Sparsity of higher-order landscape interactions enables learning and prediction for microbiomes

被引:8
|
作者
Arya, Shreya [1 ]
George, Ashish B. [2 ,3 ,4 ]
O'Dwyer, James P. [2 ,4 ]
机构
[1] Univ Illinois, Dept Phys, Urbana, IL 61801 USA
[2] Univ Illinois, Carl R Woese Inst Genom Biol, Ctr Artificial Intelligence & Modeling, Urbana, IL 61801 USA
[3] Broad Inst Massachusetts Inst Technol & Harvard, Cambridge 02142, MA USA
[4] Univ Illinois, Dept Plant Biol, Urbana, IL 61801 USA
关键词
microbial ecology; compressive sensing; microbiome; theoretical ecology; FITNESS LANDSCAPE; CONSORTIA; EPISTASIS; COEXISTENCE; DEGRADATION; DESIGN;
D O I
10.1073/pnas.2307313120
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Microbiome engineering offers the potential to leverage microbial communities to improve outcomes in human health, agriculture, and climate. To translate this potential into reality, it is crucial to reliably predict community composition and function. But a brute force approach to cataloging community function is hindered by the combinatorial explosion in the number of ways we can combine microbial species. An alternative is to parameterize microbial community outcomes using simplified, mechanistic models, and then extrapolate these models beyond where we have sampled. But these approaches remain data-hungry, as well as requiring an a priori specification of what kinds of mechanisms are included and which are omitted. Here, we resolve both issues by introducing a mechanism-agnostic approach to predicting microbial community compositions and functions using limited data. The critical step is the identification of a sparse representation of the community landscape. We then leverage this sparsity to predict community compositions and functions, drawing from techniques in compressive sensing. We validate this approach on in silico community data, generated from a theoretical model. By sampling just similar to 1% of all possible communities, we accurately predict community compositions out of sample. We then demonstrate the real-world application of our approach by applying it to four experimental datasets and showing that we can recover interpretable, accurate predictions on composition and community function from highly limited data.
引用
收藏
页数:11
相关论文
共 44 条
  • [31] The impact of learning to code on higher-order executive-functions: a systematic review of the literature
    Ozcan, Meryem Seyda
    Goksun, Tilbe
    Kisbu, Yasemin
    JOURNAL OF RESEARCH ON TECHNOLOGY IN EDUCATION, 2024,
  • [32] Learning Output Reference Model Tracking for Higher-Order Nonlinear Systems with Unknown Dynamics
    Radac, Mircea-Bogdan
    Lala, Timotei
    ALGORITHMS, 2019, 12 (06)
  • [33] Monotonic convergence and robustness of higher-order gain-adaptive iterative learning control
    Li, Xiaohui
    Ruan, Xiaoe
    INTERNATIONAL JOURNAL OF ROBUST AND NONLINEAR CONTROL, 2020, 30 (10) : 3960 - 3981
  • [34] Beyond direct neighbourhood effects: higher-order interactions improve modelling and predicting tree survival and growth
    Li, Yuanzhi
    Mayfield, Margaret M.
    Wang, Bin
    Xiao, Junli
    Kral, Kamil
    Janik, David
    Holik, Jan
    Chu, Chengjin
    NATIONAL SCIENCE REVIEW, 2021, 8 (05)
  • [35] Breather interactions and higher-order nonautonomous rogue waves for the inhomogeneous nonlinear Schrodinger Maxwell-Bloch equations
    Wang, Lei
    Li, Xiao
    Qi, Feng-Hua
    Zhang, Lu-Lu
    ANNALS OF PHYSICS, 2015, 359 : 97 - 114
  • [36] Prediction and analysis of higher-order coiled-coils: Insights from proteins of the extracellular matrix, tenascins and thrombospondins
    Vincent, Thomas L.
    Woolfson, Derek N.
    Adams, Josephine C.
    INTERNATIONAL JOURNAL OF BIOCHEMISTRY & CELL BIOLOGY, 2013, 45 (11) : 2392 - 2401
  • [37] Higher-Order VLP-Based Protein Macromolecular Framework Structures Assembled via Coiled-Coil Interactions
    Hewagama, Nathasha D.
    Uchida, Masaki
    Wang, Yang
    Kraj, Pawel
    Lee, Byeongdu
    Douglas, Trevor
    BIOMACROMOLECULES, 2023, 24 (08) : 3716 - 3728
  • [38] Predicting higher-order mutational effects in an RNA enzyme by machine learning of high-throughput experimental data
    Beck, James D. D.
    Roberts, Jessica M. M.
    Kitzhaber, Joey M. M.
    Trapp, Ashlyn
    Serra, Edoardo
    Spezzano, Francesca
    Hayden, Eric J. J.
    FRONTIERS IN MOLECULAR BIOSCIENCES, 2022, 9
  • [39] Shape Phase Transitions in Even-Even 176-198Pt: Higher-Order Interactions in the Interacting Boson Model
    Li, Dongkang
    Wang, Tao
    Pan, Feng
    SYMMETRY-BASEL, 2022, 14 (12):
  • [40] Higher-order species interactions cause time-dependent niche and fitness differences: Experimental evidence in plant-feeding arthropods
    Majer, Agnieszka
    Skoracka, Anna
    Spaak, Juerg
    Kuczynski, Lechoslaw
    ECOLOGY LETTERS, 2024, 27 (05)