人工智能辅助匹配人眼研究项目的人类死后供体。

4区 医学 Q2 Biochemistry, Genetics and Molecular Biology
Gregory H Grossman, Thomas Cattell, Alyssa Abbott, Daniel MacIntyre
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引用次数: 0

摘要

在眼科研究和药物开发中,缺乏具有短死后时间间隔(pmi)的人眼样本是一个重要问题。一个促成因素是,眼库必须手动将捐赠者的数据与未来的研究项目标准相匹配,这既耗时又低效,而且容易出错。我们之前报道过半自动匹配系统ReSync的成功使用。实现完全自治的障碍是,捐助者的医疗数据通常作为自由文本字段中的非结构化数据提供,这妨碍了与匹配数据库的互操作性。在此,我们报告了一项小型回顾性研究,其中人工智能(AI)被纳入ReSync (ReSyncAI),以测试AI构建供体数据以进行后续匹配的能力。从一组历史案例中,医疗数据通过自然语言处理安全地发送到大型语言模型中。结构化和标准化后,数据返回ReSync进行分析和匹配测试。医学术语关键词提取与医学数据纠错规范的成功率为94.2%。结构化数据与ReSync完全可互操作。在一小部分病例中,ReSyncAI从供体数据中正确匹配了“年龄相关性黄斑变性”的标准化术语,包括缩写、拼写错误和不完整的名称。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-Assisted Matching of Human Postmortem Donors to Ocular Research Projects.

The scarcity of human ocular samples with short postmortem intervals (PMIs) is a significant issue in ophthalmic research and drug discovery. A contributing factor is that eye banks must manually match donor data to prospective research project criteria, which is time-consuming, inefficient, and error-prone. We have previously reported on the successful use of a semi-automated matching system, ReSync. The barrier to full autonomy is that donor medical data is often provided as unstructured data in free text fields, which prevents interoperability with matching databases. Herein, we report on a small retrospective study, in which artificial intelligence (AI) is incorporated into ReSync (ReSyncAI) to test AI's ability to structure donor data for subsequent matching. From a set of historical cases, medical data was securely sent to a large language model with natural language processing. After structuring and standardizing, data was returned to ReSync for analysis and match testing. A 94.2% success rate in medical terminology keyword extraction in concert with correcting and standardizing medical data was achieved. Structured data was fully interoperable with ReSync. In a subset of cases, ReSyncAI properly matched donors to the standardized term of "age-related macular degeneration" from donor data, including instances of abbreviations, misspellings, and incomplete designations.

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来源期刊
Advances in experimental medicine and biology
Advances in experimental medicine and biology 医学-医学:研究与实验
CiteScore
5.90
自引率
0.00%
发文量
465
审稿时长
2-4 weeks
期刊介绍: Advances in Experimental Medicine and Biology provides a platform for scientific contributions in the main disciplines of the biomedicine and the life sciences. This series publishes thematic volumes on contemporary research in the areas of microbiology, immunology, neurosciences, biochemistry, biomedical engineering, genetics, physiology, and cancer research. Covering emerging topics and techniques in basic and clinical science, it brings together clinicians and researchers from various fields.
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