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Multimodality neuroimaging in mild cognitive impairment: A cross-sectional comparison study

Authors :
Ramshekhar N. Menon
Lekha Sarath
Chandrasekharan Kesavadas
Sunitha Justus
Mridula Mathew
Deepak Sasi
Bejoy Thomas
R Sheelakumari
Sankara P. Sarma
Source :
Annals of Indian Academy of Neurology, Vol 21, Iss 2, Pp 133-139 (2018), Annals of Indian Academy of Neurology
Publication Year :
2018
Publisher :
Wolters Kluwer Medknow Publications, 2018.

Abstract

Background and Purpose: Mild cognitive impairment (MCI) is a focus of considerable research. The present study aimed to test the utility of a logistic regression-derived classifier, combining specific quantitative multimodal magnetic resonance imaging (MRI) data for the early objective phenotyping of MCI in the clinic, over structural MRI data. Methods: Thirty-three participants with cognitively stable amnestic MCI; 15 MCI converters to early Alzheimer's disease (AD; diseased controls) and 20 healthy controls underwent high-resolution T1-weighted volumetric MRI, diffusion tensor imaging (DTI), and proton magnetic resonance spectroscopy (1H MR spectroscopy). The regional volumes were obtained from T1-weighted MRI. The fractional anisotropy and mean diffusivity maps were derived from DTI over multiple white matter regions. The 1H MRS voxels were placed over posterior cingulate gyri, and N-acetyl aspartate (NAA)/creatine (Cr), choline (Cho)/Cr, myoinositol (mI/Cr), and NAA/mI ratios were obtained. A multimodal classifier comprising MR volumetry, DTI, and MRS was prepared. A cutoff point was arrived based on receiver operator characteristics analysis. Results were considered significant, if P < 0.05. Results: The most sensitive individual marker to discriminate MCI from controls was DTI (90.9%), with a specificity of 50%. For classifying MCI from AD, the best individual modality was DTI (72.7%), with a high specificity of 87.9%. The multimodal classifier approach for MCI control classification achieved an area under curve (AUC) (AUC = 0.89; P < 0.001), with 93.9% sensitivity and 70% specificity. The combined classifier for MCI-AD achieved a highest AUC (AUC = 0.93; P < 0.001), with 93% sensitivity and 85.6% specificity. Conclusions: The combined method of gray matter atrophy, white matter tract changes, and metabolite variation achieved a better performance at classifying MCI compared to the application of individual MRI biomarkers.

Details

Language :
English
ISSN :
19983549 and 09722327
Volume :
21
Issue :
2
Database :
OpenAIRE
Journal :
Annals of Indian Academy of Neurology
Accession number :
edsair.doi.dedup.....3ae6e23f012ec88876c992240863936e