基于人工智能的从急性胸部计算机断层扫描中检测心肺疾病的算法:算法开发和验证研究的协议。

IF 1.5 Q3 HEALTH CARE SCIENCES & SERVICES
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引用次数: 0

摘要

背景:呼吸困难是住院治疗的常见原因,对患有多种疾病的老年成人患者提出了诊断挑战。胸部计算机断层扫描(CT)越来越多地用于呼吸困难患者,其诊断准确性优于胸片,但由于放射科医生的短缺,使用受到限制。目的:本研究旨在开发和验证人工智能(AI)算法,以实现对急性CT扫描的自动分析,并对肺炎、肺栓塞和心脏失代偿的可能性提供即时反馈。本方案将着重于心脏失代偿。方法:设计回顾性方法开发与验证研究。这项研究已得到丹麦国家健康研究伦理委员会的批准(1575037)。我们提取了2016年至2021年丹麦哥本哈根大学医院-比斯贝尔格和腓特烈斯堡的4672例急性胸部CT扫描和相应的放射学报告。扫描将随机分为训练集(2/3)和内部验证集(1/3)。人工智能算法的开发涉及参数调整和使用交叉验证的特征选择。内部验证使用放射学报告作为基础事实,算法特定的阈值基于心肺疾病的真阳性和阴性率为90%或更高。AI模型将在连续入院的急性呼吸困难患者的低剂量胸部CT扫描和急性冠脉综合征患者的冠状动脉CT血管造影扫描中进行验证。结果:截至2025年8月,CT数据提取完成。算法开发,包括图像分割和自然语言处理,正在进行中。而对于肺充血,算法开发已经完成。计划进行内部和外部验证,总体验证预计将于2025年结束,最终结果将于2026年公布。结论:该结果有望通过从CT扫描中提供即时的、人工智能驱动的见解来增强临床决策,这将对临床医生和患者都有益。国际注册报告标识符(irrid): DERR1-10.2196/77030。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

AI-Based Algorithm to Detect Heart and Lung Disease From Acute Chest Computed Tomography Scans: Protocol for an Algorithm Development and Validation Study.

AI-Based Algorithm to Detect Heart and Lung Disease From Acute Chest Computed Tomography Scans: Protocol for an Algorithm Development and Validation Study.

Background: Dyspnea is a common cause of hospitalization, posing diagnostic challenges among older adult patients with multimorbid conditions. Chest computed tomography (CT) scans are increasingly used in patients with dyspnea and offer superior diagnostic accuracy over chest radiographs but face limited use due to a shortage of radiologists.

Objective: This study aims to develop and validate artificial intelligence (AI) algorithms to enable automatic analysis of acute CT scans and provide immediate feedback on the likelihood of pneumonia, pulmonary embolism, and cardiac decompensation. This protocol will focus on cardiac decompensation.

Methods: We designed a retrospective method development and validation study. This study has been approved by the Danish National Committee on Health Research Ethics (1575037). We extracted 4672 acute chest CT scans with corresponding radiological reports from the Copenhagen University Hospital-Bispebjerg and Frederiksberg, Denmark, from 2016 to 2021. The scans will be randomly split into training (2/3) and internal validation (1/3) sets. Development of the AI algorithm involves parameter tuning and feature selection using cross validation. Internal validation uses radiological reports as the ground truth, with algorithm-specific thresholds based on true positive and negative rates of 90% or greater for heart and lung diseases. The AI models will be validated in low-dose chest CT scans from consecutive patients admitted with acute dyspnea and in coronary CT angiography scans from patients with acute coronary syndrome.

Results: As of August 2025, CT data extraction has been completed. Algorithm development, including image segmentation and natural language processing, is ongoing. However, for pulmonary congestion, the algorithm development has been completed. Internal and external validation are planned, with overall validation expected to conclude in 2025 and the final results to be available in 2026.

Conclusions: The results are expected to enhance clinical decision-making by providing immediate, AI-driven insights from CT scans, which will be beneficial for both clinicians and patients.

International registered report identifier (irrid): DERR1-10.2196/77030.

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CiteScore
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自引率
5.90%
发文量
414
审稿时长
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