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Published in: International Journal of Computer Assisted Radiology and Surgery 5/2023

25-03-2023 | Original Article

Long-term cognitive decline prediction based on multi-modal data using Multimodal3DSiameseNet: transfer learning from Alzheimer’s disease to Parkinson’s disease

Authors: Cécilia Ostertag, Muriel Visani, Thierry Urruty, Marie Beurton-Aimar

Published in: International Journal of Computer Assisted Radiology and Surgery | Issue 5/2023

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Abstract

Purpose

Monitoring and predicting the cognitive state of subjects with neurodegenerative disorders is crucial to provide appropriate treatment as soon as possible. In this work, we present a machine learning approach using multimodal data (brain MRI and clinical) from two early medical visits, to predict the longer-term cognitive decline of patients. Using transfer learning, our model can be successfully transferred from one neurodegenerative disease (Alzheimer’s) to another (Parkinson’s).

Methods

Our model is a Deep Neural Network with siamese sub-modules dedicated to extracting features from each modality. We pre-train it with data from ADNI (Alzheimer’s disease), then transfer it on the smaller PPMI dataset (Parkinson’s disease). We show that, even when we do not fine-tune the filters learnt from the ADNI MRIs, the transferred model’s results are satisfying on PPMI.

Results

The first main result is that our model provides satisfying long-term predictions of cognitive decline from any pair of early visits, with no fixed time delay between these visits (provided the potential decline has started at the second visit). The second main result is that the prediction performance on Parkinson’s dataset (PPMI) reaches an AUC of 0.81 on PPMI after transfer learning from Alzheimer’s dataset (ADNI), without even having to re-train the image filters, versus an AUC of 0.72 for the model trained from scratch on PPMI.

Conclusions

First, our model is effective for predicting long-term cognitive decline from only two visits, even with irregular intervals of time. When dealing with neurodegenerative diseases, where patients often miss some control visits, this is an important finding. Second, our model is able to transfer the knowledge learnt from one neurodegenerative disease (Alzheimer’s) to another (Parkinson’s), when using the same imaging modalities (brain MRI) and different clinical variables. This makes it usable even for diseases that are rare or under-studied.

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Metadata
Title
Long-term cognitive decline prediction based on multi-modal data using Multimodal3DSiameseNet: transfer learning from Alzheimer’s disease to Parkinson’s disease
Authors
Cécilia Ostertag
Muriel Visani
Thierry Urruty
Marie Beurton-Aimar
Publication date
25-03-2023
Publisher
Springer International Publishing
Published in
International Journal of Computer Assisted Radiology and Surgery / Issue 5/2023
Print ISSN: 1861-6410
Electronic ISSN: 1861-6429
DOI
https://doi.org/10.1007/s11548-023-02866-6

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