Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry. / Berglund, Agnethe; Olsen, Morten; Andersen, Marianne; Nielsen, Eigil Husted; Feldt-Rasmussen, Ulla; Kistorp, Caroline; Gravholt, Claus Højbjerg; Stochhholm, Kirstine.

In: Clinical Epidemiology, Vol. 9, 2017, p. 75-82.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Berglund, A, Olsen, M, Andersen, M, Nielsen, EH, Feldt-Rasmussen, U, Kistorp, C, Gravholt, CH & Stochhholm, K 2017, 'Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry', Clinical Epidemiology, vol. 9, pp. 75-82. https://doi.org/10.2147/CLEP.S124340

APA

Berglund, A., Olsen, M., Andersen, M., Nielsen, E. H., Feldt-Rasmussen, U., Kistorp, C., Gravholt, C. H., & Stochhholm, K. (2017). Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry. Clinical Epidemiology, 9, 75-82. https://doi.org/10.2147/CLEP.S124340

Vancouver

Berglund A, Olsen M, Andersen M, Nielsen EH, Feldt-Rasmussen U, Kistorp C et al. Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry. Clinical Epidemiology. 2017;9:75-82. https://doi.org/10.2147/CLEP.S124340

Author

Berglund, Agnethe ; Olsen, Morten ; Andersen, Marianne ; Nielsen, Eigil Husted ; Feldt-Rasmussen, Ulla ; Kistorp, Caroline ; Gravholt, Claus Højbjerg ; Stochhholm, Kirstine. / Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry. In: Clinical Epidemiology. 2017 ; Vol. 9. pp. 75-82.

Bibtex

@article{1e07e850ed7f4076888a32e91a853dcb,
title = "Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry",
abstract = "OBJECTIVE: Routinely collected health data may be valuable sources for conducting research. This study aimed to evaluate the validity of algorithms detecting hypopituitary patients in the Danish National Patient Registry (DNPR) using medical records as reference standard.STUDY DESIGN AND SETTING: Patients with International Classification of Diseases (10th edition [ICD-10]) diagnoses of hypopituitarism, or other diagnoses of pituitary disorders assumed to be associated with an increased risk of hypopituitarism, recorded in the DNPR during 2000-2012 were identified. Medical records were reviewed to confirm or disprove hypopituitarism.RESULTS: Hypopituitarism was confirmed in 911 patients. In a candidate population of 1,661, this yielded an overall positive predictive value (PPV) of 54.8% (95% confidence interval [CI]: 52.4-57.3). Using algorithms searching for patients recorded at least one, three or five times with a diagnosis of hypopituitarism (E23.0x) and/or at least once with a diagnosis of postprocedural hypopituitarism (E89.3x), PPVs gradually increased from 73.3% (95% CI: 70.6-75.8) to 83.3% (95% CI: 80.7-85.7). Completeness for the same algorithms, however, decreased from 90.8% (95% CI: 88.7-92.6) to 82.9% (95% CI: 80.3-85.3) respectively. Including data of hormone replacement in the same algorithms PPVs increased from 73.2% (95% CI: 70.6-75.7) to 82.6% (95% CI: 80.1-84.9) and completeness decreased from 94.3% (95% CI: 92.6-95.7) to 89.7% (95% CI: 87.5-91.6) with increasing records of E23.0x.CONCLUSION: The DNPR is a valuable data source to identify hypopituitary patients using a search criteria of at least five records of E23.0x and/or at least one record of E89.3x. Completeness is increased when including hormone replacement data in the algorithm. The consequences of misclassification must, however, always be considered.",
author = "Agnethe Berglund and Morten Olsen and Marianne Andersen and Nielsen, {Eigil Husted} and Ulla Feldt-Rasmussen and Caroline Kistorp and Gravholt, {Claus H{\o}jbjerg} and Kirstine Stochhholm",
year = "2017",
doi = "10.2147/CLEP.S124340",
language = "English",
volume = "9",
pages = "75--82",
journal = "Clinical Epidemiology",
issn = "1179-1349",
publisher = "Dove Medical Press Ltd",

}

RIS

TY - JOUR

T1 - Evaluation of ICD-10 algorithms to identify hypopituitary patients in the Danish National Patient Registry

AU - Berglund, Agnethe

AU - Olsen, Morten

AU - Andersen, Marianne

AU - Nielsen, Eigil Husted

AU - Feldt-Rasmussen, Ulla

AU - Kistorp, Caroline

AU - Gravholt, Claus Højbjerg

AU - Stochhholm, Kirstine

PY - 2017

Y1 - 2017

N2 - OBJECTIVE: Routinely collected health data may be valuable sources for conducting research. This study aimed to evaluate the validity of algorithms detecting hypopituitary patients in the Danish National Patient Registry (DNPR) using medical records as reference standard.STUDY DESIGN AND SETTING: Patients with International Classification of Diseases (10th edition [ICD-10]) diagnoses of hypopituitarism, or other diagnoses of pituitary disorders assumed to be associated with an increased risk of hypopituitarism, recorded in the DNPR during 2000-2012 were identified. Medical records were reviewed to confirm or disprove hypopituitarism.RESULTS: Hypopituitarism was confirmed in 911 patients. In a candidate population of 1,661, this yielded an overall positive predictive value (PPV) of 54.8% (95% confidence interval [CI]: 52.4-57.3). Using algorithms searching for patients recorded at least one, three or five times with a diagnosis of hypopituitarism (E23.0x) and/or at least once with a diagnosis of postprocedural hypopituitarism (E89.3x), PPVs gradually increased from 73.3% (95% CI: 70.6-75.8) to 83.3% (95% CI: 80.7-85.7). Completeness for the same algorithms, however, decreased from 90.8% (95% CI: 88.7-92.6) to 82.9% (95% CI: 80.3-85.3) respectively. Including data of hormone replacement in the same algorithms PPVs increased from 73.2% (95% CI: 70.6-75.7) to 82.6% (95% CI: 80.1-84.9) and completeness decreased from 94.3% (95% CI: 92.6-95.7) to 89.7% (95% CI: 87.5-91.6) with increasing records of E23.0x.CONCLUSION: The DNPR is a valuable data source to identify hypopituitary patients using a search criteria of at least five records of E23.0x and/or at least one record of E89.3x. Completeness is increased when including hormone replacement data in the algorithm. The consequences of misclassification must, however, always be considered.

AB - OBJECTIVE: Routinely collected health data may be valuable sources for conducting research. This study aimed to evaluate the validity of algorithms detecting hypopituitary patients in the Danish National Patient Registry (DNPR) using medical records as reference standard.STUDY DESIGN AND SETTING: Patients with International Classification of Diseases (10th edition [ICD-10]) diagnoses of hypopituitarism, or other diagnoses of pituitary disorders assumed to be associated with an increased risk of hypopituitarism, recorded in the DNPR during 2000-2012 were identified. Medical records were reviewed to confirm or disprove hypopituitarism.RESULTS: Hypopituitarism was confirmed in 911 patients. In a candidate population of 1,661, this yielded an overall positive predictive value (PPV) of 54.8% (95% confidence interval [CI]: 52.4-57.3). Using algorithms searching for patients recorded at least one, three or five times with a diagnosis of hypopituitarism (E23.0x) and/or at least once with a diagnosis of postprocedural hypopituitarism (E89.3x), PPVs gradually increased from 73.3% (95% CI: 70.6-75.8) to 83.3% (95% CI: 80.7-85.7). Completeness for the same algorithms, however, decreased from 90.8% (95% CI: 88.7-92.6) to 82.9% (95% CI: 80.3-85.3) respectively. Including data of hormone replacement in the same algorithms PPVs increased from 73.2% (95% CI: 70.6-75.7) to 82.6% (95% CI: 80.1-84.9) and completeness decreased from 94.3% (95% CI: 92.6-95.7) to 89.7% (95% CI: 87.5-91.6) with increasing records of E23.0x.CONCLUSION: The DNPR is a valuable data source to identify hypopituitary patients using a search criteria of at least five records of E23.0x and/or at least one record of E89.3x. Completeness is increased when including hormone replacement data in the algorithm. The consequences of misclassification must, however, always be considered.

U2 - 10.2147/CLEP.S124340

DO - 10.2147/CLEP.S124340

M3 - Journal article

C2 - 28223847

VL - 9

SP - 75

EP - 82

JO - Clinical Epidemiology

JF - Clinical Epidemiology

SN - 1179-1349

ER -

ID: 194521129