Su Huan-Zhong, Li Zhi-Yong, Hong Long-Cheng, Wu Yu-Hui, Zhang Feng, Zhang Zuo-Bing, Zhang Xiao-Dong
Department of Ultrasound, The First Affiliated Hospital of Xiamen University, School of Medicine, Xiamen University, Xiamen, China.
Department of Ultrasound, Fujian Medical University Union Hospital, Fuzhou, China.
Insights Imaging. 2025 May 8;16(1):96. doi: 10.1186/s13244-025-01974-y.
To develop and validate machine learning (ML) models for diagnosing salivary gland adenoid cystic carcinoma (ACC) in the salivary glands based on clinical and ultrasound features.
A total of 365 patients with ACC or non-ACC of the salivary glands treated at two centers were enrolled in training cohort, internal and external validation cohorts. Synthetic minority oversampling technique was used to address the class imbalance. The least absolute shrinkage and selection operator (LASSO) regression identified optimal features, which were subsequently utilized to construct predictive models employing five ML algorithms. The performance of the models was evaluated across a comprehensive array of learning metrics, prominently the area under the receiver operating characteristic curve (AUC).
Through LASSO regression analysis, six key features-sex, pain symptoms, number, cystic areas, rat tail sign, and polar vessel-were identified and subsequently utilized to develop five ML models. Among these models, the support vector machine (SVM) model demonstrated superior performance, achieving the highest AUCs of 0.899 and 0.913, accuracy of 90.54% and 91.53%, and F1 scores of 0.774 and 0.783 in both the internal and external validation cohorts, respectively. Decision curve analysis further revealed that the SVM model offered enhanced clinical utility compared to the other models.
The ML model based on clinical and US features provide an accurate and noninvasive method for distinguishing ACC from non-ACC.
This machine learning model, constructed based on clinical and ultrasound characteristics, serves as a valuable tool for the identification of salivary gland adenoid cystic carcinoma.
Rat tail sign and polar vessel on US predict adenoid cystic carcinoma (ACC). Machine learning models based on clinical and US features can identify ACC. The support vector machine model performed robustly and accurately.
基于临床和超声特征开发并验证用于诊断涎腺腺样囊性癌(ACC)的机器学习(ML)模型。
在两个中心接受治疗的365例涎腺ACC或非ACC患者被纳入训练队列、内部和外部验证队列。采用合成少数过采样技术解决类别不平衡问题。最小绝对收缩和选择算子(LASSO)回归确定了最佳特征,随后利用这些特征构建采用五种ML算法的预测模型。通过一系列综合学习指标对模型性能进行评估,主要是受试者工作特征曲线下面积(AUC)。
通过LASSO回归分析,确定了六个关键特征——性别、疼痛症状、数量、囊性区域、鼠尾征和极向血管——随后用于开发五个ML模型。在这些模型中,支持向量机(SVM)模型表现出卓越性能,在内部和外部验证队列中分别实现了最高AUC值0.899和0.913、准确率90.54%和91.53%以及F1分数0.774和0.783。决策曲线分析进一步表明,与其他模型相比,SVM模型具有更高的临床实用性。
基于临床和超声特征的ML模型为区分ACC与非ACC提供了一种准确且无创的方法。
该基于临床和超声特征构建的机器学习模型是识别涎腺腺样囊性癌的有价值工具。
超声上的鼠尾征和极向血管可预测腺样囊性癌(ACC)。基于临床和超声特征的机器学习模型可识别ACC。支持向量机模型表现稳健且准确。