Diagnostics (Jul 2020)

Efficient Anomaly Detection with Generative Adversarial Network for Breast Ultrasound Imaging

  • Tomoyuki Fujioka,
  • Kazunori Kubota,
  • Mio Mori,
  • Yuka Kikuchi,
  • Leona Katsuta,
  • Mizuki Kimura,
  • Emi Yamaga,
  • Mio Adachi,
  • Goshi Oda,
  • Tsuyoshi Nakagawa,
  • Yoshio Kitazume,
  • Ukihide Tateishi

DOI
https://doi.org/10.3390/diagnostics10070456
Journal volume & issue
Vol. 10, no. 7
p. 456

Abstract

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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 (p p < 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.

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