High-resolution computed tomography with 1,024-matrix for artificial intelligence-based computer-aided diagnosis in the evaluation of pulmonary nodules.

IF 2.1 3区 医学 Q3 RESPIRATORY SYSTEM
Journal of thoracic disease Pub Date : 2025-01-24 Epub Date: 2025-01-22 DOI:10.21037/jtd-24-1311
Qinling Jiang, Hongbiao Sun, Qi Chen, Yimin Huang, Qingchu Li, Jingyi Tian, Chao Zheng, Xinsheng Mao, Xin'ang Jiang, Yuxin Cheng, Yunmeng Wang, Xiang Wang, Su Wu, Yi Xiao
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引用次数: 0

Abstract

Background: Computed tomography (CT) plays an important role in the diagnosis of lung nodules and early screening of lung cancer. The purpose of this study was to compare the efficacy of 1,024×1,024 matrix and 512×512 matrix in an artificial intelligence-based computer-aided diagnosis (AI-CAD) for evaluating lung nodules based on CT images.

Methods: This retrospective analysis included 344 patients from two hospitals between January 2020 and November 2023. CT images presenting lung nodules smaller than 30 mm were reconstructed using the 512×512 and 1,024×1,024 matrix. We evaluated image quality and AI-CAD detection of lung nodules. Image quality was subjectively scored using a 5-point Likert method and objectively assessed using image noise and signal-to-noise ratio (SNR). For lung nodules detection, we recorded the accuracy, precision, and recall of AI-CAD for detecting of different types and sizes of lung nodules.

Results: The 512×512 matrix's overall image subjective evaluation score was 3.63, whereas the 1,024×1,024 matrix's was 4.18, among 344 individuals with 4,319 lung nodules. The detection accuracy, precision, and recall of 512×512 and 1,024×1,024 for AI-CAD in all lung nodules were 91.63% vs. 98.32%, 95.68% vs. 98.32%, and 95.59% vs. 100% respectively. Solid, part-solid, and nonsolid nodule identification accuracy on 512 and 1,024 matrix were 91.30% vs. 98.34%, 94.63% vs. 98.50%, and 94.71% vs. 97.74%, respectively, and of <6 mm, 6-8 mm, and >8 mm nodules were 90.58% vs. 97.87%, 96.64% vs. 99.04% and 93.68% vs. 99.36%, respectively.

Conclusions: The 1,024 matrix performed significantly better than the 512 matrix in terms of overall subjective image quality and lung nodule AI-CAD detection rate.

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来源期刊
Journal of thoracic disease
Journal of thoracic disease RESPIRATORY SYSTEM-
CiteScore
4.60
自引率
4.00%
发文量
254
期刊介绍: The Journal of Thoracic Disease (JTD, J Thorac Dis, pISSN: 2072-1439; eISSN: 2077-6624) was founded in Dec 2009, and indexed in PubMed in Dec 2011 and Science Citation Index SCI in Feb 2013. It is published quarterly (Dec 2009- Dec 2011), bimonthly (Jan 2012 - Dec 2013), monthly (Jan. 2014-) and openly distributed worldwide. JTD received its impact factor of 2.365 for the year 2016. JTD publishes manuscripts that describe new findings and provide current, practical information on the diagnosis and treatment of conditions related to thoracic disease. All the submission and reviewing are conducted electronically so that rapid review is assured.
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