Predicting Rate of Cognitive Decline at Baseline Using a Deep Neural
Network with Multidata Analysis
- URL: http://arxiv.org/abs/2002.10034v3
- Date: Mon, 5 Oct 2020 23:14:23 GMT
- Title: Predicting Rate of Cognitive Decline at Baseline Using a Deep Neural
Network with Multidata Analysis
- Authors: Sema Candemir, Xuan V. Nguyen, Luciano M. Prevedello, Matthew T.
Bigelow, Richard D.White, Barbaros S. Erdal (for the Alzheimer's Disease
Neuroimaging Initiative)
- Abstract summary: This study investigates whether a machine-learning-based system can predict the rate of cognitive decline in mildly cognitively impaired patients.
We built a predictive model based on a supervised hybrid neural network utilizing a 3-Dimensional Convolutional Neural Network.
- Score: 8.118172725250805
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Purpose: This study investigates whether a machine-learning-based system can
predict the rate of cognitive decline in mildly cognitively impaired patients
by processing only the clinical and imaging data collected at the initial
visit.
Approach: We built a predictive model based on a supervised hybrid neural
network utilizing a 3-Dimensional Convolutional Neural Network to perform
volume analysis of Magnetic Resonance Imaging and integration of non-imaging
clinical data at the fully connected layer of the architecture. The experiments
are conducted on the Alzheimers Disease Neuroimaging Initiative dataset.
Results: Experimental results confirm that there is a correlation between
cognitive decline and the data obtained at the first visit. The system achieved
an area under the receiver operator curve (AUC) of 0.70 for cognitive decline
class prediction.
Conclusion: To our knowledge, this is the first study that predicts slowly
deteriorating/stable or rapidly deteriorating classes by processing routinely
collected baseline clinical and demographic data (Baseline MRI, Baseline MMSE,
Scalar Volumetric data, Age, Gender, Education, Ethnicity, and Race). The
training data is built based on MMSE-rate values. Unlike the studies in the
literature that focus on predicting Mild Cognitive Impairment-to-Alzheimer`s
disease conversion and disease classification, we approach the problem as an
early prediction of cognitive decline rate in MCI patients.
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