利用人工智能评估胸片中的气管导管和中心静脉导管,采用可调整定位定义的算法方法。

IF 7 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Investigative Radiology Pub Date : 2024-04-01 Epub Date: 2023-09-08 DOI:10.1097/RLI.0000000000001018
Johannes Rueckel, Christian Huemmer, Casra Shahidi, Giulia Buizza, Boj Friedrich Hoppe, Thomas Liebig, Jens Ricke, Jan Rudolph, Bastian Oliver Sabel
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引用次数: 0

摘要

目的:开发并验证一种人工智能算法,用于评估仰卧位胸片(SCXR)中气管导管(TT)和中心静脉导管(CVC)的定位:通过将各自的尖端位置与解剖结构进行空间关联,评估 CVC 和 TT 的定位质量。在进行 CVC 分析时,需要定义一个可配置的感兴趣区,以便根据解剖标志物的分割结果,近似于定位良好的 CVC 尖端的预期区域。通过引入新的多任务神经网络架构,联合执行类型/存在性分类、路径分割和尖端检测,估算出 CVC/TT 信息。验证数据由 589 个 SCXR 组成,这些 SCXR 在放射学上注释了插入的 TT/CVC,包括专家的分类定位评估(阅读 1)。算法检测到的 TT/CVC 尖端的图像内位置可通过验证软件工具进行校正(读取 2),最终实现定位精度量化。通过接收器操作特性量化了算法检测到的装置错位图像(阅片 1 作为参考标准):100%/98%的病例能根据插入的 TTs/CVCs 对仰卧位胸片进行正确分类,因此医疗设备尖端的空间定位精度也很高:86%以上的病例(TTs)和 77%的病例(CVCs)校正小于 3 毫米。在胸片上检测到的装置位置不正的曲线下面积>0.98(TTs)、>0.96(CVC 意外血管翻转)和>0.93(也考虑了次优 CVC 插入长度)。CVC评估的接收者操作特征限制主要是由于所应用的CXR位置定义(根据解剖地标得出的感兴趣区)的限制,而不是由于算法空间检测的不准确性:结论:所介绍的算法能在 SCXR 中准确定位 TT 和 CVC 头端,但 CVC 定位评估的分流应用仍受到最佳 CXR 定位定义模糊的影响。不过,我们的算法允许对这些标准进行调整,理论上能满足用户或患者亚群的特定要求。除 CVC 尖端分析外,未来的工作还应包括用于意外血管翻转检测的特定过程分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence to Assess Tracheal Tubes and Central Venous Catheters in Chest Radiographs Using an Algorithmic Approach With Adjustable Positioning Definitions.

Purpose: To develop and validate an artificial intelligence algorithm for the positioning assessment of tracheal tubes (TTs) and central venous catheters (CVCs) in supine chest radiographs (SCXRs) by using an algorithm approach allowing for adjustable definitions of intended device positioning.

Materials and methods: Positioning quality of CVCs and TTs is evaluated by spatially correlating the respective tip positions with anatomical structures. For CVC analysis, a configurable region of interest is defined to approximate the expected region of well-positioned CVC tips from segmentations of anatomical landmarks. The CVC/TT information is estimated by introducing a new multitask neural network architecture for jointly performing type/existence classification, course segmentation, and tip detection. Validation data consisted of 589 SCXRs that have been radiologically annotated for inserted TTs/CVCs, including an experts' categorical positioning assessment (reading 1). In-image positions of algorithm-detected TT/CVC tips could be corrected using a validation software tool (reading 2) that finally allowed for localization accuracy quantification. Algorithmic detection of images with misplaced devices (reading 1 as reference standard) was quantified by receiver operating characteristics.

Results: Supine chest radiographs were correctly classified according to inserted TTs/CVCs in 100%/98% of the cases, thereby with high accuracy in also spatially localizing the medical device tips: corrections less than 3 mm in >86% (TTs) and 77% (CVCs) of the cases. Chest radiographs with malpositioned devices were detected with area under the curves of >0.98 (TTs), >0.96 (CVCs with accidental vessel turnover), and >0.93 (also suboptimal CVC insertion length considered). The receiver operating characteristics limitations regarding CVC assessment were mainly caused by limitations of the applied CXR position definitions (region of interest derived from anatomical landmarks), not by algorithmic spatial detection inaccuracies.

Conclusions: The TT and CVC tips were accurately localized in SCXRs by the presented algorithms, but triaging applications for CVC positioning assessment still suffer from the vague definition of optimal CXR positioning. Our algorithm, however, allows for an adjustment of these criteria, theoretically enabling them to meet user-specific or patient subgroups requirements. Besides CVC tip analysis, future work should also include specific course analysis for accidental vessel turnover detection.

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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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