视角:生物物理和生物医学数据的深度学习分割模型比较。

ArXiv Pub Date : 2024-08-14
J Shepard Bryan Iv, Meyam Tavakoli, Steve Presse
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引用次数: 0

摘要

目前,基于深度学习的方法已广泛应用于生物物理学领域,帮助自动完成各种任务,包括图像分割、特征选择和去卷积。然而,由于存在多种相互竞争的深度学习架构,每种架构都有自己独特的优缺点,因此选择最适合特定应用的架构具有挑战性。因此,我们对常见模型进行了全面比较。在此,我们将重点放在分割任务上,假设生物物理实验中的训练数据集规模通常较小,并对以下四种常用架构进行比较:卷积神经网络、U-Nets、视觉转换器和视觉状态空间模型。在此过程中,我们建立了确定每种模型最佳条件的标准,从而为该领域的研究人员和从业人员提供了实用指南。
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Perspectives: Comparison of Deep Learning Segmentation Models on Biophysical and Biomedical Data.

Deep learning based approaches are now widely used across biophysics to help automate a variety of tasks including image segmentation, feature selection, and deconvolution. However, the presence of multiple competing deep learning architectures, each with its own unique advantages and disadvantages, makes it challenging to select an architecture best suited for a specific application. As such, we present a comprehensive comparison of common models. Here, we focus on the task of segmentation assuming the typically small training dataset sizes available from biophysics experiments and compare the following four commonly used architectures: convolutional neural networks, U-Nets, vision transformers, and vision state space models. In doing so, we establish criteria for determining optimal conditions under which each model excels, thereby offering practical guidelines for researchers and practitioners in the field.

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