论文标题

暂时框架自适应网络,用于心脏声音细分,而没有状态持续时间的先验知识

Temporal-Framing Adaptive Network for Heart Sound Segmentation without Prior Knowledge of State Duration

论文作者

Wang, Xingyao, Liu, Chengyu, Li, Yuwen, Cheng, Xianghong, Li, Jianqing, Clifford, Gari D.

论文摘要

目的:本文提出了一种基于时间框架自适应网络(TFAN)的新型心脏声音分割算法,包括状态过渡损失和解码最可能状态序列的动态推断。方法:与以前的最新方法相反,基于TFAN的方法不需要任何了解状态的心脏声音持续时间,因此很可能会推广到非窦性节奏。基于TFAN的方法对50种从2016年心脏病挑战的训练集A随机选择的录音进行培训,并在其他12个独立的培训和测试数据库(2099录音和52180 BEATS)上进行了测试。分割数据库分为三个级别的难度增加(I级,-II和-III)进行性能报告。结果:基于TFAN的方法在所有12个数据库中均获得了较高的F1分数,但“ Test-B”平均为96.7%,而最先进的方法为94.6%。此外,基于TFAN的方法的总体F1得分分别为99.2%,94.4%,91.4%,II,-II和-III数据分别为98.4%,88.54%和79.80%的F1分数。结论:因此,基于TFAN的方法提供了实质性的改进,尤其是对于更困难的情况以及公共培训数据中未表示的数据集。意义:所提出的方法非常灵活,并且可能适用于其他非平稳时间序列。需要进一步的工作才能了解这种方法在多大程度上提供改进的诊断性能,尽管合乎逻辑地假设较高的细分会导致诊断的改进。

Objective: This paper presents a novel heart sound segmentation algorithm based on Temporal-Framing Adaptive Network (TFAN), including state transition loss and dynamic inference for decoding the most likely state sequence. Methods: In contrast to previous state-of-the-art approaches, the TFAN-based method does not require any knowledge of the state duration of heart sounds and is therefore likely to generalize to non sinus rhythm. The TFAN-based method was trained on 50 recordings randomly chosen from Training set A of the 2016 PhysioNet/Computer in Cardiology Challenge and tested on the other 12 independent training and test databases (2099 recordings and 52180 beats). The databases for segmentation were separated into three levels of increasing difficulty (LEVEL-I, -II and -III) for performance reporting. Results: The TFAN-based method achieved a superior F1 score for all 12 databases except for `Test-B', with an average of 96.7%, compared to 94.6% for the state-of-the-art method. Moreover, the TFAN-based method achieved an overall F1 score of 99.2%, 94.4%, 91.4% on LEVEL-I, -II and -III data respectively, compared to 98.4%, 88.54% and 79.80% for the current state-of-the-art method. Conclusion: The TFAN-based method therefore provides a substantial improvement, particularly for more difficult cases, and on data sets not represented in the public training data. Significance: The proposed method is highly flexible and likely to apply to other non-stationary time series. Further work is required to understand to what extent this approach will provide improved diagnostic performance, although it is logical to assume superior segmentation will lead to improved diagnostics.

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