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Efficient Anomaly Detection with Generative Adversarial Network for Breast Ultrasound Imaging

机译:高效异常检测与生成的逆向成像生成对抗网络

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摘要

We aimed to use generative adversarial network (GAN)-based anomaly detection to diagnose images of normal tissue, benign masses, or malignant masses on breast ultrasound. We retrospectively collected 531 normal breast ultrasound images from 69 patients. Data augmentation was performed and 6372 (531 × 12) images were available for training. Efficient GAN-based anomaly detection was used to construct a computational model to detect anomalous lesions in images and calculate abnormalities as an anomaly score. Images of 51 normal tissues, 48 benign masses, and 72 malignant masses were analyzed for the test data. The sensitivity, specificity, and area under the receiver operating characteristic curve (AUC) of this anomaly detection model were calculated. Malignant masses had significantly higher anomaly scores than benign masses ( < 0.001), and benign masses had significantly higher scores than normal tissues ( < 0.001). Our anomaly detection model had high sensitivities, specificities, and AUC values for distinguishing normal tissues from benign and malignant masses, with even greater values for distinguishing normal tissues from malignant masses. GAN-based anomaly detection shows high performance for the detection and diagnosis of anomalous lesions in breast ultrasound images.
机译:我们的目标是使用生成的对抗网络(GAN)基础的异常检测来诊断正常组织,良性质量或恶性肿块上的乳房超声波的图像。我们回顾性从69名患者收集了531个正常乳房超声图像。数据增强进行了数据,6372(531×12)图像可用于培训。高效的GaN基异常检测用于构建计算模型以检测图像中的异常病变并将异常作为异常分数计算。分析了51个正常组织,48个良性质量和72个恶性肿块的图像进行测试数据。计算了这种异常检测模型的接收器操作特征曲线(AUC)下的敏感性,特异性和面积。恶性肿瘤的异常分数明显高于良性肿分(<0.001),良性质量比正常组织的得分显着更高(<0.001)。我们的异常检测模型具有高敏感性,特异性和AUC值,用于区分正常组织与良性和恶性肿块,以区分来自恶性肿块的正常组织的更大值。基于GaN的异常检测显示了乳房超声图像中异常病变的检测和诊断的高性能。

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