Validation of diagnosis codes to identify hospitalized COVID‐19 patients in health care claims data
Purpose Health plan claims may provide complete longitudinal data for timely, real‐world population‐level COVID‐19 assessment. However, these data often lack laboratory results, the standard for COVID‐19 diagnosis. Methods We assessed the validity of ICD‐10‐CM diagnosis codes for identifying patient...
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| Published in | Pharmacoepidemiology and drug safety Vol. 31; no. 4; pp. 476 - 480 |
|---|---|
| Main Authors | , , , , , , , , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
Chichester, UK
John Wiley & Sons, Inc
01.04.2022
Wiley Subscription Services, Inc |
| Subjects | |
| Online Access | Get full text |
| ISSN | 1053-8569 1099-1557 1099-1557 |
| DOI | 10.1002/pds.5401 |
Cover
| Abstract | Purpose
Health plan claims may provide complete longitudinal data for timely, real‐world population‐level COVID‐19 assessment. However, these data often lack laboratory results, the standard for COVID‐19 diagnosis.
Methods
We assessed the validity of ICD‐10‐CM diagnosis codes for identifying patients hospitalized with COVID‐19 in U.S. claims databases, compared to linked laboratory results, among six Food and Drug Administration Sentinel System data partners (two large national insurers, four integrated delivery systems) from February 20–October 17, 2020. We identified patients hospitalized with COVID‐19 according to five ICD‐10‐CM diagnosis code‐based algorithms, which included combinations of codes U07.1, B97.29, general coronavirus codes, and diagnosis codes for severe symptoms. We calculated the positive predictive value (PPV) and sensitivity of each algorithm relative to laboratory test results. We stratified results by data source type and across three time periods: February 20–March 31 (Time A), April 1–30 (Time B), May 1–October 17 (Time C).
Results
The five algorithms identified between 34 806 and 47 293 patients across the study periods; 23% with known laboratory results contributed to PPV calculations. PPVs were high and similar across algorithms. PPV of U07.1 alone was stable around 93% for integrated delivery systems, but declined over time from 93% to 70% among national insurers. Overall PPV of U07.1 across all data partners was 94.1% (95% CI, 92.3%–95.5%) in Time A and 81.2% (95% CI, 80.1%–82.2%) in Time C. Sensitivity was consistent across algorithms and over time, at 94.9% (95% CI, 94.2%–95.5%).
Conclusion
Our results support the use of code U07.1 to identify hospitalized COVID‐19 patients in U.S. claims data. |
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| AbstractList | Health plan claims may provide complete longitudinal data for timely, real-world population-level COVID-19 assessment. However, these data often lack laboratory results, the standard for COVID-19 diagnosis.PURPOSEHealth plan claims may provide complete longitudinal data for timely, real-world population-level COVID-19 assessment. However, these data often lack laboratory results, the standard for COVID-19 diagnosis.We assessed the validity of ICD-10-CM diagnosis codes for identifying patients hospitalized with COVID-19 in U.S. claims databases, compared to linked laboratory results, among six Food and Drug Administration Sentinel System data partners (two large national insurers, four integrated delivery systems) from February 20-October 17, 2020. We identified patients hospitalized with COVID-19 according to five ICD-10-CM diagnosis code-based algorithms, which included combinations of codes U07.1, B97.29, general coronavirus codes, and diagnosis codes for severe symptoms. We calculated the positive predictive value (PPV) and sensitivity of each algorithm relative to laboratory test results. We stratified results by data source type and across three time periods: February 20-March 31 (Time A), April 1-30 (Time B), May 1-October 17 (Time C).METHODSWe assessed the validity of ICD-10-CM diagnosis codes for identifying patients hospitalized with COVID-19 in U.S. claims databases, compared to linked laboratory results, among six Food and Drug Administration Sentinel System data partners (two large national insurers, four integrated delivery systems) from February 20-October 17, 2020. We identified patients hospitalized with COVID-19 according to five ICD-10-CM diagnosis code-based algorithms, which included combinations of codes U07.1, B97.29, general coronavirus codes, and diagnosis codes for severe symptoms. We calculated the positive predictive value (PPV) and sensitivity of each algorithm relative to laboratory test results. We stratified results by data source type and across three time periods: February 20-March 31 (Time A), April 1-30 (Time B), May 1-October 17 (Time C).The five algorithms identified between 34 806 and 47 293 patients across the study periods; 23% with known laboratory results contributed to PPV calculations. PPVs were high and similar across algorithms. PPV of U07.1 alone was stable around 93% for integrated delivery systems, but declined over time from 93% to 70% among national insurers. Overall PPV of U07.1 across all data partners was 94.1% (95% CI, 92.3%-95.5%) in Time A and 81.2% (95% CI, 80.1%-82.2%) in Time C. Sensitivity was consistent across algorithms and over time, at 94.9% (95% CI, 94.2%-95.5%).RESULTSThe five algorithms identified between 34 806 and 47 293 patients across the study periods; 23% with known laboratory results contributed to PPV calculations. PPVs were high and similar across algorithms. PPV of U07.1 alone was stable around 93% for integrated delivery systems, but declined over time from 93% to 70% among national insurers. Overall PPV of U07.1 across all data partners was 94.1% (95% CI, 92.3%-95.5%) in Time A and 81.2% (95% CI, 80.1%-82.2%) in Time C. Sensitivity was consistent across algorithms and over time, at 94.9% (95% CI, 94.2%-95.5%).Our results support the use of code U07.1 to identify hospitalized COVID-19 patients in U.S. claims data.CONCLUSIONOur results support the use of code U07.1 to identify hospitalized COVID-19 patients in U.S. claims data. PurposeHealth plan claims may provide complete longitudinal data for timely, real‐world population‐level COVID‐19 assessment. However, these data often lack laboratory results, the standard for COVID‐19 diagnosis.MethodsWe assessed the validity of ICD‐10‐CM diagnosis codes for identifying patients hospitalized with COVID‐19 in U.S. claims databases, compared to linked laboratory results, among six Food and Drug Administration Sentinel System data partners (two large national insurers, four integrated delivery systems) from February 20–October 17, 2020. We identified patients hospitalized with COVID‐19 according to five ICD‐10‐CM diagnosis code‐based algorithms, which included combinations of codes U07.1, B97.29, general coronavirus codes, and diagnosis codes for severe symptoms. We calculated the positive predictive value (PPV) and sensitivity of each algorithm relative to laboratory test results. We stratified results by data source type and across three time periods: February 20–March 31 (Time A), April 1–30 (Time B), May 1–October 17 (Time C).ResultsThe five algorithms identified between 34 806 and 47 293 patients across the study periods; 23% with known laboratory results contributed to PPV calculations. PPVs were high and similar across algorithms. PPV of U07.1 alone was stable around 93% for integrated delivery systems, but declined over time from 93% to 70% among national insurers. Overall PPV of U07.1 across all data partners was 94.1% (95% CI, 92.3%–95.5%) in Time A and 81.2% (95% CI, 80.1%–82.2%) in Time C. Sensitivity was consistent across algorithms and over time, at 94.9% (95% CI, 94.2%–95.5%).ConclusionOur results support the use of code U07.1 to identify hospitalized COVID‐19 patients in U.S. claims data. Purpose Health plan claims may provide complete longitudinal data for timely, real‐world population‐level COVID‐19 assessment. However, these data often lack laboratory results, the standard for COVID‐19 diagnosis. Methods We assessed the validity of ICD‐10‐CM diagnosis codes for identifying patients hospitalized with COVID‐19 in U.S. claims databases, compared to linked laboratory results, among six Food and Drug Administration Sentinel System data partners (two large national insurers, four integrated delivery systems) from February 20–October 17, 2020. We identified patients hospitalized with COVID‐19 according to five ICD‐10‐CM diagnosis code‐based algorithms, which included combinations of codes U07.1, B97.29, general coronavirus codes, and diagnosis codes for severe symptoms. We calculated the positive predictive value (PPV) and sensitivity of each algorithm relative to laboratory test results. We stratified results by data source type and across three time periods: February 20–March 31 (Time A), April 1–30 (Time B), May 1–October 17 (Time C). Results The five algorithms identified between 34 806 and 47 293 patients across the study periods; 23% with known laboratory results contributed to PPV calculations. PPVs were high and similar across algorithms. PPV of U07.1 alone was stable around 93% for integrated delivery systems, but declined over time from 93% to 70% among national insurers. Overall PPV of U07.1 across all data partners was 94.1% (95% CI, 92.3%–95.5%) in Time A and 81.2% (95% CI, 80.1%–82.2%) in Time C. Sensitivity was consistent across algorithms and over time, at 94.9% (95% CI, 94.2%–95.5%). Conclusion Our results support the use of code U07.1 to identify hospitalized COVID‐19 patients in U.S. claims data. Health plan claims may provide complete longitudinal data for timely, real-world population-level COVID-19 assessment. However, these data often lack laboratory results, the standard for COVID-19 diagnosis. We assessed the validity of ICD-10-CM diagnosis codes for identifying patients hospitalized with COVID-19 in U.S. claims databases, compared to linked laboratory results, among six Food and Drug Administration Sentinel System data partners (two large national insurers, four integrated delivery systems) from February 20-October 17, 2020. We identified patients hospitalized with COVID-19 according to five ICD-10-CM diagnosis code-based algorithms, which included combinations of codes U07.1, B97.29, general coronavirus codes, and diagnosis codes for severe symptoms. We calculated the positive predictive value (PPV) and sensitivity of each algorithm relative to laboratory test results. We stratified results by data source type and across three time periods: February 20-March 31 (Time A), April 1-30 (Time B), May 1-October 17 (Time C). The five algorithms identified between 34 806 and 47 293 patients across the study periods; 23% with known laboratory results contributed to PPV calculations. PPVs were high and similar across algorithms. PPV of U07.1 alone was stable around 93% for integrated delivery systems, but declined over time from 93% to 70% among national insurers. Overall PPV of U07.1 across all data partners was 94.1% (95% CI, 92.3%-95.5%) in Time A and 81.2% (95% CI, 80.1%-82.2%) in Time C. Sensitivity was consistent across algorithms and over time, at 94.9% (95% CI, 94.2%-95.5%). Our results support the use of code U07.1 to identify hospitalized COVID-19 patients in U.S. claims data. |
| Author | Billings, Monisha Toh, Sengwee Haynes, Kevin Hou, Laura Watson, Eric S. Pawloski, Pamala A. Dublin, Sascha Cocoros, Noelle M. Kline, Annemarie Kluberg, Sheryl A. Dutcher, Sarah K. Kit, Brian Maiyani, Mahesh |
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Health plan claims may provide complete longitudinal data for timely, real‐world population‐level COVID‐19 assessment. However, these data often lack... Health plan claims may provide complete longitudinal data for timely, real-world population-level COVID-19 assessment. However, these data often lack... PurposeHealth plan claims may provide complete longitudinal data for timely, real‐world population‐level COVID‐19 assessment. However, these data often lack... |
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| SubjectTerms | Algorithms Codes Coronaviruses COVID-19 COVID-19 - diagnosis COVID-19 - epidemiology COVID-19 Testing Databases, Factual Delivery of Health Care Diagnosis Health care Hospitalization Humans ICD‐10‐CM Integrated delivery systems International Classification of Diseases Laboratories medical claims Patients SARS-CoV-2 validation |
| Title | Validation of diagnosis codes to identify hospitalized COVID‐19 patients in health care claims data |
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