Dynamic Bank Learning for Semi-supervised Federated Image Diagnosis with
Class Imbalance
- URL: http://arxiv.org/abs/2206.13079v1
- Date: Mon, 27 Jun 2022 06:51:48 GMT
- Title: Dynamic Bank Learning for Semi-supervised Federated Image Diagnosis with
Class Imbalance
- Authors: Meirui Jiang, Hongzheng Yang, Xiaoxiao Li, Quande Liu, Pheng-Ann Heng,
Qi Dou
- Abstract summary: We study a practical yet challenging problem of class imbalanced semi-supervised FL (imFed-Semi)
This imFed-Semi problem is addressed by a novel dynamic bank learning scheme, which improves client training by exploiting class proportion information.
We evaluate our approach on two public real-world medical datasets, including the intracranial hemorrhage diagnosis with 25,000 CT slices and skin lesion diagnosis with 10,015 dermoscopy images.
- Score: 65.61909544178603
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Despite recent progress on semi-supervised federated learning (FL) for
medical image diagnosis, the problem of imbalanced class distributions among
unlabeled clients is still unsolved for real-world use. In this paper, we study
a practical yet challenging problem of class imbalanced semi-supervised FL
(imFed-Semi), which allows all clients to have only unlabeled data while the
server just has a small amount of labeled data. This imFed-Semi problem is
addressed by a novel dynamic bank learning scheme, which improves client
training by exploiting class proportion information. This scheme consists of
two parts, i.e., the dynamic bank construction to distill various class
proportions for each local client, and the sub-bank classification to impose
the local model to learn different class proportions. We evaluate our approach
on two public real-world medical datasets, including the intracranial
hemorrhage diagnosis with 25,000 CT slices and skin lesion diagnosis with
10,015 dermoscopy images. The effectiveness of our method has been validated
with significant performance improvements (7.61% and 4.69%) compared with the
second-best on the accuracy, as well as comprehensive analytical studies. Code
is available at https://github.com/med-air/imFedSemi.
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