CT静脉期影像组学列线图鉴别卵巢良、恶性上皮源性肿瘤的价值

    Value of CT venous phase radiomics in differentiating benign and malignant epithelial tumors of ovary

    • 摘要:
      目的 绘制基于CT静脉期影像组学列线图,探讨其在鉴别卵巢良、恶性上皮源性肿瘤中的临床价值。
      方法 回顾性收集经病理证实的卵巢上皮源性良、恶性肿瘤病人的临床资料共计221例,其中良性86例,恶性135例;按7∶ 3比例随机分为训练组(154例)及验证组(67例);在每个病人增强CT静脉期图像上手动勾画感兴趣区并提取影像组学特征,进行特征筛选并构建影像组学模型,计算影像组学标签得分Rad-score。结合临床因素及影像组学特征采用多因素logistic回归模型构建联合模型并制作列线图。通过ROC曲线、校准曲线、决策曲线分析评价联合模型的临床应用价值。
      结果 肿瘤影像提示边界不清晰、肿瘤为囊实性和实性、CA125为卵巢上皮性恶性肿瘤的独立危险因素(P < 0.05)。筛选出5个静脉期特征,诊断效能显示训练组中AUC为0.893,验证组中AUC为0.869;影像组学联合模型预测结果与病理结果具有更高的一致性。
      结论 建立基于CT静脉期影像组学特征及临床因素的联合模型并构建列线图,可直观、准确地鉴别卵巢上皮源性良、恶性肿瘤。

       

      Abstract:
      Objective To draw a radiomics nomogram based on CT venous phase imaging and explore its clinical value in distinguishing benign and malignant epithelial tumors of ovary.
      Methods A total of 221 patients with pathologically confirmed benign and malignant ovarian epithelial tumors were retrospectively collected, including 86 benign and 135 malignant cases.They were randomly divided into a training group (154 cases) and a validation group (67 cases) in a 7∶ 3 ratio.The region of interest was manually delineated on the enhanced CT venous phase images of each patient, and the radiomics features were extracted.Feature screening was performed and the radiomics model was constructed, and the radiomics label score Rad-score was calculated.Combining clinical factors and radiomics features, a multiple logistic regression model was used to construct a joint model and create a nomogram.The clinical application value of the joint model was evaluated through ROC curve, calibration curve, and decision curve analysis.
      Results Tumor imaging showed unclear boundaries, cystic and solid tumors, and CA125 was an independent risk factor for ovarian epithelial malignancy (P < 0.05).Five venous phase features were selected, and the diagnostic efficacy showed an AUC of 0.893 in the training group and 0.869 in the validation group.The prediction results of the imaging radiomics combined model had higher consistency with the pathological results.
      Conclusions Establishing a combined model based on CT venous imaging radiomics features and clinical factors, and constructing a nomogram, can intuitively and accurately distinguish between benign and malignant ovarian epithelial tumors.

       

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