Diagnosis of Benign and Malignant Newly Developed Nodules on the Surgical Side After Breast Cancer Surgery Based on Machine Learning

IF 2 4区 医学 Q3 OBSTETRICS & GYNECOLOGY Breast Journal Pub Date : 2025-02-17 DOI:10.1155/tbj/8511049
Zhixiang Wang, Qingqing Li, Yiran Wang, Linxue Qian, Xiangdong Hu, Dong Liu
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Abstract

Objective: To enhance the diagnostic accuracy of new nodules on the surgical side after breast cancer surgery using machine learning techniques and to explore the role of multifeature fusion.

Methods: Data from 137 breast cancer postoperative patients with new nodules from January 2016 to April 2024 were analyzed. Clinical, ultrasound, immunohistochemistry, and surgical features were combined. Multiple machine learning models, including support vector machine (SVM), random forest, gradient boosting, AdaBoost, and XGBoost, were trained and tested. Model performance was evaluated using stratified ten-fold cross-validation. Ablation experiments assessed the impact of different feature combinations on diagnostic performance.

Results: The SVM model performed best, with an AUC of 0.8664, an accuracy of 0.8099, a sensitivity of 0.565, and a specificity of 0.9267. Ablation experiments indicated that multifeature fusion significantly improved diagnostic performance, especially when combining clinical, ultrasound, immunohistochemistry, and surgical features. Gradient boosting and random forest models showed slightly inferior performance, while AdaBoost had balanced but lower effectiveness.

Conclusion: Machine learning, particularly the multifeature fusion SVM model, shows significant potential in diagnosing new nodules after breast cancer surgery. It can assist doctors in developing more effective treatment plans, improving patient outcomes. Future studies should expand sample sizes, include multicenter data, and explore advanced algorithms to further enhance diagnostic performance.

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基于机器学习的乳腺癌手术侧新发良恶性结节诊断
目的:利用机器学习技术提高乳腺癌术后手术侧新发结节的诊断准确性,探讨多特征融合在诊断中的作用。方法:对2016年1月至2024年4月137例乳腺癌术后新发结节患者的资料进行分析。结合临床、超声、免疫组织化学和手术特征。对支持向量机(SVM)、随机森林、梯度增强、AdaBoost、XGBoost等多个机器学习模型进行了训练和测试。采用分层十倍交叉验证评估模型性能。消融实验评估了不同特征组合对诊断性能的影响。结果:SVM模型最优,AUC为0.8664,准确率为0.8099,灵敏度为0.565,特异性为0.9267。消融实验表明,多特征融合显著提高了诊断性能,特别是当结合临床、超声、免疫组织化学和外科特征时。梯度增强模型和随机森林模型的性能略差,而AdaBoost模型的效果平衡但较低。结论:机器学习,特别是多特征融合SVM模型在乳腺癌术后新结节诊断中具有显著潜力。它可以帮助医生制定更有效的治疗计划,改善患者的治疗效果。未来的研究应扩大样本量,包括多中心数据,并探索先进的算法,以进一步提高诊断性能。
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来源期刊
Breast Journal
Breast Journal 医学-妇产科学
CiteScore
4.00
自引率
0.00%
发文量
47
审稿时长
4-8 weeks
期刊介绍: The Breast Journal is the first comprehensive, multidisciplinary source devoted exclusively to all facets of research, diagnosis, and treatment of breast disease. The Breast Journal encompasses the latest news and technologies from the many medical specialties concerned with breast disease care in order to address the disease within the context of an integrated breast health care. This editorial philosophy recognizes the special social, sexual, and psychological considerations that distinguish cancer, and breast cancer in particular, from other serious diseases. Topics specifically within the scope of The Breast Journal include: Risk Factors Prevention Early Detection Diagnosis and Therapy Psychological Issues Quality of Life Biology of Breast Cancer.
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