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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Jan 29, 2024
Date Accepted: Jun 8, 2024

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

Privacy-Preserving Prediction of Postoperative Mortality in Multi-Institutional Data: Development and Usability Study

Suh J, Lee G, Kim JW, Shin J, Kim YJ, Lee SW, Kim S

Privacy-Preserving Prediction of Postoperative Mortality in Multi-Institutional Data: Development and Usability Study

JMIR Med Inform 2024;12:e56893

DOI: 10.2196/56893

PMID: 38968600

PMCID: 11259763

Privacy-Preserving Prediction of Postoperative Mortality in Multi-Institutional Data: Development and Usability Study

  • Jungyo Suh; 
  • Garam Lee; 
  • Jung Woo Kim; 
  • Junbum Shin; 
  • Yi-Jun Kim; 
  • Sang-Wook Lee; 
  • Sulgi Kim

ABSTRACT

Background:

To circumvent regulatory barriers that limit medical data exchange due to personal information security concerns, we use homomorphic encryption (HE) technology, enabling computation on encrypted data and enhancing privacy.

Objective:

This study explores whether using HE to integrate encrypted multi-institutional data enhances predictive power in research, focusing on the integration feasibility across institutions and determining the optimal size of hospital datasets for improved prediction models.

Methods:

We used data from 341,007 individuals aged ≥18 years who underwent non-cardiac surgeries across three medical institutions. The study focused on predicting in-hospital mortality within 30 days postoperatively, using secure logistic regression based on HE as the prediction model. We compared the predictive performance of this model using plaintext data from a single institution against a model using encrypted data from multiple institutions.

Results:

The predictive model using encrypted data from all three institutions exhibited the best performance based on area under the receiver operating characteristic (0.941); the model combining Asan Medical Center (AMC) and Seoul National University Hospital (SNUH) data exhibited the best predictive performance based on area under the precision–recall curve (0.132). Both Ewha Womans University Medical Center and SNUH demonstrated improvement in predictive power for their own institutions upon their respective data’s addition to the AMC data.

Conclusions:

Prediction models using multi-institutional datasets processed with HE outperformed those using single-institution datasets, especially when our model adaptation approach was applied, which was further validated on a smaller host hospital with a limited dataset. Clinical Trial: N/A


 Citation

Please cite as:

Suh J, Lee G, Kim JW, Shin J, Kim YJ, Lee SW, Kim S

Privacy-Preserving Prediction of Postoperative Mortality in Multi-Institutional Data: Development and Usability Study

JMIR Med Inform 2024;12:e56893

DOI: 10.2196/56893

PMID: 38968600

PMCID: 11259763

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