CT-based whole lung radiomics nomogram to identify middle-aged and elderly COVID-19 patients at high risk of progressing to critical disease

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Applied Clinical Medical Physics Pub Date : 2024-11-29 DOI:10.1002/acm2.14562
Xin'ang Jiang, Jun Hu, Qinling Jiang, Taohu Zhou, Fei Yao, Yi Sun, Chao Zhou, Qianyun Ma, Jingyi Zhao, Kang Shi, Wen Yang, Xiuxiu Zhou, Yun Wang, Shiyuan Liu, Xiaoyan Xin, Li Fan
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Abstract

Background

COVID-19 remains widespread and poses a threat to people's physical and mental health, especially middle-aged and elderly individuals. Early identification of COVID-19 patients at high risk of progressing to critical disease helps improve overall patient outcomes and healthcare efficiency.

Purpose

To develop a radiomics nomogram to predict the risk of newly admitted middle-aged and elderly COVID-19 patients progressing to critical disease.

Methods

A total of 794 patients (aged 40 years or above) were retrospectively included in the study from two institutions, all of them were with non-critical COVID-19 on admission. At follow-up, patients were divided into non-critical group and critical group. About 443 patients (384 non-critical and 59 critical) from the first hospital were randomly assigned to the training (n = 311) and internal validation (n = 132) set in a 7:3 ratio. Additionally, an independent external cohort of 351 patients (292 non-critical and 59 critical) from another hospital was evaluated. Radiomics signatures and clinical indicators were used to build a radiomics model and a clinical model after computed tomography (CT) image processing, CT whole-lung segmentation, feature extraction, and feature selection. The radiomics nomogram model integrated radiomics model and clinical model. The receiver operating characteristic curve (AUC) was used to assess the performance of the proposed models. Calibration curves and decision curve analysis were used to assess the performance of the radiomics nomogram.

Results

For the training, internal validation, and external validation sets, the AUC values of the radiomic nomogram for the prediction of COVID-19 progression were 0.916, 0.917, and 0.890, respectively. Calibration curves indicated that there was no significant departure between prediction and observation in three sets. The decision curve image demonstrated the clinical utility of the nomogram model.

Conclusions

Our nomogram model incorporates radiomics features and clinical indicators, it provides a new pathway to increase predictive accuracy or clinical utility, further helping to provide personalized management for middle-aged and elderly patients with COVID-19.

Abstract Image

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基于ct的全肺放射组学图识别中老年新冠肺炎危重症高危患者
背景:2019冠状病毒病仍在广泛传播,对人们的身心健康构成威胁,尤其是中老年人。早期发现发展为重症的高风险COVID-19患者有助于改善患者的整体预后和医疗效率。目的:建立新入院的中老年COVID-19患者放射组学线图,预测其发展为危重症的风险。方法:回顾性分析两所医院的794例患者(40岁及以上),入院时均为非危重型COVID-19。随访时将患者分为非危重组和危重组。来自第一医院的约443名患者(384名非危重患者和59名危重患者)被随机分配到以7:3比例设置的培训(n = 311)和内部验证(n = 132)。此外,对来自另一家医院的351名患者(292名非危重患者和59名危重患者)的独立外部队列进行了评估。利用放射组学特征和临床指标,经过计算机断层扫描(CT)图像处理、CT全肺分割、特征提取、特征选择,建立放射组学模型和临床模型。放射组学图模型将放射组学模型与临床模型相结合。使用接收者工作特征曲线(AUC)来评估所提出模型的性能。采用校准曲线和决策曲线分析来评估放射组学图的性能。结果:对于训练集、内部验证集和外部验证集,预测COVID-19进展的放射组学图AUC值分别为0.916、0.917和0.890。校正曲线显示,三组预测值与观测值之间无显著偏差。决策曲线图像显示了nomogram模型的临床应用价值。结论:我们的nomogram模型结合了放射组学特征和临床指标,为提高预测准确性或临床实用性提供了新的途径,进一步为中老年COVID-19患者提供个性化管理。
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来源期刊
CiteScore
3.60
自引率
19.00%
发文量
331
审稿时长
3 months
期刊介绍: Journal of Applied Clinical Medical Physics is an international Open Access publication dedicated to clinical medical physics. JACMP welcomes original contributions dealing with all aspects of medical physics from scientists working in the clinical medical physics around the world. JACMP accepts only online submission. JACMP will publish: -Original Contributions: Peer-reviewed, investigations that represent new and significant contributions to the field. Recommended word count: up to 7500. -Review Articles: Reviews of major areas or sub-areas in the field of clinical medical physics. These articles may be of any length and are peer reviewed. -Technical Notes: These should be no longer than 3000 words, including key references. -Letters to the Editor: Comments on papers published in JACMP or on any other matters of interest to clinical medical physics. These should not be more than 1250 (including the literature) and their publication is only based on the decision of the editor, who occasionally asks experts on the merit of the contents. -Book Reviews: The editorial office solicits Book Reviews. -Announcements of Forthcoming Meetings: The Editor may provide notice of forthcoming meetings, course offerings, and other events relevant to clinical medical physics. -Parallel Opposed Editorial: We welcome topics relevant to clinical practice and medical physics profession. The contents can be controversial debate or opposed aspects of an issue. One author argues for the position and the other against. Each side of the debate contains an opening statement up to 800 words, followed by a rebuttal up to 500 words. Readers interested in participating in this series should contact the moderator with a proposed title and a short description of the topic
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