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首页> 外文期刊>Artificial intelligence in medicine >Modern parameterization and explanation techniques in diagnostic decision support system: A case study in diagnostics of coronary artery disease
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Modern parameterization and explanation techniques in diagnostic decision support system: A case study in diagnostics of coronary artery disease

机译:诊断决策支持系统中的现代参数化和解释技术:以冠状动脉疾病诊断为例

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摘要

Objective: Coronary artery disease has been described as one of the curses of the western world, as it is one of its most important causes of mortality. Therefore, clinicians seek to improve diagnostic procedures, especially those that allow them to reach reliable early diagnoses. In the clinical setting, coronary artery disease diagnostics are typically performed in a sequential manner. The four diagnostic levels consist of evaluation of (1) signs and symptoms of the disease and electrocardiogram at rest, (2) sequential electrocardiogram testing during the controlled exercise, (3) myocardial perfusion scintigra-phy, and (4) finally coronary angiography, that is considered as the "gold standard" reference method. Our study focuses on improving diagnostic performance of the third, virtually non-invasive, diagnostic level.Methods and materials: Myocardial scintigraphy results in a series of medical images that are obtained by relatively inexpensive means. In clinical practice, these images are manually described (parameterized) by expert physicians. In the paper we present an innovative alternative to manual image evaluation—an automatic image parameterization on multiple resolutions, based on texture description with specialized association rules. Extracted image parameters are combined into more informative composite parameters by means of principal component analysis, and finally used to build automatic classifiers with machine learning methods.Results: Our experiments with synthetic datasets show that association-rule-based multi-resolution image parameterization works very well for scintigraphic images of the heart In coronary artery disease diagnostics we confirm these results as our approach significantly improves on clinical results in terms of diagnostic performance. We improve diagnostic accuracy by 17%, specificity by 12% and sensitivity by 22%. We also significantly improve the number of reliably diagnosed patients by 19% for positive diagnoses, and 16% for negative diagnoses, so that no costly further tests are necessary for them. Conclusions: Multi-resolution image parameterization equals or even betters that of the physicians in terms of the diagnostic quality of image parameters. By using these parameters for building machine learning classifiers, we can significantly improve diagnostic performance with respect to the results of clinical practice, affect process rationalization, as well as possibly provide novel insights into the diagnostic problems, features and/or processes.
机译:目的:冠状动脉疾病被描述为西方世界的诅咒之一,因为它是导致死亡的最重要原因之一。因此,临床医生寻求改善诊断程序,尤其是那些可以使他们做出可靠的早期诊断的程序。在临床环境中,冠状动脉疾病的诊断通常以顺序的方式进行。四个诊断级别包括以下方面的评估:(1)疾病的症状和体征以及休息时的心电图;(2)受控运动期间的连续心电图测试;(3)心肌灌注显像;以及(4)最后进行冠状动脉造影,被认为是“黄金标准”参考方法。我们的研究重点是提高第三种(实际上是非侵入性)诊断水平的诊断性能。方法和材料:心肌闪烁显像可产生一系列医学图像,这些图像可通过相对便宜的方式获得。在临床实践中,这些图像由专业医生手动描述(参数化)。在本文中,我们提出了一种创新的替代手动图像评估的方法-基于带有专用关联规则的纹理描述,在多种分辨率下自动进行图像参数化。通过主成分分析将提取出的图像参数组合成更多信息量的复合参数,最后用机器学习方法构建自动分类器。结果:我们对合成数据集的实验表明,基于关联规则的多分辨率图像参数化非常有效很好地适合心脏的闪烁成像在冠心病诊断中,我们证实了这些结果,因为我们的方法在诊断性能方面显着改善了临床结果。我们将诊断准确度提高了17%,特异性提高了12%,敏感性提高了22%。对于阳性诊断,我们还将可靠诊断的患者数量显着提高了19%,对于阴性诊断,我们将其诊断数量提高了16%,因此无需为他们进行昂贵的进一步检查。结论:就图像参数的诊断质量而言,多分辨率图像参数化等于或优于医师。通过使用这些参数来构建机器学习分类器,我们可以针对临床实践的结果显着提高诊断性能,影响过程的合理化,并可能提供有关诊断问题,特征和/或过程的新颖见解。

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