13 research outputs found
Regulation of retromer recruitment to endosomes by sequential action of Rab5 and Rab7
The retromer complex mediates retrograde transport of transmembrane cargo from endosomes to the trans-Golgi network (TGN). Mammalian retromer is composed of a sorting nexin (SNX) dimer that binds to phosphatidylinositol 3-phosphateâenriched endosomal membranes and a vacuolar protein sorting (Vps) 26/29/35 trimer that participates in cargo recognition. The mammalian SNX dimer is necessary but not sufficient for recruitment of the Vps26/29/35 trimer to membranes. In this study, we demonstrate that the guanosine triphosphatase Rab7 contributes to this recruitment. The Vps26/29/35 trimer specifically binds to Rab7âguanosine triphosphate (GTP) and localizes to Rab7-containing endosomal domains. Interference with Rab7 function causes dissociation of the Vps26/29/35 trimer but not the SNX dimer from membranes. This blocks retrieval of mannose 6-phosphate receptors to the TGN and impairs cathepsin D sorting. Rab5-GTP does not bind to the Vps26/29/35 trimer, but perturbation of Rab5 function causes dissociation of both the SNX and Vps26/29/35 components from membranes through inhibition of a pathway involving phosphatidylinositol 3-kinase. These findings demonstrate that Rab5 and Rab7 act in concert to regulate retromer recruitment to endosomes
Standardised Data on Initiatives â STARDIT: Beta Version
There is currently no standardised way to share information across disciplines about
initiatives, including felds such as health, environment, basic science, manufacturing, media and international
development. All problems, including complex global problems such as air pollution and pandemics require reliable
data sharing between disciplines in order to respond efectively. Current reporting methods also lack information
about the ways in which diferent people and organisations are involved in initiatives, making it difcult to collate
and appraise data about the most efective ways to involve diferent people. The objective of STARDIT (Standardised
Data on Initiatives) is to address current limitations and inconsistencies in sharing data about initiatives. The STARDIT
system features standardised data reporting about initiatives, including who has been involved, what tasks they did,
and any impacts observed. STARDIT was created to help everyone in the world fnd and understand information
about collective human actions, which are referred to as âinitiativesâ. STARDIT enables multiple categories of data to be
reported in a standardised way across disciplines, facilitating appraisal of initiatives and aiding synthesis of evidence
for the most effective ways for people to be involved in initiatives
Large-Scale Validation of Mixed-Solvent Simulations to Assess Hotspots at ProteinâProtein Interaction Interfaces
The
ability to target proteinâprotein interactions (PPIs)
with small molecule inhibitors offers great promise in expanding the
druggable target space and addressing a broad range of untreated diseases.
However, due to their nature and function of interacting with protein
partners, PPI interfaces tend to extend over large surfaces without
the typical pockets of enzymes and receptors. These features present
unique challenges for small molecule inhibitor design. As such, determining
whether a particular PPI of interest could be pursued with a small
molecule discovery strategy requires an understanding of the characteristics
of the PPI interface and whether it has hotspots that can be leveraged
by small molecules to achieve desired potency. Here, we assess the
ability of mixed-solvent molecular dynamic (MSMD) simulations to detect
hotspots at PPI interfaces. MSMD simulations using three cosolvents
(acetonitrile, isopropanol, and pyrimidine) were performed on a large
test set of 21 PPI targets that have been experimentally validated
by small molecule inhibitors. We compare MSMD, which includes explicit
solvent and full protein flexibility, to a simpler approach that does
not include dynamics or explicit solvent (SiteMap) and find that MSMD
simulations reveal additional information about the characteristics
of these targets and the ability for small molecules to inhibit the
PPI interface. In the few cases were MSMD simulations did not detect
hotspots, we explore the shortcomings of this technique and propose
future improvements. Finally, using Interleukin-2 as an example, we
highlight the advantage of the MSMD approach for detecting transient
cryptic druggable pockets that exists at PPI interfaces
Selecting an Optimal Number of Binding Site Waters To Improve Virtual Screening Enrichments Against the Adenosine A<sub>2A</sub> Receptor
A major
challenge in structure-based virtual screening (VS) involves
the treatment of explicit water molecules during docking in order
to improve the enrichment of active compounds over decoys. Here we
have investigated this in the context of the adenosine A<sub>2A</sub> receptor, where water molecules have previously been shown to be
important for achieving high enrichment rates with docking, and where
the positions of some binding site waters are known from a high-resolution
crystal structure. The effect of these waters (both their presence
and orientations) on VS enrichment was assessed using a carefully
curated set of 299 high affinity A<sub>2A</sub> antagonists and 17,337
decoys. We show that including certain crystal waters greatly improves
VS enrichment and that optimization of water hydrogen positions is
needed in order to achieve the best results. We also show that waters
derived from a molecular dynamics simulation îž without any
knowledge of crystallographic waters îž can improve enrichments
to a similar degree as the crystallographic waters, which makes this
strategy applicable to structures without experimental knowledge of
water positions. Finally, we used decision trees to select an ensemble
of structures with different water molecule positions and orientations
that outperforms any single structure with water molecules. The approach
presented here is validated against independent test sets of A<sub>2A</sub> receptor antagonists and decoys from the literature. In
general, this water optimization strategy could be applied to any
target with waters-mediated proteinâligand interactions
Predicting Binding Affinities for GPCR Ligands Using Free-Energy Perturbation
The
rapid growth of structural information for G-protein-coupled
receptors (GPCRs) has led to a greater understanding of their structure,
function, selectivity, and ligand binding. Although novel ligands
have been identified using methods such as virtual screening, computationally
driven lead optimization has been possible only in isolated cases
because of challenges associated with predicting binding free energies
for related compounds. Here, we provide a systematic characterization
of the performance of free-energy perturbation (FEP) calculations
to predict relative binding free energies of congeneric ligands binding
to GPCR targets using a consistent protocol and no adjustable parameters.
Using the FEP+ package, first we validated the protocol, which includes
a full lipid bilayer and explicit solvent, by predicting the binding
affinity for a total of 45 different ligands across four different
GPCRs (adenosine A<sub>2A</sub>AR, ÎČ<sub>1</sub> adrenergic,
CXCR4 chemokine, and ÎŽ opioid receptors). Comparison with experimental
binding affinity measurements revealed a highly predictive ranking
correlation (average spearman Ï = 0.55) and low root-mean-square
error (0.80 kcal/mol). Next, we applied FEP+ in a prospective project,
where we predicted the affinity of novel, potent adenosine A<sub>2A</sub> receptor (A<sub>2A</sub>R) antagonists. Four novel compounds were
synthesized and tested in a radioligand displacement assay, yielding
affinity values in the nanomolar range. The affinity of two out of
the four novel ligands (plus three previously reported compounds)
was correctly predicted (within 1 kcal/mol), including one compound
with approximately a tenfold increase in affinity compared to the
starting compound. Detailed analyses of the simulations underlying
the predictions provided insights into the structural basis for the
two cases where the affinity was overpredicted. Taken together, these
results establish a protocol for systematically applying FEP+ to GPCRs
and provide guidelines for identifying potent molecules in drug discovery
lead optimization projects
Standardised data on initiativesâSTARDIT:Beta version
Background and objective
There is currently no standardised way to share information across disciplines about initiatives, including fields such as health, environment, basic science, manufacturing, media and international development. All problems, including complex global problems such as air pollution and pandemics require reliable data sharing between disciplines in order to respond effectively. Current reporting methods also lack information about the ways in which different people and organisations are involved in initiatives, making it difficult to collate and appraise data about the most effective ways to involve different people. The objective of STARDIT (Standardised Data on Initiatives) is to address current limitations and inconsistencies in sharing data about initiatives. The STARDIT system features standardised data reporting about initiatives, including who has been involved, what tasks they did, and any impacts observed. STARDIT was created to help everyone in the world find and understand information about collective human actions, which are referred to as âinitiativesâ. STARDIT enables multiple categories of data to be reported in a standardised way across disciplines, facilitating appraisal of initiatives and aiding synthesis of evidence for the most effective ways for people to be involved in initiatives. This article outlines progress to date on STARDIT; current usage; information about submitting reports; planned next steps and how anyone can become involved.
Method
STARDIT development is guided by participatory action research paradigms, and has been co-created with people from multiple disciplines and countries. Co-authors include cancer patients, people affected by rare diseases, health researchers, environmental researchers, economists, librarians and academic publishers. The co-authors also worked with Indigenous peoples from multiple countries and in partnership with an organisation working with Indigenous Australians.
Results and discussion
Over 100 people from multiple disciplines and countries have been involved in co-designing STARDIT since 2019. STARDIT is the first open access web-based data-sharing system which standardises the way that information about initiatives is reported across diverse fields and disciplines, including information about which tasks were done by which stakeholders. STARDIT is designed to work with existing data standards. STARDIT data will be released into the public domain (CC0) and integrated into Wikidata; it works across multiple languages and is both human and machine readable. Reports can be updated throughout the lifetime of an initiative, from planning to evaluation, allowing anyone to be involved in reporting impacts and outcomes. STARDIT is the first system that enables sharing of standardised data about initiatives across disciplines. A working Beta version was publicly released in February 2021 (ScienceforAll.World/STARDIT). Subsequently, STARDIT reports have been created for peer-reviewed research in multiple journals and multiple research projects, demonstrating the usability. In addition, organisations including Cochrane and Australian Genomics have created prospective reports outlining planned initiatives.
Conclusions
STARDIT can help create high-quality standardised information on initiatives trying to solve complex multidisciplinary global problems
Assembly of the Biogenesis of Lysosome-related Organelles Complex-3 (BLOC-3) and Its Interaction with Rab9*
The Hermansky-Pudlak syndrome (HPS) is a genetic hypopigmentation and bleeding disorder caused by defective biogenesis of lysosome-related organelles (LROs) such as melanosomes and platelet dense bodies. HPS arises from mutations in any of 8 genes in humans and 16 genes in mice. Two of these genes, HPS1 and HPS4, encode components of the biogenesis of lysosome-related organelles complex-3 (BLOC-3). Herein we show that recombinant HPS1-HPS4 produced in insect cells can be efficiently isolated as a 1:1 heterodimer. Analytical ultracentrifugation reveals that this complex has a molecular mass of 146 kDa, equivalent to that of the native complex and to the sum of the predicted molecular masses of HPS1 and HPS4. This indicates that HPS1 and HPS4 interact directly in the absence of any other protein as part of BLOC-3. Limited proteolysis and deletion analyses show that both subunits interact with one another throughout most of their lengths with the sole exception of a long, unstructured loop in the central part of HPS4. An interaction screen reveals a specific and strong interaction of BLOC-3 with the GTP-bound form of the endosomal GTPase, Rab9. This interaction is mediated by HPS4 and the switch I and II regions of Rab9. These characteristics indicate that BLOC-3 might function as a Rab9 effector in the biogenesis of LROs