Author/Authors :
Starosolski, Zbigniew Department of Radiology - Texas Children’s Hospital - Houston, USA , Courtney, Amy N Department of Pediatrics - Baylor College of Medicine - Houston, USA , Srivastava, Mayank Department of Radiology - Texas Children’s Hospital - Houston, USA , Guo, Linjie Department of Pediatrics - Baylor College of Medicine - Houston, USA , Stupin, Igor Department of Radiology - Texas Children’s Hospital - Houston, USA , Metelitsa, Leonid S Department of Pediatrics - Baylor College of Medicine - Houston, USA , Annapragada, Ananth Department of Radiology - Texas Children’s Hospital - Houston, USA , Ghaghada, Ketan B Department of Radiology - Texas Children’s Hospital - Houston, USA
Abstract :
Tumor-associated macrophages (TAMs) within the tumor immune microenvironment (TiME) of solid tumors play an
important role in treatment resistance and disease recurrence. The purpose of this study was to investigate if nanoradiomics
(radiomic analysis of nanoparticle contrast-enhanced images) can differentiate tumors based on TAM burden. Materials and
Methods. In vivo studies were performed in transgenic mouse models of neuroblastoma with low (N = 11) and high (N = 10) tumorassociated macrophage (TAM) burden. Animals underwent delayed nanoparticle contrast-enhanced CT (n-CECT) imaging at 4 days
after intravenous administration of liposomal-iodine agent (1.1 g/kg). CT imaging-derived conventional tumor metrics (tumor
volume and CT attenuation) were computed for segmented tumor CT datasets. Nanoradiomic analysis was performed using a
PyRadiomics workflow implemented in the quantitative image feature pipeline (QIFP) server containing 900 radiomic features (RFs).
RF selection was performed under supervised machine learning using a nonparametric neighborhood component method. A 5-fold
validation was performed using a set of linear and nonlinear classifiers for group separation. Statistical analysis was performed using
the Kruskal–Wallis test. Results. N-CECT imaging demonstrated heterogeneous patterns of signal enhancement in low and high
TAM tumors. CT imaging-derived conventional tumor metrics showed no significant differences (p > 0.05) in tumor volume
between low and high TAM tumors. Tumor CT attenuation was not significantly different (p > 0.05) between low and high TAM
tumors. Machine learning-augmented nanoradiomic analysis revealed two RFs that differentiated (p < 0.002) low TAM and high
TAM tumors. The RFs were used to build a linear classifier that demonstrated very high accuracy and further confirmed by 5-fold
cross-validation. Conclusions. Imaging-derived conventional tumor metrics were unable to differentiate tumors with varying TAM
burden; however, nanoradiomic analysis revealed texture differences and enabled differentiation of low and high TAM tumors.
Keywords :
Nanoradiomics , Tumor , Macrophage , TME