Fang Yu-Wei, Liu Chieh-Yu
Department of Nephrology, Shin Kong Memorial Wu Ho-Su Hospital, Taipei 111, Taiwan.
Department of Medicine, Fu-Jen Catholic University, New Taipei 242, Taiwan.
Medicina (Kaunas). 2021 Apr 1;57(4):340. doi: 10.3390/medicina57040340.
: Identifying risk factors associated with psychiatrist-confirmed anxiety and depression among young lung cancer patients is very difficult because the incidence and prevalence rates are obviously lower than in middle-aged or elderly patients. Due to the nature of these rare events, logistic regression may not successfully identify risk factors. Therefore, this study aimed to propose a novel algorithm for solving this problem. : A total of 1022 young lung cancer patients (aged 20-39 years) were selected from the National Health Insurance Research Database in Taiwan. A novel algorithm that incorporated a -means clustering method with -fold cross-validation into multiple correspondence analyses was proposed to optimally determine the risk factors associated with the depression and anxiety of young lung cancer patients. : Five clusters were optimally determined by the novel algorithm proposed in this study. : The novel Multiple Correspondence Analysis--means (MCA--means) clustering algorithm in this study successfully identified risk factors associated with anxiety and depression, which are considered rare events in young patients with lung cancer. The clinical implications of this study suggest that psychiatrists need to be involved at the early stage of initial diagnose with lung cancer for young patients and provide adequate prescriptions of antipsychotic medications for young patients with lung cancer.
识别年轻肺癌患者中与精神科医生确诊的焦虑和抑郁相关的风险因素非常困难,因为其发病率和患病率明显低于中年或老年患者。由于这些罕见事件的性质,逻辑回归可能无法成功识别风险因素。因此,本研究旨在提出一种解决该问题的新算法。
从台湾国民健康保险研究数据库中选取了1022名年轻肺癌患者(年龄在20 - 39岁之间)。提出了一种将k均值聚类方法与k折交叉验证纳入多重对应分析的新算法,以优化确定与年轻肺癌患者抑郁和焦虑相关的风险因素。
本研究提出的新算法最优地确定了五个聚类。
本研究中新颖的多重对应分析 - k均值(MCA - kmeans)聚类算法成功识别出与焦虑和抑郁相关的风险因素,这些在年轻肺癌患者中被视为罕见事件。本研究的临床意义表明,精神科医生需要在年轻肺癌患者的初始诊断早期就参与进来,并为年轻肺癌患者提供适当的抗精神病药物处方。