| Literature DB >> 36052039 |
Hariprasath Manoharan1, Radha Krishna Rambola2, Pravin R Kshirsagar3, Prasun Chakrabarti4, Jarallah Alqahtani5, Quadri Noorulhasan Naveed6, Saiful Islam7, Walelign Dinku Mekuriyaw8.
Abstract
Lung disease is one of the most harmful diseases in traditional days and is the same nowadays. Early detection is one of the most crucial ways to prevent a human from developing these types of diseases. Many researchers are involved in finding various techniques for predicting the accuracy of the diseases. On the basis of the machine learning algorithm, it was not possible to predict the better accuracy when compared to the deep learning technique; this work has proposed enhanced artificial neural network approaches for the accuracy of lung diseases. Here, the discrete Fourier transform and the Burg auto-regression techniques are used for extracting the computed tomography (CT) scan images, and feature reduction takes place by using principle component analysis (PCA). This proposed work has used the 120 subjective datasets from public landmarks with and without lung diseases. The given dataset is trained by using an enhanced artificial neural network (ANN). The preprocessing techniques are handled by using a Gaussian filter; thus, our proposed approach provides enhanced classification accuracy. Finally, our proposed method is compared with the existing machine learning approach based on its accuracy.Entities:
Mesh:
Year: 2022 PMID: 36052039 PMCID: PMC9427225 DOI: 10.1155/2022/7298903
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Overview of the proposed approach.
Figure 2Proposed ANN approach.
Figure 3Materials and methods.
Figure 4Enhanced artificial neural network.
Figure 5Analysis of accuracy in the SVM with the DFT.
Figure 6Analysis of accuracy in the SVM with the PCA.
Figure 7Analysis of accuracy in the SVM with the PCA and the ANN.
Figure 8Analysis of accuracy in the SVM with the PCA and the EANN.
Figure 9Total comparison case studies.