Taylor Andrew T, Garcia Ernest V
Department of Radiology and Imaging Sciences, Emory University School of Medicine, Atlanta, GA.
Department of Radiology and Imaging Sciences, Emory University School of Medicine, Atlanta, GA.
Semin Nucl Med. 2014 Mar;44(2):146-58. doi: 10.1053/j.semnuclmed.2013.10.007.
The goal of artificial intelligence, expert systems, decision support systems, and computer-assisted diagnosis (CAD) in imaging is the development and implementation of software to assist in the detection and evaluation of abnormalities, to alert physicians to cognitive biases, to reduce intraobserver and interobserver variability, and to facilitate the interpretation of studies at a faster rate and with a higher level of accuracy. These developments are needed to meet the challenges resulting from a rapid increase in the volume of diagnostic imaging studies coupled with a concurrent increase in the number and complexity of images in each patient data. The convergence of an expanding knowledge base and escalating time constraints increases the likelihood of physician errors. Errors are even more likely when physicians interpret low-volume studies such as technetium-99m-mercaptoacetyltriglycine diuretic scans where imagers may have had limited training or experience. Decision support systems include neural networks, case-based reasoning, expert systems, and statistical systems. iRENEX (renal expert) is an expert system for diuretic renography that uses a set of rules obtained from human experts to analyze a knowledge base of both clinical parameters and quantitative parameters derived from the renogram. Initial studies have shown that the interpretations provided by iRENEX are comparable to the interpretations of a panel of experts. iRENEX provides immediate patient-specific feedback at the time of scan interpretation, can be queried to provide the reasons for its conclusions, and can be used as an educational tool to teach trainees to better interpret renal scans. It also has the capacity to populate a structured reporting module and generate a clear and concise impression based on the elements contained in the report; adherence to the procedural and data entry components of the structured reporting module ensures and documents procedural competency. Finally, although the focus is CAD applied to diuretic renography, this review offers a window into the rationale, methodology, and broader applications of computer-assisted diagnosis in medical imaging.
人工智能、专家系统、决策支持系统以及成像领域的计算机辅助诊断(CAD)的目标是开发并应用软件,以协助检测和评估异常情况,提醒医生注意认知偏差,减少观察者内部和观察者之间的差异,并以更快的速度和更高的准确性促进对检查结果的解读。由于诊断成像检查数量迅速增加,同时每位患者数据中的图像数量和复杂性也在增加,因此需要这些技术发展来应对由此带来的挑战。不断扩大的知识库与日益紧迫的时间限制相互交织,增加了医生出错的可能性。当医生解读诸如锝-99m-巯基乙酰三甘氨酸利尿扫描等检查数量较少的研究时,出错的可能性更大,因为成像人员可能接受的培训有限或经验不足。决策支持系统包括神经网络、基于案例的推理、专家系统和统计系统。iRENEX(肾脏专家)是一种用于利尿肾图的专家系统,它使用从人类专家那里获得的一组规则来分析临床参数和从肾图得出的定量参数的知识库。初步研究表明,iRENEX提供的解读与专家小组的解读相当。iRENEX在扫描解读时能立即提供针对患者的反馈,可以查询以了解其得出结论的原因,并且可以用作教育工具,教导实习生更好地解读肾脏扫描。它还能够填充结构化报告模块,并根据报告中包含的要素生成清晰简洁的印象;遵守结构化报告模块的程序和数据输入组件可确保并记录程序能力。最后,尽管重点是应用于利尿肾图的CAD,但本综述为计算机辅助诊断在医学成像中的基本原理、方法和更广泛应用提供了一个窗口。