Double Integral Enhanced Zeroing Neural Network Optimized with ALSOA fostered Lung Cancer Classification using CT Images
V S Priya Sumitha, V.Keerthika, A. Geetha

TL;DR
This paper introduces a novel neural network model optimized with ALSOA for lung cancer classification using CT images, incorporating advanced pre-processing and feature extraction techniques to improve accuracy over existing methods.
Contribution
The paper proposes a new neural network model with double integral enhancement and ALSOA optimization, combined with advanced pre-processing and feature extraction for improved lung cancer classification.
Findings
Achieves 18.32% higher accuracy than existing methods
Effective noise removal using UTKF in pre-processing
Improved feature extraction with ACEWT
Abstract
Lung cancer is one of the deadliest diseases and the leading cause of illness and death. Since lung cancer cannot predicted at premature stage, it able to only be discovered more broadly once it has spread to other lung parts. The risk grows when radiologists and other specialists determine whether lung cancer is current. Owing to significance of determining type of treatment and its depth based on severity of the illness, critical to develop smart and automatic cancer prediction scheme is precise, at which stage of cancer. In this paper, Double Integral Enhanced Zeroing Neural Network Optimized with ALSOA fostered Lung Cancer Classification using CT Images (LCC-DIEZNN-ALSO-CTI) is proposed. Initially, input CT image is amassed from lung cancer dataset. The input CT image is pre-processing via Unscented Trainable Kalman Filtering (UTKF) technique. In pre-processing stage unwanted noise…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · AI in cancer detection
