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Featured researches published by Shaun Aron.


BMC Genomics | 2014

Population-specific common SNPs reflect demographic histories and highlight regions of genomic plasticity with functional relevance

Ananyo Choudhury; Scott Hazelhurst; Ayton Meintjes; Ovokeraye Achinike-Oduaran; Shaun Aron; Junaid Gamieldien; Mahjoubeh Jalali Sefid Dashti; Nicola Mulder; Nicki Tiffin; Michele Ramsay

BackgroundPopulation differentiation is the result of demographic and evolutionary forces. Whole genome datasets from the 1000 Genomes Project (October 2012) provide an unbiased view of genetic variation across populations from Europe, Asia, Africa and the Americas. Common population-specific SNPs (MAF > 0.05) reflect a deep history and may have important consequences for health and wellbeing. Their interpretation is contextualised by currently available genome data.ResultsThe identification of common population-specific (CPS) variants (SNPs and SSV) is influenced by admixture and the sample size under investigation. Nine of the populations in the 1000 Genomes Project (2 African, 2 Asian (including a merged Chinese group) and 5 European) revealed that the African populations (LWK and YRI), followed by the Japanese (JPT) have the highest number of CPS SNPs, in concordance with their histories and given the populations studied. Using two methods, sliding 50-SNP and 5-kb windows, the CPS SNPs showed distinct clustering across large genome segments and little overlap of clusters between populations. iHS enrichment score and the population branch statistic (PBS) analyses suggest that selective sweeps are unlikely to account for the clustering and population specificity. Of interest is the association of clusters close to recombination hotspots. Functional analysis of genes associated with the CPS SNPs revealed over-representation of genes in pathways associated with neuronal development, including axonal guidance signalling and CREB signalling in neurones.ConclusionsCommon population-specific SNPs are non-randomly distributed throughout the genome and are significantly associated with recombination hotspots. Since the variant alleles of most CPS SNPs are the derived allele, they likely arose in the specific population after a split from a common ancestor. Their proximity to genes involved in specific pathways, including neuronal development, suggests evolutionary plasticity of selected genomic regions. Contrary to expectation, selective sweeps did not play a large role in the persistence of population-specific variation. This suggests a stochastic process towards population-specific variation which reflects demographic histories and may have some interesting implications for health and susceptibility to disease.


Nature Communications | 2017

Whole-genome sequencing for an enhanced understanding of genetic variation among South Africans

Ananyo Choudhury; Michele Ramsay; Scott Hazelhurst; Shaun Aron; Soraya Bardien; Gerrit Botha; Emile R. Chimusa; Alan Christoffels; Junaid Gamieldien; Mahjoubeh J. Sefid-Dashti; Fourie Joubert; Ayton Meintjes; Nicola Mulder; Raj Ramesar; Jasper Rees; Kathrine Scholtz; Dhriti Sengupta; Himla Soodyall; Philip Venter; Louise Warnich; Michael S. Pepper

The Southern African Human Genome Programme is a national initiative that aspires to unlock the unique genetic character of southern African populations for a better understanding of human genetic diversity. In this pilot study the Southern African Human Genome Programme characterizes the genomes of 24 individuals (8 Coloured and 16 black southeastern Bantu-speakers) using deep whole-genome sequencing. A total of ~16 million unique variants are identified. Despite the shallow time depth since divergence between the two main southeastern Bantu-speaking groups (Nguni and Sotho-Tswana), principal component analysis and structure analysis reveal significant (p < 10−6) differentiation, and FST analysis identifies regions with high divergence. The Coloured individuals show evidence of varying proportions of admixture with Khoesan, Bantu-speakers, Europeans, and populations from the Indian sub-continent. Whole-genome sequencing data reveal extensive genomic diversity, increasing our understanding of the complex and region-specific history of African populations and highlighting its potential impact on biomedical research and genetic susceptibility to disease.African populations show a high level of genetic diversity and extensive regional admixture. Here, the authors sequence the whole genomes of 24 South African individuals of different ethnolinguistic origin and find substantive genomic divergence between two southeastern Bantu-speaking groups.


Global heart | 2017

Development of Bioinformatics Infrastructure for Genomics Research in H3Africa

Nicola Mulder; Ezekiel Adebiyi; Marion O. Adebiyi; Seun Adeyemi; Azza Elgaili Ahmed; Rehab Ahmed; Bola Akanle; Mohamed Alibi; Don Armstrong; Shaun Aron; Efejiro Ashano; Shakuntala Baichoo; Alia Benkahla; David K. Brown; Emile R. Chimusa; Faisal M. Fadlelmola; Dare Falola; Segun Fatumo; Kais Ghedira; Amel Ghouila; Scott Hazelhurst; Itunuoluwa Isewon; Segun Jung; Samar K. Kassim; Jonathan K. Kayondo; Mamana Mbiyavanga; Ayton Meintjes; Somia Mohammed; Abayomi Mosaku; Ahmed Moussa

BACKGROUND Although pockets of bioinformatics excellence have developed in Africa, generally, large-scale genomic data analysis has been limited by the availability of expertise and infrastructure. H3ABioNet, a pan-African bioinformatics network, was established to build capacity specifically to enable H3Africa (Human Heredity and Health in Africa) researchers to analyze their data in Africa. Since the inception of the H3Africa initiative, H3ABioNets role has evolved in response to changing needs from the consortium and the African bioinformatics community. OBJECTIVES H3ABioNet set out to develop core bioinformatics infrastructure and capacity for genomics research in various aspects of data collection, transfer, storage, and analysis. METHODS AND RESULTS Various resources have been developed to address genomic data management and analysis needs of H3Africa researchers and other scientific communities on the continent. NetMap was developed and used to build an accurate picture of network performance within Africa and between Africa and the rest of the world, and Globus Online has been rolled out to facilitate data transfer. A participant recruitment database was developed to monitor participant enrollment, and data is being harmonized through the use of ontologies and controlled vocabularies. The standardized metadata will be integrated to provide a search facility for H3Africa data and biospecimens. Because H3Africa projects are generating large-scale genomic data, facilities for analysis and interpretation are critical. H3ABioNet is implementing several data analysis platforms that provide a large range of bioinformatics tools or workflows, such as Galaxy, the Job Management System, and eBiokits. A set of reproducible, portable, and cloud-scalable pipelines to support the multiple H3Africa data types are also being developed and dockerized to enable execution on multiple computing infrastructures. In addition, new tools have been developed for analysis of the uniquely divergent African data and for downstream interpretation of prioritized variants. To provide support for these and other bioinformatics queries, an online bioinformatics helpdesk backed by broad consortium expertise has been established. Further support is provided by means of various modes of bioinformatics training. CONCLUSIONS For the past 4 years, the development of infrastructure support and human capacity through H3ABioNet, have significantly contributed to the establishment of African scientific networks, data analysis facilities, and training programs. Here, we describe the infrastructure and how it has affected genomics and bioinformatics research in Africa.


Journal of Biochemistry | 2017

The FOXP2 forkhead domain binds to a variety of DNA sequences with different rates and affinities.

Helen Webb; Olga Steeb; Ashleigh Blane; Lia S. Rotherham; Shaun Aron; Phillip Machanick; Heini W. Dirr; Sylvia Fanucchi

FOXP2 is a member of the P subfamily of FOX transcription factors, the DNA-binding domain of which is the winged helix forkhead domain (FHD). In this work we show that the FOXP2 FHD is able to bind to various DNA sequences, including a novel sequence identified in this work, with different affinities and rates as detected using surface plasmon resonance. Combining the experimental work with molecular docking, we show that high-affinity sequences remain bound to the protein for longer, form a greater number of interactions with the protein and induce a greater structural change in the protein than low-affinity sequences. We propose a binding model for the FOXP2 FHD that involves three types of binding sequence: low affinity sites which allow for rapid scanning of the genome by the protein in a partially unstructured state; moderate affinity sites which serve to locate the protein near target sites and high-affinity sites which secure the protein to the DNA and induce a conformational change necessary for functional binding and the possible initiation of downstream transcriptional events.


PLOS Computational Biology | 2017

Assessing computational genomics skills: Our experience in the H3ABioNet African bioinformatics network

C. Victor Jongeneel; Ovokeraye Achinike-Oduaran; Ezekiel Adebiyi; Marion O. Adebiyi; Seun Adeyemi; Bola Akanle; Shaun Aron; Efejiro Ashano; Hocine Bendou; Gerrit Botha; Emile R. Chimusa; Ananyo Choudhury; Ravikiran Donthu; Jenny Drnevich; Oluwadamila Falola; Christopher J. Fields; Scott Hazelhurst; Liesl M. Hendry; Itunuoluwa Isewon; Radhika S. Khetani; Judit Kumuthini; Magambo Phillip Kimuda; Lerato Magosi; Liudmila Sergeevna Mainzer; Suresh Maslamoney; Mamana Mbiyavanga; Ayton Meintjes; Danny Mugutso; Phelelani T. Mpangase; Richard J. Munthali

The H3ABioNet pan-African bioinformatics network, which is funded to support the Human Heredity and Health in Africa (H3Africa) program, has developed node-assessment exercises to gauge the ability of its participating research and service groups to analyze typical genome-wide datasets being generated by H3Africa research groups. We describe a framework for the assessment of computational genomics analysis skills, which includes standard operating procedures, training and test datasets, and a process for administering the exercise. We present the experiences of 3 research groups that have taken the exercise and the impact on their ability to manage complex projects. Finally, we discuss the reasons why many H3ABioNet nodes have declined so far to participate and potential strategies to encourage them to do so.


Genomics data | 2016

Whole genome sequence of Oscheius sp. TEL-2014 entomopathogenic nematodes isolated from South Africa

Tiisetso E. Lephoto; Phelelani T. Mpangase; Shaun Aron; Vincent M. Gray

We present the annotation of the draft genome sequence of Oscheius sp. TEL-2014 (Genbank accession number KM492926). This entomopathogenic nematode was isolated from grassland in Suikerbosrand Nature Reserve near Johannesburg in South Africa. Oscheius sp. Strain TEL has a genome size of 110,599,558 bp and a GC content of 42.24%. The genome sequence can be accessed at DDBJ/EMBL/GenBank under the accession number LNBV00000000.


Human Molecular Genetics | 2018

African genetic diversity provides novel insights into evolutionary history and local adaptations

Ananyo Choudhury; Shaun Aron; Dhriti Sengupta; Scott Hazelhurst; Michele Ramsay

Genetic variation and susceptibility to disease are shaped by human demographic history and adaptation. We can now study the genomes of extant Africans and uncover traces of population migration, admixture, assimilation and selection by applying sophisticated computational algorithms. There are four major ethnolinguistic divisions among present day Africans: Hunter-gatherer populations in southern and central Africa; Nilo-Saharan speakers from north and northeast Africa; Afro-Asiatic speakers from north and east Africa; and Niger-Congo speakers who are the predominant ethnolinguistic group spread across most of sub-Saharan Africa. The enormous ethnolinguistic diversity in sub-Saharan African populations is largely paralleled by extensive genetic diversity and until a decade ago, little was known about detailed origins and divergence of these groups. Results from large-scale population genetic studies, and more recently whole genome sequence data, are unravelling the critical role of events like migration and admixture and environmental factors including diet, infectious diseases and climatic conditions in shaping current population diversity. It is now possible to start providing quantitative estimates of divergence times, population size and dynamic processes that have affected populations and their genetic risk for disease. Finally, the availability of ancient genomes from Africa provides historical insights of unprecedented depth. In this review, we highlight some key interpretations that have emerged from recent African genome studies.


AAS Open Research | 2018

Organizing and running bioinformatics hackathons within Africa: The H3ABioNet cloud computing experience

Azza Elgaili Ahmed; Phelelani T. Mpangase; Sumir Panji; Shakuntala Baichoo; Gerrit Botha; Faisal M. Fadlelmola; Scott Hazelhurst; Peter van Heusden; C. Victor Jongeneel; Fourie Joubert; Liudmila Sergeevna Mainzer; Ayton Meintjes; Don Armstrong; Michael R. Crusoe; Brian O'Connor; Yassine Souilmi; Mustafa Alghali; Shaun Aron; Hocine Bendou; Eugene De Beste; Mamana Mbiyavanga; Oussema Souiai; Long Yi; Jennie Zermeno; Nicola Mulder

The need for portable and reproducible genomics analysis pipelines is growing globally as well as in Africa, especially with the growth of collaborative projects like the Human Health and Heredity in Africa Consortium (H3Africa). The Pan-African H3Africa Bioinformatics Network (H3ABioNet) recognized the need for portable, reproducible pipelines adapted to heterogeneous compute environments, and for the nurturing of technical expertise in workflow languages and containerization technologies. To address this need, in 2016 H3ABioNet arranged its first Cloud Computing and Reproducible Workflows Hackathon, with the purpose of building key genomics analysis pipelines able to run on heterogeneous computing environments and meeting the needs of H3Africa research projects. This paper describes the preparations for this hackathon and reflects upon the lessons learned about its impact on building the technical and scientific expertise of African researchers. The workflows developed were made publicly available in GitHub repositories and deposited as container images on quay.io.


PLOS Computational Biology | 2017

Designing a course model for distance-based online bioinformatics training in Africa: The H3ABioNet experience

Kim T. Gurwitz; Shaun Aron; Sumir Panji; Suresh Maslamoney; Pedro L. Fernandes; David Phillip Judge; Amel Ghouila; Jean-Baka Domelevo Entfellner; Fatma Z. Guerfali; Colleen Saunders; Ahmed M. Alzohairy; Samson Pandam Salifu; Rehab Ahmed; Ruben Cloete; Jonathan K. Kayondo; Deogratius Ssemwanga; Nicola Mulder; H ABioNet Consortium's Education Training

Africa is not unique in its need for basic bioinformatics training for individuals from a diverse range of academic backgrounds. However, particular logistical challenges in Africa, most notably access to bioinformatics expertise and internet stability, must be addressed in order to meet this need on the continent. H3ABioNet (www.h3abionet.org), the Pan African Bioinformatics Network for H3Africa, has therefore developed an innovative, free-of-charge “Introduction to Bioinformatics” course, taking these challenges into account as part of its educational efforts to provide on-site training and develop local expertise inside its network. A multiple-delivery–mode learning model was selected for this 3-month course in order to increase access to (mostly) African, expert bioinformatics trainers. The content of the course was developed to include a range of fundamental bioinformatics topics at the introductory level. For the first iteration of the course (2016), classrooms with a total of 364 enrolled participants were hosted at 20 institutions across 10 African countries. To ensure that classroom success did not depend on stable internet, trainers pre-recorded their lectures, and classrooms downloaded and watched these locally during biweekly contact sessions. The trainers were available via video conferencing to take questions during contact sessions, as well as via online “question and discussion” forums outside of contact session time. This learning model, developed for a resource-limited setting, could easily be adapted to other settings.


South African Medical Journal | 2013

The elusive gene for keratolytic winter erythema.

Peter R. Hull; Angela Hobbs; Shaun Aron; Michèle Ramsay

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Scott Hazelhurst

University of the Witwatersrand

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Ananyo Choudhury

University of the Witwatersrand

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Phelelani T. Mpangase

University of the Witwatersrand

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Sumir Panji

University of Cape Town

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Gerrit Botha

University of Cape Town

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