Literature DB >> 12164327

Novel statistical classification model of type 2 diabetes mellitus patients for tailor-made prevention using data mining algorithm.

Koichi Miyaki1, Izumi Takei, Kenji Watanabe, Hiroshi Nakashima, Kiyoaki Watanabe, Kazuyuki Omae.   

Abstract

To estimate the usefulness of data mining algorithms for extracting risk predictors of diabetic vascular complications in proper order in the future, we tried applying the Classification and Regression Trees (CART) method to the prevalence data of 165 type 2 diabetic outpatients and already known risk factors. Among the 6 categorical and 15 continuous risk factors, age (cutoff: 65.4) was the best predictor for classifying patients into groups with and without macroangiopathy (p=0.000). Body weight (cutoff: 53.9) was the best predictor (p=0.006) in the older group (age >65.4), whereas systolic blood pressure (cutoff: 144.5) was the best predictor in the remaining group (p=0.002). Age (cutoff: 64.8) was also the best predictor for categorizing them into groups with and without microangiopathy (p=0.000). In the older group (age >64.8), BMI (cutoff: 21.5) was the best predictor (p=0.001), whereas morbidity term (cutoff: 15.5) was the best predictor in the other group (p=0.01 0). Because the orders and values of all risk factors and cutoff points mined were reasonable clinically, this method may have the potential to highlight predictors in order of importance to apply tailor-made prevention of diabetic vascular complications.

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Year:  2002        PMID: 12164327     DOI: 10.2188/jea.12.243

Source DB:  PubMed          Journal:  J Epidemiol        ISSN: 0917-5040            Impact factor:   3.211


  7 in total

1.  High throughput multiple combination extraction from large scale polymorphism data by exact tree method.

Authors:  Koichi Miyaki; Kazuyuki Omae; Mitsuru Murata; Norio Tanahashi; Ikuo Saito; Kiyoaki Watanabe
Journal:  J Hum Genet       Date:  2004-08-11       Impact factor: 3.172

Review 2.  Data-mining technologies for diabetes: a systematic review.

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Journal:  J Diabetes Sci Technol       Date:  2011-11-01

Review 3.  Applications of artificial intelligence systems in the analysis of epidemiological data.

Authors:  Andreas D Flouris; Jack Duffy
Journal:  Eur J Epidemiol       Date:  2006       Impact factor: 8.082

4.  Temporal data mining for the assessment of the costs related to diabetes mellitus pharmacological treatment.

Authors:  Stefano Concaro; Lucia Sacchi; Carlo Cerra; Mario Stefanelli; Pietro Fratino; Riccardo Bellazzi
Journal:  AMIA Annu Symp Proc       Date:  2009-11-14

5.  Pretreatment prediction of anemia progression by pegylated interferon alpha-2b plus ribavirin combination therapy in chronic hepatitis C infection: decision-tree analysis.

Authors:  Naoki Hiramatsu; Masayuki Kurosaki; Naoya Sakamoto; Manabu Iwasaki; Minoru Sakamoto; Yoshiyuki Suzuki; Fuminaka Sugauchi; Akihiro Tamori; Sei Kakinnuma; Kentaro Matsuura; Namiki Izumi
Journal:  J Gastroenterol       Date:  2011-06-17       Impact factor: 7.527

6.  Developing screening services for colorectal cancer on Android smartphones.

Authors:  Hui-Ching Wu; Chiao-Jung Chang; Chun-Che Lin; Ming-Chang Tsai; Che-Chia Chang; Ming-Hseng Tseng
Journal:  Telemed J E Health       Date:  2014-05-21       Impact factor: 3.536

7.  Pretreatment prediction of response to peginterferon plus ribavirin therapy in genotype 1 chronic hepatitis C using data mining analysis.

Authors:  Masayuki Kurosaki; Naoya Sakamoto; Manabu Iwasaki; Minoru Sakamoto; Yoshiyuki Suzuki; Naoki Hiramatsu; Fuminaka Sugauchi; Hiroshi Yatsuhashi; Namiki Izumi
Journal:  J Gastroenterol       Date:  2010-09-10       Impact factor: 7.527

  7 in total

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