METhodological RadiomICs Score (METRICS): a quality scoring tool for radiomics research endorsed by EuSoMII
Publication date
2024-01-17
Authors
Kocak, Burak
Akinci D’Antonoli, Tugba
Mercaldo, Nathaniel
Alberich-Bayarri, Angel
Baessler, Bettina
Ambrosini, Ilaria
Andreychenko, Anna E.
Bakas, Spyridon
Beets-Tan, Regina G.H.
Bressem, Keno
Editors
Advisors
Supervisors
Document Type
Article
Metadata
Show full item recordCollections
License
No license information available
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). Graphical Abstract: [Figure not available: see fulltext.]
Keywords
Artificial intelligence, Deep learning, Guideline, Machine learning, Radiomics, Radiology Nuclear Medicine and imaging
Citation
Kocak, B, Akinci D’Antonoli, T, Mercaldo, N, Alberich-Bayarri, A, Baessler, B, Ambrosini, I, Andreychenko, A E, Bakas, S, Beets-Tan, R G H, Bressem, K, Buvat, I, Cannella, R, Cappellini, L A, Cavallo, A U, Chepelev, L L, Chu, L C H, Demircioglu, A, deSouza, N M, Dietzel, M, Fanni, S C, Fedorov, A, Fournier, L S, Giannini, V, Girometti, R, Groot Lipman, K B W, Kalarakis, G, Kelly, B S, Klontzas, M E, Koh, D M, Kotter, E, Lee, H Y, Maas, M, Marti-Bonmati, L, Müller, H, Obuchowski, N, Orlhac, F, Papanikolaou, N, Petrash, E, Pfaehler, E, Pinto dos Santos, D, Ponsiglione, A, Sabater, S, Sardanelli, F, Seeböck, P, Sijtsema, N M, Stanzione, A, Traverso, A, Ugga, L, Vallières, M, van Dijk, L V, van Griethuysen, J J M, van Hamersvelt, R W, van Ooijen, P, Vernuccio, F, Wang, A, Williams, S, Witowski, J, Zhang, Z, Zwanenburg, A & Cuocolo, R 2024, 'METhodological RadiomICs Score (METRICS) : a quality scoring tool for radiomics research endorsed by EuSoMII', Insights into Imaging, vol. 15, no. 1, 8. https://doi.org/10.1186/s13244-023-01572-w