Abstract

Diagnosing Alzheimer’s disease (AD) is usually difficult, especially when the disease is in its early stage. However, treatment is most likely to be effective at this stage; improving the diagnosis process. Several AD prediction models have been proposed in the past; however, these models endure a number of limitations such as small dataset, class imbalance, feature selection methods etc which place strong barriers towards the accurate prediction. In this paper, an AD prediction model has been proposed and validated using categorical dataset from National Alzheimer’s Coordination Center (NACC). The different categories such as Demographics, Clinical Diagnosis, MMSE & Neuropsychological battery, is preprocessed for important features selection and class imbalance. A number of predominant classifiers namely, Naïve Bayes, J48, Decision Stump, LogitBoost, AdaBoost, and SDG-Text have been used to highlight the superiority of a classifier in predicting the potential AD patients. Experimental results revealed that Bayesian based classifiers improve AD detection accuracy up to 96.4% while using Clinical Diagnosis category.

Highlights

  • In health sector, Alzheimer’s disease has become one of the major concerns for the neurologists

  • To overcome the aforementioned limitations, an Alzheimer’s disease (AD) prediction model has been proposed in this paper based on the different categories of data such as clinical diagnosis (CD), clinical judgment of symptoms (CJS) and minimum mental state examination (MMSE)

  • This study showed that the use of CSF biomarkers will enhance the specificity and sensitivity of AD signature that could lead to early prognosis of AD [33]

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Summary

Introduction

Alzheimer’s disease has become one of the major concerns for the neurologists. The instances of AD patients are very low as compared to the Healthy controls This results in the different ratio of data for both AD as well as non-AD, creating a problem of class imbalance. The large data with a huge number of missing values can produce unrealistic results while degrading the overall performance of the predictive model [26]. To overcome the aforementioned limitations, an AD prediction model has been proposed in this paper based on the different categories of data such as CD, CJS and MMSE In this model, the data is preprocessed for feature selection and class imbalance. The experiments highlight the results of Naïve Bayes classifier model on CD category of data with higher TP rate (Recall) in comparison to other categories of data as well as models used in literature

Related Work
Critical evaluation measures
30 EEG based Not Mentioned
Materials
Feature selection
Class imbalance
Discussion
Findings
Conclusion
Authors

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