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Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears. / Artyukh, Anastasia a.; Ivanov, Mikhail k.; Titov, Sergei e. и др.

в: Frontiers in Oncology, Том 14, 1491737, 07.01.2025.

Результаты исследований: Научные публикации в периодических изданияхстатьяРецензирование

Harvard

Artyukh, AA, Ivanov, MK, Titov, SE, Dzyubenko, VV, Krasilnikov, SE, Shumeikina, AO, Afanasev, NA, Malek, AV, Glushkov, SA & Agletdinov, EF 2025, 'Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears', Frontiers in Oncology, Том. 14, 1491737. https://doi.org/10.3389/fonc.2024.1491737

APA

Artyukh, A. A., Ivanov, M. K., Titov, S. E., Dzyubenko, V. V., Krasilnikov, S. E., Shumeikina, A. O., Afanasev, N. A., Malek, A. V., Glushkov, S. A., & Agletdinov, E. F. (2025). Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears. Frontiers in Oncology, 14, [1491737]. https://doi.org/10.3389/fonc.2024.1491737

Vancouver

Artyukh AA, Ivanov MK, Titov SE, Dzyubenko VV, Krasilnikov SE, Shumeikina AO и др. Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears. Frontiers in Oncology. 2025 янв. 7;14:1491737. doi: 10.3389/fonc.2024.1491737

Author

Artyukh, Anastasia a. ; Ivanov, Mikhail k. ; Titov, Sergei e. и др. / Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears. в: Frontiers in Oncology. 2025 ; Том 14.

BibTeX

@article{adf73a92b9a0476da08e8379f5ef8d58,
title = "Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears",
abstract = "Cervical screening, aimed at detecting precancerous lesions and preventing cancer, is based on cytology and HPV testing. Both methods have limitations, the main ones being the variable diagnostic sensitivity of cytology and the moderate specificity of HPV testing. Various molecular biomarkers are proposed in recent years to improve cervical cancer management, including a number of mRNAs encoded by human genes involved in carcinogenesis. Many scientific papers have shown that the expression patterns of cellular mRNAs reflect the severity of the lesion, and their analysis in cervical smears may outperform HPV testing in terms of diagnostic specificity. However, such analysis has not yet been implemented in broad clinical practice. Our aim was to devise an assay detecting severe cervical lesions (≥HSIL) via analysis of cellular mRNA expression in cytological smears. Methods: Through logistic regression analysis of a reverse-transcription quantitative PCR (RT-qPCR) dataset generated from analysis of six mRNAs in 167 cervical smears with various cytological diagnoses, we generated a family of linear classifiers based on paired mRNA concentration ratios. Each classifier outputs a dimensionless decision function (DF) value that increases with lesion severity. Additionally, in the same specimens, the HPV genotyping, viral load assessment, diagnosis of cervicovaginal microbiome imbalance and profiling of some relevant mRNAs and miRNAs were performed by qPCR-based methods. Results: The best classifiers were obtained with pairs of mRNAs whose expression changes in opposite directions during lesion progression. With this approach based on a five-mRNA combination (CDKN2A, MAL, TMPRSS4, CRNN, and ECM1), we generated a classifier having ROC AUC 0.935, diagnostic sensitivity 89.7%, and specificity 87.6% for ≥HSIL detection. Based on this classifier, a two-tube RT-qPCR based assay was developed and it confirmed the preliminary characteristics on 120 cervical smears from the test sample. DF values weakly correlated with HPV loads and cervicovaginal microbiome imbalance, thus being independent markers of ≥HSIL risk. Conclusion: Thus, we propose a high-throughput method for detecting ≥HSIL cervical lesions by RT-qPCR analysis of several cellular mRNAs. The method is suitable for the analysis of cervical cytological smears prepared by a routine method. Further clinical validation is necessary to clarify its clinical potential. ",
author = "Artyukh, {Anastasia a.} and Ivanov, {Mikhail k.} and Titov, {Sergei e.} and Dzyubenko, {Victoria v.} and Krasilnikov, {Sergey e.} and Shumeikina, {Anastasia o.} and Afanasev, {Nikita a.} and Malek, {Anastasia v.} and Glushkov, {Sergei a.} and Agletdinov, {Eduard f.}",
note = "The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This research was funded by the Russian Science Foundation, project No. 20-14-00074-P. The reagents used were provided by AO Vector-Best. The funder was not involved in the study design, collection, analysis, interpretation of data, the writing of this article, or the decision to submit it for publication.",
year = "2025",
month = jan,
day = "7",
doi = "10.3389/fonc.2024.1491737",
language = "English",
volume = "14",
journal = "Frontiers in Oncology",
issn = "2234-943X",
publisher = "Frontiers Media S.A.",

}

RIS

TY - JOUR

T1 - Detection of cervical precancerous lesions and cancer by small-scale RT-qPCR analysis of oppositely deregulated mRNAs pairs in cytological smears

AU - Artyukh, Anastasia a.

AU - Ivanov, Mikhail k.

AU - Titov, Sergei e.

AU - Dzyubenko, Victoria v.

AU - Krasilnikov, Sergey e.

AU - Shumeikina, Anastasia o.

AU - Afanasev, Nikita a.

AU - Malek, Anastasia v.

AU - Glushkov, Sergei a.

AU - Agletdinov, Eduard f.

N1 - The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This research was funded by the Russian Science Foundation, project No. 20-14-00074-P. The reagents used were provided by AO Vector-Best. The funder was not involved in the study design, collection, analysis, interpretation of data, the writing of this article, or the decision to submit it for publication.

PY - 2025/1/7

Y1 - 2025/1/7

N2 - Cervical screening, aimed at detecting precancerous lesions and preventing cancer, is based on cytology and HPV testing. Both methods have limitations, the main ones being the variable diagnostic sensitivity of cytology and the moderate specificity of HPV testing. Various molecular biomarkers are proposed in recent years to improve cervical cancer management, including a number of mRNAs encoded by human genes involved in carcinogenesis. Many scientific papers have shown that the expression patterns of cellular mRNAs reflect the severity of the lesion, and their analysis in cervical smears may outperform HPV testing in terms of diagnostic specificity. However, such analysis has not yet been implemented in broad clinical practice. Our aim was to devise an assay detecting severe cervical lesions (≥HSIL) via analysis of cellular mRNA expression in cytological smears. Methods: Through logistic regression analysis of a reverse-transcription quantitative PCR (RT-qPCR) dataset generated from analysis of six mRNAs in 167 cervical smears with various cytological diagnoses, we generated a family of linear classifiers based on paired mRNA concentration ratios. Each classifier outputs a dimensionless decision function (DF) value that increases with lesion severity. Additionally, in the same specimens, the HPV genotyping, viral load assessment, diagnosis of cervicovaginal microbiome imbalance and profiling of some relevant mRNAs and miRNAs were performed by qPCR-based methods. Results: The best classifiers were obtained with pairs of mRNAs whose expression changes in opposite directions during lesion progression. With this approach based on a five-mRNA combination (CDKN2A, MAL, TMPRSS4, CRNN, and ECM1), we generated a classifier having ROC AUC 0.935, diagnostic sensitivity 89.7%, and specificity 87.6% for ≥HSIL detection. Based on this classifier, a two-tube RT-qPCR based assay was developed and it confirmed the preliminary characteristics on 120 cervical smears from the test sample. DF values weakly correlated with HPV loads and cervicovaginal microbiome imbalance, thus being independent markers of ≥HSIL risk. Conclusion: Thus, we propose a high-throughput method for detecting ≥HSIL cervical lesions by RT-qPCR analysis of several cellular mRNAs. The method is suitable for the analysis of cervical cytological smears prepared by a routine method. Further clinical validation is necessary to clarify its clinical potential.

AB - Cervical screening, aimed at detecting precancerous lesions and preventing cancer, is based on cytology and HPV testing. Both methods have limitations, the main ones being the variable diagnostic sensitivity of cytology and the moderate specificity of HPV testing. Various molecular biomarkers are proposed in recent years to improve cervical cancer management, including a number of mRNAs encoded by human genes involved in carcinogenesis. Many scientific papers have shown that the expression patterns of cellular mRNAs reflect the severity of the lesion, and their analysis in cervical smears may outperform HPV testing in terms of diagnostic specificity. However, such analysis has not yet been implemented in broad clinical practice. Our aim was to devise an assay detecting severe cervical lesions (≥HSIL) via analysis of cellular mRNA expression in cytological smears. Methods: Through logistic regression analysis of a reverse-transcription quantitative PCR (RT-qPCR) dataset generated from analysis of six mRNAs in 167 cervical smears with various cytological diagnoses, we generated a family of linear classifiers based on paired mRNA concentration ratios. Each classifier outputs a dimensionless decision function (DF) value that increases with lesion severity. Additionally, in the same specimens, the HPV genotyping, viral load assessment, diagnosis of cervicovaginal microbiome imbalance and profiling of some relevant mRNAs and miRNAs were performed by qPCR-based methods. Results: The best classifiers were obtained with pairs of mRNAs whose expression changes in opposite directions during lesion progression. With this approach based on a five-mRNA combination (CDKN2A, MAL, TMPRSS4, CRNN, and ECM1), we generated a classifier having ROC AUC 0.935, diagnostic sensitivity 89.7%, and specificity 87.6% for ≥HSIL detection. Based on this classifier, a two-tube RT-qPCR based assay was developed and it confirmed the preliminary characteristics on 120 cervical smears from the test sample. DF values weakly correlated with HPV loads and cervicovaginal microbiome imbalance, thus being independent markers of ≥HSIL risk. Conclusion: Thus, we propose a high-throughput method for detecting ≥HSIL cervical lesions by RT-qPCR analysis of several cellular mRNAs. The method is suitable for the analysis of cervical cytological smears prepared by a routine method. Further clinical validation is necessary to clarify its clinical potential.

U2 - 10.3389/fonc.2024.1491737

DO - 10.3389/fonc.2024.1491737

M3 - Article

C2 - 39839781

VL - 14

JO - Frontiers in Oncology

JF - Frontiers in Oncology

SN - 2234-943X

M1 - 1491737

ER -

ID: 63430925