Utility of machine learning algorithms in assessing patients with a systemic right ventricle

Author:

Diller Gerhard-Paul123,Babu-Narayan Sonya1,Li Wei1,Radojevic Jelena14,Kempny Aleksander1,Uebing Anselm135,Dimopoulos Konstantinos1,Baumgartner Helmut23,Gatzoulis Michael A1,Orwat Stefan23

Affiliation:

1. Department of Adult Congenital Heart Disease, National Heart and Lung Institute, Imperial College London, Royal Brompton Hospital, Sydney Street, London, UK

2. Department of Cardiology III, Adult Congenital and Valvular Heart Disease, University Hospital Muenster, Albert-Schweitzer Campus 1, Muenster, Germany

3. Competence Network for Congenital Heart Defects, DZHK (German Centre for Cardiovascular Research), Berlin, Germany

4. Cardiologie Congenitale, Strasbourg, France

5. Division of Paediatric Cardiology, University Hospital Muenster, Albert-Schweitzer Campus 1, Muenster, Germany

Abstract

Abstract Aims To investigate the utility of novel deep learning (DL) algorithms in recognizing transposition of the great arteries (TGA) after atrial switch procedure or congenitally corrected TGA (ccTGA) based on routine transthoracic echocardiograms. In addition, the ability of DL algorithms for delineation and segmentation of the systemic ventricle was evaluated. Methods and results In total, 132 patients (92 TGA and atrial switch and 40 with ccTGA; 60% male, age 38.3 ± 12.1 years) and 67 normal controls (57% male, age 48.5 ± 17.9 years) with routine transthoracic examinations were included. Convolutional neural networks were trained to classify patients by underlying diagnosis and a U-Net design was used to automatically segment the systemic ventricle. Convolutional networks were build based on over 100 000 frames of an apical four-chamber or parasternal short-axis view to detect underlying diagnoses. The DL algorithm had an overall accuracy of 98.0% in detecting the correct diagnosis. The U-Net architecture model correctly identified the systemic ventricle in all individuals and achieved a high performance in segmenting the systemic right or left ventricle (Dice metric between 0.79 and 0.88 depending on diagnosis) when compared with human experts. Conclusion Our study demonstrates the potential of machine learning algorithms, trained on routine echocardiographic datasets to detect underlying diagnosis in complex congenital heart disease. Automated delineation of the ventricular area was also feasible. These methods may in future allow for the longitudinal, objective, and automated assessment of ventricular function.

Funder

EMAH Stiftung Karla Voellm

Adult Congenital Heart Centre

Centre for Pulmonary Hypertension

Royal Brompton Hospital

Actelion

Pfizer

GSK

British Heart Foundation

NIHR Cardiovascular

Respiratory Biomedical Research Units

Publisher

Oxford University Press (OUP)

Subject

Cardiology and Cardiovascular Medicine,Radiology Nuclear Medicine and imaging,General Medicine

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