使用梯度增强和GPT-2的机器学习驱动的住院预测。

IF 2.9 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
DIGITAL HEALTH Pub Date : 2025-03-28 eCollection Date: 2025-01-01 DOI:10.1177/20552076251331319
Xingyu Zhang, Hairong Wang, Guan Yu, Wenbin Zhang
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引用次数: 0

摘要

背景:准确预测急诊科(ED)入院人数对于改善患者护理和资源分配至关重要。本研究旨在通过使用机器学习模型整合结构化临床数据和非结构化文本数据来预测医院入院情况。方法:数据来自2021年全国医院门诊医疗调查-急诊科(NHAMCS-ED),包括18岁及以上的成年患者。结构化数据包括人口统计、就诊特征、生命体征和病史,而非结构化数据包括自由文本主诉和损伤描述。梯度增强分类器(GBC)用于结构化数据,GPT-2模型用于非结构化文本。通过对两个模型的输出求平均值,创建了一个组合模型。采用5重交叉验证评估模型性能,评估准确性、精密度、敏感性、特异性和受试者工作特征曲线下面积(AUC-ROC)。结果:13115例患者中,2264例(17.3%)住院。该组合模型优于单个结构化和非结构化模型,准确率为75.8%,精密度为39.5%,灵敏度为75.8%,特异性为75.8%。相比之下,结构化数据模型的准确率为73.8%,非结构化模型的准确率为64.6%。组合模型的AUC最高,性能优越。结论:利用机器学习将结构化和非结构化数据结合起来,可以显著提高急诊科对住院情况的预测。这种综合方法可以增强决策并优化急诊科操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-driven prediction of hospital admissions using gradient boosting and GPT-2.

Background: Accurately predicting hospital admissions from the emergency department (ED) is essential for improving patient care and resource allocation. This study aimed to predict hospital admissions by integrating both structured clinical data and unstructured text data using machine learning models.

Methods: Data were obtained from the 2021 National Hospital Ambulatory Medical Care Survey-Emergency Department (NHAMCS-ED), including adult patients aged 18 years and older. Structured data included demographics, visit characteristics, vital signs, and medical history, while unstructured data consisted of free-text chief complaints and injury descriptions. A Gradient Boosting Classifier (GBC) was applied to structured data, while a fine-tuned GPT-2 model processed the unstructured text. A combined model was created by averaging the outputs of both models. Model performance was evaluated using 5-fold cross-validation, assessing accuracy, precision, sensitivity, specificity, and area under the receiver operating characteristic curve (AUC-ROC).

Results: Among the 13,115 patients, 2264 (17.3%) were admitted to the hospital. The combined model outperformed the individual structured and unstructured models, achieving an accuracy of 75.8%, precision of 39.5%, sensitivity of 75.8%, and specificity of 75.8%. In comparison, the structured data model achieved 73.8% accuracy, while the unstructured model reached 64.6%. The combined model had the highest AUC, indicating superior performance.

Conclusions: Combining structured and unstructured data using machine learning significantly improves the prediction of hospital admissions from the ED. This integrated approach can enhance decision-making and optimize ED operations.

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来源期刊
DIGITAL HEALTH
DIGITAL HEALTH Multiple-
CiteScore
2.90
自引率
7.70%
发文量
302
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