Abstract

The aqueous humor (AH) is a low-viscosity biofluid that continuously circulates from the posterior chamber to the anterior chamber of the eye. Recent advances in high-resolution mass-spectrometry workflows have facilitated the study of proteomic content in small-volume biofluids like AH, highlighting the potential clinical implications of the AH proteome. Nevertheless, in-depth investigations into the role of AH proteins in ocular diseases have encountered challenges due to limited accessibility to these workflows, difficulties in large-scale AH sample collection and the absence of a reference AH proteomic database. In response to these obstacles, and to promote further research on the involvement of AH proteins in ocular physiology and pathology, we have developed the web-based Aqueous Humor Proteomics Database (AHP DB). The current version of AHP DB contains proteomic data from 307 human AH samples, which were analyzed using liquid chromatography-tandem mass spectrometry (LC-MS/MS). The database offers comprehensive information on 1683 proteins identified in the AH samples. Furthermore, relevant clinical data are provided for each analyzed sample. Researchers also have the option to download these datasets individually for offline use, rendering it a valuable resource for the scientific community.

Database URL: https://ahp.augusta.edu/

Introduction

The aqueous humor (AH) is a transparent, low-viscosity fluid produced by the ciliary body epithelium, circulating from the posterior to the anterior chamber of the eye (1). As a multifunctional biofluid, the AH plays essential roles in supplying nutrients, removing waste and providing oxygen to the avascular tissues of the ocular environment (2, 3). Homeostatic balance is achieved through continuous drainage and secretion, ensuring a steady flow that replenishes depleted nutrients and regulates intraocular pressure (IOP) within optimal physiological limits (4–6).

The proteomic composition of the AH is crucial for various cellular processes, including cell-to-cell communication, signal transduction, immunological modulation and cell proliferation (7–9). Consequently, researchers have investigated changes within the AH proteome associated with different pathophysiological conditions (7, 8, 10–26). These investigations have led to evidence linking specific AH proteins to ocular diseases, such as cataracts (12, 15, 19, 23), glaucoma (15, 18, 21, 27), age-related macular degeneration (20, 22), uveitis (28, 29), retinoblastoma (30, 31) and diabetic retinopathy (17, 24). Moreover, the dynamics of the AH proteome have been observed to vary across demographic variables, such as sex (13) and race (32), with certain proteins involved in inflammatory protection and immune response found to be more abundant in AH samples from female and African American cohorts, respectively. These discoveries underscore the importance of further exploring the AH proteome and the potential to unveil novel molecular mechanisms.

Given that the AH is a small-volume biofluid with low protein concentration, reproducibility in proteomic profiling of the AH has been limited, as detecting low-abundance proteins can be inconsistent or potentially masked by more abundant molecules, such as transferrin, albumin and immunoglobulins (13, 33–36). Liquid chromatography-tandem mass spectrometry (LC-MS/MS) has emerged as a valuable analytical platform for identifying and quantifying a wide range of proteins in complex, low-volume biofluids, including tears, cerebrospinal fluid, saliva and the AH (7, 8, 10–12, 15, 16, 27, 33, 37–42). The exceptional sensitivity, high-throughput capabilities and reliable detection of lower-abundance proteins have significantly expanded the known AH proteome (33, 43).

In this study, we analyzed 307 AH samples using LC-MS/MS and developed a web-based resource known as the ‘Aqueous Humor Proteomics Database’ (AHP DB). This reference database of commonly identified AH proteins aims to provide valuable insights to the vision research community, helping them to better understand physiological and pathological proteomic signatures within the AH.

Materials and methods

Human subjects and sample collection

Participants in this study were recruited from patients undergoing cataract or glaucoma surgical procedures at the Augusta University Medical Center. Written, informed consent was obtained from all subjects recruited, and this study was conducted in accordance with the Declaration of Helsinki and approved by the Institutional Review Board of Augusta University (IRB# 611480). Following paracentesis incision into the anterior chamber, the AH was drained using a cortical cleaving hydrodissector (585157, Beaver-Visitec International, Waltham, MA, USA). Typical AH sample volumes ranged from 50 to 200 µL depending on the depth of the anterior chamber. The AH sample was immediately transferred to a 1.7 mL Eppendorf tube and stored at −80°C until further analysis. These methods were safe for all subjects and did not affect the duration of the surgery. Following sample collection, a chart review was conducted to obtain demographic and clinical information pertaining to the study participants.

AH sample preparation and LC-MS/MS analysis

The AH samples were lyophilized and reconstituted in 30 μL of 8 m urea in 50 mM Tris-HCl buffer at pH 8.0. To minimize interference with proteomic mapping, cysteine residues in each sample were reduced and alkylated using 20 mM DTT and 55 mM iodoacetamide, respectively. Subsequently, 240 μL of 50 mM ammonium bicarbonate buffer was added to each sample to lower the urea concentration to <1 m. Total protein concentration was measured using a Bradford assay kit, following the manufacturer’s instructions.

For LC/MS-MS preparation, the samples were digested with trypsin at a 1:20 (w/w) at 37°C overnight. After trypsin digestion, the samples were cleaned using a C18 spin plate and then separated and analyzed via the Ultimate 3000 nano-UPLC system and Orbitrap Fusion Tribrid mass spectrometer. The reconstituted peptide mixture (6 μL) was trapped and washed on a Pepman100 C18 spin plate using a gradient of 2% acetonitrile in water and 0.1% formic acid for 10 min at a flow rate of 20 μL/min. Subsequently, the samples were separated on a Pepman100 RSCLC C18 column using a gradient of 2–40% acetonitrile in water and 0.1% formic acid at a flow rate of 300 nL/min for 120 min.

The eluted peptides were subjected to nano-electrospray ionization at 275°C and 2000 V. The peptides were then analyzed in the Orbitrap Fusion Tribrid mass spectrometer using data-dependent acquisition in positive mode. The parameters for analysis included 120 000 FWHM from 300 to 1500 m/z, ion-trap MS analyzer in top speed mode at a 2 s cycle time and dynamic exclusion settings with the repeat count set to 1, repeat duration set to 15 s and exclusion duration set to 30 s. Collision-induced dissociation (CID) fragmentation was used with normal collision energy set to 30%.

Protein identification and quantification

Proteome Discoverer (version 2.2, Thermo Fisher Scientific, Waltham, MA, USA) software was utilized to process raw MS files for protein identification and quantification. The SequestHT algorithm was employed to align identified peptide sequences to the UniProt-SwissProt database, with parameters set for 10 ppm precursor mass tolerance, 0.6 Da product ion tolerance, static carbidomethylation for cysteine (+57.021 Da), dynamic oxidation for methionine (+15.995 Da) and dynamic phosphorylation for serine, threonine and tyrosine (+79.966 Da). Proteins containing similar peptide sequences that could not be differentiated by LC-MS/MS were instead grouped based on the principles of parsimony. The peptide-spectrum match (PSM) count of each protein was used as a semi-quantitative measure of relative protein expression in AH.

Database and website development

AHP DB was developed on a Microsoft platform using Asp.net for web development with JavaScript to create a highly interactive web interface. Microsoft SQL Server was used for data storage, with the website hosted on an Internet Information Services (IIS) web server. Data generated from LC-MS/MS analyses were uploaded to the server via the web interface. AHP DB was designed with internal programming to process the data files, generate appropriate tables and add data records into the database. User-friendly filtering and search options for each data column were also integrated. Clinical data corresponding to each sample were collected and updated in a Microsoft Excel file, which was subsequently uploaded to the database. The website was designed to automatically update all database pages and downloadable data sets following each upload.

Results

Database contents

The AHP DB serves as an accessible public resource for the collection and reference of AH proteomic data, which is shared with the research community. The user interface developed for the AHP DB allows users to access each component of the database via the following tabs in the navigation bar at the top of each page: ‘Home’, ‘Protein Summary’, ‘Protein Data’, ‘Clinical Data’ and ‘Data Download’.

The ‘Home’ tab brings the user to the front page of the database, containing a brief description of both the importance of AH and the technologies used to collect and analyze AH proteins for the database. The current version of the database contains 1683 proteins detected in >5% of AH samples from 307 subjects.

The ‘Protein Summary’ tab displays a table of all identified proteins accompanied by the total number and mean number of PSMs for each protein, as well as the percentage of AH samples in which each protein was detected (Figure 1). Based on the data collected to date, the 50 most abundant proteins detected in the AH are listed in Table 1. The top 50 most abundant proteins are defined based on their detection levels (in at least 50% of samples) and higher mean PSM counts.

Figure 1.

Protein Summary page containing accession ID, gene symbol, protein name, gene names, PSM counts and detection level.

Table 1.

Top 50 proteins identified in human aqueous humor

Serial no.Uniprot IDGene symbolProtein nameMean PSMSamples Detected In (%)
1P02768ALBUAlbumin4271.56100
2P02787TRFESerotransferrin847.75100
3P01009A1ATAlpha-1-antitrypsin254.65100
4P0DOX5IGG1Immunoglobulin gamma-1 heavy chain247.2276.22
5P01024CO3Complement C3227.41100
6P02790HEMOHemopexin204.64100
7P01859IGHG2Immunoglobulin heavy constant gamma 2184.02100
8P00450CERUCeruloplasmin171.21100
9P01834IGKCImmunoglobulin kappa constant166.13100
10P41222PTGDSProstaglandin-H2 D-isomerase165.01100
11P02766TTHYTransthyretin160.76100
12P36955PEDFPigment epithelium-derived factor158.89100
13P10745RET3Retinol-binding protein 3156.1899.35
14P02763A1AG1Alpha-1-acid glycoprotein 1141.03100
15P01860IGHG3Immunoglobulin heavy constant gamma 3140.51100
16P0C0L5CO4BComplement C4-B135.1696.74
17P0DOX7IGKImmunoglobulin kappa light chain113.8100
18P0C0L4CO4AComplement C4-A113.2280.13
19P02774VTDBVitamin D-binding protein112.03100
20P01861IGHG4Immunoglobulin heavy constant gamma 4105.7697.39
21P02647APOA1Apolipoprotein A-I100.74100
22P10909CLUSClusterin96.09100
23P0DOY2IGLC2Immunoglobulin lambda constant 283.898.05
24P01034CYTCCystatin-C82.5499.67
25P19652A1AG2Alpha-1-acid glycoprotein 282.43100
26P01023A2MGAlpha-2-macroglobulin73.1100
27P02765FETUAAlpha-2-HS-glycoprotein70100
28P04217A1BGAlpha-1B-glycoprotein66.48100
29P68871HBBHemoglobin subunit beta63.8652.44
30P22352GPX3Glutathione peroxidase 362.0699.67
31P01008ANT3Antithrombin-III61.99100
32P02749APOHBeta-2-glycoprotein 158100
33P06396GELSGelsolin57.78100
34P01876IGHA1Immunoglobulin heavy constant alpha 156.4399.35
35Q9UBP4DKK3Dickkopf-related protein 354.299.67
36P00751CFABComplement factor B53100
37P01011AACTAlpha-1-antichymotrypsin49.49100
38Q13822ENPP2Ectonucleotide pyrophosphatase/phosphodiesterase family member 249.3899.67
39P00738HPTHaptoglobin47.5297.07
40Q12805FBLN3EGF-containing fibulin-like extracellular matrix protein 147.28100
41P0DOX8IGL1Immunoglobulin lambda-1 light chain45.7764.17
42P00747PLMNPlasminogen44.16100
43Q9UBM4OPTOpticin38.599.67
44P07339CATDCathepsin D36.499.35
45P25311ZA2GPlasma protease C1 inhibitor35.55100
46P04264K2C1Zinc-alpha-2-glycoprotein33.56100
47P06727APOA4Keratin, type II cytoskeletal 133.2471.34
48P00734THRBApolipoprotein A-IV32.598.7
49P07998RNAS1Prothrombin31.88100
50P25311ZA2GRibonuclease pancreatic31.4499.67
Serial no.Uniprot IDGene symbolProtein nameMean PSMSamples Detected In (%)
1P02768ALBUAlbumin4271.56100
2P02787TRFESerotransferrin847.75100
3P01009A1ATAlpha-1-antitrypsin254.65100
4P0DOX5IGG1Immunoglobulin gamma-1 heavy chain247.2276.22
5P01024CO3Complement C3227.41100
6P02790HEMOHemopexin204.64100
7P01859IGHG2Immunoglobulin heavy constant gamma 2184.02100
8P00450CERUCeruloplasmin171.21100
9P01834IGKCImmunoglobulin kappa constant166.13100
10P41222PTGDSProstaglandin-H2 D-isomerase165.01100
11P02766TTHYTransthyretin160.76100
12P36955PEDFPigment epithelium-derived factor158.89100
13P10745RET3Retinol-binding protein 3156.1899.35
14P02763A1AG1Alpha-1-acid glycoprotein 1141.03100
15P01860IGHG3Immunoglobulin heavy constant gamma 3140.51100
16P0C0L5CO4BComplement C4-B135.1696.74
17P0DOX7IGKImmunoglobulin kappa light chain113.8100
18P0C0L4CO4AComplement C4-A113.2280.13
19P02774VTDBVitamin D-binding protein112.03100
20P01861IGHG4Immunoglobulin heavy constant gamma 4105.7697.39
21P02647APOA1Apolipoprotein A-I100.74100
22P10909CLUSClusterin96.09100
23P0DOY2IGLC2Immunoglobulin lambda constant 283.898.05
24P01034CYTCCystatin-C82.5499.67
25P19652A1AG2Alpha-1-acid glycoprotein 282.43100
26P01023A2MGAlpha-2-macroglobulin73.1100
27P02765FETUAAlpha-2-HS-glycoprotein70100
28P04217A1BGAlpha-1B-glycoprotein66.48100
29P68871HBBHemoglobin subunit beta63.8652.44
30P22352GPX3Glutathione peroxidase 362.0699.67
31P01008ANT3Antithrombin-III61.99100
32P02749APOHBeta-2-glycoprotein 158100
33P06396GELSGelsolin57.78100
34P01876IGHA1Immunoglobulin heavy constant alpha 156.4399.35
35Q9UBP4DKK3Dickkopf-related protein 354.299.67
36P00751CFABComplement factor B53100
37P01011AACTAlpha-1-antichymotrypsin49.49100
38Q13822ENPP2Ectonucleotide pyrophosphatase/phosphodiesterase family member 249.3899.67
39P00738HPTHaptoglobin47.5297.07
40Q12805FBLN3EGF-containing fibulin-like extracellular matrix protein 147.28100
41P0DOX8IGL1Immunoglobulin lambda-1 light chain45.7764.17
42P00747PLMNPlasminogen44.16100
43Q9UBM4OPTOpticin38.599.67
44P07339CATDCathepsin D36.499.35
45P25311ZA2GPlasma protease C1 inhibitor35.55100
46P04264K2C1Zinc-alpha-2-glycoprotein33.56100
47P06727APOA4Keratin, type II cytoskeletal 133.2471.34
48P00734THRBApolipoprotein A-IV32.598.7
49P07998RNAS1Prothrombin31.88100
50P25311ZA2GRibonuclease pancreatic31.4499.67
Table 1.

Top 50 proteins identified in human aqueous humor

Serial no.Uniprot IDGene symbolProtein nameMean PSMSamples Detected In (%)
1P02768ALBUAlbumin4271.56100
2P02787TRFESerotransferrin847.75100
3P01009A1ATAlpha-1-antitrypsin254.65100
4P0DOX5IGG1Immunoglobulin gamma-1 heavy chain247.2276.22
5P01024CO3Complement C3227.41100
6P02790HEMOHemopexin204.64100
7P01859IGHG2Immunoglobulin heavy constant gamma 2184.02100
8P00450CERUCeruloplasmin171.21100
9P01834IGKCImmunoglobulin kappa constant166.13100
10P41222PTGDSProstaglandin-H2 D-isomerase165.01100
11P02766TTHYTransthyretin160.76100
12P36955PEDFPigment epithelium-derived factor158.89100
13P10745RET3Retinol-binding protein 3156.1899.35
14P02763A1AG1Alpha-1-acid glycoprotein 1141.03100
15P01860IGHG3Immunoglobulin heavy constant gamma 3140.51100
16P0C0L5CO4BComplement C4-B135.1696.74
17P0DOX7IGKImmunoglobulin kappa light chain113.8100
18P0C0L4CO4AComplement C4-A113.2280.13
19P02774VTDBVitamin D-binding protein112.03100
20P01861IGHG4Immunoglobulin heavy constant gamma 4105.7697.39
21P02647APOA1Apolipoprotein A-I100.74100
22P10909CLUSClusterin96.09100
23P0DOY2IGLC2Immunoglobulin lambda constant 283.898.05
24P01034CYTCCystatin-C82.5499.67
25P19652A1AG2Alpha-1-acid glycoprotein 282.43100
26P01023A2MGAlpha-2-macroglobulin73.1100
27P02765FETUAAlpha-2-HS-glycoprotein70100
28P04217A1BGAlpha-1B-glycoprotein66.48100
29P68871HBBHemoglobin subunit beta63.8652.44
30P22352GPX3Glutathione peroxidase 362.0699.67
31P01008ANT3Antithrombin-III61.99100
32P02749APOHBeta-2-glycoprotein 158100
33P06396GELSGelsolin57.78100
34P01876IGHA1Immunoglobulin heavy constant alpha 156.4399.35
35Q9UBP4DKK3Dickkopf-related protein 354.299.67
36P00751CFABComplement factor B53100
37P01011AACTAlpha-1-antichymotrypsin49.49100
38Q13822ENPP2Ectonucleotide pyrophosphatase/phosphodiesterase family member 249.3899.67
39P00738HPTHaptoglobin47.5297.07
40Q12805FBLN3EGF-containing fibulin-like extracellular matrix protein 147.28100
41P0DOX8IGL1Immunoglobulin lambda-1 light chain45.7764.17
42P00747PLMNPlasminogen44.16100
43Q9UBM4OPTOpticin38.599.67
44P07339CATDCathepsin D36.499.35
45P25311ZA2GPlasma protease C1 inhibitor35.55100
46P04264K2C1Zinc-alpha-2-glycoprotein33.56100
47P06727APOA4Keratin, type II cytoskeletal 133.2471.34
48P00734THRBApolipoprotein A-IV32.598.7
49P07998RNAS1Prothrombin31.88100
50P25311ZA2GRibonuclease pancreatic31.4499.67
Serial no.Uniprot IDGene symbolProtein nameMean PSMSamples Detected In (%)
1P02768ALBUAlbumin4271.56100
2P02787TRFESerotransferrin847.75100
3P01009A1ATAlpha-1-antitrypsin254.65100
4P0DOX5IGG1Immunoglobulin gamma-1 heavy chain247.2276.22
5P01024CO3Complement C3227.41100
6P02790HEMOHemopexin204.64100
7P01859IGHG2Immunoglobulin heavy constant gamma 2184.02100
8P00450CERUCeruloplasmin171.21100
9P01834IGKCImmunoglobulin kappa constant166.13100
10P41222PTGDSProstaglandin-H2 D-isomerase165.01100
11P02766TTHYTransthyretin160.76100
12P36955PEDFPigment epithelium-derived factor158.89100
13P10745RET3Retinol-binding protein 3156.1899.35
14P02763A1AG1Alpha-1-acid glycoprotein 1141.03100
15P01860IGHG3Immunoglobulin heavy constant gamma 3140.51100
16P0C0L5CO4BComplement C4-B135.1696.74
17P0DOX7IGKImmunoglobulin kappa light chain113.8100
18P0C0L4CO4AComplement C4-A113.2280.13
19P02774VTDBVitamin D-binding protein112.03100
20P01861IGHG4Immunoglobulin heavy constant gamma 4105.7697.39
21P02647APOA1Apolipoprotein A-I100.74100
22P10909CLUSClusterin96.09100
23P0DOY2IGLC2Immunoglobulin lambda constant 283.898.05
24P01034CYTCCystatin-C82.5499.67
25P19652A1AG2Alpha-1-acid glycoprotein 282.43100
26P01023A2MGAlpha-2-macroglobulin73.1100
27P02765FETUAAlpha-2-HS-glycoprotein70100
28P04217A1BGAlpha-1B-glycoprotein66.48100
29P68871HBBHemoglobin subunit beta63.8652.44
30P22352GPX3Glutathione peroxidase 362.0699.67
31P01008ANT3Antithrombin-III61.99100
32P02749APOHBeta-2-glycoprotein 158100
33P06396GELSGelsolin57.78100
34P01876IGHA1Immunoglobulin heavy constant alpha 156.4399.35
35Q9UBP4DKK3Dickkopf-related protein 354.299.67
36P00751CFABComplement factor B53100
37P01011AACTAlpha-1-antichymotrypsin49.49100
38Q13822ENPP2Ectonucleotide pyrophosphatase/phosphodiesterase family member 249.3899.67
39P00738HPTHaptoglobin47.5297.07
40Q12805FBLN3EGF-containing fibulin-like extracellular matrix protein 147.28100
41P0DOX8IGL1Immunoglobulin lambda-1 light chain45.7764.17
42P00747PLMNPlasminogen44.16100
43Q9UBM4OPTOpticin38.599.67
44P07339CATDCathepsin D36.499.35
45P25311ZA2GPlasma protease C1 inhibitor35.55100
46P04264K2C1Zinc-alpha-2-glycoprotein33.56100
47P06727APOA4Keratin, type II cytoskeletal 133.2471.34
48P00734THRBApolipoprotein A-IV32.598.7
49P07998RNAS1Prothrombin31.88100
50P25311ZA2GRibonuclease pancreatic31.4499.67

In the database, proteomic data can be accessed through the ‘Protein Data’ tab, which provides a visual display of the mass spectrometry output data for all identified proteins (Figure 2A). These raw data are also available for download in a separate file. The data are stratified by sample ID and detail the UniProt ID (accession number), score, coverage, number of identified proteins in the protein group, number of unique peptides, number of peptides, PSM count, number of amino acids, protein molecular weight and calculated isoelectric point (pI).

Figure 2.

(A) Protein Data page providing visual display of LC-MS/MS analysis of proteins by sample ID and with (B) filters applied by search (right arrow) and by sorting ascending or descending (left arrow).

The score of the associated protein reflects the sum of ion scores corresponding to the peptides identified, providing a measure of the confidence in protein identification. The coverage column refers to the proportion of the total protein sequence that could be matched by identified peptides. The PSM count refers to the number of PSMs for each peptide collected and identified by LC-MS/MS Factors such as run time, protein concentration, and sample variation may influence the total PSM count for any individual protein. The number of proteins refers to the number of protein groups that include the identified protein. The number of unique peptides denotes the number of peptide fragments that uniquely belong to one protein group. The number of peptides indicates the total number of peptide sequences covering a protein group. The design of the database allows each of these column items to be filtered by a search bar and sorted in ascending or descending order (Figure 2B).

To complement the proteomic contents of the AHP DB, a reference clinical data set is also available for the analysis of the proteomic data in the context of clinical and demographic characteristics. The ‘Clinical Data’ tab displays information about the subjects from whom the AH samples were collected. This includes relevant ocular pathology (cataract or glaucoma), demographic information (sex, age, race and ethnicity), ocular characteristics (IOP, cup area, disc area, etc.), comorbidities, current medications and other clinical characteristics (Figure 3).

Figure 3.

Clinical Data page detailing the clinical characteristics and demographic information for each sample.

To provide easy access to all of the data for secondary analysis, four separate data sets related to the compiled AH proteomic studies are available for download on the ‘Data Download’ page (Figure 4). To access the download contents, users need to create an account with a unique username and password through the ‘sign-up’ page. The ‘PSM Matrix’ link downloads a file containing the PSM counts of each protein detected via LC-MS/MS, stratified by de-identified sample ID. The UniProt ID (labeled as ‘Accession’), total PSM count among all samples and sample-by-sample PSM count are available for each protein. The ‘Clinical Data’ link downloads a CSV file containing all of the clinical and demographic information corresponding to each sample; this is the same information that is found in the ‘Clinical Data’ tab. The ‘Raw Protein Data’ link downloads a file that includes the full mass spectrometry output generated by Proteome Discoverer using the SequestHT algorithm. The data on the database’s ‘Protein Summary’ tab are available for download on the ‘Data Download’ page as a CSV file by clicking on the ‘Protein Summary’ link.

Figure 4.

Data download options for protein and clinical data sets.

Data search and retrieval

To query information on any of the data display pages, the user can enter a character string into the search bar directly beneath the title of the chosen column. The data set will automatically be filtered to display content containing the desired search term. Additionally, users can input search terms into multiple columns simultaneously. Users can also sort through all displayed data sets using the drop-down menu located on the far right of the associated column name. Each data set within the database can be sorted by column in either ascending or descending order. Furthermore, users can filter and sort the data simultaneously in any visual data set on the database webpage. An example of these functions on the ‘Protein Data’ page is shown in Figure 2B.

Discussion

AH plays a critical role in maintaining IOP and ocular homeostasis, relying on its diverse array of nutrients, electrolytes and protein content to modulate these functions. Characterizing the human AH proteome will further our understanding of the roles of specific molecules in health and enable more in-depth studies of their relation to pathogenesis. Due to interpersonal variation and the presence of low-abundance proteins, corroborating results can be challenging. Providing a reference database of the human AH proteome can supplement and guide interpretations of AH proteomics in future investigations of ocular pathology and physiology.

The AHP DB provides a publicly accessible collection of proteins identified in human AH using well-validated and highly sensitive mass spectrometry methods. AHP DB stores and presents proteomic information on human AH while concurrently offering protein summaries and corresponding clinical data. Subsets of the data compiled in this database have been analyzed and presented in our previous publications (32, 44, 45), shedding light on inter-population differences in the human AH proteome that may contribute to variations in ocular disease risk factors and incidence. As additional samples are collected and analyzed, the proteomic and corresponding clinical data will be incorporated into the database at regular intervals. In the future, we also plan to add functions that allow other users to upload their own AH proteomic data to the database.

Protein families in the AH can be analyzed to identify differences associated with demographic variables. In one previous study, the AH proteomic content of 88 subjects undergoing cataract surgery was analyzed to establish a preliminary overview of the human AH proteome. Notably, the levels of certain proteins, including SOD3 and TSPAN14, were found to differ significantly between African American and Caucasian subjects (32). Another prior study revealed sex- and race-specific differences among levels of apolipoproteins in the AH of subjects with primary open-angle glaucoma (45). Also, analysis of 49 samples from subjects with glaucoma revealed associations between the levels of several AH proteins and abnormal visual field parameters, demonstrating the clinical relevance of the AH proteome (44).

This database was generated using shotgun mass spectrometry, also referred to as bottom-up proteomics. Shotgun mass spectrometry represents a robust technique for the identification and quantification of proteins in complex biological samples. There are, however, inherent limitations to this methodology. Shotgun proteomics identifies peptides rather than intact proteins, potentially confounding protein identification in instances of multiple proteins sharing common peptide sequences. It is important to note that shotgun proteomics primarily offers relative quantification rather than absolute quantification. Additionally, shotgun proteomics using data-dependent acquisition prioritizes proteins present in higher abundance, thereby decreasing the reliability of detecting lower abundance proteins.

In conclusion, the current version of AHP DB offers a navigable interface featuring 1683 proteins detected in >5% of AH samples. Users can load and filter data according to clinical or proteomic profiles and subsequently download datasets for further analysis. AHP DB is a novel, freely accessible source of proteomic and corresponding clinical information about human AH. The database provides a user-friendly interface to enable researchers to analyze commonly expressed proteins from the human AH, thereby enhancing knowledge in the field of ophthalmology.

Funding

National Institutes of Health (NIH) (grant #R01-EY029728 (Bethesda, MD, USA) to Dr A.S.); Center Core Grant for Vision Research (#P30-EY031631).

Conflict of interest

None declared.

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