Machine Learning Model-Based Applications for Food Management in Alzheimer’s Using Regression Analysis Approach

Author:

Kumhar Sajadul Hassan1ORCID,Kapula Prabhakara Rao2ORCID,Kaur Harveen3ORCID,Krishna Radeep R.4ORCID,Kirmani Mudasir M5ORCID,Athavale Vijay Anant6ORCID,Ahmad Mohd Wazih7ORCID

Affiliation:

1. Department of Computer Science, Sri Satya Sai University of Technology and Medical Science, Sehore, India

2. Department of ECE, B V Raju Institute of Technology, Narsapur, Telangana, India

3. Chitkara University Institute of Engineering and Technology, Chitkara University, Rajpura, Punjab, India

4. Department of ECE, Mangalam College of Engineering, Ettumanoor, Kerala, India

5. Department of Social Science, FoFy, SKUAST-Kashmir, Srinagar, India

6. Walchand Institute of Technology, Solapur, Maharashtra, India

7. Adama Science and Technology University, Adama, Ethiopia

Abstract

Alzheimer’s disease (AD) has become a public health concern due to its misinterpretation with vascular dementia (VD) and mixed dementia Alzheimer’s disease (MXD). Therefore, an accurate differentiation of these diseases is essential for improving the treatment procedure. It has been seen that nutrition along with several other factors plays a role in the disease progression. Scientists are trying to find a solution using some machine learning (ML) techniques. The ML algorithms used for this purpose are neural networks, support vector machines, regression and many more. The current research is focused on understanding the extent of the application of machine learning tools in enhancing food management for patients with Alzheimer’s since there is no cure known for the same. A total of 100 patient data have been collected where the patients had AD, VD, and MXD. Their demographic data, dietary intake, Fazekas scores, and Hachinski scores were collected (independent variables) and analysed in IBM SPSS by considering the risk of development of AD, VD, and MXD as dependent variables. The findings showed that age is highly related ( p < 0.001 ) to the development of these three diseases and other demographics are not prioritized. Discussion of other available journal articles showed that nutritional intake, Fazekas scores, Hachinski scores, and gender are also indicators for predicting these diseases ( p < 0.001 ). Thus, this study concluded that age, gender, diet consumption, and Fazekas and Hachinski scores are important indicators for differentiating AD from other diseases, and ML can be used to create a custom nutrition plan based on the patient’s diet and stage of disease progression. Lastly, future scopes of ML have been explained in this paper.

Publisher

Hindawi Limited

Subject

Safety, Risk, Reliability and Quality,Food Science

Reference36 articles.

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