Deep Learning-Based Kernel Adaptation Enhances Quantification of Emphysema on Low-Dose Chest CT for Predicting Long-Term Mortality.

IF 7 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Hyungin Park, Eui Jin Hwang, Jin Mo Goo
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引用次数: 0

Abstract

Objectives: The aim of this study was to ascertain the predictive value of quantifying emphysema using low-dose computed tomography (LDCT) post deep learning-based kernel adaptation on long-term mortality.

Materials and methods: This retrospective study investigated LDCTs obtained from asymptomatic individuals aged 60 years or older during health checkups between February 2009 and December 2016. These LDCTs were reconstructed using a 1- or 1.25-mm slice thickness alongside high-frequency kernels. A deep learning algorithm, capable of generating CT images that resemble standard-dose and low-frequency kernel images, was applied to these LDCTs. To quantify emphysema, the lung volume percentage with an attenuation value less than or equal to -950 Hounsfield units (LAA-950) was gauged before and after kernel adaptation. Low-dose chest CTs with LAA-950 exceeding 6% were deemed emphysema-positive according to the Fleischner Society statement. Survival data were sourced from the National Registry Database at the close of 2021. The risk of nonaccidental death, excluding causes such as injury or poisoning, was explored according to the emphysema quantification results using multivariate Cox proportional hazards models.

Results: The study comprised 5178 participants (mean age ± SD, 66 ± 3 years; 3110 males). The median LAA-950 (18.2% vs 2.6%) and the proportion of LDCTs with LAA-950 exceeding 6% (96.3% vs 39.3%) saw a significant decline after kernel adaptation. There was no association between emphysema quantification before kernel adaptation and the risk of nonaccidental death. Nevertheless, after kernel adaptation, higher LAA-950 (hazards ratio for 1% increase, 1.01; P = 0.045) and LAA-950 exceeding 6% (hazards ratio, 1.36; P = 0.008) emerged as independent predictors of nonaccidental death, upon adjusting for age, sex, and smoking status.

Conclusions: The application of deep learning for kernel adaptation proves instrumental in quantifying pulmonary emphysema on LDCTs, establishing itself as a potential predictive tool for long-term nonaccidental mortality in asymptomatic individuals.

基于深度学习的核适应增强了低剂量胸部 CT 上肺气肿的定量化,从而预测长期死亡率。
研究目的本研究旨在确定使用基于深度学习的核适应后低剂量计算机断层扫描(LDCT)量化肺气肿对长期死亡率的预测价值:这项回顾性研究调查了 2009 年 2 月至 2016 年 12 月期间从 60 岁或以上无症状的健康体检者处获得的 LDCT。这些 LDCT 采用 1 毫米或 1.25 毫米的切片厚度和高频内核进行重建。深度学习算法能够生成与标准剂量和低频核图像相似的 CT 图像,该算法被应用于这些 LDCT。为了量化肺气肿,在内核适配前后测量了衰减值小于或等于-950 Hounsfield单位(LAA-950)的肺容积百分比。根据弗莱施纳协会的声明,LAA-950 超过 6% 的低剂量胸部 CT 被视为肺气肿阳性。生存数据来自 2021 年年底的国家注册数据库。根据肺气肿定量结果,使用多变量 Cox 比例危险模型探讨了非意外死亡的风险(不包括受伤或中毒等原因):研究包括 5178 名参与者(平均年龄(± SD),66±3 岁;男性 3110 名)。内核适应后,LAA-950 的中位数(18.2% 对 2.6%)和 LAA-950 超过 6% 的 LDCT 比例(96.3% 对 39.3%)显著下降。内核适配前的肺气肿量化与非意外死亡风险之间没有关联。然而,在内核适应后,在调整年龄、性别和吸烟状况后,较高的LAA-950(增加1%的危险比为1.01;P = 0.045)和LAA-950超过6%(危险比为1.36;P = 0.008)成为非意外死亡的独立预测因素:事实证明,应用深度学习进行核适应有助于量化 LDCT 上的肺气肿,使其成为无症状个体长期非意外死亡的潜在预测工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Investigative Radiology
Investigative Radiology 医学-核医学
CiteScore
15.10
自引率
16.40%
发文量
188
审稿时长
4-8 weeks
期刊介绍: Investigative Radiology publishes original, peer-reviewed reports on clinical and laboratory investigations in diagnostic imaging, the diagnostic use of radioactive isotopes, computed tomography, positron emission tomography, magnetic resonance imaging, ultrasound, digital subtraction angiography, and related modalities. Emphasis is on early and timely publication. Primarily research-oriented, the journal also includes a wide variety of features of interest to clinical radiologists.
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