Literature DB >> 15770436

A novel data mining approach to the identification of effective drugs or combinations for targeted endpoints--application to chronic heart failure as a new form of evidence-based medicine.

Jiyoong Kim1, Takashi Washio, Masakazu Yamagishi, Yoshio Yasumura, Satoshi Nakatani, Kazuhiko Hashimura, Akihisa Hanatani, Kazuo Komamura, Kunio Miyatake, Soichiro Kitamura, Hitonobu Tomoike, Masafumi Kitakaze.   

Abstract

BACKGROUND: Data mining is a technique for discovering useful information hidden in a database, which has recently been used by the chemical, financial, pharmaceutical, and insurance industries. It may enable us to detect the interesting and hidden data on useful drugs especially in the field of cardiovascular disease. METHODS AND
RESULTS: We evaluated the current treatments for chronic heart failure (CHF) in our institute using a decision tree method of data mining and compared the results with those of large-scale clinical trials. We enrolled 1,100 patients with CHF (NYHA classes II-IV and EF < 40%) who were hospitalized at the National Cardiovascular Center during the past 31 months. Drugs prescribed at discharge were extracted from the clinical database. Both echocardiograms and plasma BNP level at 6-12 months after discharge were determined prospectively. It was found that beta-blockers, angiotensin converting enzyme inhibitors, and angiotensin II receptor antagonists independently improve both the plasma BNP level and %fractional shortening (FS), while oral inotropic agents increased the plasma BNP level and decreased %FS. These findings agree with evidence accumulated from several large-scale trials. Interestingly, statins, histamine receptor blockers, and alpha-glucosidase inhibitors also attenuated the severity of CHF, suggesting the possibility of new treatment of CHF.
CONCLUSION: Clinical data mining using Japanese CHF patients yielded almost identical data to the results of large-scale trials, and also suggested novel and unexpected candidates for CHF therapy. Further validation of the data mining approved in the cardiovascular field is warranted.

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Year:  2004        PMID: 15770436     DOI: 10.1007/s10557-004-6226-y

Source DB:  PubMed          Journal:  Cardiovasc Drugs Ther        ISSN: 0920-3206            Impact factor:   3.727


  7 in total

1.  Arrhythmogenic effect of sympathetic histamine in mouse hearts subjected to acute ischemia.

Authors:  Gonghao He; Jing Hu; Teng Li; Xue Ma; Jingru Meng; Min Jia; Jun Lu; Hiroshi Ohtsu; Zhong Chen; Xiaoxing Luo
Journal:  Mol Med       Date:  2012-02-10       Impact factor: 6.354

Review 2.  The Roles of Cardiovascular H2-Histamine Receptors Under Normal and Pathophysiological Conditions.

Authors:  Joachim Neumann; Uwe Kirchhefer; Stefan Dhein; Britt Hofmann; Ulrich Gergs
Journal:  Front Pharmacol       Date:  2021-12-20       Impact factor: 5.810

Review 3.  Histamine receptors in heart failure.

Authors:  Scott P Levick
Journal:  Heart Fail Rev       Date:  2021-10-08       Impact factor: 4.654

Review 4.  Personalized cardiovascular medicine: concepts and methodological considerations.

Authors:  Henry Völzke; Carsten O Schmidt; Sebastian E Baumeister; Till Ittermann; Glenn Fung; Janina Krafczyk-Korth; Wolfgang Hoffmann; Matthias Schwab; Henriette E Meyer zu Schwabedissen; Marcus Dörr; Stephan B Felix; Wolfgang Lieb; Heyo K Kroemer
Journal:  Nat Rev Cardiol       Date:  2013-03-26       Impact factor: 32.419

5.  Histamine deficiency exacerbates myocardial injury in acute myocardial infarction through impaired macrophage infiltration and increased cardiomyocyte apoptosis.

Authors:  Long Deng; Tao Hong; Jinyi Lin; Suling Ding; Zheyong Huang; Jinmiao Chen; Jianguo Jia; Yunzeng Zou; Timothy C Wang; Xiangdong Yang; Junbo Ge
Journal:  Sci Rep       Date:  2015-08-17       Impact factor: 4.379

6.  How to Eliminate Uncertainty in Clinical Medicine - Clues from Creation of Mathematical Models Followed by Scientific Data Mining.

Authors:  Yoshihiro Asano
Journal:  EBioMedicine       Date:  2018-07-11       Impact factor: 8.143

7.  Elucidation of the Strongest Predictors of Cardiovascular Events in Patients with Heart Failure.

Authors:  Hiroki Fukuda; Kazuhiro Shindo; Mari Sakamoto; Tomomi Ide; Shintaro Kinugawa; Arata Fukushima; Hiroyuki Tsutsui; Shin Ito; Akira Ishii; Takashi Washio; Masafumi Kitakaze
Journal:  EBioMedicine       Date:  2018-06-20       Impact factor: 8.143

  7 in total

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