Cancer is one of the leading causes of death worldwide. Fast and safe early-stage, pre- and intra-operative diagnostics can significantly contribute to successful cancer identification and treatment. Artificial intelligence has played an increasing role in the enhancement of cancer diagnostics techniques in the last 15 years. This review covers the advances of artificial intelligence applications in well-established techniques such as MRI and CT. Also, it shows its high potential in combination with optical spectroscopy-based approaches that are under development for mobile, ultra-fast, and low-invasive diagnostics. I will show how spectroscopy-based approaches can reduce the time of tissue preparation for pathological analysis by making thin-slicing or haematoxylin-and-eosin staining obsolete. I will present examples of spectroscopic tools for fast and low-invasive ex- and in-vivo tissue classification for the determination of a tumour and its boundaries. Also, I will discuss that, contrary to MRI and CT, spectroscopic measurements do not require the administration of chemical agents to enhance the quality of cancer imaging which contributes to the development of more secure diagnostic methods. Overall, we will see that the combination of spectroscopy and artificial intelligence constitutes a highly promising and fast-developing field of medical technology that will soon augment available cancer diagnostic methods.
翻译:15年来,人工智能在加强癌症诊断技术方面发挥着越来越大的作用。本审查涵盖诸如MRI和CT等成熟技术中人工智能应用的进展,还显示了其与正在开发的以光谱为基础的移动、超快和低侵入性诊断方法相结合的巨大潜力。我将表明,光谱分析方法与正在开发的光谱光谱分析方法相结合,对于移动、超快和低侵入性诊断方法而言,其潜力很大。我将表明,光谱分析方法如何通过使薄片切除或血液催产素和眼科素染色过时,减少组织病理分析的准备时间。我将举例说明用于快速和低侵入性前和脑组织分类的光谱工具,以便确定肿瘤及其界限。我还将讨论,与光谱分析法和低侵入性诊断方法不同的是,光谱分析方法并不要求化学剂管理提高癌症成像的质量,从而有助于发展更安全的诊断方法的快速诊断和快速诊断方法。我们将看到,快速和不断发展的诊断方法将很快发展。