实用肿瘤学杂志 ›› 2025, Vol. 39 ›› Issue (6): 471-477.doi: 10.11904/j.issn.1002-3070.2025.06.003

• 治疗质量专题 • 上一篇    下一篇

基于IDA的结直肠癌不良结局影响因素的因果效应分析

白山奇1, 刘美娜1, 宋莉2   

  1. 1.哈尔滨医科大学公共卫生学院卫生统计学教研室(哈尔滨 150081);
    2.黑龙江省中毒抢救治疗中心
  • 收稿日期:2025-02-11 修回日期:2025-11-13 出版日期:2025-12-28 发布日期:2026-01-13
  • 通讯作者: 宋莉,E-mail:ss9216@163.com
  • 作者简介:白山奇,男,(2000—),硕士研究生,从事疾病治疗质量及因果推断研究。
  • 基金资助:
    国家自然科学基金(编号:82173614)

Causal effect analysis of factors influencing adverse outcomes in colorectal cancer based on IDA

BAI Shanqi1, LIU Meina1, SONG Li2   

  1. 1. Department of Biostatistics,Public Health College of Harbin Medical University,Harbin 150081,China;
    2. Heilongjiang Provincial Center for Poisoning Treatment and Rescue
  • Received:2025-02-11 Revised:2025-11-13 Online:2025-12-28 Published:2026-01-13

摘要: 目的 识别结直肠癌患者治疗后不良结局的直接与间接影响因素,并探讨这些因素与不良结局之间的因果效应,为改善患者不良结局提供依据。方法 收集2013年至2015年在哈尔滨医科大学附属肿瘤医院入院并确诊为结直肠癌的患者病例信息,将治疗后两年内发生死亡、转移或复发定义为不良结局。以快速等价贪婪搜索算法构建因果图模型并分析不良结局的直接与间接影响因素,在此基础上采用无因果图时的干预演算(intervention calculus when the directed acyclic graph is absent,IDA)算法评估影响因素对不良结局的因果效应。结果 共纳入2 332例患者,平均年龄(68.0±10.9)岁,不良结局发生率6.22%。因果图包含20个节点、36条边;不良结局发生的直接影响因素包括化疗、病理类型、手术治疗及住院天数(|IDA|分别为0.039、0.059、0.255、0.054);间接影响因素包括年龄、饮酒、身体质量指数、分化程度、放疗、手术性质(|IDA|分别为0.011、0.021、0.012、0.042、0.021、0.030)。结论 在因果图识别结直肠癌不良结局的关键因素基础上,IDA算法可量化影响因素对不良结局的因果效应。研究提示在结直肠癌的临床治疗中,提高无手术、化疗禁忌症患者的手术及化疗接受率可降低不良结局发生率,从而改善预后。

关键词: 结直肠癌, 因果图模型, 快速等价贪婪搜索算法, 无因果图时的干预演算算法, 因果效应

Abstract: Objective The aim of this study was to identify the direct and indirect factors influencing adverse outcomes in patients with colorectal cancer after treatment,and to explore the causal effects of these factors on adverse outcomes,providing a basis for improving patient prognosis. Methods Medical record information of patients admitted to Harbin Medical University Cancer Hospital and diagnosed with colorectal cancer from 2013 to 2015 was collected.Adverse outcomes were defined as death,metastasis,or recurrence within two years after treatment.The fast greedy equivalence search algorithm was used to construct a causal graphical model and analyze the direct and indirect factors influencing adverse outcomes.Based on this,the intervention calculus when the directed acyclic graph is absent(IDA)algorithm was employed to evaluate the causal effects of these factors on adverse outcomes. Results A total of 2,332 patients were included,with an average age of(68.0±10.9)years and an adverse outcome incidence of 6.22%.The causal graph contained 20 nodes and 36 edges.The direct factors influencing adverse outcomes included chemotherapy,pathological type,surgical treatment,and length of hospital stay(|IDA| values were 0.039,0.059,0.255,and 0.054,respectively).The indirect influencing factors included age,alcohol consumption,body mass index,differentiation degree,radiotherapy,and surgery nature(|IDA| values were 0.011,0.021,0.012,0.042,0.021,and 0.030,respectively). Conclusions Based on identifying key factors influencing adverse outcomes in colorectal cancer through the causal graph,the IDA algorithm can quantify the causal effects of influencing factors on adverse outcomes.The study suggests that in the clinical treatment of colorectal cancer,increasing the acceptance rate of surgery and chemotherapy in patients without surgical or chemotherapy contraindications can reduce the incidence of adverse outcomes and thereby improve prognosis.

Key words: colorectal cancer, causal diagram model, fast greedy equivalence search algorithm, intervention calculus algorithm without causal graph, causal effect

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