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Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer

BACKGROUND: Several pro-oncogenic signals, including transforming growth factor beta (TGF-β) signalling from tumour microenvironment, generate intratumoural phenotypic heterogeneity and result in tumour progression and treatment failure. However, the precise diagnosis for tumour areas containing sub...

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Autores principales: Ishii, Hiroki, Saitoh, Masao, Sakamoto, Kaname, Sakamoto, Kei, Saigusa, Daisuke, Kasai, Hirotake, Ashizawa, Kei, Miyazawa, Keiji, Takeda, Sen, Masuyama, Keisuke, Yoshimura, Kentaro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7109155/
https://www.ncbi.nlm.nih.gov/pubmed/32020064
http://dx.doi.org/10.1038/s41416-020-0732-y
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author Ishii, Hiroki
Saitoh, Masao
Sakamoto, Kaname
Sakamoto, Kei
Saigusa, Daisuke
Kasai, Hirotake
Ashizawa, Kei
Miyazawa, Keiji
Takeda, Sen
Masuyama, Keisuke
Yoshimura, Kentaro
author_facet Ishii, Hiroki
Saitoh, Masao
Sakamoto, Kaname
Sakamoto, Kei
Saigusa, Daisuke
Kasai, Hirotake
Ashizawa, Kei
Miyazawa, Keiji
Takeda, Sen
Masuyama, Keisuke
Yoshimura, Kentaro
author_sort Ishii, Hiroki
collection PubMed
description BACKGROUND: Several pro-oncogenic signals, including transforming growth factor beta (TGF-β) signalling from tumour microenvironment, generate intratumoural phenotypic heterogeneity and result in tumour progression and treatment failure. However, the precise diagnosis for tumour areas containing subclones with cytokine-induced malignant properties remains clinically challenging. METHODS: We established a rapid diagnostic system based on the combination of probe electrospray ionisation-mass spectrometry (PESI-MS) and machine learning without the aid of immunohistological and biochemical procedures to identify tumour areas with heterogeneous TGF-β signalling status in head and neck squamous cell carcinoma (HNSCC). A total of 240 and 90 mass spectra were obtained from TGF-β-unstimulated and -stimulated HNSCC cells, respectively, by PESI-MS and were used for the construction of a diagnostic system based on lipidome. RESULTS: This discriminant algorithm achieved 98.79% accuracy in discrimination of TGF-β1-stimulated cells from untreated cells. In clinical human HNSCC tissues, this approach achieved determination of tumour areas with activated TGF-β signalling as efficiently as a conventional histopathological assessment using phosphorylated-SMAD2 staining. Furthermore, several altered peaks on mass spectra were identified as phosphatidylcholine species in TGF-β-stimulated HNSCC cells. CONCLUSIONS: This diagnostic system combined with PESI-MS and machine learning encourages us to clinically diagnose intratumoural phenotypic heterogeneity induced by TGF-β.
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spelling pubmed-71091552021-02-05 Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer Ishii, Hiroki Saitoh, Masao Sakamoto, Kaname Sakamoto, Kei Saigusa, Daisuke Kasai, Hirotake Ashizawa, Kei Miyazawa, Keiji Takeda, Sen Masuyama, Keisuke Yoshimura, Kentaro Br J Cancer Article BACKGROUND: Several pro-oncogenic signals, including transforming growth factor beta (TGF-β) signalling from tumour microenvironment, generate intratumoural phenotypic heterogeneity and result in tumour progression and treatment failure. However, the precise diagnosis for tumour areas containing subclones with cytokine-induced malignant properties remains clinically challenging. METHODS: We established a rapid diagnostic system based on the combination of probe electrospray ionisation-mass spectrometry (PESI-MS) and machine learning without the aid of immunohistological and biochemical procedures to identify tumour areas with heterogeneous TGF-β signalling status in head and neck squamous cell carcinoma (HNSCC). A total of 240 and 90 mass spectra were obtained from TGF-β-unstimulated and -stimulated HNSCC cells, respectively, by PESI-MS and were used for the construction of a diagnostic system based on lipidome. RESULTS: This discriminant algorithm achieved 98.79% accuracy in discrimination of TGF-β1-stimulated cells from untreated cells. In clinical human HNSCC tissues, this approach achieved determination of tumour areas with activated TGF-β signalling as efficiently as a conventional histopathological assessment using phosphorylated-SMAD2 staining. Furthermore, several altered peaks on mass spectra were identified as phosphatidylcholine species in TGF-β-stimulated HNSCC cells. CONCLUSIONS: This diagnostic system combined with PESI-MS and machine learning encourages us to clinically diagnose intratumoural phenotypic heterogeneity induced by TGF-β. Nature Publishing Group UK 2020-02-05 2020-03-31 /pmc/articles/PMC7109155/ /pubmed/32020064 http://dx.doi.org/10.1038/s41416-020-0732-y Text en © The Author(s), under exclusive licence to Cancer Research UK 2020 https://creativecommons.org/licenses/by/4.0/Note This work is published under the standard license to publish agreement. After 12 months the work will become freely available and the license terms will switch to a Creative Commons Attribution 4.0 International (CC BY 4.0).
spellingShingle Article
Ishii, Hiroki
Saitoh, Masao
Sakamoto, Kaname
Sakamoto, Kei
Saigusa, Daisuke
Kasai, Hirotake
Ashizawa, Kei
Miyazawa, Keiji
Takeda, Sen
Masuyama, Keisuke
Yoshimura, Kentaro
Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer
title Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer
title_full Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer
title_fullStr Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer
title_full_unstemmed Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer
title_short Lipidome-based rapid diagnosis with machine learning for detection of TGF-β signalling activated area in head and neck cancer
title_sort lipidome-based rapid diagnosis with machine learning for detection of tgf-β signalling activated area in head and neck cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7109155/
https://www.ncbi.nlm.nih.gov/pubmed/32020064
http://dx.doi.org/10.1038/s41416-020-0732-y
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