Understanding diseases as the result of continuous transitions from a healthy system is more realistic than understanding them as discrete states. Here, we designed the spectrum formation approach (SFA), a machine learning-based method that extracts key features contributing to disease state continuity. We applied the SFA to transcriptomic data from patients with progressive liver disease and neurodegenerative movement disorders to examine its effectiveness in identifying biologically relevant gene sets. The SFA identified transcription factors that potentially regulate liver inflammation and voluntary movement. In neurodegenerative disorders, the SFA also identified genes regulated by ETS-1, with unclear effects on movement. In functional assessment using human iPSC-derived neurons, ETS-1 overexpression disrupted dopamine receptor balance, reduced GABA-producing enzyme levels, and promoted cell death. These findings suggest that the SFA enables the discovery of regulatory factors capable of modifying disease states and provides a framework for the continuity-based interpretation of biological systems.
Utility of the continuous spectrum formed by pathological states in characterizing disease properties.
利用病理状态形成的连续谱来表征疾病特性
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作者:Fujiwara Takashi, Kariya Yoshiaki, Kobayashi Kanata, Matsui Soma, Takada Tappei
| 期刊: | npj Systems Biology and Applications | 影响因子: | 3.500 |
| 时间: | 2025 | 起止号: | 2025 Aug 29; 11(1):100 |
| doi: | 10.1038/s41540-025-00579-x | 研究方向: | 其它 |
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