Literature DB >> 25374661

GWATCH: a web platform for automated gene association discovery analysis.

Anton Svitin1, Sergey Malov2, Nikolay Cherkasov1, Paul Geerts3, Mikhail Rotkevich1, Pavel Dobrynin1, Andrey Shevchenko1, Li Guan1, Jennifer Troyer4, Sher Hendrickson5, Holli Hutcheson Dilks6, Taras K Oleksyk7, Sharyne Donfield8, Edward Gomperts9, Douglas A Jabs10, Efe Sezgin11, Mark Van Natta11, P Richard Harrigan12, Zabrina L Brumme13, Stephen J O'Brien14.   

Abstract

BACKGROUND: As genome-wide sequence analyses for complex human disease determinants are expanding, it is increasingly necessary to develop strategies to promote discovery and validation of potential disease-gene associations.
FINDINGS: Here we present a dynamic web-based platform - GWATCH - that automates and facilitates four steps in genetic epidemiological discovery: 1) Rapid gene association search and discovery analysis of large genome-wide datasets; 2) Expanded visual display of gene associations for genome-wide variants (SNPs, indels, CNVs), including Manhattan plots, 2D and 3D snapshots of any gene region, and a dynamic genome browser illustrating gene association chromosomal regions; 3) Real-time validation/replication of candidate or putative genes suggested from other sources, limiting Bonferroni genome-wide association study (GWAS) penalties; 4) Open data release and sharing by eliminating privacy constraints (The National Human Genome Research Institute (NHGRI) Institutional Review Board (IRB), informed consent, The Health Insurance Portability and Accountability Act (HIPAA) of 1996 etc.) on unabridged results, which allows for open access comparative and meta-analysis.
CONCLUSIONS: GWATCH is suitable for both GWAS and whole genome sequence association datasets. We illustrate the utility of GWATCH with three large genome-wide association studies for HIV-AIDS resistance genes screened in large multicenter cohorts; however, association datasets from any study can be uploaded and analyzed by GWATCH.

Entities:  

Keywords:  AIDS; Complex diseases; Genome-wide association studies (GWAS); HIV; Whole genome sequencing (WGS)

Year:  2014        PMID: 25374661      PMCID: PMC4220276          DOI: 10.1186/2047-217X-3-18

Source DB:  PubMed          Journal:  Gigascience        ISSN: 2047-217X            Impact factor:   6.524


Findings

Introduction

Annotations of human genome variation have identified some 60 million single nucleotide polymorphisms (SNPs), which offer the promise of connecting nucleotide and structural variation to hereditary traits [1-3]. Genotyping arrays that resolve millions of common SNPs have enabled over 2,000 genome-wide associations studies (GWAS) to discover principal genetic determinants of complex multifactorial human diseases [4,5]. Today, whole-genome sequence association has extended the prospects for personalized genomic medicine, capturing rare variants, copy number variation (CNV), indels, epistatic and epigenetic interactions in hopes of achieving individualized genomic assessment, diagnostics, and therapy of complex maladies by interpreting one’s genomic heritage [6-9]. To date, GWAS studies have produced conflicting signals because many SNP associations are not replicated in subsequent studies. Further, GWAS frequently fail to implicate previously-validated gene regions described in candidate gene associations for the same disease, and in most cases offer less than 10% of the explanatory variance for the disease etiology [9-13]. In addition, discovered gene variants are frequently nested in noncoding desert regions of the genome that are difficult to interpret. At least part of these weaknesses derive from discounting SNP association “hits” that fail to achieve “genome-wide significance”, a widely accepted, albeit conservative, statistical threshold set to discard the plethora of false positive statistical associations (Type I errors) that derive from the large number of SNPs interrogated [2,13-16]. A challenge to genetic epidemiology involves disentangling the true functional associations that straddle the genome-wide significance threshold from the myriad of statistical artifacts that also occur. No one has developed a real solution to this conundrum, though some approaches have been offered [11,15-21]. Many researchers agree that more widely practiced open access data sharing of unabridged GWAS data would offer the opportunity for multiple plausible approaches to bear on this question [22,23]. However, for many cohorts, especially those developed before the advent of the genomics era, participants were not consented for open access of genome-wide data. Since patient anonymization is virtually impossible with genetic epidemiological data, the prospects of sharing patients’ genotype and clinical data may conflict with ethical concerns over protecting the individual privacy of study subjects [24-26]. GWATCH (Genome-Wide Association Tracks Chromosome Highway) addresses this issue through an organized open release of unabridged SNP-test association results from GWAS and whole genome sequencing (WGS) association studies and illustrates its utility using a SNP association analysis for HIV-AIDS in multiple cohorts [10,11,19,27-32].

Results

GWATCH is a dynamic genome browser that automates and displays primary analysis results: p-values and Quantitative Association Statistic (QAS, a general term for statistics explaining direction and strength of associations: odds ratio, relative hazard and ez2-transformed correlation coefficient; see Section 2 of Additional file 1: Materials and Methods) from multiple association tests performed for one or more cohorts in a GWAS or WGS association study as a visual array ordered by SNP chromosomal position [33]. GWATCH offers a number of “features” that allow automated analysis and visualization of multiple test results, rapid discovery, replication and data release of unabridged association results (Table 1).
Table 1

Display feature components of GWATCH

Features displayedIllustration
1. Unabridged data table of SNP chromosome coordinates, MAF*, p-value and QAS** for each SNP for each test
Additional file 2: Table S1
2. Association tests list and Manhattan plots for each test across all SNPs
Additional file 1: Figure S1
3. SNAPSHOTS of SNP-test results in a chromosome region:
 
 1. 2D heat plot snapshot illustrating p-values in any selected chromosome region
Figure 1A and Additional file 1: Figure S2
 2. 3D checkerboard plot snapshot illustrating p-values and QAS** in any selected chromosome region
Figure 1B and Additiona file 1: Figure S3
 3. LD-polarized 3D checkerboard snapshot illustrating p-values and QAS** in any selected chromosome region
Figure 1B and Additional file 1: Figure S4
4. Dynamic HIGHWAY view by chromosome browser illustrating p-values and QAS**
Figure 1C
5. Top association hits:
 
 1. Top hits based on ranked -log p-value
Additional file 10: Table S7
 2. Top hits based on ranked QAS**
Additional file 10: Table S7
 3. Top hits based on ranked Density of -log p-value within a SNP genomic region
Additional file 10: Table S7
6. TRAX feature:
 
 1. TRAX PAGE – two-page graphic summary illustrating p-values and QAS** for one selected SNP
Additional file 7: Figure S5
 2. TRAX REPORT – eleven-page analysis summary with graphs, curves and tables for all association tests for one selected SNPAdditional file 8: Figure S6

Abbreviations:*MAF minor allele frequency, **QAS quantitative association statistic (OR, RH, ez2-transformed correlation coefficient).

Display feature components of GWATCH Abbreviations:*MAF minor allele frequency, **QAS quantitative association statistic (OR, RH, ez2-transformed correlation coefficient). A typical input of a GWAS analysis includes a large unabridged Data Table listing p-values and QASs across multiple SNP association tests performed for a list of ~10,000,000 ordered SNPs (Additional file 2: Table S1). GWATCH displays the Data Table, association tests and various perspectives for results: Manhattan plots for each single test (Additional File 1: Figure S1), 2D and 3D snapshots of test results for chromosome regions of “hits”, and a dynamic chromosome browser that illustrates significant p-values and QASs from the Data Table (Figure 1A, B and C). The imagery provides a dynamic traverse along a human chromosome producing a “bird’s eye” view of the strong SNP associations that rise above the chromosome highway surface. The idea is to visualize association results across a gene region (e.g., one that may include a highly significant SNP association) for all the tests performed (on the same or different cohorts) and for all the neighboring, potentially proxy SNPs (i.e., SNPs which track the neighboring causal, disease-affecting SNP due to the linkage disequilibrium [LD]) for the same tests.
Figure 1

GWATCH produces different kinds of snapshots and views for selected genomic region. (A)2D-SNAPSHOT of PARD3B region of Chromosome 2 [28] tested for the 123 tests in Group A (Table 2). (B) POLARIZED 3D-SNAPSHOT of the PROX1 region of Chromosome 1 [31] tested for the same group (Table 2). (C) Dynamic 3D HIGHWAY chromosome browser view of CCR5 region of Chromosome 3 [32] tested for the same group (Table 2). See also in Additional file 1: Figures S2-S4.

GWATCH produces different kinds of snapshots and views for selected genomic region. (A)2D-SNAPSHOT of PARD3B region of Chromosome 2 [28] tested for the 123 tests in Group A (Table 2). (B) POLARIZED 3D-SNAPSHOT of the PROX1 region of Chromosome 1 [31] tested for the same group (Table 2). (C) Dynamic 3D HIGHWAY chromosome browser view of CCR5 region of Chromosome 3 [32] tested for the same group (Table 2). See also in Additional file 1: Figures S2-S4.
Table 2

Categories and numbers of patients genotyped in AIDS GWAS meta-analysis

AbbreviationsRisk groupsNumber of patients for each group
Total
Group A
Group B
Group C
B + C
EA*-IEA*-TotalAA** 
HREU
High Risk Exposed HIV Uninfected
254
300
148
448
EU (except HREU)
Exposed HIV Uninfected (all risks)
1
351
267
618
SC
Sero-Convertor
703
767
288
1 055
SP-LTS
Sero-Prevalent-Long-Term-Survivor (no AIDS for >10 years)
444
831
170
1 001
Sequelae
AIDS sequelae diagnosis
461
1 848
0
1 848
HAART
Anti-retroviral treatment
485
1 319
65
1 384
Total study participants 1 5274 4621 4605 922

Abbreviations: *EA European Americans, **AA African Americans.

Top hits are ranked based upon extreme p-values, QASs, or “density” of composite p-value peaks (representing proxy SNPs in linkage disequilibrium and multiple non-independent association tests). A multi-page “TRAX REPORT” produces curves, tables and appropriate statistics for a selected variant (SNP, indel or CNV tracked) on request. As genotyping and clinical data are organized, GWATCH automates the computation and visualization of results allowing instant replication of putative discoveries suggested by outside cohort studies or functional experiments. GWATCH also provides a simple procedure for web release of the association results to interested researchers. We illustrate the utility, interpretation, and navigation of GWATCH using a GWAS carried out with study participants enrolled in eight prospective HIV-AIDS cohorts, searching for AIDS Restriction Genes [10,11,19,27-32]. We performed a GWAS meta-analysis on 5,922 patients with distinctive clinical outcomes genotyped using an Affymetrix 6.0 genotyping array (700,022 SNPs after quality control [QC] filters) and parsed into three population groups: Group A) A select group of 1,527 European American individuals; Group B) A larger group of 4,462 European American individuals that includes Group A; Group C) An independent group of 1,460 African American individuals (Table 2). Based upon available clinical information, we performed 123 association tests on Group A, 144 association tests on Group B, and 60 association tests on Group C (Table 3 and Additional file 3: Table S2, Additional file 4: Table S3, Additional file 5: Table S4, Additional file 6: Table S5). The tests include allele and genotype associations for four stages of AIDS: HIV acquisition/infection, AIDS progression (including categorical and survival analyses), AIDS-defining conditions and Highly Active AntiRetroviral Therapy (HAART) outcomes as described previously [27-32]; however, the unabridged dataset displayed in GWATCH-AIDS is far richer. For example, in references [28,31,32] each describes one association test (implicating the PARD3B, PROX1, and CCR5-∆32 AIDS restriction genes respectively); [29,30] analyze small subsets of the SNPs tested within NEMP and HDF gene groups, respectively. GWATCH-AIDS presents complete results for 700,022 SNPs for 327 tests (Table 3) for 5,922 study participants listed in Table 2.
Table 3

Statistical tests performed on 3 HIV-AIDS cohort Study Groups A-C (see Table 2)

Clinical stageTest typeNumber of tests for each group
Group AGroup BGroup C
I. HIV Infection
Ia. Infection - categorical
3
12
12
II. HIV Progression
IIa. Progression - categorical dichotomous
12
12
12
IIb. Progression - categorical multipoint
12
12
12
IIc. Progression - survival
48
48
24
III. AIDS-defining Conditions
IIIa. Sequelae - categorical first sequela
9
9
-
IIIb. Sequelae - survival first sequela
9
-
-
IIIc. Sequelae - categorical any sequelae
9
33
-
IIId. Sequelae - survival any sequelae
9
6
-
IV. Treatment with ARV
IVa. HAART - categorical
6
-
-
IVb. HAART - survival
6
12
-
Total 12314460

See Additional file 3: Table S2, Additional file 4: Table S3, Additional file 5: Table S4, Additional file 6: Table S5, for detailed description of statistical association tests performed in each group.

Categories and numbers of patients genotyped in AIDS GWAS meta-analysis Abbreviations: *EA European Americans, **AA African Americans. Statistical tests performed on 3 HIV-AIDS cohort Study Groups A-C (see Table 2) See Additional file 3: Table S2, Additional file 4: Table S3, Additional file 5: Table S4, Additional file 6: Table S5, for detailed description of statistical association tests performed in each group. The first step of data analysis using GWATCH is to produce a large Data Table listing all SNP names, chromosome coordinates and minor allele frequency (MAF), with p-values and QASs for each test (Additional file 2: Table S1) plus a description of each test. Results in this Table are displayed as familiar Manhattan plots for each test as well as by SNAPSHOT views of chromosome regions. 2D-SNAPSHOT is a heat plot of ordered SNP-test results (e.g., ~80 SNPs at 4 kb average distance for 123 tests in Group A (Table 2) equaling ~10,000 SNP-test combinations) indexed by the p-values from p > 0.05 (light grey) to richer colors for decreasing p-values, assuring that significant region clusters are more densely colorful (Figure 1A and Additional file 1: Figure S2). Similarly a 3D-SNAPSHOT presents a checkerboard view of a chromosome region whereby the blocks rising above the surface reflect –log p-value and the color intensity reflects the QAS values with green indicating “resistant” associations (QAS < 1.0) and red showing “susceptible” ones (QAS > 1.0) (Figure 1B and Additional file 1: Figure S3 and S4). The moving browser HIGHWAY, a major feature of GWATCH, scrolls across the entire chromosomes in the 3D view of background statistical “noise” plus interesting regions of dense elevated blocks (Figure 1C). Since susceptible/resistant colors are initially indexed by the minor (less common) allele at any locus, color discordance will arise in a region when minor allele at a given locus is tracked in LD by the common allele at an adjacent locus. The POLARIZE option corrects this computational artifact by inverting the QAS in locus pairs that show discrepant (common and minor allele tracking as proxies) LD polarity. When the entire association signal for a region, driving the non-independent SNPs and non-independent tests, derives from a single causal allele within the region, the blocks of associated SNPs in the viewed region should be the same color after polarization (Figure 1B and Additional file 1: Figure S4). Automated searches for extreme locus “hits” revealing remarkable associations across the genome can be performed for each stage of disease (see above) screening for extreme p-values, QAS values and/or density of extreme p-values. For loci of particular interest, a detailed TRAX REPORT is generated to display each curve, table and statistic that had driven the association discovery (Additional file 7: Figure S5 and Additional file 8: Figure S6). TRAX REPORT is available for 641 SNPs in 241 genes listed in Additional file 9: Table S6. For the rest of the SNPs, the TRAX PAGE (shorter version of TRAX REPORT) is available. To demonstrate GWATCH, three previously validated AIDS resistance gene regions, CCR5-∆32, PROX1 and PARD3B, can be examined by simple entering rs-number, gene name or chromosome coordinates in the search option (see also 2D and 3D snapshots in Additional file 1: Figures S2-S4). GWATCH moves HIGHWAY to the selected region so one can visualize the signal with the 2D and 3D-SNAPSHOTS plus the TRAX REPORTS. Lastly, we also include a listing of discovered regions that showed AIDS association signals that, though they did not reach genome-wide significance, represented outlier values for several related tests and linked SNPs (Additional file 10: Table S7). These regions then would be considered as candidates for future evaluation and replication in independent cohort studies. Finally, GWATCH is a generalizable web tool suitable for GWAS and/or WGS dataset for any complex disease. The “finished“or “processed” data (ones containing a final Data Table of p-values and QAS for completed association tests) can be uploaded directly by following instructions for dataset upload on the GWATCH website. “Primary” or “unfinished” data (ones with genotypes and clinical data for which tests need to be constructed and calculated) will be uploaded with our assistance in custom development of a disease-specific GWATCH-based analysis.

Discussion

GWATCH is designed to enable investigators and users not connected to the original study to access the results of SNP association (from the whole genome sequence or SNP array genotyping) in order to view and share their study design and results openly. It can be used for visualization of regions with low p-values to inspect the pattern of variation across linked SNPs and also at different stages of disease (e.g., HIV infection, AIDS progression and treatment outcome). As a primary discovery approach, screening across unabridged test results poses large statistical penalties for multiple tests eroding confidence in associations that fail to achieve genome-wide significance [2,13-18,21]. For this reason, one should use caution in inspection of putative regions of significance. Nonetheless, wholesale discarding of marginally significant “hits” will discount some true associations within the mix of statistical artifacts. GWATCH offers an opportunity to screen the genome for disease-associated regions, which may contain causal SNP variants included (or not) in the SNP array used for genotyping, as well as proxy SNPs tracking the causal variant. Further, in complex diseases for which there are many different cohorts being studied (e.g., in HIV-AIDS there are at least twenty different groups conducting AIDS GWAS on small, well-defined cohorts that may differ in genetic background and clinical data available for association testing) [34] GWATCH offers rapid replication opportunities with an independent dataset. There are several websites that aim at cataloguing and displaying SNP associations. For example, GWAS Central [35] is a valuable resource for releasing and accessing GWAS data [36]. At the same time, we believe that GWATCH can be advantageous in some cases for the following reasons: 1) GWATCH utilizes (while not revealing directly) primary unabridged clinical/phenotypic data providing detailed analytical reports, like TRAX, not offered in GWAS Central; 2) GWATCH contains summary tools, such as top hits tables, and performs calculation of density that allows for identification, inspection and replication of putative association hits; 3) GWAS Central reports traditional Manhattan plots while GWATCH extends these to 2D and 3D static and dynamic region visuals that expands user comprehension and perception for better grasp of large data. The GWATCH web browser provides a dynamic visual journey, similar to driving a video game along human chromosomes to view patterns of GWAS- or WGS-based variant association with any complex disease. It is meant to be appealing, intuitive, and accessible to non-experts and experts alike, including the various contributors to today’s exciting gene association studies. The format and open web access allows for importing new data from any disease-gene association study with multiple disease stages or genetic models of analysis. The wide breadth of test associations displayed is particularly suited to complex disease cohorts with detailed clinical parameters over distinct disorder stages. Further, although GWATCH is potentially useful for initial gene discovery, an important corollary lies in providing rapid replication of gene discoveries from independent cohort studies by simply keying in the putative gene region and inspecting the many test results of the posted dataset. Since replication screens are hypothesis-driven, they avoid the stringent multiple test correction penalties of a GWAS/WGS (p < 10-8). Finally, different cohort studies can be compared directly or combined to build meta-analyses. Should many cohort investigators release their unabridged results, then association discoveries will be replicated (or not) in a rapid, open and productive manner, allowing for large meta-analyses as have been proposed for HIV-AIDS and other complex diseases [22,23,34]. Unlike other methods of data sharing, this results-based open data sharing/release approach avoids any violation of patient privacy, IRB (institutional review board) and HIPAA (Health Insurance Portability and Accountability Act of 1996) concerns, or informed consent constraints, since the primary clinical and genotype data remain confidential while the derivative results (p-values, QASs, plots) of multiple conceivable analytical approaches are openly released. In this approach, we hope to considerably expand discovery and replication opportunities in important biomedical research. To us, this ensures the maximum benefit of open access data sharing while protecting patients who prefer privacy (many do), but wish to see their volunteerism fulfilled.

Materials and methods

GWATCH implementation

GWATCH is a web-based application that integrates several technologies and programming languages. Server-side is represented by Apache web server, which employs PHP engine and Java-based toolkit Batik. R-project functions and modules are used for performing statistical tests, polarization and density calculation. MySQL database component of GWATCH allows access, retrieval and management of genotypes, clinical information and test results. On the frontend, GWATCH employs HTML5, Javascript, jQuery and WebGL for HIGHWAY browser interface, and Ajax and JSON technologies for data exchange between server and client.

GWATCH tools

TRAX REPORTS

After screening for associations of clinical traits and genotypes one may be interested in a closer review of certain SNPs. The TRAX REPORT (Additional file 7: Figure S5 and Additional file 8: Figure S6) tool allows the production of reports on extended statistical analysis for any single SNP if the corresponding genotype and clinical information is available for all individuals. Important genotype information is given in the header on the TRAX front page: SNP identifier, SNP coordinate, chromosome, alleles and their frequencies. The header also lists information on populations involved in the analysis. In addition to the header, front page also contains a summary for all tests with p-values, as well as values of QAS represented in the bar plot form. The following pages of TRAX REPORT contain detailed information, such as contingency tables (that are produced in the form of corresponding bar plots for any categorical test, including progression categorical tests), and Kaplan–Meier survival curves that are reported for all three genotypes for all survival tests.

Polarization

The polarization tool enables the inversion of test results for minor and common SNP-alleles around some fixed SNP (called index SNP) for better approximation of true associations. A polarization table is produced using linkage disequilibrium coefficients (D’) between neighboring SNPs. Linkage disequilibrium coefficients are calculated for 80 SNPs upstream and 80 SNPs downstream of the index SNP. In the case of a sufficiently large positive value of linkage disequilibrium (D’ > 0.9), the polarization mark is assigned to 1, whereas in the case of a sufficiently large negative linkage disequilibrium (D’ < -0.9) the polarization mark is assigned to -1. If the linkage disequilibrium is sufficiently small, the polarization mark is assigned to 0. In the process of polarization, QAS values for test results of neighboring SNPs are inverted if the polarization mark is -1 implying the inversion of direction of disease association for such SNPs.

Density

Density top scoring that identifies regions of concentration of small p-values is calculated for each SNP in two steps: 1) in the window of specified size (n SNPs upstream and downstream or n Kbp upstream and downstream) average -log p-value is computed for each test (lane of the Highway) 2) these per-test (per-lane) averages are used for calculating density at this SNP either by averaging them or by finding the largest one (depending on the option chosen) The second step can be performed for all the tests or for the group of tests by the disease stage (e.g., all tests for HIV infection, all tests for AIDS progression etc.).

Statistical tests and data used for complex AIDS study

General types of statistical data and tests relevant to GWATCH are described in Additional file 1: Materials and Methods. Below we describe particular tests and data types used in the exemplary analysis of HIV/AIDS study data. To illustrate GWATCH utility in the analysis of GWAS results we used data from multicenter longitudinal studies of several cohorts of patients exposed to the risk of HIV infection and/or already infected with HIV: ALIVE, DCG, HGDS, HOMER, LSOCA, MACS, MHCS and SFCC [11,34,37,38]. The total pool of patients was divided into three groups A, B and C based on ethnicity and timing of data development (see Table 2). A total of 5,922 patients were analyzed in all 3 groups. All patient samples and genotypes were subjected to QC filtering depicted in Additional file 1: Table S8 as described previously [28,31]. Once final genotypes were obtained, population structure was assessed using the Principal Components Analysis module of Eigensoft software in European and African American populations [39] and structured SNP variants were excluded [28,39]. The statistical tests described below and listed in Table 3 and Additional file 3: Table S2, Additional file 4: Table S3, Additional file 5: Table S4 and Additional file 6: Table S5, were applied to the three patient study groups A, B and C (see Table 2). For each of the tests described below three genetic models were used (D, R and CD, see in Section 1 of Supplementary Materials and Methods under “Genotype classification” in Additional file 1) unless stated otherwise.

Infection tests (INF)

The aim of infection tests is to specify association of any selected genotype with HIV infection. The original clinical data is of categorical type based on the population of seronegatives (SN, individuals which stay HIV-negative throughout the whole study) at the baseline with the response variable indicating serostatus at the endpoint and having three levels: “high risk exposed uninfected” (HREU) seronegatives, “other seronegatives” (OSN) and “seroconverters” (SC, individuals which entered the study as HIV-negative, but became HIV-positive during the study). Three combinations of HIV status classifications were used to perform the categorical tests: “SC” vs. “HREU”, “SC” vs. “HREU” plus “OSN” and “SC” vs. “HREU” vs. “OSN”. In addition to the three genotype classifications described above (D, R and CD), allelic model (A) was also used for this test. One more group of individuals based on infection status, “seroprevalents” (SP, individuals which entered the study already being HIV-positive), was not informative for this type of test and therefore was not included in it.

Disease progression tests

The disease progression tests were used for screening significant associations between AIDS progression and genotype. The original data were of right-censored survival type under four different criteria of AIDS disease: CD4 < 200 (level of CD4+ cells falling below 200 cells/mm3), AIDS-1987 (patient meeting criteria of 1987 CDC definition of AIDS), AIDS-1993 (patient meeting criteria of 1993 CDC definition of AIDS) and Death from AIDS. Only SC and SP individuals were included in this analysis. SC individuals were included into analysis with HIV infection date (date of seroconvertion) as the baseline. SP individuals were included into categorical analysis with the date of the first visit as the baseline with some warnings. Disease progression categorical analysis (PDCA) used the categorical tests for survival data (CTSD) approach described in Section 2 of Additional file 1: Materials and Methods. The CTSD were performed in dichotomous (PDCA2, two groups by the survival time or current status data) and multipoint (PDCAM, more than two groups by the survival time) forms. All individuals censored before the breakpoint were removed from the PDCA dichotomous analysis, as well as the SP individuals who failed before the breakpoint. All remaining individuals censored or failed after the breakpoint were classified into the group of long-term survivors (LTS, those who do not show AIDS symptoms before the breakpoint). The breakpoints used for classification in multipoint PDCA are stated in Additional file 3: Table S2, Additional file 4: Table S3, Additional file 5: Table S4. Proportional hazard (PHAZ) analysis of disease progression used the proportional hazards survival tests (PHST) approach described in Section 2 of Additional file 1: Materials and Methods. These tests were performed for all four criteria of AIDS. Only SC individuals were included into PHAZ analysis.

Sequelae tests

Survival and categorical tests were performed for survival data on Kaposi’s sarcoma (KS), Pneumocystis carnii pneumonia (PCP), cytomegalovirus infection (CM), lymphoma (LY), mycobacterial infection (MYC) and other opportunistic infections (OOI). As in progression disease tests, survival sequelae tests included seroconverters only, while categorical sequelae tests included both seroconverters and seroprevalents. Sequelae tests for any infection order classify patients based on whether specific sequela occurred at all, irrespectively of its order (i.e., whether it was the first sequela to occur for patient). The survival tests (SEQSA) under proportional hazards model as well as the progression categorical tests (SEQCA) were performed separately for each of the diseases described above. Sequelae tests for the first infection classify patients based on whether specific sequela occurred first or not. The survival tests (SEQS1) under proportional hazards model as well as the progression categorical tests (SEQC1) were performed separately for each of the diseases described above.

Highly active antiretroviral therapy (HAART) tests

HAART tests were performed for the cohorts of patients who were subject to this type of treatment. Patients were classified based on either the level of suppression of HIV viral load or on the rebound of viral load following its suppression. Both survival (HRTS) and progression categorical (HRTC) tests were used for this analysis.

Hardy–Weinberg equilibrium (HWE) tests

The HWE tests are performed to control for the quality of data used for the screening of associations. Large deviations from HWE are not typical for the large populations and thus signal the genotyping error or some other type of data quality breach.

Availability and requirements

Project name: GWATCH Project home page: gen-watch.org https://github.com/DobzhanskyCenter/GWATCH Operating system(s): Platform independent (runs in the web browser) Programming language: HTML5, Javascript, PHP, Java, R, MySQL Other requirements: WebGL-supporting web browser (Firefox 4.0 and above; Chrome 12 and above; under OS X runs also in Safari 5.1 and above) License: GPL v2.0 Any restrictions to use by non-academics: no

Availability of supporting data

Archive of the version of GWATCH used in this paper is available from the GigaScience database [40], and for the most recent version please see our GitHub repository.

Abbreviations

AIDS: Acquired immunodeficiency syndrome; CDC: Centers for Disease Control and Prevention; CNV: Copy-number variation; CTSD: categorical tests for survival data; GWAS: Genome-wide association study; GWATCH: Genome-Wide Association Tracks Chromosome Highway; HAART: Highly Active Antiretroviral Therapy; HIPAA: The Health Insurance Portability and Accountability Act of 1996; HIV: Human immunodeficiency virus; HREU: High risk exposed uninfected; HTML5: Hypertext markup language, revision 5; IRB: Institutional Review Board; HWE: Hardy-Weinberg equilibrium; LD: Linkage disequilibrium; LTS: Long-term survivor; MAF: Minor allele frequency; OSN: Other seronegatives; QAS: Quantitative Association Statistic; QC: Quality control; PDCA: Disease progression categorical analysis; PHAZ: Proportional hazard; PHP: Hypertext Preprocessor; SC: Seroconverter; SN: Seronegative; SNP: Single nucleotide polymorphism; SP: Seroprevalent; WGS: Whole genome sequencing.

Competing interests

ASv, SM, NC, PG and SJO are authors of the provisional application for patent US 61/897,524 “Visualization, sharing and analysis of large data sets” filed on 10/30/2013.

Authors’ contributions

ASv, SM, NC, PG, MR, PD, ASh, TKO and SJO developed GWATCH. LG, JT, SH, HHD, ES and SJO performed the original GWAS studies. SD, EG, DAJ, MVN, RH and ZLB contributed new epidemiological data from their AIDS cohorts. ASv, SM, NC and SJO wrote the manuscript. All authors read and approved the final manuscript.

Additional file 1

Supplementary Information. Contains Materials and Methods, Figures S1–S4, legends for Figure S5 and S6, legends for Table S1–S7, Table S8 and References. Click here for file

Additional file 2: Table S1

Data Table of GWAS results: 100 rows of the Data Table containing SNPs, p-values and QASs for AIDS Restriction Genes dataset in Study Group A in the PARD3B region of chromosome 2. Full unabridged data tables for Groups A-C are available on the GWATCH web portal [33]. Click here for file

Additional file 3: Table S2

List of SNP association statistical tests and patient counts for Study Group A. Click here for file

Additional file 4: Table S3

List of SNP association statistical tests and patient counts for Study Group B. Click here for file

Additional file 5: Table S4

List of SNP association statistical tests and patient counts for Study Group C. Click here for file

Additional file 6: Table S5

Summary of SNP association tests performed for each Study Group. Click here for file

Additional file 7: Figure S5

TRAX PAGE, 2 page summary or all test results for a single SNP for a study group (e.g. p-values and QASs for HIV infection, AIDS progression using categorical and survival tests, AIDS sequelae, and HAART outcomes can be viewed and compared). TRAX PAGE can be generated de novo for any SNP of interest by placing mouse tip over a significant tower/block in the HIGHWAY and selecting the TRAX PAGE option from the data window that appears (SNPs for which TRAX REPORT is available do not have separate TRAX PAGE option in data window since TRAX REPORT includes TRAX PAGE content). Click here for file

Additional file 8: Figure S6

Detailed 11 page TRAX REPORT of derived statistics for all the tests accomplished including tables, bar graphs, survival curves and additional parameters for each test. TRAX REPORT can be generated de novo for the SNP of interest by placing mouse tip over a significant tower/block in HIGHWAY and selecting the TRAX REPORT option from the data window that appears. TRAX REPORTs are available for 641 SNPs in 241 human genes that were genotyped to replicate the GWAS associations for Study Groups A-C (Additional file 9: Table S6). Click here for file

Additional file 9: Table S6

List of 641 SNPs within 241 human genes that were assessed to replicate the GWAS associations for Study Groups A-C. For each of these SNPs a full TRAX REPORT (11 page report of figures and tables for each test) is available on the GWATCH web portal [33] as illustrated in Additional file 8: Figure S6. Click here for file

Additional file 10: Table S7

Genomic regions of remarkable statistical association (HITS) identified in ARG-GWAS by the screen for extreme p-values. Click here for file
  36 in total

1.  Principal components analysis corrects for stratification in genome-wide association studies.

Authors:  Alkes L Price; Nick J Patterson; Robert M Plenge; Michael E Weinblatt; Nancy A Shadick; David Reich
Journal:  Nat Genet       Date:  2006-07-23       Impact factor: 38.330

2.  Identifying personal genomes by surname inference.

Authors:  Melissa Gymrek; Amy L McGuire; David Golan; Eran Halperin; Yaniv Erlich
Journal:  Science       Date:  2013-01-18       Impact factor: 47.728

Review 3.  Diagnostic cancer genome sequencing and the contribution of germline variants.

Authors:  O Kilpivaara; L A Aaltonen
Journal:  Science       Date:  2013-03-29       Impact factor: 47.728

4.  Integrating common and rare genetic variation in diverse human populations.

Authors:  David M Altshuler; Richard A Gibbs; Leena Peltonen; David M Altshuler; Richard A Gibbs; Leena Peltonen; Emmanouil Dermitzakis; Stephen F Schaffner; Fuli Yu; Leena Peltonen; Emmanouil Dermitzakis; Penelope E Bonnen; David M Altshuler; Richard A Gibbs; Paul I W de Bakker; Panos Deloukas; Stacey B Gabriel; Rhian Gwilliam; Sarah Hunt; Michael Inouye; Xiaoming Jia; Aarno Palotie; Melissa Parkin; Pamela Whittaker; Fuli Yu; Kyle Chang; Alicia Hawes; Lora R Lewis; Yanru Ren; David Wheeler; Richard A Gibbs; Donna Marie Muzny; Chris Barnes; Katayoon Darvishi; Matthew Hurles; Joshua M Korn; Kati Kristiansson; Charles Lee; Steven A McCarrol; James Nemesh; Emmanouil Dermitzakis; Alon Keinan; Stephen B Montgomery; Samuela Pollack; Alkes L Price; Nicole Soranzo; Penelope E Bonnen; Richard A Gibbs; Claudia Gonzaga-Jauregui; Alon Keinan; Alkes L Price; Fuli Yu; Verneri Anttila; Wendy Brodeur; Mark J Daly; Stephen Leslie; Gil McVean; Loukas Moutsianas; Huy Nguyen; Stephen F Schaffner; Qingrun Zhang; Mohammed J R Ghori; Ralph McGinnis; William McLaren; Samuela Pollack; Alkes L Price; Stephen F Schaffner; Fumihiko Takeuchi; Sharon R Grossman; Ilya Shlyakhter; Elizabeth B Hostetter; Pardis C Sabeti; Clement A Adebamowo; Morris W Foster; Deborah R Gordon; Julio Licinio; Maria Cristina Manca; Patricia A Marshall; Ichiro Matsuda; Duncan Ngare; Vivian Ota Wang; Deepa Reddy; Charles N Rotimi; Charmaine D Royal; Richard R Sharp; Changqing Zeng; Lisa D Brooks; Jean E McEwen
Journal:  Nature       Date:  2010-09-02       Impact factor: 49.962

5.  Association of host genetic risk factors with the course of cytomegalovirus retinitis in patients infected with human immunodeficiency virus.

Authors:  Efe Sezgin; Mark L van Natta; Alka Ahuja; Alice Lyon; Sunil Srivastava; Jennifer L Troyer; Stephen J O'Brien; Douglas A Jabs
Journal:  Am J Ophthalmol       Date:  2011-03-10       Impact factor: 5.258

6.  Genetic variants in nuclear-encoded mitochondrial genes influence AIDS progression.

Authors:  Sher L Hendrickson; James A Lautenberger; Leslie Wei Chinn; Michael Malasky; Efe Sezgin; Lawrence A Kingsley; James J Goedert; Gregory D Kirk; Edward D Gomperts; Susan P Buchbinder; Jennifer L Troyer; Stephen J O'Brien
Journal:  PLoS One       Date:  2010-09-21       Impact factor: 3.240

Review 7.  Growing up in the genomic era: implications of whole-genome sequencing for children, families, and pediatric practice.

Authors:  Christopher H Wade; Beth A Tarini; Benjamin S Wilfond
Journal:  Annu Rev Genomics Hum Genet       Date:  2013-07-15       Impact factor: 8.929

Review 8.  Human genes that limit AIDS.

Authors:  Stephen J O'Brien; George W Nelson
Journal:  Nat Genet       Date:  2004-06       Impact factor: 38.330

Review 9.  Host cell factors in HIV replication: meta-analysis of genome-wide studies.

Authors:  Frederic D Bushman; Nirav Malani; Jason Fernandes; Iván D'Orso; Gerard Cagney; Tracy L Diamond; Honglin Zhou; Daria J Hazuda; Amy S Espeseth; Renate König; Sourav Bandyopadhyay; Trey Ideker; Stephen P Goff; Nevan J Krogan; Alan D Frankel; John A T Young; Sumit K Chanda
Journal:  PLoS Pathog       Date:  2009-05-29       Impact factor: 6.823

10.  GWAS Central: a comprehensive resource for the comparison and interrogation of genome-wide association studies.

Authors:  Tim Beck; Robert K Hastings; Sirisha Gollapudi; Robert C Free; Anthony J Brookes
Journal:  Eur J Hum Genet       Date:  2013-12-04       Impact factor: 4.246

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  3 in total

1.  Genome-Wide Analyses Reveal Gene Influence on HIV Disease Progression and HIV-1C Acquisition in Southern Africa.

Authors:  Wen Xie; Denis Agniel; Andrey Shevchenko; Sergey V Malov; Anton Svitin; Nikolay Cherkasov; Marianna K Baum; Adriana Campa; Simani Gaseitsiwe; Hermann Bussmann; Joseph Makhema; Richard Marlink; Vladimir Novitsky; Tun-Hou Lee; Tianxi Cai; Stephen J O'Brien; M Essex
Journal:  AIDS Res Hum Retroviruses       Date:  2017-04-06       Impact factor: 2.205

2.  Genome-wide association study reveals genetic variants associated with HIV-1C infection in a Botswana study population.

Authors:  Andrey K Shevchenko; Daria V Zhernakova; Sergey V Malov; Alexey Komissarov; Sofia M Kolchanova; Gaik Tamazian; Alexey Antonik; Nikolay Cherkasov; Sergey Kliver; Anastasiia Turenko; Mikhail Rotkevich; Igor Evsyukov; David Vlahov; Prisca K Thami; Simani Gaseitsiwe; Vladimir Novitsky; Myron Essex; Stephen J O'Brien
Journal:  Proc Natl Acad Sci U S A       Date:  2021-11-23       Impact factor: 12.779

3.  GWATCH: a web platform for automated gene association discovery analysis.

Authors:  Anton Svitin; Sergey Malov; Nikolay Cherkasov; Paul Geerts; Mikhail Rotkevich; Pavel Dobrynin; Andrey Shevchenko; Li Guan; Jennifer Troyer; Sher Hendrickson; Holli Hutcheson Dilks; Taras K Oleksyk; Sharyne Donfield; Edward Gomperts; Douglas A Jabs; Efe Sezgin; Mark Van Natta; P Richard Harrigan; Zabrina L Brumme; Stephen J O'Brien
Journal:  Gigascience       Date:  2014-11-05       Impact factor: 6.524

  3 in total

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