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Predicting Future Clinical Changes of MCI Patients Using Longitudinal and Multimodal Biomarkers

Overview of attention for article published in PLOS ONE, March 2012
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Title
Predicting Future Clinical Changes of MCI Patients Using Longitudinal and Multimodal Biomarkers
Published in
PLOS ONE, March 2012
DOI 10.1371/journal.pone.0033182
Pubmed ID
Authors

Daoqiang Zhang, Dinggang Shen, Alzheimer's Disease Neuroimaging Initiative

Abstract

Accurate prediction of clinical changes of mild cognitive impairment (MCI) patients, including both qualitative change (i.e., conversion to Alzheimer's disease (AD)) and quantitative change (i.e., cognitive scores) at future time points, is important for early diagnosis of AD and for monitoring the disease progression. In this paper, we propose to predict future clinical changes of MCI patients by using both baseline and longitudinal multimodality data. To do this, we first develop a longitudinal feature selection method to jointly select brain regions across multiple time points for each modality. Specifically, for each time point, we train a sparse linear regression model by using the imaging data and the corresponding clinical scores, with an extra 'group regularization' to group the weights corresponding to the same brain region across multiple time points together and to allow for selection of brain regions based on the strength of multiple time points jointly. Then, to further reflect the longitudinal changes on the selected brain regions, we extract a set of longitudinal features from the original baseline and longitudinal data. Finally, we combine all features on the selected brain regions, from different modalities, for prediction by using our previously proposed multi-kernel SVM. We validate our method on 88 ADNI MCI subjects, with both MRI and FDG-PET data and the corresponding clinical scores (i.e., MMSE and ADAS-Cog) at 5 different time points. We first predict the clinical scores (MMSE and ADAS-Cog) at 24-month by using the multimodality data at previous time points, and then predict the conversion of MCI to AD by using the multimodality data at time points which are at least 6-month ahead of the conversion. The results on both sets of experiments show that our proposed method can achieve better performance in predicting future clinical changes of MCI patients than the conventional methods.

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Geographical breakdown

Country Count As %
United States 1 <1%
Sweden 1 <1%
Italy 1 <1%
Korea, Republic of 1 <1%
Unknown 212 98%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 43 20%
Researcher 32 15%
Student > Master 31 14%
Student > Bachelor 14 6%
Student > Postgraduate 12 6%
Other 38 18%
Unknown 46 21%
Readers by discipline Count As %
Computer Science 28 13%
Medicine and Dentistry 26 12%
Neuroscience 22 10%
Engineering 21 10%
Psychology 16 7%
Other 39 18%
Unknown 64 30%