Literature DB >> 31536164

Machine learning and blood pressure.

Prasanna Santhanam1, Rexford S Ahima1.   

Abstract

Machine learning (ML) is a type of artificial intelligence (AI) based on pattern recognition. There are different forms of supervised and unsupervised learning algorithms that are being used to identify and predict blood pressure (BP) and other measures of cardiovascular risk. Since 1999, starting with neural network methods, ML has been used to gauge the relationship between BP and pulse wave forms. Since then, the scope of the research has expanded to using different cardiometabolic risk factors like BMI, waist circumference, waist-to-hip ratio in concert with BP and its various pharmaceutical agents to estimate biochemical measures (like HDL cholesterol, LDL and total cholesterol, fibrinogen, and uric acid) as well as effectiveness of anti-hypertensive regimens. Data from large clinical trials like the SPRINT are being re-analyzed by ML methods to unearth new findings and identify unique relationships between predictors and outcomes. In summary, AI and ML methods are gaining immense attention in the management of chronic disease. Elevated BP is a very important early metric for the risk of development of cardiovascular and renal injury; therefore, advances in AI and ML will aid in early disease prediction and intervention. ©2019 Wiley Periodicals, Inc.

Entities:  

Keywords:  blood pressure; machine learning

Mesh:

Year:  2019        PMID: 31536164      PMCID: PMC8030505          DOI: 10.1111/jch.13700

Source DB:  PubMed          Journal:  J Clin Hypertens (Greenwich)        ISSN: 1524-6175            Impact factor:   3.738


  13 in total

1.  Modelling the relationship between peripheral blood pressure and blood volume pulses using linear and neural network system identification techniques.

Authors:  J Allen; A Murray
Journal:  Physiol Meas       Date:  1999-08       Impact factor: 2.833

2.  Estimation of aortic systolic blood pressure from radial systolic and diastolic blood pressures alone using artificial neural networks.

Authors:  Hanguang Xiao; Ahmad Qasem; Mark Butlin; Alberto Avolio
Journal:  J Hypertens       Date:  2017-08       Impact factor: 4.844

3.  A primary estimation of the cardiometabolic risk by using artificial neural networks.

Authors:  Aleksandar Kupusinac; Rade Doroslovački; Dušan Malbaški; Biljana Srdić; Edith Stokić
Journal:  Comput Biol Med       Date:  2013-04-06       Impact factor: 4.589

4.  Machine learning and blood pressure.

Authors:  Prasanna Santhanam; Rexford S Ahima
Journal:  J Clin Hypertens (Greenwich)       Date:  2019-09-19       Impact factor: 3.738

5.  Risk factors for coronary artery disease and the use of neural networks to predict the presence or absence of high blood pressure.

Authors:  Catherine T Falk
Journal:  BMC Genet       Date:  2003-12-31       Impact factor: 2.797

6.  Machine learning of big data in gaining insight into successful treatment of hypertension.

Authors:  Gideon Koren; Galia Nordon; Kira Radinsky; Varda Shalev
Journal:  Pharmacol Res Perspect       Date:  2018-04-24

7.  Use of machine-learning algorithms to determine features of systolic blood pressure variability that predict poor outcomes in hypertensive patients.

Authors:  Ronilda C Lacson; Bowen Baker; Harini Suresh; Katherine Andriole; Peter Szolovits; Eduardo Lacson
Journal:  Clin Kidney J       Date:  2018-07-03

8.  Blood Pressure Classification Using the Method of the Modular Neural Networks.

Authors:  Martha Pulido; Patricia Melin; German Prado-Arechiga
Journal:  Int J Hypertens       Date:  2019-01-23       Impact factor: 2.420

9.  Predicting increased blood pressure using machine learning.

Authors:  Hudson Fernandes Golino; Liliany Souza de Brito Amaral; Stenio Fernando Pimentel Duarte; Cristiano Mauro Assis Gomes; Telma de Jesus Soares; Luciana Araujo Dos Reis; Joselito Santos
Journal:  J Obes       Date:  2014-01-23

10.  Prediction of Ventricular Tachycardia One Hour before Occurrence Using Artificial Neural Networks.

Authors:  Hyojeong Lee; Soo-Yong Shin; Myeongsook Seo; Gi-Byoung Nam; Segyeong Joo
Journal:  Sci Rep       Date:  2016-08-26       Impact factor: 4.379

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  2 in total

1.  Machine learning and blood pressure.

Authors:  Prasanna Santhanam; Rexford S Ahima
Journal:  J Clin Hypertens (Greenwich)       Date:  2019-09-19       Impact factor: 3.738

2.  Artificial intelligence may offer insight into factors determining individual TSH level.

Authors:  Prasanna Santhanam; Tanmay Nath; Faiz Khan Mohammad; Rexford S Ahima
Journal:  PLoS One       Date:  2020-05-20       Impact factor: 3.240

  2 in total

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