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Introduction to secure data sharing in primary care using the federated causal learning models.

Miaoshuang Chen1, Zongqi Chang1, Peng Gong1

  • 1Department of Epidemiology and Health Statistics, Sichuan University, Chengdu, China.

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|March 27, 2026
PubMed
Summary
This summary is machine-generated.

Federated causal learning enables cross-regional primary healthcare data analysis without data sharing, overcoming data silos and missing data challenges. This approach effectively estimates causal effects, even with up to 20% missing data.

Keywords:
Artificial intelligenceHealth PersonnelMachine LearningPrimary Health CarePublic Health

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Area of Science:

  • Primary healthcare research
  • Data science
  • Causal inference

Background:

  • Primary healthcare research faces challenges with data silos and missing data.
  • High technical barriers hinder effective cross-regional data analysis.

Purpose of the Study:

  • To apply the federated causal learning framework to primary healthcare.
  • To estimate cross-regional causal effects without sharing raw data.
  • To evaluate framework performance under various missing data scenarios.

Main Methods:

  • Applied federated causal learning framework in two primary healthcare case studies.
  • Developed a step-by-step protocol for estimating cross-regional causal effects.
  • Conducted a simulation study to assess performance with missing data.

Main Results:

  • Successfully applied the framework to chronic non-communicable and infectious diseases.
  • Federated model's average treatment effect (ATE) closely matched centralized model.
  • Stable model achieved near-perfect coverage rates with up to 20% missing data.

Conclusions:

  • Federated causal learning is effective and practical for decentralized primary healthcare data.
  • This framework offers a safe solution for federated causal inference in primary care.
  • The approach advances data-driven precision decision-making in primary care.