| Literature DB >> 27766364 |
Arathi Kizhedath1,2, Simon Wilkinson3, Jarka Glassey4.
Abstract
Biopharmaceuticals, monoclonal antibody (mAb)-based therapeutics in particular, have positively impacted millions of lives. MAbs and related therapeutics are highly desirable from a biopharmaceutical perspective as they are highly target specific and well tolerated within the human system. Nevertheless, several mAbs have been discontinued or withdrawn based either on their inability to demonstrate efficacy and/or due to adverse effects. Approved monoclonal antibodies and derived therapeutics have been associated with adverse effects such as immunogenicity, cytokine release syndrome, progressive multifocal leukoencephalopathy, intravascular haemolysis, cardiac arrhythmias, abnormal liver function, gastrointestinal perforation, bronchospasm, intraocular inflammation, urticaria, nephritis, neuropathy, birth defects, fever and cough to name a few. The advances made in this field are also impeded by a lack of progress in bioprocess development strategies as well as increasing costs owing to attrition, wherein the lack of efficacy and safety accounts for nearly 60 % of all factors contributing to attrition. This reiterates the need for smarter preclinical development using quality by design-based approaches encompassing carefully designed predictive models during early stages of drug development. Different in vitro and in silico methods are extensively used for predicting biological activity as well as toxicity during small molecule drug development; however, their full potential has not been utilized for biological drug development. The scope of in vitro and in silico tools in early developmental stages of monoclonal antibody-based therapeutics production and how it contributes to lower attrition rates leading to faster development of potential drug candidates has been evaluated. The applicability of computational toxicology approaches in this context as well as the pitfalls and promises of extending such techniques to biopharmaceutical development has been highlighted.Entities:
Keywords: In vitro and in silico tools; Monoclonal antibody-based therapeutics; Predictive toxicology; QSAR; Safety pharmacology
Mesh:
Substances:
Year: 2016 PMID: 27766364 PMCID: PMC5364268 DOI: 10.1007/s00204-016-1876-7
Source DB: PubMed Journal: Arch Toxicol ISSN: 0340-5761 Impact factor: 5.153
Fig. 1Generic monoclonal antibody-derived therapeutic structures as adapted from IMGT (Lefranc et al. 2009; World Health O 2006). Fc constant region which contributes to effector function, immune response and increased half-life, Fv variable region that contains complementarity determining regions (CDRs) facilitating antigen binding, Fab antigen binding fragment which lacks Fc region, scFv single chain fragment variable, FP Fc fusion proteins that contain Fc region for effector functionality (e.g. Abatacept), CP composite protein that contains Fc region for increasing half-life and not for effector functionality (e.g. Strensiq™) (World Health 2006)
List of approved monoclonal antibody-derived therapeutics and toxicity
| Generic name | Type | Antigena | Species | Therapy area | Production | Therapy-associated toxicity |
|---|---|---|---|---|---|---|
| Abatacept | FP | CD80, CD86 |
| Immunology | CHO | Occular toxicity, immunotoxicity, dermal toxicity, infection |
| Abciximab | Fab IgG1κ | ITGA2B_ITGB3 | Chimeric | Cardiology | Sp2/0 | Immunotoxicity, haemotoxicity |
| Adalimumab | IgG1κ | TNF |
| Immunology | CHO | Immunotoxicity cardiotoxicity, infection, hepatoxicity haemotoxicity, others |
| Aflibercept | FP | VEGFA |
| Ophthalmology, oncology | CHO K-1 | Occular toxicity haemotoxicity cardiotoxicity |
| Alemtuzamab | IgG1κ | CD52 | Humanized | Haematology, oncology, immunology | CHO | Immunotoxicity, haemotoxicity cardiotoxicity others |
| Alirocumab | IgG1κ | PCSK9 |
| Cardiology | VelocImmune® | Neurotoxicity, dermal toxicity occular toxicity cardiotoxicity |
| Asfotase alpha | CP |
| Hypophosphatas-ia | CHO | Immunotoxicity dermal toxicity renal toxicity, occular toxicity others | |
| Basiliximab | IgG1κ | IL2RA | Chimeric | Immunology | Sp2/0 | Immunotoxicity dermal toxicity |
| Belatacept | FP | CD80, CD86 |
| Immunology | CHO | Renal toxicity, infection, others |
| Belimumab | IgG1λ | TNFSF13B |
| Immunology | NS0 (serum free) | Immunotoxicity infection, others |
| Besilesomab | IgG1κ | CEACAM8 |
| Osteology (diagnostic) | Hybridoma technology* | Cardiotoxicity immunotoxicity |
| Bevacizumab | IgG1κ | VEGFA | Humanized | Oncology | CHO | Cardiotoxicity, infection, haemotoxicity, gastrointestinal, others |
| Blinatumomab | scFv κH–scFv κH | CD19, CD3E |
| Haematology, oncology | BiTE® | Immunotoxicity, neurotoxicity |
| Brentuximab | IgG1κ | TNFRSF8 | Chimeric | Oncology | CHO | Cardiotoxicity, infection, pulmonary toxicity |
| Canakinumab | IgG1κ | IL1B |
| Hereditary inflammatory diseases; immunology | UltiMAb® | Infection, others |
| Capromab | IgG1κ | FOLH1 |
| Oncology | Hybridoma technology** | NR |
| Catumaxomab | IgG2aκ/G2bλ | CD3E, EPCAM |
| Oncology | Quadroma technology+ | Haemotoxicity, immunotoxicity, others |
| Certolizumab | Fab´-G1κ | TNF | Humanized | Immunology |
| Immunotoxicity cardiotoxicity, infection, hepatoxicity haemotoxicity |
| Cetuximab | IgG1κ | EGFR | Chimeric | Oncology | Sp2/0 | Immunotoxicity, dermal toxicity, pulmonary toxicity |
| Daclizumab*** | IgG1κ | IL2RA | Humanized | Immunology | NS0 | Immunotoxicity, dermal toxicity |
| Daratumumab | IgG1κ | CD38 |
| Haematology, oncology, immunology | UltiMAb® | Haemotoxicity, immunotoxicity, pulmonary toxicity |
| Denosumab | IgG2 | TNSF11 |
| Osteology | XenoMouse® | Haemotoxicity, infection |
| Eculizumab | IgG2/G4κ | C5 | Humanized | Haematology | NS0 | Haemotoxicity, infection |
| Edrecolomab | IgG2aκ | EPCAM |
| Oncology | Sp2/0 | Immunotoxicity, others |
| Elotuzumab | IgG1κ | SLAMF7 | Humanized | Haematology, oncology, immunology | NS0 (Varma et al. | Haemotoxicity, gastrointestinal, others |
| Etanercept | FP | TNF |
| Immunology | CHO | Infection, cardiotoxicity, hepatotoxicity, immunotoxicity |
| Evolocumab | IgG2λ | PCSK9 |
| Cardiovascular diseases | XenoMouse® | Immunotoxicity, haemotoxicity, infection, others |
| Factor IX Fc FP | CP | NA |
| Haematology | Transfected HEK cell line | NR |
| Factor VIII Fc FP | CP | NA |
| Haematology | Transfected HEK cell line. | NR |
| Golimumab | IgG1κ | TNF |
| Immunology | UltiMAb® | Dermal toxicity |
| Ibritumomab | IgG1κ | MS4A1 |
| Oncology | CHO | Haemotoxicity, dermal toxicity, others |
| Idarucizumab | Fab-G1κ | Pradaxa®: Dabigatran etexilate mesylate | Humanized | Reversal of drug overdose | CHO | Dermal toxicity, gastrointestinal, infection, others |
| Infliximab | IgG1κ | TNF | Chimeric | Immunology | Sp2/0 | Immunotoxicity cardiotoxicity, infection, hepatoxicity haemotoxicity, others |
| Ipilimumab | IgG1κ | CTLA4 |
| Oncology | UltiMAb® | Hepatotoxicity, neurotoxicity, pulmonary toxicity, gastrointestinal toxicity |
| Mepolizumab | IgG1κ | IL5 | Humanized | Immunology | CHO | Infection, cardiotoxicity, others |
| Mogamulizumab | IgG1κ | CCR4 | Humanized | Haematology, oncology | POTELLIGENT® | Immunotoxicity, dermal toxicity |
| Muromonab-CD3 | IgG2aκ | CD3E |
| Immunology | Hybridoma murine ascites | Immunotoxicity, hepatotoxicity, cardiotoxicity |
| Natalizumab | IgG4 | ITGA4 | Humanized | Immunology | NS0 | Immunotoxicity, hepatotoxicity, infection |
| Necitumumab | IgG1κ | EGFR |
| Oncology | UltiMAb® | Haemotoxicity, immunotoxicity, pulmonary toxicity, hepatotoxicity |
| Nimotuzumab | IgG1κ | EGFR | Humanized | Oncology | NS0 | Dermal toxicity |
| Nivolumab | IgG4κ | PDCD1 |
| Oncology | UltiMAb® | Immunotoxicity, hepatotoxicity, gastrointestinal toxicity, pulmonary toxicity, renal toxicity |
| Obinutuzumab | IgG1κ | MS4A1 | Humanized | Haematology, oncology | GlycoMAb® | Infection |
| Ofatumumab | IgG1κ | MS4A1 |
| Haematology, oncology | UltiMAb®, NS0 | Infection, gastrointestinal toxicity |
| Omalizumab | IgG1κ | IGHE | Humanized | Immunology | CHO | Immunotoxicity, dermal toxicity, infection |
| Palivizumab | IgG1κ | RSV glycoprotein F | Humanized | Infectiology | NS0 | Immunotoxicity, others |
| Panitumumab | IgG2κ | EGFR |
| Oncology | XenoMouse® CHO | Immunotoxicity, pulmonary toxicity, dermal toxicity |
| Pembrolizumab | IgG4κ | PDCD1 | Humanized | Oncology | CHO | Immunotoxicity, pulmonary, others |
| Pertuzumab | IgG1κ | ERBB2 | Humanized | Oncology | CHO++ | Reproductive and developmental toxicity, dermal toxicity, haemotoxicity, immunotoxicity, cardiotoxicity |
| Ramucirumab | IgG1κ | KDR |
| Oncology | NS0 | Haemotoxicity, cardiotoxicity, gastrointestinal, others |
| Ranibizumab | Fab G1κ | VEGFA | Humanized | Ophthalmology, immunology |
| Cardiotoxicity, haemotoxicity, occular toxicity |
| Raxibacumab | IgG1λ | Anthrax protective antigen |
| Infectiology | CHO | Haemotoxicity, infection, dermal toxicity, others |
| Rilonacept | FP | IL1A |
| Immunology | CHO | Dermal toxicity, immunotoxicity |
| Rituximab | IgG1κ | MS4A1 | Chimeric | Haematology, oncology, immunology | CHO-MR | Immunotoxicity, cardiotoxicity, infection, others |
| Romiplostim | CP | MPL |
| Immunology |
| Haemotoxicity, infection, others |
| Secukinumab | IgG1κ | IL17A |
| Immunology | XenoMouse® | Infection, haemotoxicity, cardiotoxicity |
| Siltuximab | IgG1κ | IL6 | Chimeric | Haematology, oncology, immunology | CHO | Immunotoxicity, gastrointestinal toxicity, infection |
| Tocilizumab | IgG1κ | IL6R | Humanized | Oncology, immunology | CHO-DR | Immunotoxicity, infection, hepatotoxicity, others |
| Trastuzumab | IgG1κ | ERBB2 | Humanized | Oncology | CHO-MR | Immunotoxicity, hepatotoxicity, cardiotoxicity, pulmonary toxicity, dermal toxicity |
| Ado-trastuzumab (emantsine) | IgG1κ | ERBB2 | Humanized | Oncology | CHO | Reproductive and developmental toxicity, dermal toxicity, hepatotoxicity, cardiotoxicity |
| Ustekinumab | IgG1κ | IL12B |
| Immunology | UltiMAb® | Neurotoxicity, cardiotoxicity others |
| Vedolizumab | IgG1κ | ITGA4 ITGB7 | Humanized | Immunology | CHO | Infection, pulmonary toxicity, other |
FP fusion protein, CP composite protein, Fab antigen binding fragment, IgG immunoglobulin G, CHO Chines hamster ovary cells, CHO-DR Chines hamster ovary cells dihydrofolate reductase; CHO-MR Chines hamster ovary cells methotrexate resistant; NS0 non-secreting murine myeloma cells, Sp2/0 hybridoma B lymphocyte, NA not applicable, HEK human embryonic kidney cell line
* X63Ag8.653 and spleen cells from Balb/c mice previously immunized with CEA antigen (from human liver metastasis)
** Fusing P3 × 63Ag8.653 myeloma cells with spleen cells from BALB/c mice immunized with whole cells and membrane extracts of the human prostate adenocarcinoma cell line LNCaP
*** EC withdrawal
+Consists of mouse IgG2a and rat IgG2b;++Fed-batch process using a suspension-adapted CHO cell line
aNomenclature derived from HUGO Gene nomenclature Committee resources (Povey et al. 2001)
Fig. 2a Monoclonal antibody structure with binding site for antigen, FcγR and FcRn receptor as well as glycosylation sites (Glycan); Ag antigen, CDC complement-dependent cytotoxicity, ADCC antibody-dependent cell cytotoxicity, ADCP antibody-dependent cell phagocytosis, b glycosylation profile at N297 residue of the Fc region of antibodies. The bold line indicates core structures, and dotted line indicates variable structures. Gal galactose, SA sialic acid, man mannose, GlcNAc N-acetylglucosamine, Fuc fucose, Asn asparagine (N297)
IgG receptors and effector functions
| Function | Binding affinity | Expression | Important AA residues | Impact of glycosylationb | ||
|---|---|---|---|---|---|---|
| IgG subclass | Ka (106 M−1) | |||||
| C1q | CDC |
|
| Present in serum | L235, D265, D270, K322, P329, P331, H433 | Galactose: ↑ CDC; |
| FcγRI | Activation |
|
| Monocytes, macrophages | E233, L235, G236 | Unclear |
| FcγRIIA (H131) | Activation |
|
| Monocytes, macrophages | L234, L235, G236, A327 | Unclear |
| FcγRIIA (R131) |
|
| ||||
| FcγRIIB/C | Inhibition |
|
| B cells | Unclear | Unclear |
| FcγRIIIA (F158) | Activation |
|
| Natural killer cells | E233, L234, L235G236 | Mannose, Bisecting GlcNac:↑ ADCC; |
| FcγRIIIA (V158) |
|
| ||||
| FcγRIIIB | Unclear |
|
| Neutrophils | L234, L235G236, G237, P238 | Unclear |
| FcRn | Transcytosis |
|
| Monocytes, macrophages, Dendritic Cells | H433, N434, H435, Y436 | Galactose, Mannose, GlcNAc: ↑ Clearance |
Bold: IgG1, italic IgG2
Bolditalic: IgG3
Underline: IgG4
NA not applicable, AA amino acid
**** Very high affinity
*** High affinity
** Moderate affinity
* Low affinity;—no binding
IInducible expression
aLow percentages
bLiu (2015)
Comprehensive overview of in silico prediction tools for assessing toxicology
| Name | Particulars | Accessibility | Owned by |
|---|---|---|---|
| ACD ToxSuite | Molecular fragment QSAR and knowledge expert system, (Perceptra platform) employing machine learninga,h,i,j,k,l,m,r,s | Commercial | ACD Labs, Pharma algorithms |
| Admensa interactive™ | QSAR-based systemh,k,l | Commercial | Inpharmatica Ltd. |
| ADMET™ predictor | QSAR-based expert system and machine learningb,c,d,e,f,j,k | Commercial | Stimulation Plus Inc. |
| ADMEWORKS Predictor | QSAR,QSPR-based expert systema,b,l | Commercial | Fujitsu, Poland |
| AIM | Category formation and read across | Free | US EPA |
| BfR decision support system | SAR and physicochemical exclusion rule-based system. Employs concordance decision tree approachd,i,o | Free | German Federal Institute for Risk Assessment |
| BioEpisteme | Molecular descriptor QSARb,h,k,n | Commercial | Prous Institute for Biomedical Research, Spain |
| Bio-loom | QSAR database CLOGP, CMRh,j | Commercial | Biobyte |
| CAESAR | QSAR-based expert systems based on Dragon descriptors and Multivariate approachesa,b,d,e | Free | EU |
| CaseUltra (MC4PC) | Molecular fragment QSAR-based expert system using machine learninga,b,c,d,I,j,k | Commercial | MultiCASE Inc. |
| Cerius2/Material Studio | Molecular modelling softwarek,l | Commercial | Accelrys Inc. |
| COMPACT | SAR and knowledge-based system employs molecular orbital descriptorsa,b,c,k | Free | US NTP |
| CSgenoTOX | QSAR-based system and machine learning(ANN)a | Commercial | ChemSilico |
| DEREK NEXUS | SAR knowledge-based expert systema,b,c,d,e | Commercial | Lhasa Ltd. |
| HazardExpert (ToxAlert) | QSAR knowledge-based expert systema,b,d,e,n,o,p | Commercial | Compudrug Inc. |
| Insilicofirst | Common user interface expert system | Commercial | Lhasa Ltd., Leadscope, Multicase, MN GmbH |
| KNIME® | QSAR workflow tool | Open | KNIME.com |
| LAZAR | KNN approach (machine learning)a,b,k | Open source | In silico toxicology GmbH |
| Leadscope model applier | QSAR and expert rule-based knowledge systemb,c,e,g,h,k,n | Commercial | Leadscope Inc. |
| MDL QSAR | Molecular descriptor QSAR, QSPR, multivariate approachesa,b,h,j | Commercial | Symyx - MDL, Inc. |
| Molcode toolbox | QSAR-based prediction toola,b,d,i,j | Commercial | Molcode Ltd. |
| OECD QSAR toolbox | Category formation and read across, QSAR for multiple endpoints | Free | OECD |
| Oncologic™ | SAR rule-based expert system. Employs hierarchical decision tree approachb | Free | US EPA |
| PASS | SAR-based expert system using biological activity spectra and MNAb,j,o,r | Free | geneXplain GmbH |
| Pre ADMET | QSAR-based system and machine learninga,b,l | Commercial | BMDRC Korea |
| QikProp | QSAR-based expert systemh,l | Commercial | Schrödinger Inc. |
| q-TOX | Knowledge-based expert systemf,h,j,k,m,n | Commercial | Quantum pharmaceuticals |
| Sarah nexus | Statistical software toola | Commercial | Lhasa Ltd. |
| StarDrop | QSAR-based expert systemh | Commercial | Optibrium Ltd. |
| T.E.S.T | QSAR-based expert system and machine learningg,j | Free | US EPA |
| TerraQSAR | Molecular fragment QSAR-based expert system. Employs probabilistic neural networksd,g,j,o | Commercial | TerraBase Inc. |
| TIMES | Structural alerts and COREPA software-based hybrid expert systema,d,g | Commercial | Bourgas University, Bulgaria |
| TOPKAT | QSAR, SAR, QSTR-based expert system using Bayesian classification and partial least square regression modelsb,c,d,e,i,j,k,q, | Commercial | BIOVIA Discovery Studio® |
| ToxMatch | Category formation and read acrossd | Free | Ideaconsult Ltd. |
| ToxTree | Category formation and read acrossa,b,c,d,i,l | Free | Ideaconsult Ltd. |
| ToxWiz | Knowledge base expert system | Commercial | Cambridge cell networks |
AIM analog identification methodology US EPA united states environmental protection agency, FDA food and drugs administration, NTP national toxicology program EU European Union, QSAR quantitative structure—activity relationships, QSPR quantitative structure—property relationship, QSTR quantitative—structure toxicity relationship, TOPKAT toxicity prediction by computer assisted technology, PASS prediction of biological activity spectra for substances, CAESAR computer assisted evaluation of industrial chemical substances according to regulations, T.E.S.T toxicity estimation software tool, COMPACT computer-optimized parametric analysis of chemical toxicity, LAZAR lazy structure–activity relationships, TIMES tissue metabolism simulator, ADMET absorption, distribution, metabolism, excretion, toxicity, MNA multilevel neighbourhood of atoms, COREPA common reactivity pattern approach, ANN artificial neural networks
aMutagenicity, b carcinogenicity, c genotoxicity, d dermal toxicity, e developmental toxicity, f pulmonary toxicity, g reproductive toxicity, h cardiotoxicity, I Occular toxicity, j acute toxicity, k hepatotoxicity, l absorption, distribution, metabolism, excretion, m renal toxicity, n neurotoxicity, o immunotoxicity, p cytotoxicity, q chronic toxicity, r haemotoxicity, s gastrointestinal toxicity
Fig. 3a Computational toxicology model development workflow, b techniques involved in different types of predictive models