Gomez Javier, Doukky Rami, Germano Guido, Slomka Piotr
Division of Cardiology, Cook County Health and Hospitals System, Chicago, IL.
Division of Cardiology, Rush University Medical Center, Chicago, IL.
Curr Cardiovasc Imaging Rep. 2018 Jan;11(1). doi: 10.1007/s12410-018-9443-7. Epub 2018 Jan 19.
The use of quantitative analysis in single photon emission computed tomography (SPECT) and positron emission tomography (PET) has become an integral part of current clinical practice and plays a crucial role in the detection and risk stratification of coronary artery disease. Emerging technologies, new protocols, and new quantification methods have had a significant impact on the diagnostic performance and prognostic value of nuclear cardiology imaging, while reducing the need for clinician oversight. In this review, we aim to describe recent advances in automation and quantitative analysis in nuclear cardiology.
Recent publications have shown that fully automatic processing is feasible, limiting human input to specific cases where aberrancies are detected by the quality control software. Furthermore, there is evidence indicating that fully quantitative analysis of myocardial perfusion imaging is feasible and can achieve at least similar diagnostic accuracy as visual interpretation by an expert clinician. In addition, the use of fully automated quantification in combination with machine learning algorithms can provide incremental diagnostic and prognostic value over the traditional method of expert visual interpretation.
Emerging technologies in nuclear cardiology focus on automation and the use of artificial intelligence as part of the interpretation process. This review highlights the benefits and limitations of these applications, and outlines future directions in the field.
单光子发射计算机断层扫描(SPECT)和正电子发射断层扫描(PET)中的定量分析已成为当前临床实践不可或缺的一部分,在冠状动脉疾病的检测和风险分层中发挥着关键作用。新兴技术、新方案和新的定量方法对核心脏病学成像的诊断性能和预后价值产生了重大影响,同时减少了临床医生监督的需求。在本综述中,我们旨在描述核心脏病学中自动化和定量分析的最新进展。
最近的出版物表明,全自动处理是可行的,将人工输入限制在质量控制软件检测到异常的特定病例中。此外,有证据表明心肌灌注成像的全定量分析是可行的,并且至少可以达到与专家临床医生视觉解读相似的诊断准确性。此外,将全自动定量与机器学习算法结合使用,相对于传统的专家视觉解读方法,可以提供额外的诊断和预后价值。
核心脏病学中的新兴技术专注于自动化以及将人工智能用作解读过程的一部分。本综述强调了这些应用的益处和局限性,并概述了该领域的未来方向。