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ORIGINAL RESEARCH article

Front. Microbiol., 06 January 2026

Sec. Microorganisms in Vertebrate Digestive Systems

Volume 16 - 2025 | https://doi.org/10.3389/fmicb.2025.1679308

This article is part of the Research TopicThe Role of Gut Microbes and Their Metabolites in Metabolic Diseases: Mechanisms and Therapeutic TargetsView all 43 articles

Effects of galactooligosaccharides on maternal metabolism and the gut microbiota during pregnancy

Jiayang Wan,Jiayang Wan1,2Lin AnLin An3Zhenghong RenZhenghong Ren3Huixia Yang,
Huixia Yang1,4*Jingmei Ma,
Jingmei Ma1,4*
  • 1Department of Obstetrics and Gynecology, Peking University First Hospital, Beijing, China
  • 2Department of Gynecology, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China
  • 3Department of Maternal and Child Health, School of Public Health, Peking University, Beijing, China
  • 4Beijing Key Laboratory of Maternal Fetal Medicine of Gestational Diabetes Mellitus, Peking University First Hospital, Beijing, China

Background: The gut microbiota of pregnant women changes dynamically throughout gestation, adapting to the physiological changes of pregnancy. At the same time, dysbacteriosis is involved in the pathophysiological processes of pregnancy-related diseases. Research on gut microbiota and gestational diabetes mellitus (GDM) is relatively extensive, and targeting the gut microbiota may improve maternal health. Dietary supplements such as prebiotics improve metabolic immune function in pregnant women by stimulating the growth of beneficial bacteria and promoting the production of short-chain fatty acids (SCFAs). Previous animal studies suggest that prebiotic preparations derived from galactooligosaccharides (GOS) in human milk are superior to other prebiotics.

Objective: This study aims to explore the systemic effects of GOS targeting the gut microbiota on the levels of metabolism, immunity, and circulating SCFAs.

Materials and methods: (1) A total of 135 pregnant women with available delivery outcomes and matched BMI were included in the analysis. From the first trimester (T1), the GOS group and the control group received GOS and fructooligosaccharide (FOS) preparations, respectively. Before the intervention (T1) and after the intervention (T2), blood samples were collected from pregnant women for LC–MS metabolomic analysis and targeted detection of short-chain fatty acids. At the same time, clinical information, metabolic indicators, and the GDM incidence rate were compared between groups, and subgroup analyses were conducted for overweight and obese participants. Statistical analyses included the t-test, the nonparametric Wilcoxon test, and the χ2 test. Correlation analysis was conducted using Fisher’s exact test and Pearson’s coefficient. (2) In order to examine the correlation between targeted gut microbiota intervention and phenotypic changes, 52 pregnant women who provided stool samples before and after the intervention (i.e., T1 and T2) were analyzed. The 16S rRNA V3–V4 variable region was sequenced on the Illumina HiSeq 2,500 platform, and QIIME was used for bioinformatics analysis. The correlations among differential flora, glycolipid metabolism, inflammatory factors, and metabolites were analyzed.

Results: (1) Non-target metabolites identified several metabolites with inter-group differences: cyclamate, reserpic acid, and phenylbenzimidazole sulfonic acid were relatively higher in the GOS group. Pathway analysis indicated enrichment in butyrate, propionate, and other SCFA-related metabolic pathways, as well as in cysteine and methionine metabolism. (2) The targeted metabolites of SCFAs were further analyzed, and the effects of the intervention on SCFAs were compared. After GOS intervention, the levels of acetic acid, propionic acid, butyric acid, and hexanoic acid all increased (p < 0.01). Among overweight and obese pregnant women with GDM, GOS increased the levels of butyric acid and hexanoic acid (p < 0.05). At T2, compared with the control group, hexanoic acid levels in the GOS group increased significantly (p < 0.01). Correlation analysis with clinical glucose and lipid metabolism indices showed that hexanoic acid was negatively correlated with total cholesterol (TCHO) (r = −0.415, p < 0.001) and LDL (r = −0.347, p < 0.01). (3) The relative abundance of different flora was correlated with glycolipid metabolism indices and inflammatory factors. The relative abundance of Dorea showed a negative correlation trend with TCHO and LDL. Additionally, the relative abundance of different flora was also correlated with circulating SCFAs. The relative abundance of Dorea and Paraprevotella showed a positive correlation trend with hexanoic acid.

Conclusion: GOS preparations containing ingredients derived from human milk may target the gut microbiota to promote the production of hexanoic acid, thereby improving lipid metabolism and inflammation, and may be beneficial for overweight and obese people with GDM.

1 Introduction

The gut microbiota changes throughout pregnancy and is associated with the physiological adaptations of maternal metabolism (Koren et al., 2012). Disturbances in the gut microbiota may lead to pregnancy-related complications (Wang et al., 2020), such as gestational diabetes mellitus (GDM) (Crusell et al., 2018). Moreover, microbial metabolic potentials associated with dietary fiber fermentation have been identified as related to GDM status and host glycemic traits (Sun et al., 2023). Clinical trials have shown that dietary supplement interventions during pregnancy can improve maternal health through various mechanisms, including the regulation of lipid and glucose metabolism (Babadi et al., 2019; Kijmanawat et al., 2019). In non-pregnant populations, dietary fiber has been shown to modulate the gut microbiota and improve the pathophysiological status of patients with type 2 diabetes mellitus (T2DM) (Zhao et al., 2018). Moreover, variations in maternal diet during pregnancy can alter the gut microbial community, subsequently impacting maternal metabolic and inflammatory status (Gomez-Arango et al., 2018). Therefore, this study aims to improve maternal metabolic health by developing strategies to regulate the gut microbiota.

Currently, the main dietary supplements include prebiotics, probiotics, and other supplements. They regulate the composition and function of the gut microbiota and exert effects through various mechanisms, such as improving intestinal barrier function (La Fata et al., 2018) and regulating immune function (Vulevic et al., 2015). Although prebiotics are not digested or absorbed by the host, they can promote the metabolism and proliferation of beneficial bacteria in the body and are selectively utilized by host microorganisms for health benefits (Marco et al., 2021). Common prebiotics include galactooligosaccharides (GOS), fructooligosaccharides (FOS), inulin, and some dietary fibers (Gibson et al., 2017). FOS, a plant-based dietary fiber, has been shown to improve metabolism (Miao et al., 2022; Tang et al., 2023).

In recent years, animal experiments have shown that GOS may be superior to FOS in improving immune defense and the intestinal barrier (Wu et al., 2021). GOS has also been demonstrated to improve lipid metabolism (Cheng et al., 2018). GOS shares significant structural similarities with human milk oligosaccharides and consists of 2–8 sugar units, such as galactose and glucose. These structures help protect and promote a healthy infant gut microbiota (Barnett et al., 2023; Wang et al., 2023) and support neonatal immune function. In addition, GOS and sialylated structures can regulate epithelial barrier function by inducing cell differentiation and promoting epithelial wound repair, with distinct effects on microbial composition. Specifically, they promote the growth of Bifidobacterium and Bacteroides, respectively, resulting in characteristic changes in SCFAs (Perdijk et al., 2019).

GOS prebiotics may promote SCFA production by stimulating the growth of butyrate-producing bacteria, thereby improving the health of pregnant women (Carlson et al., 2017). Most SCFAs are absorbed by colon cells and the liver as their energy source, while others are metabolized by muscle and adipose tissue (van der Beek et al., 2015). In addition, SCFAs activate GPR41 and GPR43 on intestinal epithelial cells to participate in immune-metabolic responses (Kim et al., 2013). Meanwhile, maternal circulating levels of acetate, propionate, and butyrate are correlated with demographic factors (Wang et al., 2022). For obese pregnant women, serum SCFA levels are related to some key metabolic parameters of the mother and newborn, such as propionate, which has a protective effect (Priyadarshini et al., 2014).

Recently, the beneficial effects of GOS prebiotics in clinical applications during pregnancy remain unclear. Prebiotics may regulate the gut microbiota and promote health. This study aims to compare the effects of GOS and FOS application during the first and second trimesters in pregnant women and to explore the systemic effects of GOS targeting the gut microbiota on glucose and lipid metabolism, immunity, and circulating metabolites.

2 Materials and methods

2.1 Study participants and intervention

The study was based on a registry cohort (ChiCTR1800017192), from which 150 eligible participants were enrolled according to the inclusion and exclusion criteria. Finally, 135 pregnant women with available birth outcomes and matched BMI underwent specific omics testing, and key procedures in this study were subjected to in-depth omics analysis and clinical relevance exploration. The study was approved by the Ethics Committee of Peking University First Hospital (reference number: 164), and all patients provided informed consent. The final analysis, including the target sample size for the full registry cohort, will be reported upon the completion of the entire cohort.

The inclusion criteria were as follows: age 18–40 years; residence in Beijing; ability to understand and willingness to provide informed consent; singleton pregnancy; and attendance at the first prenatal care visit between 5 and 8 weeks of gestation. The exclusion criteria were as follows: smoking, excessive alcohol consumption or drug abuse; pregnancy complicated by chronic diseases such as pre-existing diabetes, impaired glucose tolerance, impaired fasting glucose, or chronic hypertension; use of any prescribed chronic medications; and steroid use.

Eligible female participants were randomly assigned in a 1:1 ratio to either the GOS group or the control group. The randomization process, which was stratified by four BMI categories (underweight, normal weight, overweight, and obese), was conducted using the ‘H6WORLD’ platform to generate and implement the allocation sequence. A double-blind design was maintained throughout the trial for both participants and investigators. From T1 to T2, patients in the GOS group took the GOS supplement, and patients in the control group took preparations containing FOS; the dose of the supplement was 60 g/day. The GOS group mainly consisted of GOS (6 g/100 g) and sialic acid (3 g/100 g). The control group mainly included FOS (3 g/100 g). The purity of GOS and FOS in the dry matter was 90 and 93% (w/w), respectively. The dietary supplements were provided by Beijing Sanyuan Foods Co., Ltd., Beijing, China.

2.2 Sample collection

The samples were collected by well-trained staff in accordance with standard operating procedures. Blood samples were collected during the first trimester (T1) and the second trimester (T2). Maternal fasting blood was drawn using blood collection tubes and centrifuged at 4000 rpm for 20 min to prepare plasma. At the same time, stool samples were collected at T1 and T2 and placed in sterile tubes. The plasma and stool samples were stored at −80 °C until analysis.

2.3 Anthropometrics and biochemical assessment

Clinical information was collected from the medical record system for pregnant women, such as maternal age, pre-pregnancy weight, pre-pregnancy BMI (p-BMI), blood pressure, last menstrual period, and weight gain. The incidence of GDM by the second trimester was calculated from the results of the 75-g oral glucose tolerance test (OGTT) performed at 24–28 weeks of gestation (Metzger et al., 2010).

Several biochemical indicators were also collected and measured at our hospital, such as white blood cell count (WBC), neutrophil count (NEU), blood glucose levels, blood lipid levels (including triglyceride (TG), total cholesterol (TCHO), high-density lipoprotein (HDL), and low-density lipoprotein (LDL)), and interleukin-6 (IL-6).

2.4 Metabolome analysis of LC–MS

For quality control (QC) sample preparation, we combined equal volumes of the prepared samples into a single large sample, then divided it into 17 QC samples to monitor the instrument’s precision and stability. Before sampling, 3 QC samples were used to assess instrument precision, and 1 QC sample was collected every 10 samples to assess instrument stability. The stability of the analysis was confirmed by the high degree of overlap in the total ion chromatograms (TICs) of all QC samples (Supplementary Figure S1).

Metabolites in plasma were measured. Briefly, to extract metabolites from plasma samples, 400 μL of cold extraction solvent (methanol/acetonitrile/H2O, 2:2:1, v/v/v) was added to 100 μL of the sample, and the mixture was vortexed. After vortexing, the samples were incubated on ice for 20 min and then centrifuged at 14,000 g for 20 min at 4 °C. The supernatant was collected and dried in a vacuum centrifuge at 4 °C. For LC–MS analysis, the samples were redissolved in 100 μL of acetonitrile/water (1:1, v/v) and transferred to LC vials.

Analyses were performed using ultra-high performance liquid chromatography (UHPLC) Ultimate 3,000 coupled with high-resolution mass spectrometry Q Active HF-X (Thermo Fisher Scientific, USA) using a chromatographic column (HSS T3 100 * 2.1 mm, 1.8 μm, Waters). The mobile phase in positive-ion mode consisted of water containing 0.1% formic acid (solution A) and 100% methanol containing 0.1% formic acid (solution B). In negative-ion mode, the mobile phase comprised water containing 0.05% acetic acid (solution C) and methanol containing 0.05% acetic acid (solution D). The chromatographic gradient is detailed in Supplementary Table S1. The flow rate was 0.3 mL/min, the column temperature was maintained at 40 °C, and the injection volume was 3 μL. The mass spectrometry parameter conditions are shown in Supplementary Table S2.

For data acquisition and processing, the raw MS data were converted to a universal (abf) format using the AnalysisBase File Converter software before being imported into the available MSDIAL software. During the metabolite screening period, the p-values obtained from the univariate statistical test (t-test) for comparing metabolite levels between groups were corrected using the Benjamini-Hochberg procedure.

2.5 Measurement of SCFAs by GC–MS

The content of SCFAs in plasma was determined qualitatively and quantitatively. Gas chromatography–mass spectrometry (GC/MS; Agilent 7890A GC-FID) was used to characterize the SCFAs in plasma. The GC was fitted with a capillary column (Agilent DB-FFAP, 30 m × 0.25 mm × 0.25 μm), and helium was used as the carrier gas at 5 mL/min. Injection was performed in split mode at 5:1, with an injection volume of 1 μL and an injector temperature of 250 °C (Zhang et al., 2019). Samples were thawed at 4 °C and vortex-mixed thoroughly. Approximately 0.1 g of sodium chloride was weighed into a 1.5 mL centrifuge tube, followed by the addition of 200 μL of the sample, 8 μL of internal standard, and 20 μL of 50% concentrated sulfuric acid. After vortexing for 10 s, 200 μL of anhydrous ether was added, and the mixture was vortexed for 1 min. Subsequently, the mixture was centrifuged at 13,000 rpm for 5 min, and 80 μL of the supernatant was collected for analysis. All data were processed using FID Chem Station (G1701EA.02.00.493) and ACD/Spectrum Processor 2015 (S30S41) software.

2.6 DNA extraction and 16S rRNA gene sequencing

To assess the correlation between targeted intervention on gut microbiota and phenotype, fecal samples collected from 52 pregnant women before and after the intervention (i.e., T1 and T2) were analyzed. Fecal DNA was extracted using a commercial kit (Qiagen, Hilden, Germany). PCR amplification of fecal DNA was performed using 16S amplicon PCR forward primers and 16S amplicon PCR reverse primers. After PCR amplification, the amplicons in each library were purified using Qiagen to prepare the library. Subsequently, the qualified library was sequenced using the Illumina HiSeq 2,500 high-throughput sequencing platform. The UCLUST algorithm was used to compare operational taxonomic units (OTUs) at 97% identity, and the Greengenes 16S rRNA database was used for taxonomic classification of 16S rRNA gene sequences. The paired read segments were merged with Flash software, with a maximum mismatch rate of 10% and an overlap length of at least 10 bases. Alpha and beta diversities were generated in Quantitative Insights Into Microbial Ecology (QIIME).

2.7 Statistical analysis

Data were presented as mean ± standard deviation (SD) or count (n (%)). Statistical analyses were carried out using SPSS (version 25.0). GraphPad Prism (version 8.0) was used to draw diagrams. The chi-squared test and Fisher’s exact test were applied for categorical variables, and the t-test or the non-parametric Wilcoxon test was used for continuous variables where appropriate. Pearson’s coefficient was used for correlation analysis. A p-value of < 0.05 was considered to be statistically significant.

3 Results

3.1 Participants and clinical characteristics

A total of 150 pregnant women who met the inclusion and exclusion criteria were randomly assigned to two groups, with three cases assigned to the GOS group and 12 to the control group. A total of 135 pregnant women were included in the study analysis, including 72 in the GOS group and 63 in the control group. The flow of participants and analyses through the study is shown in Supplementary Figure S2. The clinical baseline T1 values before maternal intervention are summarized in Table 1. There was no significant difference in clinical characteristics, including age, pre-pregnancy weight, p-BMI, and blood pressure before intervention (p > 0.05), and the two groups were comparable.

Table 1
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Table 1. Baseline clinical characteristics of study participants.

3.2 Changes in body weight and BMI from T1 to T2

As gestational age progressed, the weight gain of two groups of pregnant women from T1 to T2 was recorded, and changes in BMI were calculated (Table 2). There was no significant difference in gestational weight gain or BMI increase between the GOS and control groups (p > 0.05).

Table 2
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Table 2. Changes in body weight and BMI.

3.3 Changes in glucose, lipid metabolism, and inflammatory indicators

The study analyzed changes in glucose and lipid metabolism, as well as inflammatory markers, in pregnant women from T1 to T2, both before and after the intervention (Tables 3, 4). There was a significant difference in HDL levels between the two groups at T2 after the intervention (1.73 ± 0.33 mmol/L vs. 1.61 ± 0.32 mmol/L; p < 0.05), with HDL levels increasing after the GOS intervention.

Table 3
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Table 3. Glucose, lipid metabolism, and inflammatory indicators before the intervention.

Table 4
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Table 4. Glucose, lipid metabolism, and inflammatory markers following intervention.

3.4 Diagnosis of GDM and changes in biochemical indicators in the two groups

During 24–28 weeks of pregnancy, fasting blood glucose (GLU 0 h), 1-h (GLU 1 h), and 2-h (GLU 2 h) blood glucose levels were measured using an oral glucose tolerance test (OGTT) to determine whether GDM was diagnosed. The results showed that 26 pregnant women in the GOS group were diagnosed with GDM, while 22 pregnant women in the control group were diagnosed with GDM (Table 5).

Table 5
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Table 5. GDM diagnosis and OGTT values of the GOS group and the control group.

The glucose, lipid metabolism, and inflammatory indicators (WBC, NEU) of the two groups diagnosed with GDM during T2 are listed in Table 6. The results showed that, although there was no statistically significant difference (p > 0.05) in glucose, lipid metabolism, and inflammation indicators between the two groups, the GOS group showed a trend of improvement compared to the control group. For example, there was a slight decreasing trend in GLU 0 h (5.07 ± 0.57 mmol/L vs. 5.35 ± 0.66 mmol/L) and GLU 1 h (9.89 ± 1.67 mmol/L vs. 10.28 ± 1.74 mmol/L) levels.

Table 6
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Table 6. Clinical and biochemical status of two groups diagnosed with GDM.

3.5 GDM diagnosis and biochemical indicators in overweight and obese pregnant women

Further analysis was conducted on overweight and obese pregnant women in the GOS group and control group, with the aim of exploring the effects of intervention on specific populations. Under comparable baseline conditions, for overweight and obese pregnant women, the incidence of GDM in the GOS group showed a certain decreasing trend compared to the control group (38.9% vs. 66.7%; p = 0.095) (Table 7).

Table 7
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Table 7. Clinical and GDM diagnosis of overweight and obese pregnant women in two groups.

The study analyzed the biochemical indicators of pregnant women diagnosed with GDM in two groups: overweight and obese individuals. Among overweight and obese individuals diagnosed with GDM, GOS intervention showed a decreasing trend in inflammatory markers, such as IL-6 (0.98 ± 0.39 vs. 1.24 ± 0.29; p = 0.111) (Table 8).

Table 8
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Table 8. Clinical and biochemical markers in overweight and obese pregnant women diagnosed with GDM.

3.6 Differential metabolite analysis

To identify differential metabolites between the two groups, a Partial Least Squares-Discriminant Analysis (PLS-DA)-based Variable Importance in Projection (VIP) plot was used to assess variable importance and their contributions to sample differentiation (Figure 1). The top 15 differential metabolites listed in the figure include perfluorooctanoic acid, cyclamate, dehydroabietic acid, and others. In the GOS group, the relative concentrations of cyclamate, reserpic acid, and phenylbenzimidazole sulfonic acid were relatively high.

Figure 1
Plot displaying VIP scores for various compounds on the x-axis, with scores ranging from 2.0 to 4.5. Compounds listed include Perfluorooctan and Irbesartan. Right side features a heatmap with three categories: Control, T2, and GOS-T2, indicating levels from blue (low) to red (high).

Figure 1. Differential metabolite analysis based on PLS-DA. Variables with VIP values greater than 1 show significant differences; the higher the VIP value, the greater its contribution to sample differentiation. The color coding on the right indicates metabolite concentrations across different groups.

3.7 Metabolic pathway analysis

Pathway analysis of the two groups of samples revealed 49 metabolic pathways (Figure 2). Specific results for some relevant metabolic pathways identified are also listed (Supplementary Table S3). Differential metabolic pathways with smaller p-values and larger Pathway-Impact values were selected. Possible metabolic pathways observed in plasma samples included butanoate metabolism, propanoate metabolism, and cysteine and methionine metabolism (p < 0.05).

Figure 2
Scatter plot illustrating the relationship between pathway impact and negative logarithm of the p-value. Each circle represents a pathway, sized by impact and colored from yellow to red indicating intensity. Notable pathways include hsa00591 and hsa00360 with significant impact and lower p-values.

Figure 2. Metabolic pathway analysis. The pathway impact value along the horizontal coordinate represents the influence of the metabolic pathway, and the larger the -log(p) value in the vertical coordinate, the smaller the p value and the higher the significance. The size and color of the circle are positively correlated with these two indices above.

Butyrate in metabolic pathways identified three metabolites: (R)-3-hydroxybutyric acid, pyruvic acid, and succinic acid. Two distinct metabolites, 2-ketobutyric acid and succinic acid, were identified in the propionate metabolic pathway. The cysteine and methionine metabolic pathways identified three metabolites: 2-ketobutyric acid, pyruvate, and S-adenosylhomocysteine. Furthermore, we observed that in the enriched butanoate metabolism and propanoate metabolism pathways, most of their intermediates were detected as increased in the GOS group, suggesting that these pathways might be upregulated in the GOS group.

3.8 The content levels and changes of circulating SCFAs

The levels of circulating SCFAs were measured during pregnancy following the intervention. Four types of SCFAs were detected in plasma samples during pregnancy: acetic acid, propionic acid, butyric acid, and hexanoic acid. The content of SCFAs in T1 samples was tested (Supplementary Figure S3), and the content in T2 samples increased compared to T1 samples. The T2 levels of SCFAs in the GOS and control groups differed. Compared with the control group, the levels of acetic acid and hexanoic acid in the GOS group were significantly higher (p < 0.01). The levels of propionic acid and butyric acid in the GOS group showed a non-significant increase (p > 0.05). The levels of SCFAs in the two groups during mid-pregnancy are shown in Figure 3.

Figure 3
Bar charts labeled A to D compare the concentration of different acids between GOS and Control groups. Panel A shows Acetic acid with a significant difference, favoring GOS. Panel B displays Propionic acid with no significant difference. Panel C shows Butyric acid, and Panel D, Hexanoic acid, also showing a significant difference favoring GOS. Concentrations are measured in micrograms per milliliter.

Figure 3. SCFA content levels in T2. (A–D) The circulating levels of acetic acid, propionic acid, butyric acid, and hexanoic acid in the GOS and control groups in T2.

We continued to analyze the changes in maternal circulation SCFAs before and after intervention (T1 to T2) in both groups (Figure 4). The results showed that circulating SCFA levels increased after GOS intervention, with significant increases in acetic acid, propionic acid, butyric acid, and hexanoic acid (p < 0.01), indicating that GOS intervention can increase circulating SCFA levels.

Figure 4
Bar graphs compare concentrations of four acids: acetic, propionic, butyric, and hexanoic in two conditions, GOS and Control, across two time points, T1 and T2. Panels A-D show higher concentrations at T2 for GOS. Panels E-H show similar trends for the Control. Data are presented in micrograms per milliliter, with noted significant differences.

Figure 4. Changes in SCFA content levels in two groups before and after intervention. (A–D) The circulating levels of acetic acid, propionic acid, butyric acid, and hexanoic acid in the GOS group at T1 and T2. (E–H) The circulating levels of acetic acid, propionic acid, butyric acid, and hexanoic acid in the control group at T1 and T2.

To investigate changes in circulating SCFA levels after intervention in specific populations, the following analysis was conducted (Supplementary Figure S4). Among overweight and obese pregnant women diagnosed with GDM, the levels of SCFAs in the GOS and control groups were numerically increased after the intervention. Compared with before the intervention, the levels of acetic acid, butyric acid, and hexanoic acid in the control group increased significantly (p < 0.01), and the levels of butyric acid and hexanoic acid in the GOS group increased significantly (p < 0.05).

3.9 Correlation analysis of circulating SCFAs and lipid metabolism

In T2, acetic acid, butyric acid, and hexanoic acid were associated with some lipid metabolism-related indicators (Figure 5). Acetic acid was negatively correlated with TCHO (r = −0.312, p = 0.008) and LDL (r = −0.301, p = 0.010) (Figures 5A,D). Butyric acid showed a negative correlation with both TCHO (r = −0.376, p = 0.001) and LDL (r = −0.328, p = 0.005) (Figures 5B,E). Hexanoic acid was also associated with the two lipid metabolism indicators mentioned above, specifically negatively correlated with TCHO (r = −0.415, p = 0.0003) and LDL (r = −0.347, p = 0.003) (Figures 5C,F). In T2, compared with the control group, the lipid metabolism indicators in the GOS intervention group showed a stronger correlation with SCFA content.

Figure 5
Scatter plots illustrating correlations between types of acids and cholesterol levels in two groups: Control (blue dots) and GOS (red squares). Panels A-C show total cholesterol (TCHO) against acetic, butyric, and hexanoic acids. Panels D-F display LDL cholesterol against the same acids. Correlation coefficients and p-values indicate significant negative correlations for all plots, with stronger correlations for hexanoic acid.

Figure 5. Correlation analysis of acetic acid, butyric acid, and hexanoic acid content levels and lipid metabolism indexes in T2. (A,D) The associations between acetic acid and TCHO or LDL in either group. (B,E) The associations between butyric acid and TCHO or LDL in either group. (C,F) The associations between hexanoic acid and TCHO or LDL in either group.

3.10 Association of glycolipid metabolism, inflammatory factors, and circulating SCFAs with microbiome

The overall microbial structure and changes in alpha and beta diversity of the gut microbiota in the GOS and control groups have been described in detail in previous studies (Wan et al., 2023). In order to explore the relationship between changes in gut microbiota, glucose and lipid metabolism indicators, and levels of inflammatory factors, the abundance of differential flora in T2 was analyzed for correlation with glucose metabolism indicators (GLU 0 h, GLU 1 h, GLU 2 h, and HbA1c), lipid metabolism indicators (TG, TCHO, HDL, and LDL), and inflammatory factor IL-6 (Figure 6). The heat map showed no significant differences among the three bacteria and the various indicators. The relative abundance of Dorea showed a negative correlation with TCHO and LDL. Further correlation analysis was performed between the abundance of bacteria at the genus level after intervention and the indices of glycolipid metabolism and inflammatory factors (Supplementary Figure S5). The correlation analysis of the above biochemical indicators and omics data suggested that the relative abundance and functions of different bacterial species may affect the levels of glucose and lipid metabolism indicators and inflammatory factors at the genus level.

Figure 6
Heatmap showing correlations between different variables and three bacterial genera: Dorea, Paraprevotella, and Lachnospiraceae.UCG.001. The color scale ranges from blue (-0.25) indicating negative correlation to red (0.25) for positive correlation. Columns represent LDL, TCHO, HDL, GLU_0h, GLU_1h, TG, HbA1c, GLU_2h, and IL_6. Clustering is observed among variables with related correlation patterns.

Figure 6. The correlation between the abundance of differential flora and glycolipid metabolism, and inflammatory factors in T2. The correlation heatmap between the abundance of differential flora and LDL, TCHO, HDL, TG, GLU 0 h, GLU 1 h, GLU 2 h, HbA1c, and IL-6. Red squares and blue squares indicate positive and negative associations, respectively.

To investigate the relationship between changes in gut microbiota and circulating SCFAs, a correlation analysis was conducted between the abundance of differential flora in T2 and SCFAs (acetic acid, propionic acid, butyric acid, and hexanoic acid) (Figure 7). The heat map showed no significant difference among the three bacteria and the SCFAs. The relative abundance of Dorea and Paraprevotella showed a certain positive correlation with hexanoic acid, while the relative abundance of Dorea showed a certain positive correlation with butyric acid. Further correlation analysis was performed between bacterial abundance at the genus level in T2 after intervention and circulating SCFAs (Supplementary Figure S6). The above metabolomic and microbiomic association analyses suggested that GOS prebiotics with breast milk-derived components may promote SCFA production by targeting the gut microbiota, thereby improving lipid metabolism and inflammation and benefiting pregnant women’s health.

Figure 7
Heatmap showing correlations between three bacterial genera (Dorea, Paraprevotella, Lachnospiraceae.UCG.001) and four organic acids (acetic, propionic, butyric, hexanoic). Colors range from blue (negative correlation) to red (positive correlation), with a scale from -0.05 to 0.2.

Figure 7. The correlation between the abundance of differential flora and SCFAs in T2. The correlation heatmap between the abundance of differential flora and acetic acid, propionic acid, butyric acid, and hexanoic acid. Red squares and blue squares indicate positive and negative associations, respectively.

4 Discussion

In this study, a comparative analysis was conducted between the GOS group and the control group diagnosed with GDM. Although no statistically significant differences were observed in glucose, lipid metabolism, or inflammation indicators between the two groups, the GOS group showed a slight downward trend in fasting blood glucose and 1-h blood glucose compared with the control group. A clinical study also found that taking probiotic supplements for 6 weeks in GDM patients was beneficial for blood sugar control, TG, and VLDL levels (Karamali et al., 2016). Further analysis of overweight and obese pregnant women in the GOS group and control group showed that compared to the control group, the incidence of GDM in the GOS group showed a certain downward trend. Weight and other high-risk pregnancy conditions may be the factors that affect dietary supplementation and the effectiveness of GDM prevention. Dietary interventions containing prebiotics may promote weight loss in obese patients by regulating specific gut microbiota. Compared with the placebo group, the prebiotic group showed specific changes in gut microbiota composition, increasing levels of Bifidobacterium (B. bifidum, B. longum subs. Longum, B. adolescentis) (Hiel et al., 2020). Having GDM may affect the sensitivity of pregnant women’s gut microbiota, limiting their ability to respond to dietary regulation. Overweight and obese pregnant women without GDM may benefit from a diet targeting the microbiota (Mokkala et al., 2021). The clinical application of dietary supplements in high-risk pregnant women with overweight and obesity needs further exploration.

This study continued to examine the effects of prebiotic interventions on some metabolites, using LC–MS for metabolite analysis. Based on the VIP values of the PLS-DA model, we identified differential metabolites between the GOS and control groups. In the GOS group, cyclamate, reserpinic acid, and phenylbenzimidazole sulfonic acid were relatively high, which may be metabolites that distinguish the two and contribute to sample differentiation. Based on the metabolic changes in the two groups of samples, pathway analysis was carried out, which may involve butyrate, propionate, cysteine, and methionine metabolism. Among them, butyrate was the main energy source for intestinal epithelial cells and the main substrate for metabolic reactions (Bamberger et al., 2018). It promoted the growth of intestinal epithelial cells, enhanced epithelial barrier function, and prevented “intestinal leakage” and GDM (Hasain et al., 2020). Butyrate may be closely related to most clinical information of pregnancy and has an anti-diabetic effect. Based on preliminary non-targeted metabolomics results, targeted detection of SCFA-related metabolites was conducted.

Given that approximately 95% of colon SCFAs are absorbed into the bloodstream and are related to metabolic health, the concentration of SCFAs in maternal circulation was measured (Müller et al., 2019). Our study observed an increase in SCFA levels after intervention, with significant increases in acetic acid and hexanoic acid levels in the GOS group compared to the control group. Usually, prebiotic supplements may have beneficial effects on health by stimulating beneficial bacteria and SCFAs, such as improving the intestinal environment, and the produced SCFAs may reduce lumen pH while preventing the growth of some pathogens (Ríos-Covián et al., 2016). Meanwhile, SCFAs may activate GPR41/43 in intestinal epithelial cells, promoting protective immune production (Kim et al., 2013). In addition, prebiotic intake selectively modulated Bifidobacteria and decreased SCFA concentrations in obese women (Salazar et al., 2014). Furthermore, the association between SCFAs and some clinical indicators was determined. Some SCFAs, such as acetic acid, butyric acid, and hexanoic acid, were negatively correlated with TCHO and LDL lipid metabolism indicators, respectively, which may be related to feedback regulation during metabolic imbalance. Different SCFAs may play distinct roles; for example, acetic acid and propionic acid act in opposite ways in adipogenesis and liver cholesterol production (Weitkunat et al., 2016). Furthermore, future research should better include concurrent measurement of fecal and serum SCFAs to fully reveal the causal pathway from dietary intervention to bacterial activity to systemic host effects.

Dietary supplements, such as prebiotics, may improve maternal health by stimulating the growth of beneficial bacteria and promoting the production of SCFAs. Moreover, GOS regulates gut microbiota, plasma immunoglobulins, and offspring gut microbiota, promoting growth and development (Wu et al., 2021). Specific microbiota can also serve as targets for early diagnosis and treatment interventions in pregnancy diseases (Pinto et al., 2023). The correlation analysis of differential microbiota with lipid metabolism and circulating SCFA metabolites suggested that the relative abundance of Dorea was negatively correlated with TCHO and LDL, while the relative abundance of Dorea and Paraprevotella was positively correlated with hexanoic acid. Paraprevotella is a butyrate-producing bacterium, and Dorea is an SCFA-producing bacterium (Graf et al., 2019). A previous study showed a negative correlation between the abundance of Paraprevotella and serum TG levels (Yang et al., 2023). GOS prebiotics, with breast milk-derived components, may promote the production of SCFAs such as hexanoic acid by targeting the gut microbiota, thereby improving lipid metabolism. Furthermore, PICRUSt2 is a reliable metabolic prediction tool and should be used further (Douglas et al., 2020). In future research, we will use PICRUSt2 to infer the abundance of key metabolic pathways, including KEGG and MetaCyc pathways, identify enzyme families, and predict functional traits encoded by the gut microbiota. By integrating these predicted functional profiles with our existing metabolomics and clinical data, we will be better positioned to build a more comprehensive understanding of microbiome-host interactions.

Several limitations of our study should be considered. Although we collected self-reported data on lifestyle, diet, and physical activity, the variability and subjective nature of this information precluded its use as a reliable covariate in our core analyses. Future investigations with prospectively designed and quantitatively rigorous assessments of these confounders are warranted to confirm our findings. Future research should aim to incorporate more precise and comprehensive measures of lifestyle and environmental exposures (Zhang et al., 2024). Specifically, the use of validated food-frequency questionnaires, accelerometry for physical activity, and detailed assessments of other lifestyle factors would be invaluable for controlling for potential confounding and elucidating the independent effects of the microbial and metabolic pathways identified in this study.

5 Conclusion

GOS preparations containing ingredients derived from human milk may target the gut microbiota to promote the production of hexanoic acid, thereby improving lipid metabolism and inflammation, and may be beneficial for overweight and obese people with GDM.

Data availability statement

The authors confirm that the data supporting the findings of this study are available within the article and its Supplementary materials. The datasets generated or analyzed during the current study are available in the NCBI database, SRA data (Accession number: PRJNA925813).

Ethics statement

The studies involving humans were approved by the Ethics Committee of Peking University First Hospital. The studies were conducted in accordance with the local legislation and institutional requirements. The participants provided their written informed consent to participate in this study.

Author contributions

JW: Formal analysis, Investigation, Writing – original draft. LA: Data curation, Methodology, Writing – review & editing. ZR: Software, Visualization, Writing – review & editing. HY: Project administration, Supervision, Writing – review & editing. JM: Funding acquisition, Project administration, Writing – review & editing, Supervision.

Funding

The author(s) declared that financial support was received for this work and/or its publication. This work was supported by the Beijing Natural Science Foundation (No. S170002) and the National Key Technologies R&D program of China (No. 2016YFC1000303).

Acknowledgments

The authors would like to thank all the participants in this study and their families for their understanding and cooperation. We thank the staff of the Department of Obstetrics and Gynecology of Peking University First Hospital for their help in this study.

Conflict of interest

The author(s) declared that this work was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Generative AI statement

The author(s) declared that Generative AI was not used in the creation of this manuscript.

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Supplementary material

The Supplementary material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fmicb.2025.1679308/full#supplementary-material

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Keywords: metabolism, short chain fatty acids, gut microbiota, pregnancy, galactooligosaccharides, gestational diabetes mellitus

Citation: Wan J, An L, Ren Z, Yang H and Ma J (2026) Effects of galactooligosaccharides on maternal metabolism and the gut microbiota during pregnancy. Front. Microbiol. 16:1679308. doi: 10.3389/fmicb.2025.1679308

Received: 04 August 2025; Revised: 17 November 2025; Accepted: 24 November 2025;
Published: 06 January 2026.

Edited by:

Yan Liu, Southwest University, China

Reviewed by:

Deepak Chouhan, The Forsyth Institute, United States
Zhenhua Li, Brigham and Women's Hospital and Harvard Medical School, United States
Mohammad Jaffar, Batterjee Medical College, Saudi Arabia

Copyright © 2026 Wan, An, Ren, Yang and Ma. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Huixia Yang, eWFuZ2h1aXhpYUBiam11LmVkdS5jbg==; Jingmei Ma, amluZ21laW1hQGJqbXUuZWR1LmNu

Disclaimer: All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.