Analysis of conversion of Alzheimer's disease using a multi-state Markov model.
Liangliang ZhangChae Young LimTapabrata MaitiYingjie LiJongeun ChoiAndrea BozokiDavid C Zhunull nullnull nullPublished in: Statistical methods in medical research (2018)
With rapid aging of world population, Alzheimer's disease is becoming a leading cause of death after cardiovascular disease and cancer. Nearly 10% of people who are over 65 years old are affected by Alzheimer's disease. The causes have been studied intensively, but no definitive answer has been found. Genetic predisposition, abnormal protein deposits in brain, and environmental factors are suspected to play a role in the development of this disease. In this paper, we model progression of Alzheimer's disease using a multi-state Markov model to investigate the significance of known risk factors such as age, apolipoprotein E4, and some brain structural volumetric variables from magnetic resonance imaging scans (e.g., hippocampus, etc.) while predicting transitions between different clinical diagnosis states. With the Alzheimer's Disease Neuroimaging Initiative data, we found that the model with age is not significant (p = 0.1733) according to the likelihood ratio test, but the apolipoprotein E4 is a significant risk factor, and the examination of apolipoprotein E4-by-sex interaction suggests that the apolipoprotein E4 link to Alzheimer's disease is stronger in women. Given the estimated transition probabilities, the prediction accuracy is as high as 0.7849.
Keyphrases
- risk factors
- magnetic resonance imaging
- cardiovascular disease
- cognitive decline
- computed tomography
- type diabetes
- gene expression
- machine learning
- genome wide
- multiple sclerosis
- coronary artery disease
- magnetic resonance
- electronic health record
- pulmonary embolism
- white matter
- small molecule
- locally advanced
- quantum dots
- rectal cancer
- functional connectivity
- squamous cell