MorphGrower: A Synchronized Layer-by-layer Growing Approach for Plausible Neuronal Morphology Generation
Neuronal morphology is essential for studying brain functioning and understanding neurodegenerative disorders. As acquiring real-world morphology data is expensive, computational approaches for morphology generation have been studied. Traditional methods heavily rely on expert-set rules and paramete...
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Zusammenfassung: | Neuronal morphology is essential for studying brain functioning and
understanding neurodegenerative disorders. As acquiring real-world morphology
data is expensive, computational approaches for morphology generation have been
studied. Traditional methods heavily rely on expert-set rules and parameter
tuning, making it difficult to generalize across different types of
morphologies. Recently, MorphVAE was introduced as the sole learning-based
method, but its generated morphologies lack plausibility, i.e., they do not
appear realistic enough and most of the generated samples are topologically
invalid. To fill this gap, this paper proposes MorphGrower, which mimicks the
neuron natural growth mechanism for generation. Specifically, MorphGrower
generates morphologies layer by layer, with each subsequent layer conditioned
on the previously generated structure. During each layer generation,
MorphGrower utilizes a pair of sibling branches as the basic generation block
and generates branch pairs synchronously. This approach ensures topological
validity and allows for fine-grained generation, thereby enhancing the realism
of the final generated morphologies. Results on four real-world datasets
demonstrate that MorphGrower outperforms MorphVAE by a notable margin.
Importantly, the electrophysiological response simulation demonstrates the
plausibility of our generated samples from a neuroscience perspective. Our code
is available at https://github.com/Thinklab-SJTU/MorphGrower. |
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DOI: | 10.48550/arxiv.2401.09500 |