解剖病理学的多模态生成人工智能-展望未来方向的当前应用综述。

IF 5.1 2区 医学 Q1 PATHOLOGY
Ehsan Ullah, Mirza Mansoor Baig, Asim Waqas, Ghulam Rasool, Rajendra Singh, Ashwinikumar Shandilya, Hamid GholamHossieni, Anil V Parwani
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引用次数: 0

摘要

本文综述了多模态Gen-AI模型在解剖病理图像分析和解释方面的应用,以预测未来的发展方向。本文综述了多模态Gen-AI模型在推进组织病理学图像分析中的应用。利用电子数据库对过去一年(2023年7月1日至2024年6月30日)发表的相关文章进行全面检索。对选定的文章进行批判性分析,以确定和总结多模态Gen-AI在解剖病理图像分析中的应用。文献中报道的多模态Gen AI模型声称在图像分类、分割和文本到图像检索等任务上具有中等到高的准确性。这篇综述展示了多模态Gen AI模型在病理学中的有用应用潜力,包括协助诊断,为教育和研究生成数据,以及从解剖病理图像中检测分子特征。这些模型使用来自少数学术机构的数据,因此它们需要在不同的现实世界数据上进行验证。迫切需要通过使用联合学习方法和使用精心策划的合成解剖病理学数据的多中心协作来建立最佳模型性能的共识模型。这些模型还需要达到可靠性、通用性和满足临床使用所需的标准。尽管严格需要评估和需要解决真正的问题,但多模态GenAI模型为解剖病理学的进步和可扩展性提供了一个有希望的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Generative AI for Anatomic Pathology-A Review of Current Applications to Envisage the Future Direction.

This review focuses on the purported applications of multimodal Gen-AI models for anatomic pathology image analysis and interpretation to predict future directions. A scoping review was conducted to explore the applications of multimodal Gen-AI models in advancing histopathology image analysis. A comprehensive search was conducted using electronic databases for relevant articles published within the past year (July 1, 2023 to June 30, 2024). The selected articles were critically analyzed to identify and summarize the applications of multimodal Gen-AI in anatomic pathology image analysis. Multimodal Gen AI models reported in the literature claim moderate to high accuracy on tasks including image classification, segmentation, and text-to-image retrieval. This review demonstrates the potential of multimodal Gen AI models for useful applications in pathology, including assisting with diagnoses, generating data for education and research, and detection of molecular features from anatomic pathology images. These models use data from a few academic institutions thus they require validation on diverse real-world data. There is an urgent need to build consensus models for optimal model performance through multicenter collaboration using a federated learning approach and the use of carefully curated synthetic anatomic pathology data. These models also need to achieve reliability, generalizability and meet the standards required for clinical use. Despite the rigorous need for evaluation and the need to address genuine concerns, multimodal GenAI models present a promising perspective for the advancement and scalability of anatomic pathology.

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来源期刊
CiteScore
10.30
自引率
3.00%
发文量
88
审稿时长
>12 weeks
期刊介绍: Advances in Anatomic Pathology provides targeted coverage of the key developments in anatomic and surgical pathology. It covers subjects ranging from basic morphology to the most advanced molecular biology techniques. The journal selects and efficiently communicates the most important information from recent world literature and offers invaluable assistance in managing the increasing flow of information in pathology.
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