Psychological Parameters Based Alzheimer Disease Prediction

Authors

  • Gundumolu Divya Vani PG scholar, Department of MCA, CDNR collage, Bhimavaram, Andhra Pradesh. Author
  • V.Sarala (Assistant Professor), Master of Computer Applications, DNR collage, Bhimavaram, Andhra Pradesh. Author

Keywords:

Alzheimer disease, mild cognitive impairment, machine learning algorithms, psychological parameters

Abstract

Alzheimer disease is the one amongst
neurodegenerative disorders. Though the symptoms are
benign initially, they become more severe over time.
Alzheimer's disease is a prevalent sort of dementia. This
disease is challenging one because there is no treatment
for the disease. Diagnosis of the disease is done but that
too at the later stage only. Thus if the disease is
predicted earlier, the progression or the symptoms of
the disease can be slow down. This paper uses machine
learning algorithms to predict the Alzheimer disease
using psychological parameters like age, number of
visit, MMSE and education.

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Published

2025-05-01

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Articles

How to Cite

Psychological Parameters Based Alzheimer Disease Prediction. (2025). International Journal of Multidisciplinary Engineering In Current Research, 10(5), 33-38. https://ijmec.com/index.php/multidisciplinary/article/view/614

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