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One Hyper-Initializer for All Network Architectures in Medical Image Analysis

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arxiv 2206.03661 v1 pith:PXERPI7Q submitted 2022-06-08 cs.CV

One Hyper-Initializer for All Network Architectures in Medical Image Analysis

classification cs.CV
keywords architecturehyper-initializermedicalnetworkanalysisarchitecturesdownstreamespecially
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Pre-training is essential to deep learning model performance, especially in medical image analysis tasks where limited training data are available. However, existing pre-training methods are inflexible as the pre-trained weights of one model cannot be reused by other network architectures. In this paper, we propose an architecture-irrelevant hyper-initializer, which can initialize any given network architecture well after being pre-trained for only once. The proposed initializer is a hypernetwork which takes a downstream architecture as input graphs and outputs the initialization parameters of the respective architecture. We show the effectiveness and efficiency of the hyper-initializer through extensive experimental results on multiple medical imaging modalities, especially in data-limited fields. Moreover, we prove that the proposed algorithm can be reused as a favorable plug-and-play initializer for any downstream architecture and task (both classification and segmentation) of the same modality.

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