Novel automated non-invasive detection of ocular surface squamous neoplasia using artificial intelligence.

Sony Sinha, Prasanna Venkatesh Ramesh, Prateek Nishant, Arvind Kumar Morya, Ripunjay Prasad
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Abstract

Ocular surface squamous neoplasia (OSSN) is a common eye surface tumour, characterized by the growth of abnormal cells on the ocular surface. OSSN includes invasive squamous cell carcinoma (SCC), in which tumour cells penetrate the basement membrane and infiltrate the stroma, as well as non-invasive conjunctival intraepithelial neoplasia, dysplasia, and SCC in-situ thereby presenting a challenge in early detection and diagnosis. Early identification and precise demarcation of the OSSN border leads to straightforward and curative treatments, such as topical medicines, whereas advanced invasive lesions may need orbital exenteration, which carries a risk of death. Artificial intelligence (AI) has emerged as a promising tool in the field of eye care and holds potential for its application in OSSN management. AI algorithms trained on large datasets can analyze ocular surface images to identify suspicious lesions associated with OSSN, aiding ophthalmologists in early detection and diagnosis. AI can also track and monitor lesion progression over time, providing objective measurements to guide treatment decisions. Furthermore, AI can assist in treatment planning by offering personalized recommendations based on patient data and predicting the treatment response. This manuscript highlights the role of AI in OSSN, specifically focusing on its contributions in early detection and diagnosis, assessment of lesion progression, treatment planning, telemedicine and remote monitoring, and research and data analysis.

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利用人工智能对眼表鳞状肿瘤进行新型自动无创检测。
眼表鳞状细胞瘤(OSSN)是一种常见的眼表肿瘤,其特征是眼表异常细胞的生长。眼表鳞状上皮瘤包括浸润性鳞状细胞癌(肿瘤细胞穿透基底膜并浸润基质)以及非浸润性结膜上皮内瘤变、发育不良和原位鳞状细胞癌,因此给早期检测和诊断带来了挑战。早期识别和精确划分结膜上皮内瘤的边界可直接进行治疗,如局部用药,而晚期侵袭性病变可能需要进行眼眶外切除术,这将带来死亡风险。人工智能(AI)已成为眼科护理领域前景广阔的工具,并有望应用于 OSSN 的管理。在大型数据集上训练的人工智能算法可以分析眼表图像,识别与 OSSN 相关的可疑病变,帮助眼科医生进行早期检测和诊断。人工智能还能跟踪和监测病变随时间的发展,提供客观的测量结果,为治疗决策提供指导。此外,人工智能还能根据患者数据提供个性化建议并预测治疗反应,从而协助制定治疗计划。本手稿重点介绍了人工智能在 OSSN 中的作用,特别是其在早期检测和诊断、病变进展评估、治疗规划、远程医疗和远程监控以及研究和数据分析方面的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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