» Articles » PMID: 37581714

The Influence of Image Reconstruction Methods on the Diagnosis of Pulmonary Emphysema with Convolutional Neural Network

Overview
Date 2023 Aug 15
PMID 37581714
Authors
Affiliations
Soon will be listed here.
Abstract

This study investigated the influence of iterative reconstruction (IR) methods on computed tomography (CT) images when training convolutional neural network (CNN) models to diagnose pulmonary emphysema. To evaluate the influence of the IR algorithm on CNN, the present study comprised two steps: the comparison of noise reduction by IR algorithms using phantom examinations and the change in performance of CNN with IR algorithms using patient data. We retrospectively analyzed 97 patients. Raw CT data were reconstructed using the filtered back-projection (FBP) and adaptive statistical iterative reconstruction V (ASIR-V) algorithms with blending levels of 30%, 50%, and 70%. The models were trained using reconstructed CT images and were named the FBP, ASIR-V30, ASIR-V50, and ASIR-V70 models. The mean and the standard deviation of the CT values were 11.3 ± 21.2 at FBP, 11.0 ± 17.3 at ASIR-V30, 11.0 ± 14.4 at ASIR-V50, and 11.0 ± 11.8 at ASIR-V70. For all the evaluation metrics, the best values were obtained with the FBP model applied to the ASIR-V70 test images. The worst values were obtained with the ASIR-V70 model applied to the FBP test images. The model trained with FBP images exhibited significantly better performance than the models trained using IR images. The reduction in image noise with the IR algorithm on the test images contributed to improving the accuracy of the classification of emphysema subtypes using CNN.

References
1.
Vestbo J, Hurd S, Agusti A, Jones P, Vogelmeier C, Anzueto A . Global strategy for the diagnosis, management, and prevention of chronic obstructive pulmonary disease: GOLD executive summary. Am J Respir Crit Care Med. 2012; 187(4):347-65. DOI: 10.1164/rccm.201204-0596PP. View

2.
Nishio M, Nakane K, Kubo T, Yakami M, Emoto Y, Nishio M . Automated prediction of emphysema visual score using homology-based quantification of low-attenuation lung region. PLoS One. 2017; 12(5):e0178217. PMC: 5444793. DOI: 10.1371/journal.pone.0178217. View

3.
Lynch D, Austin J, Hogg J, Grenier P, Kauczor H, Bankier A . CT-Definable Subtypes of Chronic Obstructive Pulmonary Disease: A Statement of the Fleischner Society. Radiology. 2015; 277(1):192-205. PMC: 4613878. DOI: 10.1148/radiol.2015141579. View

4.
Nambu A, Zach J, Kim S, Jin G, Schroeder J, Kim Y . Significance of Low-Attenuation Cluster Analysis on Quantitative CT in the Evaluation of Chronic Obstructive Pulmonary Disease. Korean J Radiol. 2018; 19(1):139-146. PMC: 5768494. DOI: 10.3348/kjr.2018.19.1.139. View

5.
Blazis S, Dickerscheid D, Linsen P, Martins Jarnalo C . Effect of CT reconstruction settings on the performance of a deep learning based lung nodule CAD system. Eur J Radiol. 2021; 136:109526. DOI: 10.1016/j.ejrad.2021.109526. View