Cargando…
Salivary metabolomics with machine learning for colorectal cancer detection
As the worldwide prevalence of colorectal cancer (CRC) increases, it is vital to reduce its morbidity and mortality through early detection. Saliva‐based tests are an ideal noninvasive tool for CRC detection. Here, we explored and validated salivary biomarkers to distinguish patients with CRC from t...
Autores principales: | , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
John Wiley and Sons Inc.
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9459332/ https://www.ncbi.nlm.nih.gov/pubmed/35754317 http://dx.doi.org/10.1111/cas.15472 |
_version_ | 1784786487878877184 |
---|---|
author | Kuwabara, Hiroshi Katsumata, Kenji Iwabuchi, Atsuhiro Udo, Ryutaro Tago, Tomoya Kasahara, Kenta Mazaki, Junichi Enomoto, Masanobu Ishizaki, Tetsuo Soya, Ryoko Kaneko, Miku Ota, Sana Enomoto, Ayame Soga, Tomoyoshi Tomita, Masaru Sunamura, Makoto Tsuchida, Akihiko Sugimoto, Masahiro Nagakawa, Yuichi |
author_facet | Kuwabara, Hiroshi Katsumata, Kenji Iwabuchi, Atsuhiro Udo, Ryutaro Tago, Tomoya Kasahara, Kenta Mazaki, Junichi Enomoto, Masanobu Ishizaki, Tetsuo Soya, Ryoko Kaneko, Miku Ota, Sana Enomoto, Ayame Soga, Tomoyoshi Tomita, Masaru Sunamura, Makoto Tsuchida, Akihiko Sugimoto, Masahiro Nagakawa, Yuichi |
author_sort | Kuwabara, Hiroshi |
collection | PubMed |
description | As the worldwide prevalence of colorectal cancer (CRC) increases, it is vital to reduce its morbidity and mortality through early detection. Saliva‐based tests are an ideal noninvasive tool for CRC detection. Here, we explored and validated salivary biomarkers to distinguish patients with CRC from those with adenoma (AD) and healthy controls (HC). Saliva samples were collected from patients with CRC, AD, and HC. Untargeted salivary hydrophilic metabolite profiling was conducted using capillary electrophoresis–mass spectrometry and liquid chromatography–mass spectrometry. An alternative decision tree (ADTree)‐based machine learning (ML) method was used to assess the discrimination abilities of the quantified metabolites. A total of 2602 unstimulated saliva samples were collected from subjects with CRC (n = 235), AD (n = 50), and HC (n = 2317). Data were randomly divided into training (n = 1301) and validation datasets (n = 1301). The clustering analysis showed a clear consistency of aberrant metabolites between the two groups. The ADTree model was optimized through cross‐validation (CV) using the training dataset, and the developed model was validated using the validation dataset. The model discriminating CRC + AD from HC showed area under the receiver‐operating characteristic curves (AUC) of 0.860 (95% confidence interval [CI]: 0.828‐0.891) for CV and 0.870 (95% CI: 0.837‐0.903) for the validation dataset. The other model discriminating CRC from AD + HC showed an AUC of 0.879 (95% CI: 0.851‐0.907) and 0.870 (95% CI: 0.838‐0.902), respectively. Salivary metabolomics combined with ML demonstrated high accuracy and versatility in detecting CRC. |
format | Online Article Text |
id | pubmed-9459332 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | John Wiley and Sons Inc. |
record_format | MEDLINE/PubMed |
spelling | pubmed-94593322022-09-12 Salivary metabolomics with machine learning for colorectal cancer detection Kuwabara, Hiroshi Katsumata, Kenji Iwabuchi, Atsuhiro Udo, Ryutaro Tago, Tomoya Kasahara, Kenta Mazaki, Junichi Enomoto, Masanobu Ishizaki, Tetsuo Soya, Ryoko Kaneko, Miku Ota, Sana Enomoto, Ayame Soga, Tomoyoshi Tomita, Masaru Sunamura, Makoto Tsuchida, Akihiko Sugimoto, Masahiro Nagakawa, Yuichi Cancer Sci ORIGINAL ARTICLES As the worldwide prevalence of colorectal cancer (CRC) increases, it is vital to reduce its morbidity and mortality through early detection. Saliva‐based tests are an ideal noninvasive tool for CRC detection. Here, we explored and validated salivary biomarkers to distinguish patients with CRC from those with adenoma (AD) and healthy controls (HC). Saliva samples were collected from patients with CRC, AD, and HC. Untargeted salivary hydrophilic metabolite profiling was conducted using capillary electrophoresis–mass spectrometry and liquid chromatography–mass spectrometry. An alternative decision tree (ADTree)‐based machine learning (ML) method was used to assess the discrimination abilities of the quantified metabolites. A total of 2602 unstimulated saliva samples were collected from subjects with CRC (n = 235), AD (n = 50), and HC (n = 2317). Data were randomly divided into training (n = 1301) and validation datasets (n = 1301). The clustering analysis showed a clear consistency of aberrant metabolites between the two groups. The ADTree model was optimized through cross‐validation (CV) using the training dataset, and the developed model was validated using the validation dataset. The model discriminating CRC + AD from HC showed area under the receiver‐operating characteristic curves (AUC) of 0.860 (95% confidence interval [CI]: 0.828‐0.891) for CV and 0.870 (95% CI: 0.837‐0.903) for the validation dataset. The other model discriminating CRC from AD + HC showed an AUC of 0.879 (95% CI: 0.851‐0.907) and 0.870 (95% CI: 0.838‐0.902), respectively. Salivary metabolomics combined with ML demonstrated high accuracy and versatility in detecting CRC. John Wiley and Sons Inc. 2022-07-08 2022-09 /pmc/articles/PMC9459332/ /pubmed/35754317 http://dx.doi.org/10.1111/cas.15472 Text en © 2022 The Authors. Cancer Science published by John Wiley & Sons Australia, Ltd on behalf of Japanese Cancer Association. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes. |
spellingShingle | ORIGINAL ARTICLES Kuwabara, Hiroshi Katsumata, Kenji Iwabuchi, Atsuhiro Udo, Ryutaro Tago, Tomoya Kasahara, Kenta Mazaki, Junichi Enomoto, Masanobu Ishizaki, Tetsuo Soya, Ryoko Kaneko, Miku Ota, Sana Enomoto, Ayame Soga, Tomoyoshi Tomita, Masaru Sunamura, Makoto Tsuchida, Akihiko Sugimoto, Masahiro Nagakawa, Yuichi Salivary metabolomics with machine learning for colorectal cancer detection |
title | Salivary metabolomics with machine learning for colorectal cancer detection |
title_full | Salivary metabolomics with machine learning for colorectal cancer detection |
title_fullStr | Salivary metabolomics with machine learning for colorectal cancer detection |
title_full_unstemmed | Salivary metabolomics with machine learning for colorectal cancer detection |
title_short | Salivary metabolomics with machine learning for colorectal cancer detection |
title_sort | salivary metabolomics with machine learning for colorectal cancer detection |
topic | ORIGINAL ARTICLES |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9459332/ https://www.ncbi.nlm.nih.gov/pubmed/35754317 http://dx.doi.org/10.1111/cas.15472 |
work_keys_str_mv | AT kuwabarahiroshi salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT katsumatakenji salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT iwabuchiatsuhiro salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT udoryutaro salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT tagotomoya salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT kasaharakenta salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT mazakijunichi salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT enomotomasanobu salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT ishizakitetsuo salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT soyaryoko salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT kanekomiku salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT otasana salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT enomotoayame salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT sogatomoyoshi salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT tomitamasaru salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT sunamuramakoto salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT tsuchidaakihiko salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT sugimotomasahiro salivarymetabolomicswithmachinelearningforcolorectalcancerdetection AT nagakawayuichi salivarymetabolomicswithmachinelearningforcolorectalcancerdetection |