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利用人工神经网络预测慢性阻塞性肺疾病患者的自我管理:探索性分析。

Utilizing an Artificial Neural Network to Predict Self-Management in Patients With Chronic Obstructive Pulmonary Disease: An Exploratory Analysis.

机构信息

Delta Beta Chapter-at-Large, Assistant Professor, University of South Florida College of Nursing, Tampa, FL, USA.

Research Associate, University of South Florida College of Nursing, Tampa, FL, USA.

出版信息

J Nurs Scholarsh. 2021 Jan;53(1):16-24. doi: 10.1111/jnu.12618. Epub 2020 Dec 21.

Abstract

PURPOSE

The main objective of this study was to utilize an artificial neural network in an exploratory fashion to predict self-management behaviors based on reported symptoms in a sample of stable patients with chronic obstructive pulmonary disease (COPD).

DESIGN AND METHODS

Patient symptom data were collected over 21 consecutive days. Symptoms included distress due to cough, chest tightness, distress due to mucus, dyspnea with activity, dyspnea at rest, and fatigue. Self-management abilities were measured and recorded periodically throughout the study period and were the dependent variable for these analyses. Self-management ability scores were broken into three equal tertiles to signify low, medium, and high self-management abilities. Data were entered into a simple artificial neural network using a three-layer model. Accuracy of the neural network model was calculated in a series of three models that respectively used 7, 14, and 21 days of symptom data as input (independent variables). Symptom data were used to determine if the model could accurately classify participants into their respective self-management ability tertiles (low, medium, or high scores). Through analysis of synaptic weights, or the strength or amplitude of a connection between variables and parts of the neural network, the most important variables in classifying self-management abilities could be illuminated and served as another outcome in this study.

FINDINGS

The artificial neural network was able to predict self-management ability with 93.8% accuracy if 21 days of symptom data were included. The neural network performed best when predicting the low and high self-management abilities but struggled in predicting those with medium scores. By analyzing the synaptic weights, the most important variables determining self-management abilities were gender, followed by chest tightness, age, cough, breathlessness during activity, fatigue, breathlessness at rest, and phlegm.

CONCLUSIONS

The results of this study suggest that self-management abilities could potentially be predicted through understanding and reporting of patient's symptoms and use of an artificial neural network. Future research is clearly needed to expand on these findings.

CLINICAL RELEVANCE

Symptom presentation in chronically ill patients directly impacts self-management behaviors. Patients with COPD experience a number of symptoms that have the potential to impact their ability to manage their chronic disease, and artificial neural networks may help clinicians identify patients at risk for poor self-management abilities.

摘要

目的

本研究的主要目的是利用人工神经网络进行探索性分析,根据稳定期慢性阻塞性肺疾病(COPD)患者的报告症状预测自我管理行为。

设计和方法

连续 21 天收集患者症状数据。症状包括咳嗽引起的不适、胸闷、咳痰引起的不适、活动时呼吸困难、休息时呼吸困难和疲劳。自我管理能力在整个研究期间定期测量和记录,是这些分析的因变量。自我管理能力评分分为三个相等的三分位数,以表示低、中、高自我管理能力。数据输入到一个简单的人工神经网络中,使用三层模型。通过三个模型计算神经网络模型的准确性,分别使用 7、14 和 21 天的症状数据作为输入(自变量)。使用症状数据确定模型是否能准确地将参与者分类到各自的自我管理能力三分位数(低、中或高评分)。通过分析突触权重,即变量和神经网络部分之间连接的强度或幅度,可阐明对分类自我管理能力最重要的变量,并作为本研究的另一个结果。

结果

如果包括 21 天的症状数据,人工神经网络能够以 93.8%的准确率预测自我管理能力。神经网络在预测低和高自我管理能力方面表现最佳,但在预测中等评分方面存在困难。通过分析突触权重,确定自我管理能力的最重要变量是性别,其次是胸闷、年龄、咳嗽、活动时呼吸困难、疲劳、休息时呼吸困难和咳痰。

结论

本研究结果表明,通过了解和报告患者症状以及使用人工神经网络,自我管理能力可能可以被预测。显然需要进一步研究来扩展这些发现。

临床意义

慢性病患者的症状表现直接影响自我管理行为。COPD 患者会出现许多可能影响其管理慢性疾病能力的症状,人工神经网络可能有助于临床医生识别自我管理能力差的患者。

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