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Computerized Prediction of Radiological Observations Based on Quantitative Feature Analysis: Initial Experience in Liver Lesions

机译:基于定量特征分析的放射学影像计算机预测:肝病变的初步经验

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摘要

We propose a computerized framework that, given a region of interest (ROI) circumscribing a lesion, not only predicts radiological observations related to the lesion characteristics with 83.2% average prediction accuracy but also derives explicit association between low-level imaging features and high-level semantic terms by exploiting their statistical correlation. Such direct association between semantic concepts and low-level imaging features can be leveraged to build a powerful annotation system for radiological images that not only allows the computer to infer the semantics from diverse medical images and run automatic reasoning for making diagnostic decision but also provides “human-interpretable explanation” of the system output to facilitate better end user understanding of computer-based diagnostic decisions. The core component of our framework is a radiological observation detection algorithm that maximizes the low-level imaging feature relevancy for each high-level semantic term. On a liver lesion CT dataset, we have implemented our framework by incorporating a large set of state-of-the-art low-level imaging features. Additionally, we included a novel feature that quantifies lesion(s) present within the liver that have a similar appearance as the primary lesion identified by the radiologist. Our framework achieved a high prediction accuracy (83.2%), and the derived association between semantic concepts and imaging features closely correlates with human expectation. The framework has been only tested on liver lesion CT images, but it is capable of being applied to other imaging domains.
机译:我们提出了一个计算机化的框架,在给定病变区域的感兴趣区域(ROI)的情况下,它不仅可以预测与病变特征相关的放射学观察结果,平均预测准确度为83.2%,而且可以得出低水平影像学特征与高水平影像之间的显式关联通过利用语义术语的统计相关性。语义概念和低级成像功能之间的这种直接关联可以用来为放射图像建立强大的注释系统,该系统不仅允许计算机从各种医学图像中推断出语义并运行自动推理以做出诊断决策,而且还提供了“系统输出的“人类可理解的解释”,以帮助最终用户更好地理解基于计算机的诊断决策。我们框架的核心组件是放射学观察检测算法,该算法可最大化每个高级语义术语的低级成像特征相关性。在肝脏病变CT数据集上,我们通过合并大量先进的低级成像功能来实现我们的框架。此外,我们提供了一种新颖的功能,可以量化肝脏中存在的病变,这些病变的外观与放射科医生确定的主要病变相似。我们的框架取得了很高的预测准确性(83.2%),并且语义概念和影像特征之间的关联与人类的期望密切相关。该框架仅在肝脏病变CT图像上进行了测试,但可以应用于其他成像领域。

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