Longitudinal CT Imaging to Explore the Predictive Power of 3D Radiomic Tumour Heterogeneity in Precise Imaging of Mantle Cell Lymphoma (MCL)

Cathrina Silvia Lisson Universitäts Klinikum Ulm Christoph Gerhard Lisson Universitäts Klinikum Ulm Sherin Achilles Universitäts Klinikum Ulm Marc Fabian Mezger Ulm University Daniel Wolf Universitäts Klinikum Ulm Stefan Andreas Schmidt Universitäts Klinikum Ulm Wolfgang Thaiss Universitäts Klinikum Ulm Johannes Bloehdorn Universitäts Klinikum Ulm Ambros J. Beer Universitäts Klinikum Ulm Stephan Stilgenbauer Universitäts Klinikum Ulm Meinrad Beer Universitäts Klinikum Ulm Michael Götz Ulm University

Cancers, 2022

Abstract

The study’s primary aim is to evaluate the predictive performance of CT-derived 3D radiomics for MCL risk stratification. The secondary objective is to search for radiomic features associated with sustained remission. Included were 70 patients: 31 MCL patients and 39 control subjects with normal axillary lymph nodes followed over five years. Radiomic analysis of all targets (n = 745) was performed and features selected using the Mann Whitney U test; the discriminative power of identifying “high-risk MCL” was evaluated by receiver operating characteristics (ROC). The four radiomic features, “Uniformity”, “Entropy”, “Skewness” and “Difference Entropy” showed predictive significance for relapse (p < 0.05)—in contrast to the routine size measurements, which showed no relevant difference. The best prognostication for relapse achieved the feature “Uniformity” (AUC-ROC-curve 0.87; optimal cut-off ≤0.0159 to predict relapse with 87% sensitivity, 65% specificity, 69% accuracy). Several radiomic features, including the parameter “Short Axis,” were associated with sustained remission. CT-derived 3D radiomics improves the predictive estimation of MCL patients; in combination with the ability to identify potential radiomic features that are characteristic for sustained remission, it may assist physicians in the clinical management of MCL.

Bibtex

content_copy
@article{lisson2020longitudinal,
	title={Longitudinal CT Imaging to Explore the Predictive Power of 3D Radiomic Tumour Heterogeneity in Precise Imaging of Mantle Cell Lymphoma (MCL)},
	author={Lisson, Cathrina Silvia and Lisson, Christoph Gerhard and Achilles, Sherin and Fabian Mezger, Marc and Wolf, Daniel and Andreas Schmidt, Stefan and Thaiss, Wolfgang and Bloehdorn, Johannes and J. Beer, Ambros and Stilgenbauer, Stephan and Beer, Meinrad and G{\"o}tz, Michael},
	year={2022},
	journal={Cancers},
	doi={https://doi.org/10.3390/cancers14020393}
}