminary applications of deep
learning to the diagnosis of Alzheimer’s,”
says Christian Salvatore, a physicist at Italy’s
National Research Council, who was not
involved in the study. “The model performs
very well when identifying patients with
mild or late” diagnoses, he says, but catching it in the earliest stages “remains one of
the most critical open issues in this field.”
—Rod McCullom
PET scans of normal (left) and Alzheimer’s (right) brains.
© 2019 Scientific American
20 Scientific American, May 2019
SCIENCE SOURCE
ADVANCES
HE ALTH TECH
Alzheimer’s AI
Algorithm predicts eventual Alzheimer’s diagnoses from brain scans
An estimated 5.7 million people in the
U.S. have Alzheimer’s disease—the most
common type of dementia—and that number is expected to more than double by
2050. Early diagnosis is crucial for patients
to benefit from the few therapies available.
But no single assay or scan can deliver a
conclusive diagnosis while a person is alive;
instead doctors have to conduct numerous
clinical and neuropsychological tests. So
there is growing interest in developing
artificial intelligence to identify Alzheimer’s
based on brain imaging.
Researchers at the University of California, San Francisco, have now successfully
trained an AI algorithm to recognize one of
the early signs of Alzheimer’s—a reduction
in the brain’s glucose consumption—in positron emission tomography (PET) imaging.
The algorithm accurately predicted an
eventual Alzheimer’s diagnosis in nearly all
the test cases, according to the study.
In PET imaging, trace amounts of a
radioactive compound are ingested or
injected into the body, producing threedimensional images of metabolism, circulation and other cellular activity. PET is
well suited for an AI diagnostic tool because Alzheimer’s causes subtle changes
in the brain’s metabolism that begin years
before neural tissue starts to degrade,
says study co-author Jae Ho Sohn, a radiologist at U.C.S.F. These changes are “very
hard for radiologists to pick up,” he notes.
The algorithm was trained and tested on
2,100 PET brain images from about 1,000
people 55 years and older. The images
came from a 12-year study that tracked
people who would ultimately be diagnosed
with Alzheimer’s, as well as those with mild
memory declines and healthy control subjects. The algorithm was trained on 90 percent of the data and tested on the remaining
10 percent. It was then retested on a second, independent data set from 40 patients
monitored for 10 years. The algorithm was
highly sensitive and was able to recognize
81 percent of the patients in the first test
group and 100 percent in the second who
would be diagnosed with Alzheimer’s six
years later, on average. The findings were
published in February in Radiology.
The algorithm is based on “deep learning,” a machine-learning technique that uses
artificial neural networks programmed to
learn from examples. “This is one of the first
promising, preliminary applications of deep
learning to the diagnosis of Alzheimer’s,”
says Christian Salvatore, a physicist at Italy’s
National Research Council, who was not
involved in the study. “The model performs
very well when identifying patients with
mild or late” diagnoses, he says, but catching it in the earliest stages “remains one of
the most critical open issues in this field.”
—Rod McC
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