Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)

Background: Women undergoing cancer-related mastectomy and reconstruction are facing multiple treatment choices where post-surgical satisfaction with breasts is a key outcome. We developed and validated machine learning algorithms to predict patient-reported satisfaction with breasts at 2-year follo...

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Main Authors: André Pfob, Babak J. Mehrara, Jonas A. Nelson, Edwin G. Wilkins, Andrea L. Pusic, Chris Sidey-Gibbons
Format: Article
Language:English
Published: Elsevier 2021-12-01
Series:Breast
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S0960977621004665
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spelling doaj-e2715247dffd487bb7dfc9d8223f02c32021-10-07T04:24:00ZengElsevierBreast1532-30802021-12-0160111122Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)André Pfob0Babak J. Mehrara1Jonas A. Nelson2Edwin G. Wilkins3Andrea L. Pusic4Chris Sidey-Gibbons5University Breast Unit, Department of Obstetrics & Gynecology, Heidelberg University Hospital, Heidelberg, Germany; MD Anderson Center for INSPiRED Cancer Care (Integrated Systems for Patient-Reported Data), The University of Texas MD Anderson Cancer Center, Houston, USADepartment of Plastic & Reconstructive Surgery, Memorial Sloan Kettering Cancer Center, New York, NY, USADepartment of Plastic & Reconstructive Surgery, Memorial Sloan Kettering Cancer Center, New York, NY, USADepartment of Surgery, University of Michigan, Ann Arbor, MI, USAPatient-Reported Outcome Value & Experience (PROVE) Center, Department of Surgery, Harvard Medical School & Brigham and Women's Hospital, Boston, MA, USAMD Anderson Center for INSPiRED Cancer Care (Integrated Systems for Patient-Reported Data), The University of Texas MD Anderson Cancer Center, Houston, USA; Department of Symptom Research, The University of Texas MD Anderson Cancer Center, Houston, TX, USA; Corresponding author. The University of Texas MD Anderson Cancer Center, Department of Symptom Research, 1515 Holcombe Boulevard, Unit 1450, Houston, TX, 77030, USA.Background: Women undergoing cancer-related mastectomy and reconstruction are facing multiple treatment choices where post-surgical satisfaction with breasts is a key outcome. We developed and validated machine learning algorithms to predict patient-reported satisfaction with breasts at 2-year follow-up to better inform the decision-making process for women with breast cancer. Methods: We trained, tested, and validated three machine learning algorithms (logistic regression (LR) with elastic net penalty, Extreme Gradient Boosting (XGBoost) tree, and neural network) to predict clinically important differences in satisfaction with breasts at 2-year follow-up using the validated BREAST-Q. We used data from 1553 women undergoing cancer-related mastectomy and reconstruction who were followed-up for two years at eleven study sites in North America from 2011 to 2016. 10-fold cross-validation was used to train and test the algorithms on data from 10 of the 11 sites which were further validated using the additional site's data. Area-under-the-receiver-operating-characteristics-curve (AUC) was the primary outcome measure. Results: Of 1553 women, 702 (45.2%) experienced an improved satisfaction with breasts and 422 (27.2%) a decreased satisfaction. In the validation set (n = 221), the algorithms showed equally high performance to predict improved or decreased satisfaction with breasts (all P > 0.05): For improved satisfaction AUCs were 0.86–0.87 and for decreased satisfaction AUCs were 0.84–0.85. Conclusion: Long-term, individual patient-reported outcomes for women undergoing mastectomy and breast reconstruction can be accurately predicted using machine learning algorithms. Our algorithms may be used to better inform clinical treatment decisions for these patients by providing accurate estimates of expected quality of life.http://www.sciencedirect.com/science/article/pii/S0960977621004665Decision-makingBreast reconstructionMachine learningIndividualized treatmentBreast surgeryINSPiRED
collection DOAJ
language English
format Article
sources DOAJ
author André Pfob
Babak J. Mehrara
Jonas A. Nelson
Edwin G. Wilkins
Andrea L. Pusic
Chris Sidey-Gibbons
spellingShingle André Pfob
Babak J. Mehrara
Jonas A. Nelson
Edwin G. Wilkins
Andrea L. Pusic
Chris Sidey-Gibbons
Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)
Breast
Decision-making
Breast reconstruction
Machine learning
Individualized treatment
Breast surgery
INSPiRED
author_facet André Pfob
Babak J. Mehrara
Jonas A. Nelson
Edwin G. Wilkins
Andrea L. Pusic
Chris Sidey-Gibbons
author_sort André Pfob
title Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)
title_short Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)
title_full Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)
title_fullStr Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)
title_full_unstemmed Machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (INSPiRED-001)
title_sort machine learning to predict individual patient-reported outcomes at 2-year follow-up for women undergoing cancer-related mastectomy and breast reconstruction (inspired-001)
publisher Elsevier
series Breast
issn 1532-3080
publishDate 2021-12-01
description Background: Women undergoing cancer-related mastectomy and reconstruction are facing multiple treatment choices where post-surgical satisfaction with breasts is a key outcome. We developed and validated machine learning algorithms to predict patient-reported satisfaction with breasts at 2-year follow-up to better inform the decision-making process for women with breast cancer. Methods: We trained, tested, and validated three machine learning algorithms (logistic regression (LR) with elastic net penalty, Extreme Gradient Boosting (XGBoost) tree, and neural network) to predict clinically important differences in satisfaction with breasts at 2-year follow-up using the validated BREAST-Q. We used data from 1553 women undergoing cancer-related mastectomy and reconstruction who were followed-up for two years at eleven study sites in North America from 2011 to 2016. 10-fold cross-validation was used to train and test the algorithms on data from 10 of the 11 sites which were further validated using the additional site's data. Area-under-the-receiver-operating-characteristics-curve (AUC) was the primary outcome measure. Results: Of 1553 women, 702 (45.2%) experienced an improved satisfaction with breasts and 422 (27.2%) a decreased satisfaction. In the validation set (n = 221), the algorithms showed equally high performance to predict improved or decreased satisfaction with breasts (all P > 0.05): For improved satisfaction AUCs were 0.86–0.87 and for decreased satisfaction AUCs were 0.84–0.85. Conclusion: Long-term, individual patient-reported outcomes for women undergoing mastectomy and breast reconstruction can be accurately predicted using machine learning algorithms. Our algorithms may be used to better inform clinical treatment decisions for these patients by providing accurate estimates of expected quality of life.
topic Decision-making
Breast reconstruction
Machine learning
Individualized treatment
Breast surgery
INSPiRED
url http://www.sciencedirect.com/science/article/pii/S0960977621004665
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