Brief Review — A heart sound classification method based on joint decision of extreme gradient boosting and deep neural network
XGBoost + LSTM
A heart sound classification method based on joint decision of extreme gradient boosting and deep neural network
XGBoost + LSTM, by Shanghai Jiao Tong University, and Shanghai General Hospital
2021 J. Bio. Eng. (Sik-Ho Tsang @ Medium)Heart Sound Classification
2013 … 2020 [1D-CNN] [WaveNet] 2023 [2LSTM+3FC, 3CONV+2FC] [NRC-Net]
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- First, the preprocessed heart sound recordings are segmented into four status, and 5 categories of features are extracted.
- The first 4 categories of features are used as the input of the XGBoost classifier.
- The last category is the Mel-frequency cepstral coefficient (MFCC), which is used as the input of long short-term memory network (LSTM).
- Joint decision is made based on XGBoost and LSTM.
Outline
- Feature Extraction
- XGBoost & LSTM
- Results
1. Feature Extraction
1.1. Dataset
- PhysioNet dataset [6] is used with denoising and segmentation using Springer [5].
- Then, feature extraction is performed.
1.2. Feature Set
- Time, frequency, wavelet transform coefficient, and wavelet packet entropy features are extracted as above for XGBoost.
- MFCC features are also extracted for LSTM.
- In total, 136 features are extracted.
2. XGBoost & LSTM
2.1. XGBoost
- Feature subtraction process is used to remove useless features.
2.2. LSTM
- 12 MFCC is extracted for each frame.
- With 299 frames, 299×12 features are fed to LSTM.
2.3. Joint Decision
LSTM is used to classify the sound if it is normal, abnormal or unclassified.
If LSTM classifies the sound as abnormal or unclassified, XGBoost is used to classify the sound as normal or abnormal.
3. Results
3.1. LSTM Hyperparameter Tuning
2 hidden layers with 100 neurons each obtains the best performance.
3.2. SOTA Comparisons
The proposed XGBoost + LSTM obtains the best results.