Quantifying degrees of necessity and of sufficiency in cause-effect relationships with dichotomous and survival outcomes.
Cox regression
attributable risk
explained variation
logistic regression
necessary condition
sufficient condition
Journal
Statistics in medicine
ISSN: 1097-0258
Titre abrégé: Stat Med
Pays: England
ID NLM: 8215016
Informations de publication
Date de publication:
15 10 2019
15 10 2019
Historique:
received:
10
08
2018
revised:
12
04
2019
accepted:
21
06
2019
pubmed:
7
8
2019
medline:
5
11
2020
entrez:
7
8
2019
Statut:
ppublish
Résumé
We suggest measures to quantify the degrees of necessity and of sufficiency of prognostic factors for dichotomous and for survival outcomes. A cause, represented by certain values of prognostic factors, is considered necessary for an event if, without the cause, the event cannot develop. It is considered sufficient for an event if the event is unavoidable in the presence of the cause. Necessity and sufficiency can be seen as the two faces of causation, and this symmetry and equal relevance are reflected by the suggested measures. The measures provide an approximate, in some cases an exact, multiplicative decomposition of explained variation as defined by Schemper and Henderson for censored survival and for dichotomous outcomes. The measures, ranging from zero to one, are simple, intuitive functions of unconditional and conditional probabilities of an event such as disease or death. These probabilities often will be derived from logistic or Cox regression models; the measures, however, do not require any particular model. The measures of the degree of necessity implicitly generalize the established attributable fraction or risk for dichotomous prognostic factors and dichotomous outcomes to continuous prognostic factors and to survival outcomes. In a setting with multiple prognostic factors, they provide marginal and partial results akin to marginal and partial odds and hazard ratios from multiple logistic and Cox regression. Properties of the measures are explored by an extensive simulation study. Their application is demonstrated by three typical real data examples.
Identifiants
pubmed: 31386230
doi: 10.1002/sim.8331
pmc: PMC6771968
doi:
Types de publication
Journal Article
Langues
eng
Sous-ensembles de citation
IM
Pagination
4733-4748Informations de copyright
© 2019 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
Références
Stat Med. 2003 Jul 30;22(14):2299-308
pubmed: 12854094
J Acquir Immune Defic Syndr. 2006 Jul;42(3):347-54
pubmed: 16763524
Stat Med. 2009 Nov 20;28(26):3276-93
pubmed: 19697303
Stat Med. 1996 Oct 15;15(19):1999-2012
pubmed: 8896135
Am J Epidemiol. 2004 May 1;159(9):882-90
pubmed: 15105181
Ann Oncol. 2016 Jul;27(7):1185-9
pubmed: 27052655
Stat Med. 2008 Apr 30;27(9):1447-67
pubmed: 17694507
Am J Epidemiol. 1976 Dec;104(6):587-92
pubmed: 998606
Biometrics. 2000 Mar;56(1):249-55
pubmed: 10783803
Stat Med. 1996 Oct 15;15(19):1987-97
pubmed: 8896134
J Epidemiol Community Health. 2001 Nov;55(11):825-30
pubmed: 11604439
Stat Methods Med Res. 2001 Jun;10(3):159-93
pubmed: 11446147
Control Clin Trials. 1996 Aug;17(4):343-6
pubmed: 8889347
Stat Methods Med Res. 2001 Jun;10(3):217-30
pubmed: 11446149
Stat Med. 2000 Jul 15;19(13):1771-81
pubmed: 10861777
Biostatistics. 2006 Oct;7(4):515-29
pubmed: 16478758
Stat Med. 2016 Mar 15;35(6):877-82
pubmed: 26428056
Stat Med. 2019 Oct 15;38(23):4733-4748
pubmed: 31386230