From 9af79ac271a5c1801d81912f9186f35c9bcedd30 Mon Sep 17 00:00:00 2001 From: Brendan Larsen Date: Fri, 19 Apr 2024 09:51:36 -0700 Subject: [PATCH] link to image on website not working, trying different approach --- docs/.vitepress/dist/404.html | 2 +- docs/.vitepress/dist/antibody_escape.html | 2 +- docs/.vitepress/dist/cell_entry.html | 2 +- docs/.vitepress/dist/hashmap.json | 2 +- docs/.vitepress/dist/heatmaps.html | 2 +- docs/.vitepress/dist/index.html | 6 +++--- docs/.vitepress/dist/interactive.html | 2 +- docs/.vitepress/dist/pipeline_information.html | 2 +- docs/.vitepress/dist/receptor_binding.html | 2 +- docs/index.md | 2 +- 10 files changed, 12 insertions(+), 12 deletions(-) diff --git a/docs/.vitepress/dist/404.html b/docs/.vitepress/dist/404.html index 9130c2d7..50cc232d 100644 --- a/docs/.vitepress/dist/404.html +++ b/docs/.vitepress/dist/404.html @@ -15,7 +15,7 @@
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PAGE NOT FOUND

But if you don't change your direction, and if you keep looking, you may end up where you are heading.

Built by Brendan Larsen and Jesse Bloom

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Antibody Escape

We determined the effects of receptor binding protein mutations on antibody neutralization. Antibody selections were performed by incubating pseudovirus libraries with different concentrations of antibody, followed by infection of CHO cells expressing bat ephrin-B3. Neutralization curves were fit on the DMS data with polyclonal.

image

Schematic of antibody selections.

In total, we measured the effects of receptor binding protein mutations for six different antibodies that target three different epitopes.

Neutralization of unmutated Nipah RBP/F pseudovirus by different anti-RBP antibodies.


image

Location on RBP where antibodies bind (if structures are known).

Individual Antibody Selections

Individual antibody selection model fitting notebooks

LibB-230720-m102.4

LibA-230725-m102.4

LibA-231116-m102.4

LibA-230725-nAH1.3

LibB-230630-nAH1.3

LibB-230720-nAH1.3

LibA-231024-HENV26

LibB-230815-HENV26

LibB-230818-HENV26

LibB-230907-HENV26

LibB-230704-HENV32

LibB-230720-HENV32

LibA-230725-HENV32

LibB-230907-HENV32

LibA-230815-HENV103

LibB-230818-HENV103

LibB-230906-HENV103

LibA-230815-HENV117

LibB-230818-HENV117

LibB-230907-HENV117

Average Antibody Escape

Averaging antibody escape across libraries and replicate selections.

Average antibody escape notebooks

m102.4

nAH1.3

HENV-26

HENV-32

HENV-103

HENV-117

Antibody Escape Comprehensive Heatmaps

Additional control over filtering parameters. Users can adjust different parameters to filter the heatmap data. These provide more information and control compared to the final filtered heatmaps provided on the heatmaps page.

m102.4

HENV-117

HENV-26

HENV-32

HENV-103

nAH1.3

Antibody Escape Validations

To validate our deep mutational scanning measurements, we generated pseudoviruses expressing different receptor binding protein mutations. We tested whether neutralization by the antibody nAH1.3 correlated with our deep mutational scanning data.

Antibody validation notebook

To validate the escape measurements from DMS, we generated single RBP mutant pseudoviruses and tested their neutralization by antibody nAH1.3.

Miscellaneous Figures

Escape at Nipah and Hendra polymorphisms and differences

Functional Effect of Antibody Escape Mutations

Effects of mutations on cell entry and antibody neutralization

Escape by Site

Line plot of average antibody escape at each site

Antibody Escape Analysis Notebook

Antibody analysis notebook

Raw Data

These data have not been filtered. They are the raw output from dms-vep-pipeline-3. For filtered .csv files, click here.

Individual antibody escape selection files

Averaged effects of RBP mutations on neutralization across replicate selections

antibody m102.4

antibody HENV-117

antibody HENV-26

antibody HENV-32

antibody HENV-103

antibody nAH1.3

Built by Brendan Larsen and Jesse Bloom

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Cell Entry

To measure the effects of mutations on cell entry mediated by the receptor binding protein, we conducted 'functional selections'. In these selections, we compared the frequencies of specific barcodes between two groups of pseudoviruses: those expressing the Nipah virus receptor binding (mutated) and fusion proteins (unmutated), and those expressing VSV-G. Notebooks below contain information about each step.

image

Schematic of functional selections using VSV-G entry as a control for library composition.

Global Epistasis Fitting

Individual cell entry selections were fit with multidms to decompose the effects of individual mutations using a global epistasis model.

Individual functional selection global epistasis model fitting notebooks

LibA-230725-CHO-bEFNB3

LibA-230815-CHO-bEFNB3

LibA-230818-CHO-bEFNB3

LibA-230825-CHO-bEFNB3

LibA-230916-CHO-bEFNB3

LibA-231006-CHO-bEFNB3

LibA-231019-CHO-bEFNB3_1

LibA-231019-CHO-bEFNB3_2

LibA-231019-CHO-bEFNB2_1

LibA-231024-CHO-bEFNB3

LibA-231024-CHO-bEFNB2

LibA-231112-CHO-bEFNB3_1

LibA-231112-CHO-bEFNB3_2

LibA-231112-CHO-bEFNB2

LibA-231207-CHO-bEFNB2_1

LibA-231207-CHO-bEFNB2_2

LibA-231207-CHO-bEFNB2_3

LibA-231207-CHO-bEFNB2_4

LibA-231207-CHO-bEFNB2_5

LibA-231222-CHO-bEFNB2

LibB-230630-CHO-C6-nac

LibB-230720-CHO-bEFNB3

LibB-230731-CHO-BA6-nac

LibB-230815-CHO-bEFNB3

LibB-230818-CHO-bEFNB3

LibB-230906-CHO-EFNB3-C6_diffVSV

LibB-230907-CHO-EFNB3-C6-nac_diffVSV

LibB-231105-CHO-EFNB2-BA6-nac_diffVSV

LibB-231108-CHO-EFNB2-BA6-nac_diff_VSV

LibB-231108-CHO-EFNB3-C6-nac_diff_VSV

LibB-231112-CHO-bEFNB2

LibB-231112-CHO-EFNB2-BA6-1

LibB-231112-CHO-EFNB2-BA6-2

LibB-231112-CHO-EFNB3-C6-1

LibB-231112-CHO-EFNB3-C6-2

LibB-231116-CHO-bEFNB3

LibB-231116-CHO-bEFNB2

LibB-231116-CHO-BA6_nac_diff_VSV

LibB-231222-CHO-EFNB2-BA6_diffVSV

LibB-231222-CHO-EFNB2-BA6-nac_diffVSV

Averaging Cell Entry

Individual functional selections were averaged between libraries and replicates below.

Notebook averaging the effects of cell entry in CHO-bEFNB2 cells

Notebook averaging the effects of cell entry in CHO-bEFNB3 cells

Comprehensive Cell Entry Heatmaps

Additional control over filtering parameters. Users can adjust different parameters to filter the heatmap data. These provide more information and control compared to the final filtered heatmaps provided on the heatmaps page.

CHO-bEFNB2 cell entry heatmap

CHO-bEFNB3 cell entry heatmap

Functional Scores

Notebook analyzing the distribution of functional scores for all individual selections.

Functional scores notebook

Analyze Data

Notebook analyzing cell entry from filtered data. Make figures for manuscript using python and altair.

Cell entry analysis notebook

Cell Entry Figures

TIP

Plots below are interactive. Hover over points to see more information. Click arrow box to view altair plots in separate page.

Cell entry of different RBP regions

Site-averaged Effects of Mutations on Cell Entry

Sites in RBP neck and contact sites (ranked from least constrained to most)

Cell Entry Correlations

Comparison of average effects of mutations on entry in cells expressing bat ephrin-B2 or bat ephrin-B3. Some mutations are much more tolerated for cell entry in bat ephrin-B2 cells, especially at sites near the receptor-binding interface.

Correlation between site-averaged effects of mutations on cell entry

Correlation between effects of all mutations on cell entry

Cell Entry Validations

To validate our deep mutational scanning measurements, we produced lentiviruses with individual mutations that spanned a range of effects. Cell entry validation notebook

We validated the DMS cell entry measurements by making individual RBP mutants, expressing them on pseudovirus particles, and measuring luciferase following infection.

Raw Data

Built by Brendan Larsen and Jesse Bloom

- + \ No newline at end of file diff --git a/docs/.vitepress/dist/hashmap.json b/docs/.vitepress/dist/hashmap.json index 33b38fc1..c2bf9618 100644 --- a/docs/.vitepress/dist/hashmap.json +++ b/docs/.vitepress/dist/hashmap.json @@ -1 +1 @@ -{"cell_entry.md":"BCpXmNnB","index.md":"BZGvExAo","pipeline_information.md":"BjJCubcu","receptor_binding.md":"GTSRVDbQ","heatmaps.md":"C4mrizPX","interactive.md":"BrWcZFR1","antibody_escape.md":"DWTMqAE3"} +{"pipeline_information.md":"BjJCubcu","index.md":"Bx2skdmA","heatmaps.md":"C4mrizPX","cell_entry.md":"BCpXmNnB","interactive.md":"BrWcZFR1","antibody_escape.md":"DWTMqAE3","receptor_binding.md":"GTSRVDbQ"} diff --git a/docs/.vitepress/dist/heatmaps.html b/docs/.vitepress/dist/heatmaps.html index f68de067..f4a9f5df 100644 --- a/docs/.vitepress/dist/heatmaps.html +++ b/docs/.vitepress/dist/heatmaps.html @@ -18,7 +18,7 @@
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Heatmaps

Heatmaps represent one of the best ways to explore deep mutational scanning data. This page contains links to various heatmaps, which show the effects of mutations on three different phenotypes: cell entry, receptor binding, and antibody escape.

TIP

Hover over the heatmaps to see more information about each mutation. An 'X' represents the amino acid found at that site in the unmutated Nipah Malaysia sequence.

Entry Heatmaps

Effects of all mutations on entry in CHO cells expressing different bat receptors.

Entry with bat ephrin-B2

Entry with bat ephrin-B3

Binding Heatmaps

INFO

Mutations with low cell entry scores are masked in dark gray.

Binding to bat ephrin-B2 (monomeric)

Binding to bat ephrin-B3 (dimeric)

Antibody Escape Heatmaps

INFO

Mutations with low cell entry scores are masked in dark gray. If protein structure is available, distance in angstroms to the closest antibody residue is shown.

m102.4 Antibody Escape

HENV-117 Antibody Escape

HENV-26 Antibody Escape

HENV-103 Antibody Escape

HENV-32 Antibody Escape

nAH1.3 Antibody Escape

Heatmaps of Specific Receptor Binding Protein Regions

TIP

Click arrow in upper right to view full-sized plots

Contact sites

Effects of mutations on cell entry and binding at receptor contact sites. Receptor contact sites are less constrained for entry in CHO cells expressing bat ephrin-B2 than CHO cells expressing bat ephrin-B3. This is likely due to ~25-fold higher receptor affinity of the receptor binding protein to ephrin-B2 versus ephrin-B3.

Effects of mutations on cell entry and binding at glycosylation sites

Nipah RBP has six sites that are glycosylated. One in the neck (site 159) and five in the head. Here are the effects of mutations on entry and binding.

Effects of mutations on cell entry and binding at polymorphic Nipah sites

These sites are polymorphic in Nipah sequences. Most of these sites tolerate multiple mutations.

Effects of mutations on cell entry, organized by type of the unmutated amino acid residue

The effects of mutations organized by the unmutated amino acid type. Strong preference for certain amino acids can be seen in certain regions. For example, portions of the stalk only tolerate hydrophobic residues (see sites 101-160 below).

Notebooks

Notebook that makes all heatmaps from filtered DMS data. Make figures for manuscript using python and altair.

Heatmap notebook

Built by Brendan Larsen and Jesse Bloom

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Nipah virus deep mutational scanning

Collection of data, figures, and information for the Nipah virus receptor binding protein deep mutational scanning project

About

Nipah virus receptor binding protein

Receptor binding protein (spheres) and ephrin-B2.

This website contains links and information for the Nipah virus receptor binding protein deep mutational scanning project. Look through Jupyter notebooks used in analyses, explore interactive charts, or download raw data. To view more information on the code used to analyze these data and generate the website, check out our GitHub repo. Interactive charts made with Altair. Embedding of Altair plots was done with custom javascript code from dms-vep. All work was done in the Bloom Lab, part of Fred Hutch Cancer Center. To access the old version of the homepage built by dms-vep-pipeline-3, click here.

Scientific Details

Nipah virus is a bat-borne paramyxovirus that occassionally spills over into humans in SE Asia, causing fatal infections. Nipah virus relies on the coordination of two different viral entry proteins to enter cells: the receptor binding and fusion protein. The Nipah virus receptor binding protein is responsible for binding to host receptors (ephrin-B2 and ephrin-B3) on the cell surface. Following receptor binding, the receptor binding protein triggers the fusion protein, which undergoes irreversible conformational changes to fuse the host and viral membranes. Here are the molecular structures of the receptor binding and fusion proteins:

Nipah virus receptor binding protein on left, fusion protein on right. Colors show individual monomers.

Given the spillover risk posed by Nipah, we sought to understand how mutations affect different phenotypes of the receptor binding protein. Specifically, we measured the effects of mutations on three different phenotypes: cell entry, receptor binding, and antibody escape. We utilized a recently developed lentivirus-based platform to perform the deep mutational scanning experiments. By applying different selection conditions on pseudovirus libraries, followed by deep sequencing to recover barcode frequencies, we were able to map the effects of thousands of mutations on the Nipah virus receptor binding protein. These data will help us understand functional constraints, and the possibility of escape from neutralizing antibodies.

Biosafety

All experiments were performed with non-replicative lentiviral-based pseudoviruses in a biosafety-level 2 laboratory by trained personnel. Pseudotyping is a method where viral entry proteins are expressed in combination with a viral vector from a different virus. By only expressing the Nipah receptor binding and fusion proteins on the surface of lentiviral particles, we can safely perform deep mutational scanning experiments without modifying authentic virus. Essential lentiviral genes, such as gag/pol, rev, and tat, are not encoded by the lentiviral vector. These genes are instead introduced by transfecting cells with three separate plasmids. This ensures the pseudotyped lentiviruses cannot replicate outside of a cell culture system where these plasmids are co-transfected. Finally, to limit the information hazards associated with identifying human-specific adaptive mutations, we used ephrin-B2 and ephrin-B3 orthologs from the bat species Pteropus alecto, a natural host of henipaviruses, for all assays.

Built by Brendan Larsen and Jesse Bloom

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Nipah virus deep mutational scanning

Collection of data, figures, and information for the Nipah virus receptor binding protein deep mutational scanning project

About

Nipah virus receptor binding protein

Receptor binding protein (spheres) and ephrin-B2.

This website contains links and information for the Nipah virus receptor binding protein deep mutational scanning project. Look through Jupyter notebooks used in analyses, explore interactive charts, or download raw data. To view more information on the code used to analyze these data and generate the website, check out our GitHub repo. Interactive charts made with Altair. Embedding of Altair plots was done with custom javascript code from dms-vep. All work was done in the Bloom Lab, part of Fred Hutch Cancer Center. To access the old version of the homepage built by dms-vep-pipeline-3, click here.

Scientific Details

Nipah virus is a bat-borne paramyxovirus that occassionally spills over into humans in SE Asia, causing fatal infections. Nipah virus relies on the coordination of two different viral entry proteins to enter cells: the receptor binding and fusion protein. The Nipah virus receptor binding protein is responsible for binding to host receptors (ephrin-B2 and ephrin-B3) on the cell surface. Following receptor binding, the receptor binding protein triggers the fusion protein, which undergoes irreversible conformational changes to fuse the host and viral membranes. Here are the molecular structures of the receptor binding and fusion proteins:

Nipah virus receptor binding protein on left, fusion protein on right. Colors show individual monomers.

Given the spillover risk posed by Nipah, we sought to understand how mutations affect different phenotypes of the receptor binding protein. Specifically, we measured the effects of mutations on three different phenotypes: cell entry, receptor binding, and antibody escape. We utilized a recently developed lentivirus-based platform to perform the deep mutational scanning experiments. By applying different selection conditions on pseudovirus libraries, followed by deep sequencing to recover barcode frequencies, we were able to map the effects of thousands of mutations on the Nipah virus receptor binding protein. These data will help us understand functional constraints, and the possibility of escape from neutralizing antibodies.

Biosafety

All experiments were performed with non-replicative lentiviral-based pseudoviruses in a biosafety-level 2 laboratory by trained personnel. Pseudotyping is a method where viral entry proteins are expressed in combination with a viral vector from a different virus. By only expressing the Nipah receptor binding and fusion proteins on the surface of lentiviral particles, we can safely perform deep mutational scanning experiments without modifying authentic virus. Essential lentiviral genes, such as gag/pol, rev, and tat, are not encoded by the lentiviral vector. These genes are instead introduced by transfecting cells with three separate plasmids. This ensures the pseudotyped lentiviruses cannot replicate outside of a cell culture system where these plasmids are co-transfected. Finally, to limit the information hazards associated with identifying human-specific adaptive mutations, we used ephrin-B2 and ephrin-B3 orthologs from the bat species Pteropus alecto, a natural host of henipaviruses, for all assays.

Built by Brendan Larsen and Jesse Bloom

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Interactive Figures

Explore Nipah virus receptor binding protein deep mutational scanning data with interactive charts.

Click here to explore interactive heatmaps instead.

TIP

Click white square in the upper right of each plot to view full-sized versions.

Correlations by Site


Cell Entry


Correlations

Notebooks

Link to notebooks showing how interactive figures were made:

Interactive figures notebook

Built by Brendan Larsen and Jesse Bloom

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Pipeline Information

The lentivirus-based deep mutational scanning platform relies on obtaining relative frequencies of different receptor binding protein variants that enter cells after applying selection to the libraries. By comparing mutation frequencies before and after selections, we can determine the effects of mutations on different phenotypes.

Calculating the relative frequencies of thousands of variants is not trivial. We rely on two different sequencing technologies to obtain the necessary data.

  • PacBio long-read sequencing to link barcodes to specific mutations in the receptor binding protein.
  • Illumina short-read sequencing to obtain the relative frequencies of barcodes in each selection experiment.

image

Schematic of lentivirus vector used in deep mutational scanning experiments (top), along with sequencing strategy (bottom).

Because PacBio sequencing is expensive and lower throughput, we only sequenced the variant libraries with this technology once. Full-length consensus sequences of the receptor binding protein and associated barcodes are assembled, while discarding low-quality reads. From these assembled consensus sequences we build a codon-variant lookup table, enabling us to match barcodes to specific mutations in the receptor binding protein. All subsequent Illumina sequencing of selection experiments use this lookup table to estimate mutational effects from barcode sequencing data alone. Our generated pseudovirus libraries consist of 60,000 to 80,000 unique variants. Each unique variant is sequenced hundreds of times with Illumina to get accurate frequency measurements.

Most of these computationally intensive steps were analyzed with dms-vep-pipeline-3. This pipeline utilizes the alignparse package. Each step, along with the associated jupyter notebooks are listed below.

Build Pacbio Sequences

PacBio consensus sequences notebook

This notebook builds the Pacbio consensus sequences used to link specific mutations in the receptor binding protein with a unique 16 bp barcode. Parameters used are:

max_minor_sub_frac=0.2
 max_minor_indel_frac=0.2
 min_support=3

These parameters filter consensus sequences generated from Pacbio CCS sequencing and assembly. If an assembled RBP sequence has a mutation or indel in more than 20% of the reads, it will be discarded. Consensus sequences must have at least three reads to be included as variants.

Using alignparse, reads were mapped to a reference sequence, and clipped based on parameters in this config file.

Analyze PacBio CCS Reads

Analyze Pacbio CCS reads notebook

Reports information about CCS read filtering.

Build Codon Variants Notebook

Build codon variants notebook

Builds the codon-variant table from PacBio consensus sequences that links barcodes and RBP mutations. Displays information about the number of mutations and variants present in each library.

Link to codon-variant table .csv file

Illumina Variant Counts

Once the barcodes are linked to mutations in the codon-variant table, all sequencing data is generated with Illumina on a small sequence fragment to obtain the relative frequencies of barcodes in each selection experiment. The config file linked below specifies the parameters used for converting barcode counts to functional scores, which are used to estimate cell entry.

Analysis of variant counts notebook

Link to raw barcode count .csv files

Link to functional selection config file

Filtering Selection Data

Filtering notebook

Once the effects of mutations on different phenotypes have been calculated, we perform a data filtering step to remove low confidence measurements. The filtering parameters are contained within the nipah_config.yaml file. More information about these parameters are listed in the notebook. In brief, we require mutations to be present in at least two barcodes, and have low variance between selection replicates.

Filtered Data

These data have been filtered and are the best choice for anyone interested in analyzing the data themselves. For unfiltered raw .csv files of mutational effects on different phenotypes, go to individual pages to view and download.

Cell Entry

CHO-bEFNB2 entry filtered (.csv)

CHO-bEFNB3 entry filtered (.csv)

Receptor Binding

bEFNB2 monomeric binding filtered (.csv)

bEFNB3 dimeric binding filtered (.csv)

Antibody Escape

Antibody escape filtered (.csv)

Miscellaneous Notebooks

Notebook for finding correlations between libraries and making histogram of variants

Notebook for making a Nipah phylogeny

Notebook for making specific file formats (.defattr), to map site-averaged scores onto protein structures in Chimera

Notebook for calculating atomic distances between residues from a PDB file

Notebook for finding variable sites in Nipah or Henipavirus alignments

Built by Brendan Larsen and Jesse Bloom

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Receptor Binding

To understand how mutations affect binding to ephrin receptors, we performed selections on our pseudovirus libraries with soluble bat ephrin-B2 and ephrin-B3. Neutralization of pseudovirus variants serves as a proxy for receptor binding. Neutralization curves were fit with polyclonal.

Pseudoviruses expressing unmutated Nipah virus receptor binding and fusion proteins were neutralized by soluble bat ephrin receptors.

Ephrin neutralization of pseudoviruses expressing unmutated Nipah receptor binding and fusion proteins.

Individual Receptor Binding Selections

Individual antibody selection model fitting notebooks

LibB-231108-bEFNB2-monomeric

LibA-231112-bEFNB2-monomeric

LibA-231207-bEFNB2-monomeric

LibA-231222-bEFNB2-monomeric

LibB-231222-bEFNB2-monomeric

LibA-230818-EFNB3-dimeric

LibA-230825-bEFNB3-dimeric

LibB-230907-bEFNB3-dimeric

Average Receptor Binding

These notebooks average effects of mutations on receptor binding across libraries and replicate selections.

bEFNB2-monomeric

bEFNB3-dimeric

Comprehensive Receptor Binding Heatmaps

Additional control over filtering parameters. Users can adjust different parameters to filter the heatmap data. These provide more information and control compared to the final filtered heatmaps provided on the heatmaps page.

bEFNB2-monomeric heatmap

bEFNB3-dimeric heatmap

Binding Correlations

Effects of mutations on binding to bat ephrin-B2 and bat ephrin-B3, with mutations of interest highlighted

Binding Validations

Binding Validation by Biolayer Interferometry

To validate our DMS binding measurements, we tested binding affinity by biolayer interferometry. Notebook analyzing biolayer interferometry data and plotting correlations.

Correlation of biolayer interferometry affinity measurements with deep mutational scanning measurements

Binding Validation by Neutralization

We also tested neutralization of individual mutations expressed on pseudoviruses with soluble bat ephrin-B2 (monomeric) or bat ephrin-B3 (dimeric). Individual mutations affect neutralizing potency by soluble receptor. Binding validations notebook

Neutralization of receptor binding protein mutant pseudoviruses and correlation with deep mutational scanning.

Analysis Notebooks

Notebook analyzing receptor binding from filtered data. Make figures for manuscript using python and altair.

Binding analysis notebook

Raw Data

Built by Brendan Larsen and Jesse Bloom

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- + Nipah virus receptor binding protein

Receptor binding protein (spheres) and ephrin-B2.