Marrone Babetta L, Banerjee Shounak, Talapatra Anjana, Gonzalez-Esquer C Raul, Pilania Ghanshyam
Bioscience Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545, United States.
Materials Science & Technology Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545, United States.
ACS ES T Water. 2023 Nov 30;4(3):844-858. doi: 10.1021/acsestwater.3c00369. eCollection 2024 Mar 8.
Freshwater cyanobacterial harmful algal blooms (cyanoHABs) are a worldwide problem resulting in substantial economic losses, due to harm to drinking water supplies, commercial fishing, wildlife, property values, recreation, and tourism. Moreover, toxins produced from some cyanoHABs threaten human and animal health. Climate warming can affect the distribution of cyanoHABs, where rising temperatures facilitate more intense blooms and a greater distribution of cyanoHABs in inland freshwater. Nutrient runoff from adjacent watersheds is also a major driver of cyanoHAB formation. While some of the physicochemical factors behind cyanoHAB dynamics are known, there are still major gaps in our understanding of the conditions that trigger and sustain cyanoHABs over time. In this perspective, we suggest that sufficient data sets, as well as machine learning (ML) and artificial intelligence (AI) tools, are available to build a comprehensive model of cyanoHAB dynamics based on integrated environmental/climate, nutrient/water chemistry, and cyanoHAB microbiome and 'omics data to identify key factors contributing to HAB formation, intensity, and toxicity. By taking a holistic approach to the analysis of all available data, including the rapidly growing number of biological data sets, we can provide the foundational knowledge needed to address the increasing threat of cyanoHABs to the security of our water resources.
淡水蓝藻有害藻华(cyanoHABs)是一个全球性问题,由于其对饮用水供应、商业捕鱼、野生动物、财产价值、娱乐和旅游业造成危害,导致了巨大的经济损失。此外,一些cyanoHABs产生的毒素威胁着人类和动物的健康。气候变暖会影响cyanoHABs的分布,气温上升会促使更强烈的藻华出现,并使cyanoHABs在内陆淡水中的分布范围更广。来自相邻流域的养分径流也是cyanoHABs形成的主要驱动因素。虽然已知一些cyanoHABs动态背后的物理化学因素,但我们对随着时间推移触发和维持cyanoHABs的条件的理解仍存在重大差距。从这个角度来看,我们认为有足够的数据集以及机器学习(ML)和人工智能(AI)工具,可用于基于综合环境/气候、养分/水化学以及cyanoHABs微生物组和“组学”数据构建一个全面的cyanoHABs动态模型,以识别导致藻华形成、强度和毒性的关键因素。通过对所有可用数据,包括快速增长的生物数据集进行全面分析,我们可以提供应对cyanoHABs对我们水资源安全日益增加的威胁所需的基础知识。