Wan Wenjia, Zhu Kai, Ran Zhicheng, Zhu Xinyu, Wang Dongmo
Ultrasound Department, Second Affiliated Hospital of Harbin Medical University, Harbin, Heilongjiang Province, China.
Radiology Department, First Affiliated Hospital of Harbin Medical University, Harbin, Heilongjiang Province, China.
Ultrasound Med Biol. 2025 Feb;51(2):262-272. doi: 10.1016/j.ultrasmedbio.2024.09.025. Epub 2024 Oct 29.
To develop a comprehensive nomogram to predict the histological grading of breast cancer and further examine its clinical significance by integrating both intra-tumoral and peri-tumoral ultrasound radiomics features.
In a retrospective study 468 female breast cancer patients were analyzed from 2017 to 2020 at the Second Affiliated Hospital of Harbin Medical University. Patients were grouped into high-grade (n = 215) and low-grade (n = 253) categories based on pathological evaluation. Tumor regions of interest were defined and expanded automatically to peri-tumor regions of interest. Ultrasound radiomics features were extracted independently. To ensure rigor, cases were randomly divided into 80% training and 20% test sets. Optimal features were selected using statistical and machine learning methods. Intra-tumor, peri-tumor, and combined radiomics models were constructed. To determine the best predictors of breast cancer histological grading, we screened the features using single- and multi-factor logistic regression analyses. Finally, a nomogram was developed and evaluated for its predictive value in this context.
By applying logistic regression, we integrated ultrasound, clinicopathologic, and radiomics features to generate a nomogram. The combined model outperformed others, achieving areas under the curve of 0.934 and 0.812 in training and test sets. Calibration curves also showed high accuracy and reliability.
A nomogram constructed through the integration of combined intra-tumor-peri-tumor ultrasound radiomics features along with clinicopathologic characteristics exhibited remarkable performance in distinguishing the histologic grades of invasive breast cancer.
通过整合肿瘤内和肿瘤周围的超声影像组学特征,开发一种综合列线图以预测乳腺癌的组织学分级,并进一步检验其临床意义。
在一项回顾性研究中,对2017年至2020年哈尔滨医科大学附属第二医院的468例女性乳腺癌患者进行分析。根据病理评估将患者分为高级别组(n = 215)和低级别组(n = 253)。定义肿瘤感兴趣区域并自动扩展至肿瘤周围感兴趣区域。独立提取超声影像组学特征。为确保严谨性,将病例随机分为80%的训练集和20%的测试集。使用统计和机器学习方法选择最佳特征。构建肿瘤内、肿瘤周围及联合影像组学模型。为确定乳腺癌组织学分级的最佳预测因素,我们通过单因素和多因素逻辑回归分析筛选特征。最后,开发列线图并评估其在这种情况下的预测价值。
通过应用逻辑回归,我们整合了超声、临床病理和影像组学特征以生成列线图。联合模型优于其他模型,在训练集和测试集中的曲线下面积分别为0.934和0.812。校准曲线也显示出高准确性和可靠性。
通过整合肿瘤内-肿瘤周围联合超声影像组学特征及临床病理特征构建的列线图在区分浸润性乳腺癌的组织学分级方面表现出色。