基于胸部CT的深度学习模型预测乳腺良恶性肿块及腋窝淋巴结转移。

0 MEDICINE, RESEARCH & EXPERIMENTAL
Jingxiang Sun, Xiaoming Xi, Mengying Wang, Menghan Liu, Xiaodong Zhang, Haiyan Qiu, Youxin Zhang, Taian Fu, Yanan Du, Wanqing Ren, Dawei Wang, Guang Zhang
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引用次数: 0

摘要

鉴别早期乳腺癌和良性乳腺肿块对放射科医生来说至关重要。此外,准确评估腋窝淋巴结转移(ALNM)对乳腺癌患者的临床管理和预后具有重要意义。胸部计算机断层扫描(CT)是一种常用的成像方式在物理和术前评估。本研究旨在开发一种基于胸部CT成像的深度学习模型,以改善乳房病变的初步评估,潜在地减少对昂贵的后续手术(如磁共振成像(MRI)或正电子发射断层扫描-CT)的需求,减轻患者的经济和情感负担。我们回顾性收集了482例乳腺肿块患者的胸部CT图像,根据病理表现将其分为良性(n = 224)和恶性(n = 258)。恶性组又分为alnm阳性亚组(n = 91)和alnm阴性亚组(n = 167)。患者按8:1:1的比例随机分为训练组、验证组和测试组,测试组排除在模型开发之外。所有患者术前均行胸部CT检查。在通过裁剪、缩放和标准化对图像进行预处理后,我们应用ResNet-34、ResNet-50和ResNet-101架构来区分良性和恶性肿块并评估ALNM。通过灵敏度、特异性、准确性、受试者工作特征(ROC)曲线和曲线下面积(AUC)来评估模型的性能。ResNet模型有效地区分了良性和恶性肿块,其中ResNet-101的性能最高(AUC: 0.964;95% ci: 0.948-0.981)。该方法对ALNM也具有较好的预测能力(AUC: 0.951;95% ci: 0.926-0.975)。总之,这些深度学习模型在乳腺肿块分类和ALNM预测方面显示出强大的诊断潜力,为改善临床决策提供了有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning model based on chest CT to predict benign and malignant breast masses and axillary lymph node metastasis.

Differentiating early-stage breast cancer from benign breast masses is crucial for radiologists. Additionally, accurately assessing axillary lymph node metastasis (ALNM) plays a significant role in clinical management and prognosis for breast cancer patients. Chest computed tomography (CT) is a commonly used imaging modality in physical and preoperative evaluations. This study aims to develop a deep learning model based on chest CT imaging to improve the preliminary assessment of breast lesions, potentially reducing the need for costly follow-up procedures such as magnetic resonance imaging (MRI) or positron emission tomography-CT and alleviating the financial and emotional burden on patients. We retrospectively collected chest CT images from 482 patients with breast masses, classifying them as benign (n = 224) or malignant (n = 258) based on pathological findings. The malignant group was further categorized into ALNM-positive (n = 91) and ALNM-negative (n = 167) subgroups. Patients were randomly divided into training, validation, and test sets in an 8:1:1 ratio, with the test set excluded from model development. All patients underwent non-contrast chest CT before surgery. After preprocessing the images through cropping, scaling, and standardization, we applied ResNet-34, ResNet-50, and ResNet-101 architectures to differentiate between benign and malignant masses and to assess ALNM. Model performance was evaluated using sensitivity, specificity, accuracy, receiver operating characteristic (ROC) curves, and the area under the curve (AUC). The ResNet models effectively distinguished benign from malignant masses, with ResNet-101 achieving the highest performance (AUC: 0.964; 95% CI: 0.948-0.981). It also demonstrated excellent predictive capability for ALNM (AUC: 0.951; 95% CI: 0.926-0.975). In conclusion, these deep learning models show strong diagnostic potential for both breast mass classification and ALNM prediction, offering a valuable tool for improving clinical decision-making.

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