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Abstract #3011

RIMLA: Reproducibility-Informed Method for Longitudinal Assessment

Veronica Ravano1,2,3, Michaela Andelova4, Gian Franco Piredda1,5, Stefan Sommer1,6, Samuele Caneschi1, Lucia Roccaro1, Jan Krasenky7, Matej Kudrna7, Tomas Uher4, Ricardo A. Corredor-Jerez1,2,3, Jonathan A. Disselhorst1,2,3, Bénédicte Maréchal1,2,3, Tom Hilbert1,2,3, Jean-Philippe Thiran3, Jonas Richiardi2, Dana Horakova4, Manuela Vaneckova7, and Tobias Kober1,2,3
1Advanced Clinical Imaging Technology, Siemens Healthineers International AG, Lausanne, Geneva and Zurich, Switzerland, 2Department of Radiology, Lausanne University Hospital and University of Lausanne, Lausanne, Switzerland, 3LTS5, Ecole Polytechnique Fédérale de Lausanne, Lausanne, Switzerland, 4Department of Neurology and Center of Clinical Neuroscience, First Faculty of Medicine, Charles University and General University of Prague, Prague, Czech Republic, 5CIBM Centre for Biomedical Imaging, Geneva, Switzerland, 6Swiss Centre for Musculoskeletal Imaging (SCMI), Balgrist Campus, Zurich, Switzerland, 7Department of Radiology, First Faculty of Medicine, Charles University and General University of Prague, Prague, Czech Republic

Synopsis

Keywords: Data Processing, Reproductive, longitudinal analyses; quantitative biomarkers

Motivation: Estimating longitudinal changes in imaging biomarkers is challenging due to the multiple sources of variation during acquisition that can influence the analysis of MRI data.

Goal(s): To provide a robust estimate of longitudinal changes based on the comparison of cross-sectional imaging biomarkers from different time points.

Approach: We introduce RIMLA, a Reproducibility-Informed Method for Longitudinal Assessment that quantifies longitudinal imaging biomarker changes while accounting for the robustness of the underlying image processing algorithm.

Results: As a first application, we show that RIMLA allows to identify multiple sclerosis lesion subtypes characterized by statistically significant enlargement or shrinkage over time.

Impact: The here introduced Reproducibility-Informed Method for Longitudinal Assessment (RIMLA) allows to robustly detect small longitudinal changes in quantitative biomarkers. This increase in sensitivity can lead to better informed clinical decisions, for example during treatment monitoring or disease progression follow-ups.

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