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Accepted for/Published in: JMIR Research Protocols

Date Submitted: Mar 5, 2024
Date Accepted: Jun 4, 2024

The final, peer-reviewed published version of this preprint can be found here:

Combining Federated Machine Learning and Qualitative Methods to Investigate Novel Pediatric Asthma Subtypes: Protocol for a Mixed Methods Study

Xu J, Talankar S, Pan J, Harmon I, Wu Y, Fedele DA, Brailsford J, Fishe JN

Combining Federated Machine Learning and Qualitative Methods to Investigate Novel Pediatric Asthma Subtypes: Protocol for a Mixed Methods Study

JMIR Res Protoc 2024;13:e57981

DOI: 10.2196/57981

PMID: 38976313

PMCID: 11263892

Combining Federated Machine Learning and Qualitative Methods to Investigate Novel Pediatric Asthma Subtypes: Protocol for a Mixed Methods Study

  • Jie Xu; 
  • Sankalp Talankar; 
  • Jinqian Pan; 
  • Ira Harmon; 
  • Yonghui Wu; 
  • David A Fedele; 
  • Jennifer Brailsford; 
  • Jennifer Noel Fishe

ABSTRACT

Background:

Pediatric asthma is a heterogeneous disease; however, current characterizations of its subtypes are limited. Machine learning (ML) methods are well suited for identifying subtypes. In particular, deep neural networks can learn patient representations by leveraging longitudinal information captured in electronic health records (EHRs) while considering future outcomes. However, the traditional approach for subtype analysis requires large amounts of EHR data, which may contain protected health information (PHI) causing potential concerns regarding patient privacy. Federated learning is the key technology to address privacy concerns while preserving the accuracy and performance of ML algorithms. Federated learning could enable multi-site development and implementation of ML algorithms to facilitate the translation of artificial intelligence into clinical practice.

Objective:

To develop a research protocol for implementation of federated ML across a large clinical research network to identify and discover pediatric asthma subtypes and their progression over time.

Methods:

We will develop a research-grade pediatric asthma computable phenotype and clinical natural language processing pipeline. We will then apply federated learning to characterize pediatric asthma subtypes and their temporal progression. Focus groups with practicing pediatric asthma clinicians will be interwoven to investigate the clinical utility of the subtypes.

Results:

OneFlorida+ data from 2011 to 2023 contained 411,628 patients aged 2–18 years and 11,156,148 clinical notes.

Conclusions:

Pediatric asthma subtypes incorporating real-world data (RWD) from diverse populations could improve patient outcomes by moving the field closer to precision pediatric asthma care. Our privacy-preserving federated learning methodology and qualitative implementation work will address several challenges of applying ML to large, multicenter RWD data. Clinical Trial: Not applicable


 Citation

Please cite as:

Xu J, Talankar S, Pan J, Harmon I, Wu Y, Fedele DA, Brailsford J, Fishe JN

Combining Federated Machine Learning and Qualitative Methods to Investigate Novel Pediatric Asthma Subtypes: Protocol for a Mixed Methods Study

JMIR Res Protoc 2024;13:e57981

DOI: 10.2196/57981

PMID: 38976313

PMCID: 11263892

Per the author's request the PDF is not available.

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