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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A, Systems and humans >Intelligent image prefetching for supporting radiologists' primary reading: a decision-rule inductive learning approach
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Intelligent image prefetching for supporting radiologists' primary reading: a decision-rule inductive learning approach

机译:智能图像预取以支持放射科医生的基础阅读:决策规则归纳学习方法

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摘要

The expanded role of radiology in clinical medicine and its emerging digital practice have made patient-image management a growing concern for health-care organizations. A fundamental aspect of patient-image management is to provide a radiologist with convenient access to prior images relevant to his or her reading of a recently taken radiological examination. For confirmation or evaluation purposes, radiologists often reference relevant prior images of the same patient when interpreting the images of a current examination. To alleviate the time and physical requirements on radiologists, many health-care organizations have taken a prefetching strategy for meeting their patient-image reference needs. Radiologists' patient-image reference knowledge understandably may exhibit subtle individual variations and dynamically evolves over time, thus making the artificial intelligence-based inductive learning approach appealing. Central to patient-image prefetching is a knowledge base of which knowledge elements need continual update and individual customization. In this study, we extended a decision rule induction technique (i.e., CN2 algorithm) to address the challenging characteristics of the targeted learning. We experimentally evaluated the extended algorithm using the learning performances achieved by backpropagation neural network as benchmarks. Overall, our evaluation results suggest that the extended algorithm exhibited satisfactory learning effectiveness and, at the same time, showed desirable noise tolerance, immunity to missing data, and robustness in relation to limited training data.
机译:放射学在临床医学中的作用不断扩大及其新兴的数字实践使患者图像管理成为医疗保健组织日益关注的问题。患者图像管理的基本方面是为放射科医生提供与他或她最近进行的放射学检查的阅读相关的先前图像的便捷通道。为了进行确认或评估,放射科医生在解释当前检查的图像时通常会参考同一位患者的相关先前图像。为了减轻放射科医生的时间和身体要求,许多医疗保健组织已采取预取策略来满足其患者图像参考需求。放射科医生的患者图像参考知识可以理解地表现出细微的个体差异,并且随着时间的流逝而动态变化,因此使基于人工智能的归纳学习方法更具吸引力。患者图像预取的核心是一个知识库,其中的知识元素需要不断更新和个性化定制。在这项研究中,我们扩展了决策规则归纳技术(即CN2算法)以解决目标学习的挑战性特征。我们使用反向传播神经网络作为基准,通过实验评估了扩展算法。总体而言,我们的评估结果表明,扩展算法不仅表现出令人满意的学习效果,而且还表现出令人满意的噪声容限,对丢失数据的免疫力以及与有限训练数据相关的鲁棒性。

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