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基于多序列MRI影像组学预测早期宫颈癌淋巴血管侵犯的研究

王海波 崔薇 杨玮丽

王海波, 崔薇, 杨玮丽. 基于多序列MRI影像组学预测早期宫颈癌淋巴血管侵犯的研究[J]. 中华全科医学, 2021, 19(12): 2088-2092. doi: 10.16766/j.cnki.issn.1674-4152.002244
引用本文: 王海波, 崔薇, 杨玮丽. 基于多序列MRI影像组学预测早期宫颈癌淋巴血管侵犯的研究[J]. 中华全科医学, 2021, 19(12): 2088-2092. doi: 10.16766/j.cnki.issn.1674-4152.002244
WANG Hai-bo, CUI Wei, YANG Wei-li. Multi-sequence MRI-based radiomics predicting lymph-vascular space invasion in early-stage cervical cancer[J]. Chinese Journal of General Practice, 2021, 19(12): 2088-2092. doi: 10.16766/j.cnki.issn.1674-4152.002244
Citation: WANG Hai-bo, CUI Wei, YANG Wei-li. Multi-sequence MRI-based radiomics predicting lymph-vascular space invasion in early-stage cervical cancer[J]. Chinese Journal of General Practice, 2021, 19(12): 2088-2092. doi: 10.16766/j.cnki.issn.1674-4152.002244

基于多序列MRI影像组学预测早期宫颈癌淋巴血管侵犯的研究

doi: 10.16766/j.cnki.issn.1674-4152.002244
基金项目: 

浙江省医药卫生科技计划项目 2019RC274

详细信息
    通讯作者:

    王海波,E-mail: wang800080@163.com

  • 中图分类号: R737.33R445.2

Multi-sequence MRI-based radiomics predicting lymph-vascular space invasion in early-stage cervical cancer

  • 摘要:   目的  探索基于多序列MRI图像的影像组学方法在预测早期宫颈癌淋巴血管侵犯(LVSI)中的临床价值。  方法  选取2015年1月—2020年2月宁波大学附属人民医院收治经病理证实的早期宫颈癌患者134例,分层抽样选取训练组91例,验证组43例,术前均行MRI平扫、对比增强(CE-MRI)及弥散成像(DWI)检查。在T2WI-FS、CE-MRI及DWI序列图像上分别勾画肿瘤感兴趣区,采用LASSO回归及诺模图法提取影像组学特征并建立预测模型,训练组进行特征选择分类及模型建立,验证组对构建的预测模型进行验证,分析基于MRI各序列影像组学模型对早期宫颈癌LVSI的预测效能。  结果  采用LASSO回归在早期宫颈癌患者的T2WI-FS、CE-MRI和DWI序列影像中分别提取具有预测意义的宫颈癌LVSI的影像组学特征,WavEnLH_s-4、Horzl_LngREmph在各序列中均被筛选出。通过logistics回归模型分别构建的不同序列MRI的影像组学模型对早期宫颈癌LVSI诊断效能均较高,T2WI-FS、CE-MRI及DWI在训练组的AUC分别为0.810、0.803和0.781,在验证组的AUC分别为0.785、0.761和0.752。使用诺模图法构建的多序列MRI影像组学在训练组的AUC为0.893,在验证组的AUC为0.859。  结论  通过诺模图法构建的基于T2WI-FS、CE-MRI及DWI序列影像组学模型作为一种客观的影像分析方法,对早期宫颈癌LVSI具有较高的预测效能并具有一定临床应用价值。

     

  • 图  1  宫颈癌ROI选取示意图

    注:A~C分别示轴位T2WI-FS、矢状位T1WI增强及轴位DWI序列图像中宫颈癌病变区域的ROI选取。

    图  2  宫颈癌ROI影像组学特征参数提取

    注:A~C分别示于轴位T2WI-FS、矢状位T1WI增强及轴位DWI序列图像对宫颈癌ROI所提取的影像组学特征参数示意。

    表  1  2组早期宫颈癌患者临床特征比较

    组别 例数 年龄(x±s, 岁) FIGO分期[例(%)] 病理类型[例(%)] LVSI[例(%)]
    Ⅰa Ⅰb Ⅱa 腺癌 鳞癌 腺鳞癌 小细胞癌 其他癌
    训练组 91 52.6±14.2 25(27.5) 34(37.4) 32(35.1) 44(48.3) 24(26.4) 13(14.3) 5(5.5) 5(5.5) 53(58.2) 38(41.7)
    验证组 43 50.3±12.3 10(23.2) 18(41.9) 15(34.9) 19(44.2) 12(27.9) 5(11.6) 4(9.3) 3(7.0) 26(60.5) 17(39.5)
    统计量 0.926a 0.352b 1.277b 0.060b
    P 0.356 0.839 0.888 0.852
    注:at值,bχ2值。
    下载: 导出CSV

    表  2  T2WI-FS、CE-MRI及DWI序列LASSO降维后提取的纹理特征参数

    检查方法 纹理特征参数
    T2WI-FS S(1, 0)SumOfSqs;S(3, -3)SumEntrp;S(1, -1)DifVarnc;WavEnLH_s-4;Vertl_RLNonUni;Teta1;135dr_GLevNonU;45dgr_RLNonUni;Horzl_LngREmph;S(4, -4)DifVarnc
    CE-MRI Teta3;S(5, 0)InvDfMom;45dgr_RLNonUni;WavEnLL_s-4;S(4, 4)Entropy;Horzl_LngREmph;S(0, 3)DifVarnc;S(2, -2)SumVarnc;S(2, 0)InvDfMom;WavEnHL_s-5
    DWI Teta4;S(3, -3)Entropy;WavEnLL_s-4;S(2, 2)DifEntrp;S(1, -1)DifVarnc;S(0, 1)SumOfSqs;135dr_RLNonUni;Sigma;Vertl_RLNonUni;Horzl_LngREmph
    下载: 导出CSV

    表  3  各序列MRI影像组学预测宫颈癌LVSI的效能

    组别 T2WI-FS CE-MRI
    AUC(95% CI) 准确率(%) 灵敏度(%) 特异度(%) AUC(95% CI) 准确率(%) 灵敏度(%) 特异度(%)
    训练组 0.810(0.667~0.894) 82.8 83.3 80.9 0.803(0.716~0.899) 82.3 82.7 81.7
    验证组 0.785(0.623~0.870) 79.1 81.4 77.4 0.761(0.643~0.852) 75.1 78.7 76.5
    组别 DWI 多序列诺模图
    AUC(95% CI) 准确率(%) 灵敏度(%) 特异度(%) AUC(95% CI) 准确率(%) 灵敏度(%) 特异度(%)
    训练组 0.781(0.671~0.880) 78.2 77.6 73.8 0.893(0.799~0.997) 91.1 91.8 88.9
    验证组 0.752(0.631~0.832) 72.0 74.5 70.7 0.859(0.741~0.930) 86.2 87.8 85.1
    下载: 导出CSV
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  • 收稿日期:  2021-04-13
  • 网络出版日期:  2022-03-02

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