Cargando…
A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer
Ovarian cancer is associated with poor prognosis. Platinum resistance contributes significantly to the high rate of tumour recurrence. We aimed to identify a set of molecular markers for predicting platinum sensitivity. A signature predicting cisplatin sensitivity was generated using the Genomics of...
Autores principales: | , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Nature Publishing Group UK
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8377048/ https://www.ncbi.nlm.nih.gov/pubmed/34413360 http://dx.doi.org/10.1038/s41598-021-96072-6 |
_version_ | 1783740578215755776 |
---|---|
author | Shannon, Nicholas Brian Tan, Laura Ling Ying Tan, Qiu Xuan Tan, Joey Wee-Shan Hendrikson, Josephine Ng, Wai Har Ng, Gillian Liu, Ying Ong, Xing-Yi Sarah Nadarajah, Ravichandran Wong, Jolene Si Min Tan, Grace Hwei Ching Soo, Khee Chee Teo, Melissa Ching Ching Chia, Claramae Shulyn Ong, Chin-Ann Johnny |
author_facet | Shannon, Nicholas Brian Tan, Laura Ling Ying Tan, Qiu Xuan Tan, Joey Wee-Shan Hendrikson, Josephine Ng, Wai Har Ng, Gillian Liu, Ying Ong, Xing-Yi Sarah Nadarajah, Ravichandran Wong, Jolene Si Min Tan, Grace Hwei Ching Soo, Khee Chee Teo, Melissa Ching Ching Chia, Claramae Shulyn Ong, Chin-Ann Johnny |
author_sort | Shannon, Nicholas Brian |
collection | PubMed |
description | Ovarian cancer is associated with poor prognosis. Platinum resistance contributes significantly to the high rate of tumour recurrence. We aimed to identify a set of molecular markers for predicting platinum sensitivity. A signature predicting cisplatin sensitivity was generated using the Genomics of Drug Sensitivity in Cancer and The Cancer Genome Atlas databases. Four potential biomarkers (CYTH3, GALNT3, S100A14, and ERI1) were identified and optimized for immunohistochemistry (IHC). Validation was performed on a cohort of patients (n = 50) treated with surgical resection followed by adjuvant carboplatin. Predictive models were established to predict chemosensitivity. The four biomarkers were also assessed for their ability to prognosticate overall survival in three ovarian cancer microarray expression datasets from The Gene Expression Omnibus. The extreme gradient boosting (XGBoost) algorithm was selected for the final model to validate the accuracy in an independent validation dataset (n = 10). CYTH3 and S100A14, followed by nodal stage, were the features with the greatest importance. The four gene signature had comparable prognostication as clinical information for two-year survival. Assessment of tumour biology by means of gene expression can serve as an adjunct for prediction of chemosensitivity and prognostication. Potentially, the assessment of molecular markers alongside clinical information offers a chance to further optimise therapeutic decision making. |
format | Online Article Text |
id | pubmed-8377048 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Nature Publishing Group UK |
record_format | MEDLINE/PubMed |
spelling | pubmed-83770482021-08-27 A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer Shannon, Nicholas Brian Tan, Laura Ling Ying Tan, Qiu Xuan Tan, Joey Wee-Shan Hendrikson, Josephine Ng, Wai Har Ng, Gillian Liu, Ying Ong, Xing-Yi Sarah Nadarajah, Ravichandran Wong, Jolene Si Min Tan, Grace Hwei Ching Soo, Khee Chee Teo, Melissa Ching Ching Chia, Claramae Shulyn Ong, Chin-Ann Johnny Sci Rep Article Ovarian cancer is associated with poor prognosis. Platinum resistance contributes significantly to the high rate of tumour recurrence. We aimed to identify a set of molecular markers for predicting platinum sensitivity. A signature predicting cisplatin sensitivity was generated using the Genomics of Drug Sensitivity in Cancer and The Cancer Genome Atlas databases. Four potential biomarkers (CYTH3, GALNT3, S100A14, and ERI1) were identified and optimized for immunohistochemistry (IHC). Validation was performed on a cohort of patients (n = 50) treated with surgical resection followed by adjuvant carboplatin. Predictive models were established to predict chemosensitivity. The four biomarkers were also assessed for their ability to prognosticate overall survival in three ovarian cancer microarray expression datasets from The Gene Expression Omnibus. The extreme gradient boosting (XGBoost) algorithm was selected for the final model to validate the accuracy in an independent validation dataset (n = 10). CYTH3 and S100A14, followed by nodal stage, were the features with the greatest importance. The four gene signature had comparable prognostication as clinical information for two-year survival. Assessment of tumour biology by means of gene expression can serve as an adjunct for prediction of chemosensitivity and prognostication. Potentially, the assessment of molecular markers alongside clinical information offers a chance to further optimise therapeutic decision making. Nature Publishing Group UK 2021-08-19 /pmc/articles/PMC8377048/ /pubmed/34413360 http://dx.doi.org/10.1038/s41598-021-96072-6 Text en © The Author(s) 2021 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) . |
spellingShingle | Article Shannon, Nicholas Brian Tan, Laura Ling Ying Tan, Qiu Xuan Tan, Joey Wee-Shan Hendrikson, Josephine Ng, Wai Har Ng, Gillian Liu, Ying Ong, Xing-Yi Sarah Nadarajah, Ravichandran Wong, Jolene Si Min Tan, Grace Hwei Ching Soo, Khee Chee Teo, Melissa Ching Ching Chia, Claramae Shulyn Ong, Chin-Ann Johnny A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
title | A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
title_full | A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
title_fullStr | A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
title_full_unstemmed | A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
title_short | A machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
title_sort | machine learning approach to identify predictive molecular markers for cisplatin chemosensitivity following surgical resection in ovarian cancer |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8377048/ https://www.ncbi.nlm.nih.gov/pubmed/34413360 http://dx.doi.org/10.1038/s41598-021-96072-6 |
work_keys_str_mv | AT shannonnicholasbrian amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tanlauralingying amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tanqiuxuan amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tanjoeyweeshan amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT hendriksonjosephine amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT ngwaihar amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT nggillian amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT liuying amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT ongxingyisarah amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT nadarajahravichandran amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT wongjolenesimin amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tangracehweiching amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT sookheechee amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT teomelissachingching amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT chiaclaramaeshulyn amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT ongchinannjohnny amachinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT shannonnicholasbrian machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tanlauralingying machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tanqiuxuan machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tanjoeyweeshan machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT hendriksonjosephine machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT ngwaihar machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT nggillian machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT liuying machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT ongxingyisarah machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT nadarajahravichandran machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT wongjolenesimin machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT tangracehweiching machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT sookheechee machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT teomelissachingching machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT chiaclaramaeshulyn machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer AT ongchinannjohnny machinelearningapproachtoidentifypredictivemolecularmarkersforcisplatinchemosensitivityfollowingsurgicalresectioninovariancancer |