Predicting regrowth of low-grade gliomas after radiotherapy
Stephane Plaszczynski, Basile Grammaticos, Johan Pallud, Jean-Eric, Campagne, Mathilde Badoual

TL;DR
This study develops a simple analytical model to predict the regrowth time of low-grade gliomas after radiotherapy using limited early post-treatment data, enabling personalized follow-up planning.
Contribution
The paper introduces a robust four-parameter model and a statistical constraint to estimate tumour regrowth time shortly after radiotherapy, even with few measurements.
Findings
Predicted regrowth time with 6 months precision at first MRI post-RT.
Achieved 75% reliable estimates of regrowth time, especially for fast-responders.
Feasibility demonstrated for personalized regrowth predictions shortly after treatment.
Abstract
Diffuse low grade gliomas are invasive and incurable brain tumours that inevitably transform into higher grade ones. A classical treatment to delay this transition is radiotherapy (RT). Following RT, the tumour gradually shrinks during a period of typically 6 months to 4 years before regrowing. To improve the patient's health-related quality of life and help clinicians build personalised follow-ups, one would benefit from predictions of the time during which the tumour is expected to decrease. The challenge is to provide a reliable estimate of this regrowth time shortly after RT (i.e. with few data), although patients react differently to the treatment. To this end, we analyse the tumour size dynamics from a batch of 20 high-quality longitudinal data, and propose a simple and robust analytical model, with just 4 parameters. From the study of their correlations, we build a statistical…
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Taxonomy
TopicsMathematical Biology Tumor Growth · Radiomics and Machine Learning in Medical Imaging · MRI in cancer diagnosis
