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Role of deep learning methods in screening for subcutaneous implantable cardioverter defibrillator in heart failure

Role of deep learning methods in screening for subcutaneous implantable cardioverter defibrillator in heart failure
Role of deep learning methods in screening for subcutaneous implantable cardioverter defibrillator in heart failure
Introduction
S-ICD eligibility is assessed at pre-implant screening where surface ECG traces are used as surrogates for S-ICD vectors. In heart failure (HF) patients undergoing diuresis, electrolytes and fluid shifts can cause changes in R and T waves. Subsequently, T:R ratio, a major predictor of S-ICD eligibility, can be dynamic.

Methods
This is a prospective study of patients with structurally normal hearts and HF patients undergoing diuresis. All patients were fitted with Holters® to record their S-ICD vectors. Our deep learning model was used to analyze the T:R ratios across the recordings. Welch two sample t-test and Mann–Whitney U were used to compare the data between the two groups.

Results
Twenty-one patients (age 58.43 ± 18.92, 62% male, 14 HF, 7 normal hearts) were enrolled. There was a significant difference in the T:R ratios between both groups. Mean T: R was higher in the HF group (0.18 ± 0.08 vs 0.10 ± 0.05, p < .001). Standard deviation of T: R was also higher in the HF group (0.09 ± 0.05 vs 0.07 ± 0.04, p = .024). There was no difference between leads within the same group.

Conclusions
T:R ratio, a main determinant for S-ICD eligibility, is higher and has more tendency to fluctuate in HF patients undergoing diuresis. We hypothesize that our novel neural network model could be used to select HF patients eligible for S-ICD by better characterization of T:R ratio reducing the risk of T-wave over-sensing (TWO) and inappropriate shocks. Further work is required to consolidate our findings before applying to clinical practice.
1542-474X
ElRefai, Mohamed
28916fea-4687-4d4b-99aa-961e73b710ab
Abouelasaad, Mohamed
62c5bd28-9c5f-4287-8b63-b25b2a2b7966
Wiles, Benedict M.
a42ba978-24c3-4533-8eca-498102004477
Dunn, Anthony J.
161d9c8e-6813-4909-95ea-6c11bbbca287
Coniglio, Stefano
03838248-2ce4-4dbc-a6f4-e010d6fdac67
Zemkoho, Alain B.
30c79e30-9879-48bd-8d0b-e2fbbc01269e
Morgan, John M.
7bd04ada-ca61-4a2c-b1cf-1750ffa9d89c
Roberts, Paul R.
32fe1d97-dc53-49a1-9b4a-f866d0b7d13d
ElRefai, Mohamed
28916fea-4687-4d4b-99aa-961e73b710ab
Abouelasaad, Mohamed
62c5bd28-9c5f-4287-8b63-b25b2a2b7966
Wiles, Benedict M.
a42ba978-24c3-4533-8eca-498102004477
Dunn, Anthony J.
161d9c8e-6813-4909-95ea-6c11bbbca287
Coniglio, Stefano
03838248-2ce4-4dbc-a6f4-e010d6fdac67
Zemkoho, Alain B.
30c79e30-9879-48bd-8d0b-e2fbbc01269e
Morgan, John M.
7bd04ada-ca61-4a2c-b1cf-1750ffa9d89c
Roberts, Paul R.
32fe1d97-dc53-49a1-9b4a-f866d0b7d13d

ElRefai, Mohamed, Abouelasaad, Mohamed, Wiles, Benedict M., Dunn, Anthony J., Coniglio, Stefano, Zemkoho, Alain B., Morgan, John M. and Roberts, Paul R. (2023) Role of deep learning methods in screening for subcutaneous implantable cardioverter defibrillator in heart failure. Annals of Noninvasive Electrocardiology, 28 (1). (doi:10.1111/anec.13028).

Record type: Article

Abstract

Introduction
S-ICD eligibility is assessed at pre-implant screening where surface ECG traces are used as surrogates for S-ICD vectors. In heart failure (HF) patients undergoing diuresis, electrolytes and fluid shifts can cause changes in R and T waves. Subsequently, T:R ratio, a major predictor of S-ICD eligibility, can be dynamic.

Methods
This is a prospective study of patients with structurally normal hearts and HF patients undergoing diuresis. All patients were fitted with Holters® to record their S-ICD vectors. Our deep learning model was used to analyze the T:R ratios across the recordings. Welch two sample t-test and Mann–Whitney U were used to compare the data between the two groups.

Results
Twenty-one patients (age 58.43 ± 18.92, 62% male, 14 HF, 7 normal hearts) were enrolled. There was a significant difference in the T:R ratios between both groups. Mean T: R was higher in the HF group (0.18 ± 0.08 vs 0.10 ± 0.05, p < .001). Standard deviation of T: R was also higher in the HF group (0.09 ± 0.05 vs 0.07 ± 0.04, p = .024). There was no difference between leads within the same group.

Conclusions
T:R ratio, a main determinant for S-ICD eligibility, is higher and has more tendency to fluctuate in HF patients undergoing diuresis. We hypothesize that our novel neural network model could be used to select HF patients eligible for S-ICD by better characterization of T:R ratio reducing the risk of T-wave over-sensing (TWO) and inappropriate shocks. Further work is required to consolidate our findings before applying to clinical practice.

Text
Noninvasive Electrocardiol - 2022 - ElRefai - Role of deep learning methods in screening for subcutaneous implantable - Version of Record
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More information

Accepted/In Press date: 30 November 2022
Published date: 1 January 2023

Identifiers

Local EPrints ID: 508471
URI: http://eprints.soton.ac.uk/id/eprint/508471
ISSN: 1542-474X
PURE UUID: 7464f3f4-63d4-41f6-9aa6-f6c046288ad1
ORCID for Anthony J. Dunn: ORCID iD orcid.org/0009-0006-1179-117X
ORCID for Stefano Coniglio: ORCID iD orcid.org/0000-0001-9568-4385
ORCID for Alain B. Zemkoho: ORCID iD orcid.org/0000-0003-1265-4178

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Date deposited: 22 Jan 2026 17:46
Last modified: 23 Jan 2026 02:47

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Contributors

Author: Mohamed ElRefai
Author: Mohamed Abouelasaad
Author: Benedict M. Wiles
Author: Anthony J. Dunn ORCID iD
Author: John M. Morgan
Author: Paul R. Roberts

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