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Main Authors: Baumel, Tal, Manoel, Andre, Jones, Daniel, Su, Shize, Inan, Huseyin, Aaron, Bornstein, Sim, Robert
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.07809
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author Baumel, Tal
Manoel, Andre
Jones, Daniel
Su, Shize
Inan, Huseyin
Aaron
Bornstein
Sim, Robert
author_facet Baumel, Tal
Manoel, Andre
Jones, Daniel
Su, Shize
Inan, Huseyin
Aaron
Bornstein
Sim, Robert
contents In the field of machine learning, domain-specific annotated data is an invaluable resource for training effective models. However, in the medical domain, this data often includes Personal Health Information (PHI), raising significant privacy concerns. The stringent regulations surrounding PHI limit the availability and sharing of medical datasets, which poses a substantial challenge for researchers and practitioners aiming to develop advanced machine learning models. In this paper, we introduce a novel method to "clone" datasets containing PHI. Our approach ensures that the cloned datasets retain the essential characteristics and utility of the original data without compromising patient privacy. By leveraging differential-privacy techniques and a novel fine-tuning task, our method produces datasets that are free from identifiable information while preserving the statistical properties necessary for model training. We conduct utility testing to evaluate the performance of machine learning models trained on the cloned datasets. The results demonstrate that our cloned datasets not only uphold privacy standards but also enhance model performance compared to those trained on traditional anonymized datasets. This work offers a viable solution for the ethical and effective utilization of sensitive medical data in machine learning, facilitating progress in medical research and the development of robust predictive models.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07809
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Controllable Synthetic Clinical Note Generation with Privacy Guarantees
Baumel, Tal
Manoel, Andre
Jones, Daniel
Su, Shize
Inan, Huseyin
Aaron
Bornstein
Sim, Robert
Computation and Language
Machine Learning
In the field of machine learning, domain-specific annotated data is an invaluable resource for training effective models. However, in the medical domain, this data often includes Personal Health Information (PHI), raising significant privacy concerns. The stringent regulations surrounding PHI limit the availability and sharing of medical datasets, which poses a substantial challenge for researchers and practitioners aiming to develop advanced machine learning models. In this paper, we introduce a novel method to "clone" datasets containing PHI. Our approach ensures that the cloned datasets retain the essential characteristics and utility of the original data without compromising patient privacy. By leveraging differential-privacy techniques and a novel fine-tuning task, our method produces datasets that are free from identifiable information while preserving the statistical properties necessary for model training. We conduct utility testing to evaluate the performance of machine learning models trained on the cloned datasets. The results demonstrate that our cloned datasets not only uphold privacy standards but also enhance model performance compared to those trained on traditional anonymized datasets. This work offers a viable solution for the ethical and effective utilization of sensitive medical data in machine learning, facilitating progress in medical research and the development of robust predictive models.
title Controllable Synthetic Clinical Note Generation with Privacy Guarantees
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2409.07809