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Published in: Optical and Quantum Electronics 13/2023

01-12-2023

Multi photon micro material analysis based on Raman spectroscopy biosensor for cancer detection using biomarker with deep learning techniques

Authors: Asha Rajiv, Alka Kumari, Atri Deo Tripathi, Menka Bhasin, Vipul Vekariya, Rajesh Gupta, Digvijay Singh

Published in: Optical and Quantum Electronics | Issue 13/2023

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Abstract

Due to singularity of Raman Spectroscopy (RS) measurements in revealing molecular biochemical changes between cancerous and normal tissues and cells, RS was recently demonstrated to be a non-destructive method of cancer diagnosis. The quantity and quality of tissue samples for RS are crucial for accurate prediction when developing computational methods for cancer detection. The training of the classifier with a small number of samples is difficult and frequently leads to overfitting. As a result, increasing the number of samples is crucial for better training classifiers that can accurately classify cancer tissue. This study proposes a novel method for the detection of spine cancer using a high-sensitivity biosensor and edge elimination based on Raman spectroscopy by Multi photon micro material analysis. Using a high-sensitivity biosensor and Raman spectroscopy, the input tumour image edge is removed. F-fluorodeoxy glucose PET imaging (FDG-PET) applied images are used to identify the cancer-affected region in this edge-minimized image, and a Lasso regressive-based reinforcement neural network is used to analyse the 511-keV photons. The accuracy, F-measure, recall, dice coefficient, Areas under the curve (AUC), and neuron-specific enolase (NSE) are all used in the experimental analysis. proposed technique attained accuracy of 98%, F-measure of 75%, Recall of 65%, dice coefficient of 55%, AUC of 63% and NSE of 59%.

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Metadata
Title
Multi photon micro material analysis based on Raman spectroscopy biosensor for cancer detection using biomarker with deep learning techniques
Authors
Asha Rajiv
Alka Kumari
Atri Deo Tripathi
Menka Bhasin
Vipul Vekariya
Rajesh Gupta
Digvijay Singh
Publication date
01-12-2023
Publisher
Springer US
Published in
Optical and Quantum Electronics / Issue 13/2023
Print ISSN: 0306-8919
Electronic ISSN: 1572-817X
DOI
https://doi.org/10.1007/s11082-023-05386-4

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