4.6 Article

Unsupervised Deep Anomaly Detection in Chest Radiographs

Journal

JOURNAL OF DIGITAL IMAGING
Volume 34, Issue 2, Pages 418-427

Publisher

SPRINGER
DOI: 10.1007/s10278-020-00413-2

Keywords

Chest radiograph; Variational autoencoder; Generative adversarial network; Deep learning; Unsupervised learning; Anomaly detection

Funding

  1. JSPS [18K12095, 18K12096]
  2. Joint Usage/Research Center for Interdisciplinary Large-scale Information Infrastructures and High Performance Computing Infrastructure projects in Japan [jh170036-DAH, jh180073-DAH, jh190047-DAH]
  3. Grants-in-Aid for Scientific Research [18K12095, 18K12096] Funding Source: KAKEN

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In this study, a DNN-based unsupervised anomaly detection method trained only on normal images was applied to a large chest radiograph dataset, demonstrating successful detection of various lesions and abnormalities including lung mass, cardiomegaly, pleural effusion, bilateral hilar lymphadenopathy, and dextrocardia. With an AUROC of 0.752, the system effectively detected abnormal images labeled as Opacity and No Opacity/Not Normal with AUROCs of 0.838 and 0.704, respectively.
The purposes of this study are to propose an unsupervised anomaly detection method based on a deep neural network (DNN) model, which requires only normal images for training, and to evaluate its performance with a large chest radiograph dataset. We used the auto-encoding generative adversarial network (alpha-GAN) framework, which is a combination of a GAN and a variational autoencoder, as a DNN model. A total of 29,684 frontal chest radiographs from the Radiological Society of North America Pneumonia Detection Challenge dataset were used for this study (16,880 male and 12,804 female patients; average age, 47.0 years). All these images were labeled as Normal, No Opacity/Not Normal, or Opacity by board-certified radiologists. About 70% (6,853/9,790) of the Normal images were randomly sampled as the training dataset, and the rest were randomly split into the validation and test datasets in a ratio of 1:2 (7,610 and 15,221). Our anomaly detection system could correctly visualize various lesions including a lung mass, cardiomegaly, pleural effusion, bilateral hilar lymphadenopathy, and even dextrocardia. Our system detected the abnormal images with an area under the receiver operating characteristic curve (AUROC) of 0.752. The AUROCs for the abnormal labels Opacity and No Opacity/Not Normal were 0.838 and 0.704, respectively. Our DNN-based unsupervised anomaly detection method could successfully detect various diseases or anomalies in chest radiographs by training with only the normal images.

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