Improve the efficiency and accuracy of ophthalmologists' clinical decision-making based on AI technology.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-07-09 DOI:10.1186/s12911-024-02587-z
Yingxuan Guo, Changke Huang, Yaying Sheng, Wenjie Zhang, Xin Ye, Hengli Lian, Jiahao Xu, Yiqi Chen
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Abstract

Background: As global aging intensifies, the prevalence of ocular fundus diseases continues to rise. In China, the tense doctor-patient ratio poses numerous challenges for the early diagnosis and treatment of ocular fundus diseases. To reduce the high risk of missed or misdiagnosed cases, avoid irreversible visual impairment for patients, and ensure good visual prognosis for patients with ocular fundus diseases, it is particularly important to enhance the growth and diagnostic capabilities of junior doctors. This study aims to leverage the value of electronic medical record data to developing a diagnostic intelligent decision support platform. This platform aims to assist junior doctors in diagnosing ocular fundus diseases quickly and accurately, expedite their professional growth, and prevent delays in patient treatment. An empirical evaluation will assess the platform's effectiveness in enhancing doctors' diagnostic efficiency and accuracy.

Methods: In this study, eight Chinese Named Entity Recognition (NER) models were compared, and the SoftLexicon-Glove-Word2vec model, achieving a high F1 score of 93.02%, was selected as the optimal recognition tool. This model was then used to extract key information from electronic medical records (EMRs) and generate feature variables based on diagnostic rule templates. Subsequently, an XGBoost algorithm was employed to construct an intelligent decision support platform for diagnosing ocular fundus diseases. The effectiveness of the platform in improving diagnostic efficiency and accuracy was evaluated through a controlled experiment comparing experienced and junior doctors.

Results: The use of the diagnostic intelligent decision support platform resulted in significant improvements in both diagnostic efficiency and accuracy for both experienced and junior doctors (P < 0.05). Notably, the gap in diagnostic speed and precision between junior doctors and experienced doctors narrowed considerably when the platform was used. Although the platform also provided some benefits to experienced doctors, the improvement was less pronounced compared to junior doctors.

Conclusion: The diagnostic intelligent decision support platform established in this study, based on the XGBoost algorithm and NER, effectively enhances the diagnostic efficiency and accuracy of junior doctors in ocular fundus diseases. This has significant implications for optimizing clinical diagnosis and treatment.

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基于人工智能技术,提高眼科医生临床决策的效率和准确性。
背景:随着全球老龄化的加剧,眼底病的发病率持续上升。在中国,紧张的医患比例给眼底病的早期诊断和治疗带来了诸多挑战。为了降低漏诊或误诊的高风险,避免患者出现不可逆的视力损害,确保眼底病患者良好的视觉预后,提高基层医生的成长和诊断能力显得尤为重要。本研究旨在利用电子病历数据的价值,开发一个诊断智能决策支持平台。该平台旨在帮助基层医生快速准确地诊断眼底疾病,加快他们的专业成长,避免延误病人的治疗。实证评价将评估该平台在提高医生诊断效率和准确性方面的有效性:本研究比较了八种中文命名实体识别(NER)模型,并选择了F1得分率高达93.02%的SoftLexicon-Glove-Word2vec模型作为最佳识别工具。然后,利用该模型从电子病历(EMR)中提取关键信息,并根据诊断规则模板生成特征变量。随后,采用 XGBoost 算法构建了眼底疾病诊断智能决策支持平台。通过对比经验丰富的医生和初级医生的对照实验,评估了该平台在提高诊断效率和准确性方面的有效性:结果:使用诊断智能决策支持平台后,经验丰富的医生和初级医生的诊断效率和准确性都有了显著提高(P 结论:使用诊断智能决策支持平台后,经验丰富的医生和初级医生的诊断效率和准确性都有了显著提高:本研究建立的诊断智能决策支持平台基于 XGBoost 算法和 NER,可有效提高初级医生对眼底疾病的诊断效率和准确性。这对优化临床诊断和治疗具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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