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Development of a Deep Learning Method to Predict Optimal Ablation Patterns for Atrial Fibrillation

机译:预测心房颤动最佳消融模式的深度学习方法的发展

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Atrial fibrillation (AF) is a common cardiac arrhythmia that affects 1% of the population and is associated with high levels of morbidity and all-cause mortality. Catheter ablation (CA) has become one of the first line treatments for AF, but the success rates of CA and other clinical treatments remain suboptimal. The need to improve clinical outcomes warrants the optimisation of CA therapy. In this study, we develop a novel deep learning method to identify specific ablation patterns that terminate AF efficiently. To achieve this, we simulate typical AF ablation scenarios using computational models of 2D atrial tissue, and use the simulation outcomes as inputs for a deep neural network. The network is trained, validated and then applied to classify the scenarios and predict the optimal CA pattern in each scenario. For the validation dataset, the overall accuracy in identifying the best CA strategy is recorded at 79%. The study provides proof of concept that deep neural networks can learn from computational models of AF and help optimise CA therapy.
机译:心房颤动(AF)是一种常见的心律不齐,影响1%的人口,并与高发病率和全因死亡率相关。导管消融(CA)已成为房颤的一线治疗方法之一,但CA和其他临床治疗的成功率仍不理想。改善临床结果的需要保证了CA治疗的优化。在这项研究中,我们开发了一种新颖的深度学习方法,以识别可有效终止AF的特定消融模式。为了实现这一目标,我们使用2D心房组织的计算模型来模拟典型的AF消融方案,并将模拟结果用作深度神经网络的输入。对该网络进行培训,验证,然后将其应用于方案分类,并预测每种方案中的最佳CA模式。对于验证数据集,确定最佳CA策略的总体准确性记录为79%。这项研究提供了概念证明,深层神经网络可以从AF的计算模型中学习并帮助优化CA治疗。

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