Department of Healthcare Administration and Medical Informatics, Kaohsiung Medical University, No.100, Shin-Chuan 1st Road, Kaohsiung, 807, Taiwan.
Department of Medical Research, Kaohsiung Medical University Hospital, No.100, Shin-Chuan 1st Road, Kaohsiung, 807, Taiwan.
BMC Bioinformatics. 2021 Nov 8;22(Suppl 5):92. doi: 10.1186/s12859-021-04032-8.
Heart sound measurement is crucial for analyzing and diagnosing patients with heart diseases. This study employed phonocardiogram signals as the input signal for heart disease analysis due to the accessibility of the respective method. This study referenced preprocessing techniques proposed by other researchers for the conversion of phonocardiogram signals into characteristic images composed using frequency subband. Image recognition was then conducted through the use of convolutional neural networks (CNNs), in order to classify the predicted of phonocardiogram signals as normal or abnormal. However, CNN requires the tuning of multiple hyperparameters, which entails an optimization problem for the hyperparameters in the model. To maximize CNN robustness, the uniform experiment design method and a science-based methodical experiment design were used to optimize CNN hyperparameters in this study.
An artificial intelligence prediction model was constructed using CNN, and the uniform experiment design method was proposed to acquire hyperparameters for optimal CNN robustness. The results indicate Filters ([Formula: see text]), Stride ([Formula: see text]), Activation functions ([Formula: see text]), and Dropout ([Formula: see text]) to be significant factors considerably influencing the ability of CNN to distinguish among heart sound states. Finally, the confirmation experiment was conducted, and the hyperparameter combination for optimal model robustness was Filters ([Formula: see text]) = 32, Kernel Size ([Formula: see text] = 3 × 3, Stride ([Formula: see text]) = (1,1), Padding ([Formula: see text] as same, Optimizer ([Formula: see text] as the stochastic gradient descent, Activation functions ([Formula: see text]) as relu, and Dropout ([Formula: see text]) = 0.544. With this combination of parameters, the model had an average prediction accuracy rate of 0.787 and standard deviation of 0.
In this study, phonocardiogram signals were used for the early prediction of heart diseases. The science-based and methodical uniform experiment design was used for the optimization of CNN hyperparameters to construct a CNN with optimal robustness. The results revealed that the constructed model exhibited robustness and an acceptable accuracy rate. Other literature has failed to address hyperparameter optimization problems in CNN; a method is subsequently proposed for robust CNN optimization, thereby solving this problem.
心音测量对于分析和诊断心脏病患者至关重要。由于该方法的可及性,本研究采用心音图信号作为心脏病分析的输入信号。本研究参考了其他研究人员提出的预处理技术,将心音图信号转换为使用子带频率组成的特征图像。然后通过使用卷积神经网络(CNN)进行图像识别,将心音图信号的预测分类为正常或异常。然而,CNN 需要调整多个超参数,这需要对模型中的超参数进行优化问题。为了最大限度地提高 CNN 的鲁棒性,本研究使用均匀实验设计方法和基于科学的系统方法实验设计来优化 CNN 超参数。
使用 CNN 构建了人工智能预测模型,并提出了均匀实验设计方法来获取最优 CNN 鲁棒性的超参数。结果表明,滤波器([Formula: see text])、步长([Formula: see text])、激活函数([Formula: see text])和Dropout([Formula: see text])是对 CNN 区分心音状态能力有重大影响的显著因素。最后,进行了确认实验,确定了最优模型鲁棒性的超参数组合为滤波器([Formula: see text])=32、核大小([Formula: see text]=3×3、步长([Formula: see text])=(1,1)、填充([Formula: see text]为相同、优化器([Formula: see text]为随机梯度下降、激活函数([Formula: see text])为 relu 和 Dropout([Formula: see text])=0.544。使用此参数组合,该模型的平均预测准确率为 0.787,标准偏差为 0。
在本研究中,使用心音图信号进行心脏病的早期预测。使用基于科学和系统的均匀实验设计来优化 CNN 超参数,构建具有最佳鲁棒性的 CNN。结果表明,所构建的模型具有鲁棒性和可接受的准确率。其他文献未能解决 CNN 中的超参数优化问题;因此,提出了一种稳健的 CNN 优化方法,从而解决了这个问题。