| Literature DB >> 35633659 |
Carolyn A Brown1, Ajit A Londhe1, Fang He1, Alvan Cheng1, Junjie Ma1, Jie Zhang1, Corinne G Brooks1, J Michael Sprafka1,2, Kimberly A Roehl1, Katherine B Carlson1,3, John H Page1.
Abstract
Introduction: In order to identify and evaluate candidate algorithms to detect COVID-19 cases in an electronic health record (EHR) database, this study examined and compared the utilization of acute respiratory disease codes from February to August 2020 versus the corresponding time period in the 3 years preceding.Entities:
Keywords: COVID-19; SARS-CoV-2; epidemiology; validation; verification bias
Year: 2022 PMID: 35633659 PMCID: PMC9139367 DOI: 10.2147/CLEP.S355086
Source DB: PubMed Journal: Clin Epidemiol ISSN: 1179-1349 Impact factor: 5.814
Description of Algorithms for COVID-19 Assessed
| ICD-10-CM Code | ICD-10-CM Definition | |
|---|---|---|
| U07.1 | COVID-19 | |
| J12.81 | Pneumonia due to SARS-associated coronavirus | |
| J12.89 | Other viral pneumonia | |
| J20.8 | Acute bronchitis due to other specified organisms | |
| J22 | Unspecified acute lower respiratory infection | |
| J40 | Bronchitis, not specified as acute or chronic | |
| J80 | Acute respiratory distress syndrome | |
| J98.8 | Other specified respiratory disorders | |
| B34.2 | Coronavirus infection, unspecified | |
| B97.29 | Other coronavirus as the cause of diseases classified elsewhere | |
| Algorithm 1* | COVID-19 Diagnosis | U07.1 (first created February 20, 2020) |
| Algorithm 2* | SARS-associated pneumonia | J12.81 |
| Algorithm 3* | Any coronavirus | U07.1 or B97.29 or B34.2 |
| Algorithm 4 | COVID-19 and pre-May coronavirus | U07.1 and (B97.29 |
| Algorithm 5* | Any coronavirus plus respiratory condition | (U07.1 or B97.29 or B34.2) and (J12.89 or J20.8 or J22 or J40 or J80 or J98.8) during the same encounter |
| Algorithm 6 | ARDS or other viral pneumonia | J80 or J12.89 |
| Algorithm 7 | COVID-19 or pre-May any coronavirus plus respiratory condition or SARS-associated pneumonia | U07.1 anytime or (J12.81 or [(B97.29 or B34.2) and (J12.89 or J20.8 or J22 or J40 or J80 or J98.8)] between Feb 1 and Apr 30) |
| Algorithm 8 | COVID-19 or pre-May SARS-associated pneumonia or pre-May any coronavirus | U07.1 anytime or (J12.81 or B97.29 or B34.2 between Feb 1 and Apr 30) |
| Algorithm 9 | COVID-19 or pre-May ARDS, viral/SARS-associated pneumonia, or any coronavirus | U07.1 anytime or (J80 or J12.81 or J12.89 or B97.29 or B34.2 between Feb 1 and Apr 30) |
| Algorithm 10* | COVID-19, ARDS, or viral/SARS-associated pneumonia, or pre-May any coronavirus | U07.1 anytime or (J80 or J12.81 or J12.89 anytime) or (B97.29 or B34.2 between Feb 1 and Apr 30) |
| Algorithm 11* | ARDS or viral/SARS-associated pneumonia | J80 or J12.81 or J12.89 |
Notes: *Indicates Algorithm is described in main text of manuscript; all other Algorithms are described in the .
Abbreviations: SARS, severe acute respiratory syndrome; ARDS, acute respiratory distress syndrome.
Descriptive Characteristics of Cohort
| Before April 2020 | On or After April 1, 2020 | |||
|---|---|---|---|---|
| Inpatients, n=5646 | Outpatients, n=5119 | Inpatients, n=26,158 | Outpatients, n=97,012 | |
| Age at index (median, 10th–90th percentile) | 60 (32–79) | 49 (23–72) | 60 (31–80) | 46 (21–71) |
| Female N, (%) | 2443 (43.3) | 2840 (55.5) | 12,713 (48.6) | 56,741 (58.5) |
| East North Central | 1575 (27.9) | 1230 (24.0) | 6444 (24.6) | 24,739 (25.5) |
| East South Central | 164 (2.9) | 51 (1.0) | 2168 (8.3) | 2464 (2.5) |
| Middle Atlantic | 2288 (40.5) | 1699 (33.2) | 6597 (25.2) | 20,653 (21.3) |
| Mountain | 3 (0.1) | 489 (9.6) | 23 (0.1) | 4448 (4.6) |
| New England | 272 (4.8) | 416 (8.1) | 1738 (6.6) | 7422 (7.7) |
| Pacific | 244 (4.3) | 195 (3.8) | 1002 (3.8) | 3845 (4.0) |
| South Atlantic/West South Central | 432 (7.7) | 444 (8.7) | 4507 (17.2) | 14,490 (14.9) |
| West North Central | 530 (9.4) | 444 (8.7) | 2891 (11.1) | 15,539 (16.0) |
| Other/Unknown | 138 (2.4) | 151 (2.9) | 788 (3.0) | 3412 (3.5) |
| Obese | 2921 (51.7) | 2281 (44.6) | 13,647 (52.2) | 43,036 (44.4) |
| Diabetes | 2124 (37.6) | 914 (17.9) | 10,042 (38.4) | 14,859 (15.3) |
| COPD | 1050 (18.6) | 455 (8.9) | 4189 (16.0) | 4743 (4.9) |
| Heart failure | 1041 (18.4) | 362 (7.1) | 4394 (16.8) | 3381 (3.5) |
| Sickle cell disease | 21 (0.4) | 5 (0.1) | 63 (0.2) | 58 (0.1) |
| On chemotherapy | 139 (2.5) | 67 (1.3) | 430 (1.6) | 810 (0.8) |
| Received viral RNA test result | 4070 (72.1) | 2486 (48.6) | 22,873 (87.4) | 59,141 (61.0) |
| Positive viral RNA test* | 3540 (62.7) | 1992 (38.9) | 18,626 (71.2) | 43,076 (44.4) |
| Received antigen test result | 36 (0.6) | 84 (1.6) | 172 (0.7) | 1166 (1.2) |
| Positive antigen test** | 3 (8.3) | 4 (4.8) | 22 (12.8) | 206 (17.7) |
| Algorithm 1 | 3087 (54.7) | 1590 (31.1) | 24,610 (94.1) | 94,935 (97.9) |
| Algorithm 2 | 169 (3.0) | 32 (0.6) | 501 (1.9) | 228 (0.2) |
| Algorithm 3 | 4538 (80.4) | 4380 (85.6) | 24,698 (94.4) | 95,930 (98.9) |
| Algorithm 4 | 4536 (80.3) | 4376 (85.5) | 24,664 (94.3) | 95,462 (98.4) |
| Algorithm 5 | 3903 (69.1) | 2691 (52.6) | 17,111 (65.4) | 17,300 (17.8) |
| Algorithm 6 | 4487 (79.5) | 1323 (25.8) | 17,547 (67.1) | 8631 (8.9) |
| Algorithm 7 | 4098 (72.6) | 3081 (60.2) | 24,642 (94.2) | 94,991 (97.9) |
| Algorithm 8 | 4541 (80.4) | 4384 (85.6) | 24,670 (94.3) | 95,470 (98.4) |
| Algorithm 9 | 5483 (97.1) | 4926 (96.2) | 25,031 (95.7) | 95,788 (98.7) |
| Algorithm 10 | 5646 (100.0) | 5119 (100.0) | 26,129 (99.9) | 96,560 (99.5) |
| Algorithm 11 | 4674 (82.8) | 1525 (29.8) | 17,613 (67.3) | 8702 (9.0) |
Notes: * Proportion of those testing positive among those who received a viral RNA test result; **Proportion of those testing positive among those who received an antigen test result.
Figure 1Time series of COVID-19 related diagnosis codes in 2020.
Figure 2COVID-19-related codes in Optum COVID EHR in 2020 and Optum PanTher EHR 2017–2019.
Figure 3Adjusted performance of selected algorithms to detect COVID-19.