Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg
Background<p>Glioma heterogeneity and therapeutic resistance are closely linked to dysregulated programmed cell death (PCD). While individual PCD pathways have been studied, the integrated network of multi-modal PCD interactions and their clinical implications in glioma remain poorly understoo...
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| مؤلفون آخرون: | , , , , , , , , , , |
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2025
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| _version_ | 1852016458287022080 |
|---|---|
| author | Minhao Huang (4952764) |
| author2 | Kai Zhao (53042) Yongtao Yang (181293) Kexin Mao (12540298) Hangyu Ma (22274422) Tingting Wu (228837) Guolin Shi (6106217) Wenhu Li (1474375) Yan Li (23143) Ruiqi Peng (13389684) Ying Cheng (288456) Ninghui Zhao (6850274) |
| author2_role | author author author author author author author author author author author |
| author_facet | Minhao Huang (4952764) Kai Zhao (53042) Yongtao Yang (181293) Kexin Mao (12540298) Hangyu Ma (22274422) Tingting Wu (228837) Guolin Shi (6106217) Wenhu Li (1474375) Yan Li (23143) Ruiqi Peng (13389684) Ying Cheng (288456) Ninghui Zhao (6850274) |
| author_role | author |
| dc.creator.none.fl_str_mv | Minhao Huang (4952764) Kai Zhao (53042) Yongtao Yang (181293) Kexin Mao (12540298) Hangyu Ma (22274422) Tingting Wu (228837) Guolin Shi (6106217) Wenhu Li (1474375) Yan Li (23143) Ruiqi Peng (13389684) Ying Cheng (288456) Ninghui Zhao (6850274) |
| dc.date.none.fl_str_mv | 2025-09-19T05:18:57Z |
| dc.identifier.none.fl_str_mv | 10.3389/fcell.2025.1677290.s004 |
| dc.relation.none.fl_str_mv | https://figshare.com/articles/figure/Image_1_Integrated_machine_learning_analysis_of_30_cell_death_patterns_identifies_a_novel_prognostic_signature_in_glioma_jpeg/30163150 |
| dc.rights.none.fl_str_mv | CC BY 4.0 info:eu-repo/semantics/openAccess |
| dc.subject.none.fl_str_mv | Cell Biology glioma programmed cell death machine learning immune microenvironment drug sensitivity prognostic model |
| dc.title.none.fl_str_mv | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| dc.type.none.fl_str_mv | Image Figure info:eu-repo/semantics/publishedVersion image |
| description | Background<p>Glioma heterogeneity and therapeutic resistance are closely linked to dysregulated programmed cell death (PCD). While individual PCD pathways have been studied, the integrated network of multi-modal PCD interactions and their clinical implications in glioma remain poorly understood. This study aims to decipher the interplay between 30 distinct PCD modalities and the immune microenvironment, developing a robust prognostic signature to guide therapy.</p>Methods<p>This study integrated 2,743 glioma samples from TCGA, CGGA, and GEO databases, encompassing RNA-seq, single-cell transcriptomic (GSE167960), and mutational data. Through literature mining and GeneCards database screening, 30 programmed cell death (PCD)-related gene sets (total 11,681 genes) were curated, identifying 428 differentially expressed genes (DEGs; |log<sub>2</sub>FC|>1, p < 0.05). A pan-death prognostic signature (Cell-Death Score, CDS) was constructed using 114 machine learning algorithm combinations, refined via CoxBoost to select 25 key genes. CIBERSORT quantified the abundance of 22 immune cell subsets, while ssGSEA assessed functional activity of 28 immune cell types. Drug sensitivity predictions employed GDSC database, with single-cell trajectory analysis validating molecular mechanisms and therapeutic strategies. In vitro, differential expression profiles of key genes were first examined between human normal astrocyte cell lines (SVG-P12) and three glioma cell lines (U87, U251, LN229). Subsequently, RNA-seq and qRT-PCR validated expression patterns of 25 key genes in tumor/adjacent non-tumorous tissues from 7 glioma patients. Finally, spatial transcriptomic data from 4 glioma tissue samples in our cohort (including two paired tumor-adjacent non-tumorous samples and two tumor-only samples) were integrated to delineate spatial expression patterns of key genes.</p>Results<p>Integrated analysis of 2,743 public gliomas samples identified 428 cell death-associated differentially expressed genes, enriched in neuroactive ligand-receptor interactions and extracellular matrix regulation. Unsupervised clustering revealed distinct immune-activated and immune-silent patient subtypes. A pan-death prognostic signature (Cell-Death Score, CDS), constructed via multi-algorithm machine learning and optimized using CoxBoost to incorporate 25 key genes, demonstrated robust performance in training (1-/3-year AUC = 0.894/0.943) and validation cohort (C-index = 0.717), effectively stratifying high-risk patients (HR = 3.21, p < 0.0001). High-CDS patients displayed elevated tumor mutational burden, homologous recombination deficiency, and immune checkpoint expression, alongside enhanced sensitivity to 11 therapeutic agents, including gemcitabine. Single-cell trajectory analysis confirmed significant activation of model genes during glioma progression. A clinical nomogram integrating CDS, WHO grade and radiotherapy further improved prognostic utility. Based on in vitro cell line experiments, the expression profiles of 25 key genes demonstrated significant heterogeneity, with partial genes undetectable by qRT-PCR due to expression levels falling below detection thresholds. Among seven genes consistently detected across all 4 cell lines, tumor cell lines exhibited significantly upregulated expression relative to normal astrocyte counterparts. RNA-seq analysis revealed effective detection of 24/25 key genes in seven paired tumor/adjacent tissue samples, with 20 genes showing higher mean expression in tumor tissues. qRT-PCR validation confirmed upregulated trends for 12 detectable genes in tumor tissues. Spatial transcriptomic analysis further corroborated tumor region-specific overexpression of all 25 key genes compared to adjacent non-tumorous areas.</p>Conclusion<p>The CDS signature unravels the molecular interplay between glioma cell death heterogeneity, immune dysregulation, and therapeutic resistance. This biomarker system provides both prognostic and therapeutic insights for precision oncology, paving the way for personalized combination therapies in glioma management.</p> |
| eu_rights_str_mv | openAccess |
| id | Manara_ec3d2bedc42207fa580aff5894b8fa4e |
| identifier_str_mv | 10.3389/fcell.2025.1677290.s004 |
| network_acronym_str | Manara |
| network_name_str | ManaraRepo |
| oai_identifier_str | oai:figshare.com:article/30163150 |
| publishDate | 2025 |
| repository.mail.fl_str_mv | |
| repository.name.fl_str_mv | |
| repository_id_str | |
| rights_invalid_str_mv | CC BY 4.0 |
| spelling | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpegMinhao Huang (4952764)Kai Zhao (53042)Yongtao Yang (181293)Kexin Mao (12540298)Hangyu Ma (22274422)Tingting Wu (228837)Guolin Shi (6106217)Wenhu Li (1474375)Yan Li (23143)Ruiqi Peng (13389684)Ying Cheng (288456)Ninghui Zhao (6850274)Cell Biologygliomaprogrammed cell deathmachine learningimmune microenvironmentdrug sensitivityprognostic modelBackground<p>Glioma heterogeneity and therapeutic resistance are closely linked to dysregulated programmed cell death (PCD). While individual PCD pathways have been studied, the integrated network of multi-modal PCD interactions and their clinical implications in glioma remain poorly understood. This study aims to decipher the interplay between 30 distinct PCD modalities and the immune microenvironment, developing a robust prognostic signature to guide therapy.</p>Methods<p>This study integrated 2,743 glioma samples from TCGA, CGGA, and GEO databases, encompassing RNA-seq, single-cell transcriptomic (GSE167960), and mutational data. Through literature mining and GeneCards database screening, 30 programmed cell death (PCD)-related gene sets (total 11,681 genes) were curated, identifying 428 differentially expressed genes (DEGs; |log<sub>2</sub>FC|>1, p < 0.05). A pan-death prognostic signature (Cell-Death Score, CDS) was constructed using 114 machine learning algorithm combinations, refined via CoxBoost to select 25 key genes. CIBERSORT quantified the abundance of 22 immune cell subsets, while ssGSEA assessed functional activity of 28 immune cell types. Drug sensitivity predictions employed GDSC database, with single-cell trajectory analysis validating molecular mechanisms and therapeutic strategies. In vitro, differential expression profiles of key genes were first examined between human normal astrocyte cell lines (SVG-P12) and three glioma cell lines (U87, U251, LN229). Subsequently, RNA-seq and qRT-PCR validated expression patterns of 25 key genes in tumor/adjacent non-tumorous tissues from 7 glioma patients. Finally, spatial transcriptomic data from 4 glioma tissue samples in our cohort (including two paired tumor-adjacent non-tumorous samples and two tumor-only samples) were integrated to delineate spatial expression patterns of key genes.</p>Results<p>Integrated analysis of 2,743 public gliomas samples identified 428 cell death-associated differentially expressed genes, enriched in neuroactive ligand-receptor interactions and extracellular matrix regulation. Unsupervised clustering revealed distinct immune-activated and immune-silent patient subtypes. A pan-death prognostic signature (Cell-Death Score, CDS), constructed via multi-algorithm machine learning and optimized using CoxBoost to incorporate 25 key genes, demonstrated robust performance in training (1-/3-year AUC = 0.894/0.943) and validation cohort (C-index = 0.717), effectively stratifying high-risk patients (HR = 3.21, p < 0.0001). High-CDS patients displayed elevated tumor mutational burden, homologous recombination deficiency, and immune checkpoint expression, alongside enhanced sensitivity to 11 therapeutic agents, including gemcitabine. Single-cell trajectory analysis confirmed significant activation of model genes during glioma progression. A clinical nomogram integrating CDS, WHO grade and radiotherapy further improved prognostic utility. Based on in vitro cell line experiments, the expression profiles of 25 key genes demonstrated significant heterogeneity, with partial genes undetectable by qRT-PCR due to expression levels falling below detection thresholds. Among seven genes consistently detected across all 4 cell lines, tumor cell lines exhibited significantly upregulated expression relative to normal astrocyte counterparts. RNA-seq analysis revealed effective detection of 24/25 key genes in seven paired tumor/adjacent tissue samples, with 20 genes showing higher mean expression in tumor tissues. qRT-PCR validation confirmed upregulated trends for 12 detectable genes in tumor tissues. Spatial transcriptomic analysis further corroborated tumor region-specific overexpression of all 25 key genes compared to adjacent non-tumorous areas.</p>Conclusion<p>The CDS signature unravels the molecular interplay between glioma cell death heterogeneity, immune dysregulation, and therapeutic resistance. This biomarker system provides both prognostic and therapeutic insights for precision oncology, paving the way for personalized combination therapies in glioma management.</p>2025-09-19T05:18:57ZImageFigureinfo:eu-repo/semantics/publishedVersionimage10.3389/fcell.2025.1677290.s004https://figshare.com/articles/figure/Image_1_Integrated_machine_learning_analysis_of_30_cell_death_patterns_identifies_a_novel_prognostic_signature_in_glioma_jpeg/30163150CC BY 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/301631502025-09-19T05:18:57Z |
| spellingShingle | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg Minhao Huang (4952764) Cell Biology glioma programmed cell death machine learning immune microenvironment drug sensitivity prognostic model |
| status_str | publishedVersion |
| title | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| title_full | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| title_fullStr | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| title_full_unstemmed | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| title_short | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| title_sort | Image 1_Integrated machine learning analysis of 30 cell death patterns identifies a novel prognostic signature in glioma.jpeg |
| topic | Cell Biology glioma programmed cell death machine learning immune microenvironment drug sensitivity prognostic model |