Journal of Peking University(Health Sciences) ›› 2018, Vol. 50 ›› Issue (2): 381-385. doi: 10.3969/j.issn.1671-167X.2018.02.031

• Article • Previous Articles    

Necessity and feasibility of data sharing of cohort studies#br# #br#

YANG Yu1, ZHAO Hou-yu2, ZHAN Si-yan1,2△   

  1. (1. Center for Data Science in Health and Medicine, Peking University, Beijing 100191, China; 2. Department of Epidemiology and Biostatistics, Peking University School of Public Health, Beijing 100191, China)
  • Online:2018-04-18 Published:2018-04-18
  • Contact: ZHAN Si-yan E-mail:siyan-zhan@bjmu.edu.cn
  • Supported by:
    Supported by the National Natural Science Foundation of China (91646107) and the National Key Research and Development Plan (2016YFC0901105)

Abstract: Cohort study is one of the important epidemiological methods which plays an irreplaceable status and role in etiological study. Using cohort study design, we can accurately and continuously collect genetic and environmental information, and identify and validate omics biomarkers to provide evidences for precision public health and medicine. However, results from a new cohort would not be available for at least ten years, as five years would be needed for funding, planning and enrolment, and another five for following up even the earliest analyses of the most common diseases; results for most cancers would take longer, with an unaffordable budget for many research investigators or institutions. That brings an alternative strategy of using existing cohort studies by sharing data between each other. Data sharing of cohort studies would be beneficial in many ways. Data sharing of cohort studies has the potential to make large samples unattainable in a single study, increase statistical power, enable more accurate and detailed subgroup analysis, increase the generalizability of results. It would also facilitate exchange of experiences and learning from each other, avoid for duplicated research and effectively promote the second use of existing data (i.e. using old data to discover new results). The data sharing would save staff recruitment, follow-up, laboratory analysis of the cost, with a high cost-benefit returns and economies of scale. Data sharing enables cross-validation and repeated verification across different data. Many international research funding agencies or leading research groups have also reached consensus on the principles and goals for promoting the sharing of medical research data. Due to rapid development of cohort studies in the past decades, China already has the basis for data sharing of cohort studies. Unfortunately, most of the existing cohort studies are self-contained, independent, lack of visibility, with insufficient co-operation and data sharing between each other. The academic value of the existing data collected in these cohort studies have not been fully exploited and utilized so far. Therefore, the China Cohort Consortium is trying to establish a multilevel three-dimensional cooperation and data sharing strategy. We hope that it will encourage researchers from public health, clinical and other related fields to work more closely through providing data management, data integration, data interaction, tools development, data repositories and other functions.

Key words: Cohort, Data sharing, China Cohort Consortium

CLC Number: 

  • R195.4
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