Ferguson Dougal, Henderson Alex, McInnes Elizabeth F, Lind Rob, Wildenhain Jan, Gardner Peter
Manchester Institute of Biotechnology, University of Manchester, 131 Princess Street, Manchester, M1 7DN, UK.
Department of Chemical Engineering and Analytical Science, School of Engineering, University of Manchester, Oxford Road, Manchester, M13 9PL, UK.
Analyst. 2022 Aug 8;147(16):3709-3722. doi: 10.1039/d2an00775d.
The visual detection, classification, and differentiation of cancers within tissues of clinical patients is an extremely difficult and time-consuming process with severe diagnosis implications. To this end, many computational approaches have been developed to analyse tissue samples to supplement histological cancer diagnoses. One approach is the interrogation of the chemical composition of the actual tissue samples through the utilisation of vibrational spectroscopy, specifically Infrared (IR) spectroscopy. Cancerous tissue can be detected by analysing the molecular vibration patterns of tissues undergoing IR irradiation, and even graded, with multivariate and Machine Learning (ML) techniques. This publication serves to review and highlight the potential for the application of infrared microscopy techniques such as Fourier Transform Infrared Spectroscopy (FTIR) and Quantum Cascade Laser Infrared Spectroscopy (QCL), as a means to improve diagnostic accuracy and allow earlier detection of human neoplastic disease. This review provides an overview of the detection and classification of different cancerous tissues using FTIR spectroscopy paired with multivariate and ML techniques, using the F1-Score as a quantitative metric for direct comparison of model performances. Comparisons also extend to data handling techniques, with a provision of a suggested pre-processing protocol for future studies alongside suggestions as to reporting standards for future publication.
对临床患者组织中的癌症进行视觉检测、分类和鉴别是一个极其困难且耗时的过程,具有严重的诊断意义。为此,人们开发了许多计算方法来分析组织样本,以辅助组织学癌症诊断。一种方法是通过利用振动光谱,特别是红外(IR)光谱,来探究实际组织样本的化学成分。通过分析经红外辐射的组织的分子振动模式,可以检测出癌组织,甚至可以使用多变量和机器学习(ML)技术对其进行分级。本出版物旨在回顾和强调傅里叶变换红外光谱(FTIR)和量子级联激光红外光谱(QCL)等红外显微镜技术作为提高诊断准确性和实现人类肿瘤疾病早期检测手段的应用潜力。本综述概述了使用FTIR光谱结合多变量和ML技术对不同癌组织进行检测和分类的情况,使用F1分数作为直接比较模型性能的定量指标。比较还扩展到数据处理技术,为未来研究提供了建议的预处理方案以及未来出版物报告标准的建议。