Unsupervised Learning for Automated Detection of Coronary Artery Disease Subgroups

被引:21
|
作者
Flores, Alyssa M. [1 ]
Schuler, Alejandro [2 ]
Eberhard, Anne Verena [1 ]
Olin, Jeffrey W. [3 ]
Cooke, John P. [4 ]
Leeper, Nicholas J. [1 ,5 ,6 ]
Shah, Nigam H. [2 ]
Ross, Elsie G. [1 ,2 ,6 ]
机构
[1] Stanford Univ, Dept Surg, Div Vasc Surg, Sch Med, Stanford, CA 94305 USA
[2] Stanford Univ, Ctr Biomed Informat Res, Stanford, CA 94305 USA
[3] Icahn Sch Med Mt Sinai, Zena & Michael A Wiener Cardiovasc Inst, Marie Josee & Henry R Kravis Ctr Cardiovasc Hlth, New York, NY 10029 USA
[4] Houston Methodist Res Inst, Dept Cardiovasc Sci, Houston, TX USA
[5] Stanford Univ, Div Cardiovasc Med, Dept Med, Sch Med, Stanford, CA 94305 USA
[6] Stanford Cardiovasc Inst, Stanford, CA USA
来源
基金
美国国家卫生研究院;
关键词
cluster analysis; coronary artery disease; machine learning; phenotype discovery; ANKLE-BRACHIAL INDEX; MORTALITY RISK PREDICTION; HEART-DISEASE; CARDIOVASCULAR RISK; GENETIC RISK; ASSOCIATION; VALIDATION; PHENOTYPES; METAANALYSIS; OUTCOMES;
D O I
10.1161/JAHA.121.021976
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BACKGROUND: The promise of precision population health includes the ability to use robust patient data to tailor prevention and care to specific groups. Advanced analytics may allow for automated detection of clinically informative subgroups that account for clinical, genetic, and environmental variability. This study sought to evaluate whether unsupervised machine learning approaches could interpret heterogeneous and missing clinical data to discover clinically important coronary artery disease subgroups. METHODS AND RESULTS: The Genetic Determinants of Peripheral Arterial Disease study is a prospective cohort that includes individuals with newly diagnosed and/or symptomatic coronary artery disease. We applied generalized low rank modeling and K--means cluster analysis using 155 phenotypic and genetic variables from 1329 participants. Cox proportional hazard models were used to examine associations between clusters and major adverse cardiovascular and cerebrovascular events and all-cause mortality. We then compared performance of risk stratification based on clusters and the American College of Cardiology/American Heart Association pooled cohort equations. Unsupervised analysis identified 4 phenotypically and prognostically distinct clusters. All-cause mortality was highest in cluster 1 (oldest/most comorbid; 26%), whereas major adverse cardiovascular and cerebrovascular event rates were highest in cluster 2 (youngest/multiethnic; 41%). Cluster 4 (middle-aged/ healthiest behaviors) experienced more incident major adverse cardiovascular and cerebrovascular events (30%) than cluster 3 (middle-aged/lowest medication adherence; 23%), despite apparently similar risk factor and lifestyle profiles. In comparison with the pooled cohort equations, cluster membership was more informative for risk assessment of myocardial infarction, stroke, and mortality. CONCLUSIONS: Unsupervised clustering identified 4 unique coronary artery disease subgroups with distinct clinical trajectories. Flexible unsupervised machine learning algorithms offer the ability to meaningfully process heterogeneous patient data and provide sharper insights into disease characterization and risk assessment.
引用
收藏
页数:33
相关论文
共 50 条
  • [1] Coronary Artery Disease Detection by Machine Learning with Coronary Bifurcation Features
    Chen, Xueping
    Fu, Yi
    Lin, Jiangguo
    Ji, Yanru
    Fang, Ying
    Wu, Jianhua
    APPLIED SCIENCES-BASEL, 2020, 10 (21): : 1 - 18
  • [2] Deep learning fusion framework for automated coronary artery disease detection using raw heart sound signals
    Dai, YunFei
    Liu, PengFei
    Hou, WenQing
    Kadier, Kaisaierjiang
    Mu, ZhengYang
    Lu, Zang
    Chen, PeiPei
    Ma, Xiang
    Dai, JianGuo
    HELIYON, 2024, 10 (16)
  • [3] An Optimized Machine Learning Approach for Coronary Artery Disease Detection
    Savita
    Rani, Geeta
    Mittal, Apeksha
    JOURNAL OF ADVANCES IN INFORMATION TECHNOLOGY, 2023, 14 (01) : 66 - 76
  • [4] Detection of coronary artery disease using machine learning algorithms
    Vashistha, Kriti
    Bokhare, Anuja
    INTERNATIONAL JOURNAL OF MODELLING IDENTIFICATION AND CONTROL, 2023, 43 (02) : 83 - 91
  • [5] Entropies for automated detection of coronary artery disease using ECG signals: A review
    Acharya, Udyavara Rajendra
    Hagiwara, Yuki
    Koh, Joel En Wei
    Oh, Shu Lih
    Tan, Jen Hong
    Adam, Muhammad
    Tan, Ru San
    BIOCYBERNETICS AND BIOMEDICAL ENGINEERING, 2018, 38 (02) : 373 - 384
  • [6] Automated Echocardiographic Detection of Severe Coronary Artery Disease Using Artificial Intelligence
    Upton, Ross
    Mumith, Angela
    Beqiri, Arian
    Parker, Andrew
    Hawkes, William
    Gao, Shan
    Porumb, Mihaela
    Sarwar, Rizwan
    Marques, Patricia
    Markham, Deborah
    Kenworthy, Jake
    O'Driscoll, Jamie M.
    Hassanali, Neelam
    Groves, Kate
    Dockerill, Cameron
    Woodward, William
    Alsharqi, Maryam
    McCourt, Annabelle
    Wilkes, Edmund H.
    Heitner, Stephen B.
    Yadava, Mrinal
    Stojanovski, David
    Lamata, Pablo
    Woodward, Gary
    Leeson, Paul
    JACC-CARDIOVASCULAR IMAGING, 2022, 15 (05) : 715 - 727
  • [7] DETECTION OF CORONARY ARTERY DISEASE
    HALPERN, A
    KUHN, PH
    SHAFTEL, HE
    LOEWE, L
    ANGIOLOGY, 1962, 13 (10) : 455 - &
  • [8] Unsupervised learning to characterize patients with known coronary artery disease undergoing myocardial perfusion imaging
    Williams, Michelle C.
    Bednarski, Bryan P.
    Pieszko, Konrad
    Miller, Robert J. H.
    Kwiecinski, Jacek
    Shanbhag, Aakash
    Liang, Joanna X.
    Huang, Cathleen
    Sharir, Tali
    Dorbala, Sharmila
    Di Carli, Marcelo F.
    Einstein, Andrew J.
    Sinusas, Albert J.
    Miller, Edward J.
    Bateman, Timothy M.
    Fish, Mathews B.
    Ruddy, Terrence D.
    Acampa, Wanda
    Hauser, M. Timothy
    Kaufmann, Philipp A.
    Dey, Damini
    Berman, Daniel S.
    Slomka, Piotr J.
    EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2023, 50 (09) : 2656 - 2668
  • [9] Unsupervised learning to characterize patients with known coronary artery disease undergoing myocardial perfusion imaging
    Michelle C. Williams
    Bryan P. Bednarski
    Konrad Pieszko
    Robert J. H. Miller
    Jacek Kwiecinski
    Aakash Shanbhag
    Joanna X. Liang
    Cathleen Huang
    Tali Sharir
    Sharmila Dorbala
    Marcelo F. Di Carli
    Andrew J. Einstein
    Albert J. Sinusas
    Edward J. Miller
    Timothy M. Bateman
    Mathews B. Fish
    Terrence D. Ruddy
    Wanda Acampa
    M. Timothy Hauser
    Philipp A. Kaufmann
    Damini Dey
    Daniel S. Berman
    Piotr J. Slomka
    European Journal of Nuclear Medicine and Molecular Imaging, 2023, 50 : 2656 - 2668
  • [10] Accuracy detection of coronary artery disease using machine learning algorithms
    Singh, Harinder
    Rehman, Tasneem Bano
    Gangadhar, Ch
    Anand, Rohit
    Sindhwani, Nidhi
    Babu, M. Vijaya Sekhar
    APPLIED NANOSCIENCE, 2021, 13 (3) : 1791 - 1791