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基于血清PI3K、AKT、mTOR水平的非小细胞肺癌患者新辅助治疗疗效的预测模型构建与验证

潘锟镭 郑青秀 黄约诺 刘刚

潘锟镭, 郑青秀, 黄约诺, 刘刚. 基于血清PI3K、AKT、mTOR水平的非小细胞肺癌患者新辅助治疗疗效的预测模型构建与验证[J]. 中华全科医学, 2026, 24(3): 411-414. doi: 10.16766/j.cnki.issn.1674-4152.004408
引用本文: 潘锟镭, 郑青秀, 黄约诺, 刘刚. 基于血清PI3K、AKT、mTOR水平的非小细胞肺癌患者新辅助治疗疗效的预测模型构建与验证[J]. 中华全科医学, 2026, 24(3): 411-414. doi: 10.16766/j.cnki.issn.1674-4152.004408
PAN Kunlei, ZHENG Qingxiu, HUANG Yuenuo, LIU Gang. Construction and validation of a predictive model for the efficacy of neoadjuvant chemotherapy in patients with non-small cell lung cancer based on serum PI3K, AKT, and mTOR levels[J]. Chinese Journal of General Practice, 2026, 24(3): 411-414. doi: 10.16766/j.cnki.issn.1674-4152.004408
Citation: PAN Kunlei, ZHENG Qingxiu, HUANG Yuenuo, LIU Gang. Construction and validation of a predictive model for the efficacy of neoadjuvant chemotherapy in patients with non-small cell lung cancer based on serum PI3K, AKT, and mTOR levels[J]. Chinese Journal of General Practice, 2026, 24(3): 411-414. doi: 10.16766/j.cnki.issn.1674-4152.004408

基于血清PI3K、AKT、mTOR水平的非小细胞肺癌患者新辅助治疗疗效的预测模型构建与验证

doi: 10.16766/j.cnki.issn.1674-4152.004408
基金项目: 

浙江省中医药科技计划项目 2024ZL995

详细信息
    通讯作者:

    郑青秀,E-mail: 307445252@qq.com

  • 中图分类号: R734.2

Construction and validation of a predictive model for the efficacy of neoadjuvant chemotherapy in patients with non-small cell lung cancer based on serum PI3K, AKT, and mTOR levels

  • 摘要:   目的  非小细胞肺癌(NSCLC)新辅助治疗的疗效存在个体差异。磷脂酰肌醇-3-激酶(PI3K)/丝氨酸-苏氨酸激酶(Akt)/哺乳动物雷帕霉素靶蛋白(mTOR)通路是NSCLC发生发展的关键调节通路。本研究旨在探讨基于上述血清指标建立的预测模型效能,以指导临床治疗决策。  方法  选取2024年1月—2025年4月浙江中医药大学附属温州市中医院收治的200例NSCLC患者,以7∶3比例随机分为训练集(141例)、验证集(59例),化疗前行生化检查。采用LASSO回归筛选NSCLC患者新辅助治疗疗效相关特征变量,基于随机森林算法构建预测模型;通过ROC曲线下面积(AUC)、校准曲线及决策曲线(DCA)评估模型预测效能,并用验证集验证其稳定性。  结果  NSCLC患者新辅助治疗疗效相关变量包括肿瘤最大直径、分化程度、PI3K mRNA、AKT mRNA、mTOR mRNA、癌胚抗原(CEA)。训练集、验证集中随机森林模型的AUC分别为0.889、0.801。训练集、验证集随机森林模型的Brier得分分别为0.091、0.110。DCA曲线显示,训练集在0.10~0.76范围内高于None线,验证集在0.10~0.58范围内高于None线,训练集性能>验证集性能,符合模型验证的黄金法则。  结论  基于血清PI3K、AKT、mTOR水平建立的随机森林模型对NSCLC患者新辅助治疗疗效具有较高的预测效能,有助于辅助临床决策。

     

  • 图  1  LASSO回归系数路径图

    Figure  1.  LASSO coefficient path plot

    图  2  交叉验证误差曲线

    Figure  2.  Cross-validation error curve

    图  3  随机森林模型预测NSCLC患者新辅助治疗疗效的ROC曲线

    Figure  3.  ROC curve for predicting the efficacy of neoadjuvant therapy in NSCLC patients using the random forest model

    图  4  随机森林模型评估NSCLC患者新辅助治疗疗效的校准曲线

    Figure  4.  Calibration curve of the random forest model for evaluating the efficacy of neoadjuvant therapy in NSCLC patients

    图  5  随机森林模型评估NSCLC患者新辅助治疗疗效的DCA曲线

    Figure  5.  DCA curve of the random forest model for evaluating the efficacy of neoadjuvant therapy in NSCLC patients

    表  1  2组NSCLC患者一般资料比较

    Table  1.   Comparison of baseline characteristics between two groups of NSCLC patients

    组别 例数 性别(例) 年龄
    (x±s, 岁)
    吸烟
    (例)
    组织学分型(例) 肿瘤最大直径(例) 分化程度(例) ECOG-PS评分(例) 合并基础疾病(例) 新辅助治疗方案(例)
    男性 女性 鳞癌 腺癌 ≤3 cm >3 cm 低分化 中高分化 0~1分 2分 高血压 糖尿病 高脂血症 免疫+化疗 单纯化疗 靶向治疗
    未缓解组 96 66 30 60.09±5.83 62 76 20 21 75 56 40 43 53 28 9 17 60 18 18
    缓解组 104 70 34 59.21±5.29 65 78 26 39 65 43 61 59 45 36 12 15 79 7 18
    统计量 0.048a 1.119b 0.094a 0.489a 5.804a 5.763a 2.847a 0.681a 0.248a 0.401a 7.129a
    P 0.827 0.264 0.760 0.484 0.016 0.016 0.092 0.409 0.618 0.527 0.028
    注:a为χ2值,bt值。
    下载: 导出CSV

    表  2  2组NSCLC患者血清PI3K、AKT、mTOR mRNA及肿瘤标志物水平比较(x±s)

    Table  2.   Comparison of serum PI3K, AKT, mTOR mRNA levels and tumor marker levels between two groups of NSCLC patients (x±s)

    组别 例数 PI3K AKT mTOR CEA(μg/L) SCC(μg/L) CYFRA21-1(μg/L)
    未缓解组 96 5.62±1.76 5.31±1.50 4.17±1.51 13.32±2.05 4.48±0.89 10.61±1.96
    缓解组 104 4.49±1.82 4.33±1.58 3.30±1.32 12.10±2.14 4.19±0.92 9.98±2.02
    t 4.457 4.490 4.346 4.110 2.262 2.235
    P <0.001 <0.001 <0.001 <0.001 0.025 0.027
    下载: 导出CSV

    表  3  随机森林模型对NSCLC患者新辅助治疗未缓解的预测效能

    Table  3.   Predictive performance of the random forest model for non-response to neoadjuvant therapy in NSCLC patients

    数据集 AUC
    (95% CI)
    灵敏度
    (%)
    特异度
    (%)
    准确度
    (%)
    精确度
    (%)
    F1值
    训练集 0.889(0.825~0.936) 80.88 86.30 83.69 84.61 0.823
    验证集 0.801(0.677~0.894) 85.71 67.74 75.27 70.59 0.807
    下载: 导出CSV
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  • 收稿日期:  2025-05-23
  • 网络出版日期:  2026-06-02

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