Bozcuk Hakan Şat, Alemdar Mustafa Serkan
Dept. of Medical Oncology, Medical Park Hospital, Antalya, Turkey.
Health Qual Life Outcomes. 2024 Aug 7;22(1):60. doi: 10.1186/s12955-024-02274-7.
Understanding the determinants of global quality of life in cancer patients is crucial for improving their overall well-being. While correlations between various factors and quality of life have been established, the causal relationships remain largely unexplored. This study aimed to identify the causal factors influencing global quality of life in cancer patients and compare them with known correlative factors.
We conducted a retrospective analysis of European Organization for Research and Treatment of Cancer Quality of Life Questionnaire data, alongside demographic and disease-related features, collected from new cancer patients during their initial visit to an oncology outpatient clinic. Correlations with global quality of life were identified using univariate and multivariate regression analyses. Causal inference analysis was performed using two approaches. First, we employed the Dowhy Python library for causal analysis, incorporating prior information and manual characterization of an acyclic graph. Second, we utilized the Linear Non-Gaussian Acyclic Model (LiNGAM) machine learning algorithm from the Lingam Python library, which automatically generated an acyclic graph without prior information. The significance level was set at p < 0.05.
Multivariate analysis of 469 new admissions revealed that disease stage, role functioning, emotional functioning, social functioning, fatigue, pain and diarrhea were linked with global quality of life. The most influential direct causal factors were emotional functioning, social functioning, and physical functioning, while the most influential indirect factors were physical functioning, emotional functioning, and fatigue. Additionally, the most prominent total causal factors were identified as type of cancer (diagnosis), cancer stage, and sex, with total causal effect ratios of -9.47, -4.67, and - 1.48, respectively. The LiNGAM algorithm identified type of cancer (diagnosis), nausea and vomiting and social functioning as significant, with total causal effect ratios of -9.47, -0.42, and 0.42, respectively.
This study identified that causal factors for global quality of life in new cancer patients are distinct from correlative factors. Understanding these causal relationships could provide valuable insights into the complex dynamics of quality of life in cancer patients and guide targeted interventions to improve their well-being.
了解癌症患者全球生活质量的决定因素对于改善他们的整体幸福感至关重要。虽然已经确定了各种因素与生活质量之间的相关性,但因果关系在很大程度上仍未得到探索。本研究旨在确定影响癌症患者全球生活质量的因果因素,并将其与已知的相关因素进行比较。
我们对欧洲癌症研究与治疗组织生活质量问卷数据进行了回顾性分析,同时收集了新癌症患者首次到肿瘤门诊就诊时的人口统计学和疾病相关特征。使用单变量和多变量回归分析确定与全球生活质量的相关性。采用两种方法进行因果推断分析。首先,我们使用Dowhy Python库进行因果分析,纳入先验信息并手动描述无环图。其次,我们使用Lingam Python库中的线性非高斯无环模型(LiNGAM)机器学习算法,该算法无需先验信息即可自动生成无环图。显著性水平设定为p < 0.05。
对469名新入院患者的多变量分析显示,疾病分期、角色功能、情绪功能、社会功能、疲劳、疼痛和腹泻与全球生活质量相关。最具影响力的直接因果因素是情绪功能、社会功能和身体功能,而最具影响力的间接因素是身体功能、情绪功能和疲劳。此外,最突出的总因果因素被确定为癌症类型(诊断)、癌症分期和性别,总因果效应比分别为-9.47、-4.67和-1.48。LiNGAM算法确定癌症类型(诊断)、恶心和呕吐以及社会功能具有显著性,总因果效应比分别为-9.47、-0.42和0.42。
本研究发现,新癌症患者全球生活质量的因果因素与相关因素不同。了解这些因果关系可为癌症患者生活质量的复杂动态提供有价值的见解,并指导有针对性的干预措施以改善他们的幸福感。