Kim Jungwoo, Park Seong-Ho, Hur Junho K, Park Sung Bae
Department of Neurosurgery, Seoul National University Boramae Medical Center, Seoul, Korea.
Departments of Medicine, Major in Medical Genetics, Graduate School, Hanyang University, Seoul, Korea.
J Bone Metab. 2025 Aug;32(3):232-243. doi: 10.11005/jbm.25.863. Epub 2025 Aug 31.
This study aimed to infer a causal gene network associated with bone metastasis in lung cancer and to validate its reliability through experimental gene expression analysis.
Using DNA microarray data from the Gene Expression Omnibus, we analyzed samples from primary lung cancer and those with bone metastasis. Commonly expressed genes in both groups were identified, and a causal network was inferred using Bayesian network inference with Java Objects based on the Bayesian Dirichlet score. To evaluate the network, we predicted the expression changes of downstream genes following knockdown of a key upstream gene and compared these predictions with mRNA expression levels in fatty acid desaturase 1 (FADS1)-knockdown lung cancer cells.
The genes FADS1, cardiotrophin-like cytokine factor 1 (CLCF1), chromosome 4 open reading frame 48, sushi, nidogen and EGF like domains 1, FK506-binding protein 15, and coenzyme Q10A (COQ10A) were identified as directly associated with lung cancer bone metastasis. Among them, FADS1 appeared to have a regulatory role, influencing downstream targets. Notably, CLCF1 and COQ10A showed significantly increased expression in FADS1-knockdown cells, consistent with the network's predictions.
These findings suggest that Bayesian network analysis is a reliable machine learning approach for uncovering causal gene relationships in cancer metastasis. Furthermore, FADS1 may serve as a potential therapeutic target in lung cancer bone metastasis. The validity of this network was supported by in vitro experiments using a lung cancer cell line.
本研究旨在推断与肺癌骨转移相关的因果基因网络,并通过实验性基因表达分析验证其可靠性。
利用来自基因表达综合数据库(Gene Expression Omnibus)的DNA微阵列数据,我们分析了原发性肺癌和骨转移癌的样本。确定了两组中共同表达的基因,并使用基于贝叶斯狄利克雷评分的Java对象贝叶斯网络推理来推断因果网络。为了评估该网络,我们预测了关键上游基因敲低后下游基因的表达变化,并将这些预测结果与脂肪酸去饱和酶1(FADS1)敲低的肺癌细胞中的mRNA表达水平进行比较。
基因FADS1、类心肌营养素细胞因子1(CLCF1)、4号染色体开放阅读框48、寿司、巢蛋白和表皮生长因子样结构域1、FK506结合蛋白15以及辅酶Q10A(COQ10A)被确定为与肺癌骨转移直接相关。其中,FADS1似乎具有调节作用,影响下游靶点。值得注意的是,CLCF1和COQ10A在FADS1敲低的细胞中表达显著增加,与网络预测一致。
这些发现表明,贝叶斯网络分析是一种可靠的机器学习方法,可用于揭示癌症转移中的因果基因关系。此外,FADS1可能是肺癌骨转移的潜在治疗靶点。使用肺癌细胞系的体外实验支持了该网络的有效性。