Struttura Semplice Dipartimentale Di Fisica Sanitaria, I.R.C.C.S. Istituto Tumori "Giovanni Paolo II", Viale Orazio Flacco 65, 70124, Bari, Italy.
Unità Operativa Complessa Di Oncologia Medica, I.R.C.C.S. Istituto Tumori "Giovanni Paolo II", Viale Orazio Flacco 65, 70124, Bari, Italy.
Sci Rep. 2022 May 12;12(1):7914. doi: 10.1038/s41598-022-11876-4.
In breast cancer patients, an accurate detection of the axillary lymph node metastasis status is essential for reducing distant metastasis occurrence probabilities. In case of patients resulted negative at both clinical and instrumental examination, the nodal status is commonly evaluated performing the sentinel lymph-node biopsy, that is a time-consuming and expensive intraoperative procedure for the sentinel lymph-node (SLN) status assessment. The aim of this study was to predict the nodal status of 142 clinically negative breast cancer patients by means of both clinical and radiomic features extracted from primary breast tumor ultrasound images acquired at diagnosis. First, different regions of interest (ROIs) were segmented and a radiomic analysis was performed on each ROI. Then, clinical and radiomic features were evaluated separately developing two different machine learning models based on an SVM classifier. Finally, their predictive power was estimated jointly implementing a soft voting technique. The experimental results showed that the model obtained by combining clinical and radiomic features provided the best performances, achieving an AUC value of 88.6%, an accuracy of 82.1%, a sensitivity of 100% and a specificity of 78.2%. The proposed model represents a promising non-invasive procedure for the SLN status prediction in clinically negative patients.
在乳腺癌患者中,准确检测腋窝淋巴结转移状态对于降低远处转移发生的概率至关重要。对于临床和仪器检查均为阴性的患者,通常通过前哨淋巴结活检来评估淋巴结状态,这是一种对前哨淋巴结 (SLN) 状态评估耗时且昂贵的术中程序。本研究旨在通过从诊断时获得的原发性乳腺癌超声图像中提取的临床和放射组学特征来预测 142 例临床阴性乳腺癌患者的淋巴结状态。首先,对不同的感兴趣区域 (ROI) 进行分割,并对每个 ROI 进行放射组学分析。然后,分别评估临床和放射组学特征,基于 SVM 分类器开发了两种不同的机器学习模型。最后,通过实施软投票技术联合估计它们的预测能力。实验结果表明,结合临床和放射组学特征的模型提供了最佳性能,其 AUC 值为 88.6%,准确性为 82.1%,灵敏度为 100%,特异性为 78.2%。该模型代表了一种有前途的非侵入性方法,可用于预测临床阴性患者的 SLN 状态。