Open Access
ARTICLE
Deep Belief Network for Lung Nodule Segmentation and Cancer Detection
Rajalakshmi Engineering College, Thandalam, Chennai, 602105, Tamil Nadu, India
* Corresponding Author: Sindhuja Manickavasagam. Email:
Computer Systems Science and Engineering 2023, 47(1), 135-151. https://doi.org/10.32604/csse.2023.030344
Received 24 March 2022; Accepted 30 June 2022; Issue published 26 May 2023 Retracted 17 July 2024
A retraction of this article was approved in:
Retraction: Deep Belief Network for Lung Nodule Segmentation and Cancer Detection
Read retraction
Abstract
Cancer disease is a deadliest disease cause more dangerous one. By identifying the disease through Artificial intelligence to getting the mage features directly from patients. This paper presents the lung knob division and disease characterization by proposing an enhancement calculation. Most of the machine learning techniques failed to observe the feature dimensions leads inaccuracy in feature selection and classification. This cause inaccuracy in sensitivity and specificity rate to reduce the identification accuracy. To resolve this problem, to propose a Chicken Sine Cosine Algorithm based Deep Belief Network to identify the disease factor. The general technique of the created approach includes four stages, such as pre-processing, segmentation, highlight extraction, and the order. From the outset, the Computerized Tomography (CT) image of the lung is taken care of to the division. When the division is done, the highlights are extricated through morphological factors for feature observation. By getting the features are analysed and the characterization is done dependent on the Deep Belief Network (DBN) which is prepared by utilizing the proposed Chicken-Sine Cosine Algorithm (CSCA) which distinguish the lung tumour, giving two classes in particular, knob or non-knob. The proposed system produce high performance as well compared to the other system. The presentation assessment of lung knob division and malignant growth grouping dependent on CSCA is figured utilizing three measurements to be specificity, precision, affectability, and the explicitness.Keywords
Cite This Article
This work is licensed under a Creative Commons Attribution 4.0 International License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.