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1. 国家癌症中心 / 国家肿瘤临床医学研究中心 / 中国医学科学院北京协和医学院肿瘤医院深圳医院放 射诊断科,广东,深圳,518116
2. 慧影医疗科技(北京)有限公司,北京,100089
3. 国家癌症中心 / 国家肿瘤临床医学研究中心 / 中国医学科学院北京协和医学院肿瘤医院放射科,北 京,100021
网络出版:2022-02-28,
纸质出版:2022-02-28
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王猛,刘周,文洁,等. 基于T2WI-FS的影像组学特征在术前预测乳腺癌腋窝淋巴结转移中的价值[J]. 肿瘤影像学, 2022, 31(1): 28-35 https://doi.
org/10.19732/j.cnki.2096-6210.2022.01.006
王猛,刘周,文洁,等. 基于T2WI-FS的影像组学特征在术前预测乳腺癌腋窝淋巴结转移中的价值[J]. 肿瘤影像学, 2022, 31(1): 28-35 https://doi. DOI: 10.19732/j.cnki.2096-6210.2022.01.006.
org/10.19732/j.cnki.2096-6210.2022.01.006 DOI:
目的:
探讨基于T2加权成像压脂序列(T2-weighted imaging fat suppression,T2WI-FS)图像的影像组学特征所构建机器学习模型在术前预测乳腺癌患者腋窝淋巴结(axillary lymph nodes,ALN)转移中的价值。
方法:
回顾并分析经病理学检查证实的乳腺癌患者68例,共171枚ALN(转移101枚,非转移70枚)。在T2WI-FS图像上勾画每个目标淋巴结的三维容积感兴趣区(volume of interest,VOI),并提取一阶统计量特征、几何形状及纹理特征等影像组学特征。随机将两组ALN分为训练集和验证集(8∶2),采用K最佳和最小绝对收缩和选择算子(the least absolute shrinkage and selection operator,LASSO)算法对训练集特征降维以筛选出关键特征,最后建立基于K近邻(K-nearest neighbor,KNN)、支持向量机(support vector machine,SVM)和逻辑回归(logistic regression,LR)3种分类器的机器学习模型。采用受试者工作特征(receiver operating characteristic,ROC)曲线分析方法在验证集中评价3种预测模型的ROC曲线的曲线下面积(area under curve,AUC)、灵敏度和特异度,并用精准度、召回率和F1值评价模型的预测效能,并采用DeLong法比较不同预测模型的诊断效能。
结果:
基于每个VOI提取107个影像组学特征,通过降维处理后最终获取6个最佳特征进行模型构建。这6个特征包括1个形态学特征(表面积体积比)和5个纹理特征(依赖熵、游程熵、归一化依赖不均匀性、游程比及大区域的高灰度值优势)。在基于6个最佳特征通过3个分类器所构建的乳腺癌ALN转移预测模型中,LR、KNN和SVM模型的AUC分别为0.88、0.86和0.86,DeLong检验显示差异均无统计学意义(
P
>0.05),LR模型的效能可能稍高,在测试集中LR模型的灵敏度、特异度、精准度、召回率和F1值分别为0.86、0.86、0.80、0.86和0.83。
结论:
基于淋巴结T2WI-FS图像的影像组学特征可在术前预测乳腺癌ALN转移的基础上提供额外有价值的信息。
Objective:
To evaluate the diagnostic performance of a machine learning model based on radiomics features extracted from T2-weighted imaging fat suppression (T2WI-FS) images in preoperatively predicting metastasis of axillary lymph nodes (ALN)in breast cancer patients.
Methods:
In this retrospective study
68 pathologically confirmed breast cancer patients with 171 ALNs (101 metastatic ALN and 70 non-metastatic ALN) were enrolled
the metastatic status of which were confirmed by histopathology. Based on the manually segmented three-dimensional volumes of interest (VOI) on the T2WI-FS images of selected lymph nodes
107 radiomics features
including first-order statistics
shape- and size-based features
texture features were extracted. Using hold- out cross-validation scheme (8∶2)
F-test based select K best and the least absolute shrinkage and selection operator (LASSO) algorithms were applied to reduce features redundancy. The K-nearest neighbor (KNN)
support vector machine (SVM) and logistic regression (LR) classifiers were respectively implemented to build the prediction model. The performance was evaluated by receive operative characteristic (ROC) curves analysis with sensitivity
specificity
and precision
recall
F1-score calculated for each model
and the DeLong test was used to compare the diagnostic efficacy of different prediction models.
Results:
For each VOI
a total of 107 radiomics features were extracted. Among the 107 extracted quantitative radiomics features
6 most informative features were eventually selected for model construction
including one morphological feature (surface volume ratio) and five textural features (dependence entropy
run entropy
dependence non uniformity normalized
run percentage
large area high gray level emphasis). AUC values of LR
KNN and SVM models were 0.88
0.86 and 0.86
respectively. DeLong test showed that all differences were not statistically significant (
P
>0.05). The efficiency o
f LR model might be slightly higher. The sensitivity
specificity
accuracy
recall rate and F1 values of the LR model in the test set were 0.86
0.86
0.80
0.86 and 0.83
respectively.
Conclusions:
Radiomics features extracted from lymph nodes based on T2WI-FS images can provide extra valuable information to preoperatively evaluate ALN metastatic status in patients with breast cancer.
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