Optimizing Catheter Verification: An Understandable AI Model for Efficient Assessment of Central Venous Catheter Placement in Chest Radiography.

IF 7 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Jonas Stroeder, Malte Multusch, Lennart Berkel, Lasse Hansen, Axel Saalbach, Heinrich Schulz, Mattias P Heinrich, Yannic Elser, Jörg Barkhausen, Malte Maria Sieren
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引用次数: 0

Abstract

Purpose: Accurate detection of central venous catheter (CVC) misplacement is crucial for patient safety and effective treatment. Existing artificial intelligence (AI) often grapple with the limitations of label inaccuracies and output interpretations that lack clinician-friendly comprehensibility. This study aims to introduce an approach that employs segmentation of support material and anatomy to enhance the precision and comprehensibility of CVC misplacement detection.

Materials and methods: The study utilized 2 datasets: the publicly accessible RANZCR CLiP dataset and a bespoke in-house dataset of 1006 annotated supine chest x-rays. Three deep learning models were trained: a classification network, a segmentation network, and a combination of both. These models were evaluated using receiver operating characteristic analysis, area under the curve, DICE similarity coefficient, and Hausdorff distance.

Results: The combined model demonstrated superior performance with an area under the curve of 0.99 for correctly positioned CVCs and 0.95 for misplacements. The model maintained high efficacy even with reduced training data from the local dataset. Sensitivity and specificity rates were high, and the model effectively managed the segmentation and classification tasks, even in images with multiple CVCs and other support materials.

Conclusions: This study illustrates the potential of AI-based models in accurately and reliably determining CVC placement in chest x-rays. The proposed method shows high accuracy and offers improved interpretability, important for clinical decision-making. The findings also highlight the importance of dataset quality and diversity in training AI models for medical image analysis.

优化导管验证:一个可理解的人工智能模型,用于有效评估胸片中中心静脉导管的放置。
目的:准确检测中心静脉导管(CVC)错位对患者安全和有效治疗至关重要。现有的人工智能(AI)经常面临标签不准确和输出解释缺乏临床友好可理解性的限制。本研究旨在引入一种基于支撑材料和解剖结构分割的CVC错位检测方法,以提高CVC错位检测的精度和可理解性。材料和方法:本研究使用了2个数据集:可公开访问的RANZCR CLiP数据集和1006个带注释的仰卧位胸部x光片的定制内部数据集。我们训练了三种深度学习模型:分类网络、分割网络以及两者的组合。采用接收机工作特性分析、曲线下面积、DICE相似系数和豪斯多夫距离对这些模型进行评价。结果:组合模型表现出优异的性能,正确定位cvc的曲线下面积为0.99,错误放置的曲线下面积为0.95。在局部数据集训练数据减少的情况下,该模型仍能保持较高的效率。该模型具有较高的灵敏度和特异性,即使在具有多个cvc和其他支持材料的图像中也能有效地处理分割和分类任务。结论:本研究说明了基于人工智能的模型在准确可靠地确定胸片CVC位置方面的潜力。该方法具有较高的准确性和可解释性,对临床决策具有重要意义。研究结果还强调了数据集质量和多样性在训练用于医学图像分析的人工智能模型中的重要性。
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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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