Literature DB >> 28951020

Using Machine Learning to Define the Association between Cardiorespiratory Fitness and All-Cause Mortality (from the Henry Ford Exercise Testing Project).

Mouaz H Al-Mallah1, Radwa Elshawi2, Amjad M Ahmed3, Waqas T Qureshi4, Clinton A Brawner5, Michael J Blaha6, Haitham M Ahmed7, Jonathan K Ehrman5, Steven J Keteyian5, Sherif Sakr3.   

Abstract

Previous studies have demonstrated that cardiorespiratory fitness is a strong marker of cardiovascular health. Machine learning (ML) can enhance the prediction of outcomes through classification techniques that classify the data into predetermined categories. The aim of the analysis is to compare the prediction of 10 years of all-cause mortality (ACM) using statistical logistic regression (LR) and ML approaches in a cohort of patients who underwent exercise stress testing. We included 34,212 patients (55% males, mean age 54 ± 13 years) free of coronary artery disease or heart failure who underwent exercise treadmill stress testing between 1991 and 2009 and had complete 10-year follow-up. The primary outcome of this analysis was ACM at 10 years. The probability of 10-years ACM was calculated using statistical LR and ML, and the accuracy of these methods was calculated and compared. A total of 3,921 patients died at 10 years. Using statistical LR, the sensitivity to predict ACM was 44.9% (95% confidence interval [CI] 43.3% to 46.5%), whereas the specificity was 93.4% (95% CI 93.1% to 93.7%). The sensitivity of ML to predict ACM was 87.4% (95% CI 86.3% to 88.4%), whereas the specificity was 97.2% (95% CI 97.0% to 97.4%). The ML approach was associated with improved model discrimination (area under the curve for ML [0.923 (95% CI 0.917 to 0.928)]) compared with statistical LR (0.836 [95% CI 0.829 to 0.846], p<0.0001). In conclusion, our analysis demonstrates that ML provides better accuracy and discrimination of the prediction of ACM among patients undergoing stress testing.
Copyright © 2017 Elsevier Inc. All rights reserved.

Entities:  

Mesh:

Year:  2017        PMID: 28951020     DOI: 10.1016/j.amjcard.2017.08.029

Source DB:  PubMed          Journal:  Am J Cardiol        ISSN: 0002-9149            Impact factor:   2.778


  7 in total

1.  Development and assessment of machine learning algorithms for predicting remission after transsphenoidal surgery among patients with acromegaly.

Authors:  Yanghua Fan; Yansheng Li; Yichao Li; Shanshan Feng; Xinjie Bao; Ming Feng; Renzhi Wang
Journal:  Endocrine       Date:  2019-10-30       Impact factor: 3.633

2.  Comparing Machine Learning to Regression Methods for Mortality Prediction Using Veterans Affairs Electronic Health Record Clinical Data.

Authors:  Bocheng Jing; W John Boscardin; W James Deardorff; Sun Young Jeon; Alexandra K Lee; Anne L Donovan; Sei J Lee
Journal:  Med Care       Date:  2022-03-30       Impact factor: 3.178

3.  Using Machine Learning Techniques to Predict MACE in Very Young Acute Coronary Syndrome Patients.

Authors:  Pablo Juan-Salvadores; Cesar Veiga; Víctor Alfonso Jiménez Díaz; Alba Guitián González; Cristina Iglesia Carreño; Cristina Martínez Reglero; José Antonio Baz Alonso; Francisco Caamaño Isorna; Andrés Iñiguez Romo
Journal:  Diagnostics (Basel)       Date:  2022-02-06

Review 4.  Cardiorespiratory Fitness and Cardiovascular Disease Prevention: an Update.

Authors:  Mouaz H Al-Mallah; Sherif Sakr; Ada Al-Qunaibet
Journal:  Curr Atheroscler Rep       Date:  2018-01-16       Impact factor: 5.113

5.  Population and Age-Based Cardiorespiratory Fitness Level Investigation and Automatic Prediction.

Authors:  Liangliang Xiang; Kaili Deng; Qichang Mei; Zixiang Gao; Tao Yang; Alan Wang; Justin Fernandez; Yaodong Gu
Journal:  Front Cardiovasc Med       Date:  2022-01-05

6.  Risk Assessment of Sarcopenia in Patients With Type 2 Diabetes Mellitus Using Data Mining Methods.

Authors:  Mengzhao Cui; Xiaokun Gang; Fang Gao; Gang Wang; Xianchao Xiao; Zhuo Li; Xiongfei Li; Guang Ning; Guixia Wang
Journal:  Front Endocrinol (Lausanne)       Date:  2020-03-10       Impact factor: 5.555

7.  Machine Learning-Based Approaches for Prediction of Patients' Functional Outcome and Mortality after Spontaneous Intracerebral Hemorrhage.

Authors:  Rui Guo; Renjie Zhang; Ran Liu; Yi Liu; Hao Li; Lu Ma; Min He; Chao You; Rui Tian
Journal:  J Pers Med       Date:  2022-01-14
  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.