| Literature DB >> 28959545 |
Yauheniya Cherkas1, Michael K McMillian2, Dhammika Amaratunga2, Nandini Raghavan3, Jennifer C Sasaki2.
Abstract
As legacy toxicogenomics databases have become available, improved data mining approaches are now key to extracting and visualizing subtle relationships between toxicants and gene expression. In the present study, a novel "aggregating bundles of clusters" (ABC) procedure was applied to separate cholestatic from non-cholestatic drugs and model toxicants in the Johnson & Johnson (Janssen) rat liver toxicogenomics database [3]. Drug-induced cholestasis is an important issue, particularly when a new compound enters the market with this liability, with standard preclinical models often mispredicting this toxicity. Three well-characterized cholestasis-responsive genes (Cyp7a1, Mrp3 and Bsep) were chosen from a previous in-house Janssen gene expression signature; these three genes show differing, non-redundant responses across the 90+ paradigm compounds in our database. Using the ABC procedure, extraneous contributions were minimized in comparisons of compound gene responses. All genes were assigned weights proportional to their correlations with Cyp7a1, Mrp3 and Bsep, and a resampling technique was used to derive a stable measure of compound similarity. The compounds that were known to be associated with rat cholestasis generally had small values of this measure relative to each other but also had large values of this measure relative to non-cholestatic compounds. Visualization of the data with the ABC-derived signature showed a very tight, essentially identically behaving cluster of robust human cholestatic drugs and experimental cholestatic toxicants (ethinyl estradiol, LPS, ANIT and methylene dianiline, disulfiram, naltrexone, methapyrilene, phenacetin, alpha-methyl dopa, flutamide, the NSAIDs--indomethacin, flurbiprofen, diclofenac, flufenamic acid, sulindac, and nimesulide, butylated hydroxytoluene, piperonyl butoxide, and bromobenzene), some slightly less active compounds (3'-acetamidofluorene, amsacrine, hydralazine, tannic acid), some drugs that behaved very differently, and were distinct from both non-cholestatic and cholestatic drugs (ketoconazole, dipyridamole, cyproheptadine and aniline), and many postulated human cholestatic drugs that in rat showed no evidence of cholestasis (chlorpromazine, erythromycin, niacin, captopril, dapsone, rifampicin, glibenclamide, simvastatin, furosemide, tamoxifen, and sulfamethoxazole). Most of these latter drugs were noted previously by other groups as showing cholestasis only in humans. The results of this work suggest that the ABC procedure and similar statistical approaches can be instrumental in combining data to compare toxicants across toxicogenomics databases, extract similarities among responses and reduce unexplained data varation.Entities:
Keywords: Cholestasis; Cluster analysis; Gene signature; Microarray; Prediction; Toxicogenomics
Year: 2016 PMID: 28959545 PMCID: PMC5615833 DOI: 10.1016/j.toxrep.2016.01.009
Source DB: PubMed Journal: Toxicol Rep ISSN: 2214-7500
Figure abbreviations for cholestatic (red) and non-cholestatic (black) pharmaceuticals and model toxicants used in this study. Compounds were dosed via oral gavage (p.o.) unless otherwised noted (subcutaneous—s.c.; intraperitoneal—i.p.).
Fig. 1mRNA expression profiles of 3 genes (Cyp7a1, Mrp3 and Bsep) to cholestatic (red) and non-cholestatic (black) training set pharmaceuticals and model toxicants in male rat liver. Note that no clear separation was observed between classes.
Fig. 2Principal component analysis of training set (plot of first two components). The applied methods generate a composite representative point with arbitrary units within a two-dimensional space reflecting the similarity of one compound to another.
Fig. 3Two-dimensional scatterplot of training set using multidimensional scaling to illustrate dissimilarity between every pair of pharmaceuticals and model toxicants based on Euclidean distance. The applied methods generate a composite representative point with arbitrary units within a two-dimensional space reflecting the similarity of one compound to another.
Fig. 4Two-dimensional scatterplot of training set using multidimensional scaling to illustrate dissimilarity between every pair of pharmaceuticals and model toxicants based on 1-correlation. The applied methods generate a composite representative point with arbitrary units within a two-dimensional space reflecting the similarity of one compound to another.
Fig. 5Two-dimensional projection of the similarities and dissimilarities of training set pharmaceuticals and model toxicants based on multi-dimensional scaling following the ABC clustering procedure. Non-cholestatic compounds are noted in black and cholestatic compunds are noted in red. The applied statistical methods generate a composite representative point with arbitrary units within a two-dimensional space reflecting the similarity of one compound to another. A strong cholestatic (red) cluster can be noted on the lower right.
Fig. 6Expanded view of the cholestatic (red) compounds in the right-hand “arm” of Fig. 1. Two-dimensional projection of the similarities and dissimilarities of training set pharmaceuticals and model toxicants based on multi-dimensional scaling following the ABC clustering procedure. The applied statistical methods generate a composite representative point with arbitrary units within a two-dimensional space reflecting the similarity of one compound to another.
ABC technique-derived prediction set of rat cholestatic and non-cholestatic pharmaceuticals and model toxicants. Note the selected non-cholestatic compounds in rat are all cholestatic in human patients.
| Cholestatic compounds from the right arm | Non-cholestatic compounds from the left arm |
|---|---|
| Ethinyl Estradiol | ErythroMC Estolate |
| Methylenedianiline | Rifampin |
| ANIT | Captopril |
| Disulfiram | Niacin |
| Piperonyl butoxide | |
| Methapyrilene | |
| Ketoconazole | |
| Bromobenzene | |
| Flutamide | |
| Nimesulide |
Rat specific cholestasis gene signature. The top 100 genes associated with rat cholestasis, as derived by a boosting procedure with the elastic net approach. Genes were selected by comparing compounds (all known cholestatic in patients) from the two training sets in Table 2.
| Codelink | Accession # | Rat gene |
|---|---|---|
| GE1266870 | Gstcd | |
| GE20245 | Akr7a3 | |
| GE1298481 | Nars | |
| GE21882 | Nrg1 | |
| GE14709 | Psat1 | |
| GE1147805 | Zfp57 | |
| GE12632 | Tubb2c | |
| GE16026 | Rexo2 | |
| GE1130267 | Mmd2 | |
| GE20928 | Kcnma1 | |
| GE16596 | Pprc1 | |
| GE20102 | Npap60 | |
| GE1206415 | Golt1b | |
| GE15377 | Mmd2 | |
| GE15995 | Mthfd2-201 | |
| GE18028 | Hmgn1 | |
| GE1287407 | Pbdc1 | |
| GE1262741 | Similar to ATPase inhibitory factor 1 | |
| GE1259381 | Cyp2d4v1 | |
| GE19894 | Spink1 | |
| GE1173529 | Pgs1 | |
| GE16306 | Ankhd1 | |
| GE1168184 | Tctex1 | |
| GE13574 | Txn1 | |
| GE1185733 | NosipGE1116501 BF565830 | |
| GE17633 | Fam98a | |
| GE19200 | Cad | |
| GE1128152 | GTPase Ran | |
| GE1150923 | Yars | |
| GE17038 | Mrps27 | |
| GE1106781 | Tubb6 | |
| GE20964 | Mrpl17 | |
| GE1287274 | ||
| GE1249888 | Map3k6 | |
| GE16626 | Fkbp11 | |
| GE1167706 | Tubb5 | |
| GE1261576 | ||
| GE20940 | Hpgd | |
| GE18776 | Cdr2 | |
| GE17115 | Ran | |
| GE1174448 | similar to lipase, member H | |
| GE1181134 | ||
| GE19529 | Prkcdbp | |
| GE1101245 | ||
| GE15329 | Gsr | |
| GE1170908 | Slc35e3 | |
| GE1195574 | Lsm4 | |
| GE20274 | Gstm1 | |
| GE14242 | Coq6 | |
| GE1305121 | EST232037 | |
| GE12903 | Gnai1 | |
| GE1206195 | similar to Fam48a protein | |
| GE19392 | TLOAEA57YJ04 | |
| GE1166787 | ||
| GE1291343 | Xpo1 | |
| GE1219528 | Trmt10a | |
| GE1135723 | Ppp1r3b | |
| GE1237072 | Gstm4 | |
| GE1277644 | Gpt1 | |
| GE1236134 | ||
| GE22230 | Sds | |
| GE17670 | Tigar | |
| GE1216317 | Trmt10a | |
| GE1210818 | Apex1 | |
| GE1125325 | GstYc2 | |
| GE1262042 | Apmap | |
| GE1100230 | Slc16a10 | |
| GE12644 | Ppil3 | |
| GE1297200 | Xkr8 | |
| GE1168155 | EST452816 | |
| GE17771 | Nek6 | |
| GE1205310 | Cml1 | |
| GE22027 | Kynu | |
| GE1197342 | Krt23 | |
| GE15769 | ||
| GE14364 | Mcee | |
| GE20988 | Mif | |
| GE1158473 | Srxn1 | |
| GE16476 | ||
| GE16012 | Tnfrsf12a | |
| GE18057 | Mthfd1l | |
| GE1284234 | Mafb | |
| GE1130388 | ||
| GE1167776 | ||
| GE16853 | Nif3l1 | |
| GE1119096 | ||
| GE1274350 | Ptprd | |
| GE1201399 | ||
| GE15155 | Nup205_predicted | |
| GE13570 | Ran | |
| GE15126 | Lurap1l | |
| GE1296800 | Taf9 | |
| GE16570 | EST346711 | |
| GE12527 | Hmgn3 | |
| GE1228263 | ||
| GE20373 | Cfl1 | |
| GE1236758 | Fam3c | |
| GE19575 | Sds | |
| GE1210173 |