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基于机器学习算法的创伤性脑损伤患者住院时间预测系统的开发:以用户为中心的设计案例研究。

Development of a System for Predicting Hospitalization Time for Patients With Traumatic Brain Injury Based on Machine Learning Algorithms: User-Centered Design Case Study.

机构信息

The School of Big Data and Artificial Intelligence, Anhui Xinhua University, Hefei, China.

Department of Neurosurgery, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.

出版信息

JMIR Hum Factors. 2024 Aug 30;11:e62866. doi: 10.2196/62866.

DOI:10.2196/62866
PMID:39212592
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11378692/
Abstract

BACKGROUND

Currently, the treatment and care of patients with traumatic brain injury (TBI) are intractable health problems worldwide and greatly increase the medical burden in society. However, machine learning-based algorithms and the use of a large amount of data accumulated in the clinic in the past can predict the hospitalization time of patients with brain injury in advance, so as to design a reasonable arrangement of resources and effectively reduce the medical burden of society. Especially in China, where medical resources are so tight, this method has important application value.

OBJECTIVE

We aimed to develop a system based on a machine learning model for predicting the length of hospitalization of patients with TBI, which is available to patients, nurses, and physicians.

METHODS

We collected information on 1128 patients who received treatment at the Neurosurgery Center of the Second Affiliated Hospital of Anhui Medical University from May 2017 to May 2022, and we trained and tested the machine learning model using 5 cross-validations to avoid overfitting; 28 types of independent variables were used as input variables in the machine learning model, and the length of hospitalization was used as the output variables. Once the models were trained, we obtained the error and goodness of fit (R2) of each machine learning model from the 5 rounds of cross-validation and compared them to select the best predictive model to be encapsulated in the developed system. In addition, we externally tested the models using clinical data related to patients treated at the First Affiliated Hospital of Anhui Medical University from June 2021 to February 2022.

RESULTS

Six machine learning models were built, including support vector regression machine, convolutional neural network, back propagation neural network, random forest, logistic regression, and multilayer perceptron. Among them, the support vector regression has the smallest error of 10.22% on the test set, the highest goodness of fit of 90.4%, and all performances are the best among the 6 models. In addition, we used external datasets to verify the experimental results of these 6 models in order to avoid experimental chance, and the support vector regression machine eventually performed the best in the external datasets. Therefore, we chose to encapsulate the support vector regression machine into our system for predicting the length of stay of patients with traumatic brain trauma. Finally, we made the developed system available to patients, nurses, and physicians, and the satisfaction questionnaire showed that patients, nurses, and physicians agreed that the system was effective in providing clinical decisions to help patients, nurses, and physicians.

CONCLUSIONS

This study shows that the support vector regression machine model developed using machine learning methods can accurately predict the length of hospitalization of patients with TBI, and the developed prediction system has strong clinical use.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8a9/11378692/eafeaca72de6/humanfactors-v11-e62866-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8a9/11378692/2e5a872faa63/humanfactors-v11-e62866-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8a9/11378692/eafeaca72de6/humanfactors-v11-e62866-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8a9/11378692/2e5a872faa63/humanfactors-v11-e62866-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8a9/11378692/eafeaca72de6/humanfactors-v11-e62866-g002.jpg
摘要

背景

目前,创伤性脑损伤(TBI)患者的治疗和护理是全球范围内棘手的健康问题,极大地增加了社会的医疗负担。然而,基于机器学习的算法和过去在临床中积累的大量数据,可以提前预测脑损伤患者的住院时间,从而合理安排资源,有效减轻社会的医疗负担。特别是在中国,医疗资源如此紧张,这种方法具有重要的应用价值。

目的

我们旨在开发一种基于机器学习模型的系统,用于预测 TBI 患者的住院时间,供患者、护士和医生使用。

方法

我们收集了 2017 年 5 月至 2022 年 5 月在安徽医科大学第二附属医院神经外科中心接受治疗的 1128 名患者的信息,并使用 5 次交叉验证来训练和测试机器学习模型,以避免过拟合;将 28 种独立变量作为机器学习模型的输入变量,将住院时间作为输出变量。模型训练完成后,我们从 5 轮交叉验证中获得每个机器学习模型的误差和拟合优度(R2),并进行比较,选择最佳预测模型封装在开发的系统中。此外,我们还使用 2021 年 6 月至 2022 年 2 月安徽医科大学第一附属医院治疗的患者的临床相关数据对模型进行外部测试。

结果

构建了 6 种机器学习模型,包括支持向量回归机、卷积神经网络、反向传播神经网络、随机森林、逻辑回归和多层感知机。其中,支持向量回归机在测试集上的误差最小,为 10.22%,拟合优度最高,为 90.4%,在 6 种模型中性能最佳。此外,我们使用外部数据集来验证这些 6 种模型的实验结果,以避免实验机会,最终支持向量回归机在外部数据集中表现最佳。因此,我们选择将支持向量回归机封装到我们的系统中,用于预测创伤性脑外伤患者的住院时间。最后,我们将开发的系统提供给患者、护士和医生使用,满意度问卷调查显示,患者、护士和医生都认为该系统在为患者提供临床决策方面是有效的,有助于患者、护士和医生。

结论

本研究表明,使用机器学习方法开发的支持向量回归机模型可以准确预测 TBI 患者的住院时间,开发的预测系统具有很强的临床应用价值。

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