Autism spectrum disorder is characterized by persistent deficits in social interactions and communication combined with restricted, repetitive patterns of behaviors, interests, and activities1. The estimated male to female ratio of ASD is 4–5:1, and the reported prevalence of ASD is 14.6/1,000 in children at eight years of age2. ASD imposes a heavy healthy and economic burden on autistic individuals, their families and society. It is well accepted that both genetic and environmental factors contribute to the etiology of ASD3,4.

Emerging evidence indicates that the composition of the gut microbiota and microbial metabolites are altered in a wide range of diseases, including ASD5. The human gut harbors trillions of microorganisms and contains approximately 1014 bacterial genes that belong to approximately 1,000 species6. The gut microbiota communicates with the central nervous system (CNS) through endocrine, immune, metabolic and neural pathways7. Communication occurs via a complex bidirectional system known as the “microbiome-gut-brain axis”, which plays an important role in physiology, brain development, immune and metabolic homeostasis8. Disturbance of the microbiome-gut-brain axis may be associated with the pathogenesis of ASD.

Short-chain fatty acids (SCFAs) are the functional and vital components in the microbiome-gut-brain axis. SCFAs mainly consist of acetic acid (AA), propionic acid (PPA), butyrate (BTA) and valeric acid (VA). It is reported that PPA disturbs GI function in a manner similar to the abnormalities in ASD9. Butyrate inhibits histone deacetylases, suppresses intestinal pro-inflammatory macrophage function10, and regulates the blood-brain barrier (BBB) and gut permeability11, which are altered in ASD12. However, the published data on fecal SCFAs in autism are inconsistent.

Cumulative evidence demonstrates that gastrointestinal (GI) disorders are common comorbidities in autistic children. GI symptoms, such as constipation, abdominal pain, diarrhea and flatulence, have a close relationship with ASD13. Furthermore, Adams suggested that GI problems are associated with the severity of autism14. Campbell revealed genetic evidence supporting the association between GI disorders and ASD15. However, it has not been determined which GI symptoms are associated with autistic children.

Additionally, the composition of the gut microbiota and its association with fecal SCFAs and GI symptoms in autistic children remain largely unknown. In this study, we sequenced the V3-V4 hypervariable regions of the bacterial 16S ribosomal RNA gene, detected fecal SCFAs and assessed the GI symptoms of autistic and neurotypical children to better understand the role of the gut microbiota in ASD.


The ASD group has a higher incidence of constipation than the NT group

The mean age of autistic and neurotypical children was 4.43 ± 1.47 and 4.28 ± 1.00 years, respectively (P = 0.177). The sex ratio (boys to girls) of autistic subjects was 25:5 (indicating a male gender bias in autism) and was 16:4 for neurotypical children. There were eight children (26.67%) with a moderate level of constipation and one child (3.33%) with a severe level of constipation out of 30 autistic subjects. Constipation was significantly higher in autistic subjects than that in neurotypical subjects (only 1 out of 20 normal subjects had a moderate level of constipation) (P < 0.05). None of the patients suffered from diarrhea or abdominal pain. We found no significant differences between autistic and neurotypical subjects in regard to the average stool consistency, stool smell and flatulence. In addition, there was no significant difference in the total GI scores between the two groups (Table 1).

Table 1 Characteristics and GI symptom scores of participants.

Fecal levels of SCFAs in the ASD group distinctly vary from those in the NT group

The concentrations of acetic acid, propionic acid, butyric acid and valeric acid in feces are shown in Fig. 1. The acetic acid level was significantly decreased in autistic subjects (732.4 ± 229.8) compared with that in neurotypical controls (899.9 ± 204.4, P = 0.011). No significant differences were found in the levels of propionic acid between the two groups (P = 0.243). Compared with neurotypical children (563.3 ± 186.7), the butyrate concentration was significantly decreased in autistic children (413.2 ± 172.3, P = 0.005). However, the level of valeric acid in autistic children (1,646.9 ± 451.3) was markedly higher than those in neurotypical participants (615.8 ± 221.0, P < 0.001).

Figure 1
figure 1

Fecal levels of short-chain fatty acids in participants. AA: acetic acid, PPA: propionic acid, BTA: butyrate, VA: valeric acid. Values are expressed as the mean ± SD, *p < 0.05 vs NT group; **p < 0.01 vs NT group.

Autistic subjects harbor an altered composition of the gut microbiota

We obtained 1,922,441 sequences and 838,859,484 bases from 50 samples with an average of 38,449 sequences per sample. The analysis of alpha diversity revealed no significant differences using SOBS, Chao and ACE (reflecting species richness). However, the scores of the Shannon (Fig. 2a) and Shannoneven (Fig. 2b) indexes regarding the OTU levels in autistic samples decreased compared to those in neurotypical controls, suggesting that autistic children had less species diversity and evenness. Moreover, we performed principal coordinated analysis of beta diversity of the weighted UniFrac distance on the OTU data (Fig. 2c). The results revealed that the overall composition of the ASD gut microbiota was different from that of the NT gut microbiota.

Figure 2
figure 2

Gut microbiota diversity in ASD and NT subjects. (a) Alpha diversity based on the Shannon index of the OTU level (b) Alpha diversity based on the Shannoneven index of the OTU level. (c) PCoA of beta diversity based on the weighted UniFrac analysis of the OTU level. Autistic and neurotypical subjects are colored in red and green, respectively. *p < 0.05 vs NT group.

We assessed the mean relative abundances of the taxa in ASD and NT to discriminant the specific alterations of the microbiota. At the phylum level, Firmicutes were significantly decreased in ASD (51.91%) compared to those in NT (58.82%), whereas Acidobacteria were considerably increased in ASD (0.01143%) compared to those in NT (0.00351%) (Fig. 3a). At the family level, there were no significant differences regarding the abundance of Bacteroidaceae, the most abundant family in the two groups. Furthermore, we observed six bacterial taxa that displayed different abundances between the two groups. Veillonellaceae and Enterobacteriaceae were enriched in autistic samples, whereas Ruminococcaceae, Streptococcaceae, Peptostreptococcaceae and Erysipelotrichaceae were significantly decreased in ASD with respect to those in NT (Fig. 3b).

Figure 3
figure 3

Abundances of taxa in ASD and NT participants. The mean relative abundances of taxa at the phylum (a) and family (b) levels in ASD and NT participants. Red and green bars indicate the mean relative abundances of taxa in autistic and neurotypical subjects, respectively. *p < 0.05 vs NT group; **p < 0.01 vs NT group.

LEfSe was used to detect significant alterations in the bacterial composition associated with ASD and NT16. ASD subjects showed a significant increase in Acidobacteria, Enterobacteriaceae and Pseudomonadaceae apart from Firmicutes. The results also revealed a specific association between Ruminococcaceae and Peptostreptococcaceae within the order of Clostridiales in NT subjects. Regarding the order of Lactobacillales, Enterococcaceae and Streptococcaceae were overrepresented in ASD and NT subjects, respectively. In addition, there were a significant increase of the taxa Veillonellaceae and a significant decrease of Erysipelotrichaceae in ASD subjects compared to those in NT subjects. Furthermore, Megamonas was enriched in ASD subjects, whereas Eubacterium and Lachnospiraceae-NC2004-group were enriched in NT subjects at the genus level (Fig. 4).

Figure 4
figure 4

Differentially abundant bacterial taxa associated with the ASD and NT groups according to LEfSe analysis. The Cladogram generated by the LEfSe (from phylum to family level) and LDA scores (genus level) identify differentially abundant bacterial taxa associated with ASD and NT subjects. (a) Red and green dots indicate the bacterial taxa enriched in ASD and NT subjects, respectively. (b) Enriched bacterial taxa in ASD have positive LDA scores (red), and NT enriched bacterial taxa have negative scores (green). Only the taxa having an LDA > 2.0 are shown in the figure.

Correlation of the gut microbiota with SCFAs

Spearman correlation was used to associate the differentially abundant taxa with the fecal levels of SCFAs at the family level (shown in Fig. 5). Acidobacteria (significantly increased in ASD, rs = 0.349, P = 0.013) and Actinomycetaceae (rs = 0.298, P = 0.036) were positively correlated with valeric acid. Streptococcaceae (rs = 0.368, P = 0.009), Peptostreptococcaceae (rs = 0.378, P = 0.007), Lactobacillaceae (rs = 0.467, P = 0.001) and Clostridiaceae_1 (rs = 0.441, P = 0.001), which were enriched in NT subjects, had a strong positive correlation with butyrate. In addition, we also observed a positive correlation between Family_XIII (rs = 0.281, P = 0.048), Leuconostocaceae (rs = 0.321, P = 0.023) and butyrate. Desulfovibrionaceae (rs = 0.295, P = 0.038) and Streptococcaceae (rs = 0.281, P = 0.048) were highly correlated with propionic acid. Moreover, Desulfovibrionaceae (rs = 0.36, P = 0.01) was also positively correlated with the level of acetic acid.

Figure 5
figure 5

Correlation of the gut microbiota with the levels of fecal SCFAs. The heatmap shows the correlation coefficient between bacterial taxa and the level of fecal SCFAs at the family level. *p < 0.05; **p < 0.01.

Constipation alters the composition of the gut microbiota in ASD

Constipation was the significant GI symptom in ASD among the 6 GI symptoms evaluated in our study and is often reported as a common comorbidity in ASD. Considering the single constipated NT sample, which showed no statistical significance, we further compared the composition of the gut microbiota among constipated (ASD-C), non-constipated autistic (ASD-NC) and non-constipated neurotypical subjects (NT-NC). The species richness and diversity computed by analysis of alpha diversity did not show any significant differences among these three groups. When using the weighted UniFrac distances to calculate beta diversity, it was revealed that the microbiota of ASD-C deviated from those of ASD-NC and NT-NC (Fig. 6a). Order level analysis showed that Clostridiales, Lactobacillales, and Erysipelotrichales were represented in NT subjects and Fusobacteriales was represented in ASD-C subjects (Fig. 6b). We further analyzed genera with differentially abundant gene expression in ASD-C, ASD-NC and NT-NC samples using LEfSe. The results revealed a specific association of Fusobacterium, Barnesiella, Coprobacter, Olsenella, Allisonella and Actinomycetaceae with ASD-C subjects. Holdemanella was overrepresented in ASD-NC subjects compared to that in ASD-C and NT-NC subjects. The NT-NC microbiome was characterized by a preponderance of Eubacterium_rectale_group, Streptococcus, Butyricicoccus, Eubacterium_ventriosum_group, Propionibacterium and Lachnospiraceae-NC2004-group (Fig. 6c).

Figure 6
figure 6

Constipation alters the composition of the gut microbiota in ASD. (a) PCoA of beta diversity based on the weighted UniFrac analysis on the OTU level among ASD-C, ASD-NC and NT-NC subjects. (b) The mean relative abundances of taxa at the order level in ASD-C, ASD-NC and NT-NC participants. (c) LDA scores indicate differentially abundant bacterial taxa associated with ASD-C, ASD-NC and NT-NC subjects (only the taxa having an LDA > 2.0 are shown in the figure). Blue, red and green bars indicate the bacterial taxa enriched in ASD-C, ASD-NC and NT-NC subjects, respectively. *p < 0.05 vs NT group; **p < 0.01 vs NT group.


Several studies have noted alterations in the composition of the gut microbiota in ASD patients compared with neurotypical individuals. In the present study, we found less species diversity and evenness in autistic children and the overall structure of the gut microbiota compared with NT children. The results are similar to the study conducted by Kang17. Several studies demonstrate a significant increase in Firmicutes and a lower abundance of Bacteroidetes, resulting in an increased Firmicutes/Bacteroidetes ratio in autism spectrum disorder. We observed a considerable reduction of Firmicutes and a small proportion of the Clostridium genus in autistic children, consistent with the study of Finegold18. More specifically, Ruminococcaceae, Peptostreptococcaceae, Lactobacillales, Streptococcaceae, Eubacterium and Lachnospiraceae-NC2004-group were reduced within the phylum of Firmicutes in autistic subjects. A positive correlation between these bacteria and the fecal concentration of butyrate was determined in our study. Butyrate is mainly produced by anaerobic microbes from the fermentation of host-indigestible carbohydrates via the acetyl-coenzyme A (AcCoA) pathway19. Most butyrate-producing bacteria belong to Clostridium clusters IV and XIVa, including Ruminococcaceae, Lachnospiraceae, Butyricicoccus and Eubacterium_rectale_group20,21. Other Clostridium clusters also produce butyrate, including clusters I and XVI. However, these clusters produce lower levels of butyrate in comparison with Clostridium clusters IV and XIVa22,23. Moreover, Hakalehto reports that Lactobacilli contributes to the growth of butyrate-producing clostridia24. Apart from Firmicutes, we found that Erysipelotrichaceae was highly decreased in ASD, and Estaki indicated that Erysipelotrichaceae is also a key butyrate-produce member25.

Our data also showed a decrease in the fecal butyrate levels in ASD subjects. Butyrate is one of the major metabolites of the gut microbiome and regulates the activities of the microbiome-gut-brain axis. Butyrate regulates the integrity of gut barrier functions. Peng found that butyrate regulated AMP-activated protein kinase to reorganize and upregulate the expression of tight junction-associated protein26. Huang reported that butyrate, acting as a histone deacetylase-1 (HDAC-1) inhibitor, restored the intestinal epithelial barrier function by regulating the TWIK-related potassium channel-1 (Trek-1)27. Butyrate can strengthen mucosal immunity by its anti-inflammatory potential. In addition, a previous study indicates that butyrate restores BBB permeability by increasing histone acetylation and the expression of tight junction proteins28. Moreover, Kartsman discovered that the treatment with butyrate could regulate social behavior in an autism mouse model. Together, our results and the information mentioned above demonstrate that butyrate can regulate the activities of the gut-brain axis in ASD via specific transporters/receptors, regulating immune system and as an HDAC inhibitor.

We also observed increases in the abundance of taxa in the autistic group, including Acidobacteria, Enterobacteriaceae, Pseudomonadaceae, Veillonellaceae and Megamonas. Acidobacteria was positively correlated with valeric acid, leading to an increase in the fecal levels of valeric acid. Consistent with our research, a higher level of valeric acid has also been reported in ASD children29. It seems that valeric acid is another critical factor in autism, although its physiological functions are less reported regard to regulating the activities of the microbiome-gut-brain axis. Further studies on this point are needed. Enterobacteriaceae and Pseudomonadaceae are facultative anaerobic or aerobic fermentative Gram-negative bacilli. Most of these bacilli are opportunistic pathogens. Enterobacteriaceae overgrow in most inflammation models30. Enterobacteriaceae or their components (lipopolysaccharides) induce inflammation, aggravate intestinal injury and increase intestinal permeability, hypersensitivity, constipation and IBS31. Translocation of lipopolysaccharides into the blood can cause neuroinflammation and increase the BBB permeability. Lipopolysaccharides are associated with neurological disorders, such as major depression and Parkinson’s disease32. De Angelis also revealed an elevated abundance of Enterobacteriaceae in autistic children33.

The results of previous studies on fecal SCFAs are inconsistent in autism. Lower concentrations of SCFAs were reported in children with ASD by Adams14. In contrast to their study, Wang reported elevated SCFAs in autistic children29. This inconsistency might be due to the specific alteration of the gut microbiota in different populations and the technical or samples preparation differences in the different studies. Our results showed lower concentrations of fecal AA and BTA and a higher concentration of fecal VA in ASD individuals. The level of fecal SCFAs was mainly determined by the amount of SCFA producing bacteria and complex carbohydrates in the diet. In our study, all subjects had a normal diet. The lower levels of fecal BTA and higher levels of fecal VA are probably due to the variance of BTA-producing and VA-producing bacteria. We also found lower levels of fecal AA and a positive correlation between Desulfovibrionaceae and AA in ASD. Acetate is produced by various types of bacteria, including Bacteroides, Bifidobacterium and Prevotella34. Acetic acid promotes cholesterol synthesis in the liver. PPA is mainly produced by Clostridia, Desulfovibrio, Propionibacterium and Bacteroides35. We found that Desulfovibrionaceae and Streptococcaceae were positively correlated with PPA. PPA can induce ASD-like behaviors through intracerebroventricular and intraventricular administration36,37. PPA induces impaired social behavior through regulating neurotransmitters, such as dopamine38. We did not find a significant alteration of fecal PPA in autistic subjects in our study, probably due to ethnic and dietary structure difference in Chinese children compared to others.

Despite the report of constipation, diarrhea, abdominal pain, flatulence and other GI disorders in ASD patients by other researchers, we only observed that constipation was significantly increased in the ASD group compared to that in the control group. Holingue indicates that constipation is the most prevalent GI symptom in ASD39. We found enriched Fusobacterium, Barnesiella, Coprobacter and valeric acid-associated bacteria (Actinomycetaceae) and reduced butyrate-producing taxa in ASD-C subjects, suggesting that constipation has a notable effect on the gut microbial composition within ASD subjects.

In summary, constipation is the GI comorbidity in ASD children in our study. We observed a shifted gut microbiota and its association with fecal SCFAs in ASD individuals. Therapeutic strategies that modulate the gut microbiota and SCFAs, especially butyrate-producing bacteria, may have potential to relieve ASD and GI-related symptoms in ASD.

Materials and Methods

Study participants

We recruited 30 (2.5–18 years old) autistic subjects (ASD) from the Fifth and Third Affiliated Hospital of Zhengzhou University. Twenty age- and sex-matched healthy volunteers were accepted as neurotypical controls (NT). The diagnosis of autism was established according to DSM-V (Diagnostic and Statistical Manual of Mental Disorders, 5th Edition)1 and ICD-10 (International Statistics Classification of Diseases and Related Health Problems, 10th Revision)40 by two experienced child neuropsychiatrists. Neurotypical controls were typically developing children, without an autism diagnosis and not directly related to an autistic individual. The exclusion criteria included a history of nutritional supplements and special diets, presence of significant physical abnormalities, and neurological disorders of known etiology. Participants in this study were not treated with antibiotics, antifungals, probiotics or prebiotics for at least three months before sampling. All methods were carried out in accordance with the relevant guidelines and regulations. All experimental protocols were approved by the Ethical Committee of the Fifth Affiliated Hospital of Zhengzhou University (No. 2016-1001). Informed written constent was obtained from the parents and/or legal guardians of the enrolled participants.

Severity scales of GI symptoms

Gastrointestinal symptoms were assessed following a modified version of the 6-GI Severity Index14, including constipation, diarrhea, average stool consistency, stool smell, flatulence and abdominal pain.

Fecal sample collection

Fecal samples were collected and transported to our laboratory for processing within 30 minutes. The 200 mg stool was preserved in fecal bacteria DNA storage tubes (Tinygene Biological Company, China) and stored at −80 °C for 16S rRNA sequencing. The 600 mg stool was preserved in sterile tubes and immediately frozen at −80 °C for further SCFA analysis.

Fecal SCFA analysis

The short-chain fatty acids were extracted as described previously41. Briefly, 300 mg stool was homogenized with 1 ml ddH2O and centrifuged at 12,000 g for 10 min. The supernatant was homogenized with 100 μl concentrated HCl and subsequently extracted for 20 min using 5 ml of diethyl ether. After centrifugation (3,500 rpm, 10 min), we mixed the organic phase with 500 μl NaOH (1 M). Then, the organic phase was extracted and centrifuged again. The aqueous phase was mixed with 100 μl concentrated HCl and filtered through a 0.22 μm filter. A high-performance liquid chromatography system (HPLC, Waters Alliance e2695, Milford, USA) with a UV detector (Waters 2468, Milford, USA) was used with a Venusil ASB C18 (4.6 × 250 mm, 5 μm, China) column at a flow rate of 1 ml/min at 210 nm and 30 °C. The mobile phase consisted of 0.01% H3PO4 in HPLC-grade water (A) and methanol (B). All samples were evaluated in duplicate.

DNA extraction and amplification of the V3-V4 region of the bacterial 16S rRNA gene

Microbial DNA was extracted from 200 mg fecal samples using the QIAamp Fast DNA Stool Mini Kit (QIAamp, California, USA). The final DNA concentration and purity were detected by a NanoDrop 2000 UV (Thermo Scientific, Wilmington, USA). We amplified the bacterial 16S rRNA gene using primers specific for the V3-V4 hypervariable regions (338 F: 5′-ACTCCTACGGGAGGCAGCAG-3′ and 806 R: 5′-GGACTACHVGGGTWTCTAAT-3′) in a thermocycler PCR system (GeneAmp 9700, ABI, USA). The amplicons were extracted and further purified using the AxyPrep DNA Gel Extraction Kit (Axygen Biosciences, Union City, CA, USA) and quantified with a QuantiFluor™-ST (Promega, USA) following the manufacturer’s instructions.

Illumina MiSeq sequencing

The sequencing data were pooled equimolarly and paired-end sequenced (2 × 300) on an Illumina MiSeq platform (Illumina, San Diego, USA) according to the standard protocols by Majorbio Bio-Pharm Technology Co. Ltd. (Shanghai, China). The raw reads were deposited in the NCBI Sequence Read Archive (SRA) database. Raw fastq files were demultiplexed and quality-filtered by Trimmomatic. The reads were merged by FLASH as described previously42. Operational taxonomic units (OTUs) were clustered with a 97% similarity cutoff using UPARSE (version 7.1, and chimeric sequences were identified and removed using UCHIME. The taxonomy of each 16S rRNA gene sequence was analyzed by the RDP Classifier algorithm ( against the Silva (SSU123) 16S rRNA database using a confidence threshold of 70%43.

Bioinformatic analysis

All sequencing data were computed using the R package (V.2.15.3). Rarefaction was applied to the OTUs to reduce sampling heterogeneity for further alpha and beta diversity calculations. Principal coordinates analysis (PCoA) was used to assess species composition dissimilarity by the weighted UniFrac. The linear discriminant analysis effect size (LEfSe), an algorithm for high-dimensional biomarker discovery, was computed to identify differentially abundant taxa between two groups. The linear discriminant analysis (LDA) effect size (LEfSe) method was used to estimate the effect of each differentially-abundant taxon and discriminate the most biological one16. The Wilcoxon rank-sum test (for two groups) or Kruskal-Wallis test (for more than two groups) was used for comparisons. Additionally, Spearman correlation was used to associate abundant differential taxa with SCFAs.

Statistical analysis

Other data were analyzed using SPSS20.0 software (IBM Corp., Armonk, N.Y., USA). Comparison of data between autistic and neurotypical subjects was conducted using Student’s t-test (qualitative data, equal variance), Welch’s t-test (qualitative data, unknown variance) or the Chi-square test (qualitative data). Data are presented as the mean ± SD. Significance was set at 0.05.