IBPGNET: lung adenocarcinoma recurrence prediction based on neural network interpretability.
Zhanyu XuHaibo LiaoLiuliu HuangQingfeng ChenWei LanShikang LiPublished in: Briefings in bioinformatics (2024)
Lung adenocarcinoma (LUAD) is the most common histologic subtype of lung cancer. Early-stage patients have a 30-50% probability of metastatic recurrence after surgical treatment. Here, we propose a new computational framework, Interpretable Biological Pathway Graph Neural Networks (IBPGNET), based on pathway hierarchy relationships to predict LUAD recurrence and explore the internal regulatory mechanisms of LUAD. IBPGNET can integrate different omics data efficiently and provide global interpretability. In addition, our experimental results show that IBPGNET outperforms other classification methods in 5-fold cross-validation. IBPGNET identified PSMC1 and PSMD11 as genes associated with LUAD recurrence, and their expression levels were significantly higher in LUAD cells than in normal cells. The knockdown of PSMC1 and PSMD11 in LUAD cells increased their sensitivity to afatinib and decreased cell migration, invasion and proliferation. In addition, the cells showed significantly lower EGFR expression, indicating that PSMC1 and PSMD11 may mediate therapeutic sensitivity through EGFR expression.
Keyphrases
- neural network
- induced apoptosis
- cell cycle arrest
- early stage
- cell migration
- small cell lung cancer
- poor prognosis
- end stage renal disease
- endoplasmic reticulum stress
- squamous cell carcinoma
- deep learning
- chronic kidney disease
- newly diagnosed
- oxidative stress
- lymph node
- free survival
- pi k akt
- single cell
- sentinel lymph node
- patient reported outcomes