Cargando…
An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy
INTRODUCTION: It has been estimated that 19,880 new cases of ovarian cancer had been diagnosed in 2022. Most epithelial ovarian cancer are sporadic, while in 15%–25% of cases, there is evidence of a familial or inherited component. Approximately 20%–25% of high-grade serous carcinoma cases are cause...
Autores principales: | , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10374844/ https://www.ncbi.nlm.nih.gov/pubmed/37519818 http://dx.doi.org/10.3389/fonc.2023.1181792 |
_version_ | 1785078866009653248 |
---|---|
author | Comes, Maria Colomba Arezzo, Francesca Cormio, Gennaro Bove, Samantha Calabrese, Angela Fanizzi, Annarita Kardhashi, Anila La Forgia, Daniele Legge, Francesco Romagno, Isabella Loizzi, Vera Massafra, Raffaella |
author_facet | Comes, Maria Colomba Arezzo, Francesca Cormio, Gennaro Bove, Samantha Calabrese, Angela Fanizzi, Annarita Kardhashi, Anila La Forgia, Daniele Legge, Francesco Romagno, Isabella Loizzi, Vera Massafra, Raffaella |
author_sort | Comes, Maria Colomba |
collection | PubMed |
description | INTRODUCTION: It has been estimated that 19,880 new cases of ovarian cancer had been diagnosed in 2022. Most epithelial ovarian cancer are sporadic, while in 15%–25% of cases, there is evidence of a familial or inherited component. Approximately 20%–25% of high-grade serous carcinoma cases are caused by germline mutations in the BRCA1 and BRCA2 genes. However, owing to a lack of effective early detection methods, women with BRCA mutations are recommended to undergo bilateral risk-reducing salpingo-oophorectomy (RRSO) after childbearing. Determining the right timing for this procedure is a difficult decision. It is crucial to find a clinical signature to identify high-risk BRCA-mutated patients and determine the appropriate timing for performing RRSO. METHODS: In this work, clinical data referred to a cohort of 184 patients, of whom 7.6% were affected by adnexal tumors including invasive carcinomas and intraepithelial lesions after RSSO has been analyzed. Thus, we proposed an explainable machine learning (ML) ensemble approach using clinical data commonly collected in clinical practice to early identify BRCA-mutated patients at high risk of ovarian cancer and consequentially establish the correct timing for RRSO. RESULTS: The ensemble model was able to handle imbalanced data achieving an accuracy value of 83.2%, a specificity value of 85.3%, a sensitivity value of 57.1%, a G-mean value of 69.8%, and an AUC value of 71.1%. DISCUSSION: In agreement with the promising results achieved, the application of suitable ML techniques could play a key role in the definition of a BRCA-mutated patient-centric clinical signature for ovarian cancer risk and consequently personalize the management of these patients. As far as we know, this is the first work addressing this task from an ML perspective. |
format | Online Article Text |
id | pubmed-10374844 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-103748442023-07-29 An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy Comes, Maria Colomba Arezzo, Francesca Cormio, Gennaro Bove, Samantha Calabrese, Angela Fanizzi, Annarita Kardhashi, Anila La Forgia, Daniele Legge, Francesco Romagno, Isabella Loizzi, Vera Massafra, Raffaella Front Oncol Oncology INTRODUCTION: It has been estimated that 19,880 new cases of ovarian cancer had been diagnosed in 2022. Most epithelial ovarian cancer are sporadic, while in 15%–25% of cases, there is evidence of a familial or inherited component. Approximately 20%–25% of high-grade serous carcinoma cases are caused by germline mutations in the BRCA1 and BRCA2 genes. However, owing to a lack of effective early detection methods, women with BRCA mutations are recommended to undergo bilateral risk-reducing salpingo-oophorectomy (RRSO) after childbearing. Determining the right timing for this procedure is a difficult decision. It is crucial to find a clinical signature to identify high-risk BRCA-mutated patients and determine the appropriate timing for performing RRSO. METHODS: In this work, clinical data referred to a cohort of 184 patients, of whom 7.6% were affected by adnexal tumors including invasive carcinomas and intraepithelial lesions after RSSO has been analyzed. Thus, we proposed an explainable machine learning (ML) ensemble approach using clinical data commonly collected in clinical practice to early identify BRCA-mutated patients at high risk of ovarian cancer and consequentially establish the correct timing for RRSO. RESULTS: The ensemble model was able to handle imbalanced data achieving an accuracy value of 83.2%, a specificity value of 85.3%, a sensitivity value of 57.1%, a G-mean value of 69.8%, and an AUC value of 71.1%. DISCUSSION: In agreement with the promising results achieved, the application of suitable ML techniques could play a key role in the definition of a BRCA-mutated patient-centric clinical signature for ovarian cancer risk and consequently personalize the management of these patients. As far as we know, this is the first work addressing this task from an ML perspective. Frontiers Media S.A. 2023-07-13 /pmc/articles/PMC10374844/ /pubmed/37519818 http://dx.doi.org/10.3389/fonc.2023.1181792 Text en Copyright © 2023 Comes, Arezzo, Cormio, Bove, Calabrese, Fanizzi, Kardhashi, La Forgia, Legge, Romagno, Loizzi and Massafra 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 | Oncology Comes, Maria Colomba Arezzo, Francesca Cormio, Gennaro Bove, Samantha Calabrese, Angela Fanizzi, Annarita Kardhashi, Anila La Forgia, Daniele Legge, Francesco Romagno, Isabella Loizzi, Vera Massafra, Raffaella An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy |
title | An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy |
title_full | An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy |
title_fullStr | An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy |
title_full_unstemmed | An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy |
title_short | An explainable machine learning ensemble model to predict the risk of ovarian cancer in BRCA-mutated patients undergoing risk-reducing salpingo-oophorectomy |
title_sort | explainable machine learning ensemble model to predict the risk of ovarian cancer in brca-mutated patients undergoing risk-reducing salpingo-oophorectomy |
topic | Oncology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10374844/ https://www.ncbi.nlm.nih.gov/pubmed/37519818 http://dx.doi.org/10.3389/fonc.2023.1181792 |
work_keys_str_mv | AT comesmariacolomba anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT arezzofrancesca anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT cormiogennaro anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT bovesamantha anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT calabreseangela anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT fanizziannarita anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT kardhashianila anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT laforgiadaniele anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT leggefrancesco anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT romagnoisabella anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT loizzivera anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT massafraraffaella anexplainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT comesmariacolomba explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT arezzofrancesca explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT cormiogennaro explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT bovesamantha explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT calabreseangela explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT fanizziannarita explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT kardhashianila explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT laforgiadaniele explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT leggefrancesco explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT romagnoisabella explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT loizzivera explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy AT massafraraffaella explainablemachinelearningensemblemodeltopredicttheriskofovariancancerinbrcamutatedpatientsundergoingriskreducingsalpingooophorectomy |