Viral Pneumonia Screening on Chest X-ray Images Using Confidence-Aware
Anomaly Detection
- URL: http://arxiv.org/abs/2003.12338v4
- Date: Wed, 2 Dec 2020 00:05:40 GMT
- Title: Viral Pneumonia Screening on Chest X-ray Images Using Confidence-Aware
Anomaly Detection
- Authors: Jianpeng Zhang, Yutong Xie, Guansong Pang, Zhibin Liao, Johan Verjans,
Wenxin Li, Zongji Sun, Jian He, Yi Li, Chunhua Shen, Yong Xia
- Abstract summary: Clusters of viral pneumonia during a short period of time may be a harbinger of an outbreak or pandemic, like SARS, MERS, and recent COVID-19.
Rapid and accurate detection of viral pneumonia using chest X-ray can be significantly useful in large-scale screening and epidemic prevention.
Viral pneumonia often have diverse causes and exhibit notably different visual appearances on X-ray images.
- Score: 86.81773672627406
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Cluster of viral pneumonia occurrences during a short period of time may be a
harbinger of an outbreak or pandemic, like SARS, MERS, and recent COVID-19.
Rapid and accurate detection of viral pneumonia using chest X-ray can be
significantly useful in large-scale screening and epidemic prevention,
particularly when other chest imaging modalities are less available. Viral
pneumonia often have diverse causes and exhibit notably different visual
appearances on X-ray images. The evolution of viruses and the emergence of
novel mutated viruses further result in substantial dataset shift, which
greatly limits the performance of classification approaches. In this paper, we
formulate the task of differentiating viral pneumonia from non-viral pneumonia
and healthy controls into an one-class classification-based anomaly detection
problem, and thus propose the confidence-aware anomaly detection (CAAD) model,
which consists of a shared feature extractor, an anomaly detection module, and
a confidence prediction module. If the anomaly score produced by the anomaly
detection module is large enough or the confidence score estimated by the
confidence prediction module is small enough, we accept the input as an anomaly
case (i.e., viral pneumonia). The major advantage of our approach over binary
classification is that we avoid modeling individual viral pneumonia classes
explicitly and treat all known viral pneumonia cases as anomalies to reinforce
the one-class model. The proposed model outperforms binary classification
models on the clinical X-VIRAL dataset that contains 5,977 viral pneumonia (no
COVID-19) cases, 18,619 non-viral pneumonia cases, and 18,774 healthy controls.
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