论文标题
全息显微镜和深度学习揭示的微量全球生活历史
Microplankton life histories revealed by holographic microscopy and deep learning
论文作者
论文摘要
海洋微生物食品网络在全球碳循环中起着核心作用。但是,我们对海洋的机械理解偏向于其较大的成分,而微生物食品网中的速率和生物量通量主要是通过间接测量和合奏平均值推断出来的。然而,需要在单个微量旗下的水平上解决我们对海洋食品网的理解。在这里,我们证明,通过将全息显微镜与深度学习相结合,我们可以在其整个生命周期中跟随微量体,不断测量其三维位置和干质量。深度学习算法规定了全息数据的计算密集处理,并允许在延长的时间段进行快速测量。这使我们能够在干质量增加和细胞分裂方面可靠地估计生长速率,以及衡量物种(例如捕食事件)之间的营养相互作用。单个分辨率提供了有关单个微型全市的选择性,单个喂养率和处理时间的信息。该方法对于探索碳通过微型Zooplankton的通量特别有用,这是全球海洋中最重要,最不知名的主要消费者群体。我们通过详细描述微佐普兰克顿喂养事件,细胞划分以及对单个细胞之间的长期监测来体现这一点。
The marine microbial food web plays a central role in the global carbon cycle. Our mechanistic understanding of the ocean, however, is biased towards its larger constituents, while rates and biomass fluxes in the microbial food web are mainly inferred from indirect measurements and ensemble averages. Yet, resolution at the level of the individual microplankton is required to advance our understanding of the oceanic food web. Here, we demonstrate that, by combining holographic microscopy with deep learning, we can follow microplanktons throughout their lifespan, continuously measuring their three dimensional position and dry mass. The deep learning algorithms circumvent the computationally intensive processing of holographic data and allow rapid measurements over extended time periods. This permits us to reliably estimate growth rates, both in terms of dry mass increase and cell divisions, as well as to measure trophic interactions between species such as predation events. The individual resolution provides information about selectivity, individual feeding rates and handling times for individual microplanktons. This method is particularly useful to explore the flux of carbon through micro-zooplankton, the most important and least known group of primary consumers in the global oceans. We exemplify this by detailed descriptions of micro-zooplankton feeding events, cell divisions, and long term monitoring of single cells from division to division.