乳腺癌和前列腺癌癌症患者使用以心理健康为中心的电子健康系统的预测因素:前瞻性研究的贝叶斯结构方程建模分析。

IF 3.3 Q2 ONCOLOGY JMIR Cancer Pub Date : 2023-09-12 DOI:10.2196/49775
Nuhamin Gebrewold Petros, Jesper Alvarsson-Hjort, Gergö Hadlaczky, Danuta Wasserman, Manuel Ottaviano, Sergio Gonzalez-Martinez, Sara Carletto, Enzo Pasquale Scilingo, Gaetano Valenza, Vladimir Carli
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引用次数: 0

摘要

背景:电子健康系统已越来越多地用于管理躯体疾病患者的抑郁症状。然而,了解推动其使用的因素,特别是在癌症乳腺癌和前列腺癌患者中,仍然是一个关键的研究领域。目的:本研究旨在确定影响12周内癌症和前列腺癌患者使用NEVERMIND eHealth系统的因素,重点是技术接受模型。在基线时,参与者分别使用Beck抑郁量表II和抑郁、焦虑和压力量表-21完成了详细描述人口统计数据的问卷调查,并测量了抑郁和压力症状。在12周的时间里,患者使用NEVERMIND系统,在4周和12周后进行随访问卷调查,评估该系统的易用性和有用性。在第2周和第12周收集使用日志数据。在路径分析中,使用贝叶斯结构方程模型检查了不同阶段的性别、教育、基线抑郁和压力症状、感知易用性、感知有用性(PU)和系统使用之间的关系,该技术不同于传统的频率学家方法。结果:对100例癌症和前列腺癌患者进行了通径分析,其中66%(n=66)为女性,81%(n=81)具有大学文化程度。患者的心理健康评分良好,基线时抑郁和压力水平较低。系统使用在最初的2周内约为6天,在12周的研究期间约为45天。结果显示,PU是12周时系统使用的最强预测因子(12周时的β使用由PU在12周时预测=.384),而2周时的系统使用适度预测12周时(12周的β使用通过在2周时使用预测=.239)。值得注意的是,基线变量(教育、性别和心理健康症状)与2周时的系统使用之间存在不确定的关联,这表明需要更好的早期系统使用预测因素。结论:本研究强调了PU和早期参与患者参与电子健康系统(如NEVERMIND)的重要性。这表明,在一般的电子健康实施中,护理人员应教育患者了解此类系统的好处和功能,从而增强他们对潜在健康影响的理解。鉴于资源对持续使用的影响,集中资源促进早期参与也至关重要。有必要进行进一步的研究,以澄清剩余的不确定性,使我们能够完善我们的战略,并在医疗保健环境中最大限度地利用电子健康系统。
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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Predictors of the Use of a Mental Health-Focused eHealth System in Patients With Breast and Prostate Cancer: Bayesian Structural Equation Modeling Analysis of a Prospective Study.

Background: eHealth systems have been increasingly used to manage depressive symptoms in patients with somatic illnesses. However, understanding the factors that drive their use, particularly among patients with breast and prostate cancer, remains a critical area of research.

Objective: This study aimed to determine the factors influencing use of the NEVERMIND eHealth system among patients with breast and prostate cancer over 12 weeks, with a focus on the Technology Acceptance Model.

Methods: Data from the NEVERMIND trial, which included 129 patients with breast and prostate cancer, were retrieved. At baseline, participants completed questionnaires detailing demographic data and measuring depressive and stress symptoms using the Beck Depression Inventory-II and the Depression, Anxiety, and Stress Scale-21, respectively. Over a 12-week period, patients engaged with the NEVERMIND system, with follow-up questionnaires administered at 4 weeks and after 12 weeks assessing the system's perceived ease of use and usefulness. Use log data were collected at the 2- and 12-week marks. The relationships among sex, education, baseline depressive and stress symptoms, perceived ease of use, perceived usefulness (PU), and system use at various stages were examined using Bayesian structural equation modeling in a path analysis, a technique that differs from traditional frequentist methods.

Results: The path analysis was conducted among 100 patients with breast and prostate cancer, with 66% (n=66) being female and 81% (n=81) having a college education. Patients reported good mental health scores, with low levels of depression and stress at baseline. System use was approximately 6 days in the initial 2 weeks and 45 days over the 12-week study period. The results revealed that PU was the strongest predictor of system use at 12 weeks (βuse at 12 weeks is predicted by PU at 12 weeks=.384), whereas system use at 2 weeks moderately predicted system use at 12 weeks (βuse at 12 weeks is predicted by use at 2 weeks=.239). Notably, there were uncertain associations between baseline variables (education, sex, and mental health symptoms) and system use at 2 weeks, indicating a need for better predictors for early system use.

Conclusions: This study underscores the importance of PU and early engagement in patient engagement with eHealth systems such as NEVERMIND. This suggests that, in general eHealth implementations, caregivers should educate patients about the benefits and functionalities of such systems, thus enhancing their understanding of potential health impacts. Concentrating resources on promoting early engagement is also essential given its influence on sustained use. Further research is necessary to clarify the remaining uncertainties, enabling us to refine our strategies and maximize the benefits of eHealth systems in health care settings.

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来源期刊
JMIR Cancer
JMIR Cancer ONCOLOGY-
CiteScore
4.10
自引率
0.00%
发文量
64
审稿时长
12 weeks
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