Literature DB >> 25245507

Idiosyncratic drug hepatotoxicity: strategy for prevention and proposed mechanism.

Toshihiko Ikeda1.   

Abstract

Idiosyncratic drug toxicity has led to the market withdrawal of many drugs in the past. Since animal experiments are not predictive of such toxicity, the pharmaceutical industry continues to seek new methodologies for the prevention of such effects. Although the mechanism of idiosyncratic drug toxicity remains unclear, immune reactions are likely involved. Although drugs with low molecular weights are typically not themselves immunogenic, these drugs may become haptens after being converted to chemically reactive metabolites and becoming covalently cross-linked to proteins. Therefore, screening tests to detect chemically reactive metabolites, most typically by trapping with glutathione, are carried out at early stages of drug development. More quantitative methods are used in later stages of drug development; radioassays for covalent binding (using (14)Cor (3)H-labeled compounds) are most frequently employed. A zone classification system created by combining previous assessment criteria for the chemically reactive metabolites in vitro (<50 pmole/mg-protein) and for the dose levels in vivo (<10 mg/day) could be used for risk assessment of drug candidates. A mechanism for idiosyncratic, drug-induced hepatotoxicity is proposed by analogy to virus-induced hepatitis, where cytotoxic T lymphocytes play an important role; we suggest that idiosyncrasy reflects the involvement of polymorphisms in the human leucocyte antigen-encoding loci. In fact, a strong correlation has been found between of idiosyncratic drug toxicity and specific human leucocyte antigen genotypes. Therefore, screening of patients for gene biomarkers is expected to reduce the clinical risk of idiosyncratic drug toxicity, thereby prolonging the life cycle of otherwise useful drugs.

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Year:  2015        PMID: 25245507     DOI: 10.2174/0929867321666140916122628

Source DB:  PubMed          Journal:  Curr Med Chem        ISSN: 0929-8673            Impact factor:   4.530


  4 in total

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Journal:  Methods Mol Biol       Date:  2022

3.  Hepato-protective effect of rutin via IL-6/STAT3 pathway in CCl4-induced hepatotoxicity in rats.

Authors:  Mohamed M Hafez; Naif O Al-Harbi; Ali Rashed Al-Hoshani; Khaled A Al-Hosaini; Shakir D Al Shrari; Salim S Al Rejaie; Mohamed M Sayed-Ahmed; Othman A Al-Shabanah
Journal:  Biol Res       Date:  2015-06-11       Impact factor: 5.612

4.  Effect of ginseng extract on the TGF-β1 signaling pathway in CCl4-induced liver fibrosis in rats.

Authors:  Mohamed M Hafez; Sherifa S Hamed; Manal F El-Khadragy; Zeinab K Hassan; Salim S Al Rejaie; Mohamed M Sayed-Ahmed; Naif O Al-Harbi; Khalid A Al-Hosaini; Mohamed M Al-Harbi; Ali R Alhoshani; Othman A Al-Shabanah; Shakir Dekhal Alsharari
Journal:  BMC Complement Altern Med       Date:  2017-01-13       Impact factor: 3.659

  4 in total

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