Department of Bioscience and Bioinformatics, Faculty of Computer Science and Systems Engineering, Kyushu Institute of Technology, Iizuka, Fukuoka, 820-8502, Japan.
Department of Surgery, Kyushu University Beppu Hospital, Beppu, Oita, 874-0838, Japan.
NPJ Syst Biol Appl. 2022 Nov 7;8(1):44. doi: 10.1038/s41540-022-00255-4.
Drugs are expected to recover the cell system away from the impaired state to normalcy through disease treatment. However, the understanding of gene regulatory machinery underlying drug activity or disease pathogenesis is far from complete. Here, we perform large-scale regulome analysis for various diseases in terms of gene regulatory machinery. Transcriptome signatures were converted into regulome signatures of transcription factors by integrating publicly available ChIP-seq data. Regulome-based correlations between diseases and their approved drugs were much clearer than the transcriptome-based correlations. For example, an inverse correlation was observed for cancers, whereas a positive correlation was observed for immune system diseases. After demonstrating the usefulness of the regulome-based drug discovery method in terms of accuracy and applicability, we predicted new drugs for nonsmall cell lung cancer and validated the anticancer activity in vitro. The proposed method is useful for understanding disease-disease relationships and drug discovery.
药物有望通过疾病治疗使细胞系统从受损状态恢复正常。然而,对于药物活性或疾病发病机制的基因调控机制的理解还远远不够。在这里,我们针对各种疾病进行了大规模的调控组分析,以了解基因调控机制。通过整合公开的 ChIP-seq 数据,将转录组特征转化为转录因子的调控组特征。基于调控组的疾病及其批准药物之间的相关性比基于转录组的相关性要清晰得多。例如,癌症呈负相关,而免疫系统疾病呈正相关。在证明了基于调控组的药物发现方法在准确性和适用性方面的有效性之后,我们预测了非小细胞肺癌的新药,并在体外验证了其抗癌活性。该方法有助于理解疾病-疾病关系和药物发现。