Prediction of clinical prognosis and drug sensitivity in hepatocellular carcinoma through the combination of multiple cell death pathways
- PMID: 39192561
- DOI: 10.1002/cbin.12235
Prediction of clinical prognosis and drug sensitivity in hepatocellular carcinoma through the combination of multiple cell death pathways
Abstract
Hepatocellular carcinoma (HCC) is the sixth most common malignant tumor, highlighting a significant need for reliable predictive models to assess clinical prognosis, disease progression, and drug sensitivity. Recent studies have highlighted the critical role of various programmed cell death pathways, including apoptosis, necroptosis, pyroptosis, ferroptosis, cuproptosis, entotic cell death, NETotic cell death, parthanatos, lysosome-dependent cell death, autophagy-dependent cell death, alkaliptosis, oxeiptosis, and disulfidptosis, in tumor development. Therefore, by investigating these pathways, we aimed to develop a predictive model for HCC prognosis and drug sensitivity. We analyzed transcriptome, single-cell transcriptome, genomic, and clinical information using data from the TCGA-LIHC, GSE14520, GSE45436, and GSE166635 datasets. Machine learning algorithms were used to establish a cell death index (CDI) with seven gene signatures, which was validated across three independent datasets, showing that high CDI correlates with poorer prognosis. Unsupervised clustering revealed three molecular subtypes of HCC with distinct biological processes. Furthermore, a nomogram integrating CDI and clinical information demonstrated good predictive performance. CDI was associated with immune checkpoint genes and tumor microenvironment components using single-cell transcriptome analysis. Drug sensitivity analysis indicated that patients with high CDI may be resistant to oxaliplatin and cisplatin but sensitive to axitinib and sorafenib. In summary, our model offers a precise prediction of clinical outcomes and drug sensitivity for patients with HCC, providing valuable insights for personalized treatment strategies.
Keywords: cell death index; drug sensitivity; hepatocellular carcinoma; prognostic model; programmed cell death; tumor microenvironment.
© 2024 The Author(s). Cell Biology International published by John Wiley & Sons Ltd on behalf of International Federation of Cell Biology.
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References
REFERENCES
-
- Adinolfi, S., Patinen, T., Jawahar Deen, A., Pitkänen, S., Härkönen, J., Kansanen, E., Küblbeck, J., & Levonen, A. L. (2023). The KEAP1‐NRF2 pathway: Targets for therapy and role in cancer. Redox Biology, 63:102726. https://doi.org/10.1016/j.redox.2023.102726
-
- Ajani, J. A., Estrella, J. S., Chen, Q., Correa, A. M., Ma, L., Scott, A. W., Jin, J., Liu, B., Xie, M., Sudo, K., Shiozaki, H., Badgwell, B., Weston, B., Lee, J. H., Bhutani, M. S., Onodera, H., Suzuki, K., Suzuki, A., Ding, S., … Song, S. (2018). Galectin‐3 expression is prognostic in diffuse type gastric adenocarcinoma, confers aggressive phenotype, and can be targeted by YAP1/BET inhibitors. British Journal of Cancer, 118(1), 52–61. https://doi.org/10.1038/bjc.2017.38
-
- Bedoui, S., Herold, M. J., & Strasser, A. (2020). Emerging connectivity of programmed cell death pathways and its physiological implications. Nature Reviews Molecular Cell Biology, 21(11), 678–695. https://doi.org/10.1038/s41580-020-0270-8
-
- Berg, A. L., Rowson‐Hodel, A., Wheeler, M. R., Hu, M., Free, S. R., & Carraway, K. L. I. I. I. (2022). Engaging the lysosome and lysosome‐dependent cell death in cancer. In: H. N. Mayrovitz editor, Breast Cancer [Internet]. Exon Publications.
-
- Bray, F., Ferlay, J., Soerjomataram, I., Siegel, R. L., Torre, L. A., & Jemal, A. (2018). Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA: A Cancer Journal for Clinicians, 68(6), 394–424. https://doi.org/10.3322/caac.21492
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