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运用潜在剖面分析和症状网络识别中国乳腺癌患者自我倡导的异质性。

Identifying the heterogeneity of self-advocacy in Chinese patients with breast cancer using latent profile analysis and symptom networks.

作者信息

Teng Liping, Dong Yajun, Yang Yiting, Zhou Zhou, Sun Jun, Wang Teng

机构信息

Wuxi School of Medicine, Jiangnan University, Wuxi, Jiangsu, China.

Department of Oncology, Affiliated Hospital of Jiangnan University, Wuxi, Jiangsu, China.

出版信息

Asia Pac J Oncol Nurs. 2024 Dec 24;12:100648. doi: 10.1016/j.apjon.2024.100648. eCollection 2025 Dec.

Abstract

OBJECTIVE

This study aims to identify subgroups of self-advocacy in patients with breast cancer, assess the heterogeneity among different subgroups, and further delineate symptom networks within each subgroup.

METHODS

A cross-sectional survey was conducted among 320 patients with breast cancer in Wuxi, China, from September 2023 to March 2024, who completed questionnaires about their demographic and clinical characteristics, the M.D. Anderson Symptom Inventory, and the Female Self Advocacy in Cancer Survivorship scale. Latent profile analysis was conducted to identify subgroups of self-advocacy. Multinomial logistic regression was employed to reveal the heterogeneity of each subgroup in demographics and clinical characteristics. Network analysis was performed to unveil the network structure of clinical symptoms within each subgroup.

RESULTS

Three subgroups were identified: "Profile 1: low self-advocacy", "Profile 2: moderate self-advocacy", and "Profile 3: high self-advocacy". Compared with patients in Profile 3, those in Profile 1 and Profile 2 showed a higher tendency to have more severe symptoms. Network analysis further revealed that "lack of appetite" emerged as the core symptom in Profile 1, while the core symptom in Profile 2 and Profile 3 was "distress".

CONCLUSIONS

Patients in different subgroups manifest individualized self-advocacy. The severity of clinical symptoms might serve as an important risk factor for those with low levels of self-advocacy. Conducting symptom networks of diverse subgroups can facilitate tailored symptom management by focusing on core symptoms, thereby enhancing the effectiveness of interventions and improving patients' self-advocacy and overall quality of life.

摘要

目的

本研究旨在识别乳腺癌患者自我倡导的亚组,评估不同亚组之间的异质性,并进一步描绘每个亚组内的症状网络。

方法

于2023年9月至2024年3月在中国无锡对320例乳腺癌患者进行了横断面调查,这些患者完成了关于其人口统计学和临床特征、MD安德森症状量表以及癌症幸存者女性自我倡导量表的问卷调查。采用潜在剖面分析来识别自我倡导的亚组。采用多项逻辑回归来揭示各亚组在人口统计学和临床特征方面的异质性。进行网络分析以揭示每个亚组内临床症状的网络结构。

结果

识别出三个亚组:“剖面1:低自我倡导”、“剖面2:中等自我倡导”和“剖面3:高自我倡导”。与剖面3的患者相比,剖面1和剖面2的患者出现更严重症状的倾向更高。网络分析进一步显示,“食欲不振”是剖面1中的核心症状,而剖面2和剖面3中的核心症状是“苦恼”。

结论

不同亚组的患者表现出个性化的自我倡导。临床症状的严重程度可能是自我倡导水平较低患者的一个重要危险因素。开展不同亚组的症状网络研究可以通过关注核心症状来促进针对性的症状管理,从而提高干预效果,提升患者的自我倡导能力和总体生活质量。

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