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Human follicular fluid proteome reveals association between overweight status and oocyte maturation abnormality

Abstract

Background

Human follicular fluid (HFF), which is composed by essential proteins required for the follicle development, provides an important microenvironment for oocyte maturation. Recently, overweight status has been considered as a detrimental impact factor on oocyte maturation, but whether HFF proteome could provide protein markers for assessing overweight-based oocyte maturation deficiency is still unknown.

Methods

To reveal the HFF-based molecular characteristics associated with abnormal oocyte maturation, an iTRAQ-based comparative proteomic analysis was performed to investigate different HFF protein expression profiles from normal weight women and overweight status women.

Results

Two hundred HFF proteins were quantified in our data, of which 43% have not been overlapped by two previous publications. Compared with the HFF proteins of normal weight women, 22 up-regulated HFF proteins and 21 down-regulated HFF proteins were found in the overweight status women. PANTHER database showed these altered HFF proteins participated in development, metabolism, immunity, and coagulation, and STRING database demonstrated their complicated interaction networks. The confidence of proteomic outcome was verified by Western blot analysis of WAP four-disulfide core domain protein 2 (WFDC2), lactotransferrin (LTF), prostate-specific antigen (KLK3), fibronectin (FN1), and glyceraldehyde 3-phosphate dehydrogenase (GAPDH). Further, ELISA assay indicated WFDC2 might be a potentially useful candidate HFF marker for the diagnosis of oocyte maturation arrest caused by overweight status.

Conclusions

Our work provided a new complementary high-confidence HFF dataset involved in oocyte maturation, and these altered HFF proteins might have clinical relevance and diagnostic and prognostic value for abnormal oocyte maturation in overweight status women.

Introduction

Infertility remains a rising worldwide problem, characterized by the failure to achieving clinical pregnancy after 12 months of regular attempts of natural fertilization. About 9% of reproductive-aged couples (186 million people) suffer from childlessness, of which male and female factors approximately contribute equally to infertility [1]. Unfortunately, in some developing countries, infertility is still a massive social burden for women due to limited access to the help of assisted reproductive technology (ARTs) [2,3,4]. Lots of factors are associated with female infertility, such as polycystic ovary syndrome (PCOS), endometriosis, anovulation, and tubal, uterine, endocrine, paracrine, and unexplained factors. Recently, overweight status has been considered to have a detrimental impact on female reproductive health, which involves disorder of the ‘hypothalamic-pituitary-ovarian axis’. Consequently, these dysfunctional female gonads negatively influence oocyte development and hormone secretion, leading to ovulatory dysfunction and female infertility [5, 6].

Human follicular fluid (HFF) provides a special and ideal microenvironment for oocyte maturation, composed of steroid hormones, metabolites and proteins, which are required for follicle development and oocyte maturation [7,8,9]. Importantly, HFF can be easily obtained during the aspiration of oocytes from follicle in the procedure of in vitro fertilization (IVF), which facilitates it to be as a useful source for the biomarker screening for oocyte maturation [10]. Proteomic technology has been applied to explore key molecules for the better understanding of the physiological processes involved in follicle development and oocyte maturation. Two-dimensional gel electrophoresis has been carried out to explore the differential HFF proteins between younger and older women. As a result, some HFF proteins including complement C3, C4, and serotransferrin showed significant changes in the aged group [11]. Ambekar et al. has applied SDS-PAGE, OFFGEL fractionation, and SCX-based approach combined with LC–MS/MS to identify 480 HFF proteins for monitoring oocyte and embryo quality [12]. Lewandowska et al. further used a SWATH-MS methodology of ultrafiltration, optional immunodepletion, and high pH RP-HPLC separation coupled by spectral libraries to quantify 108 HFF proteins and 250 peptides in all tests [13].

Previously, we have adopted a proteomic approach of dual RP-HPLC combined with LC-MALDI TOF/TOF mass spectrometry to investigate the HFF protein profile. A total of 219 unique high-confidence HFF proteins (FDR < 0.01) were successfully identified, which were associated with various molecular functions, such as immunity, complement and coagulation cascade, and transportation, and participated in the implicated interaction networks [14]. Considering the overweight status as a risk factor for women infertility [15], we performed a retrospective cohort research in 411 non-PCOS women patients undergoing their first IVF-embryo transplantation (IVF-ET) treatment. The results indicated that overweight status negatively affected oocyte maturation [16].

Up to now, it is still unknown about the relationship between oocyte maturation arrest and the alteration of HFF protein composition in overweight status women. Therefore, in the present work, we further applied an integrative proteomic approach of iTRAQ labeling, dual RP-HPLC separation and MALDI mass spectrometry identification to deeply explore the differential HFF proteins related to oocyte maturation between the normal weight women and overweight status women undergoing IVF treatment. Therefore, this study will not only facilitate to discover the important proteins influencing the process of oocyte maturation, but also resolve the complicated interaction networks of these altered molecules, which will profile potential biomarkers for the screening of HFF proteins associated with oocyte maturation.

Materials and methods

Study subjects and sample collection

For the recruitment of female patients, the causes of infertility were simple tubal factor, age was no more than 38 years, the concentration of serum FSH was less than 12 mIU/mL, the ovulation stimulation underwent the long protocol, and the patients were treated with their first egg retrieval cycle. Exclusion criteria included endocrine diseases, polycystic ovary syndrome, endometriosis, receiving intracytoplasmic sperm injection-embryo transfer (ICSI-ET), and chromosomal abnormalities. Referring to the WHO criteria [17], the recruited patients were divided into the normal weight group (18.5 ≤ BMI ≤ 24.9 kg/m2) and the overweight status group (BMI ≥ 25 kg/m2) (Table 1). According to previous method [18], HFF samples were collected when the oocytes were aspirated under the guidance of trans-vaginal ultrasound. The resultant HFF samples were clear and without the contamination of the flushing medium. After centrifugation at 10,000×g for 30 min at 4 °C, the concentrations of cell debris-free HFF samples was determined by the Bradford method [19]. This work has been approved by the Ethics Committee of Beijing BaoDao Obstetrics and Gynecology Hospital, and written informed consents were obtained from all participants.

Table 1 Clinical characteristics of study participants

iTRAQ labeling of the HFF proteins from normal weight and overweight status women

According to the previous method [20], equal amounts of HFF samples from 20 normal weight women, and 20 overweight status women were pooled. The resultant pools from the normal weight and overweight status women were respectively divided into two tubes (100 μg protein each tube), and the pH was adjusted to 8.5. The pools were treated with 20 mM dithiothreitol (DTT) at 56 °C for 60 min, and 50 mM iodoacetamide (IAA) in the dark for 30 min. Consequently, the samples were digested by trypsin (sequencing grade, Promega, France) (W/W, 1:50 enzyme/protein) at 37 °C overnight. The resultant peptides were tagged by iTRAQ reagents, and then a SPD2010 SpeedVac concentrator system (Thermo, North Carolina, USA) was used to dry the labeling peptides for further analysis.

First dimension high pH RP-HPLC

The first dimension RP-HPLC separation was carried out using a PF-2D RP-HPLC System (Beckman Coulter, Inc., Fullerton, CA, USA) with a Durashell RP column (5 µm, 150 Å, 250 mm × 4.6 mm i.d., Agela). A 65-min eluent gradient was developed by mobile phase A (2% acetonitrile, adjusted pH to 10.0 using NH3.H20) and B (98% acetonitrile, adjusted pH to 10.0 using NH3.H20) at a flow rate of 0.8 mL/min. A total of 20 eluent fractions were collected for the next fractionation.

Second dimension low pH RP-HPLC combined with the determination of MALDI mass spectrometry

The above fractionations were dried by a SPD2010 SpeedVac concentrator system (Thermo, North Carolina, USA) and re-dissolved in 30 μL of buffer A (0.1% (v/v) formic acid, 2% (v/v) acetonitrile in water). The resultant peptides were eluted by a C18 AQ 150 × 0.2 mm column (3 μm, Michrom, USA) using a 90-min linear gradient formed by buffer A (2% acetonitrile, 0.1% formic acid) and buffer B (98% acetonitrile, 0.1% formic acid) at a flow rate of 0.5 μL/min. At the same time, each fraction was mixed with α-Cyano-4-hydroxycinnamic acid matrix solution (5 mg/mL in 70% acetonitrile, 0.1% trifluoroacetic acid) at a flow rate of 2 μL/min pushed by additional syringe pump and spotted on the MALDI plate using the Tempo™ LC-MALDI Spotting System (AB SCIEX, USA). As a result, 616 spots per fraction were spotted on a 123 × 81 mm LC-MALDI plate and determined by a MALDI-TOF/TOF 5800 mass spectrometer (AB SCIEX, USA). The full-scan m/z range of MS data acquisition was from 800 to 4000, and the top 40 ions were selected for the further analyzation by MS/MS.

Identification and quantification of differential HFF proteins between the normal weight and overweight status women

The spectra of HFF proteins were analyzed by the ProteinPilot™ software (version 4.0.1, AB SCIEX) using a reviewed UniProtKB/Swiss-Prot database (20,316 sequences, 2018_02 released). Meanwhile, a decoy database (programmed in the ProteinPilot™ software) was applied to ensure the data quality (FDR < 0.01). The searching parameters were as following: iTRAQ 4plex mode, trypsin enzyme, maximum allowed missed cleavages 1, and carbamidomethyl cysteine. The HFF protein abundances were calculated by all quantified labeled peptides through the areas of the monoisotopic peaks. The statistical alteration of HFF proteins with a confidence interval of 99% (p value < 0.01) was determined by the average ratio of four pairs (116:114, 117:114, 116:115, and 117:115) in two repeat experiments.

Bioinformatics analysis

The altered HFF proteins were classified by the online databases PANTHER (Protein ANalysis THrough Evolutionary Relationships) (released 13.1, 2018-02-03) (http://pantherdb.org/) and DAVID (The Database for Annotation, Visualization and Integrated Discovery) (released 6.8, 2016-10) (https://david.ncifcrf.gov/), and the literatures from PubMed (https://www.ncbi.nlm.nih.gov/pubmed). Each HFF protein was categorized into only one classification. The protein–protein interaction network was established by the STRING (search tool for recurring instances of neighboring genes) database (released 10.5, 2017-05-14).

Western blot analysis

After separation of 50 μg protein of each HFF sample by a 12% SDS-PAGE gel, the resultant proteins were electronically transferred onto a nitrocellulose membrane. Further, 5% (w/v) skimmed milk was used to block the above membrane at 37 °C for 1 h, and the primary antibodies (WAP four-disulfide core domain protein 2 (WFDC2), ab109298, Abcam, Cambridge, USA; lactotransferrin (LTF), ab109000, Abcam, Cambridge, USA; Prostate-specific antigen (KLK3), ab76113, Abcam, Cambridge, USA; Fibronectin (FN1), ab32419, Abcam, Cambridge, USA; glyceraldehyde 3-phosphate dehydrogenase (GAPDH), 60004-1-Ig, Proteintech Group Chicago, USA) were respectively added for incubation at 4 °C overnight. The resultant membranes were washed with TBST for three times, and then incubated with horse-radish peroxidase-conjugated secondary antibody (diluted 1:5000, Zhong-Shan Biotechnology, Beijing, China) at room temperature for 1 h. The enhanced chemiluminescence detection reagents (Pierce, Rockford, IL, USA) was used to visualize the immunoreactive proteins.

Validation by ELISA

Follicular Fluid proteins were further validated with HFF samples from 25 normal weight women and 25 overweight status women. Concentrations of WFDC2 in fivefold diluted HFF samples were measured by commercial ELISA kit (Li su (Shanghai) Biotechnology Co., Ltd, China) referring to the manufacture’s protocol. Protein concentrations were calculated by comparing the optical density of samples at 450 nm wavelength with the standard curve using a microplate spectrophotometer (Multiskan FC, Thermo scientific).

Results

Comparative analysis of HFF proteins between the normal weight and overweight status women

Figure 1 indicated representative images of a matured oocyte and an immature oocyte, and the flowchart of iTRAQ-based proteomic analysis of HFF proteins from the normal weight and overweight status women. Totally, 200 HFF proteins were identified and quantified using the ProteinPilot™ software to search against the reviewed Swiss-Prot human database (20,316 sequences, 2018_02 released) with a high confidence (FDR < 0.01) (Additional file 1: Table S1). Compared with the HFF proteins of normal-weight women, 22 HFF proteins were up-regulated (ratiooverweight status/normal weight > 1.380, p < 0.01) (Table 2), and 21 HFF proteins were down-regulated (ratiooverweight status/normal weight < 0.658, p < 0.01) (Table 3) in the overweight status women. Figure 2 showed the representative MS/MS spectrum of differential iTRAQ-labelled peptide noted with most b-ions and y-ions.

Fig. 1
figure 1

Experimental workflow of iTRAQ-based HFF proteomic study of the normal and the overweight status women. Equal amounts of HFF proteins from 20 normal-weight women and 20 overweight status women were pooled, digested by trypsin, and labelled by iTRAQ labels. After the labeled samples were separated by a pH 10.0 and a pH 3.0 reversed phase chromatography, the resultant fractions were spotted on the MALDI plates. Then, the peptides were sequenced by the 5800 MALDI-TOF/TOF mass spectrometry, and the quantification of HFF proteins were performed by the software of Protein pilot (version 4.0)

Table 2 Higher abundant HFF proteins in overweight status women (n = 22)
Table 3 Lower abundant HFF proteins in overweight status women (n = 21)
Fig. 2
figure 2

Representative spectrum of differential HFF protein sequenced by 5800 MALDI TOF/TOF mass spectrometry. The left column were MS/MS maps with protein identifications in the table blow. The right maps represented the ions labelled by iTRAQ reagent

Bioinformatics analysis of the HFF proteome

Referring to the PANTHER, DAVID and PubMed databases, 43 altered HFF proteins were classified into GO categories (molecular function, subcellular localization, and biological process). Each HFF protein was place into only one classification (Fig. 3). In the molecular function category, the majority of the higher abundance HFF proteins in the overweight status women was related to binding function (Fig. 3a), whereas most lower abundance HFF proteins in the overweight status women were involved in binding and oxidoreductase activity (Fig. 3d). Regarding subcellular localization, the major higher abundance HFF proteins in the overweight status women were located in extracellular region (Fig. 3b), whereas the main locations of the lower abundance HFF proteins in the overweight status women were cytoplasm and extracellular region (Fig. 3e). Regarding biological process, the main higher abundance HFF proteins in the overweight status women was involved in developmental process and metabolic process (Fig. 3c), whereas the prevalent processes of the lower abundance HFF proteins in the overweight status women were response to stimulus and immune system process (Fig. 3f).

Fig. 3
figure 3

Pie diagrams of GO classifications of higher abundance HFF proteins (ac) and lower abundance HFF proteins (df) in the overweight status women. a, d are molecular functions, b, e are subcellular localizations, and c, f are biological processes

A protein–protein interaction network was retrieved from the STRING database. Among the higher abundance HFF proteins of the overweight status women, 19 altered HFF proteins were in connection with other proteins, leading to 34 paired relationships (PPI enrichment p < 1.0e−16) (Fig. 4a), whereas among the lower abundance HFF proteins of the overweight status women, 12 altered HFF proteins were in connection with other proteins, leading to 15 paired relationships (PPI enrichment p = 0.000116) (Fig. 4b).

Fig. 4
figure 4

Representative protein–protein interaction networks of the higher abundance HFF proteins (a) and lower abundance HFF proteins (b) in the overweight status women. The relationships were derived from the curated databases, experimentally determined, gene neighborhood, gene fusions, gene co-occurrence, textmining, co-expression, and protein homology

Comparison of present HFF proteome and previous HFF proteomes

To display the overlap of the HFF proteomes among different research datasets, the previously reported HFF proteomic datasets with high data quality (FDR < 1%) [13, 14] were selected to compare with our HFF proteome (Fig. 5). The results indicated that 57% of HFF proteins in our data were included in either of the two previous HFF datasets, whereas only 33% of HFF proteins were common in all three HFF datasets. The overlap showed the complementarity among the differential labs.

Fig. 5
figure 5

Venn diagram of the overlaps of the present work and the other two HFF proteomes 13, 18]

Western blotting analysis and ELISA assay

To verify the confidence of the proteome data, the expression patterns of four HFF proteins (FN1, GAPDH, KLK3, and WFDC2) from 20 normal weight women and 20 overweight status women were analyzed by Western blot (Fig. 6a). The results indicated that the levels of the four proteins were consistent with the proteomic result. ELISA was used to detect the levels of WFDC2 in HFF of 25 normal weight women and 25 overweight status women. The result showed that WFDC2 protein level was elevated in the HFF of overweight status women (33.1 ± 1.6 pmol/L) compared with that of normal weight women (28.8 ± 1.3 pmol/L) (p = 0.0484). ROC curve analysis showed that the AUC was 0.7 to distinguish the overweight status women from the normal weight women, with a sensitivity of 64% and a specificity of 72% (Fig. 6b). This result indicated that WFDC2 could be a potential candidate HFF marker for the diagnosis of oocyte maturation arrest of the overweight status women with a relatively higher sensitivity.

Fig. 6
figure 6

Representative western blot analyses of four altered HFF proteins and validation of the expression of upregulated protein WAP four-disulfide core domain protein 2 (WFDC2) by ELISA. a The expressions of WAP four-disulfide core domain protein 2 (WFDC2), lactotransferrin (LTF), Prostate-specific antigen (KLK3), Fibronectin (FN1), and glyceraldehyde 3-phosphate dehydrogenase (GAPDH) were confirmed by western blot. Asterisk denoted a statistically significant difference between the two groups; a WFDC2 concentration in the follicular fluid samples of 25 normal weight women and 25 overweight status women. ROC curve of WFDC2 distinguished the normal weight and overweight status women

Discussion

Recently, the detrimental effect of overweight status on female reproductive health has received increasing attention, which is widely associated with anovulation, hormone disorders, conception delay, high miscarriage risk, and adverse IVF outcomes, and abnormal oocyte differentiation and maturation. In our previous retrospective cohort study of 411 non-PCOS female patients undergoing their first IVF-ET treatment, overweight status women had statistically significantly lower number of mature oocytes, fertilization rate, blast formation rate and embryo implantation rate than those of the normal-weight women [16]. Further, in order to better understand folliculogenesis in the ovary, we had applied a proteomic method to investigate the molecular compositions of HFF surrounding the ovum which provides a special milieu for the development of follicle and the maturation of oocytes, and then identified the HFF proteins associated with oocyte maturation and successful IVF outcome [14]. Therefore, we hypothesized that the alteration of HFF proteins of overweight status women might contribute to their poor oocyte quality. To avoid the influence of hormone disorders and subfertility caused by PCOS, the HFF samples from simple overweight status women without PCOS were recruited in this present work.

Ambekar et al. has used three different prefractionations coupled with LC–MS/MS to identify 480 HFF proteins with the FDR < 0.01 [12]. Recently, Lewandowska et al. has applied ultrafiltration, optional immunodepletion, and high pH RP-HPLC fractionation combined with SWATH-MS to explore the proteomic and peptidomic composition of HFF [13]. Compared with above two HFF proteomes, a total of 57% HFF proteins were identical to the previously reported pool of HFF proteins, which not only validated the good quality of their data, but also provide a new complementary dataset related to folliculogenesis and oocyte maturation to facilitate the integration of the HFF data generated from different MS platform in the future.

Follicle development has been considered controlled by inflammatory response [21]. In our previous report [14], 17 components involved in coagulation cascade and 21 components associated with complement cascade were identified, which were important for the oocyte maturation [21,22,23]. In the present study, complement component C9 and coagulation factor XII were down-regulated in the overweight status women. C9 has been considered involved in the inhibition of complement cascade activity in IVF-treated women with controlled ovarian stimulation [24]. Coagulation factor XII could activate the classical complement pathway through the cleavage of C1 [25]. Contrary to the above, Girardi considered that inhibition of complement activation could improve angiogenesis failure and rescue pregnancies [26]. How these cascade components affect the oocyte maturation remains to be further explored. Angiogenesis is an important process that provide enough nutrients to support follicle maturation and HFF formation [27]. Angiotensinogen and FN1 were both important angiogenic factors. The former was down-regulated, and the latter was up-regulated in the HFF from the overweight status women. This implicated angiogenesis deficiency in overweight women, which might lead to improper corpus luteum formation, and inadequate degradation of fibronectins causing the impediment of follicle wall expansion. Though KLK3 has kallikrein-related protease activity that catalyzes clot dissolution [28] and was up-regulated in the HFF from the overweight status women, it still could not efficiently degrade FN1 [29]. Compared with the HFF proteome of PCOS women [18], the alteration of HFF proteins associated with complement coagulation cascade and angiogenesis showed characteristic difference in the non-PCOS women. More researches are still needed in the future.

HFF-mediated communications between oocyte and follicular cells facilitate follicle development and oocyte maturation. In the process of follicle enlargement, the accumulation of laminin in the basal lamina is essential for the prediction of developmental competence of oocytes [30, 31]. Basement membrane-specific heparan sulfate proteoglycan core protein (HSPG2) is an integral component of basement membranes, and participates in the formation of basal lamina by intertwining with some extracellular matrix proteins. In the present work, HSPG2 was down-regulated and extracellular matrix protein 1 (ECM1) was up-regulated in overweight status women, indicating their potential adverse influence on normal follicle development.

WFDC2, also named human epididymis protein 4 (HE4) [32], has recently been found overexpressed in serous and endometrioid epithelial ovarian carcinomas [33]. Sandow et al. also suggested that WFDC2 might be a novel biomarker for ovarian cancer [34]. In the present work, WFDC2 was also found up-regulated in the HFF from the overweight status women. Meanwhile, ELISA assay indicated WFDC2 could distinguish the HFF of the normal-weight women from the HFF of the overweight status women with a relatively higher sensitivity. Therefore, WFDC2 might be a candidate HFF marker for the diagnosis of abnormal oocyte maturation in the overweight status women. Despite all this, more researches are still needed to further evaluate the diagnostic value of WFDC2.

In conclusion, the alteration of HFF proteins in overweight status women reflected the secretary function disorders of granulosa cells and thecae, and the breach of blood-follicle barrier, which were involved in abnormal folliculogenesis and oocyte maturation. Our work put new light on the better understanding of abnormal oocyte maturation caused by simple female overweight status without PCOS. Besides, due to the easy accessibility of HFF during the aspiration of oocytes in IVF treatment, it can be an ideal source for microinvasive screening of the oocyte maturation and other ovarian diseases.

Abbreviations

ICSI:

Intracytoplasmic sperm injection

iTRAQ:

Isobaric tags for relative and absolute quantification

HPLC:

High-performance liquid chromatography

MALDI:

Matrix-assisted laser desorption/ionization

MS:

Mass spectrometry

WHO:

World Health Organization

PCOS:

Polycys-tic ovary syndrome

PANTHER:

Protein analysis through evolutionary relationships

DAVID:

The database for annotation, visualization and integrated discovery

STRING:

Search tool for recurring instances of neighbouring genes

BMI:

Body mass index

FDR:

False discovery rate

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Acknowledgements

We thank Guo Lihai Ph.D. (Shanghai Asia Pacific Application Support Center, Applied Biosystems, China) for the usage training of RPLC- MALDI-TOF/TOF 5800 mass spectrometer (AB SCIEX, USA).

Funding

The current study was supported by the National Natural Science Foundation of China (Grant Nos. 81571490, 81971438 and 81701453), Key Research and Development Program of Yantai (Grant No. 2018SFGY099), Shandong Provincial Natural Science Foundation, China (Grant No. ZR2014HQ068), and Clinical Medical Research Fund of Chinese Medical Association—Reproductive Medicine Research and Development Projects for Youth Grant (grant no. 18010200749).

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XL, YW, XS, and FL conceived of the study and participated in its design. XL, YW, XS, and FL drafted the manuscript. YW, XS performed the sample collection and preparation. JL, PZ, JW, YW, WW, NL, WZ, and CZ carried out the studies. XL and FL performed the proteomic analysis. PZ, and CZ carried out the western blot. NL, YW, XW, and FL carried out the bioinformatics analysis. All authors read and approved the final manuscript.

Corresponding authors

Correspondence to Yanwei Wang, Xiaofang Shen or Fujun Liu.

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This work has been approved by the Ethics Committee of Beijing BaoDao Obstetrics and Gynecology Hospital, and written informed consents were obtained from all participants.

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All authors consent to the publication of this manuscript.

Competing interests

The authors declare that they have no competing interests. Availability of data and materials.

The datasets used and/or analyzed during the current study available from the corresponding author on reasonable request.

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Supplementary information

Additional file 1.

Additional table.

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Liu, X., Wang, Y., Zhu, P. et al. Human follicular fluid proteome reveals association between overweight status and oocyte maturation abnormality. Clin Proteom 17, 22 (2020). https://doi.org/10.1186/s12014-020-09286-7

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