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生成式大语言模型MedGo在老年多病共存患者护理决策中的应用效果

Effectiveness of generative large language model MedGo in nursing decision-making for elderly patients with multimorbidity

  • 摘要:
    目的 探讨生成式大语言模型MedGo在老年多病共存患者护理决策中的应用效果。
    方法 2025年1月1日至2025年3月31日选择同济大学附属东方医院急诊内科病房6名低年资护士、6名高年资护士与MedGo模型作为研究对象,采用类试验研究方法,从决策耗时、决策准确度及决策质量3项评价维度,比较3组研究对象在120例老年多病共存患者护理诊断评估、护理措施制定、并发症识别及并发症预防4个环节中的表现。
    结果 在决策耗时方面,高年资护士组的4个环节耗时短于低年资护士组(P<0.01),MedGo组的4个环节耗时短于低年资护士组(P<0.001)和高年资护士组(P<0.001)。决策准确度方面,高年资护士组在4个环节中的评分均高于低年资护士组(P<0.001),MedGo组仅并发症识别评分高于高年资护士组(P<0.001)。决策质量方面,MedGo组在4个环节中的评分均高于低年资护士组(P<0.001)和高年资护士组(P<0.001)。
    结论 MedGo 模型在老年多病共存患者护理决策中展现出高效、准确和高质量的优势;高年资护士决策表现优于高年资护士,可为临床护理决策提供多元参考。

     

    Abstract:
    Objective To explore the effectiveness of the generative large language model MedGo in nursing decision-making for elderly patients with multimorbidity.
    Methods A quasi-randomized controlled trial study was conducted involving 6 junior nurses, 6 senior nurses and the MedGo model from January 1, 2025 to March 31, 2025 at the Emergency Internal Medicine Ward of Shanghai East Hospital Affiliated to Tongji University. Clinical data of 120 elderly patients with multimorbidity were analyzed to compare the performance of the three groups in four tasks (nursing diagnosis assessment, nursing intervention formulation, complication identification, and complication prevention) from three evaluation dimensions: decision-making time consumption, decision accuracy, and decision-making quality.
    Results In terms of decision-making time, the senior nurse group completed all four tasks faster than the junior nurse group (P<0.01), and the MedGo group completed all four tasks faster than the junior nurse group (P<0.001) and the senior nurse group (P<0.001). In terms of decision-making accuracy, senior nurse group scored higher than junior nurse group in all four tasks (P<0.001), while the MedGo group outperformed the senior nurse group only in complication identification (P<0.001). In terms of decision-making quality, the MedGo group scored higher than junior nurse group (P<0.001) and senior nurse group (P<0.001) in all four tasks.
    Conclusions The MedGo model demonstrates advantages of high efficiency, accuracy, and quality in nursing decision-making for elderly patients with multimorbidity; senior nurses outperform junior nurses in decision-making, providing diverse references for clinical nursing decision-making.

     

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