Artificial Intelligence-Based Prediction of Contrast Medium Doses for Computed Tomography Angiography Using Optimized Clinical Parameter Sets.

IF 1.3 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Methods of Information in Medicine Pub Date : 2024-05-01 Epub Date: 2024-01-23 DOI:10.1055/s-0044-1778694
Marja Fleitmann, Hristina Uzunova, René Pallenberg, Andreas M Stroth, Jan Gerlach, Alexander Fürschke, Jörg Barkhausen, Arpad Bischof, Heinz Handels
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Abstract

Objectives: In this paper, an artificial intelligence-based algorithm for predicting the optimal contrast medium dose for computed tomography (CT) angiography of the aorta is presented and evaluated in a clinical study. The prediction of the contrast dose reduction is modelled as a classification problem using the image contrast as the main feature.

Methods: This classification is performed by random decision forests (RDF) and k-nearest-neighbor methods (KNN). For the selection of optimal parameter subsets all possible combinations of the 22 clinical parameters (age, blood pressure, etc.) are considered using the classification accuracy and precision of the KNN classifier and RDF as quality criteria. Subsequently, the results of the evaluation were optimized by means of feature transformation using regression neural networks (RNN). These were used for a direct classification based on regressed Hounsfield units as well as preprocessing for a subsequent KNN classification.

Results: For feature selection, an RDF model achieved the highest accuracy of 84.42% and a KNN model achieved the best precision of 86.21%. The most important parameters include age, height, and hemoglobin. The feature transformation using an RNN considerably exceeded these values with an accuracy of 90.00% and a precision of 97.62% using all 22 parameters as input. However, also the feasibility of the parameter sets in routine clinical practice has to be considered, because some of the 22 parameters are not measured in routine clinical practice and additional measurement time of 15 to 20 minutes per patient is needed. Using the standard feature set available in clinical routine the best accuracy of 86.67% and precision of 93.18% was achieved by the RNN.

Conclusion: We developed a reliable hybrid system that helps radiologists determine the optimal contrast dose for CT angiography based on patient-specific parameters.

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基于人工智能的计算机断层扫描血管造影术造影剂剂量预测,使用优化的临床参数集。
目的:本文介绍了一种基于人工智能的算法,用于预测主动脉计算机断层扫描(CT)血管造影的最佳造影剂剂量,并在一项临床研究中进行了评估。以图像对比度为主要特征,将减少造影剂剂量的预测模拟为一个分类问题:方法:采用随机决策森林(RDF)和 k 最近邻方法(KNN)进行分类。为了选择最佳参数子集,考虑了 22 个临床参数(年龄、血压等)的所有可能组合,将 KNN 分类器和 RDF 的分类准确度和精确度作为质量标准。随后,通过使用回归神经网络(RNN)进行特征转换,对评估结果进行了优化。这些特征被用于基于回归 Hounsfield 单元的直接分类以及后续 KNN 分类的预处理:在特征选择方面,RDF 模型的准确率最高,达到 84.42%,KNN 模型的准确率最高,达到 86.21%。最重要的参数包括年龄、身高和血红蛋白。使用 RNN 进行的特征转换大大超过了这些数值,在输入全部 22 个参数的情况下,准确率达到 90.00%,精确度达到 97.62%。不过,还必须考虑参数集在常规临床实践中的可行性,因为常规临床实践中无法测量 22 个参数中的某些参数,而且每个患者还需要 15 至 20 分钟的额外测量时间。使用临床常规的标准特征集,RNN 的准确率达到了 86.67%,精确率达到了 93.18%:我们开发了一种可靠的混合系统,可帮助放射医师根据患者的特定参数确定 CT 血管造影的最佳造影剂剂量。
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来源期刊
Methods of Information in Medicine
Methods of Information in Medicine 医学-计算机:信息系统
CiteScore
3.70
自引率
11.80%
发文量
33
审稿时长
6-12 weeks
期刊介绍: Good medicine and good healthcare demand good information. Since the journal''s founding in 1962, Methods of Information in Medicine has stressed the methodology and scientific fundamentals of organizing, representing and analyzing data, information and knowledge in biomedicine and health care. Covering publications in the fields of biomedical and health informatics, medical biometry, and epidemiology, the journal publishes original papers, reviews, reports, opinion papers, editorials, and letters to the editor. From time to time, the journal publishes articles on particular focus themes as part of a journal''s issue.
期刊最新文献
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