Bayesian network-based missing mechanism identification (BN-MMI) method in medical research.

Tingyan Yue, Tao Zhang
Author Information
  1. Tingyan Yue: West China Second University Hospital, Sichuan University, Chengdu, China.
  2. Tao Zhang: West China School of Public Health and West China Fourth Hospital, Sichuan University, Chengdu, China. scdxzhangtao@163.com.

Abstract

BACKGROUND: Traditional approaches to identify missing mechanisms are usually based on the hypothesis test and confronted with both theoretical and practical challenges. It has been proved that the Bayesian network is powerful in integrating, analyzing and visualizing information, and some previous researches have verified the promising features of Bayesian network to deal with the aforementioned challenges in missing mechanism identification. Based on the above reasons, this paper explores the application of Bayesian network to the identification of missing mechanisms for the first time, and proposes a new method, the Bayesian network-based missing mechanism identification (BN-MMI) method, to identify missing mechanism in medical research.
METHODS: The procedure of BN-MMI method consists three easy-to-implement steps: estimating the missing data structure by the Bayesian network; assessing the credibility of the estimated missing data structure; and identifying the missing mechanism from the estimated missing data structure. The BN-MMI method is verified by simulation research and empirical research.
RESULTS: The simulation study verified the validity, consistency and robustness of BN-MMI method, and indicated its outperformance in contrast to the traditional logistic regression method. In addition, the empirical study illustrated the applicability of BN-MMI method in the real world by an example of medical record data.
CONCLUSIONS: It was confirmed that the BN-MMI method itself, together with human knowledge and expertise, could identify the missing mechanisms according to the probabilistic dependence/independence relations among variables of interest. At the same time, our research shed light upon the potential application of BN-MMI method to a broader range of missing data issues in medical studies.

References

  1. Stat Med. 2007 Feb 10;26(3):681-93 [PMID: 16538704]
  2. BJOG. 2015 May;122(6):851-7 [PMID: 24917531]
  3. Am J Epidemiol. 2017 Jun 15;185(12):1233-1239 [PMID: 28338946]
  4. J Biomed Inform. 2008 Feb;41(1):1-14 [PMID: 17625974]
  5. Stat Med. 1998 Mar 15-Apr 15;17(5-7):739-56 [PMID: 9549820]
  6. J Neurotrauma. 2021 Jun 1;38(13):1842-1857 [PMID: 33470157]
  7. Clin Epidemiol. 2017 Mar 15;9:157-166 [PMID: 28352203]
  8. Pharmacoeconomics. 2018 Aug;36(8):889-901 [PMID: 29679317]
  9. Psychometrika. 2015 Sep;80(3):707-26 [PMID: 25080867]
  10. Injury. 2018 Sep;49(9):1641-1647 [PMID: 29678306]
  11. Soc Sci Med. 2018 Jul;209:160-168 [PMID: 29566959]
  12. BMC Med Genomics. 2015 Jun 27;8:33 [PMID: 26112054]
  13. BMC Bioinformatics. 2009 Apr 24;10:122 [PMID: 19393071]

MeSH Term

Bayes Theorem
Biomedical Research
Computer Simulation
Humans

Word Cloud

Created with Highcharts 10.0.0missingmethodBN-MMIBayesianmechanismresearchdatanetworkidentificationmedicalidentifymechanismsverifiedstructurechallengesapplicationtimenetwork-basedestimatedsimulationempiricalstudyBACKGROUND:TraditionalapproachesusuallybasedhypothesistestconfrontedtheoreticalpracticalprovedpowerfulintegratinganalyzingvisualizinginformationpreviousresearchespromisingfeaturesdealaforementionedBasedreasonspaperexploresfirstproposesnewMETHODS:procedureconsiststhreeeasy-to-implementsteps:estimatingassessingcredibilityidentifyingRESULTS:validityconsistencyrobustnessindicatedoutperformancecontrasttraditionallogisticregressionadditionillustratedapplicabilityrealworldexamplerecordCONCLUSIONS:confirmedtogetherhumanknowledgeexpertiseaccordingprobabilisticdependence/independencerelationsamongvariablesinterestshedlightuponpotentialbroaderrangeissuesstudies

Similar Articles

Cited By