Assessing the accuracy and efficiency of Chat GPT-4 Omni (GPT-4o) in biomedical statistics: Comparative study with traditional tools.

IF 1.7 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL
Anusha S Meo, Narmeen Shaikh, Sultan A Meo
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引用次数: 0

Abstract

Objectives: To assess the accuracy of ChatGPT-4 Omni (GPT-4o) in biomedical statistics. The recent novel inauguration of Artificial Intelligence ChatGPT-Omni (GPT-4o), has emerged with the potential to analyze sophisticated and extensive data sets, challenging the expertise of statisticians using traditional statistical tools for data analysis.

Methods: This study was performed in the Department of Physiology, College of Medicine, King Saud University, Riyadh, Saudi Arabia, in May 2024. Three datasets in a raw Excel file format were imported onto Statistical Package for the Social Sciences (SPSS) version 29 for data analysis. Based on this analysis, a script of 9 questions was prepared to command GPT-4 Omni, which was used for data analysis for all 3 datasets on Omni. The score and the time were recorded for each result and verified after being compared to the original analysis results performed on SPSS.

Results: GPT-4 Omni scored 73 (85.88%) out of 85 points for all 3 datasets. All datasets took a total of 38.43 minutes to be fully analyzed. Individually, Omni scored 21/25 (84%) for the small dataset in 487.4 seconds, 20/25 (80%) for the middle dataset in 747.02 seconds and 32/35 (91.42%) for the large dataset in 1071 seconds. GPT-4 Omni produced accurate graphs and charts.

Conclusion: ChatGPT-4 Omni scored better over 80% in all 3 statistical datasets in a short period. GPT-4 Omni also produced accurate graphs and charts as commanded however it required explicit commands with clear instructions to avoid errors and omission of results to achieve appropriate results in biomedical data analysis.

评估Chat GPT-4 Omni (gpt - 40)在生物医学统计学中的准确性和效率:与传统工具的比较研究。
目的:评价ChatGPT-4 Omni (gpt - 40)在生物医学统计学中的准确性。最近新推出的人工智能ChatGPT-Omni (gpt - 40)具有分析复杂和广泛数据集的潜力,挑战了使用传统统计工具进行数据分析的统计学家的专业知识。方法:本研究于2024年5月在沙特阿拉伯利雅得沙特国王大学医学院生理学系完成。三个原始Excel文件格式的数据集被导入到社会科学统计软件包(SPSS)版本29进行数据分析。在此基础上,编写了9个问题的脚本命令GPT-4 Omni,并使用该脚本对Omni上的所有3个数据集进行数据分析。记录每个结果的得分和时间,并与SPSS上的原始分析结果进行对比验证。结果:GPT-4 Omni评分为73分(85.88%)(总分85分)。所有数据集的完全分析总共需要38.43分钟。单独来说,Omni在487.4秒内完成了小数据集的21/25(84%),在747.02秒内完成了中等数据集的20/25(80%),在1071秒内完成了大数据集的32/35(91.42%)。GPT-4 Omni制作精确的图形和图表。结论:ChatGPT-4 Omni在短时间内3个统计数据集的评分均在80%以上。GPT-4 Omni也可以根据指令生成准确的图形和图表,但它需要明确的命令和明确的指示,以避免错误和遗漏结果,从而在生物医学数据分析中获得适当的结果。
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来源期刊
Saudi Medical Journal
Saudi Medical Journal 医学-医学:内科
CiteScore
2.30
自引率
6.20%
发文量
203
审稿时长
12 months
期刊介绍: The Saudi Medical Journal is a monthly peer-reviewed medical journal. It is an open access journal, with content released under a Creative Commons attribution-noncommercial license. The journal publishes original research articles, review articles, Systematic Reviews, Case Reports, Brief Communication, Brief Report, Clinical Note, Clinical Image, Editorials, Book Reviews, Correspondence, and Student Corner.
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