Ho Khek Yu
Department of Medicine, National University of Singapore, Singapore 119228, Singapore.
Chin J Cancer Res. 2022 Oct 30;34(5):539-542. doi: 10.21147/j.issn.1000-9604.2022.05.13.
White-light endoscopy with tissue biopsy is the gold standard interface for diagnosing gastric neoplastic lesions. However, misdiagnosis of lesions is a challenge because of operator variability and learning curve issues. These issues have not been resolved despite the introduction of advanced imaging technologies, including narrow band imaging, and confocal laser endomicroscopy. To ensure consistently high diagnostic accuracy among endoscopists, artificial intelligence (AI) has recently been introduced to assist endoscopists in the diagnosis of gastric neoplasia. Current endoscopic AI systems for endoscopic diagnosis are mostly based upon interpretation of endoscopic images. In real-life application, the image-based AI system remains reliant upon skilful operators who will need to capture sufficiently good quality images for the AI system to analyze. Such an ideal situation may not always be possible in routine practice. In contrast, non-image-based AI is less constraint by these requirements. Our group has recently developed an endoscopic Raman fibre-optic probe that can be delivered into the gastrointestinal tract via the working channel of any endoscopy for Raman measurements. We have also successfully incorporated the endoscopic Raman spectroscopic system with an AI system. Proof of effectiveness has been demonstrated in studies using the Raman endoscopic system in close to 1,000 patients. The system was able to classify normal gastric tissue, gastric intestinal metaplasia, gastric dysplasia and gastric cancer, with diagnostic accuracy of >85%. Because of the excellent correlation between Raman spectra and histopathology, the Raman-AI system can provide optical diagnosis, thus allowing the endoscopists to make clinical decisions on the spot. Furthermore, by allowing non-expert endoscopists to make real-time decisions as well as expert endoscopists, the system will enable consistency of care.
白光内镜检查结合组织活检是诊断胃肿瘤性病变的金标准方法。然而,由于操作者的差异和学习曲线问题,病变的误诊是一项挑战。尽管引入了先进的成像技术,包括窄带成像和共聚焦激光内镜显微镜,但这些问题仍未得到解决。为了确保内镜医师之间始终保持较高的诊断准确性,最近引入了人工智能(AI)来协助内镜医师诊断胃肿瘤。当前用于内镜诊断的人工智能系统大多基于内镜图像的解读。在实际应用中,基于图像的人工智能系统仍然依赖于技术熟练的操作者,他们需要采集足够高质量的图像供人工智能系统分析。在常规实践中,这种理想情况可能并不总是能够实现。相比之下,基于非图像的人工智能受这些要求的限制较小。我们团队最近开发了一种内镜拉曼光纤探头,可通过任何内镜的工作通道送入胃肠道进行拉曼测量。我们还成功地将内镜拉曼光谱系统与人工智能系统相结合。在对近1000名患者使用拉曼内镜系统的研究中已证明了其有效性。该系统能够对正常胃组织、胃肠化生、胃异型增生和胃癌进行分类,诊断准确率>85%。由于拉曼光谱与组织病理学之间具有良好的相关性,拉曼-人工智能系统可以提供光学诊断,从而使内镜医师能够当场做出临床决策。此外,通过允许非专家内镜医师以及专家内镜医师做出实时决策,该系统将实现医疗护理的一致性。