Ma Bingxin, Wu Gang, Zhu Haohui, Liu Yifei, Hu Wenjia, Zhao Jing, Liu Yinlong, Liu Qiuyu
Department of Ultrasound, Henan Provincial People's Hospital, Zhengzhou, 450000, People's Republic of China.
Department of Pathology, Henan Provincial People's Hospital, Zhengzhou, 450000, People's Republic of China.
Breast Cancer (Dove Med Press). 2025 Feb 7;17:145-155. doi: 10.2147/BCTT.S483496. eCollection 2025.
The study aimed to apply an artificial intelligence (AI)-assisted scoring system, and improve the diagnostic efficiency of Sclerosing adenosis and early breast cancer.
This study retrospectively collected adenopathy patients (156 cases) and early breast cancer patients (150 cases) in Henan Provincial People's Hospital from August 2020 to April 2023.
The area under the curve of the model constructed by clinical ultrasound features and combined AI features to predict and identify the two in the training group was 0.89 and 0.94, respectively. The combined AI model with the best performance (training AUC, 0.94, 95% CI, 0.91-0.97 and validation AUC, 0.95, 95% CI, 0.90-0.99) was superior to the clinical ultrasound feature model, and the decision curve also showed that the clinical ultrasound combined with AI Nomogram had good clinical practicability. In the training group, the AUC of the sonographer and AI in differential diagnosis was 0.67(95% CI, 0.62-0.71) and 0.89(95% CI, 0.84-0.93), respectively, and the sonographer's assessment showed better sensitivity (1.00 VS 0.73), but AI showed a higher accuracy rate (0.66 VS 0.80).
Age, lesion size, burr, blood flow, and AI risk score are independent predictors of sclerosing adenosis and early breast cancer. The combined clinical ultrasound feature and AI model are correlated with AI risk score, US routine features, and clinical data, superior to the clinical ultrasound model and BI-RADS grading, and have good diagnostic performance, which can provide clinicians with a more effective diagnostic tool.
本研究旨在应用人工智能(AI)辅助评分系统,提高硬化性腺病和早期乳腺癌的诊断效率。
本研究回顾性收集了2020年8月至2023年4月在河南省人民医院就诊的腺病患者(156例)和早期乳腺癌患者(150例)。
在训练组中,由临床超声特征和联合AI特征构建的预测和鉴别这两种疾病的模型曲线下面积分别为0.89和0.94。性能最佳的联合AI模型(训练AUC为0.94,95%CI为0.91 - 0.97;验证AUC为0.95,95%CI为0.90 - 0.99)优于临床超声特征模型,决策曲线也表明临床超声联合AI列线图具有良好的临床实用性。在训练组中,超声医师和AI鉴别诊断的AUC分别为0.67(95%CI为0.62 - 0.71)和0.89(95%CI为0.84 - 0.93),超声医师的评估显示出更高的敏感性(1.00对0.73),但AI显示出更高的准确率(0.66对0.80)。
年龄、病变大小、毛刺、血流和AI风险评分是硬化性腺病和早期乳腺癌的独立预测因素。临床超声特征与AI模型相结合与AI风险评分、超声常规特征及临床数据相关,优于临床超声模型和BI-RADS分级,具有良好的诊断性能,可为临床医生提供更有效的诊断工具。