DEEP ACTIVE LEARNING FOR CRYO-ELECTRON TOMOGRAPHY CLASSIFICATION.

Tianyang Wang, Bo Li, Jing Zhang, Xiangrui Zeng, Mostofa Rafid Uddin, Wei Wu, Min Xu
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Abstract

Cryo-Electron Tomography (cryo-ET) is an emerging 3D imaging technique which shows great potentials in structural biology research. One of the main challenges is to perform classification of macromolecules captured by cryo-ET. Recent efforts exploit deep learning to address this challenge. However, training reliable deep models usually requires a huge amount of labeled data in supervised fashion. Annotating cryo-ET data is arguably very expensive. Deep Active Learning (DAL) can be used to reduce labeling cost while not sacrificing the task performance too much. Nevertheless, most existing methods resort to auxiliary models or complex fashions (e.g. adversarial learning) for uncertainty estimation, the core of DAL. These models need to be highly customized for cryo-ET tasks which require 3D networks, and extra efforts are also indispensable for tuning these models, rendering a difficulty of deployment on cryo-ET tasks. To address these challenges, we propose a novel metric for data selection in DAL, which can also be leveraged as a regularizer of the empirical loss, further boosting the task model. We demonstrate the superiority of our method via extensive experiments on both simulated and real cryo-ET datasets. Our source Code and Appendix can be found at this URL.

基于深度主动学习的低温电子断层扫描分类。
低温电子断层扫描(cryo-ET)是一种新兴的三维成像技术,在结构生物学研究中显示出巨大的潜力。其中一个主要的挑战是对低温et捕获的大分子进行分类。最近的努力利用深度学习来应对这一挑战。然而,训练可靠的深度模型通常需要大量有监督的标记数据。注释cryo-ET数据可以说是非常昂贵的。深度主动学习(DAL)可以在不牺牲任务性能的情况下降低标注成本。然而,大多数现有的方法依靠辅助模型或复杂的模型(如对抗学习)来进行不确定性估计,这是DAL的核心。这些模型需要高度定制用于需要3D网络的cryo-ET任务,并且需要额外的努力来调整这些模型,这使得在cryo-ET任务上部署困难。为了解决这些挑战,我们提出了一种新的DAL数据选择度量,它也可以作为经验损失的正则化器,进一步增强任务模型。我们通过模拟和真实低温et数据集的大量实验证明了我们方法的优越性。我们的源代码和附录可以在这个URL中找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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