Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients

Abstract Pancreatic adenocarcinoma (PAAD) is a highly lethal malignancy with limited effective prognostic biomarkers. In this study, 1,034 samples from TCGA-PAAD, GSE62452, GSE28735, GSE183795, and ICGC cohorts were systematically integrated to identify key programmed cell death-related genes (PCDRG...

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Main Authors: Bing Wang, Zhida Long, Xun Zou, Zhengang Sun, Yuanchu Xiao
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-10847-9
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author Bing Wang
Zhida Long
Xun Zou
Zhengang Sun
Yuanchu Xiao
author_facet Bing Wang
Zhida Long
Xun Zou
Zhengang Sun
Yuanchu Xiao
author_sort Bing Wang
collection DOAJ
description Abstract Pancreatic adenocarcinoma (PAAD) is a highly lethal malignancy with limited effective prognostic biomarkers. In this study, 1,034 samples from TCGA-PAAD, GSE62452, GSE28735, GSE183795, and ICGC cohorts were systematically integrated to identify key programmed cell death-related genes (PCDRGs) associated with patient prognosis. Differential expression analysis and Univariate Cox regression analysis identified 17 candidate PCD-related genes significantly associated with overall survival. Using a comprehensive machine learning framework involving 117 algorithmic combinations under a Leave-one-out cross-validation (LOOCV) strategy, we identified the StepCox[both] + Ridge as the best algorithms composition to construct a prognostic model based on six PCDRGs, ITGA3, CDCP1, IL1RAP, CLU, PBK, and PLAU. The model was validated to have robust predictive performance. Risk scores were significantly correlated with clinical features, immune microenvironment characteristics, and chemotherapeutic sensitivity. High-risk patients exhibited worse prognosis and immunosuppressive infiltration patterns. Furthermore, consensus clustering identified two PAAD molecular subtypes with distinct PCDRGs expression patterns and survival outcomes. A nomogram integrating risk score and clinical variables exhibited strong prognostic accuracy for 1-, 3-, and 5-year survival prediction. In summary, we established and validated a PCD-related prognostic signature that effectively stratifies PAAD patients by clinical outcome, immune contexture, and therapeutic response, providing novel insights for personalized management strategies.
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spelling doaj-art-0a3bf9f17d044a939e61d0c72f97e7412025-08-20T03:05:21ZengNature PortfolioScientific Reports2045-23222025-07-0115111510.1038/s41598-025-10847-9Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patientsBing Wang0Zhida Long1Xun Zou2Zhengang Sun3Yuanchu Xiao4Department of Hepatobiliary Pancreatic and Splentic Surgery, Jingzhou Hospital Affiliated to Yangtze UniversityDepartment of Hepatobiliary Pancreatic and Splentic Surgery, Jingzhou Hospital Affiliated to Yangtze UniversityDepartment of Hepatobiliary Pancreatic and Splentic Surgery, Jingzhou Hospital Affiliated to Yangtze UniversityDepartment of Hepatobiliary Pancreatic and Splentic Surgery, Jingzhou Hospital Affiliated to Yangtze UniversityDepartment of Hepatobiliary Pancreatic and Splentic Surgery, Jingzhou Hospital Affiliated to Yangtze UniversityAbstract Pancreatic adenocarcinoma (PAAD) is a highly lethal malignancy with limited effective prognostic biomarkers. In this study, 1,034 samples from TCGA-PAAD, GSE62452, GSE28735, GSE183795, and ICGC cohorts were systematically integrated to identify key programmed cell death-related genes (PCDRGs) associated with patient prognosis. Differential expression analysis and Univariate Cox regression analysis identified 17 candidate PCD-related genes significantly associated with overall survival. Using a comprehensive machine learning framework involving 117 algorithmic combinations under a Leave-one-out cross-validation (LOOCV) strategy, we identified the StepCox[both] + Ridge as the best algorithms composition to construct a prognostic model based on six PCDRGs, ITGA3, CDCP1, IL1RAP, CLU, PBK, and PLAU. The model was validated to have robust predictive performance. Risk scores were significantly correlated with clinical features, immune microenvironment characteristics, and chemotherapeutic sensitivity. High-risk patients exhibited worse prognosis and immunosuppressive infiltration patterns. Furthermore, consensus clustering identified two PAAD molecular subtypes with distinct PCDRGs expression patterns and survival outcomes. A nomogram integrating risk score and clinical variables exhibited strong prognostic accuracy for 1-, 3-, and 5-year survival prediction. In summary, we established and validated a PCD-related prognostic signature that effectively stratifies PAAD patients by clinical outcome, immune contexture, and therapeutic response, providing novel insights for personalized management strategies.https://doi.org/10.1038/s41598-025-10847-9Pancreatic adenocarcinomaProgrammed cell deathMachine learningPrognosisImmune infiltration
spellingShingle Bing Wang
Zhida Long
Xun Zou
Zhengang Sun
Yuanchu Xiao
Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
Scientific Reports
Pancreatic adenocarcinoma
Programmed cell death
Machine learning
Prognosis
Immune infiltration
title Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
title_full Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
title_fullStr Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
title_full_unstemmed Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
title_short Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
title_sort machine learning based construction of a programmed cell death related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma patients
topic Pancreatic adenocarcinoma
Programmed cell death
Machine learning
Prognosis
Immune infiltration
url https://doi.org/10.1038/s41598-025-10847-9
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