Leavesley Silas J, Sweat Brenner, Abbott Caitlyn, Favreau Peter, Rich Thomas C
Department of Chemical and Biomolecular Engineering, University of South Alabama, 150 Jaguar Dr., SH 4129, Mobile, AL 36688, USA.
Department of Pharmacology, University of South Alabama, USA.
J Biophotonics. 2018 Jan;11(1). doi: 10.1002/jbio.201600227. Epub 2017 May 9.
Spectral imaging technologies have been used for many years by the remote sensing community. More recently, these approaches have been applied to biomedical problems, where they have shown great promise. However, biomedical spectral imaging has been complicated by the high variance of biological data and the reduced ability to construct test scenarios with fixed ground truths. Hence, it has been difficult to objectively assess and compare biomedical spectral imaging assays and technologies. Here, we present a standardized methodology that allows assessment of the performance of biomedical spectral imaging equipment, assays, and analysis algorithms. This methodology incorporates real experimental data and a theoretical sensitivity analysis, preserving the variability present in biomedical image data. We demonstrate that this approach can be applied in several ways: to compare the effectiveness of spectral analysis algorithms, to compare the response of different imaging platforms, and to assess the level of target signature required to achieve a desired performance. Results indicate that it is possible to compare even very different hardware platforms using this methodology. Future applications could include a range of optimization tasks, such as maximizing detection sensitivity or acquisition speed, providing high utility for investigators ranging from design engineers to biomedical scientists.
光谱成像技术已被遥感领域使用多年。最近,这些方法已应用于生物医学问题,并且已显示出巨大的前景。然而,生物医学光谱成像因生物数据的高变异性以及构建具有固定真值的测试场景的能力降低而变得复杂。因此,客观评估和比较生物医学光谱成像检测方法和技术一直很困难。在此,我们提出一种标准化方法,该方法允许评估生物医学光谱成像设备、检测方法和分析算法的性能。这种方法结合了实际实验数据和理论灵敏度分析,保留了生物医学图像数据中存在的变异性。我们证明这种方法可以通过多种方式应用:比较光谱分析算法的有效性、比较不同成像平台的响应以及评估实现所需性能所需的目标特征水平。结果表明,使用这种方法甚至可以比较非常不同的硬件平台。未来的应用可能包括一系列优化任务,例如最大化检测灵敏度或采集速度,为从设计工程师到生物医学科学家的研究人员提供很高的实用性。