Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”

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Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”. / Christensen, Julie Brauner; Aasbrenn, Martin; Castillo, Luana Sandoval; Ekmann, Anette; Jensen, Thomas Giver; Pressel, Eckart; Lunn, Troels Haxholdt; Suetta, Charlotte; Palm, Henrik.

In: Geriatric Orthopaedic Surgery and Rehabilitation, Vol. 12, No. 1, 2021.

Research output: Contribution to journalLetterResearchpeer-review

Harvard

Christensen, JB, Aasbrenn, M, Castillo, LS, Ekmann, A, Jensen, TG, Pressel, E, Lunn, TH, Suetta, C & Palm, H 2021, 'Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”', Geriatric Orthopaedic Surgery and Rehabilitation, vol. 12, no. 1. https://doi.org/10.1177/2151459320986125

APA

Christensen, J. B., Aasbrenn, M., Castillo, L. S., Ekmann, A., Jensen, T. G., Pressel, E., Lunn, T. H., Suetta, C., & Palm, H. (2021). Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”. Geriatric Orthopaedic Surgery and Rehabilitation, 12(1). https://doi.org/10.1177/2151459320986125

Vancouver

Christensen JB, Aasbrenn M, Castillo LS, Ekmann A, Jensen TG, Pressel E et al. Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”. Geriatric Orthopaedic Surgery and Rehabilitation. 2021;12(1). https://doi.org/10.1177/2151459320986125

Author

Christensen, Julie Brauner ; Aasbrenn, Martin ; Castillo, Luana Sandoval ; Ekmann, Anette ; Jensen, Thomas Giver ; Pressel, Eckart ; Lunn, Troels Haxholdt ; Suetta, Charlotte ; Palm, Henrik. / Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”. In: Geriatric Orthopaedic Surgery and Rehabilitation. 2021 ; Vol. 12, No. 1.

Bibtex

@article{3a8589ac942e4761916f4f4f2fdb2127,
title = "Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”",
abstract = "We are grateful for the interest from Hu et al. in our article.1,2 There are different ways to select variables to be selected in a regression model, and there are different preferences among researchers.In general, p-values driven selection of covariates, such as stepwise selection of covariates, are being criticized by an increasing number of analysts, see Lydersen (2015) and references therein.3Our initial list of candidate preventable risk factors were based on apriori judgment and potential clinical relevance, with use of conceptual frameworks as directed acyclic graphs to identify possible confounders.4 Then, we kept as candidate preventable risk factors only those that were statistically significant in the univariate analysis. For the rest, we have refrained from p-value driven selection of additional covariates. We did also ensure that no pairs of variables in the presented multivariable models were correlated to an extent that would lead to multicollinearity.We regard the step 2 and 3 proposed by you as having the potential to introduce similar problems as stepwise selection of covariates. We agree that the associations between postoperative haemoglobin and albumin and acute kidney injury are interesting. However, inclusion of postoperative albumin in a large multivariable model might have led to collider bias5 as several other covariates and the outcome all could lead to low albumin. Details of postoperative sepsis were unfortunately not available in our data set.We apologize for not clarifying these aspects clearly enough in the original article and once again want to express our gratitude to Hu et al. for their good questions.",
author = "Christensen, {Julie Brauner} and Martin Aasbrenn and Castillo, {Luana Sandoval} and Anette Ekmann and Jensen, {Thomas Giver} and Eckart Pressel and Lunn, {Troels Haxholdt} and Charlotte Suetta and Henrik Palm",
year = "2021",
doi = "10.1177/2151459320986125",
language = "English",
volume = "12",
journal = "Geriatric Orthopaedic Surgery & Rehabilitation",
issn = "2151-4585",
publisher = "SAGE Publications",
number = "1",

}

RIS

TY - JOUR

T1 - Commentary on “Predictors of Acute Kidney Injury After Hip Fracture in Older Adults”

AU - Christensen, Julie Brauner

AU - Aasbrenn, Martin

AU - Castillo, Luana Sandoval

AU - Ekmann, Anette

AU - Jensen, Thomas Giver

AU - Pressel, Eckart

AU - Lunn, Troels Haxholdt

AU - Suetta, Charlotte

AU - Palm, Henrik

PY - 2021

Y1 - 2021

N2 - We are grateful for the interest from Hu et al. in our article.1,2 There are different ways to select variables to be selected in a regression model, and there are different preferences among researchers.In general, p-values driven selection of covariates, such as stepwise selection of covariates, are being criticized by an increasing number of analysts, see Lydersen (2015) and references therein.3Our initial list of candidate preventable risk factors were based on apriori judgment and potential clinical relevance, with use of conceptual frameworks as directed acyclic graphs to identify possible confounders.4 Then, we kept as candidate preventable risk factors only those that were statistically significant in the univariate analysis. For the rest, we have refrained from p-value driven selection of additional covariates. We did also ensure that no pairs of variables in the presented multivariable models were correlated to an extent that would lead to multicollinearity.We regard the step 2 and 3 proposed by you as having the potential to introduce similar problems as stepwise selection of covariates. We agree that the associations between postoperative haemoglobin and albumin and acute kidney injury are interesting. However, inclusion of postoperative albumin in a large multivariable model might have led to collider bias5 as several other covariates and the outcome all could lead to low albumin. Details of postoperative sepsis were unfortunately not available in our data set.We apologize for not clarifying these aspects clearly enough in the original article and once again want to express our gratitude to Hu et al. for their good questions.

AB - We are grateful for the interest from Hu et al. in our article.1,2 There are different ways to select variables to be selected in a regression model, and there are different preferences among researchers.In general, p-values driven selection of covariates, such as stepwise selection of covariates, are being criticized by an increasing number of analysts, see Lydersen (2015) and references therein.3Our initial list of candidate preventable risk factors were based on apriori judgment and potential clinical relevance, with use of conceptual frameworks as directed acyclic graphs to identify possible confounders.4 Then, we kept as candidate preventable risk factors only those that were statistically significant in the univariate analysis. For the rest, we have refrained from p-value driven selection of additional covariates. We did also ensure that no pairs of variables in the presented multivariable models were correlated to an extent that would lead to multicollinearity.We regard the step 2 and 3 proposed by you as having the potential to introduce similar problems as stepwise selection of covariates. We agree that the associations between postoperative haemoglobin and albumin and acute kidney injury are interesting. However, inclusion of postoperative albumin in a large multivariable model might have led to collider bias5 as several other covariates and the outcome all could lead to low albumin. Details of postoperative sepsis were unfortunately not available in our data set.We apologize for not clarifying these aspects clearly enough in the original article and once again want to express our gratitude to Hu et al. for their good questions.

U2 - 10.1177/2151459320986125

DO - 10.1177/2151459320986125

M3 - Letter

C2 - 33628610

AN - SCOPUS:85100851974

VL - 12

JO - Geriatric Orthopaedic Surgery & Rehabilitation

JF - Geriatric Orthopaedic Surgery & Rehabilitation

SN - 2151-4585

IS - 1

ER -

ID: 302066834