04587nam 22008535 450 991084185630332120260119154013.09783031484469303148446010.1007/978-3-031-48446-9(CKB)30597117400041(MiAaPQ)EBC31201033(Au-PeEL)EBL31201033(DE-He213)978-3-031-48446-9(OCoLC)1427063498(EXLCZ)993059711740004120240224d2023 u| 0engur|||||||||||txtrdacontentcrdamediacrrdacarrierBasics of Image Processing The Facts and Challenges of Data Harmonization to Improve Radiomics Reproducibility /edited by Ángel Alberich-Bayarri, Fuensanta Bellvís-Bataller1st ed. 2023.Cham :Springer International Publishing :Imprint: Springer,2023.1 online resource (0 pages)Imaging Informatics for Healthcare Professionals,2662-155X9783031484452 3031484452 Includes bibliographical references.Era of AI quantitative imaging -- Principles of image formation in the different modalities -- How to extract radiomic features from the image? -- Facts and needs to improve Radiomics reproductibility -- What is harmonization and how does it differ from standardization? -- Harmonization in the image domain -- Harmonization across MRI -- Harmonization in the features domain -- Selection of the optimal harmonization method(s) for the problem under study -- Conclusions.This book, endorsed by EuSoMii, provides clinicians, researchers and scientists a useful handbook to navigate the intricate landscape of data harmonization, as we embark on a journey to improve the reproducibility, robustness and generalizability of multi-centric real-world data radiomic studies. In these pages, the authors delve into the foundational principles of radiomics and its far-reaching implications for precision medicine. They describe the different methodologies used in extracting quantitative features from medical images, the building blocks that enable the transformation of images into actionable predictions. This book sweeps from understanding the basis of harmonization to the implementation of all the knowledge acquired to date, with the aim of conveying the importance of harmonizing medical data and providing a useful guidance to enable its applicability and the future use of advanced radiomics-based models in routine clinical practice. As authors embark on this exploration of data harmonization in radiomics, they hope to ignite discussions, foster new ideas, and inspire researchers, clinicians, and scientists alike to embrace the challenges and opportunities that lie ahead. Together, they elevate radiomics as a reproducible technology and establish it as an indispensable and actionable tool in the quest for improved cancer diagnosis and treatment.Imaging Informatics for Healthcare Professionals,2662-155XRadiologyNuclear medicineBioinformaticsBiomedical engineeringData miningRadiologyNuclear MedicineBioinformaticsBiomedical Engineering and BioengineeringData Mining and Knowledge DiscoveryDiagnòstic per la imatgethubRadiografia mèdicathubRadiologia mèdicathubProcessament d'imatgesthubBioinformàticathubLlibres electrònicsthubRadiology.Nuclear medicine.Bioinformatics.Biomedical engineering.Data mining.Radiology.Nuclear Medicine.Bioinformatics.Biomedical Engineering and Bioengineering.Data Mining and Knowledge Discovery.Diagnòstic per la imatgeRadiografia mèdicaRadiologia mèdicaProcessament d'imatgesBioinformàtica616.0754Alberich-Bayarri AngelBellvís-Bataller FuensantaMiAaPQMiAaPQMiAaPQBOOK9910841856303321Basics of Image Processing4142062UNINA