- ICH GCP
- Registro degli studi clinici negli Stati Uniti
- Sperimentazione clinica NCT07640828
Digital Twin and Ml-basEd MOdel of TEVAR Interventions (MEMO)
Panoramica dello studio
Stato
Condizioni
Descrizione dettagliata
In recent years, Thoracic Endovascular Aortic Repair (TEVAR) has become increasingly utilized for the treatment of thoracic aortic pathologies. Over the past two decades, the adoption of TEVAR has grown significantly, progressively replacing open surgery as the preferred treatment approach in many cases. Initially designed for interventions involving the descending thoracic aorta, TEVAR is now being extended to more complex anatomies, including the aortic arch and even regions closer to the aortic root.
Successful TEVAR procedures rely on accurate preoperative planning and detailed clinical assessment to optimize patient outcomes. Although TEVAR offers several advantages over open surgery, including reduced procedural risk, shorter recovery time, and lower morbidity, it is not without limitations. Major complications include endoleaks, stent-induced new entry tears, vessel obstruction, and stent migration, all of which may significantly affect patient prognosis. Despite existing manufacturer guidelines and deployment strategies, these complications remain difficult to predict.
Previous studies have reported endoleak rates ranging from 4% to 15%, stent migration rates between 1.0% and 2.8%, and device-related complications occurring in up to 38% of cases. Recent advances in computational modeling have demonstrated considerable potential for improving TEVAR planning and risk prediction. Finite element analysis (FEA) and fluid-structure interaction (FSI) simulations have proven valuable for assessing stent behavior within patient-specific anatomies. Through in silico simulations, different stent types and diameter configurations can be virtually tested, providing surgeons with critical insights for clinical decision-making.
However, despite their high accuracy, these techniques are computationally intensive and require large datasets as well as specialized expertise, limiting their accessibility for routine clinical practice. To address these challenges, numerical models (e.g., finite element simulations) and machine learning (ML) approaches represent promising alternatives for real-time, data-driven perioperative decision support. By integrating finite element simulations with clinical imaging data, ML algorithms can be trained to predict procedural outcomes, optimize prosthesis selection, and estimate post-interventional risks. This approach not only enhances pre-procedural planning but also facilitates postoperative risk assessment, ultimately contributing to improved patient management.
A critical challenge in developing robust ML models for TEVAR planning is the limited accessibility of high-quality annotated datasets and their integration into clinical workflows. To overcome this limitation, the study proposes a comprehensive methodology aimed at:
I) collecting clinical and imaging data relevant to TEVAR procedures; II) augmenting patient-specific anatomical data using statistical shape modeling (SSM) to generate a diverse training dataset; III) developing high-fidelity digital twins that provide personalized virtual replicas of individual TEVAR cases; and IV) training ML models on these augmented datasets to predict procedural outcomes based on patient-specific characteristics.
Using these techniques, the study aims to develop a clinically viable framework capable of predicting surgical outcomes and increasing the information available for surgeons during preoperative decision-making, thereby improving patient outcomes in TEVAR interventions.
Tipo di studio
Iscrizione (Stimato)
Contatti e Sedi
Contatto studio
- Nome: SANTI TRIMARCHI, MD, PHD
- Numero di telefono: +390255032438
- Email: santi.trimarchi@policlinico.mi.it
Luoghi di studio
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Milan, Italia
- Reclutamento
- Fondazione IRCCS Ca' Granda Ospedale Maggiore Policlinico
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Contatto:
- SANTI TRIMARCHI, MD, PHD
- Numero di telefono: +390255032438
- Email: santi.trimarchi@policlinico.mi.it
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Criteri di partecipazione
Criteri di ammissibilità
Età idonea allo studio
- Adulto
- Adulto più anziano
Accetta volontari sani
Metodo di campionamento
Popolazione di studio
Descrizione
Inclusion Criteria:
- ≥18 Years and older (Adult, Older Adult)
- Female and male
- Received TEVAR for: Chronic or acute dissection, Aneurysm, Penetrating aortic ulcer, aortic thrombus, intramural hematoma or traumatic injury
Exclusion Criteria:
- Younger than 18 years old
- Received TEVAR in surgical graft that replaced native aorta
- Poor CT image quality that leads to failure in generating a high-fidelity 3D FE model of patient anatomy (no preoperative multidetector contrast-enhanced CT-scan available, preoperative CTscan slice thickness greater than 1mm, preoperative CT-scan with artifacts, motion artifacts due to the presence of other implanted devices affecting the region of interest)
Piano di studio
Come è strutturato lo studio?
Dettagli di progettazione
Cosa sta misurando lo studio?
Misure di risultato primarie
Misura del risultato |
Misura Descrizione |
Lasso di tempo |
|---|---|---|
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Determine the accuracy of patient-specific numerical simulations in replicating TEVAR deployment outcomes
Lasso di tempo: up to 1 year
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Accuracy of the simulations, expressed in terms of the match between simulated and post-operative device-vessel interaction (e.g., configuration, sealing quality, apposition), as assessed via comparison of post-operative CT image with the simulation results
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up to 1 year
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Misure di risultato secondarie
Misura del risultato |
Misura Descrizione |
Lasso di tempo |
|---|---|---|
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Assess the predictive performance of the ML model in forecasting clinical complications
Lasso di tempo: up to 1 year
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Sensitivity, specificity, and AUC of the model in predicting complications using retrospective clinical follow-up data
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up to 1 year
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Collaboratori e investigatori
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Inizio studio (Effettivo)
Completamento primario (Stimato)
Completamento dello studio (Stimato)
Date di iscrizione allo studio
Primo inviato
Primo inviato che soddisfa i criteri di controllo qualità
Primo Inserito (Effettivo)
Aggiornamenti dei record di studio
Ultimo aggiornamento pubblicato (Effettivo)
Ultimo aggiornamento inviato che soddisfa i criteri QC
Ultimo verificato
Maggiori informazioni
Termini relativi a questo studio
Termini MeSH pertinenti aggiuntivi
Altri numeri di identificazione dello studio
- 6492
Informazioni su farmaci e dispositivi, documenti di studio
Studia un prodotto farmaceutico regolamentato dalla FDA degli Stati Uniti
Studia un dispositivo regolamentato dalla FDA degli Stati Uniti
Queste informazioni sono state recuperate direttamente dal sito web clinicaltrials.gov senza alcuna modifica. In caso di richieste di modifica, rimozione o aggiornamento dei dettagli dello studio, contattare register@clinicaltrials.gov. Non appena verrà implementata una modifica su clinicaltrials.gov, questa verrà aggiornata automaticamente anche sul nostro sito web .
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