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High-throughput quantum cascade laser (QCL) spectral histopathology: a practical approach towards clinical translation

机译:高通量量子级联激光(QCL)光谱组织病理学:临床翻译的实用方法

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摘要

Infrared microscopy has become one of the key techniques in the biomedical research field for interrogating tissue. In partnership with multivariate analysis and machine learning techniques, it has become widely accepted as a method that can distinguish between normal and cancerous tissue with both high sensitivity and high specificity. While spectral histopathology (SHP) is highly promising for improved clinical diagnosis, several practical barriers currently exist, which need to be addressed before successful implementation in the clinic. Sample throughput and speed of acquisition are key barriers and have been driven by the high volume of samples awaiting histopathological examination. FTIR chemical imaging utilising FPA technology is currently state-of-the-art for infrared chemical imaging, and recent advances in its technology have dramatically reduced acquisition times. Despite this, infrared microscopy measurements on a tissue microarray (TMA), often encompassing several million spectra, takes several hours to acquire. The problem lies with the vast quantities of data that FTIR collects; each pixel in a chemical image is derived from a full infrared spectrum, itself composed of thousands of individual data points. Furthermore, data management is quickly becoming a barrier to clinical translation and poses the question of how to store these incessantly growing data sets. Recently, doubts have been raised as to whether the full spectral range is actually required for accurate disease diagnosis using SHP. These studies suggest that once spectral biomarkers have been predetermined it may be possible to diagnose disease based on a limited number of discrete spectral features. In this current study, we explore the possibility of utilising discrete frequency chemical imaging for acquiring high-throughput, high-resolution chemical images. Utilising a quantum cascade laser imaging microscope with discrete frequency collection at key diagnostic wavelengths, we demonstrate that we can diagnose prostate cancer with high sensitivity and specificity. Finally we extend the study to a large patient dataset utilising tissue microarrays, and show that high sensitivity and specificity can be achieved using high-throughput, rapid data collection, thereby paving the way for practical implementation in the clinic.
机译:红外显微镜已成为生物医学研究领域中审问组织的关键技术之一。与多变量分析和机器学习技术相结合,它已被广泛接受为可以高灵敏度和高特异性区分正常和癌性组织的方法。尽管频谱组织病理学(SHP)在改善临床诊断方面很有前途,但目前存在一些实际障碍,在临床上成功实施之前需要解决这些障碍。样品的通量和采集速度是主要障碍,并且一直在等待进行组织病理学检查的大量样品驱动。利用FPA技术的FTIR化学成像目前是红外化学成像的最新技术,其技术的最新进展大大缩短了采集时间。尽管如此,组织微阵列(TMA)上的红外显微镜测量(通常包含数百万个光谱)需要花费几个小时才能获得。问题在于FTIR收集了大量的数据。化学图像中的每个像素均来自完整的红外光谱,红外光谱本身由数千个单独的数据点组成。此外,数据管理正迅速成为临床翻译的障碍,并提出了如何存储这些不断增长的数据集的问题。最近,对于使用SHP进行准确的疾病诊断是否确实需要整个光谱范围提出了疑问。这些研究表明,一旦预先确定了光谱生物标记,就有可能基于有限数量的离散光谱特征来诊断疾病。在当前的研究中,我们探索了利用离散频率化学成像获取高通量,高分辨率化学图像的可能性。利用在关键诊断波长处具有离散频率收集的量子级联激光成像显微镜,我们证明了我们可以以高灵敏度和特异性诊断前列腺癌。最后,我们将研究扩展到使用组织微阵列的大型患者数据集,并表明使用高通量,快速的数据收集可以实现高灵敏度和特异性,从而为在临床中实际实施铺平了道路。

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