Gao Weibo, Chen Jixin, Zhang Bin, Wei Xiaocheng, Zhong Jinman, Li Xiaohui, He Xiaowei, Zhao Fengjun, Chen Xin
Department of Radiology, Second Affiliated Hospital, Xi'an Jiaotong University, Xi'an, China.
Xi'an Key Lab of Radiomics and Intelligent Perception, School of Information Science and Technology, Northwest University, Xi'an, China.
Quant Imaging Med Surg. 2023 Apr 1;13(4):2620-2633. doi: 10.21037/qims-22-323. Epub 2023 Jan 14.
The purpose of this study was to develop a deep learning-based system with a cascade feature pyramid network for the detection and classification of breast lesions in dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI).
This retrospective study enrolled 191 consecutive patients with pathological confirmed breast lesions who underwent preoperative magnetic resonance imaging (MRI) at the Second Affiliated Hospital of Xi'an Jiaotong University. Patients were randomly divided into a training set comprising 153 patients with 126 malignant and 27 benign lesions and a validation set containing 38 patients with 31 malignant and 7 benign lesions under 5-fold cross-validation. Two radiologists annotated the location and classification of all lesions. After augmentation with pseudo-color image fusion, MRI images were fed into the developed cascade feature pyramid network system, feature pyramid network, and faster region-based convolutional neural network (CNN) for breast lesion detection and classification, respectively. The performance on large (>2 cm) and small (≤2 cm) breast lesions was further evaluated. Average precision (AP), mean AP, F1-score, sensitivity, and false positives were used to evaluate different systems. Cohen's kappa scores were calculated to assess agreement between different systems, and Student's -test and the Holm-Bonferroni method were used to compare multiple groups.
The cascade feature pyramid network system outperformed the other systems with a mean AP and highest sensitivity of 0.826±0.051 and 0.970±0.014 (at 0.375 false positives), respectively. The F1-score of the cascade feature pyramid network in real detection was also superior to that of the other systems at both the slice and patient levels. The mean AP values of the cascade feature pyramid network reached 0.779±0.152 and 0.790±0.080 in detecting large and small lesions, respectively. Especially for small lesions, the cascade feature pyramid network achieved the best performance in detecting benign and malignant breast lesions at both the slice and patient levels.
The deep learning-based system with the developed cascade feature pyramid network has the potential to detect and classify breast lesions on DCE-MRI, especially small lesions.
本研究的目的是开发一种基于深度学习的系统,该系统具有级联特征金字塔网络,用于在动态对比增强磁共振成像(DCE-MRI)中检测和分类乳腺病变。
这项回顾性研究纳入了191例连续的经病理证实患有乳腺病变的患者,这些患者在西安交通大学第二附属医院接受了术前磁共振成像(MRI)检查。在5折交叉验证下,患者被随机分为一个训练集,包括153例患者,有126个恶性病变和27个良性病变;以及一个验证集,包含38例患者,有31个恶性病变和7个良性病变。两名放射科医生对所有病变的位置和分类进行了标注。在进行伪彩色图像融合增强后,将MRI图像分别输入到开发的级联特征金字塔网络系统、特征金字塔网络和基于区域的更快卷积神经网络(CNN)中,用于乳腺病变的检测和分类。进一步评估了该系统在大(>2 cm)、小(≤2 cm)乳腺病变上的性能。使用平均精度(AP)、平均AP、F1分数、敏感性和假阳性来评估不同的系统。计算Cohen's kappa分数以评估不同系统之间的一致性,并使用Student's t检验和Holm-Bonferroni方法比较多组数据。
级联特征金字塔网络系统的表现优于其他系统,其平均AP为0.826±0.051,最高敏感性为0.970±0.014(在0.375假阳性时)。级联特征金字塔网络在实际检测中的F1分数在切片和患者层面也均优于其他系统。级联特征金字塔网络在检测大、小病变时的平均AP值分别达到0.779±0.152和0.790±0.080。特别是对于小病变,级联特征金字塔网络在切片和患者层面检测乳腺良恶性病变方面均取得了最佳性能。
基于深度学习的、具有开发的级联特征金字塔网络的系统有潜力在DCE-MRI上检测和分类乳腺病变,尤其是小病变。