Detection Analysis of Abnormality in Kidney using Deep Learning Techniques and its Optimization

Sri, Vemu Santhi and Lakshmi, G.R Jothi (2023) Detection Analysis of Abnormality in Kidney using Deep Learning Techniques and its Optimization. In: 2023 Second International Conference on Electrical, Electronics, Information and Communication Technologies (ICEEICT), Trichirappalli, India.

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Detection Analysis of Abnormality in Kidney using Deep Learning Techniques and its Optimization _ IEEE Conference Publication _ IEEE Xplore.pdf

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Abstract

Chronic kidney disease (CKD) is a global health burden that affects approximately 10 % of the adult populationin the world. It is also recognized as the top 20 causes of death worldwide. Unfortunately, there is no cure for CKD houserver, it is possible to slow down its progression and mollify the damage by early diagnosis of the disease. Therefore, the use of modern computer-aided methods is necessary to aid the traditional CKD diagnosis system to be more efficient and accurate. Our proposed model is RCNN to classify the Tumour Area in the X-ray Kidney Image. Compare the Deep Learning Techniques of Mask RCNN Model with other models. Evaluated model is compared with other models by metrics of the Mask R-CNN model and Tuned Hyper parameter CNN Model. It gives Training accuracy of 0.9861 and testing accuracy of 0.9389 in the 5th Epochs of Mask RCNN Algorithm. And also, method uses More Metrics of PrecisionRecall, and F1-Score by comparing the RCNN Model and Hyper tuned CNN Model.

Item Type: Conference or Workshop Item (Paper)
Subjects: Electronics and Communication Engineering > Digital Signal Processing
Divisions: Electronics and Communication Engineering
Depositing User: Mr IR Admin
Date Deposited: 23 Sep 2024 10:06
Last Modified: 23 Sep 2024 10:06
URI: https://ir.vistas.ac.in/id/eprint/6954

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