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Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer

As the most aggressive tumor, the outcome of pancreatic cancer (PACA) has not improved observably over the last decade. Anatomy-based TNM staging does not exactly identify treatment-sensitive patients, and an ideal biomarker is urgently needed for precision medicine. Based on expression files of 128...

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Autores principales: Wang, Libo, Liu, Zaoqu, Liang, Ruopeng, Wang, Weijie, Zhu, Rongtao, Li, Jian, Xing, Zhe, Weng, Siyuan, Han, Xinwei, Sun, Yu-ling
Formato: Online Artículo Texto
Lenguaje:English
Publicado: eLife Sciences Publications, Ltd 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9596158/
https://www.ncbi.nlm.nih.gov/pubmed/36282174
http://dx.doi.org/10.7554/eLife.80150
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author Wang, Libo
Liu, Zaoqu
Liang, Ruopeng
Wang, Weijie
Zhu, Rongtao
Li, Jian
Xing, Zhe
Weng, Siyuan
Han, Xinwei
Sun, Yu-ling
author_facet Wang, Libo
Liu, Zaoqu
Liang, Ruopeng
Wang, Weijie
Zhu, Rongtao
Li, Jian
Xing, Zhe
Weng, Siyuan
Han, Xinwei
Sun, Yu-ling
author_sort Wang, Libo
collection PubMed
description As the most aggressive tumor, the outcome of pancreatic cancer (PACA) has not improved observably over the last decade. Anatomy-based TNM staging does not exactly identify treatment-sensitive patients, and an ideal biomarker is urgently needed for precision medicine. Based on expression files of 1280 patients from 10 multicenter cohorts, we screened 32 consensus prognostic genes. Ten machine-learning algorithms were transformed into 76 combinations, of which we selected the optimal algorithm to construct an artificial intelligence-derived prognostic signature (AIDPS) according to the average C-index in the nine testing cohorts. The results of the training cohort, nine testing cohorts, Meta-Cohort, and three external validation cohorts (290 patients) consistently indicated that AIDPS could accurately predict the prognosis of PACA. After incorporating several vital clinicopathological features and 86 published signatures, AIDPS exhibited robust and dramatically superior predictive capability. Moreover, in other prevalent digestive system tumors, the nine-gene AIDPS could still accurately stratify the prognosis. Of note, our AIDPS had important clinical implications for PACA, and patients with low AIDPS owned a dismal prognosis, higher genomic alterations, and denser immune cell infiltrates as well as were more sensitive to immunotherapy. Meanwhile, the high AIDPS group possessed observably prolonged survival, and panobinostat may be a potential agent for patients with high AIDPS. Overall, our study provides an attractive tool to further guide the clinical management and individualized treatment of PACA.
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spelling pubmed-95961582022-10-26 Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer Wang, Libo Liu, Zaoqu Liang, Ruopeng Wang, Weijie Zhu, Rongtao Li, Jian Xing, Zhe Weng, Siyuan Han, Xinwei Sun, Yu-ling eLife Cancer Biology As the most aggressive tumor, the outcome of pancreatic cancer (PACA) has not improved observably over the last decade. Anatomy-based TNM staging does not exactly identify treatment-sensitive patients, and an ideal biomarker is urgently needed for precision medicine. Based on expression files of 1280 patients from 10 multicenter cohorts, we screened 32 consensus prognostic genes. Ten machine-learning algorithms were transformed into 76 combinations, of which we selected the optimal algorithm to construct an artificial intelligence-derived prognostic signature (AIDPS) according to the average C-index in the nine testing cohorts. The results of the training cohort, nine testing cohorts, Meta-Cohort, and three external validation cohorts (290 patients) consistently indicated that AIDPS could accurately predict the prognosis of PACA. After incorporating several vital clinicopathological features and 86 published signatures, AIDPS exhibited robust and dramatically superior predictive capability. Moreover, in other prevalent digestive system tumors, the nine-gene AIDPS could still accurately stratify the prognosis. Of note, our AIDPS had important clinical implications for PACA, and patients with low AIDPS owned a dismal prognosis, higher genomic alterations, and denser immune cell infiltrates as well as were more sensitive to immunotherapy. Meanwhile, the high AIDPS group possessed observably prolonged survival, and panobinostat may be a potential agent for patients with high AIDPS. Overall, our study provides an attractive tool to further guide the clinical management and individualized treatment of PACA. eLife Sciences Publications, Ltd 2022-10-25 /pmc/articles/PMC9596158/ /pubmed/36282174 http://dx.doi.org/10.7554/eLife.80150 Text en © 2022, Wang, Liu, Liang et al https://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use and redistribution provided that the original author and source are credited.
spellingShingle Cancer Biology
Wang, Libo
Liu, Zaoqu
Liang, Ruopeng
Wang, Weijie
Zhu, Rongtao
Li, Jian
Xing, Zhe
Weng, Siyuan
Han, Xinwei
Sun, Yu-ling
Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
title Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
title_full Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
title_fullStr Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
title_full_unstemmed Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
title_short Comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
title_sort comprehensive machine-learning survival framework develops a consensus model in large-scale multicenter cohorts for pancreatic cancer
topic Cancer Biology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9596158/
https://www.ncbi.nlm.nih.gov/pubmed/36282174
http://dx.doi.org/10.7554/eLife.80150
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