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Demos for canprot

The canprot package calculates chemical metrics of proteins from amino acid compositions. This vignette was compiled on 2024-03-28 with canprot version 2.0.0.

Next vignette: Introduction to canprot

canprot demo #1: Thermophiles

Run the demo using demo("thermophiles"). For this demo, just the output is shown below.

The canprot functions used are:

The data are from Dick et al. (2023) for methanogen genomes (amino acid composition and optimal growth temperature) and from Luo et al. (2024) for Nitrososphaeria MAGs (genome assemblies and habitat and respiration types). The plots reveal that proteins tend to have higher specific entropy in thermophilic genomes and MAGs from thermal habitats compared to mesophilic genomes and MAGs from nonthermal habitats, for a given carbon oxidation state. This implies that, after correcting for ZC, proteins in thermophiles have a more negative derivative of the standard Gibbs energy per gram of protein with respect to temperature.

canprot demo #2: Subcellular locations

Run the demo using demo("locations"). The code and output of the demo are shown below.

The canprot functions used are:

# Read SI table
file <- system.file("extdata/protein/TAW+17_Table_S6_Validated.csv", package = "canprot")
dat <- read.csv(file)
# Keep only proteins with validated location
dat <- dat[dat$Reliability == "Validated", ]
# Keep only proteins with one annotated location
dat <- dat[rowSums(dat[, 4:32]) == 1, ]

# Get the amino acid compositions
aa <- human_aa(dat$Uniprot)
# Put the location into the amino acid data frame
aa$location <- dat$IF.main.protein.location

# Use top locations (and their colors) from Fig. 2B of Thul et al., 2017
locations <- c("Cytosol","Mitochondria","Nucleoplasm","Nucleus","Vesicles","Plasma membrane")
col <- c("#194964", "#2e6786", "#8a2729", "#b2333d", "#e0ce1d", "#e4d71c")
# Keep the proteins in these locations
aa <- aa[aa$location %in% locations, ]
## Keep only proteins with length between 100 and 2000
#aa <- aa[plength(aa) >= 100 & plength(aa) <= 2000, ]

# Get amino acid composition for proteins in each location
# (Loop over groups by piping location names into lapply)
aalist <- lapply(locations, function(location) aa[aa$location == location, ] )

# Setup plot
par(mfrow = c(1, 2))
titles <- c(Zc = "Carbon oxidation state", pI = "Isoelectric point")
# Calculate Zc and pI
for(metric in c("Zc", "pI")) {
  datlist <- lapply(aalist, metric)
  bp <- boxplot(datlist, ylab = cplab[[metric]], col = col, show.names = FALSE)
  add_cld(datlist, bp)
  # Make rotated labels
  x <- (1:6) + 0.1
  y <- par()$usr[3] - 1.5 * strheight("A")
  text(x, y, locations, srt = 25, adj = 1, xpd = NA)
  axis(1, labels = FALSE)
  title(titles[metric], font.main = 1)
}

The plots show carbon oxidation state (ZC) and isoelectric point (pI) for human proteins in different subcellular locations. The localization data is from Table S6 of Thul et al. (2017), filtered to include proteins that have both a validated location and only one predicted location.

canprot demo #3: Redoxins

Run the demo using demo("redoxins"). For this demo, just the output is shown below.

The canprot functions used are:

This is an exploratory analysis for hypothesis generation about evolutionary links between midpoint reduction potential and ZC of proteins. The reduction potential data was taken from Åslund et al. (1997) and Hirasawa et al. (1999) for E. coli and spinach proteins, respectively. This plot is modified from Fig. 5 of this preprint; the figure did not appear in the published paper.

References

Åslund F, Berndt KD, Holmgren A. 1997. Redox potentials of glutaredoxins and other thiol-disulfide oxidoreductases of the thioredoxin superfamily determined by direct protein-protein redox equilibria. Journal of Biological Chemistry 272(49): 30780–30786. doi: 10.1074/jbc.272.49.30780

Dick JM, Boyer GM, Canovas PA, Shock EL. 2023. Using thermodynamics to obtain geochemical information from genomes. Geobiology 21(2): 262–273. doi: 10.1111/gbi.12532

Hirasawa M, Schürmann P, Jacquot J-P, Manieri W, Jacquot P, Keryer E, Hartman FC, Knaff DB. 1999. Oxidation-reduction properties of chloroplast thioredoxins, ferredoxin:thioredoxin reductase, and thioredoxin f-regulated enzymes. Biochemistry 38(16): 5200–5205. doi: 10.1021/bi982783v

Luo Z-H, Li Q, Xie Y-G, Lv A-P, Qi Y-L, Li M-M, Qu Y-N, Liu Z-T, Li Y-X, Rao Y-Z, et al. 2024. Temperature, pH, and oxygen availability contributed to the functional differentiation of ancient Nitrososphaeria. The ISME Journal 18(1): wrad031. doi: 10.1093/ismejo/wrad031

Thul PJ, Åkesson L, Wiking M, Mahdessian D, Geladaki A, Blal HA, Alm T, Asplund A, Björk L, Breckels LM, et al. 2017. A subcellular map of the human proteome. Science 356(6340): eaal3321. doi: 10.1126/science.aal3321

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.