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利用人工智能进行医学文献检索:采用黑客松形式的随机对照试验

Use of Artificial Intelligence for Medical Literature Search: Randomized Controlled Trial Using the Hackathon Format.

作者信息

Schoeb Dominik, Suarez-Ibarrola Rodrigo, Hein Simon, Dressler Franz Friedrich, Adams Fabian, Schlager Daniel, Miernik Arkadiusz

机构信息

Medical Center - Department of Urology, Faculty of Medicine, University of Freiburg, Freiburg, Germany.

出版信息

Interact J Med Res. 2020 Mar 30;9(1):e16606. doi: 10.2196/16606.

Abstract

BACKGROUND

Mapping out the research landscape around a project is often time consuming and difficult.

OBJECTIVE

This study evaluates a commercial artificial intelligence (AI) search engine (IRIS.AI) for its applicability in an automated literature search on a specific medical topic.

METHODS

To evaluate the AI search engine in a standardized manner, the concept of a science hackathon was applied. Three groups of researchers were tasked with performing a literature search on a clearly defined scientific project. All participants had a high level of expertise for this specific field of research. Two groups were given access to the AI search engine IRIS.AI. All groups were given the same amount of time for their search and were instructed to document their results. Search results were summarized and ranked according to a predetermined scoring system.

RESULTS

The final scoring awarded 49 and 39 points out of 60 to AI groups 1 and 2, respectively, and the control group received 46 points. A total of 20 scientific studies with high relevance were identified, and 5 highly relevant studies ("spot on") were reported by each group.

CONCLUSIONS

AI technology is a promising approach to facilitate literature searches and the management of medical libraries. In this study, however, the application of AI technology lead to a more focused literature search without a significant improvement in the number of results.

摘要

背景

梳理围绕一个项目的研究概况往往既耗时又困难。

目的

本研究评估一款商业人工智能(AI)搜索引擎(IRIS.AI)在特定医学主题的自动化文献检索中的适用性。

方法

为了以标准化方式评估该AI搜索引擎,采用了科学黑客马拉松的概念。三组研究人员被要求针对一个明确界定的科学项目进行文献检索。所有参与者在该特定研究领域都有很高的专业水平。两组可以使用AI搜索引擎IRIS.AI。所有组的检索时间相同,并被要求记录结果。检索结果根据预先确定的评分系统进行汇总和排名。

结果

最终评分中,AI第一组和第二组分别在60分中获得49分和39分,对照组获得46分。总共识别出20项高度相关的科学研究,每组都报告了5项高度相关的研究(“正中要害”)。

结论

人工智能技术是促进文献检索和医学图书馆管理的一种有前景的方法。然而,在本研究中,人工智能技术的应用导致文献检索更具针对性,但结果数量没有显著增加。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7759/7154940/2d04b4ad9ec1/ijmr_v9i1e16606_fig1.jpg

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