Cargando…

Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study

SIMPLE SUMMARY: The objective of the study was to evaluate the radiomics features obtained by contrast MRI studies as prognostic biomarkers in colorectal liver metastases patients to predict clinical outcomes following liver resection. We demonstrated a good performance considering the single textur...

Descripción completa

Detalles Bibliográficos
Autores principales: Granata, Vincenza, Fusco, Roberta, De Muzio, Federica, Cutolo, Carmen, Setola, Sergio Venanzio, dell’ Aversana, Federica, Ottaiano, Alessandro, Avallone, Antonio, Nasti, Guglielmo, Grassi, Francesca, Pilone, Vincenzo, Miele, Vittorio, Brunese, Luca, Izzo, Francesco, Petrillo, Antonella
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8909569/
https://www.ncbi.nlm.nih.gov/pubmed/35267418
http://dx.doi.org/10.3390/cancers14051110
_version_ 1784666206524932096
author Granata, Vincenza
Fusco, Roberta
De Muzio, Federica
Cutolo, Carmen
Setola, Sergio Venanzio
dell’ Aversana, Federica
Ottaiano, Alessandro
Avallone, Antonio
Nasti, Guglielmo
Grassi, Francesca
Pilone, Vincenzo
Miele, Vittorio
Brunese, Luca
Izzo, Francesco
Petrillo, Antonella
author_facet Granata, Vincenza
Fusco, Roberta
De Muzio, Federica
Cutolo, Carmen
Setola, Sergio Venanzio
dell’ Aversana, Federica
Ottaiano, Alessandro
Avallone, Antonio
Nasti, Guglielmo
Grassi, Francesca
Pilone, Vincenzo
Miele, Vittorio
Brunese, Luca
Izzo, Francesco
Petrillo, Antonella
author_sort Granata, Vincenza
collection PubMed
description SIMPLE SUMMARY: The objective of the study was to evaluate the radiomics features obtained by contrast MRI studies as prognostic biomarkers in colorectal liver metastases patients to predict clinical outcomes following liver resection. We demonstrated a good performance considering the single textural significant metric in the identification of front of tumor growth (expansive versus infiltrative) and tumor budding (high grade versus low grade or absent), in the recognition of mucinous type and in the detection of recurrences. Moreover, considering linear regression models or neural network classifiers in a multivariate approach was possible to increase the performance in terms of accuracy, sensitivity, and specificity. ABSTRACT: Purpose: To assess radiomics features efficacy obtained by arterial and portal MRI phase in the prediction of clinical outcomes in the colorectal liver metastases patients, evaluating recurrence, mutational status, pathological characteristic (mucinous and tumor budding) and surgical resection margin. Methods: This retrospective analysis was approved by the local Ethical Committee board, and radiological databases were used to select patients with colorectal liver metastases with pathological proof and MRI study in a pre-surgical setting after neoadjuvant chemotherapy. The cohort of patients included a training set (51 patients with 61 years of median age and 121 liver metastases) and an external validation set (30 patients with single lesion with 60 years of median age). For each segmented volume of interest on MRI by two expert radiologists, 851 radiomics features were extracted as median values using the PyRadiomics tool. Non-parametric Kruskal-Wallis test, intraclass correlation, receiver operating characteristic (ROC) analysis, linear regression modelling and pattern recognition methods (support vector machine (SVM), k-nearest neighbors (KNN), artificial neural network (NNET), and decision tree (DT)) were considered. Results: The best predictor to discriminate expansive versus infiltrative tumor growth front was wavelet_LHH_glrlm_ShortRunLowGrayLevelEmphasis extracted on portal phase with accuracy of 82%, sensitivity of 84%, and specificity of 77%. The best predictor to discriminate tumor budding was wavelet_LLH_firstorder_10Percentile extracted on portal phase with accuracy of 92%, a sensitivity of 96%, and a specificity of 81%. The best predictor to differentiate the mucinous type of tumor was the wavelet_LLL_glcm_ClusterTendency extracted on portal phase with accuracy of 88%, a sensitivity of 38%, and a specificity of 100%. The best predictor to identify the recurrence was the wavelet_HLH_ngtdm_Complexity extracted on arterial phase with accuracy of 90%, a sensitivity of 71%, and a specificity of 95%. The best linear regression model was obtained in the identification of mucinous type considering the 13 textural significant metrics extracted by arterial phase (accuracy of 94%, sensitivity of 77% and a specificity of 99%). The best results were obtained in the identification of tumor budding with the eleven textural significant features extracted by arterial phase using a KNN (accuracy of 95%, sensitivity of 84%, and a specificity of 99%). Conclusions: Our results confirmed the capacity of radiomics to identify as biomarkers and several prognostic features that could affect the treatment choice in patients with liver metastases in order to obtain a more personalized approach.
format Online
Article
Text
id pubmed-8909569
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-89095692022-03-11 Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study Granata, Vincenza Fusco, Roberta De Muzio, Federica Cutolo, Carmen Setola, Sergio Venanzio dell’ Aversana, Federica Ottaiano, Alessandro Avallone, Antonio Nasti, Guglielmo Grassi, Francesca Pilone, Vincenzo Miele, Vittorio Brunese, Luca Izzo, Francesco Petrillo, Antonella Cancers (Basel) Article SIMPLE SUMMARY: The objective of the study was to evaluate the radiomics features obtained by contrast MRI studies as prognostic biomarkers in colorectal liver metastases patients to predict clinical outcomes following liver resection. We demonstrated a good performance considering the single textural significant metric in the identification of front of tumor growth (expansive versus infiltrative) and tumor budding (high grade versus low grade or absent), in the recognition of mucinous type and in the detection of recurrences. Moreover, considering linear regression models or neural network classifiers in a multivariate approach was possible to increase the performance in terms of accuracy, sensitivity, and specificity. ABSTRACT: Purpose: To assess radiomics features efficacy obtained by arterial and portal MRI phase in the prediction of clinical outcomes in the colorectal liver metastases patients, evaluating recurrence, mutational status, pathological characteristic (mucinous and tumor budding) and surgical resection margin. Methods: This retrospective analysis was approved by the local Ethical Committee board, and radiological databases were used to select patients with colorectal liver metastases with pathological proof and MRI study in a pre-surgical setting after neoadjuvant chemotherapy. The cohort of patients included a training set (51 patients with 61 years of median age and 121 liver metastases) and an external validation set (30 patients with single lesion with 60 years of median age). For each segmented volume of interest on MRI by two expert radiologists, 851 radiomics features were extracted as median values using the PyRadiomics tool. Non-parametric Kruskal-Wallis test, intraclass correlation, receiver operating characteristic (ROC) analysis, linear regression modelling and pattern recognition methods (support vector machine (SVM), k-nearest neighbors (KNN), artificial neural network (NNET), and decision tree (DT)) were considered. Results: The best predictor to discriminate expansive versus infiltrative tumor growth front was wavelet_LHH_glrlm_ShortRunLowGrayLevelEmphasis extracted on portal phase with accuracy of 82%, sensitivity of 84%, and specificity of 77%. The best predictor to discriminate tumor budding was wavelet_LLH_firstorder_10Percentile extracted on portal phase with accuracy of 92%, a sensitivity of 96%, and a specificity of 81%. The best predictor to differentiate the mucinous type of tumor was the wavelet_LLL_glcm_ClusterTendency extracted on portal phase with accuracy of 88%, a sensitivity of 38%, and a specificity of 100%. The best predictor to identify the recurrence was the wavelet_HLH_ngtdm_Complexity extracted on arterial phase with accuracy of 90%, a sensitivity of 71%, and a specificity of 95%. The best linear regression model was obtained in the identification of mucinous type considering the 13 textural significant metrics extracted by arterial phase (accuracy of 94%, sensitivity of 77% and a specificity of 99%). The best results were obtained in the identification of tumor budding with the eleven textural significant features extracted by arterial phase using a KNN (accuracy of 95%, sensitivity of 84%, and a specificity of 99%). Conclusions: Our results confirmed the capacity of radiomics to identify as biomarkers and several prognostic features that could affect the treatment choice in patients with liver metastases in order to obtain a more personalized approach. MDPI 2022-02-22 /pmc/articles/PMC8909569/ /pubmed/35267418 http://dx.doi.org/10.3390/cancers14051110 Text en © 2022 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
Granata, Vincenza
Fusco, Roberta
De Muzio, Federica
Cutolo, Carmen
Setola, Sergio Venanzio
dell’ Aversana, Federica
Ottaiano, Alessandro
Avallone, Antonio
Nasti, Guglielmo
Grassi, Francesca
Pilone, Vincenzo
Miele, Vittorio
Brunese, Luca
Izzo, Francesco
Petrillo, Antonella
Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study
title Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study
title_full Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study
title_fullStr Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study
title_full_unstemmed Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study
title_short Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study
title_sort contrast mr-based radiomics and machine learning analysis to assess clinical outcomes following liver resection in colorectal liver metastases: a preliminary study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8909569/
https://www.ncbi.nlm.nih.gov/pubmed/35267418
http://dx.doi.org/10.3390/cancers14051110
work_keys_str_mv AT granatavincenza contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT fuscoroberta contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT demuziofederica contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT cutolocarmen contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT setolasergiovenanzio contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT dellaversanafederica contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT ottaianoalessandro contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT avalloneantonio contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT nastiguglielmo contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT grassifrancesca contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT pilonevincenzo contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT mielevittorio contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT bruneseluca contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT izzofrancesco contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy
AT petrilloantonella contrastmrbasedradiomicsandmachinelearninganalysistoassessclinicaloutcomesfollowingliverresectionincolorectallivermetastasesapreliminarystudy