基于深度学习的多模式眼科人工智能的进展与前景:综述。

IF 4.1 1区 医学 Q1 OPHTHALMOLOGY
Shaopan Wang, Xin He, Zhongquan Jian, Jie Li, Changsheng Xu, Yuguang Chen, Yuwen Liu, Han Chen, Caihong Huang, Jiaoyue Hu, Zuguo Liu
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引用次数: 0

摘要

背景:近年来,眼科已成为医学人工智能(AI)的一个新领域,眼科中的多模式人工智能在跨学科研究中备受关注。整合各种类型和数据模型具有极其重要的意义,因为它能为诊断眼科和视力疾病提供详细而精确的信息。通过利用多模态眼科人工智能技术,临床医生可以提高诊断的准确性和效率,从而降低与误诊和疏忽相关的风险,同时还能对眼睛和视力健康进行更精确的管理。然而,多模态眼科技术的广泛应用带来了巨大挑战:在这篇综述中,我们首先全面总结了眼科领域的模态概念、模态之间的融合形式以及多模态眼科人工智能技术的进展。最后,我们讨论了当前多模态人工智能技术在眼科领域应用所面临的挑战以及未来可行的研究方向:在眼科人工智能领域,有证据表明,在利用多模态数据时,基于深度学习的多模态人工智能技术在辅助诊断各种眼科疾病方面表现出卓越的诊断功效。特别是在当前大规模模型激增的时代,多模态技术代表了最有前景、最具优势的解决方案,可从综合角度解决各种眼科疾病的诊断问题。然而,必须承认的是,多模态技术在眼科人工智能中的应用仍面临着诸多挑战,才能有效地应用于临床。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advances and prospects of multi-modal ophthalmic artificial intelligence based on deep learning: a review.

Background: In recent years, ophthalmology has emerged as a new frontier in medical artificial intelligence (AI) with multi-modal AI in ophthalmology garnering significant attention across interdisciplinary research. This integration of various types and data models holds paramount importance as it enables the provision of detailed and precise information for diagnosing eye and vision diseases. By leveraging multi-modal ophthalmology AI techniques, clinicians can enhance the accuracy and efficiency of diagnoses, and thus reduce the risks associated with misdiagnosis and oversight while also enabling more precise management of eye and vision health. However, the widespread adoption of multi-modal ophthalmology poses significant challenges.

Main text: In this review, we first summarize comprehensively the concept of modalities in the field of ophthalmology, the forms of fusion between modalities, and the progress of multi-modal ophthalmic AI technology. Finally, we discuss the challenges of current multi-modal AI technology applications in ophthalmology and future feasible research directions.

Conclusion: In the field of ophthalmic AI, evidence suggests that when utilizing multi-modal data, deep learning-based multi-modal AI technology exhibits excellent diagnostic efficacy in assisting the diagnosis of various ophthalmic diseases. Particularly, in the current era marked by the proliferation of large-scale models, multi-modal techniques represent the most promising and advantageous solution for addressing the diagnosis of various ophthalmic diseases from a comprehensive perspective. However, it must be acknowledged that there are still numerous challenges associated with the application of multi-modal techniques in ophthalmic AI before they can be effectively employed in the clinical setting.

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来源期刊
Eye and Vision
Eye and Vision OPHTHALMOLOGY-
CiteScore
8.60
自引率
2.40%
发文量
89
审稿时长
15 weeks
期刊介绍: Eye and Vision is an open access, peer-reviewed journal for ophthalmologists and visual science specialists. It welcomes research articles, reviews, methodologies, commentaries, case reports, perspectives and short reports encompassing all aspects of eye and vision. Topics of interest include but are not limited to: current developments of theoretical, experimental and clinical investigations in ophthalmology, optometry and vision science which focus on novel and high-impact findings on central issues pertaining to biology, pathophysiology and etiology of eye diseases as well as advances in diagnostic techniques, surgical treatment, instrument updates, the latest drug findings, results of clinical trials and research findings. It aims to provide ophthalmologists and visual science specialists with the latest developments in theoretical, experimental and clinical investigations in eye and vision.
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