Centre for Vision, Speech and Signal Processing (CVSSP), University of Surrey, Guildford, UK.
UK Dementia Research Institute Care Research and Technology Centre, Imperial College London, London, UK.
Sci Rep. 2022 Oct 12;12(1):17052. doi: 10.1038/s41598-022-21140-4.
Oncology patients experience numerous co-occurring symptoms during their treatment. The identification of sentinel/core symptoms is a vital prerequisite for therapeutic interventions. In this study, using Network Analysis, we investigated the inter-relationships among 38 common symptoms over time (i.e., a total of six time points over two cycles of chemotherapy) in 987 oncology patients with four different types of cancer (i.e., breast, gastrointestinal, gynaecological, and lung). In addition, we evaluated the associations between and among symptoms and symptoms clusters and examined the strength of these interactions over time. Eight unique symptom clusters were identified within the networks. Findings from this research suggest that changes occur in the relationships and interconnections between and among co-occurring symptoms and symptoms clusters that depend on the time point in the chemotherapy cycle and the type of cancer. The evaluation of the centrality measures provides new insights into the relative importance of individual symptoms within various networks that can be considered as potential targets for symptom management interventions.
肿瘤患者在治疗过程中会经历许多同时发生的症状。识别标志性/核心症状是治疗干预的重要前提。在这项研究中,我们使用网络分析,调查了 987 名患有四种不同癌症(即乳腺癌、胃肠道癌、妇科癌和肺癌)的肿瘤患者在两个化疗周期的六个时间点(共 38 个常见症状)随时间变化的 38 个常见症状之间的相互关系。此外,我们评估了症状和症状群之间以及症状群内部的关联,并检查了这些相互作用随时间的强度。在网络中确定了八个独特的症状群。本研究的结果表明,在化疗周期的时间点和癌症类型的影响下,同时发生的症状和症状群之间以及相互之间的关系和相互联系会发生变化。对中心度测量值的评估为各个网络中个体症状的相对重要性提供了新的见解,这些症状可以被视为症状管理干预的潜在目标。