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Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer

SIMPLE SUMMARY: An increased risk of relapse and death from minimally invasive radical hysterectomy has been reported in some patients with early cervical cancer. Thus, the development of an intuitive and precise decision-aid tool, which estimates recurrence and mortality rates by surgical approach,...

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Autores principales: Kim, Se Ik, Lee, Sungyoung, Choi, Chel Hun, Lee, Maria, Suh, Dong Hoon, Kim, Hee Seung, Kim, Kidong, Chung, Hyun Hoon, No, Jae Hong, Kim, Jae-Weon, Park, Noh Hyun, Song, Yong-Sang, Kim, Yong Beom
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8345043/
https://www.ncbi.nlm.nih.gov/pubmed/34359610
http://dx.doi.org/10.3390/cancers13153709
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author Kim, Se Ik
Lee, Sungyoung
Choi, Chel Hun
Lee, Maria
Suh, Dong Hoon
Kim, Hee Seung
Kim, Kidong
Chung, Hyun Hoon
No, Jae Hong
Kim, Jae-Weon
Park, Noh Hyun
Song, Yong-Sang
Kim, Yong Beom
author_facet Kim, Se Ik
Lee, Sungyoung
Choi, Chel Hun
Lee, Maria
Suh, Dong Hoon
Kim, Hee Seung
Kim, Kidong
Chung, Hyun Hoon
No, Jae Hong
Kim, Jae-Weon
Park, Noh Hyun
Song, Yong-Sang
Kim, Yong Beom
author_sort Kim, Se Ik
collection PubMed
description SIMPLE SUMMARY: An increased risk of relapse and death from minimally invasive radical hysterectomy has been reported in some patients with early cervical cancer. Thus, the development of an intuitive and precise decision-aid tool, which estimates recurrence and mortality rates by surgical approach, is necessary. To develop models predicting survival outcomes according to the surgical approach, we collected clinicopathologic and survival data of patients with 2009 FIGO stage IB cervical cancer who underwent a radical hysterectomy. Using only variables that could be obtained preoperatively, we developed various models predicting the probability of 5-year progression-free survival and overall survival. Among them, hybrid ensemble models, combined with logistic regression and multiple machine learning models, achieved the best predictive performance. The developed models are expected to help physicians’ and patients’ decision making related to the surgical approach for primary radical hysterectomy. ABSTRACT: We purposed to develop machine learning models predicting survival outcomes according to the surgical approach for radical hysterectomy (RH) in early cervical cancer. In total, 1056 patients with 2009 FIGO stage IB cervical cancer who underwent primary type C RH by either open or laparoscopic surgery were included in this multicenter retrospective study. The whole dataset consisting of patients’ clinicopathologic data was split into training and test sets with a 4:1 ratio. Using the training set, we developed models predicting the probability of 5-year progression-free survival (PFS) and overall survival (OS) with tenfold cross validation. The developed models were validated in the test set. In terms of predictive performance, we measured the area under the receiver operating characteristic curve (AUC) values. The logistic regression models comprised of preoperative variables yielded AUCs of 0.679 and 0.715 for predicting 5-year PFS and OS rates, respectively. Combining both logistic regression and multiple machine learning models, we constructed hybrid ensemble models, and these models showed much improved predictive performance, with 0.741 and 0.759 AUCs for predicting 5-year PFS and OS rates, respectively. We successfully developed models predicting disease recurrence and mortality after primary RH in patients with early cervical cancer. As the predicted value is calculated based on the preoperative factors, such as the surgical approach, these ensemble models would be useful for making decisions when choosing between open or laparoscopic RH.
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spelling pubmed-83450432021-08-07 Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer Kim, Se Ik Lee, Sungyoung Choi, Chel Hun Lee, Maria Suh, Dong Hoon Kim, Hee Seung Kim, Kidong Chung, Hyun Hoon No, Jae Hong Kim, Jae-Weon Park, Noh Hyun Song, Yong-Sang Kim, Yong Beom Cancers (Basel) Article SIMPLE SUMMARY: An increased risk of relapse and death from minimally invasive radical hysterectomy has been reported in some patients with early cervical cancer. Thus, the development of an intuitive and precise decision-aid tool, which estimates recurrence and mortality rates by surgical approach, is necessary. To develop models predicting survival outcomes according to the surgical approach, we collected clinicopathologic and survival data of patients with 2009 FIGO stage IB cervical cancer who underwent a radical hysterectomy. Using only variables that could be obtained preoperatively, we developed various models predicting the probability of 5-year progression-free survival and overall survival. Among them, hybrid ensemble models, combined with logistic regression and multiple machine learning models, achieved the best predictive performance. The developed models are expected to help physicians’ and patients’ decision making related to the surgical approach for primary radical hysterectomy. ABSTRACT: We purposed to develop machine learning models predicting survival outcomes according to the surgical approach for radical hysterectomy (RH) in early cervical cancer. In total, 1056 patients with 2009 FIGO stage IB cervical cancer who underwent primary type C RH by either open or laparoscopic surgery were included in this multicenter retrospective study. The whole dataset consisting of patients’ clinicopathologic data was split into training and test sets with a 4:1 ratio. Using the training set, we developed models predicting the probability of 5-year progression-free survival (PFS) and overall survival (OS) with tenfold cross validation. The developed models were validated in the test set. In terms of predictive performance, we measured the area under the receiver operating characteristic curve (AUC) values. The logistic regression models comprised of preoperative variables yielded AUCs of 0.679 and 0.715 for predicting 5-year PFS and OS rates, respectively. Combining both logistic regression and multiple machine learning models, we constructed hybrid ensemble models, and these models showed much improved predictive performance, with 0.741 and 0.759 AUCs for predicting 5-year PFS and OS rates, respectively. We successfully developed models predicting disease recurrence and mortality after primary RH in patients with early cervical cancer. As the predicted value is calculated based on the preoperative factors, such as the surgical approach, these ensemble models would be useful for making decisions when choosing between open or laparoscopic RH. MDPI 2021-07-23 /pmc/articles/PMC8345043/ /pubmed/34359610 http://dx.doi.org/10.3390/cancers13153709 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kim, Se Ik
Lee, Sungyoung
Choi, Chel Hun
Lee, Maria
Suh, Dong Hoon
Kim, Hee Seung
Kim, Kidong
Chung, Hyun Hoon
No, Jae Hong
Kim, Jae-Weon
Park, Noh Hyun
Song, Yong-Sang
Kim, Yong Beom
Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer
title Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer
title_full Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer
title_fullStr Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer
title_full_unstemmed Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer
title_short Machine Learning Models to Predict Survival Outcomes According to the Surgical Approach of Primary Radical Hysterectomy in Patients with Early Cervical Cancer
title_sort machine learning models to predict survival outcomes according to the surgical approach of primary radical hysterectomy in patients with early cervical cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8345043/
https://www.ncbi.nlm.nih.gov/pubmed/34359610
http://dx.doi.org/10.3390/cancers13153709
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