Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data

Improving the quality of care for hip arthroplasty (replacement) patients requires the systematic evaluation of clinical performance of implants and the identification of “outlier” devices that have an especially high risk of reoperation (“revision”). Postmarket surveillance of arthroplasty implants...

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Main Authors: Camden Cheek, Huiyong Zheng, Brian R Hallstrom, Richard E Hughes
Format: Article
Language:English
Published: SAGE Publishing 2018-02-01
Series:Biomedical Engineering and Computational Biology
Online Access:https://doi.org/10.1177/1179597218756896
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spelling doaj-22b82baf5ff64aa9a7550dbfdecf1a9f2020-11-25T03:16:31ZengSAGE PublishingBiomedical Engineering and Computational Biology1179-59722018-02-01910.1177/1179597218756896Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry DataCamden Cheek0Huiyong Zheng1Brian R Hallstrom2Richard E Hughes3Department of Biomedical Engineering, University of Michigan, Ann Arbor, MI, USADepartment of Orthopaedic Surgery, University of Michigan, Ann Arbor, MI, USADepartment of Orthopaedic Surgery, University of Michigan, Ann Arbor, MI, USADepartment of Industrial & Operations Engineering, University of Michigan, Ann Arbor, MI, USAImproving the quality of care for hip arthroplasty (replacement) patients requires the systematic evaluation of clinical performance of implants and the identification of “outlier” devices that have an especially high risk of reoperation (“revision”). Postmarket surveillance of arthroplasty implants, which rests on the analysis of large patient registries, has been effective in identifying outlier implants such as the ASR metal-on-metal hip resurfacing device that was recalled. Although identifying an implant as an outlier implies a causal relationship between the implant and revision risk, traditional signal detection methods use classical biostatistical methods. The field of probabilistic graphical modeling of causal relationships has developed tools for rigorous analysis of causal relationships in observational data. The purpose of this study was to evaluate one causal discovery algorithm (PC) to determine its suitability for hip arthroplasty implant signal detection. Simulated data were generated using distributions of patient and implant characteristics, and causal discovery was performed using the TETRAD software package. Two sizes of registries were simulated: (1) a statewide registry in Michigan and (2) a nationwide registry in the United Kingdom. The results showed that the algorithm performed better for the simulation of a large national registry. The conclusion is that the causal discovery algorithm used in this study may be a useful tool for implant signal detection for large arthroplasty registries; regional registries may only be able to only detect implants that perform especially poorly.https://doi.org/10.1177/1179597218756896
collection DOAJ
language English
format Article
sources DOAJ
author Camden Cheek
Huiyong Zheng
Brian R Hallstrom
Richard E Hughes
spellingShingle Camden Cheek
Huiyong Zheng
Brian R Hallstrom
Richard E Hughes
Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data
Biomedical Engineering and Computational Biology
author_facet Camden Cheek
Huiyong Zheng
Brian R Hallstrom
Richard E Hughes
author_sort Camden Cheek
title Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data
title_short Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data
title_full Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data
title_fullStr Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data
title_full_unstemmed Application of a Causal Discovery Algorithm to the Analysis of Arthroplasty Registry Data
title_sort application of a causal discovery algorithm to the analysis of arthroplasty registry data
publisher SAGE Publishing
series Biomedical Engineering and Computational Biology
issn 1179-5972
publishDate 2018-02-01
description Improving the quality of care for hip arthroplasty (replacement) patients requires the systematic evaluation of clinical performance of implants and the identification of “outlier” devices that have an especially high risk of reoperation (“revision”). Postmarket surveillance of arthroplasty implants, which rests on the analysis of large patient registries, has been effective in identifying outlier implants such as the ASR metal-on-metal hip resurfacing device that was recalled. Although identifying an implant as an outlier implies a causal relationship between the implant and revision risk, traditional signal detection methods use classical biostatistical methods. The field of probabilistic graphical modeling of causal relationships has developed tools for rigorous analysis of causal relationships in observational data. The purpose of this study was to evaluate one causal discovery algorithm (PC) to determine its suitability for hip arthroplasty implant signal detection. Simulated data were generated using distributions of patient and implant characteristics, and causal discovery was performed using the TETRAD software package. Two sizes of registries were simulated: (1) a statewide registry in Michigan and (2) a nationwide registry in the United Kingdom. The results showed that the algorithm performed better for the simulation of a large national registry. The conclusion is that the causal discovery algorithm used in this study may be a useful tool for implant signal detection for large arthroplasty registries; regional registries may only be able to only detect implants that perform especially poorly.
url https://doi.org/10.1177/1179597218756896
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