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Multiple sclerosis lesion segmentation: revisiting weighting mechanisms for federated learning. | LitMetric

AI Article Synopsis

  • Federated learning (FL) helps doctors analyze medical images while keeping patient data private, but it struggles with differences in images from various machines, especially for diseases like multiple sclerosis (MS).
  • This study suggests a new FL method that gives more importance to data from machines that perform better and adjusts training based on how big the lesions are.
  • The results show that this new method works much better than previous FL techniques in segmenting lesions, achieving results close to those obtained by using all data together.

Article Abstract

Background And Introduction: Federated learning (FL) has been widely employed for medical image analysis to facilitate multi-client collaborative learning without sharing raw data. Despite great success, FL's applications remain suboptimal in neuroimage analysis tasks such as lesion segmentation in multiple sclerosis (MS), due to variance in lesion characteristics imparted by different scanners and acquisition parameters.

Methods: In this work, we propose the first FL MS lesion segmentation framework via two effective re-weighting mechanisms. Specifically, a learnable weight is assigned to each local node during the aggregation process, based on its segmentation performance. In addition, the segmentation loss function in each client is also re-weighted according to the lesion volume for the data during training.

Results: The proposed method has been validated on two FL MS segmentation scenarios using public and clinical datasets. Specifically, the case-wise and voxel-wise Dice score of the proposed method under the first public dataset is 65.20 and 74.30, respectively. On the second in-house dataset, the case-wise and voxel-wise Dice score is 53.66, and 62.31, respectively.

Discussions And Conclusions: The Comparison experiments on two FL MS segmentation scenarios using public and clinical datasets have demonstrated the effectiveness of the proposed method by significantly outperforming other FL methods. Furthermore, the segmentation performance of FL incorporating our proposed aggregation mechanism can achieve comparable performance to that from centralized training with all the raw data.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10232857PMC
http://dx.doi.org/10.3389/fnins.2023.1167612DOI Listing

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