2021
DOI: 10.48550/arxiv.2103.16617
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HAD-Net: A Hierarchical Adversarial Knowledge Distillation Network for Improved Enhanced Tumour Segmentation Without Post-Contrast Images

Saverio Vadacchino,
Raghav Mehta,
Nazanin Mohammadi Sepahvand
et al.

Abstract: Segmentation of enhancing tumours or lesions from MRI is important for detecting new disease activity in many clinical contexts. However, accurate segmentation requires the inclusion of medical images (e.g., T1 post contrast MRI) acquired after injecting patients with a contrast agent (e.g., Gadolinium), a process no longer thought to be safe. Although a number of modality-agnostic segmentation networks have been developed over the past few years, they have been met with limited success in the context of enhan… Show more

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“…Similarly, (Zhou et al, 2021b) is a latent correlation representation learning method for addressing the missing modality problem that is not regarded a fully fulfilling method for all modalities. Later approaches such as (Wang et al, 2021) and (Vadacchino et al, 2021) proposed hierarchical adversarial knowledge distillation networks. However, these methods usually fail to reconstruct the textural (style) information from the missing modalities.…”
Section: Introductionmentioning
confidence: 99%
“…Similarly, (Zhou et al, 2021b) is a latent correlation representation learning method for addressing the missing modality problem that is not regarded a fully fulfilling method for all modalities. Later approaches such as (Wang et al, 2021) and (Vadacchino et al, 2021) proposed hierarchical adversarial knowledge distillation networks. However, these methods usually fail to reconstruct the textural (style) information from the missing modalities.…”
Section: Introductionmentioning
confidence: 99%