Tensor Radiomics: Paradigm for Systematic Incorporation of Multi-Flavoured Radiomics Features
Arman Rahmim, Amirhosein Toosi, Mohammad R. Salmanpour, Natalia, Dubljevic, Ian Janzen, Isaac Shiri, Ren Yuan, Cheryl Ho, Habib Zaidi, Calum, MacAulay, Carlos Uribe, Fereshteh Yousefirizi

TL;DR
Tensor radiomics (TR) introduces a systematic way to incorporate multiple radiomics feature sets generated with different parameters, enhancing predictive accuracy and reproducibility across various medical imaging modalities and clinical tasks.
Contribution
This paper proposes tensor radiomics (TR), a novel framework that combines multiple radiomics feature flavors to improve biomarker robustness and predictive performance in medical imaging.
Findings
TR improves survival prediction accuracy in PET/CT and MRI.
TR enhances classification of lung cancer response to immunotherapy.
TR increases feature reproducibility across different imaging modalities.
Abstract
Radiomics features extract quantitative information from medical images, towards the derivation of biomarkers for clinical tasks, such as diagnosis, prognosis, or treatment response assessment. Different image discretization parameters (e.g. bin number or size), convolutional filters, segmentation perturbation, or multi-modality fusion levels can be used to generate radiomics features and ultimately signatures. Commonly, only one set of parameters is used; resulting in only one value or flavour for a given RF. We propose tensor radiomics (TR) where tensors of features calculated with multiple combinations of parameters (i.e. flavours) are utilized to optimize the construction of radiomics signatures. We present examples of TR as applied to PET/CT, MRI, and CT imaging invoking machine learning or deep learning solutions, and reproducibility analyses: (1) TR via varying bin sizes on CT…
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