Tesi etd-09232024-090246 |
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Tipo di tesi
Tesi di laurea magistrale
Autore
ZILIOTTO, BIANCA
URN
etd-09232024-090246
Titolo
Machine learning-based surrogate models to predict the outcome of neuromodulation protocols
Dipartimento
INFORMATICA
Corso di studi
INFORMATICA
Relatori
relatore Prof. Micera, Silvestro
correlatore Prof. Gallicchio, Claudio
correlatore Prof. Gallicchio, Claudio
Parole chiave
- fourier neural operators
- hybrid model
- neuromodulation
- spinal cord injuries
- surrogate models
Data inizio appello
11/10/2024
Consultabilità
Non consultabile
Data di rilascio
11/10/2027
Riassunto
Neuromodulation offers significant potential in restoring lost functions in patients with neurological disorders, including those affecting the peripheral, spinal cord, and central nervous systems. Previous works have shown that the optimization of neuromodulation protocols can be approached through model-driven methods. However, achieving clinically viable solutions requires fast, patient-specific simulations. The computational framework commonly used to simulate neuromodulation, known as hybrid modelling (HM), is biophysically accurate but encounters significant computational bottlenecks. This work, conducted within the context of a clinical trial at San Raffaele Hospital on spinal cord injured (SCI) patients, narrows the gap toward the development of a rapid, patient-specific pipeline. After reconstructing a biophysical model for spinal cord stimulation based on hybrid modelling, we employ neural networks and operator learning to create surrogate models of the key components of HM, reaching a significant speed-up of the simulation process.
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