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Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers

OBJECTIVE: The accuracy of CA125 or clinical examination in ovarian cancer (OVC) screening is still facing challenges. Serum miRNAs have been considered as promising biomarkers for clinical applications. Here, we propose a single sample classifier (SSC) method based on within-sample relative express...

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Autores principales: Hong, Guini, Luo, Fengyuan, Chen, Zhihong, Ma, Liyuan, Lin, Guiyang, Wu, Tong, Li, Na, Cai, Hao, Hu, Tao, Zhong, Haijian, Guo, You, Li, Hongdong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9378834/
https://www.ncbi.nlm.nih.gov/pubmed/35983098
http://dx.doi.org/10.3389/fmed.2022.923275
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author Hong, Guini
Luo, Fengyuan
Chen, Zhihong
Ma, Liyuan
Lin, Guiyang
Wu, Tong
Li, Na
Cai, Hao
Hu, Tao
Zhong, Haijian
Guo, You
Li, Hongdong
author_facet Hong, Guini
Luo, Fengyuan
Chen, Zhihong
Ma, Liyuan
Lin, Guiyang
Wu, Tong
Li, Na
Cai, Hao
Hu, Tao
Zhong, Haijian
Guo, You
Li, Hongdong
author_sort Hong, Guini
collection PubMed
description OBJECTIVE: The accuracy of CA125 or clinical examination in ovarian cancer (OVC) screening is still facing challenges. Serum miRNAs have been considered as promising biomarkers for clinical applications. Here, we propose a single sample classifier (SSC) method based on within-sample relative expression orderings (REOs) of serum miRNAs for OVC diagnosis. METHODS: Based on the stable REOs within 4,965 non-cancer serum samples, we developed the SSC for OVC in the training cohort (GSE106817: OVC = 200, non-cancer = 2,000) by focusing on highly reversed REOs within OVC. The best diagnosis is achieved using a combination of reversed miRNA pairs, considering the largest evaluation index and the lowest number of miRNA pairs possessed according to the voting rule. The SSC was then validated in internal data (GSE106817: OVC = 120, non-cancer = 759) and external data (GSE113486: OVC = 40, non-cancer = 100). RESULTS: The obtained 13-miRPairs classifier showed high diagnostic accuracy on distinguishing OVC from non-cancer controls in the training set (sensitivity = 98.00%, specificity = 99.60%), which was reproducible in internal data (sensitivity = 98.33%, specificity = 99.21%) and external data (sensitivity = 97.50%, specificity = 100%). Compared with the published models, it stood out in terms of correct positive predictive value (PPV) and negative predictive value (NPV) (PPV = 96.08% and NPV=95.16% in training set, and both above 99% in validation set). In addition, 13-miRPairs demonstrated a classification accuracy of over 97.5% for stage I OVC samples. By integrating other non-OVC serum samples as a control, the obtained 17-miRPairs classifier could distinguish OVC from other cancers (AUC>92% in training and validation set). CONCLUSION: The REO-based SSCs performed well in predicting OVC (including early samples) and distinguishing OVC from other cancer types, proving that REOs of serum miRNAs represent a robust and non-invasive biomarker.
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spelling pubmed-93788342022-08-17 Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers Hong, Guini Luo, Fengyuan Chen, Zhihong Ma, Liyuan Lin, Guiyang Wu, Tong Li, Na Cai, Hao Hu, Tao Zhong, Haijian Guo, You Li, Hongdong Front Med (Lausanne) Medicine OBJECTIVE: The accuracy of CA125 or clinical examination in ovarian cancer (OVC) screening is still facing challenges. Serum miRNAs have been considered as promising biomarkers for clinical applications. Here, we propose a single sample classifier (SSC) method based on within-sample relative expression orderings (REOs) of serum miRNAs for OVC diagnosis. METHODS: Based on the stable REOs within 4,965 non-cancer serum samples, we developed the SSC for OVC in the training cohort (GSE106817: OVC = 200, non-cancer = 2,000) by focusing on highly reversed REOs within OVC. The best diagnosis is achieved using a combination of reversed miRNA pairs, considering the largest evaluation index and the lowest number of miRNA pairs possessed according to the voting rule. The SSC was then validated in internal data (GSE106817: OVC = 120, non-cancer = 759) and external data (GSE113486: OVC = 40, non-cancer = 100). RESULTS: The obtained 13-miRPairs classifier showed high diagnostic accuracy on distinguishing OVC from non-cancer controls in the training set (sensitivity = 98.00%, specificity = 99.60%), which was reproducible in internal data (sensitivity = 98.33%, specificity = 99.21%) and external data (sensitivity = 97.50%, specificity = 100%). Compared with the published models, it stood out in terms of correct positive predictive value (PPV) and negative predictive value (NPV) (PPV = 96.08% and NPV=95.16% in training set, and both above 99% in validation set). In addition, 13-miRPairs demonstrated a classification accuracy of over 97.5% for stage I OVC samples. By integrating other non-OVC serum samples as a control, the obtained 17-miRPairs classifier could distinguish OVC from other cancers (AUC>92% in training and validation set). CONCLUSION: The REO-based SSCs performed well in predicting OVC (including early samples) and distinguishing OVC from other cancer types, proving that REOs of serum miRNAs represent a robust and non-invasive biomarker. Frontiers Media S.A. 2022-08-02 /pmc/articles/PMC9378834/ /pubmed/35983098 http://dx.doi.org/10.3389/fmed.2022.923275 Text en Copyright © 2022 Hong, Luo, Chen, Ma, Lin, Wu, Li, Cai, Hu, Zhong, Guo and Li. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Medicine
Hong, Guini
Luo, Fengyuan
Chen, Zhihong
Ma, Liyuan
Lin, Guiyang
Wu, Tong
Li, Na
Cai, Hao
Hu, Tao
Zhong, Haijian
Guo, You
Li, Hongdong
Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers
title Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers
title_full Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers
title_fullStr Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers
title_full_unstemmed Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers
title_short Predict ovarian cancer by pairing serum miRNAs: Construct of single sample classifiers
title_sort predict ovarian cancer by pairing serum mirnas: construct of single sample classifiers
topic Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9378834/
https://www.ncbi.nlm.nih.gov/pubmed/35983098
http://dx.doi.org/10.3389/fmed.2022.923275
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