Segmentation Of Retina OCT Images For The Early Diagnosis Of Alzheimer’s Disease

Authors

  • C.S. Sandeep
  • A. Sukesh Kumar
  • K. Mahadevan
  • P. Manoj

Keywords:

Alzheimer’s Disease, Early Diagnosis, Retina, OCT

Abstract


Alzheimer’s disease (AD) is a common form of senile dementia. Although our understanding of the key steps underlying neurodegeneration in Alzheimer’s disease (AD) is incomplete, it is clear that it begins long before symptoms are noticed by patient. Conventional clinical decision making systems are more manual in nature and ultimate conclusion in terms of exact diagnosis is remote. In this case, the employment of advanced Biomedical Engineering Technology will definitely helpful for making diagnosis. Any disease modifying treatments which are developed are most possibly to be achieving success if initiated early in the process, and this needs that we tend to develop reliable, validated and economical ways to diagnose Alzheimer’s kind pathology. However, despite comprehensive searches, no single test has shown adequate sensitivity and specificity, and it is likely that a combination will be needed. There are several imaging techniques used in clinical practice for the diagnosis of Alzheimer’s type pathology. There are lot of tests and neuroimaging modalities to be performed for an effective diagnosis of the disease. Prominent of them are Magnetic Resonance Imaging Scan (MRI), Positron Emission Tomography (PET), Single Photon Emission CT Scanning (SPECT), and Optical Coherence Tomography (OCT).In the recent studies made on Alzheimer’s disease it is clearly investigated that are some parameter changes on the retina of the eye of the AD patients. In this research we have proposed a new scheme based on Wavelet Networks (WN) for the segmentation of OCT retinal images for the early diagnosis of AD.

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Published

2018-06-30

How to Cite

Sandeep, C., Sukesh Kumar, A., Mahadevan, K., & Manoj, P. (2018). Segmentation Of Retina OCT Images For The Early Diagnosis Of Alzheimer’s Disease. Journal of Engineering and Technology (JET), 9(1), 99–114. Retrieved from https://jet.utem.edu.my/jet/article/view/1864