Ordinal Multiple-instance Learning for Ulcerative Colitis Severity Estimation with Selective Aggregated Transformer
Patient-level diagnosis of severity in ulcerative colitis (UC) is common in real clinical settings, where the most severe score in a patient is recorded. However, previous UC classification methods (i.e., image-level estimation) mainly assumed the input was a single image. Thus, these methods can no...
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Zusammenfassung: | Patient-level diagnosis of severity in ulcerative colitis (UC) is common in
real clinical settings, where the most severe score in a patient is recorded.
However, previous UC classification methods (i.e., image-level estimation)
mainly assumed the input was a single image. Thus, these methods can not
utilize severity labels recorded in real clinical settings. In this paper, we
propose a patient-level severity estimation method by a transformer with
selective aggregator tokens, where a severity label is estimated from multiple
images taken from a patient, similar to a clinical setting. Our method can
effectively aggregate features of severe parts from a set of images captured in
each patient, and it facilitates improving the discriminative ability between
adjacent severity classes. Experiments demonstrate the effectiveness of the
proposed method on two datasets compared with the state-of-the-art MIL methods.
Moreover, we evaluated our method in real clinical settings and confirmed that
our method outperformed the previous image-level methods. The code is publicly
available at
https://github.com/Shiku-Kaito/Ordinal-Multiple-instance-Learning-for-Ulcerative-Colitis-Severity-Estimation. |
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DOI: | 10.48550/arxiv.2411.14750 |