Joint EANM/SNMMI guideline on radiomics in nuclear medicine: Jointly supported by the EANM Physics Committee and the SNMMI Physics, Instrumentation and Data Sciences Council

Publikation: Beitrag in FachzeitschriftForschungsartikelBeigetragenBegutachtung

Beitragende

  • M Hatt - , LaTIM (Autor:in)
  • A K Krizsan - , ScanoMed Ltd. (Autor:in)
  • A Rahmim - , University of British Columbia (Autor:in)
  • T J Bradshaw - , University of Wisconsin-Madison (Autor:in)
  • P F Costa - , University of Duisburg-Essen and German Cancer Consortium (DKTK)-University Hospital Essen (Autor:in)
  • A Forgacs - , ScanoMed Ltd. (Autor:in)
  • R Seifert - , University of Duisburg-Essen and German Cancer Consortium (DKTK)-University Hospital Essen, Universitätsklinikum Münster (Autor:in)
  • A Zwanenburg - , Universitätsklinikum Carl Gustav Carus Dresden, OncoRay - National Centre for Radiation Research in Oncology, Deutsches Krebsforschungszentrum (DKFZ) (Autor:in)
  • I El Naqa - , H. Lee Moffitt Cancer Center & Research Institute (Autor:in)
  • P E Kinahan - , University of Washington (Autor:in)
  • F Tixier - , LaTIM (Autor:in)
  • A K Jha - , Washington University St. Louis (Autor:in)
  • D Visvikis - , LaTIM (Autor:in)

Abstract

PURPOSE: The purpose of this guideline is to provide comprehensive information on best practices for robust radiomics analyses for both hand-crafted and deep learning-based approaches.

METHODS: In a cooperative effort between the EANM and SNMMI, we agreed upon current best practices and recommendations for relevant aspects of radiomics analyses, including study design, quality assurance, data collection, impact of acquisition and reconstruction, detection and segmentation, feature standardization and implementation, as well as appropriate modelling schemes, model evaluation, and interpretation. We also offer an outlook for future perspectives.

CONCLUSION: Radiomics is a very quickly evolving field of research. The present guideline focused on established findings as well as recommendations based on the state of the art. Though this guideline recognizes both hand-crafted and deep learning-based radiomics approaches, it primarily focuses on the former as this field is more mature. This guideline will be updated once more studies and results have contributed to improved consensus regarding the application of deep learning methods for radiomics. Although methodological recommendations in the present document are valid for most medical image modalities, we focus here on nuclear medicine, and specific recommendations when necessary are made for PET/CT, PET/MR, and quantitative SPECT.

Details

OriginalspracheEnglisch
Seiten (von - bis)352-375
Seitenumfang24
FachzeitschriftEuropean journal of nuclear medicine and molecular imaging
Jahrgang50
Ausgabenummer2
PublikationsstatusVeröffentlicht - Jan. 2023
Peer-Review-StatusJa

Externe IDs

PubMedCentral PMC9816255
Scopus 85143814657
ORCID /0000-0002-6349-4007/work/151980608

Schlagworte

Schlagwörter

  • Humans, Nuclear Medicine/methods, Positron Emission Tomography Computed Tomography, Data Science, Radionuclide Imaging, Physics