Fedeli Sirio Belga, Leibler Stanislas
Simons Center for Systems Biology, School of Natural Sciences, Institute for Advanced Study, Princeton, NJ 08540.
Laboratory of Living Matter, The Rockefeller University, New York, NY 10065.
Proc Natl Acad Sci U S A. 2024 Dec 24;121(52):e2415315121. doi: 10.1073/pnas.2415315121. Epub 2024 Dec 16.
In view of changing climatic conditions and disappearing natural resources such as fertile soil and water, exploring alternatives to today's industrial monocrop farming becomes essential. One promising farming practice is intercropping (IC), in which two or more crop species are grown together. Many experiments have shown that, under certain circumstances, IC can decrease soil erosion and fertilizer use, improve soil health and land management, while preserving crop production levels. However, there have been no quantitative approaches to predict, design, and control appropriate IC implementation for given particular environmental and farming conditions, and to assess its robustness. Here, we develop such an approach, based on methods and concepts developed in data science and systems biology. Our dataset groups the results of 2258 IC experiments, involving 274 pairs of 69 different plants. The data include 4 soil characteristics and 5 environmental and farming conditions, together with 8 traits for each of the two intercropped plants. We performed a dimensional reduction of the resulting 25-dimensional variable space and showed that, from a few quantities, one can predict IC yield relative to sole cultivation with good accuracy. For given environmental conditions, our computational approach can help to choose a companion plant and appropriate farming practices. It also indicates how to estimate the robustness of IC to external perturbations. This approach, together with its results, can be viewed as an initial step toward "systems agriculture," which would ultimately develop systems of multiple plant grown together in appropriately designed and controlled settings.
鉴于气候条件不断变化以及肥沃土壤和水资源等自然资源日益稀缺,探索替代当今工业化单一作物种植的方法变得至关重要。一种很有前景的种植方式是间作(IC),即同时种植两种或更多作物品种。许多实验表明,在某些情况下,间作可以减少土壤侵蚀和化肥使用,改善土壤健康状况和土地管理,同时保持作物产量水平。然而,对于给定的特定环境和种植条件,尚无定量方法来预测、设计和控制合适的间作实施方式,也无法评估其稳健性。在此,我们基于数据科学和系统生物学中发展起来的方法和概念开发了这样一种方法。我们的数据集汇总了2258个间作实验的结果,涉及69种不同植物的274对组合。数据包括4种土壤特性、5种环境和种植条件,以及两种间作植物各自的8个性状。我们对所得的25维变量空间进行了降维处理,并表明从少数几个量中就能相当准确地预测间作相对于单作的产量。对于给定的环境条件,我们的计算方法有助于选择伴生植物和合适的种植方式。它还指出了如何估计间作对外部扰动的稳健性。这种方法及其结果可被视为迈向“系统农业”的第一步,系统农业最终将发展出在适当设计和控制的环境中共同种植多种植物的系统。