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Original paper

Metabolic associated fatty liver disease and adverse maternal and fetal outcomes: a systematic review and meta-analysis

Adinda Ayu Dyah
1
,
Rahadina Rahadina
1

  1. Faculty of Medicine, Universitas Airlangga, Surabaya, Indonesia
Clin Exp HEPATOL 2021; 7, 3: 305-311
Online publish date: 2021/09/20
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Introduction

Metabolic associated fatty liver disease (MAFLD) is a new nomenclature for nonalcoholic fatty liver disease (NAFLD), with hepatic steatosis and metabolic dysfunction as its hallmark [1]. It comprises a wide clinical spectrum, from simple steatosis to a more progressive form, steatohepatitis with different degree of fibrosis. Central obesity, diabetes mellitus, hypertension (HTN), and hyperlipidemia are all linked to this disease [2]. MAFLD develops as a result of various deposits of activated proinflammatory cytokines in the liver, such as tumor necrosis factor α and interleukin 6, which is promoted by excess free fatty acids, hepatic insulin resistance, and adipose tissue in the periphery [3].

MAFLD is now the most common liver disease in the world, with a prevalence of 20-30%, and is becoming the major cause of liver transplantation in Western populations [1]. Its prevalence is increasing, but variation exists across studies due to differences in frequency of obesity in the study population, age, and diagnostic criteria [4]. In women at productive age, prevalence is estimated at 10%, and it is highly associated with the most prevalent disorder at their age, polycystic ovarian syndrome [5, 6].

With such high prevalence, it is important to investigate the magnitude of adverse maternal and fetal outcomes that will be inflicted by MAFLD occurring during pregnancy. Our aim was to summarize the association between MAFLD and adverse maternal and fetal outcomes.

Material and methods

Study selection

Our meta-analysis adhered to Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Two independent investigators conducted a literature search on PubMed and ProQuest from inception to April 1, 2021, restricting the search to studies involving humans and articles published in English. We used medical subject headings and free-text terms for the keywords, as shown in Table 1.

Table 1

Search strategy

SearchQueryResults
PubMed  
#1((“Non-alcoholic Fatty Liver Disease”[Mesh]) OR (“nafld”[All Fields])) OR (“non alcoholic fatty liver disease”[All Fields])23,867
#2(“Pregnancy”[Mesh]) OR (“pregnancy”[All Fields])1,007,060
#3#1 AND #2252
ProQuest  
S1(SU.exact(“LIVER DISEASES”) AND SU.exact(“FATTY LIVER”))5,503
S2(MAINSUBJECT.EXACT(“Pregnancy”) OR MESH.EXACT(“Pregnancy”))121,409
S31 AND 244

[i] ACOG – American College of Obstetricians and Gynecologists, BMI – body mass index, CS – caesarean section, DBP – diastolic blood pressure, FGR – fetal growth restriction, GDM – gestational diabetes mellitus, HOMA-IR – homeostatic model assessment for insulin, HTN – hypertension, ICD – International Classification of Diseases, IFG – impaired fasting glucose, IGT – impaired glucose tolerance, LGA – large for gestational age, MAFLD – metabolic associated fatty liver disease, NA – not applicable, OGTT – oral glucose tolerance test, PE – pre-eclampsia, PTB – preterm birth, SBP – systolic blood pressure, SeP – selenoprotein, SGA – small for gestational age, T2DM – type 2 diabetes mellitus, TG – triglyceride, US – ultrasonography, WC – waist circumference

Eligibility criteria

We included studies if they met the following criteria: 1) the study was a cohort or case-control study, 2) the study estimated the association between the presence of MAFLD and the occurrence of adverse maternal (pregnancy-associated dysglycemia, pregnancy-associated HTN, and cesarean section [CS]) and fetal outcomes (preterm birth [PTB] and large for gestational age [LGA]), 3) the study reported odds ratios (ORs) with their respective 95% confidence intervals (CIs) or presented raw data. When the study carried out analyses with adjustment for confounding factors, we chose the adjusted over unadjusted OR. Literature was excluded in the following cases: 1) short communications, letters to the editor, conference abstracts, reviews, case reports, or cross-sectional studies, 2) desirable data could not be retrieved, 3) full-text articles were not available, 4) non-English articles.

Study quality

The risk of bias of included studies (both cohort and case-control studies) was separately assessed by two investigators using the Newcastle-Ottawa scale (NOS). Studies with a NOS score < 7 were considered to have a high risk of bias, whereas those with a score ≥ 7 were considered to have a low risk of bias.

Data extraction

The same two investigators independently extracted the following data from each study using a prespecified form which consists of author, year, study design, country, sample size, MAFLD diagnosis criteria, outcome, and adjustment used.

Statistical analysis

We estimated the impact of presence of MAFLD on maternal and fetal outcomes through pooled OR with their corresponding 95% CI. Data were pooled based on the fixed-effects or random-effects assumption. P-value < 0.05 was considered to be significant. Higgins’ I2 statistic was used to assess heterogeneity. If the value of the I2 statistic was < 50%, a fixed-effect model could be applied. Otherwise, a random-effect model could be used. We planned to assess publication bias through a funnel plot if included studies reached the minimum number of 10. An asymmetric plot could suggest publication bias. All statistical analyses were performed using Review Manager version 5.4 (The Cochrane Collaboration).

Results

Of the 296 potential records that were initially identified by the search strategy, 236 were discarded after removing duplicates and by eligibility screening of titles and abstracts. After further full-text examinations for 60 articles, six studies were considered eligible for qualitative and quantitative synthesis (Fig. 1).

Fig. 1

PRISMA flow diagram

/f/fulltexts/CEH/45183/CEH-7-45183-g001_min.jpg

Study characteristics

The baseline characteristics of the six studies are summarized in Table 2. The studies involved 20,535,994 (5,964 MAFLD) pregnant women, ranging from 476 to 18,574,225 patients in each study, originating from 4 different countries. Of 6 included studies, three studies took place in South Korea (which were derived from one big study), one study was from Sweden, and the remaining studies were from Canada and the United States. Studies were published between 2015 and 2020. Of six studies, four studies diagnosed MAFLD through US at 10-14 weeks of gestation while two studies used diagnostic codes from the national patient registry. Four studies reported the risk of pregnancy-associated dysglycemia. Three studies reported the outcome of gestational diabetes mellitus and one study reported a composite outcome of gestational diabetes mellitus (GDM) with other abnormal findings in the oral glucose tolerance test (OGTT), which were impaired fasting glucose (IFG) and impaired glucose tolerance (IGT) [7]. Three studies reported the pregnancy-associated HTN outcome. Outcomes of CS and PTB were both reported by Hagström et al. [8] and Sarkar et al. [9]. Another fetal outcome, LGA, was reported by two studies.

Table 2

Study characteristics

Author, year, study design, country, sample sizeMAFLD diagnostic criteriaOutcomeAdjustment used
De Souza, 2016 [34], cohort, Canada, 476MAFLD was diagnosed using US at 11-14 weeks of gestation. Semiquantitative scoring was used by two independent sonographers, based on the finding of (i) diffusely increased echogenic (“bright”) liver greater than the right kidney (“hepatorenal contrast”) and/or (ii) impaired visualization (blurring) of the portal and hepatic veins. Each pregnant woman was scored as “0”, “1”, or “2” according to the number of findings. MAFLD was then diagnosed if ≥ 1 finding was presentComposite outcome of IFG, IGT, or GDM at 24-28 weeks, by a fasting 75 g OGTT. IFG was defined as fasting glucose ≥ 5.3 mmol/l. IGT was defined as glucose value at 1 hour ≥ 10.6 mmol/l. GDM was defined as fasting glucose ≥ 5.3 mmol/l, glucose at 1 hour ≥ 10.6 mmol/l, and/or at 2 hour ≥ 8.9 mmol/lAge, ethnicity, first-degree relative with T2DM, BMI
Hagström, 2015 [9], case control, Sweden, 1,960,416Diagnostic code from national patient registry (K76.0 in ICD-10 and 571W in ICD-9)GDM (E10 and E11 in ICD-10 and 250A-X in ICD-9, prior to first antenatal visit), PE, CS, and PTB (gestational age ≤ 36 at delivery)NA
Data were only available as crude OR
Jung, 2020 [33], cohort, South Korea, 877US at 10-14 weeks of gestation. MAFLD was defined as the presence of a bright echogenic pattern within the liverPregnancy-associated HTN, consisting of gestational HTN, PE, or eclampsia after 20 weeks of gestation, was defined when measurement exceeded 140 mmHg or 90 mmHg for SBP and DBP, respectively. Gestational HTN was defined as HTN for the first time during pregnancy without proteinuria or end-organ damage, while PE was with end-organ damageWC, DBP at liver US, fasting glucose, and SeP
Lee, 2019 [16], cohort, South Korea, 608US at 10-14 weeks of gestation. MAFLD was defined as the presence of a bright echogenic pattern within the liverGDM was assessed using two-step approach as per ACOG recommendation. GDM was diagnosed when there were ≥ 2 elevated glucose levels (i.e. fasting glucose ≥ 5.3 mmol/l, glucose at 1 hour ≥ 10.6 mmol/l, at 2 hours ≥ 8.6 mmol/l, and at 3 hours 7.8 mmol/l)Age, history of GDM, WC, SBP, DBP, HOMA-IR, adiponectin, SeP
Lee, 2019 [26], cohort, South Korea, 623US at 10-14 weeks of gestation. MAFLD was defined as the presence of a bright echogenic pattern within the liverLGA was obtained from birth records data (birthweight > 90th percentile for gestational age)Age, GDM, pre pregnancy BMI, TG, HOMA-IR
Sarkar, 2020 [10], case control, United States, 18,574,225Diagnostic code from national databaseGDM, pregnancy-associated HTN, CS, PTB, LGA, all were obtained from national databasePregnancy-associated HTN, PTB and LGA were adjusted for age, race, multiple gestation, pre-existing diabetes, HTN, and maternal obesity
The outcome of GDM and CS was not adjusted

Quality of included studies

As seen in Table 3, the study quality ranged from 6 to 8. Five studies were considered at low risk of bias, while one was deemed to have a high risk of bias.

Table 3

Quality of included studies

StudySelectionComparabilityOutcome/exposureNOS score
De Souza, 2016 [34]3238
Hagström, 2015 [9]2136
Jung, 2020 [33]3238
Lee, 2019 [16]3238
Lee, 2019 [26]3238
Sarkar, 2020 [10]2237

[i] NOS – Newcastle-Ottawa scale

Publication bias

We could not conduct publication bias assessment through funnel plot as the number of included studies was 6.

MAFLD and maternal outcomes

Studies investigating the association between MAFLD and pregnancy-associated dysglycemia are scarce. Pooled results on presence of MAFLD and the risk of pregnancy-associated dysglycemia are shown in Figure 2. Presence of MAFLD was significantly associated with subsequent dysglycemia (pooled OR = 3.65, 95% CI = 2.47-5.39, p < 0.01). A moderate amount of heterogeneity was observed (I2 = 51%, p = 0.10).

Fig. 2

Forest plot of the association between MAFLD and pregnancy-associated dysglycemia

/f/fulltexts/CEH/45183/CEH-7-45183-g002_min.jpg

MAFLD was also significantly associated with the odds of developing pregnancy-associated HTN and CS. Pooled results on presence of MAFLD and the risk of developing pregnancy-associated HTN and CS are shown in Figure 3 and 4, respectively (pooled OR = 3.27, 95% CI = 2.75-3.88, p < 0.01 and pooled OR = 2.78, 95% CI = 1.60-4.83, p < 0.01). While no heterogeneity was observed in studies reporting pregnancy-associated HTN, a considerable amount of heterogeneity was present in CS data (I2 = 88%, p < 0.01).

Fig. 3

Forest plot of the association between MAFLD and pregnancy-associated HTN

/f/fulltexts/CEH/45183/CEH-7-45183-g003_min.jpg
Fig. 4

Forest plot of the association between MAFLD and cesarean section

/f/fulltexts/CEH/45183/CEH-7-45183-g004_min.jpg

MAFLD and fetal outcomes

Studies evaluating MAFLD and fetal outcomes are much more limited than those evaluating maternal outcomes. Two studies investigated the outcome of PTB. A significant association was found between maternal MAFLD and PTB, shown in Figure 5, with no heterogeneity (OR = 1.70, 95% CI = 1.37-2.10, I2 = 47%).

Fig. 5

Forest plot of the association between MAFLD and PTB

/f/fulltexts/CEH/45183/CEH-7-45183-g005_min.jpg

Another fetal outcome reported was LGA. Our pooled results found that MAFLD was not significantly associated with an increase odds of LGA, as shown in Figure 6 (pooled OR = 1.69, 95% CI = 0.64-4.45, I2 = 73%).

Fig. 6

Forest plot of the association between MAFLD and LGA

/f/fulltexts/CEH/45183/CEH-7-45183-g006_min.jpg

Discussion

The current research summarized the association between maternal MAFLD and adverse maternal and fetal outcomes from 6 observational studies. From our pooled results, MAFLD was significantly correlated with development of pregnancy-associated dysglycemia, pregnancy-associated HTN, CS, and PTB. However, we did not find LGA to be significantly correlated with maternal MAFLD.

The underlying mechanism of association between maternal MAFLD and subsequent dysglycemia and GDM is not fully elucidated. Obesity may be the intermediary link between MAFLD and GDM. MAFLD, with its new nomenclature, is now recognized as a metabolic syndrome that is strongly associated with obesity, a known risk factor for GDM development [10]. The presence of hepatic steatosis also indicates insulin resistance (IR), a subclinical condition which may further influence glucose metabolism derangement in seemingly healthy women during pregnancy and post-partum period [11]. Apart from obesity and IR, other mechanisms are likely to take part. A prior finding was that fat accumulation and later development of MAFLD may be the product of proinflammatory cytokines that are transported to the liver from other intra-abdominal visceral tissues [12, 13]. A 2018 Korean study found that levels of adipokines and selenoprotein (SeP) were significantly correlated with both severity of MAFLD in the first trimester and risk of GDM development. The association even persisted after adjusting for potential confounders. This indicates that adipokine and SeP may be independent predictors of GDM development in MAFLD pregnant women and may have implications for its role in screening [14]. Although statistically significant, our study had a moderate amount of heterogeneity. This might be due to the fact that MAFLD and GDM diagnosis varied across studies. Two studies used US and two others used diagnostic codes from the national patient registry. Given the low prevalence of MAFLD in 1 registry study, the possibility of undetected cases is not to be missed. GDM diagnostic methods also varied across studies. Two studies used the national registry but did not state the methods used, 1 study used the 2-step method as per the American College of Obstetricians and Gynecologists (ACOG) recommendation, and 1 study used the 75 g OGTT. There has been much discussion on what is the superior approach in screening and diagnosing GDM. While the included studies were limited, a recent meta-analysis found no significant difference in GDM incidence between the two. However, 75 g OGTT was found to be linked to better perinatal outcomes compared to the 2-step method [15].

Our study also showed a significant association between maternal MAFLD and pregnancy-associated HTN. A shifted composition of plasma monounsaturated fatty acids and a low level of linoleic acid are often present in MAFLD patients. One randomized controlled trial found that linoleic acid supplementation along with calcium possessed an ability to prevent the occurrence of preeclampsia. The association between maternal MAFLD and pregnancy-associated HTN could be explained by these findings [16]. Other proposed mechanisms are the sympathetic activation that is caused by IR and hyperinsulinemia, common among MAFLD patients, as well as vasodilation as a consequence of the dysfunction of insulin regulation. Hyperinsulinemia-induced sodium absorption may further enhance the development of HTN [17, 18].

Increased odds of adverse fetal outcomes such as PTB were noted among MAFLD pregnant women. Maternal MAFLD is linked to maternal overweight and obesity, and thus confers a higher risk of preterm delivery [19].

Large for gestational age may occur as a result of fetal overgrowth due to a surge of maternal glucose and free fatty acid release, which exists in GDM [20]. Not only may LGA complicate a delivery by the increased risk of shoulder dystocia and birth trauma, but it also potentially deranges infant metabolism through all life stages, as manifested by an increased risk of childhood MAFLD and diabetes development at a later age [21, 22]. Study by Lee et al. found that the association persisted after adjusting for GDM status, which indicates that maternal MAFLD is an independent predictor of LGA [20, 23]. However, our pooled result did not show any significant correlation between LGA and maternal MAFLD.

Because of the strong association that maternal MAFLD has with the risk of adverse maternal and fetal outcomes, an effort to detect MAFLD in pregnant women is needed. Choosing a safe tool with acceptable diagnostic accuracy for diagnosing MAFLD in pregnant women is a challenge. While liver biopsy is the gold standard for diagnosing MAFLD, its application in pregnant women with no apparent symptoms may not be justified. US has limited sensitivity and specificity for diagnosing MAFLD in obese patients, especially for a liver content below 12.5% [24]. However, given its availability and safety, it may seem to be the modality of choice for now. A US-based method, transient liver elastography (TLE), has also been studied before. While TLE has been widely recognized for its use on nonpregnant populations, primarily because of its ability to detect milder fatty liver and quantify the degree of fibrosis as opposed to US, data on pregnant women are scant [25-29]. The use of other noninvasive scores, mainly composed from blood studies, has also emerged. The fatty liver index and the hepatic steatosis index are examples of noninvasive scores used in prior studies. Clearly, it needs further validation in pregnant women [14, 23, 30].

Limitation

To the best of our knowledge, this is the first meta-analysis to quantify the association between presence of MAFLD and adverse maternal and fetal outcomes. However, our meta-analysis has some limitations. First, the number of studies was limited. Second, the methods of MAFLD diagnosis varied and could have contributed to the bias. Four studies used US, while two other studies used the national patient registry. Although substantial heterogeneity was found in a few variables, our research shows promising evidence and the urgent need to include MAFLD as a subgroup of patients who will benefit from a high-risk obstetric team’s evaluation. Further longitudinal studies with diagnostic tools other than or a combination with US, carrying better diagnostic accuracy, are warranted to elucidate the association between maternal MAFLD and adverse maternal and fetal outcomes.

Conclusions

Presence of MAFLD is associated with adverse maternal and fetal outcomes.

Disclosure

The authors declare no conflict of interest.

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