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使用YOLOv10和迁移学习早期检测乳腺癌肺转移:一项诊断准确性研究。

Early Detection of Lung Metastases in Breast Cancer Using YOLOv10 and Transfer Learning: A Diagnostic Accuracy Study.

作者信息

Taş Hakan Gokalp, Taş Mehmet Bilge Han, Yildiz Eyyup, Aydin Sonay

机构信息

Department of Anesthesiology and Reanimation, Faculty of Medicine, Erzincan Binali Yildirim University, Erzincan, Turkey.

Department of Computer Engineering, Faculty of Engineering and Architecture, Erzincan Binali Yildirim University, Erzincan, Turkey.

出版信息

Med Sci Monit. 2025 Sep 9;31:e948195. doi: 10.12659/MSM.948195.

Abstract

BACKGROUND This study used CT imaging analyzed with deep learning techniques to assess the diagnostic accuracy of lung metastasis detection in patients with breast cancer. The aim of the research was to create and verify a system for detecting malignant and metastatic lung lesions that uses YOLOv10 and transfer learning. MATERIAL AND METHODS From January 2023 to 2024, CT scans of 16 patients with breast cancer who had confirmed lung metastases were gathered retrospectively from Erzincan Mengücek Gazi Training and Research Hospital. The YOLOv10 deep learning system was used to assess a labeled dataset of 1264 enhanced CT images. RESULTS A total of 1264 labeled images from 16 patients were included. With an accuracy of 96.4%, sensitivity of 94.1%, specificity of 97.1%, and precision of 90.3%, the ResNet-50 model performed best. The robustness of the model was shown by the remarkable area under the curve (AUC), which came in at 0.96. After dataset tuning, the GoogLeNet model's accuracy was 97.3%. These results highlight our approach's improved diagnostic capabilities over current approaches. CONCLUSIONS This study shows how YOLOv10 and transfer learning can be used to improve the diagnostic precision of pulmonary metastases in patients with breast cancer. The model's effectiveness is demonstrated by the excellent performance metrics attained, opening the door for its application in clinical situations. The suggested approach supports prompt and efficient treatment decisions by lowering radiologists; workload and improving the early diagnosis of metastatic lesions.

摘要

背景 本研究使用深度学习技术分析CT成像,以评估乳腺癌患者肺转移检测的诊断准确性。该研究的目的是创建并验证一个使用YOLOv10和迁移学习来检测肺部恶性和转移性病变的系统。

材料与方法 从2023年1月至2024年,回顾性收集了埃尔津詹·门居切克·加齐培训与研究医院16例确诊肺转移的乳腺癌患者的CT扫描图像。使用YOLOv10深度学习系统评估1264张增强CT图像的标记数据集。

结果 共纳入了16例患者的1264张标记图像。ResNet-50模型表现最佳,准确率为96.4%,灵敏度为94.1%,特异性为97.1%,精确率为90.3%。曲线下面积(AUC)为0.96,显示了该模型的稳健性。在数据集调整后,GoogLeNet模型的准确率为97.3%。这些结果突出了我们的方法相对于当前方法在诊断能力上的提高。

结论 本研究展示了如何使用YOLOv10和迁移学习来提高乳腺癌患者肺转移的诊断精度。所取得的优异性能指标证明了该模型的有效性,为其在临床中的应用打开了大门。所建议的方法通过减轻放射科医生的工作量并改善转移性病变的早期诊断,支持了迅速而有效的治疗决策。

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