Stanciu Stefan G, König Karsten, Song Young Min, Wolf Lior, Charitidis Costas A, Bianchini Paolo, Goetz Martin
Center for Microscopy-Microanalysis and Information Processing, University Politehnica of Bucharest, Bucharest, Romania.
School of Computer Science, Tel Aviv University, Tel-Aviv, Israel.
Biophys Rev (Melville). 2023 Jun 29;4(2):021307. doi: 10.1063/5.0133027. eCollection 2023 Jun.
According to the World Health Organization, the proportion of the world's population over 60 years will approximately double by 2050. This progressive increase in the elderly population will lead to a dramatic growth of age-related diseases, resulting in tremendous pressure on the sustainability of healthcare systems globally. In this context, finding more efficient ways to address cancers, a set of diseases whose incidence is correlated with age, is of utmost importance. Prevention of cancers to decrease morbidity relies on the identification of precursor lesions before the onset of the disease, or at least diagnosis at an early stage. In this article, after briefly discussing some of the most prominent endoscopic approaches for gastric cancer diagnostics, we review relevant progress in three emerging technologies that have significant potential to play pivotal roles in next-generation endoscopy systems: biomimetic vision (with special focus on compound eye cameras), non-linear optical microscopies, and Deep Learning. Such systems are urgently needed to enhance the three major steps required for the successful diagnostics of gastrointestinal cancers: detection, characterization, and confirmation of suspicious lesions. In the final part, we discuss challenges that lie en route to translating these technologies to next-generation endoscopes that could enhance gastrointestinal imaging, and depict a possible configuration of a system capable of (i) biomimetic endoscopic vision enabling easier detection of lesions, (ii) label-free tissue characterization, and (iii) intelligently automated gastrointestinal cancer diagnostic.
据世界卫生组织称,到2050年,全球60岁以上人口的比例将增加近一倍。老年人口的这种逐步增加将导致与年龄相关疾病的急剧增长,给全球医疗保健系统的可持续性带来巨大压力。在这种背景下,找到更有效的方法来应对癌症这一发病率与年龄相关的疾病至关重要。预防癌症以降低发病率依赖于在疾病发作前识别前驱病变,或者至少在早期进行诊断。在本文中,在简要讨论了一些用于胃癌诊断的最突出的内镜方法之后,我们回顾了三种新兴技术的相关进展,这些技术在下一代内镜系统中具有发挥关键作用的巨大潜力:仿生视觉(特别关注复眼相机)、非线性光学显微镜和深度学习。迫切需要这样的系统来加强胃肠道癌成功诊断所需的三个主要步骤:可疑病变的检测、特征描述和确认。在最后一部分,我们讨论了将这些技术转化为能够增强胃肠道成像的下一代内窥镜过程中存在的挑战,并描述了一个可能的系统配置,该系统能够(i)实现仿生内镜视觉以便更轻松地检测病变,(ii)进行无标记组织特征描述,以及(iii)智能自动化胃肠道癌诊断。