Causal network inference based on cross-validation predictability

被引:0
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作者
Yuelei Zhang [1 ]
Qingcui Li [2 ]
Jiachen Wang [3 ]
Xiao Chang [1 ]
Luonan Chen [4 ]
Xiaoping Liu [1 ]
机构
[1] University of Chinese Academy of Sciences,Key Laboratory of Systems Health Science of Zhejiang Province, School of Life Science, Hangzhou Institute for Advanced Study
[2] Nanjing University,School of Life Sciences
[3] University of Chinese Academy of Sciences,School of Pharmaceutical Science and Technology, Hangzhou Institute for Advanced Study
[4] Anhui University of Finance and Economics,Institute of Statistics and Applied Mathematics
[5] Shanghai Jiao Tong University,School of Mathematical Sciences and School of AI
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D O I
10.1038/s42005-025-02091-4
中图分类号
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摘要
Identifying causal relations or causal networks among molecules/genes, rather than just their correlations, is of great importance but challenging in biology and medical field, which is essential for unraveling molecular mechanisms of disease progression and developing effective therapies for disease treatment. However, there is still a lack of high-quality causal inference algorithms for any observed data in contrast to time-series data. In this study, we developed a causal concept for any observed data based on cross-validated predictability (CVP). The CVP can quantify the causal effects among observed variables in a system. The causality was extensively validated by combining a large variety of statistical simulation experiments and available benchmark data (simulated data and various real data). Combining the predicted causal network and the real benchmark network, the CVP algorithm demonstrates high accuracy and strong robustness in comparison with the mainstream algorithms.
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