Reliability of Supervised Machine Learning Using Synthetic Data in Health Care: Model to Preserve Privacy for Data Sharing

被引:89
|
作者
Rankin, Debbie [1 ]
Black, Michaela [1 ]
Bond, Raymond [2 ]
Wallace, Jonathan [2 ]
Mulvenna, Maurice [2 ]
Epelde, Gorka [3 ,4 ]
机构
[1] Ulster Univ, Sch Comp Engn & Intelligent Syst, Derry Londonderry, North Ireland
[2] Ulster Univ, Sch Comp, Jordanstown, North Ireland
[3] Donostia San Sebastian, Vicomtech Fdn, Donostia San Sebastian, Spain
[4] Biodonostia Hlth Res Inst, eHlth Grp, Donostia San Sebastian, Spain
基金
欧盟地平线“2020”;
关键词
synthetic data; supervised machine learning; data utility; health care; decision support; statistical disclosure control; privacy; open data; stochastic gradient descent; decision tree; k-nearest neighbors; random forest; support vector machine; MICRODATA; RISK;
D O I
10.2196/18910
中图分类号
R-058 [];
学科分类号
摘要
Background: The exploitation of synthetic data in health care is at an early stage. Synthetic data could unlock the potential within health care datasets that are too sensitive for release. Several synthetic data generators have been developed to date; however, studies evaluating their efficacy and generalizability are scarce. Objective: This work sets out to understand the difference in performance of supervised machine learning models trained on synthetic data compared with those trained on real data. Methods: A total of 19 open health datasets were selected for experimental work. Synthetic data were generated using three synthetic data generators that apply classification and regression trees, parametric, and Bayesian network approaches. Real and synthetic data were used (separately) to train five supervised machine learning models: stochastic gradient descent, decision tree, k-nearest neighbors, random forest, and support vector machine. Models were tested only on real data to determine whether a model developed by training on synthetic data can used to accurately classify new, real examples. The impact of statistical disclosure control on model performance was also assessed. Results: A total of 92% of models trained on synthetic data have lower accuracy than those trained on real data. Tree-based models trained on synthetic data have deviations in accuracy from models trained on real data of 0.177 (18%) to 0.193 (19%), while other models have lower deviations of 0.058 (6%) to 0.072 (7%). The winning classifier when trained and tested on real data versus models trained on synthetic data and tested on real data is the same in 26% (5/19) of cases for classification and regression tree and parametric synthetic data and in 21% (4/19) of cases for Bayesian network-generated synthetic data. Tree-based models perform best with real data and are the winning classifier in 95% (18/19) of cases. This is not the case for models trained on synthetic data. When tree-based models are not considered, the winning classifier for real and synthetic data is matched in 74% (14/19), 53% (10/19), and 68% (13/19) of cases for classification and regression tree, parametric, and Bayesian network synthetic data, respectively. Statistical disclosure control methods did not have a notable impact on data utility. Conclusions: The results of this study are promising with small decreases in accuracy observed in models trained with synthetic data compared with models trained with real data, where both are tested on real data. Such deviations are expected and manageable. Tree-based classifiers have some sensitivity to synthetic data, and the underlying cause requires further investigation. This study highlights the potential of synthetic data and the need for further evaluation of their robustness. Synthetic data must ensure individual privacy and data utility are preserved in order to instill confidence in health care departments when using such data to inform policy decision-making.
引用
收藏
页数:21
相关论文
共 50 条
  • [41] When Machine Learning Models Leak: An Exploration of Synthetic Training Data
    Slokom, Manel
    De Wolf, Peter-Paul
    Larson, Martha
    PRIVACY IN STATISTICAL DATABASES, PSD 2022, 2022, 13463 : 283 - 296
  • [42] An approach to monitoring quality in manufacturing using supervised machine learning on product state data
    Wuest, Thorsten
    Irgens, Christopher
    Thoben, Klaus-Dieter
    JOURNAL OF INTELLIGENT MANUFACTURING, 2014, 25 (05) : 1167 - 1180
  • [43] An approach to monitoring quality in manufacturing using supervised machine learning on product state data
    Thorsten Wuest
    Christopher Irgens
    Klaus-Dieter Thoben
    Journal of Intelligent Manufacturing, 2014, 25 : 1167 - 1180
  • [44] Supervised Rainfall Learning Model Using Machine Learning Algorithms
    Sharma, Amit Kumar
    Chaurasia, Sandeep
    Srivastava, Devesh Kumar
    INTERNATIONAL CONFERENCE ON ADVANCED MACHINE LEARNING TECHNOLOGIES AND APPLICATIONS (AMLTA2018), 2018, 723 : 275 - 283
  • [45] Machine Vision for Collaborative Robotics Using Synthetic Data-Driven Learning
    Camilo Martinez-Franco, Juan
    Alvarez-Martinez, David
    SERVICE ORIENTED, HOLONIC AND MULTI-AGENT MANUFACTURING SYSTEMS FOR INDUSTRY OF THE FUTURE, SOHOMA LATIN AMERICA 2021, 2021, 987 : 69 - 81
  • [46] Dynamic distributed predictive learning models that preserve privacy for hospitals with insufficient labeled data
    Mathew, George
    Obradovic, Zoran
    NETWORK MODELING AND ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS, 2013, 2 (04): : 245 - 255
  • [47] Comparison of Machine Learning Models in Prediction of Cardiovascular Disease Using Health Record Data
    Maiga, Jaouja
    Hungilo, Gilbert Gutabaga
    Pranowo
    2019 INTERNATIONAL CONFERENCE ON INFORMATICS, MULTIMEDIA, CYBER AND INFORMATION SYSTEM (ICIMCIS), 2019, : 45 - 48
  • [48] Melting of Privacy with Machine Learning, Big Data, and Social Media
    Canbay, Pelin
    Demircioglu, Zubeyde
    ACTA INFOLOGICA, 2023, 7 (01):
  • [49] A Machine Learning Model for Data Sanitization
    Ahmed, Usman
    Srivastava, Gautam
    Lin, Jerry Chun-Wei
    COMPUTER NETWORKS, 2021, 189
  • [50] Machine Learning Based Framework for Maintaining Privacy of Healthcare Data
    Seh, Adil Hussain
    Al-Amri, Jehad F.
    Subahi, Ahmad F.
    Agrawal, Alka
    Kumar, Rajeev
    Khan, Raees Ahmad
    INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2021, 29 (03) : 697 - 712