4.3 Article

Alliance chain-based simulation on a new clinical research data pricing model

Journal

ANNALS OF TRANSLATIONAL MEDICINE
Volume 10, Issue 15, Pages -

Publisher

AME PUBLISHING COMPANY
DOI: 10.21037/atm-22-3671

Keywords

Data value; data pricing; multicenter research; blockchain; federated learning

Funding

  1. National Key R&D Program of China [2019YFE0126200]
  2. National Natural Science Foundation of China [62076218]
  3. Zhejiang Province Research Project of Public Welfare Technology Application [LGF22H180004, LGF22H110001]

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A comprehensive clinical data pricing model is proposed in this study for quantitatively evaluating the value of medical data in multicenter clinical research. It has been successfully validated in simulation and provides a reference for real-world applications.
Background: Multicenter clinical research faces many challenges, including how to quantitatively evaluate the data contribution of each research center. However, few data pricing model meets the requirements to the scenario. Thus, a suitable mechanism to measure the data value for clinical research is required. Methods: Extensive documents were acquired and analyzed, including a rare disease list from the National Health Commission, data structures of the electronic medical records (EMR) system, diagnosis-related groups (DRGs) regulations from the Health Commission of Zhejiang Province, and the Clinical Service Price List of Zhejiang Province. Nine senior experts were invited as consultants from hospital and enterprises with professional field of clinical research, data governance, and health economics. After brainstorming and expert evaluation, seven data attributes were identified as the main factors affecting the value of medical data. Different weights were assigned for each attribute based on its influence on data value. Each attribute was quantized to an index based on proposed algorithms. The data value models for chronic diseases and other diseases were distinguished given the different sensitivity of data timeliness. A simulation system using blockchain and federated learning techniques was constructed to verify the data pricing model in the scenario of clinical research. Results: A comprehensive clinical data pricing model is proposed and the simulation of three research centers with 50 million real clinical data entries was conducted to verify its effectiveness. It demonstrates that the proposed model can compute medical data value quantitatively. Conclusions: Quantitative evaluation of the value of medical data for multicenter clinical research based on the proposed data pricing model works well in simulation. This model will be improved by real-world applications in the near future.

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