Literature DB >> 35192082

Application of machine learning in screening for congenital heart diseases using fetal echocardiography.

Vien T Truong1,2, Binh P Nguyen3, Thanh-Hoang Nguyen-Vo3, Wojciech Mazur1, Eugene S Chung1, Cassady Palmer1, Justin T Tretter4, Tarek Alsaied4, Vy T Pham5, Huan Q Do6, Phuong T N Do6, Vinh N Pham7, Ban N Ha6, Hoa N Chau8, Tuyen K Le9.   

Abstract

There is a growing body of literature supporting the utilization of machine learning (ML) to improve diagnosis and prognosis tools of cardiovascular disease. The current study was to investigate the impact that the ML framework may have on the sensitivity of predicting the presence or absence of congenital heart disease (CHD) using fetal echocardiography. A comprehensive fetal echocardiogram including 2D cardiac chamber quantification, valvar assessments, assessment of great vessel morphology, and Doppler-derived blood flow interrogation was recorded. The postnatal echocardiogram was used to ascertain the diagnosis of CHD. A random forest (RF) algorithm with a nested tenfold cross-validation was used to train models for assessing the presence of CHD. The study population was derived from a database of 3910 singleton fetuses with maternal age of 28.8 ± 5.2 years and gestational age at the time of fetal echocardiography of 22.0 weeks (IQR 21-24). The proportion of CHD was 14.1% for the studied cohort confirmed by post-natal echocardiograms. Our proposed RF-based framework provided a sensitivity of 0.85, a specificity of 0.88, a positive predictive value of 0.55 and a negative predictive value of 0.97 to detect the CHD with the mean of mean ROC curves of 0.94 and the mean of mean PR curves of 0.84. Additionally, six first features, including cardiac axis, peak velocity of blood flow across the pulmonic valve, cardiothoracic ratio, pulmonary valvar annulus diameter, right ventricular end-diastolic diameter, and aortic valvar annulus diameter, are essential features that play crucial roles in adding more predictive values to the model in detecting patients with CHD. ML using RF can provide increased sensitivity in prenatal CHD screening with very good performance. The incorporation of ML algorithms into fetal echocardiography may further standardize the assessment for CHD.
© 2022. The Author(s), under exclusive licence to Springer Nature B.V.

Entities:  

Keywords:  Congenital heart disease; Fetal echocardiography; Machine learning; Random forest

Year:  2022        PMID: 35192082     DOI: 10.1007/s10554-022-02566-3

Source DB:  PubMed          Journal:  Int J Cardiovasc Imaging        ISSN: 1569-5794            Impact factor:   2.357


  2 in total

1.  Cognitive Machine-Learning Algorithm for Cardiac Imaging: A Pilot Study for Differentiating Constrictive Pericarditis From Restrictive Cardiomyopathy.

Authors:  Partho P Sengupta; Yen-Min Huang; Manish Bansal; Ali Ashrafi; Matt Fisher; Khader Shameer; Walt Gall; Joel T Dudley
Journal:  Circ Cardiovasc Imaging       Date:  2016-06       Impact factor: 7.792

2.  Machine learning for prediction of all-cause mortality in patients with suspected coronary artery disease: a 5-year multicentre prospective registry analysis.

Authors:  Manish Motwani; Damini Dey; Daniel S Berman; Guido Germano; Stephan Achenbach; Mouaz H Al-Mallah; Daniele Andreini; Matthew J Budoff; Filippo Cademartiri; Tracy Q Callister; Hyuk-Jae Chang; Kavitha Chinnaiyan; Benjamin J W Chow; Ricardo C Cury; Augustin Delago; Millie Gomez; Heidi Gransar; Martin Hadamitzky; Joerg Hausleiter; Niree Hindoyan; Gudrun Feuchtner; Philipp A Kaufmann; Yong-Jin Kim; Jonathon Leipsic; Fay Y Lin; Erica Maffei; Hugo Marques; Gianluca Pontone; Gilbert Raff; Ronen Rubinshtein; Leslee J Shaw; Julia Stehli; Todd C Villines; Allison Dunning; James K Min; Piotr J Slomka
Journal:  Eur Heart J       Date:  2017-02-14       Impact factor: 29.983

  2 in total
  2 in total

1.  Exploring the role of artificial intelligence in the study of fetal heart.

Authors:  Giuseppe Rizzo; Maria Elena Pietrolucci; Alessandra Capponi; Ilenia Mappa
Journal:  Int J Cardiovasc Imaging       Date:  2022-03-16       Impact factor: 2.357

2.  Effectively Predicting the Presence of Coronary Heart Disease Using Machine Learning Classifiers.

Authors:  Ch Anwar Ul Hassan; Jawaid Iqbal; Rizwana Irfan; Saddam Hussain; Abeer D Algarni; Syed Sabir Hussain Bukhari; Nazik Alturki; Syed Sajid Ullah
Journal:  Sensors (Basel)       Date:  2022-09-23       Impact factor: 3.847

  2 in total

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