Literature DB >> 16361052

Pretreatment prediction of interferon-alfa efficacy in chronic hepatitis C patients.

Kazuhiro Hayashida1, Akito Daiba, Akito Sakai, Takeshi Tanaka, Kyosuke Kaji, Niro Inaba, Satoshi Ando, Naoki Kajiyama, Hiroshi Terasaki, Aki Abe, Masanori Ogasawara, Michinori Kohara, Mine Harada, Takeshi Okanoue, Satoru Ito, Shuichi Kaneko.   

Abstract

BACKGROUND & AIMS: Interferon has been used widely to treat patients with chronic hepatitis C infections. Prediction of interferon efficacy before treatment has been performed mainly by using viral information, such as viral load and genotype. This information has allowed the successful prediction of sustained responders (SR) and non-SRs, which includes transient responders (TR) and nonresponders (NR). In the current study we examined whether liver messenger RNA expression profiles also can be used to predict interferon efficacy.
METHODS: RNA was isolated from 69 liver biopsy samples from patients receiving interferon monotherapy and was analyzed on a complementary DNA microarray. Of these 69 samples, 31 were used to develop an algorithm for predicting interferon efficacy, and 38 were used to validate the precision of the algorithm. We also applied our methodology to the prediction of the efficacy of interferon/ribavirin combination therapy using an additional 56 biopsy samples.
RESULTS: Our microarray analysis combined with the algorithm was 94% successful at predicting SR/TR and NR patients. A validation study confirmed that this algorithm can predict interferon efficacy with 95% accuracy and a P value of less than .00001. Similarly, we obtained a 93% prediction efficacy and a P value of less than .0001 for patients receiving combination therapy.
CONCLUSIONS: By using only host data from the complementary DNA microarray we are able to successfully predict SR/TR and NR patients for interferon therapy. Therefore, this technique can help determine the appropriate treatment for hepatitis C patients.

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Year:  2005        PMID: 16361052     DOI: 10.1016/s1542-3565(05)00412-x

Source DB:  PubMed          Journal:  Clin Gastroenterol Hepatol        ISSN: 1542-3565            Impact factor:   11.382


  7 in total

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Authors:  Nyingi Kemmer; Guy W Neff
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2.  Expression of connective tissue growth factor in the human liver with idiopathic portal hypertension.

Authors:  Hiroyasu Morikawa; Akihiro Tamori; Shuhei Nishiguchi; Masaru Enomoto; Daiki Habu; Norifumi Kawada; Susumu Shiomi
Journal:  Mol Med       Date:  2007 May-Jun       Impact factor: 6.354

3.  ENCODE tiling array analysis identifies differentially expressed annotated and novel 5' capped RNAs in hepatitis C infected liver.

Authors:  Milan E Folkers; Don A Delker; Christopher I Maxwell; Cassie A Nelson; Jason J Schwartz; David A Nix; Curt H Hagedorn
Journal:  PLoS One       Date:  2011-02-16       Impact factor: 3.240

4.  Genomics and proteomics in liver fibrosis and cirrhosis.

Authors:  Rebekka A Hannivoort; Virginia Hernandez-Gea; Scott L Friedman
Journal:  Fibrogenesis Tissue Repair       Date:  2012-01-03

Review 5.  Early days: genomics and human responses to infection.

Authors:  Minghsun Liu; Stephen J Popper; Kathleen H Rubins; David A Relman
Journal:  Curr Opin Microbiol       Date:  2006-05-06       Impact factor: 7.934

6.  Individualized treatment of chronic hepatitis C with pegylated interferon and ribavirin.

Authors:  Roberto J Carvalho-Filho; Olav Dalgard
Journal:  Pharmgenomics Pers Med       Date:  2010-03-11

Review 7.  Gene expression and hepatitis C virus infection.

Authors:  T Asselah; I Bièche; A Sabbagh; P Bedossa; R Moreau; D Valla; M Vidaud; P Marcellin
Journal:  Gut       Date:  2008-12-11       Impact factor: 23.059

  7 in total

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