Dealing with distribution mismatch in semi-supervised deep learning for Covid-19 detection using chest X-ray images

dc.cclicenceCC-BY-NC-NDen
dc.contributor.authorCalderon-Ramirez, Saul
dc.contributor.authorYang, Shengxiang
dc.contributor.authorMoemeni, Armaghan
dc.contributor.authorElizondo, David
dc.date.acceptance2022-04-30
dc.date.accessioned2022-05-12T14:53:20Z
dc.date.available2022-05-12T14:53:20Z
dc.date.issued2022-05-10
dc.descriptionThe file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI link.en
dc.description.abstractIn the context of the global coronavirus pandemic, different deep learning solutions for infected subject detection using chest X-ray images have been proposed. However, deep learning models usually need large labelled datasets to be effective. Semi-supervised deep learning is an attractive alternative, where unlabelled data is leveraged to improve the overall model’s accuracy. However, in real-world usage settings, an unlabelled dataset might present a different distribution than the labelled dataset (i.e. the labelled dataset was sampled from a target clinic and the unlabelled dataset from a source clinic). This results in a distribution mismatch between the unlabelled and labelled datasets. In this work, we assess the impact of the distribution mismatch between the labelled and the unlabelled datasets, for a semi-supervised model trained with chest X-ray images, for COVID-19 detection. Under strong distribution mismatch conditions, we found an accuracy hit of almost 30%, suggesting that the unlabelled dataset distribution has a strong influence in the behaviour of the model. Therefore, we propose a straightforward approach to diminish the impact of such distribution mismatch. Our proposed method uses a density approximation of the feature space. It is built upon the target dataset to filter out the observations in the source unlabelled dataset that might harm the accuracy of the semi-supervised model. It assumes that a small labelled source dataset is available together with a larger source unlabelled dataset. Our proposed method does not require any model training, it is simple and computationally cheap. We compare our proposed method against two popular state of the art out-of-distribution data detectors, which are also cheap and simple to implement. In our tests, our method yielded accuracy gains of up to 32%, when compared to the previous state of the art methods. The good results yielded by our method leads us to argue in favour for a more data-centric approach to improve model’s accuracy. Furthermore, the developed method can be used to measure data effectiveness for semi-supervised deep learning model training.en
dc.funderNo external funderen
dc.identifier.citationCalderon-Ramirez, S., Yang, S., Moemeni, A., and Elizondo, D. (2022) Dealing with distribution mismatch in semi-supervised deep learning for Covid-19 detection using chest X-ray images. Applied Soft Computing, 123, 108983.en
dc.identifier.doihttps://doi.org/10.1016/j.asoc.2022.108983
dc.identifier.issn1568-4946
dc.identifier.urihttps://hdl.handle.net/2086/21875
dc.language.isoen_USen
dc.peerreviewedYesen
dc.publisherElsevieren
dc.researchinstituteInstitute of Artificial Intelligence (IAI)en
dc.subjectSemi-supervised deep learningen
dc.subjectMixMatchen
dc.subjectDistribution mismatchen
dc.subjectOut of distribution detectionen
dc.subjectChest X-rayen
dc.subjectCovid-19en
dc.subjectComputer aided diagnosisen
dc.titleDealing with distribution mismatch in semi-supervised deep learning for Covid-19 detection using chest X-ray imagesen
dc.typeArticleen

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