Variational Knowledge Distillation for Disease Classification in Chest X-Rays
| Authors |
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| Publication date | 2021 |
| Host editors |
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| Book title | Information Processing in Medical Imaging |
| Book subtitle | 27th International Conference, IPMI 2021, virtual event, June 28–June 30, 2021 : proceedings |
| ISBN |
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| ISBN (electronic) |
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| Series | Lecture Notes in Computer Science |
| Event | 27th International Conference on Information Processing in Medical Imaging |
| Pages (from-to) | 334-345 |
| Publisher | Cham: Springer |
| Organisations |
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| Abstract |
Disease classification relying solely on imaging data attracts great
interest in medical image analysis. Current models could be further
improved, however, by also employing Electronic Health Records (EHRs),
which contain rich information on patients and findings from clinicians.
It is challenging to incorporate this information into disease
classification due to the high reliance on clinician input in EHRs,
limiting thepossibility for automated diagnosis. In this paper, we
propose variational knowledge distillation (VKD), which is a new
probabilistic inference framework for disease classification based on
X-rays that leverages knowledge from EHRs. Specifically, we introduce a
conditional latent variable model, where we infer the latent
representation of the X-ray image with the variational posterior
conditioning on the associated EHR text. By doing so, the model acquires
the ability to extract the visual features relevant to the disease
during learning and can therefore perform more accurate classification
for unseen patients at inference based solely on their X-ray scans. We
demonstrate the effectiveness of our method on three public benchmark
datasets with paired X-ray images and EHRs. The results show that the
proposed variational knowledge distillation can consistently improve the
performance of medical image classification and significantly surpasses
current methods.
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| Document type | Conference contribution |
| Language | English |
| Published at | https://doi.org/10.1007/978-3-030-78191-0_26 |
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