Machine Learning for Causal Inference in Biological Networks: Perspectives of This Challenge

被引:21
|
作者
Lecca, Paola [1 ]
机构
[1] Free Univ Bozen Bolzano, Fac Comp Sci, Piazza Domenicani, Bolzano, Italy
来源
关键词
machine learning; deep learning; causality; inference; causal thinking; artificial intelligence; systems biology;
D O I
10.3389/fbinf.2021.746712
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Most machine learning-based methods predict outcomes rather than understanding causality. Machine learning methods have been proved to be efficient in finding correlations in data, but unskilful to determine causation. This issue severely limits the applicability of machine learning methods to infer the causal relationships between the entities of a biological network, and more in general of any dynamical system, such as medical intervention strategies and clinical outcomes system, that is representable as a network. From the perspective of those who want to use the results of network inference not only to understand the mechanisms underlying the dynamics, but also to understand how the network reacts to external stimuli (e. g. environmental factors, therapeutic treatments), tools that can understand the causal relationships between data are highly demanded. Given the increasing popularity of machine learning techniques in computational biology and the recent literature proposing the use of machine learning techniques for the inference of biological networks, we would like to present the challenges that mathematics and computer science research faces in generalising machine learning to an approach capable of understanding causal relationships, and the prospects that achieving this will open up for the medical application domains of systems biology, the main paradigm of which is precisely network biology at any physical scale.
引用
下载
收藏
页数:14
相关论文
共 50 条
  • [1] Machine Learning for Causal Inference in Biological Networks: Perspectives of This Challenge (vol 1, 746712, 2021)
    Lecca, Paola
    FRONTIERS IN BIOINFORMATICS, 2022, 2
  • [2] Machine learning in causal inference for epidemiology
    Chiara Moccia
    Giovenale Moirano
    Maja Popovic
    Costanza Pizzi
    Piero Fariselli
    Lorenzo Richiardi
    Claus Thorn Ekstrøm
    Milena Maule
    European Journal of Epidemiology, 2024, 39 (10) : 1097 - 1108
  • [3] On the relationship of machine learning with causal inference
    Lin, Sheng-Hsuan
    Ikram, Mohammad Arfan
    EUROPEAN JOURNAL OF EPIDEMIOLOGY, 2020, 35 (02) : 183 - 185
  • [4] Machine learning for causal inference in Biostatistics
    Rose, Sherri
    Rizopoulos, Dimitris
    BIOSTATISTICS, 2020, 21 (02) : 336 - 338
  • [5] On the relationship of machine learning with causal inference
    Sheng-Hsuan Lin
    Mohammad Arfan Ikram
    European Journal of Epidemiology, 2020, 35 : 183 - 185
  • [6] Causal Inference Meets Machine Learning
    Cui, Peng
    Shen, Zheyan
    Li, Sheng
    Yao, Liuyi
    Li, Yaliang
    Chu, Zhixuan
    Gao, Jing
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 3527 - 3528
  • [7] Machine Learning to Improve Causal Inference in Pharmacoepidemiology
    Roy, Jason
    Mitra, Nandita
    PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2019, 28 : 26 - 27
  • [8] Machine Learning in Causal Inference: Application in Pharmacovigilance
    Yiqing Zhao
    Yue Yu
    Hanyin Wang
    Yikuan Li
    Yu Deng
    Guoqian Jiang
    Yuan Luo
    Drug Safety, 2022, 45 : 459 - 476
  • [9] Machine Learning in Causal Inference: Application in Pharmacovigilance
    Zhao, Yiqing
    Yu, Yue
    Wang, Hanyin
    Li, Yikuan
    Deng, Yu
    Jiang, Guoqian
    Luo, Yuan
    DRUG SAFETY, 2022, 45 (05) : 459 - 476
  • [10] Causal inference and machine learning in endocrine epidemiology
    Inoue, Kosuke
    ENDOCRINE JOURNAL, 2024,