Literature DB >> 29995270

Machine learning algorithm-based risk prediction model of coronary artery disease.

Shaik Mohammad Naushad1,2, Tajamul Hussain3, Bobbala Indumathi4, Khatoon Samreen5, Salman A Alrokayan6, Vijay Kumar Kutala4.   

Abstract

In view of high mortality associated with coronary artery disease (CAD), development of an early predicting tool will be beneficial in reducing the burden of the disease. The database comprising demographic, conventional, folate/xenobiotic genetic risk factors of 648 subjects (364 cases of CAD and 284 healthy controls) was used as the basis to develop CAD risk and percentage stenosis prediction models using ensemble machine learning algorithms (EMLA), multifactor dimensionality reduction (MDR) and recursive partitioning (RP). The EMLA model showed better performance than other models in disease (89.3%) and stenosis prediction (82.5%). This model depicted hypertension and alcohol intake as the key predictors of CAD risk followed by cSHMT C1420T, GCPII C1561T, diabetes, GSTT1, CYP1A1 m2, TYMs 5'-UTR 28 bp tandem repeat and MTRR A66G. MDR and RP models are in agreement in projecting increasing age, hypertension and cSHMTC1420T as the key determinants interacting in modulating CAD risk. Receiver operating characteristic curves exhibited clinical utility of the developed models in the following order: EMLA (C = 0.96) > RP (C = 0.83) > MDR (C = 0.80). The stenosis prediction model showed that xenobiotic pathway genetic variants i.e. CYP1A1 m2 and GSTT1 are the key determinants of percentage of stenosis. Diabetes, diet, alcohol intake, hypertension and MTRR A66G are the other determinants of stenosis. These eleven variables contribute towards 82.5% stenosis. To conclude, the EMLA model exhibited higher predictability both in terms of disease prediction and stenosis prediction. This can be attributed to higher number of iterations in EMLA model that can increase the prediction accuracy.

Entities:  

Keywords:  Coronary artery disease; Ensemble machine learning algorithm; Folate and xenobiotic pathways; Multifactor dimensionality reduction; Recursive partitioning

Mesh:

Substances:

Year:  2018        PMID: 29995270     DOI: 10.1007/s11033-018-4236-2

Source DB:  PubMed          Journal:  Mol Biol Rep        ISSN: 0301-4851            Impact factor:   2.316


  24 in total

1.  Epigenetic upregulation of p66shc mediates low-density lipoprotein cholesterol-induced endothelial cell dysfunction.

Authors:  Young-Rae Kim; Cuk-Seong Kim; Asma Naqvi; Ajay Kumar; Santosh Kumar; Timothy A Hoffman; Kaikobad Irani
Journal:  Am J Physiol Heart Circ Physiol       Date:  2012-06-01       Impact factor: 4.733

2.  Oxidative stress is associated with genetic polymorphisms in one-carbon metabolism in coronary artery disease.

Authors:  S V Vijaya Lakshmi; Shaik Mohammad Naushad; D Seshagiri Rao; Vijay Kumar Kutala
Journal:  Cell Biochem Biophys       Date:  2013-11       Impact factor: 2.194

3.  Epipolymorphisms within lipoprotein genes contribute independently to plasma lipid levels in familial hypercholesterolemia.

Authors:  Simon-Pierre Guay; Diane Brisson; Benoit Lamarche; Daniel Gaudet; Luigi Bouchard
Journal:  Epigenetics       Date:  2014-02-06       Impact factor: 4.528

4.  Oxidative stress in coronary artery disease: epigenetic perspective.

Authors:  Sana Venkata Vijaya Lakshmi; Shaik Mohammad Naushad; Cheruku Apoorva Reddy; Kankanala Saumya; Damera Seshagiri Rao; Srigiridhar Kotamraju; Vijay Kumar Kutala
Journal:  Mol Cell Biochem       Date:  2012-11-17       Impact factor: 3.396

5.  Neuro-fuzzy model of homocysteine metabolism.

Authors:  Shaik Mohammad Naushad; Akella Radha Rama Devi; Sriraman Nivetha; Ganapathy Lakshmitha; Alex Balraj Stanley; Tajamul Hussain; Vijay Kumar Kutala
Journal:  J Genet       Date:  2017-12       Impact factor: 1.166

6.  ABCA1 gene promoter DNA methylation is associated with HDL particle profile and coronary artery disease in familial hypercholesterolemia.

Authors:  Simon-Pierre Guay; Diane Brisson; Johannie Munger; Benoit Lamarche; Daniel Gaudet; Luigi Bouchard
Journal:  Epigenetics       Date:  2012-05-01       Impact factor: 4.528

7.  Low whole-blood S-adenosylmethionine and correlation between 5-methyltetrahydrofolate and homocysteine in coronary artery disease.

Authors:  F M Loehrer; C P Angst; W E Haefeli; P P Jordan; R Ritz; B Fowler
Journal:  Arterioscler Thromb Vasc Biol       Date:  1996-06       Impact factor: 8.311

8.  Aspirin protects human coronary artery endothelial cells against atherogenic electronegative LDL via an epigenetic mechanism: a novel cytoprotective role of aspirin in acute myocardial infarction.

Authors:  Po-Yuan Chang; Yi-Jie Chen; Fu-Hsiung Chang; Jonathan Lu; Wen-Huei Huang; Tzu-Ching Yang; Yuan-Teh Lee; Shwu-Fen Chang; Shao-Chun Lu; Chu-Huang Chen
Journal:  Cardiovasc Res       Date:  2013-03-20       Impact factor: 10.787

9.  Associations between homocysteine metabolism related SNPs and carotid intima-media thickness: a Chinese sib pair study.

Authors:  Kexin Sun; Jing Song; Kuo Liu; Kai Fang; Ling Wang; Xueyin Wang; Jing Li; Xun Tang; Yiqun Wu; Xueying Qin; Tao Wu; Pei Gao; Dafang Chen; Yonghua Hu
Journal:  J Thromb Thrombolysis       Date:  2017-04       Impact factor: 2.300

10.  Hypermethylation of DDAH2 promoter contributes to the dysfunction of endothelial progenitor cells in coronary artery disease patients.

Authors:  Pan-Pan Niu; Yu Cao; Ting Gong; Jin-Hui Guo; Bi-Kui Zhang; Su-Jie Jia
Journal:  J Transl Med       Date:  2014-06-16       Impact factor: 5.531

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  3 in total

Review 1.  Use of machine learning in geriatric clinical care for chronic diseases: a systematic literature review.

Authors:  Avishek Choudhury; Emily Renjilian; Onur Asan
Journal:  JAMIA Open       Date:  2020-10-08

Review 2.  Current and Future Applications of Artificial Intelligence in Coronary Artery Disease.

Authors:  Nitesh Gautam; Prachi Saluja; Abdallah Malkawi; Mark G Rabbat; Mouaz H Al-Mallah; Gianluca Pontone; Yiye Zhang; Benjamin C Lee; Subhi J Al'Aref
Journal:  Healthcare (Basel)       Date:  2022-01-26

3.  Selection of 51 predictors from 13,782 candidate multimodal features using machine learning improves coronary artery disease prediction.

Authors:  Saaket Agrawal; Marcus D R Klarqvist; Connor Emdin; Aniruddh P Patel; Manish D Paranjpe; Patrick T Ellinor; Anthony Philippakis; Kenney Ng; Puneet Batra; Amit V Khera
Journal:  Patterns (N Y)       Date:  2021-10-04
  3 in total

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