Development of algorithms to determine the onset of pregnancy and delivery date using health care administrative data in a university hospital in Japan
Purpose To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan. Methods All women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the peri...
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| Published in | Pharmacoepidemiology and drug safety Vol. 27; no. 7; pp. 751 - 762 |
|---|---|
| Main Authors | , , , , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
England
Wiley Subscription Services, Inc
01.07.2018
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| Subjects | |
| Online Access | Get full text |
| ISSN | 1053-8569 1099-1557 1099-1557 |
| DOI | 10.1002/pds.4444 |
Cover
| Abstract | Purpose
To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan.
Methods
All women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the period of January 2014 and December 2015 were included in this study. The true delivery date was obtained from the electronic medical records and was used as a gold standard. The onset of pregnancy was calculated by subtracting the gestational age at birth from the delivery date based on the electronic medical records and was also used as a gold standard. The administrative data‐based algorithms to identify (1) the onset of pregnancy estimated from the gestational age recorded as part of a diagnosis during a specific visit and (2) the delivery date estimated using the delivery‐related diagnosis, procedure, or prescription were compared with the gold‐standard data.
Results
Of the 1705 women included in this study, the onset of pregnancy was determined in 1704 subjects with 1582 (92.8%) within ± 7 days from the gold‐standard date of pregnancy onset. The delivery date was determined in 1654 subjects, and 1594 (96.4%) were within ± 7 days before the true delivery date using the algorithm of “selected” diagnosis and a surgical procedure followed by some other delivery‐related data.
Conclusions
The algorithms developed in this study are expected to accelerate future studies for real‐world exposure and quantify drug safety during pregnancy using Japanese health care administrative databases. |
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| AbstractList | PurposeTo develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan.MethodsAll women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the period of January 2014 and December 2015 were included in this study. The true delivery date was obtained from the electronic medical records and was used as a gold standard. The onset of pregnancy was calculated by subtracting the gestational age at birth from the delivery date based on the electronic medical records and was also used as a gold standard. The administrative data‐based algorithms to identify (1) the onset of pregnancy estimated from the gestational age recorded as part of a diagnosis during a specific visit and (2) the delivery date estimated using the delivery‐related diagnosis, procedure, or prescription were compared with the gold‐standard data.ResultsOf the 1705 women included in this study, the onset of pregnancy was determined in 1704 subjects with 1582 (92.8%) within ± 7 days from the gold‐standard date of pregnancy onset. The delivery date was determined in 1654 subjects, and 1594 (96.4%) were within ± 7 days before the true delivery date using the algorithm of “selected” diagnosis and a surgical procedure followed by some other delivery‐related data.ConclusionsThe algorithms developed in this study are expected to accelerate future studies for real‐world exposure and quantify drug safety during pregnancy using Japanese health care administrative databases. Purpose To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan. Methods All women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the period of January 2014 and December 2015 were included in this study. The true delivery date was obtained from the electronic medical records and was used as a gold standard. The onset of pregnancy was calculated by subtracting the gestational age at birth from the delivery date based on the electronic medical records and was also used as a gold standard. The administrative data‐based algorithms to identify (1) the onset of pregnancy estimated from the gestational age recorded as part of a diagnosis during a specific visit and (2) the delivery date estimated using the delivery‐related diagnosis, procedure, or prescription were compared with the gold‐standard data. Results Of the 1705 women included in this study, the onset of pregnancy was determined in 1704 subjects with 1582 (92.8%) within ± 7 days from the gold‐standard date of pregnancy onset. The delivery date was determined in 1654 subjects, and 1594 (96.4%) were within ± 7 days before the true delivery date using the algorithm of “selected” diagnosis and a surgical procedure followed by some other delivery‐related data. Conclusions The algorithms developed in this study are expected to accelerate future studies for real‐world exposure and quantify drug safety during pregnancy using Japanese health care administrative databases. To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan.PURPOSETo develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan.All women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the period of January 2014 and December 2015 were included in this study. The true delivery date was obtained from the electronic medical records and was used as a gold standard. The onset of pregnancy was calculated by subtracting the gestational age at birth from the delivery date based on the electronic medical records and was also used as a gold standard. The administrative data-based algorithms to identify (1) the onset of pregnancy estimated from the gestational age recorded as part of a diagnosis during a specific visit and (2) the delivery date estimated using the delivery-related diagnosis, procedure, or prescription were compared with the gold-standard data.METHODSAll women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the period of January 2014 and December 2015 were included in this study. The true delivery date was obtained from the electronic medical records and was used as a gold standard. The onset of pregnancy was calculated by subtracting the gestational age at birth from the delivery date based on the electronic medical records and was also used as a gold standard. The administrative data-based algorithms to identify (1) the onset of pregnancy estimated from the gestational age recorded as part of a diagnosis during a specific visit and (2) the delivery date estimated using the delivery-related diagnosis, procedure, or prescription were compared with the gold-standard data.Of the 1705 women included in this study, the onset of pregnancy was determined in 1704 subjects with 1582 (92.8%) within ± 7 days from the gold-standard date of pregnancy onset. The delivery date was determined in 1654 subjects, and 1594 (96.4%) were within ± 7 days before the true delivery date using the algorithm of "selected" diagnosis and a surgical procedure followed by some other delivery-related data.RESULTSOf the 1705 women included in this study, the onset of pregnancy was determined in 1704 subjects with 1582 (92.8%) within ± 7 days from the gold-standard date of pregnancy onset. The delivery date was determined in 1654 subjects, and 1594 (96.4%) were within ± 7 days before the true delivery date using the algorithm of "selected" diagnosis and a surgical procedure followed by some other delivery-related data.The algorithms developed in this study are expected to accelerate future studies for real-world exposure and quantify drug safety during pregnancy using Japanese health care administrative databases.CONCLUSIONSThe algorithms developed in this study are expected to accelerate future studies for real-world exposure and quantify drug safety during pregnancy using Japanese health care administrative databases. To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan. All women who were hospitalized in the maternity ward and had at least one pregnancy that ended with a delivery during the period of January 2014 and December 2015 were included in this study. The true delivery date was obtained from the electronic medical records and was used as a gold standard. The onset of pregnancy was calculated by subtracting the gestational age at birth from the delivery date based on the electronic medical records and was also used as a gold standard. The administrative data-based algorithms to identify (1) the onset of pregnancy estimated from the gestational age recorded as part of a diagnosis during a specific visit and (2) the delivery date estimated using the delivery-related diagnosis, procedure, or prescription were compared with the gold-standard data. Of the 1705 women included in this study, the onset of pregnancy was determined in 1704 subjects with 1582 (92.8%) within ± 7 days from the gold-standard date of pregnancy onset. The delivery date was determined in 1654 subjects, and 1594 (96.4%) were within ± 7 days before the true delivery date using the algorithm of "selected" diagnosis and a surgical procedure followed by some other delivery-related data. The algorithms developed in this study are expected to accelerate future studies for real-world exposure and quantify drug safety during pregnancy using Japanese health care administrative databases. |
| Author | Miyakoda, Keiko Saito, Masatoshi Nishigori, Hidekazu Inoue, Ryusuke Hoshiai, Tetsuro Obara, Taku Ishikawa, Tomofumi Mano, Nariyasu Yaegashi, Nobuo |
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| CitedBy_id | crossref_primary_10_1016_j_preghy_2023_01_001 crossref_primary_10_1248_yakushi_20_00184 crossref_primary_10_2147_CLEP_S429246 crossref_primary_10_3389_fphar_2023_1107494 crossref_primary_10_1002_pds_5370 crossref_primary_10_3390_ijerph19084864 crossref_primary_10_1002_bdr2_1748 crossref_primary_10_1097_HTR_0000000000000723 crossref_primary_10_1111_acps_13755 crossref_primary_10_1111_jgh_16549 crossref_primary_10_1016_j_jad_2020_01_016 crossref_primary_10_3390_pharma2010002 crossref_primary_10_1002_pds_5244 crossref_primary_10_3233_NPM_230138 crossref_primary_10_1002_pds_4654 crossref_primary_10_1016_j_jad_2025_01_044 crossref_primary_10_1080_03007995_2022_2101817 crossref_primary_10_1002_pds_4749 crossref_primary_10_3389_fnut_2021_762895 |
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To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in... To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in Japan.... PurposeTo develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in... To develop and assess algorithms to determine the onset of pregnancy and delivery date using health administrative data from a university hospital in... |
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| SubjectTerms | administrative data Algorithms beginning of pregnancy Diagnosis Electronic health records Electronic medical records Gestational age Medical records obstetric delivery pharmacoepidemiology Pharmacovigilance Pregnancy |
| Title | Development of algorithms to determine the onset of pregnancy and delivery date using health care administrative data in a university hospital in Japan |
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