Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Epidemiology of congenital heart defects in France from 2013 to 2022 using the PMSI-MCO (French Medical Information System Program in Medicine, Surgery, and Obstetrics) database

  • Gurvan Bourdon ,

    Roles Conceptualization, Methodology, Validation, Visualization, Writing – original draft, Writing – review & editing

    gurvan.bourdon@chu-lille.fr

    Affiliation Maternity Unit, Department of Gynecology and Obstetrics, Lille University Hospital, Lille, France

  • Xavier Lenne,

    Roles Data curation, Formal analysis, Methodology, Writing – review & editing

    Affiliation Department of Medical Information, Lille University Hospital, Lille, France

  • François Godart,

    Roles Visualization, Writing – review & editing

    Affiliation Cardiology Unit, Department of Pediatrics, Lille University Hospital, Lille, France

  • Laurent Storme,

    Roles Conceptualization, Writing – review & editing

    Affiliation Department of Neonatology, Lille University Hospital, Lille, France

  • Didier Theis,

    Roles Project administration, Supervision, Writing – review & editing

    Affiliation Department of Medical Information, Lille University Hospital, Lille, France

  • Damien Subtil,

    Roles Methodology, Visualization, Writing – review & editing

    Affiliation Department of Gynecology and Obstetrics, Lille University Hospital, Lille, France

  • Amelie Bruandet,

    Roles Conceptualization, Data curation, Methodology, Validation, Visualization, Writing – review & editing

    Affiliation Department of Medical Information, Lille University Hospital, Lille, France

  • Thameur Rakza

    Roles Conceptualization, Supervision, Visualization, Writing – review & editing

    Affiliation Maternity Unit, Department of Gynecology and Obstetrics, Lille University Hospital, Lille, France

Abstract

Background

Congenital heart defects are common and occur in approximately 0.9% of births. In France, the registries cover approximately 20% of the population but not the entirety of France; therefore, we aimed to update the incidence data for congenital heart defects in France from 2013 to 2022 using the medico-administrative database PMSI-MCO (French Medical Information System Program in Medicine, Surgery, and Obstetrics). We aimed to compare the frequency of risk factors in a population with congenital heart defects and a reference population.

Methods

From 2013 to 2022, we included children aged < 3 years diagnosed with congenital heart defects according to the International Classification of Diseases, 10th Revision, in the PMSI-MCO database. We compared them with a population without congenital defects on several medical data items (e.g., parity, gemellarity, and mortality rate). Bivariate and multivariate analyses compared children with congenital heart defects and children without congenital malformation.

Results

We identified 83,879 children with congenital heart defects in France from 2013 to 2022 in the PMSI-MCO database and 7,739,840 children without such defects, including 7,218,952 without any congenital defects. We observed more deaths (7.49% vs. 0.68%, d = 0.59) and more twinning (8.67% vs. 1.23%, d = 0.35) among children with congenital heart defects. Multivariate analysis revealed an increased risk of congenital heart defects in male individuals (OR [odds ratio] 1.056, 95% CI [confidence interval] [1.039–1.076]) and cases of medically assisted reproduction (OR 1.115, 95% CI [1.045–1.189]) and a reduced risk in the case of multiparity (OR 0.921, 95% CI [0.905–0.938]).

Conclusions

According to the PMSI-MCO database, the incidence of congenital heart defects in France from 2013 to 2022 is 1% of births. Congenital heart defects are more frequent in cases of prematurity, twinning, primiparity, male sex, and maternal age > 40 years.

Introduction

Congenital defects are common, with an estimated incidence of 25 per 1,000 births, including 30% heart defects according to the European Surveillance of Congenital Anomalies (EUROCAT) database [13]. The incidence of congenital heart defects (CHDs) is increasing, partly because they are better diagnosed, especially since the advent of ultrasonography, and better managed, reducing perinatal deaths and pregnancy termination [48]. The overall incidence varies slightly from one region of the world to another but varies according to the CHD considered [4, 912]. The life expectancy of patients with CHD is increasing, and its prevalence in adulthood is 4 per 1,000 [13, 14]. This trend calls for regular epidemiological monitoring to adapt healthcare policies.

In France, published epidemiological data are from registers [1517]. French registries are included in the EUROCAT database [3]. However, these registries are imperfect. An analysis of the systems for monitoring congenital defects was published by the French National Authority for Health (Haute Autorité de Santé [HAS]), which reviewed the strengths and weaknesses of registers [18]. Registries have a good quality of diagnosis but lack completeness in terms of territorial coverage (approximately 20% of France) and do not pool their data. They do not have the same inclusion criteria; for example, one may use the International Statistical Classification of Diseases and Related Health Problems– 10th Revision (ICD-10), whereas another uses a limited list of CHDs [17, 1921]. In addition, no data are available for some years. Proposals have been made to improve these but this will require time, especially in terms of structuring, harmonizing, and pooling.

There are other databases in France, such as the French Public and Private Hospital Databases with the French Medical Information System Program (Programme de Médicalisation des Systèmes d’Information [PMSI]). It is a large national data-base that has shown reliability in numerous epidemiological studies [2226]. It is used when patients are admitted or hospitalized by coding according to the World Health Organization (WHO) rules and, since 1996, the ICD-10 [20, 21, 27, 28]. The PMSI database collects patients’ main and associated diagnoses according to the ICD-10 and sociodemographic data, such as age, sex, and weight. The ICD-10 includes CHD diagnoses and their known risk factors, such as maternal diabetes and trisomy 21 [29, 30]. All information is anonymized using a unique identifier; this avoids duplicates and identifies multiple stays of the same patient, without the possibility of lifting anonymity. For newborns, the PMSI coding is systematic if they are born in a hospital or hospitalized after home delivery. Since 2012, mother-child data have been linked to the PMSI [31].

Our aim was to update French epidemiological data on CHD from 2013 to 2022 using the PMSI database. We also aimed to compare the frequency of the risk factors for CHD in children with CHD and a reference population.

Materials and methods

Our study followed the French reference methodology MR-005, which regulates access to the PMSI database in accordance with current French Data Protection Authority regulations (Commission Nationale de l’Informatique et des Libertés [CNIL]) [32]. The access to the PMSI database was made available by the French National Agency for the Management of hospitalization data [28]. This was a retrospective, longitudinal, non-interventional study based on an anonymous database. The study did not require patient consent and was registered under CNIL’s registration number 2205141.

Study population and data sources

The inclusion criteria were child < 3 years of age, included in the database between 2013 and 2022 in France, and a diagnosis of CHD according to the ICD-10 (codes Q20 to Q26) [21]. Fetal deaths in utero and pregnancy terminations were also included in the study. The exclusion criteria were as follows: patients residing outside France or with an unspecified place of residence, incorrect French diagnosis-related groups, and incorrect patient identifiers. The reference population consisted of children aged < 3 years between 2013 and 2022 with no diagnosis of congenital defects (absence of any ICD-10 Q code).

PMSI-MCO (médecine-chirurgie-obstétrique [Medicine, Surgery, and Obstetrics]) data were collected between 2013 and 2022. Data from the French Overseas Departments or Regions and Overseas Collectivities (DROM-COM [Départements ou Régions français d’Outre-Mer et les Collectivités d’Outre-Mer]) were analyzed separately. Linking was performed with PMSI-HAD (hospitalisation à domicile [home hospitalization]) and mother-child data to increase data reliability.

The CHD diagnoses for ICD-10 codes Q20.0 to Q26.9 were collected, both separately as a single CHD diagnosis and in association with multiple CHD diagnoses. We collected the frequencies of different CHDs.

Medical, social, and demographic data were collected from the patients with CHDs and the reference population. The variables of interest were age at the time of diagnosis, sex, gestational age, birth weight, term of birth, mother’s age at birth, parity, route of birth and extraction, whether the child underwent medically assisted reproduction (MAR), death, and age at death.

The data from the ICD-10 codes investigated were: palliative care decision (Z51.5), chromosomal abnormalities (Q90 to Q99), fetus and newborn affected by maternal factors and complications of pregnancy, labor, and delivery (P00 to P04), disorders related to length of gestation and fetal growth (P05 to P08), maternal gestational diabetes (P70.0), maternal diabetes (P70.1), and neonatal withdrawal symptoms from maternal use of drugs of addiction (P96.1). We retained the diagnosis of transposition of the great arteries (TGA) or common arterial trunk in cases of an associated diagnosis of tetralogy of Fallot (ToF) to eliminate some border pathologies.

Statistical analysis

Categorical variables were presented as absolute numbers and percentages. Continuous variables were presented in classes: ≤ 1 month and 1–36 months for the age of diagnosis; ≤ 30 days, 31–365 days, and > 365 days for the days of life; < 24 weeks, 24–36 weeks, and > 36 weeks for the term of birth; < 500 g, 500–1999 g, 2000–3999 g, and ≥ 4000 g for the birth weight; and ≤ 18 years, 18–30 years, 31–39 years, and ≥ 40 years for the maternal age. The chi-square test was used to compare categorical variables. Because the magnitude of statistical significance is heavily influenced by sample size, comparisons between the two groups were also expressed in terms of the standardized difference score (d, as an absolute number) to provide a more robust and reliable estimation of group divergence [33]. Cohen suggested that d = 0.2, 0.5, and 0.8 represents a small, medium, and large effect size, respectively [34]. Risk factors for CHDs were determined based on their clinical relevance and existing data in the literature using logistic regression. Multiple births were included; therefore, the mothers were included more than once in these situations. A random effects term was introduced to account for these situations. The analyses were performed using the secure platform of the Agence Technique de l’Information Hospitalière. Data extraction and statistical analyses were performed using SAS Guide Enterprise version 8.2. Standardized difference scores were calculated using a specific SAS macro [35].

Results

Population

From 2013 to 2022, 88,759 children met the inclusion criteria (83,879 in mainland France and 4,880 in French overseas departments and territories) after excluding erroneous stays and dubious anonymous numbers.

The population without CHD included 8,078,838 children (7,739,840 from metropolitan France and 338,998 from DROM-COM). The reference comparison population without congenital malformations according to ICD-10 codes comprised 7,535,862 children (7,218,952 from mainland France and 316,910 from DROM-COM).

Epidemiology of CHDs

The incidence of CHDs was 10.7 per 1,000 births in mainland France and 14.2 per 1,000 births in French overseas departments and territories.

The incidence of CHDs for each ICD-10 code in mainland France is shown in Table 1 (incidence of CHDs in DROM-COM in the S1 Table). In cases of association, each code was counted individually; therefore, certain categories of CHDs exceeded 100%. For example, cardiac septal defects accounted for 111.38% of multiple diagnoses, as the codes for ventricular septal defects (VSDs) and atrial septal defects (ASDs) were counted separately, although some children could have had both.

thumbnail
Table 1. Incidence of congenital heart defects in metropolitan France from 2013 to 2022 in the PMSI-MCO (French Medical Information System Program in Medicine, Surgery and Obstetrics) database according to the ICD-10 (International Statistical Classification of Diseases– 10th Revision).

https://doi.org/10.1371/journal.pone.0298234.t001

Table 2 shows the frequencies of certain associations in mainland France. The most frequent associations were between VSD and ASD (6.05% of CHD diagnoses), Coarctation of aorta (CoA) and VSD (1.73%), and TGA and VSD (1.46%).

thumbnail
Table 2. Associations between congenital heart defect diagnoses in metropolitan France from 2013 to 2022 in the PMSI-MCO (French Medical Information System Program in Medicine, Surgery and Obstetrics) database.

https://doi.org/10.1371/journal.pone.0298234.t002

Comparison of CHD

Table 3 compares children in metropolitan France with CHDs and those without congenital defects (data from the DROM-COM in the S2 Table). A strong relationship of CHD with prematurity (d = 0.86), maternal arterial hypertension (d = 0.26), and twinning (d = 0.35) was observed. Death occurred more frequently among patients with CHD (d = 0.59). Sex and maternal age did not differ between children with CHD and children without congenital malformations in the univariate analysis (d = 0.01 and d = 0.15, respectively).

thumbnail
Table 3. Frequency of perinatal data between children with congenital heart defects and children without congenital malformation in metropolitan France from 2013 to 2022.

https://doi.org/10.1371/journal.pone.0298234.t003

N: number; P00.0: Fetus and newborn affected by maternal hypertensive disorders; P01.5: Fetus and newborn affected by multiple pregnancy; P05.0: Light for gestational age; P70.0: Syndrome of infant of mother with gestational diabetes; P70.1: Syndrome of infant of a mother with diabetes; P96.1: Neonatal withdrawal symptoms from maternal use of drugs of addiction; d: standardized differences score.

In the multivariate analysis, maternal age > 40 years was a risk factor for CHD (OR 1.310, p < 0.001) (Fig 1 for metropolitan France; data in S1 Fig for DROM-COM). Similarly, male sex and pregnancy resulting from MAR were associated with an increased risk of CHD (OR, 1.057 and 1.115, respectively; p < 0.001), whereas multiparity had a protective effect against CHD (OR 0.921, p < 0.001).

thumbnail
Fig 1. Results of multivariate analysis in metropolitan France.

Children with congenital heart defects are compared with the reference population from 2013 to 2022. OR: odds ratio; CI: confidence interval.

https://doi.org/10.1371/journal.pone.0298234.g001

Discussion

Interpretation of results

To our knowledge, this is the first study to calculate the incidence of CHDs in France using the PMSI database. Its aim was not to replace the registries but to study the CHD diagnoses in France using another reference system to increase its completeness.

Studies suggest that the PMSI database is an appropriate data source for epidemiological studies [2226]. Our methodology using the PMSI database seems correct because we found the same incidences as those reported in the literature [2, 4, 16, 17]. Therefore, a comparison between populations with CHD and those without congenital malformations is legitimate. We excluded children with other congenital malformations from the reference population to avoid confounding factors between the data studied. It is important to note that the number of children varied according to the secondary criteria studied, because information was not always available.

The PMSI database provided an exhaustive list of CHD diagnoses in France, as coding is compulsory and is carried out at the time of diagnosis. This would not have been possible with registries [18]. The population studied was large, increasing the relevance of the comparison between the CHD and unaffected populations on numerous criteria, which the PMSI database also makes possible.

However, unlike registries, what we gained in exhaustiveness may be lost in diagnostic precision. ICD-10 codes are not very precise (e.g., Q24.9 is "congenital malformation of the heart, unspecified"). The PMSI database is also at risk of coding errors when not carried out by specialists or by poorly trained healthcare professionals, albeit improving [25, 28, 36]. ICD-10 coding is compulsory; however, some ICD-10 codes have no impact on the cost of hospital stays and thus may not be coded. We included children under 3 years of age to limit incomplete data. The PMSI database does not allow searching for more than 10 years back in time, therefore if we had included older children or even adults, recovering the data would not have been possible. This should not have decreased our exhaustiveness because CHDs are diagnosed early in a child’s life and even more so if they are severe [4]. We chose the place of diagnosis and not the place of birth or residence to establish a CHD diagnosis in France. This choice appeared to have the lowest risk of child misallocation. We were unable to distinguish between prenatal and postnatal CHD diagnoses.

DROM-COM is separate from the metropolitan population because the populations are different and access to diagnostic and care facilities is sometimes more difficult [37]. Overall, we found the same differences between the populations and similar risk factors as those observed in the mainland population.

Comparisons with the literature

The incidences found in this study were fairly identical to those reported in the literature for each type of CHD, particularly TGA, ToF, and CoA [2, 4]. However, we have observed more cases of patent ductus arteriosus. This difference could be due to the title of the coding; ductus arteriosus is coded as soon as it is present, particularly in premature babies, where it is extremely common without always impacting the child [5, 38]. However, if all diagnoses of patent ductus arteriosus were excluded (i.e., exclusion in excess), the incidence of CHD would be 8.5%, remaining fairly identical to other studies [35].

This partly explains why premature birth and low birth weight, which may be associated with CHD, emerged as risk factors for CHD. However, prematurity appears to be a risk factor for CHD independent of ductus arteriosus. Chu et al. showed an overall increase in the incidence of CHD in children born prematurely between 25 and 32 weeks of gestation, with a high percentage of severe malformations, excluding children with a persistent ductus arteriosus [39].

Much of our data are consistent with what has been described previously. CHDs are a major cause of early death in children [1]. Most diagnoses are made before 1 month of life, including antenatal diagnoses [17]. There were more caesarean sections in cases of CHD, with no differences depending on the type of CHD [40, 41]. MAR is associated with a higher risk of CHD [42]. In twins, there was an increased risk of CHD [43].

Some discrepancies between our data and those published in literatures contribute to the discussion of the inconsistency of the literature. In our study, maternal age > 40 years was a risk factor in multivariate analysis, whereas maternal age > 35 years was sometimes described as a risk factor but not always [11, 29, 44, 45]. Similarly, male individuals were slightly more at risk of CHD in our study, which is consistent with the results of some studies but not others [11, 4547].

Some of the associations described were either absent or weak. We observed fewer chromosomal abnormalities in children with CHD; however, they remained more numerous than those in the general population [48, 49]. One explanation could be the choice of using ICD-10 codes Q90 to Q99, which does not include all chromosomal and genetic abnormalities but is the easiest to research. This deviation could also be due to the lack of precision in the ICD-10 codes. Similarly, maternal diabetes did not appear to be a risk factor for CHD in our study; however, we only studied diabetes declared during pregnancy, unlike other authors [50].

According to our results, there were no excess mortality in cases of TGA, ToF, or CoA when these were considered serious CHDs, contrary to what has been previously described [5153]. This may be explained by improved diagnosis and management of these diseases, which have become standardized.

Contrary to our study, in which multiparity appeared to be protective, Feng et al. showed in their meta-analysis an increased risk of CHD in repeated pregnancies. However, their results were affected by the inclusion of heterogeneous studies and showed an absence of statistical difference when directly comparing primiparous and multiparous women [54].

Improved data collection

The accuracy of the PMSI database could be improved using the ICD– 11th Revision published in 2018 by the WHO, which codes CHDs using a simplified version of the International Pediatric and Congenital Cardiac Code [55, 56]. However, this precise CHD classification has not yet been applied in France.

It seems worthwhile to use the data from the PMSI to feed the registers. Despite these limitations, registers remain a valid solution that avoids most coding accuracy problems [18]. The database already exists and is classified into most registries. In a French study led by the HAS on registers, it was suggested that existing registers should work together more closely to populate a common database rather than setting up a single register (which would incur more cost and human resources and would lack proximity).

Conclusions

The incidence of CHDs in metropolitan France from 2013 to 2022 is 10.7 per 1,000 births, according to the PMSI database. The PMSI database can be used in conjunction with registries to establish the most complete epidemiology of CHDs in France. CHDs are more frequent in cases of prematurity, twinning, primiparity, male sex, and maternal age of > 40 years.

Supporting information

S1 Table. Incidence of congenital heart defect in non-metropolitan France from 2013 to 2022 in the PMSI-MCO (French Medical Information System Program in Medicine, Surgery and Obstetrics) database according to the ICD-10 (International Statistical Classification of Diseases– 10th Revision).

https://doi.org/10.1371/journal.pone.0298234.s001

(DOCX)

S2 Table. Frequency of perinatal data between children with congenital heart defects and children without congenital malformation in non-metropolitan France from 2013 to 2022.

https://doi.org/10.1371/journal.pone.0298234.s002

(DOCX)

S1 Fig. Results of multivariate analysis in non metropolitan France.

Children with congenital heart defects are compared with the reference population from 2013 to 2022. OR: odds ratio; CI: confidence interval.

https://doi.org/10.1371/journal.pone.0298234.s003

(TIF)

References

  1. 1. Dolk H, Loane M, Garne E. The prevalence of congenital anomalies in Europe. Adv Exp Med Biol. 2010;686:349‑64. pmid:20824455
  2. 2. Dolk H, Loane M, Garne E, European Surveillance of Congenital Anomalies (EUROCAT) Working Group. Congenital heart defects in Europe: prevalence and perinatal mortality, 2000 to 2005. Circulation. 2011 Mar 1;123(8):841‑9.
  3. 3. European Platform on Rare Disease Registration. EUROCAT network. Available: https://eu-rd-platform.jrc.ec.europa.eu/eurocat/eurocat-network/eurocat-network-overview_en#inline-nav-2 [Accessed 2024 Jan 10].
  4. 4. Van der Linde D, Konings EEM, Slager MA, Witsenburg M, Helbing WA, Takkenberg JJM, et al. Birth prevalence of congenital heart disease worldwide: a systematic review and meta-analysis. J Am Coll Cardiol. 2011 Nov 15;58(21):2241‑7. pmid:22078432
  5. 5. Hoffman JIE, Kaplan S. The incidence of congenital heart disease. J Am Coll Cardiol. 2002 Jun 19;39(12):1890‑900. pmid:12084585
  6. 6. Germanakis I, Sifakis S. The impact of fetal echocardiography on the prevalence of liveborn congenital heart disease. Pediatr Cardiol. 2006 Aug;27(4):465‑72. pmid:16830077
  7. 7. Sekarski N, Vial Y, Di Bernardo S, Mivelaz Y, Hurni M, von Segesser L, et al. [Pediatrics. Advantages of prenatal diagnosis in congenital cardiopathies]. Rev Med Suisse. 2005 Jan 12;1(2):148‑9, 151‑2.
  8. 8. Gatzoulis MA, Hechter S, Siu SC, Webb GD. Outpatient clinics for adults with congenital heart disease: increasing workload and evolving patterns of referral. Heart. 1999 Jan;81(1):57‑61. pmid:10220546
  9. 9. Reller MD, Strickland MJ, Riehle-Colarusso T, Mahle WT, Correa A. Prevalence of congenital heart defects in metropolitan Atlanta, 1998–2005. J Pediatr. 2008 Dec;153(6):807‑13. pmid:18657826
  10. 10. Jacobs EG, Leung MP, Karlberg J. Distribution of symptomatic congenital heart disease in Hong Kong. Pediatr Cardiol. 2000 Apr;21(2):148‑57. pmid:10754087
  11. 11. Xie D, Fang J, Liu Z, Wang H, Yang T, Sun Z, et al. Epidemiology and major subtypes of congenital heart defects in Hunan Province, China. Medicine (Baltimore) [Internet]. 2018 Aug 3;97(31). pmid:30075604
  12. 12. Pinto Júnior VC, Branco KMPC, Cavalcante RC, Carvalho Junior W, Lima JRC, Freitas SM de, et al. Epidemiology of congenital heart disease in Brazil. Rev Bras Cir Cardiovasc. 2015 Apr;30(2):219‑24. pmid:26107454
  13. 13. Khairy P, Ionescu-Ittu R, Mackie AS, Abrahamowicz M, Pilote L, Marelli AJ. Changing mortality in congenital heart disease. J Am Coll Cardiol. 2010 Sep 28;56(14):1149‑57. pmid:20863956
  14. 14. Somerville J. Grown-up congenital heart disease—medical demands look back, look forward 2000. Thorac Cardiovasc Surg. 2001 Feb;49(1):21‑6. pmid:11243517
  15. 15. Khoshnood B, De Vigan C, Vodovar V, Goujard J, Lhomme A, Bonnet D, et al. Trends in prenatal diagnosis, pregnancy termination, and perinatal mortality of newborns with congenital heart disease in France, 1983–2000: a population-based evaluation. Pediatrics. 2005 Jan;115(1):95‑101. pmid:15629987
  16. 16. Stoll C, Dott B, Alembik Y, Roth MP, Finck S. [Congenital malformations in a series of 131,760 consecutive births during 10 years]. Arch Fr Pediatr. 1991 Oct;48(8):549‑54.
  17. 17. Khoshnood B, Lelong N, Houyel L, Thieulin AC, Jouannic JM, Magnier S, et al. Prevalence, timing of diagnosis and mortality of newborns with congenital heart defects: a population-based study. Heart. 2012 Nov;98(22):1667‑73. pmid:22888161
  18. 18. Santé publique France. Anomalies congénitales liées aux expositions médicamenteuses et environnementales: Proposition de réponse à la demande ministérielle de création d’un dispositif national de veille et de surveillance (in French). Available: https://www.santepubliquefrance.fr/maladies-et-traumatismes/maladies-de-la-mere-et-de-l-enfant/anomalies-et-malformations-congenitales/documents/rapport-synthese/anomalies-congenitales-liees-aux-expositions-medicamenteuses-et-environnementales-proposition-de-reponse-a-la-demande-ministerielle-de-creation-d [Accessed 2024 Jan 10].
  19. 19. Robert-Gnansia E, Francannet C, Bozio A, Bouvagnet P. Épidémiologie, étiologie et génétique des cardiopathies congénitales (In French). EMC—Cardiologie-Angéiologie. Available: http://www.sciencedirect.com/science/article/pii/S1762613704000120 [Accessed 2024 Jun 10]
  20. 20. World Health Organization. WHO | List of Official ICD-10 Update 2019. Available: https://icd.who.int/browse10/2019/en [Accessed 2024 Jan 10].
  21. 21. Agence technique de l’information sur l’hospitalisation. CIM-10 FR 2023 à usage PMSI (in French). Available: https://www.atih.sante.fr/cim-10-fr-2023-usage-pmsi [Accessed 2024 Jan 10].
  22. 22. Hanf M, Quantin C, Farrington P, Benzenine E, Hocine NM, Velten M, et al. Validation of the French national health insurance information system as a tool in vaccine safety assessment: application to febrile convulsions after pediatric measles/mumps/rubella immunization. Vaccine. 2013 Dec 2;31(49):5856‑62. pmid:24135575
  23. 23. Quantin C, Cottenet J, Vuagnat A, Prunet C, Mouquet MC, Fresson J, et al. [Quality of perinatal statistics from hospital discharge data: comparison with civil registration and the 2010 National Perinatal Survey]. J Gynecol Obstet Biol Reprod (Paris). 2014 Nov;43(9):680‑90.
  24. 24. Aboa-Eboulé C, Mengue D, Benzenine E, Hommel M, Giroud M, Béjot Y, et al. How accurate is the reporting of stroke in hospital discharge data? A pilot validation study using a population-based stroke registry as control. J Neurol. 2013 Feb;260(2):605‑13. pmid:23076827
  25. 25. Pierron A, Revert M, Goueslard K, Vuagnat A, Cottenet J, Benzenine E, et al. [Evaluation of the metrological quality of the medico-administrative data for perinatal indicators: A pilot study in 3 university hospitals]. Rev Epidemiol Sante Publique. 2015 Aug;63(4):237‑46.
  26. 26. Goueslard K, Cottenet J, Benzenine E, Tubert-Bitter P, Quantin C. Validation study: evaluation of the metrological quality of French hospital data for perinatal algorithms. BMJ Open. 2020 May 12;10(5):e035218. pmid:32404391
  27. 27. Agence technique de l’information sur l’hospitalisation. Présentation (in French). Available: https://www.atih.sante.fr/mco/presentation#Dispositif [Accessed 2024 Jan 10].
  28. 28. Agence technique de l’information sur l’hospitalisation. Textes officiels du PMSI en MCO (in French). Available: https://www.atih.sante.fr/textes-officiels-du-pmsi-en-mco [Accessed 2024 Jan 10].
  29. 29. Jenkins KJ, Correa A, Feinstein JA, Botto L, Britt AE, Daniels SR, et al. Noninherited risk factors and congenital cardiovascular defects: current knowledge: a scientific statement from the American Heart Association Council on Cardiovascular Disease in the Young: endorsed by the American Academy of Pediatrics. Circulation. 2007 Jun 12;115(23):2995‑3014. pmid:17519397
  30. 30. Morris JK, Garne E, Wellesley D, Addor MC, Arriola L, Barisic I, et al. Major congenital anomalies in babies born with Down syndrome: a EUROCAT population-based registry study. Am J Med Genet A. 2014 Dec;164A(12):2979‑86. pmid:25257471
  31. 31. Agence technique de l’information sur l’hospitalisation. Aide à l’utilisation des informations de chaînage (in French). Available: https://www.atih.sante.fr/aide-lutilisation-des-informations-de-chainage [Accessed 2024 Jan 10].
  32. 32. Commission nationale de l’informatique et des libertés. Études nécessitant l’accès aux données du PMSI et/ou des RPU par les établissements de santé et les fédérations hospitalières Méthodologie de référence MR-005 (in French). Available: https://www.cnil.fr/fr/declaration/mr-005-etudes-necessitant-lacces-aux-donnees-du-pmsi-etou-des-rpu-par-les-etablissements [Accessed 2024 Jan 10].
  33. 33. Austin PC. Using the Standardized Difference to Compare the Prevalence of a Binary Variable Between Two Groups in Observational Research. Communications in Statistics—Simulation and Computation [Internet]. 2009 May 14;38(6):1228‑34.
  34. 34. Cohen J. The statistical power of abnormal-social psychological research: a review. J Abnorm Soc Psychol. 1962 Sep;65:145‑53. pmid:13880271
  35. 35. Yang D, Dalton JE. A unified approach to measuring the effect size between two groups using SAS®. 2012; SAS Global Forum 2012 –Statistics and Data Analysis–Paper 335–2012
  36. 36. Manchikanti L, Falco FJE, Hirsch JA. Necessity and implications of ICD-10: facts and fallacies. Pain Physician. 2011 Oct;14(5):E405–425. pmid:21927055
  37. 37. Davy C, Harfield S, McArthur A, Munn Z, Brown A. Access to primary health care services for Indigenous peoples: A framework synthesis. Int J Equity Health. 30 2016;15(1):163. pmid:27716235
  38. 38. Vettukattil JJ. Pathophysiology of Patent Ductus Arteriosus in the Preterm Infant. Curr Pediatr Rev. 2016;12(2):120‑2. pmid:27197953
  39. 39. Chu PY, Li JS, Kosinski AS, Hornik CP, Hill KD. Congenital Heart Disease in Premature Infants 25–32 Weeks’ Gestational Age. J Pediatr. 2017 Feb;181:37–41.e1. pmid:27816222
  40. 40. Dadlez NM, Brubaker SG, Simpson LL, Yilmaz B, Williams IA. Impact of change in delivery practice on neonatal and maternal outcomes in cases of significant congenital heart disease. Congenit Heart Dis. 2014 Oct;9(5):368‑72. pmid:25371936
  41. 41. Landis BJ, Levey A, Levasseur SM, Glickstein JS, Kleinman CS, Simpson LL, et al. Prenatal diagnosis of congenital heart disease and birth outcomes. Pediatr Cardiol. 2013 Mar;34(3):597‑605. pmid:23052660
  42. 42. Giorgione V, Parazzini F, Fesslova V, Cipriani S, Candiani M, Inversetti A, et al. Congenital heart defects in IVF/ICSI pregnancy: systematic review and meta-analysis. Ultrasound Obstet Gynecol. 2018;51(1):33‑42. pmid:29164811
  43. 43. Panagiotopoulou O, Fouzas S, Sinopidis X, Mantagos SP, Dimitriou G, Karatza AA. Congenital heart disease in twins: The contribution of type of conception and chorionicity. Int J Cardiol. 2016 Sep 1;218:144‑9. pmid:27232926
  44. 44. Baird PA, Sadovnick AD, Yee IM. Maternal age and birth defects: a population study. Lancet. 1991 Mar 2;337(8740):527‑30. pmid:1671898
  45. 45. Amorim LFP, Pires CAB, Lana AMA, Campos AS, Aguiar RALP, Tibúrcio JD, et al. Presentation of congenital heart disease diagnosed at birth: analysis of 29,770 newborn infants. J Pediatr (Rio J). 2008;84(1):83‑90. pmid:18204741
  46. 46. Chen MY, Riehle-Colarusso T, Yeung LF, Smith C, EdS, Farr SL. Children with Heart Conditions and Their Special Health Care Needs—United States, 2016. MMWR Morb Mortal Wkly Rep. 2018 Sep 28;67(38):1045‑9. pmid:30260943
  47. 47. Aubry P, Demian H. [Sex differences in congenital heart disease]. Ann Cardiol Angeiol (Paris). 2016 Dec;65(6):440‑5.
  48. 48. Pierpont ME, Basson CT, Benson DW, Gelb BD, Giglia TM, Goldmuntz E, et al. Genetic basis for congenital heart defects: current knowledge: a scientific statement from the American Heart Association Congenital Cardiac Defects Committee, Council on Cardiovascular Disease in the Young: endorsed by the American Academy of Pediatrics. Circulation. 2007 Jun 12;115(23):3015‑38. pmid:17519398
  49. 49. Petracchi F, Sisterna S, Igarzabal L, Wilkins-Haug L. Fetal cardiac abnormalities: Genetic etiologies to be considered. Prenat Diagn. 2019;39(9):758‑80. pmid:31087396
  50. 50. Lemaitre M, Bourdon G, Bruandet A, Lenne X, Subtil D, Rakza T, et al. Pre-gestational diabetes and the risk of congenital heart defects in the offspring: A French nationwide study. Diabetes Metab. 2023 Apr 7;49(4):101446. pmid:37031733
  51. 51. Apitz C, Webb GD, Redington AN. Tetralogy of Fallot. Lancet. 2009 Oct 24;374(9699):1462‑71. pmid:19683809
  52. 52. Boris JR. Primary-care management of patients with coarctation of the aorta. Cardiol Young. 2016 Dec;26(8):1537‑42. pmid:28148323
  53. 53. Warnes CA. Transposition of the great arteries. Circulation. 2006 Dec 12;114(24):2699‑709. pmid:17159076
  54. 54. Feng Y, Yu D, Chen T, Liu J, Tong X, Yang L, et al. Maternal parity and the risk of congenital heart defects in offspring: a dose-response meta-analysis of epidemiological observational studies. PLoS One. 2014;9(10):e108944. pmid:25295723
  55. 55. World Health Organization. WHO | International Classification of Diseases, 11th Revision (ICD-11). Available:. http://www.who.int/classifications/icd/en/ [Accessed 2024 Jan 10].
  56. 56. International Society for Nomenclature of Paediatric and Congenital Heart Disease. IPCCC/ICD-11 Download. Available: http://ipccc.net/ipccc-download-form/ [Accessed 2024 Jan 10].