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An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer

This retrospective single-center study included patients diagnosed with epithelial ovarian cancer (EOC) using preoperative pelvic magnetic resonance imaging (MRI). The apparent diffusion coefficient (ADC) of the axial MRI maps that included the largest solid portion of the ovarian mass was analysed....

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Autores principales: Song, Heekyoung, Bak, Seongeun, Kim, Imhyeon, Woo, Jae Yeon, Cho, Eui Jin, Choi, Youn Jin, Rha, Sung Eun, Oh, Shin Ah, Youn, Seo Yeon, Lee, Sung Jong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8745699/
https://www.ncbi.nlm.nih.gov/pubmed/35011970
http://dx.doi.org/10.3390/jcm11010229
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author Song, Heekyoung
Bak, Seongeun
Kim, Imhyeon
Woo, Jae Yeon
Cho, Eui Jin
Choi, Youn Jin
Rha, Sung Eun
Oh, Shin Ah
Youn, Seo Yeon
Lee, Sung Jong
author_facet Song, Heekyoung
Bak, Seongeun
Kim, Imhyeon
Woo, Jae Yeon
Cho, Eui Jin
Choi, Youn Jin
Rha, Sung Eun
Oh, Shin Ah
Youn, Seo Yeon
Lee, Sung Jong
author_sort Song, Heekyoung
collection PubMed
description This retrospective single-center study included patients diagnosed with epithelial ovarian cancer (EOC) using preoperative pelvic magnetic resonance imaging (MRI). The apparent diffusion coefficient (ADC) of the axial MRI maps that included the largest solid portion of the ovarian mass was analysed. The mean ADC values (ADC(mean)) were derived from the regions of interest (ROIs) of each largest solid portion. Logistic regression and three types of machine learning (ML) applications were used to analyse the ADCs and clinical factors. Of the 200 patients, 103 had high-grade serous ovarian cancer (HGSOC), and 97 had non-HGSOC (endometrioid carcinoma, clear cell carcinoma, mucinous carcinoma, and low-grade serous ovarian cancer). The median ADC(mean) of patients with HGSOC was significantly lower than that of patients without HGSOCs. Low ADC(mean) and CA 19-9 levels were independent predictors for HGSOC over non-HGSOC. Compared to stage I disease, stage III disease was associated with HGSOC. Gradient boosting machine and extreme gradient boosting machine showed the highest accuracy in distinguishing between the histological findings of HGSOC versus non-HGSOC and between the five histological types of EOC. In conclusion, ADC(mean), disease stage at diagnosis, and CA 19-9 level were significant factors for differentiating between EOC histological types.
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spelling pubmed-87456992022-01-11 An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer Song, Heekyoung Bak, Seongeun Kim, Imhyeon Woo, Jae Yeon Cho, Eui Jin Choi, Youn Jin Rha, Sung Eun Oh, Shin Ah Youn, Seo Yeon Lee, Sung Jong J Clin Med Article This retrospective single-center study included patients diagnosed with epithelial ovarian cancer (EOC) using preoperative pelvic magnetic resonance imaging (MRI). The apparent diffusion coefficient (ADC) of the axial MRI maps that included the largest solid portion of the ovarian mass was analysed. The mean ADC values (ADC(mean)) were derived from the regions of interest (ROIs) of each largest solid portion. Logistic regression and three types of machine learning (ML) applications were used to analyse the ADCs and clinical factors. Of the 200 patients, 103 had high-grade serous ovarian cancer (HGSOC), and 97 had non-HGSOC (endometrioid carcinoma, clear cell carcinoma, mucinous carcinoma, and low-grade serous ovarian cancer). The median ADC(mean) of patients with HGSOC was significantly lower than that of patients without HGSOCs. Low ADC(mean) and CA 19-9 levels were independent predictors for HGSOC over non-HGSOC. Compared to stage I disease, stage III disease was associated with HGSOC. Gradient boosting machine and extreme gradient boosting machine showed the highest accuracy in distinguishing between the histological findings of HGSOC versus non-HGSOC and between the five histological types of EOC. In conclusion, ADC(mean), disease stage at diagnosis, and CA 19-9 level were significant factors for differentiating between EOC histological types. MDPI 2021-12-31 /pmc/articles/PMC8745699/ /pubmed/35011970 http://dx.doi.org/10.3390/jcm11010229 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
Song, Heekyoung
Bak, Seongeun
Kim, Imhyeon
Woo, Jae Yeon
Cho, Eui Jin
Choi, Youn Jin
Rha, Sung Eun
Oh, Shin Ah
Youn, Seo Yeon
Lee, Sung Jong
An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer
title An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer
title_full An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer
title_fullStr An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer
title_full_unstemmed An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer
title_short An Application of Machine Learning That Uses the Magnetic Resonance Imaging Metric, Mean Apparent Diffusion Coefficient, to Differentiate between the Histological Types of Ovarian Cancer
title_sort application of machine learning that uses the magnetic resonance imaging metric, mean apparent diffusion coefficient, to differentiate between the histological types of ovarian cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8745699/
https://www.ncbi.nlm.nih.gov/pubmed/35011970
http://dx.doi.org/10.3390/jcm11010229
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