Literature DB >> 33213014

Alcohol Use Disorders and Increased Risk of Adverse Birth Complications and Outcomes: An 11-Year Nationwide Cohort Study.

Sarah Soyeon Oh1,2, Yongho Jee1,3, Eun-Cheol Park4,5, Young Ju Kim1,2.   

Abstract

For women who suffer from Alcohol Use Disorders (AUDs), the use of alcohol before and/or during pregnancy may result in various birth complications, including miscarriage, stillbirth, or preterm delivery. Thus, this study aimed to explore whether Alcohol Use Disorders (AUDs) are associated with increased risk of adverse birth complications and outcomes. A total of 76,799 deliveries between 2003 and 2013 in the Korean National Health Insurance Service National Sample Cohort (NHIS-NSC) were analyzed. Women with an AUD diagnosis preceding delivery were identified as individuals with alcohol dependence. A multivariate Cox proportional hazards model was used to estimate the hazard ratio of adverse birth complications and outcomes associated with alcohol dependence. Diagnosis of an AUD was associated with increased risk of adverse birth complications (Hazard Ratio [HR]: 1.15, 95% CI: 1.01-1.31, p = 0.0302). This was especially the case for women whose AUD diagnosis was in the same year as their delivery (HR: 1.53, 95% CI: 1.24-1.88, p < 0.0001). AUDs were associated with increased risk of adverse birth outcomes, especially when prevalent in the same year as a woman's delivery. Our study confirms that the monitoring of expecting women with a diagnosis of alcohol-related problems may be useful in preventing adverse birth complications.

Entities:  

Keywords:  birth complications; prenatal alcohol exposure; preterm birth

Mesh:

Year:  2020        PMID: 33213014      PMCID: PMC7698577          DOI: 10.3390/ijerph17228515

Source DB:  PubMed          Journal:  Int J Environ Res Public Health        ISSN: 1660-4601            Impact factor:   3.390


1. Introduction

During the COVID-19 pandemic, alcohol consumption has been increasing as individuals experience increased feelings of social estrangement, self-isolation, and a sense of loneliness [1]. For individuals with Alcohol Use Disorders (AUDs), this proposes a serious health-related problem as chronic ethanol intake is associated with increased risk of bacterial and viral lung infections, including COVID-19 [1], as well as multisystemic damage to the liver, heart, lungs, and body [2]. AUDs are a maladaptive pattern of heavy and harmful alcohol use that leads to various behavioral, cognitive, and physiological phenomena, including a strong desire to drink, increased tolerance, and physical withdrawal [3]. Globally, the World Health Organization (WHO) estimates that the harmful use of alcohol is responsible for approximately 3 million deaths (5.3% of all deaths) each year [4]. In the United States alone, AUDs are believed to affect an estimated 15 million people, including 9.2 million men and 5.2 million women [5]. In South Korea, AUDs are believed to affect around 12.2% of adults between 18 and 74 years old, including one in five men [6]. For women who suffer from AUDs, the use of alcohol before and/or during pregnancy can result in various pregnancy and birth complications, including miscarriage, stillbirth, preterm delivery, and sudden infant death syndrome [7]. In one study of more than 3000 deliveries in the U.S., it was found that for every unit increase in alcohol exposure, the risk of preterm delivery increased by 34-fold [8]. In a meta-analysis study of 231,808 pregnant women, those exposed to alcohol during pregnancy had a greater risk of miscarriage (Odds Ratio [OR]: 1.19, 95% CI: 1.12–1.28), with each additional alcoholic drink consumed during pregnancy being associated with a 6% increase in miscarriage risk (OR: 1.06, 95% CI: 1.01–1.10) [8]. In an Ethiopian case-control study, mothers who drank alcohol during pregnancy were 7.56 times more likely to have a stillbirth compared to abstainers (OR: 7.56, 95% CI: 1.68–34.04) [9]. Because alcohol may cause an angiogenic imbalance that affects lipid levels, inflammation, and oxidative stress [10], drinking has also been associated with various clinical symptoms including hypertension, proteinuria, and intrauterine growth restriction (IUGR). For example, in a study of 76,940 pregnant women in Japan, alcohol consumption during pregnancy was associated with significantly higher odds of hypertensive disorders of pregnancy (OR: 3.98, 95% CI: 1.33–11.9), and placental accrete (OR: 3.10, 95% CI: 1.69–5.44) [11]. In another study of pregnant women exposed to alcohol and tobacco in Spain, the odds of IUGR increased by 22-fold, while the odds of small gestational age (SGA) increased by 33-fold [12]. While many published reports have focused on an association between alcohol consumption during pregnancy and such outcomes, few studies have focused on the association between a diagnosis of alcohol addiction preceding pregnancy and subsequent consequences. Despite the fact that the risk for alcohol use during pregnancy increases if the mother used and/or abused alcohol before her pregnancy [13], few studies have found a link between drinking before conception and adverse outcomes. Recently, one study found that parental binge drinking before conception may be associated with a baby’s congenital heart defects [14], possibly because alcohol exposure affects the DNA in developing sperm [15]. Another study claimed that alcohol intake before and during pregnancy is not associated with infant motor development, and is only slightly associated with mean infant weight, length, and head circumference at birth [16,17]. Because such studies are still new, there is no evidence concerning the effects of a previous alcohol diagnosis on adverse birth outcomes, especially for a nationwide population-based cohort. Thus, this study aimed to examine the association between Alcohol Use Disorders (AUDs) and the risk of adverse birth complications and outcomes using nationwide cohort data.

2. Materials and Methods

The data used in this study were obtained from the National Health Insurance Service National Sample Cohort (NHIS-NSC) in Korea for the years 2002 to 2013. These data were constructed with the sole purpose of providing public health researchers and policy-makers with representative, useful information regarding Korean citizens’ utilization of health insurance and health examinations [18]. To construct the cohort, a representative sample cohort of 1,109,938 participants, representative of 2.2% of the Korean population, was selected using systematic stratified random sampling with proportional allocation of 1476 strata constructed based on age, sex, insurance eligibility status, and income [18]. Within each stratum, systematic sampling was conducted after sorting population data by the value of total annual medical expenses, and drawing stratum samples iteratively until an absolute percentage error of less than 5% was reached. During the follow-up period, a representative sample of newborns was added annually, and all deceased or emigrated participants were excluded [18,19]. The final population was followed for 11 years, during which a representative sample of newborns was added annually, and all deceased or emigrated participants were excluded [18]. For the identification of pregnancy, we employed the International Classification of Diseases, Tenth Revision, Clinical Modification (ICD-10-CM) diagnosis codes Z32.1, Z33, Z34.00, Z34.80, Z34.90, Z35, and O30, as seen in a previous study using the same dataset [19]. Incidence and risk of adverse birth complications (gestational hypertension, gestational diabetes, premature rupture of membranes (PROM), placenta previa, abruption placentae, postpartum hemorrhage, meconium stained amniotic fluid, fetal asphyxia, preterm birth, low birth weight, intrauterine growth restriction (IUGR) and outcomes (spontaneous/threatened/missed abortions, miscarriage) were identified using ICD-10 codes shown in the Supplementary Material Table S1. For accuracy purposes, only the first pregnancy of all women in our dataset was examined. For the identification of AUDs, we employed the International Classification of Diseases, Tenth Revision, Clinical Modification (ICD-10-CM) diagnosis codes E24.4 (alcohol-induced pseudo-Cushing’s syndrome), F10 (mental and behavioural disorders due to use of alcohol), G31.2 (degeneration of nervous system due to alcohol), G62.1 (alcoholic polyneuropathy), G72.1 (alcoholic myopathy), I42.6 (alcoholic cardiomyopathy), K29.2 (alcoholic gastritis), K70 (alcoholic liver disease), K85.2 (alcohol-induced acute pancreatitis), K86.0 (alcohol-induced chronic pancreatitis), as seen in a previous study of alcohol use disorders [20]. We controlled for numerous patient-related covariates when analyzing the association between alcoholism and adverse birth outcomes. Such variables included age of delivery, income, insurance coverage, employment status, region, and year of diagnosis. Age was divided into six 5 year groups (<20, 20–24, 25–29, 30–34, 35–39, ≥40) to reflect any differences in the association between alcoholism and adverse outcomes by maternal age at delivery. Insurance coverage was categorized into three groups: insurance (regional), insurance (corporate), and Medical Aid. Based on the criteria of South Korea’s National Health Insurance (NHI) system, individuals who are self-employed are covered by regional insurance, while individuals employed by a company are covered by employer-based corporate insurance. Medical aid beneficiaries consist of all those who have an income below the government-defined poverty threshold or a disability which enables them to receive free inpatient and outpatient care through the government. Region was divided into three categories according to population density: metropolitan (Seoul, Gyeong-gido), city (Busan, Daegu, Incheon, Gwangju, Daejeon, Ulsan), and other (Gangwondo, Chungcheongbukdo, Chungcheongnamdo, Jeollabukdo, Jeollanamdo, Gyeongsangbukdo, Gyeongsangnamdo, Jeju Island). We first examined the frequencies and percentages of each categorical variable at each patient’s baseline and performed χ2 tests to examine the distribution for adverse birth complications and outcomes according to each variable. Subsequently, we performed survival analyses using a Cox proportional hazards model to examine the factors significantly associated with adverse pregnancy outcomes. Cases with an event of birth complication or abortion were coded as 1, and all other cases were coded as 0. The follow-up period in the study was from 1 January 2003 to 31 December 2013 with the length of survival recorded in days. The HR and 95% confidence interval (CI) were computed from the Cox proportional hazard model, and statistical significance was determined by a two-tailed test with a p-value of 0.05 as the threshold. All statistical analyses were performed using SAS software, version 9.4 (SAS Institute, Cary, NC, USA). All methods were performed in accordance with relevant guidelines and regulations. All experimental protocols were approved by the Institutional Review Board of Yonsei University’s Health System (Y-2019-0174). The need for informed consent was waived since the NHIS-NSC provides anonymous cohort data to researchers for scholarly use.

3. Results

This Table 1 presents the general characteristics of the study population. Of 76,799 women with confirmed pregnancies during our study period, 1211 (1.57%) were in the AUD group, and 75,588 (98.43%) were in the control group. Among those with AUDs, 19.7% had adverse outcomes, compared to 15.2% in the control group. Women with AUD diagnosis in the same year as their delivery had the highest prevalence of adverse birth outcomes (24.3%), while women with no AUD diagnosis had the lowest prevalence of adverse birth outcomes (15.2%).
Table 1

General Characteristics of Deliveries and Adverse Pregnancy Outcome by AUD Diagnosis & Diagnosis Proximity to Delivery.

VariablesTotal DeliveriesNoneAdverse Outcomesp-Value
n % n %
Alcohol Use Disorder (AUD) Diagnosis
None75,58864,13084.811,45815.2<0.0001
Yes121197280.323919.7
AUD Diagnosis Proximity to Delivery
Same year as delivery37028075.79024.3<0.0001
1 year before delivery20817081.73818.3
2 years before delivery14612082.22617.8
≥3 years before delivery48740282.58517.5
None75,58864,13084.811,45815.2
Age at Delivery
<2084279494.3485.7<0.0001
20–246924622389.970110.1
25–2929,74525,31385.14,43214.9
30–3428,60423,81683.34,78816.7
35–398483702082.8146317.2
≥402201193688.026512.0
Income
Low9439808885.7135114.30.0012
Medium45,58838,69684.9689215.1
High21,77218,31884.1345415.9
Employment Status
Unemployed48,44741,33385.3 711414.7<0.0001
Employed28,35223,76983.8 458316.2
Medical Insurance
Insurance Coverage (Regional)23,82820,55386.3 327513.7<0.0001
Insurance Coverage (Corporate)52,67444,28084.1839415.9
Medical Aid29726990.6289.4
Disability
None76,37364,73684.811,63715.2<0.0001
Moderate31726683.95116.1
Severe10910091.798.3
Number of Births
17304681493.34906.7<0.0001
23413303889.037511.0
32549214184.040816.0
≥463,53353,10983.610,42416.4
Twin Birth Status
Single Birth75,46864,09684.911,37215.1<0.0001
Twin Birth1331100675.632524.4
Region
Metropolitan35,84430,07683.9576816.1<0.0001
City19,26516,43385.3283214.7
Other21,69018,59385.7309714.3
Year of Diagnosis
200314,31112,89090.114219.9<0.0001
20049127793787.0119013.0
20057975692786.9104813.1
20067069606985.9100014.1
20077018595384.8106515.2
20085719470282.2101717.8
20095100420982.589117.5
20105486439880.2108819.8
20115313424679.9106720.1
20124972386577.7110722.3
20134709390682.980317.1
76,79965,10284.811,69715.2
Table 2 presents the results of the Cox proportional hazards model examining the association between AUD diagnoses, AUD diagnosis proximity to delivery, and adverse pregnancy outcomes. Women with a diagnosis of AUDs had increased risk (HR: 1.15, 95% CI: 1.01–1.31, p = 0.0302) of adverse birth outcomes, especially if her AUD diagnosis was made in the same year as her delivery (HR: 1.53, 95% CI: 1.24–1.88, p < 0.0001). Age at delivery was also significantly associated with increased adverse birth outcomes: compared to the 20–24 years’ age group, women who gave birth in the 25–29 age group (HR: 1.41, 95% CI: 1.30–1.53, p < 0.0001), 30–34 age group (HR: 1.61, 95% CI: 1.48–1.74, p < 0.0001), 35–39 age group (HR: 1.73, 95% CI: 1.58–1.89, p < 0.0001), and ≥40 age group (HR: 1.40, 95% CI: 1.21–1.61, p < 0.0001) had increased odds of adverse birth outcomes.
Table 2

Survival Analysis of Association between AUD Diagnosis and Adverse Birth Outcomes.

Adverse Birth Outcomes
Hazard Ratio (HR)95% CIp-Value
LowerUpper
Alcohol Use Disorder (AUD) Diagnosis
None1.00 --
Yes1.15 1.01 1.31 0.0302
AUD Diagnosis Proximity to Delivery
Same year as delivery1.53 1.24 1.88 <0.0001
1 year before delivery1.17 0.85 1.60 0.3461
2 years before delivery0.99 0.67 1.46 0.9644
≥3 years before delivery0.95 0.76 1.17 0.6142
None1.00 --
Age at Delivery
<200.58 0.43 0.77 0.0002
20–241.00 --
25–291.41 1.30 1.53 <0.0001
30–341.61 1.48 1.74 <0.0001
35–391.73 1.58 1.89 <0.0001
≥401.40 1.21 1.61 <0.0001
Income
Low
Medium0.98 0.91 1.04 0.4551
High0.97 0.93 1.02 0.2268
Employment Status
Unemployed1.00 --
Employed1.00 0.96 1.04 0.9079
Medical Insurance
Insurance Coverage (Regional)1.00 --
Insurance Coverage (Corporate)1.06 1.01 1.10 0.0129
Medical Aid0.79 0.54 1.15 0.2173
Disability
None1.00 --
Moderate1.06 0.81 1.40 0.6789
Severe0.60 0.31 1.16 0.1274
Number of Births
11.00 --
21.80 1.57 2.06 <0.0001
32.80 2.46 3.20 <0.0001
≥42.70 2.46 2.96 <0.0001
Twin Birth Status
Single Birth1.00 --
Twin Birth1.57 1.40 1.75 <0.0001
Region
Metropolitan1.00 --
City0.93 0.89 0.97 0.0010
Other0.92 0.88 0.96 0.0001
Year of Diagnosis
20031.00 --
20041.33 1.23 1.43 <0.0001
20051.35 1.24 1.46 <0.0001
20061.44 1.33 1.56 <0.0001
20071.57 1.45 1.71 <0.0001
20081.91 1.76 2.07 <0.0001
20091.92 1.76 2.09 <0.0001
20102.31 2.14 2.51 <0.0001
20112.37 2.19 2.57 <0.0001
20122.75 2.53 2.97 <0.0001
20133.59 3.29 3.93 <0.0001
Working with corporate insurance coverage also had increased risk of adverse birth outcomes (HR: 1.06, 95% CI: 1.01–1.10, p = 0.0129) compared to women with regional insurance coverage, as did women who had already given birth 2 times (HR: 1.80, 95% CI: 1.57–2.06, p < 0.0001), three times (HR: 2.80, 95% CI: 2.46–3.20, p < 0.0001), and four or more times (HR: 2.70, 95% CI: 2.46–2.96, p < 0.0001). Women who gave twin births (HR: 1.57, 95% CI: 1.40–1.75, p < 0.0001) were at increased odds of adverse birth outcomes compared to women who gave single births also. On the contrary, compared to women living in metropolitan regions, women living in the city (HR: 0.93, 95% CI: 0.89–0.97, p = 0.0010) and other regions (HR: 0.92, 0.88–0.96, p = 0.0001) had decreased risk of adverse birth outcomes. Table 3 presents the results of the subgroup analysis of the association between types of adverse birth outcomes and AUD diagnosis. AUD diagnosis was most strongly associated with increasing risk of placenta previa (HR: 2.39, 95% CI: 0.97–5.91, p = 0.06) and Intrauterine Growth Restriction (HR: 1.77, 95% CI: 1.25–2.49, p = 0.00).
Table 3

Subgroup Analysis of Association between Types of Adverse Birth Outcomes and AUD Diagnosis.

NoneAlcohol Use Disorder (AUD) Diagnosis *
Hazard Ratio (HR)95% CIp-Value
LowerUpper
Birth Complications
Gestational hypertension1.00 0.62 0.09 4.50 0.64
Gestational diabetes1.00 0.85 0.61 1.19 0.34
PROM *1.00 0.95 0.55 1.64 0.85
Placenta previa1.00 2.39 0.97 5.91 0.06
Abruptio placentae1.00 -
Postpartum hemorrhage1.00 1.48 0.76 2.86 0.25
Meconium stained amniotic fluid1.00 -
Fetal asphyxia1.00 -
Preterm birth1.00 1.27 0.82 1.97 0.28
Low birth weight1.00 -
IUGR **1.00 1.77 1.25 2.49 0.00
Birth Outcomes
Abortion1.00 1.27 0.97 1.66 0.08
Miscarriage1.00 1.14 0.95 1.37 0.15

* Premature rupture of membranes. ** Intrauterine Growth Restriction.

4. Discussion

Our findings show that AUD diagnosis is significantly associated with increased risk of adverse birth outcomes, especially when the diagnosis is made in close proximity to delivery (same year as delivery). To our knowledge, few studies to date have employed an ICD-10 diagnosis of AUDs as a marker for predicting adverse birth outcomes, despite the fact that self-reported measures of alcohol consumption during pregnancy are presumed to be highly unreliable. Although instruments like the T-ACE/T-ACER-3, TWEAK, or Substance Use Risk Profile-Pregnancy (SURP-P) have been empirically validated for use among pregnant women [21], it is undeniable that self-reports are heavily influenced by recall bias. More importantly, because of the social stigmas surrounding substance use during pregnancy, it is highly likely that such self-reports are underestimates of actual alcohol consumption experience during pregnancy [22,23,24]. It should be noted that women who report drinking during pregnancy, but fail to provide exact information on the amount of alcohol they consumed during pregnancy, have the highest risk of stillbirths [7]. Such findings provide evidence that self-reports of alcohol consumption during pregnancy are heavily dependent on social desirability and stigmas. Until more research on biomarkers like meconium ethyl glucuronide (EtG) are developed to detect alcohol consumption during pregnancy [24], employing ICD-10 diagnostic codes for AUDs may provide accurate information regarding serious, alcohol-related problems among pregnant women. While evidence has been conflicting regarding the association between alcohol diagnosis prior to and during pregnancy and risk of adverse birth outcomes, one prospective cohort of 1303 pregnant women in the United Kingdom found that intakes of more than 2 units of alcohol/week before pregnancy, and in trimesters 1 and 2, were significantly associated with increased risk of babies with lower birth weight, lower birth centile, and preterm birth compared to non-drinkers [17]. Likewise, in a recent animal study in South Korea, alcohol consumption before or during pregnancy was associated with increased risk of abnormal fetal development in ethanol-fed mice, who not only had significantly decreased growth rates during the lactation period, but postnatal macrosomia [25,26]. Although these results were not replicated in our study, we also saw an inverse pattern between AUD diagnosis proximity to delivery and adverse birth outcomes. We were unable to control for various factors like exact alcohol intake (units/week) during pregnancy, and continued alcohol consumption during pregnancy due to the secondary nature of our data; however, controlling for these variables in future studies may result in similar results to the existing body of literature. Like previous studies, our study also found an association between high number of births and the birth of twins with increased adverse birth outcomes. A high number of previous births has been associated with poor pregnancy outcomes in a number of studies [27,28], and in vitro fertilization twins are believed to have small but significantly increased risks of preterm birth and low birth weight [16]. Surprisingly, AUD diagnosis was not associated with increased risk of many individual birth complications: AUD diagnosis was only associated with increased risk of intrauterine growth retardation in our subgroup analysis. Many studies have explored the association between prenatal alcohol exposure and intrauterine growth retardation [29,30,31], including a study of pregnant rats in China, that found a significant association between alcohol consumption and reduced fetal developmental indices, placental weight, and oxidative and anti-oxidative functioning [32]. The limitations of our study derive from the limited accuracy and reliability of the ICD-10 classification of alcoholism within our study population. Although it must be assumed that the classifications were made by healthcare professionals fully aware and abiding of specific criteria for maximum diagnostic reliability, chronic alcoholism is a difficult condition to diagnose. Furthermore, diagnosing alcoholism among individuals with disability can be extremely challenging for clinicians; heavy drinking associated with alcoholism can contribute to, or result from, several different psychiatric syndromes ranging from depression to sociopathy and dementia, that make diagnosis confusing and inaccurate [33]. Second, our study centered on the time until adverse birth outcome following year of diagnosis (2003), which was around ten years. Therefore, during this time period, various confounding variables will have influenced the patient’s risk of adverse birth outcomes, relative to medical advancements, seasonal biological changes, and social, economic, and political factors. As of yet, there are not enough previous studies with regard to a nationally representative population of Koreans when it comes to measuring the impact of alcoholism and adverse birth outcomes. It is difficult to see whether the figures we calculated are similar to that of the statistics found in previous studies for Koreans. Also, while our study specifically focused on adverse birth outcomes that occur during birth and mostly affect the mother, further studies should also attempt to examine the long-term and more severe consequences of prenatal alcohol exposure on child development, i.e., fetal alcohol spectrum disorders (FASDs). Prenatal alcohol exposure has been associated with a range of mental and/or physical disabilities among individuals whose mothers consumed alcohol during pregnancy [34]. Previous studies have stated that consuming alcohol during pregnancy is one of the “most verified” prenatal risk factors for impaired child development [24]. More studies are required to understand how AUD diagnosis may affect the prevalence of such diseases as it is believed that FASDs occur among one in 13 prenatally exposed infants [35]. Lastly, while we assumed that alcohol consumption during pregnancy would be prevalent if an AUD diagnosis was made in the same year as delivery, it is impossible to know whether or not this was so. This was a limitation of our secondary data, but it is highly recommended that future studies employ instruments like the T-ACE/T-ACER-3, TWEAK, or Substance Use Risk Profile-Pregnancy (SURP-P) in simultaneity with AUD diagnoses, for a more accurate prediction of alcohol consumption during pregnancy [21]. Despite these limitations, our study has a number of strengths. It is one of the first reports to address the association between AUD diagnosis and adverse birth complications, while controlling for the proximity between diagnosis time and birth. To our knowledge, no study in South Korea has attempted to evaluate the association between alcohol consumption during pregnancy and adverse birth outcomes, mostly because data on alcohol consumption during pregnancy are very rare, if not non-existent, in our country as of now. Furthermore, our data consisted of a nationally representative sample of women who were examined by medical professionals for the NHIS database. Most importantly, instead of using retrospective self-reports of alcohol consumption during pregnancy, we measured the possibility for alcohol-related problems during pregnancy through an ICD-10 diagnosis of AUDs, which allowed for an accurate identification of expecting women with past/present alcohol-related problems.

5. Conclusions

Overall, such findings suggest that AUDs are significantly associated with increased risk of adverse birth outcomes, especially when prevalent in the same year as a woman’s delivery. It is highly recommended that healthcare professionals routinely ask all pregnant women about their alcohol consumption, and pay special attention to women with a previous diagnosis of AUDs. Validated behavioral interventions for AUDs in pregnancy include motivational enhancement therapy and cognitive behavior therapies such as brief psychodynamic psychotherapy, interpersonal therapy, educational interventions, and supportive counseling [21]. Pharmacological treatments with medications like benzodiazepines and clomethiazole are not recommended for pregnant women because of the risk of possible teratogenic effects [36]. Likewise, although naltrexone has shown potential for use among pregnant, alcohol-dependent women, pharmacological treatments of any kind should only be considered as a treatment option after a clinician has carefully evaluated the implications of medication use on both the mother and fetus. As AUDs are associated with neurobiological adaptations that reduce an individual’s cognitive control, clinicians must be non-judgmental, non-directive, and private [37,38]. Empathy and mutual respect are also important as previous research has found a positive association between these factors and recovery from substance abuse among pregnant women [39]. Further research on preventive measures, as well as pharmacological treatment of alcohol abuse and/or dependence among pregnant women, is necessary to prevent adverse birth complications and outcomes among this population. Lastly, healthcare professionals should always be supported by comprehensive, up-to-date information on prenatal alcohol use and incorporate such information to prevent alcohol use among women before they become pregnant [40].
  35 in total

1.  Cohort Profile: The National Health Insurance Service-National Sample Cohort (NHIS-NSC), South Korea.

Authors:  Juneyoung Lee; Ji Sung Lee; Sook-Hee Park; Soon Ae Shin; KeeWhan Kim
Journal:  Int J Epidemiol       Date:  2017-04-01       Impact factor: 7.196

2.  Prevalence of alcohol use in pregnant women with substance use disorder.

Authors:  Ludmila N Bakhireva; Shikhar Shrestha; Laura Garrison; Lawrence Leeman; William F Rayburn; Julia M Stephen
Journal:  Drug Alcohol Depend       Date:  2018-04-10       Impact factor: 4.492

Review 3.  Alcohol use disorders in pregnancy.

Authors:  Jeffrey DeVido; Olivera Bogunovic; Roger D Weiss
Journal:  Harv Rev Psychiatry       Date:  2015 Mar-Apr       Impact factor: 3.732

4.  Parental alcohol consumption and the risk of congenital heart diseases in offspring: An updated systematic review and meta-analysis.

Authors:  Senmao Zhang; Lesan Wang; Tubao Yang; Lizhang Chen; Lijuan Zhao; Tingting Wang; Letao Chen; Ziwei Ye; Zan Zheng; Jiabi Qin
Journal:  Eur J Prev Cardiol       Date:  2019-10-02       Impact factor: 7.804

5.  Risk factors associated to tobacco and alcohol use in a large French cohort of pregnant women.

Authors:  Sandrine Lamy; Estelle Houivet; Stéphane Marret; Benjamin Hennart; Heloise Delavenne; Jacques Benichou; Delphine Allorge; Florence Thibaut
Journal:  Arch Womens Ment Health       Date:  2018-08-03       Impact factor: 3.633

Review 6.  Preterm birth and low birth weight among in vitro fertilization twins: a systematic review and meta-analyses.

Authors:  Sarah D McDonald; Zhen Han; Sohail Mulla; Arne Ohlsson; Joseph Beyene; Kellie E Murphy
Journal:  Eur J Obstet Gynecol Reprod Biol       Date:  2010-02       Impact factor: 2.435

7.  Differential correlations between maternal hair levels of tobacco and alcohol with fetal growth restriction clinical subtypes.

Authors:  Sally Sabra; Ebba Malmqvist; Laura Almeida; Eduard Gratacos; Maria Dolores Gomez Roig
Journal:  Alcohol       Date:  2018-01-04       Impact factor: 2.405

8.  Can routine information from electronic patient records predict a future diagnosis of alcohol use disorder?

Authors:  Torgeir Gilje Lid; Geir Egil Eide; Ingvild Dalen; Eivind Meland
Journal:  Scand J Prim Health Care       Date:  2016-07-12       Impact factor: 2.581

9.  Alcohol consumption before pregnancy causes detrimental fetal development and maternal metabolic disorders.

Authors:  Yoo Jeong Lee; Ji Yeon Kim; Dae Yeon Lee; Keon Jae Park; Gyu Hee Kim; Jeong Eun Kim; Gu Seob Roh; Joong Yeon Lim; Seul Koo; Nam Kyoo Lim; Hyun Young Park; Won-Ho Kim
Journal:  Sci Rep       Date:  2020-06-22       Impact factor: 4.379

Review 10.  The effects of oxidative stress on female reproduction: a review.

Authors:  Ashok Agarwal; Anamar Aponte-Mellado; Beena J Premkumar; Amani Shaman; Sajal Gupta
Journal:  Reprod Biol Endocrinol       Date:  2012-06-29       Impact factor: 5.211

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