A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system

Accurate and effective breast cancer diagnosis is crucial for breast cancer early rehabilitation and treatment in the IoT medical environment. Life has changed dramatically for the Internet of Things over the past few years as a result of the development of artificial intelligence and data mining te...

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Main Authors: G. Mohan, Muhammadu Sathik Raja, S. Swathi, E.N. Ganesh
Format: Article
Language:English
Published: Elsevier 2024-03-01
Series:e-Prime: Advances in Electrical Engineering, Electronics and Energy
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2772671124000226
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author G. Mohan
Muhammadu Sathik Raja
S. Swathi
E.N. Ganesh
author_facet G. Mohan
Muhammadu Sathik Raja
S. Swathi
E.N. Ganesh
author_sort G. Mohan
collection DOAJ
description Accurate and effective breast cancer diagnosis is crucial for breast cancer early rehabilitation and treatment in the IoT medical environment. Life has changed dramatically for the Internet of Things over the past few years as a result of the development of artificial intelligence and data mining technologies, which offer methods for analyzing both current and past data. In this study, we present an IoT-based medical diagnosis system that can successfully discriminate malignant individuals from positive individuals in an IoT environment to address the challenge of early breast cancer detection. An innovative optimization technique built on the Advanced Al-Biruni Earth Radius (ABER) optimization algorithm improved the classification of breast cancer cases. We suggest semantic picture segmentation of breast cancer histology in this article. The enhanced U-Net architecture for map partitioning is partitioned concurrently. Then, regions of interest are extracted using segmentation, and morphological and texture features are computed. A Convolutional Squared Deviation Neural Network Classifier (CSDNN) classifies tumors into six groups based on specific criteria. Using the Wisconsin Breast Cancer Diagnosis (WDBC) dataset, we evaluated the suggested methodology. A series of simulations was run to show the ABER-CSDNN method's superior performance, and the results reveal promising performance when compared to the most recent state-of-the-art techniques. Accuracy of proposed method achieves 99.12%.
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spelling doaj.art-8494088656a6468a8028d52b41f9a7a42024-03-20T06:11:53ZengElseviere-Prime: Advances in Electrical Engineering, Electronics and Energy2772-67112024-03-017100440A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT systemG. Mohan0Muhammadu Sathik Raja1S. Swathi2E.N. Ganesh3Associate Professor/Mathematics, K.S.Rangasamy College of Technology, Namakkal; Corresponding author.Professor, Sengunthar Engineering College, TiruchengodeAssistant Professor, Panimalar Engineering College, ChennaiDepartment of ECE, St. Peter's Institute of Higher Education and Research, ChennaiAccurate and effective breast cancer diagnosis is crucial for breast cancer early rehabilitation and treatment in the IoT medical environment. Life has changed dramatically for the Internet of Things over the past few years as a result of the development of artificial intelligence and data mining technologies, which offer methods for analyzing both current and past data. In this study, we present an IoT-based medical diagnosis system that can successfully discriminate malignant individuals from positive individuals in an IoT environment to address the challenge of early breast cancer detection. An innovative optimization technique built on the Advanced Al-Biruni Earth Radius (ABER) optimization algorithm improved the classification of breast cancer cases. We suggest semantic picture segmentation of breast cancer histology in this article. The enhanced U-Net architecture for map partitioning is partitioned concurrently. Then, regions of interest are extracted using segmentation, and morphological and texture features are computed. A Convolutional Squared Deviation Neural Network Classifier (CSDNN) classifies tumors into six groups based on specific criteria. Using the Wisconsin Breast Cancer Diagnosis (WDBC) dataset, we evaluated the suggested methodology. A series of simulations was run to show the ABER-CSDNN method's superior performance, and the results reveal promising performance when compared to the most recent state-of-the-art techniques. Accuracy of proposed method achieves 99.12%.http://www.sciencedirect.com/science/article/pii/S2772671124000226Medical IoTConvolutional Squared Deviation Neural NetworkAl-Biruni Earth Radius (ABER) optimization
spellingShingle G. Mohan
Muhammadu Sathik Raja
S. Swathi
E.N. Ganesh
A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system
e-Prime: Advances in Electrical Engineering, Electronics and Energy
Medical IoT
Convolutional Squared Deviation Neural Network
Al-Biruni Earth Radius (ABER) optimization
title A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system
title_full A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system
title_fullStr A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system
title_full_unstemmed A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system
title_short A novel breast cancer diagnostic using convolutional squared deviation neural network classifier with Al-Biruni Earth Radius optimization in medical IoT system
title_sort novel breast cancer diagnostic using convolutional squared deviation neural network classifier with al biruni earth radius optimization in medical iot system
topic Medical IoT
Convolutional Squared Deviation Neural Network
Al-Biruni Earth Radius (ABER) optimization
url http://www.sciencedirect.com/science/article/pii/S2772671124000226
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