Researchers have developed software to analyze MRI studies of the brain that could allow diagnosis of Alzheimer’s and of mild cognitive impairment, a lesser form of dementia that precedes the development of Alzheimer’s by several years. The research team show how their software program can accurately differentiate patients with mild cognitive impairment or Alzheimer’s from normal elderly individuals based on anatomic differences in brain structures known to be affected by Alzheimer’s.
“Traditionally Alzheimer’s has been diagnosed based on a combination of factors, such as a neurologic exam, detailed medical history and written tests of cognitive functioning, with neuroimaging used primarily to rule out other diseases such as stroke or a brain tumor,” says Rahul Desikan, lead author. “Our findings show the feasibility and importance of using automated, MRI-based neuroanatomic measures as a diagnostic marker for Alzheimer’s.”
The researchers note that mild cognitive impairment occurs in about 20 percent of elderly individuals, as many as 40 percent of those over 85 – 80 percent of whom develop Alzheimer’s within five or six years. Since treatments that may slow the progression of Alzheimer’s are in development, the ability to treat patients in the earliest stages of the disease may significantly delay progression to dementia. To investigate whether MR imaging can produce diagnostic markers for mild cognitive impairment and Alzheimer’s, the research team used FreeSurfer, an openly available imaging software package to examine a number of neuroanatomic regions across a range of normal individuals and patients with mild cognitive impairment and Alzheimer’s.
In the first phase of the study, the investigators examined MR images of 97 elderly individuals, some who had been determined to have mild cognitive impairment and others who were cognitively normal. Analyzing those images identified three regions of the brain where structural differences distinguished the normal controls from participants with mild cognitive impairment with an accuracy of 91 percent. Earlier pathological and imaging studies have found evidence of early Alzheimer’s in these three areas, the hippocampus, entorhinal cortex and the supramarginal gyrus.
To validate the accuracy and assess the reliability of the first-phase observations, the investigators analyzed imaging data from 216 individuals in the Alzheimer’s Disease Neuroimaging Database, 94 of whom were normal, 58 who had mild cognitive impairment at the time of imaging and went on to develop dementia, and 65 who had probable Alzheimer’s based on their clinical symptoms. These participants also had a series of neuropsychological tests, and samples of cerebrospinal fluid were available for many of them.
Automated MRI measures of the same three areas identified in the first phase, entorhinal cortex, hippocampus, and supramarginal gyrus, discriminated individuals with mild cognitive impairment from normal elderly controls with 95 percent accuracy, and patients with Alzheimer’s were discriminated from normal controls with 100 percent accuracy. The MRI measures also were significantly correlated with clinical and cognitive tests of dementia, particularly memory decline, and with biomarkers of cellular pathology such as the Alzheimer’s associated forms of the tau and amyloid proteins.
“Our results indicate that these automated MRI measures are one effective way of identifying individuals in the earliest stages of Alzheimer’s, but before this technology can be used clinically, several follow-up studies need to be done,” says Desikan. “Those include determining whether these automated MRI measures can accurately predict which individuals with mild cognitive impairment will progress to Alzheimer’s; seeing if they can differentiate Alzheimer’s from other neurodegenerative diseases; assessing how these measures do at early diagnosis, compared to other measures such as cellular biomarkers; and then validating all of these findings against the gold standard for diagnosis, postmortem examination of brain tissue.”