Monitoring morphometric drift in lifelong learning segmentation of the spinal cord
Enamundram Naga Karthik, Sandrine B\'edard, Jan Valo\v{s}ek, Christoph S. Aigner, Elise Bannier, Josef Bedna\v{r}\'ik, Virginie Callot, Anna Combes, Armin Curt, Gergely David, Falk Eippert, Lynn Farner, Michael G Fehlings, Patrick Freund, Tobias Granberg, Cristina Granziera

TL;DR
This paper introduces a lifelong learning framework for spinal cord segmentation that monitors morphometric drift over time, ensuring stability and accuracy of biomarkers across model updates and diverse datasets.
Contribution
It presents a new framework combining a robust segmentation model with an automated drift monitoring system using GitHub Actions, enhancing model reliability in clinical applications.
Findings
Model achieves high accuracy with Dice score of 0.95
Framework provides quick feedback on model updates
Minimal morphometric drift observed across model versions
Abstract
Morphometric measures derived from spinal cord segmentations can serve as diagnostic and prognostic biomarkers in neurological diseases and injuries affecting the spinal cord. While robust, automatic segmentation methods to a wide variety of contrasts and pathologies have been developed over the past few years, whether their predictions are stable as the model is updated using new datasets has not been assessed. This is particularly important for deriving normative values from healthy participants. In this study, we present a spinal cord segmentation model trained on a multisite dataset, including 9 different MRI contrasts and several spinal cord pathologies. We also introduce a lifelong learning framework to automatically monitor the morphometric drift as the model is updated using additional datasets. The framework is triggered by an automatic GitHub Actions workflow every…
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