Actively Recruiting

Age: 6Years - 17Years
All Genders
NCT05140889

Integrating Deep Learning CT-scan Model, Biological and Clinical Variables to Predict Severity of Asthma in Children

Led by Fondazione IRCCS Policlinico San Matteo di Pavia · Updated on 2024-07-25

25

Participants Needed

1

Research Sites

283 weeks

Total Duration

On this page

Sponsors

F

Fondazione IRCCS Policlinico San Matteo di Pavia

Lead Sponsor

I

Istituto per la Ricerca e l'Innovazione Biomedica

Collaborating Sponsor

AI-Summary

What this Trial Is About

Artificial intelligence (AI) offers substantial opportunities for healthcare, supporting better diagnosis, treatment, prevention and personalized care. Analysis of health images is one of the most promising fields for applying AI in healthcare, contributing to better prediction, diagnosis and treatment of diseases. Deep learning (DL) is currently one of the most powerful machine learning techniques. DL algorithms are able to learn from raw (or with little pre-processing) input data and build by themselves sophisticated abstract feature representations (useful patterns) that enable very accurate task decision making. Recently, DL has shown promising results in assisting lung disease analysis using computed tomography (CT) images. Current severe asthma guidelines recommend high-resolution and multidetector CT as a tool for disease evaluation. CT scans contain prognostic information, as the presence of bronchial wall thickening, air trapping, bronchial luminal narrowing, and bronchiectasis are associated with longer disease duration and disease severity in adults. Only a small number of studies have reported chest CT findings in children with severe asthma, and their relationship to clinical and pathobiological parameters yielded inconsistent results. Thus, to which extent CT scans add prognostic information beyond what can be inferred from clinical and biological data is still unresolved in children. The project is expected to build an DL-severity score to prognoses severe evolution for children with asthma, using a DL model to capture CT scan prognosis information.

CONDITIONS

Official Title

Integrating Deep Learning CT-scan Model, Biological and Clinical Variables to Predict Severity of Asthma in Children

Who Can Participate

Age: 6Years - 17Years
All Genders

Eligibility Criteria

Eligible

You may qualify if you...

  • Age 6 to 17 years
  • Confirmed diagnosis of severe asthma according to ERS/ATS guidelines
Not Eligible

You will not qualify if you...

  • Presence of other diseases that may mimic asthma, such as cystic fibrosis, primary ciliary dyskinesia, or tracheobronchomalacia

AI-Screening

AI-Powered Screening

Complete this quick 3-step screening to check your eligibility

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Trial Site Locations

Total: 1 location

1

IRCCS Policlinico San Matteo

Pavia, Italy, 27100

Actively Recruiting

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Research Team

A

Amelia Licari, MD

CONTACT

How is the study designed?

Study Type

OBSERVATIONAL

Masking

N/A

Allocation

N/A

Model

N/A

Primary Purpose

N/A

Number of Arms

2

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