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Public Health Utility of Cause of Death Data: Applying Empirical Algorithms to Improve Data Quality Publisher Pubmed



Johnson SC1 ; Cunningham M1 ; Dippenaar IN1 ; Sharara F1 ; Wool EE1 ; Agesa KM1 ; Han C1 ; Millerpetrie MK2 ; Wilson S1 ; Fuller JE1 ; Balassyano S1 ; Bertolacci GJ1 ; Davis Weaver N1 ; Arabloo J3 Show All Authors
Authors
  1. Johnson SC1
  2. Cunningham M1
  3. Dippenaar IN1
  4. Sharara F1
  5. Wool EE1
  6. Agesa KM1
  7. Han C1
  8. Millerpetrie MK2
  9. Wilson S1
  10. Fuller JE1
  11. Balassyano S1
  12. Bertolacci GJ1
  13. Davis Weaver N1
  14. Arabloo J3
  15. Badawi A4, 5
  16. Bhagavathula AS6, 7
  17. Burkart K1, 8
  18. Camera LA9, 10
  19. Carvalho F11
  20. Castanedaorjuela CA12, 13
  21. Choi JYJ14
  22. Chu DT15
  23. Dai X1
  24. Dianatinasab M16, 17
  25. Emmonsbell S1
  26. Fernandes E18
  27. Fischer F19
  28. Ghashghaee A3, 20
  29. Golechha M21
  30. Hay SI1, 8
  31. Hayat K22, 23
  32. Henry NJ1, 24
  33. Holla R25
  34. Househ M26
  35. Ibitoye SE27
  36. Keramati M28
  37. Khan EA29
  38. Kim YJ30
  39. Kisa A31, 32
  40. Komaki H33, 34
  41. Koyanagi A35, 36
  42. Larson SL1
  43. Legrand KE1
  44. Liu X37
  45. Majeed A38
  46. Malekzadeh R39, 40
  47. Mohajer B41
  48. Mohammadianhafshejani A42
  49. Mohammadpourhodki R43
  50. Mohammed S44, 45
  51. Mohebi F41, 46
  52. Mokdad AH1, 8
  53. Molokhia M47
  54. Monasta L48
  55. Moni MA49
  56. Naveed M50
  57. Nguyen HLT51
  58. Olagunju AT52, 53
  59. Ostroff SM1, 54
  60. Kan FP55
  61. Pereira DM56
  62. Pham HQ51
  63. Rawaf S38, 57
  64. Rawaf DL58, 59
  65. Renzaho AMN60, 61
  66. Ronfani L48
  67. Samy AM62
  68. Senthilkumaran S63
  69. Sepanlou SG39, 40
  70. Shaikh MA64
  71. Shaw DH1
  72. Shibuya K65
  73. Singh JA66, 67
  74. Skryabin VY68
  75. Skryabina AA69
  76. Spurlock EE1
  77. Tadesse EG70
  78. Temsah MH71
  79. Tovanipalone MR72, 73
  80. Tran BX74
  81. Tsegaye GW75
  82. Valdez PR76, 77
  83. Vishwanath PM78
  84. Vu GT79
  85. Waheed Y80
  86. Yonemoto N81, 82
  87. Lozano R1, 8
  88. Lopez AD1, 8, 83
  89. Murray CJL1, 8
  90. Naghavi M1, 8, 84

Source: BMC Medical Informatics and Decision Making Published:2021


Abstract

Background: Accurate, comprehensive, cause-specific mortality estimates are crucial for informing public health decision making worldwide. Incorrectly or vaguely assigned deaths, defined as garbage-coded deaths, mask the true cause distribution. The Global Burden of Disease (GBD) study has developed methods to create comparable, timely, cause-specific mortality estimates; an impactful data processing method is the reallocation of garbage-coded deaths to a plausible underlying cause of death. We identify the pattern of garbage-coded deaths in the world and present the methods used to determine their redistribution to generate more plausible cause of death assignments. Methods: We describe the methods developed for the GBD 2019 study and subsequent iterations to redistribute garbage-coded deaths in vital registration data to plausible underlying causes. These methods include analysis of multiple cause data, negative correlation, impairment, and proportional redistribution. We classify garbage codes into classes according to the level of specificity of the reported cause of death (CoD) and capture trends in the global pattern of proportion of garbage-coded deaths, disaggregated by these classes, and the relationship between this proportion and the Socio-Demographic Index. We examine the relative importance of the top four garbage codes by age and sex and demonstrate the impact of redistribution on the annual GBD CoD rankings. Results: The proportion of least-specific (class 1 and 2) garbage-coded deaths ranged from 3.7% of all vital registration deaths to 67.3% in 2015, and the age-standardized proportion had an overall negative association with the Socio-Demographic Index. When broken down by age and sex, the category for unspecified lower respiratory infections was responsible for nearly 30% of garbage-coded deaths in those under 1 year of age for both sexes, representing the largest proportion of garbage codes for that age group. We show how the cause distribution by number of deaths changes before and after redistribution for four countries: Brazil, the United States, Japan, and France, highlighting the necessity of accounting for garbage-coded deaths in the GBD. Conclusions: We provide a detailed description of redistribution methods developed for CoD data in the GBD; these methods represent an overall improvement in empiricism compared to past reliance on a priori knowledge. © 2021, The Author(s).
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