From pixels to prognosis: Imaging biomarkers for discrimination and outcome prediction of pulmonary embolism : Original Research Article.

IF 1.7 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Emergency Radiology Pub Date : 2024-06-01 Epub Date: 2024-03-25 DOI:10.1007/s10140-024-02216-2
Jennifer Gotta, Leon D Gruenewald, Simon S Martin, Christian Booz, Scherwin Mahmoudi, Katrin Eichler, Tatjana Gruber-Rouh, Teodora Biciusca, Philipp Reschke, Lisa-Joy Juergens, Melis Onay, Eva Herrmann, Jan-Erik Scholtz, Christof M Sommer, Thomas J Vogl, Vitali Koch
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引用次数: 0

Abstract

Purpose: Recent advancements in medical imaging have transformed diagnostic assessments, offering exciting possibilities for extracting biomarker-based information. This study aims to investigate the capabilities of a machine learning classifier that incorporates dual-energy computed tomography (DECT) radiomics. The primary focus is on discerning and predicting outcomes related to pulmonary embolism (PE).

Methods: The study included 131 participants who underwent pulmonary artery DECT angiography between January 2015 and March 2022. Among them, 104 patients received the final diagnosis of PE and 27 patients served as a control group. A total of 107 radiomic features were extracted for every case based on DECT imaging. The dataset was divided into training and test sets for model development and validation. Stepwise feature reduction identified the most relevant features, which were used to train a gradient-boosted tree model. Receiver operating characteristics analysis and Cox regression tests assessed the association of texture features with overall survival.

Results: The trained machine learning classifier achieved a classification accuracy of 0.94 for identifying patients with acute PE with an area under the receiver operating characteristic curve of 0.91. Radiomics features could be valuable for predicting outcomes in patients with PE, demonstrating strong prognostic capabilities in survival prediction (c-index, 0.991 [0.979-1.00], p = 0.0001) with a median follow-up of 130 days (IQR, 38-720). Notably, the inclusion of clinical or DECT parameters did not enhance predictive performance.

Conclusion: In conclusion, our study underscores the promising potential of leveraging radiomics on DECT imaging for the identification of patients with acute PE and predicting their outcomes. This approach has the potential to improve clinical decision-making and patient management, offering efficiencies in time and resources by utilizing existing DECT imaging without the need for an additional scoring system.

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从像素到预后:用于鉴别和预测肺栓塞结果的成像生物标志物:原始研究文章。
目的医学成像技术的最新进展改变了诊断评估,为提取基于生物标记的信息提供了令人兴奋的可能性。本研究旨在调查结合双能计算机断层扫描(DECT)放射组学的机器学习分类器的能力。主要重点是辨别和预测与肺栓塞(PE)相关的结果:研究纳入了 2015 年 1 月至 2022 年 3 月间接受肺动脉 DECT 血管造影术的 131 名参与者。其中,104 名患者最终确诊为 PE,27 名患者作为对照组。根据 DECT 成像,每个病例共提取了 107 个放射学特征。数据集分为训练集和测试集,用于模型开发和验证。逐步缩减特征找出最相关的特征,用于训练梯度提升树模型。接受者操作特征分析和 Cox 回归检验评估了纹理特征与总生存率的关系:结果:训练后的机器学习分类器识别急性 PE 患者的分类准确率为 0.94,接收者操作特征曲线下面积为 0.91。放射组学特征对预测 PE 患者的预后很有价值,在中位随访 130 天(IQR,38-720)的生存预测中显示出很强的预后能力(c 指数,0.991 [0.979-1.00],p = 0.0001)。值得注意的是,纳入临床或 DECT 参数并不能提高预测性能:总之,我们的研究强调了利用 DECT 成像放射组学识别急性 PE 患者并预测其预后的巨大潜力。这种方法有可能改善临床决策和患者管理,通过利用现有的 DECT 成像而无需额外的评分系统,从而提高时间和资源效率。
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来源期刊
Emergency Radiology
Emergency Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
4.50%
发文量
98
期刊介绍: To advance and improve the radiologic aspects of emergency careTo establish Emergency Radiology as an area of special interest in the field of diagnostic imagingTo improve methods of education in Emergency RadiologyTo provide, through formal meetings, a mechanism for presentation of scientific papers on various aspects of Emergency Radiology and continuing educationTo promote research in Emergency Radiology by clinical and basic science investigators, including residents and other traineesTo act as the resource body on Emergency Radiology for those interested in emergency patient care Members of the American Society of Emergency Radiology (ASER) receive the Emergency Radiology journal as a benefit of membership!
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