METhodological RadiomICs Score (METRICS): a quality scoring tool for radiomics research endorsed by EuSoMII

Burak Koçak(Sağlık Bilimleri Üniversitesi), Tugba Akinci D’Antonoli(Psychiatry Baselland), Nathaniel D. Mercaldo(Massachusetts General Hospital), Ángel Alberich‐Bayarri(Center For Biomarker Research In Medicine), Bettina Baeßler(Universitätsklinikum Würzburg), Ilaria Ambrosini(University of Pisa), Anna Andreychenko(ITMO University), Spyridon Bakas(Precision for Medicine (United States)), Regina G. H. Beets‐Tan(University of Southern Denmark), Keno K. Bressem(Humboldt-Universität zu Berlin), Irène Buvat(Inserm), Roberto Cannella(University of Palermo), L.A. Cappellini(Humanitas University), Armando Ugo Cavallo(Istituto Dermopatico dell'Immacolata), Leonid Chepelev(University Health Network), Linda C. Chu(Johns Hopkins University), Aydın Demircioğlu, Nandita M. deSouza(National Health Service), Matthias Dietzel(Universitätsklinikum Erlangen), Salvatore Claudio Fanni(University of Pisa), Andriy Fedorov(Brigham and Women's Hospital), Laure Fournier(Inserm), Valentina Giannini(University of Turin), Rossano Girometti(University of Udine), Kevin B. W. Groot Lipman(The Netherlands Cancer Institute), Georgios Kalarakis(Karolinska University Hospital), Brendan S. Kelly(University College Dublin), Michail E. Klontzas(University of Crete), Dow‐Mu Koh(Royal Marsden Hospital), Elmar Kotter(University of Freiburg), Ho Yun Lee(Samsung (South Korea)), Mario Maas(Amsterdam University Medical Centers), Luis Martí‐Bonmatí, Henning Müller(University of Geneva), Nancy A. Obuchowski(Cleveland Clinic Lerner College of Medicine), Fanny Orlhac(Inserm), Nickolas Papanikolaou(Champalimaud Foundation), EA Petrash(Baghdad Medical City), Elisabeth Pfaehler(Forschungszentrum Jülich), Daniel Pinto dos Santos(Goethe University Frankfurt), Andrea Ponsiglione(University of Naples Federico II), S. Sabater(Complejo Hospitalario Universitario de Albacete), Francesco Sardanelli(University of Milan), Philipp Seeböck(Medical University of Vienna), Nanna M. Sijtsema(University Medical Center Groningen), Arnaldo Stanzione(University of Naples Federico II), Alberto Traverso(Vita-Salute San Raffaele University), Lorenzo Ugga(University of Naples Federico II), Martin Vallières(Université de Sherbrooke), Lisanne V. van Dijk(University Medical Center Groningen), Joost J. M. van Griethuysen(The Netherlands Cancer Institute), Robbert W. van Hamersvelt(Utrecht University), Peter M. A. van Ooijen(University Medical Center Groningen), Federica Vernuccio(University of Palermo), Alan Wang(University of Auckland), Stuart Williams(Norfolk and Norwich University Hospital), Jan Witowski(New York University), Zhongyi Zhang(Griffith University), Alex Zwanenburg(German Cancer Research Center), Renato Cuocolo(University of Salerno)
Insights into Imaging
January 17, 2024
Cited by 261Open Access
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Abstract

PURPOSE: To propose a new quality scoring tool, METhodological RadiomICs Score (METRICS), to assess and improve research quality of radiomics studies. METHODS: We conducted an online modified Delphi study with a group of international experts. It was performed in three consecutive stages: Stage#1, item preparation; Stage#2, panel discussion among EuSoMII Auditing Group members to identify the items to be voted; and Stage#3, four rounds of the modified Delphi exercise by panelists to determine the items eligible for the METRICS and their weights. The consensus threshold was 75%. Based on the median ranks derived from expert panel opinion and their rank-sum based conversion to importance scores, the category and item weights were calculated. RESULT: In total, 59 panelists from 19 countries participated in selection and ranking of the items and categories. Final METRICS tool included 30 items within 9 categories. According to their weights, the categories were in descending order of importance: study design, imaging data, image processing and feature extraction, metrics and comparison, testing, feature processing, preparation for modeling, segmentation, and open science. A web application and a repository were developed to streamline the calculation of the METRICS score and to collect feedback from the radiomics community. CONCLUSION: In this work, we developed a scoring tool for assessing the methodological quality of the radiomics research, with a large international panel and a modified Delphi protocol. With its conditional format to cover methodological variations, it provides a well-constructed framework for the key methodological concepts to assess the quality of radiomic research papers. CRITICAL RELEVANCE STATEMENT: A quality assessment tool, METhodological RadiomICs Score (METRICS), is made available by a large group of international domain experts, with transparent methodology, aiming at evaluating and improving research quality in radiomics and machine learning. KEY POINTS: • A methodological scoring tool, METRICS, was developed for assessing the quality of radiomics research, with a large international expert panel and a modified Delphi protocol. • The proposed scoring tool presents expert opinion-based importance weights of categories and items with a transparent methodology for the first time. • METRICS accounts for varying use cases, from handcrafted radiomics to entirely deep learning-based pipelines. • A web application has been developed to help with the calculation of the METRICS score ( https://metricsscore.github.io/metrics/METRICS.html ) and a repository created to collect feedback from the radiomics community ( https://github.com/metricsscore/metrics ).


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