Prediction of pacing using HRV

Citation Author(s):
Youn Joung
Cho
Seoul National University Hospital
Submitted by:
Youn Joung Cho
Last updated:
Tue, 12/24/2024 - 13:25
DOI:
10.21227/gtmh-rt35
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Abstract 

Pacemaker use due to conduction abnormalities is a common complication following surgical aortic valve replacement (AVR). Heart rate variability (HRV) is associated with sinus node dysfunction and significant dysrhythmias. However, its predictive value for postoperative electrical pacing requirements after AVR remains unclear. This retrospective study reviewed pre-registered electrical records from 194 adult patients who underwent isolated AVR. HRV parameters in both time and frequency domains were obtained prior to anesthesia induction and before initiating cardiopulmonary bypass. Tree-based machine learning (ML) models, including RandomForest, LightGBM, and ExtraTrees, were developed using HRV parameters and clinical variables to predict postoperative pacing needs. The incidence of temporary electrical pacing postoperatively was 35.1% (34.8% in the training set and 35.9% in the test set). The RandomForest model incorporating both HRV and clinical features achieved an area under the receiver operating characteristic curve of 0.731 (95%CI, 0.681–0.781) and an area under the precision-recall curve of 0.687 (95%CI, 0.619–0.746). In conclusion, ML models leveraging HRV demonstrated potential for predicting postoperative pacemaker requirements following isolated surgical AVR. Accurate prediction of significant conduction disturbances through HRV-based ML algorithms may enable timely interventions and improved management for at-risk patients in clinical practice.

Instructions: 

Data dictionaries

Variable

Description

Op_date

Date of operation

OR

Operation room

Time

Operation sequence

Ht

Patient’s height in cm

Wt

Patient’s weight in kg

Start_time

Operation start time

NSR

Normal sinus rhythm

Sinus_brady

Sinus bradycardia

1’AVB

First degree AV block

RBBB

Right bundle brandh blocl

LAFB

Left anterior fascicular block

CPB_time

Duration of cardiopulmonary bypass in minute

ACC_time

Duration of aortic cross clamp in minute

PPI

Permanent pacemaker implantation

PPI_date

Date of implantation of permanent pacemaker

Pump_off

Time of cardiopulmonary bypass off

Preop_Dx

Preoperative diagnosis

 

Funding Agency: 
Seoul National University Hospital
Grant Number: 
0320220390

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