1.Changing trend of abdominal regional oxygen saturation in very/extremely low birth weight infants in the early postnatal stage: a prospective study.
Jing-Hua ZHANG ; Rui-Lian GUAN ; Pian-Pian PAN ; Wei-Neng LU ; Hua-Yan ZHANG
Chinese Journal of Contemporary Pediatrics 2021;23(10):1015-1020
OBJECTIVES:
To study the changing trend of abdominal regional oxygen saturation (A-rSO
METHODS:
The VLBW/ELBW infants who were admitted to the neonatal intensive care unit from September 2019 to May 2021 were enrolled as subjects. Near-infrared spectroscopy was used to monitor A-rSO
RESULTS:
A total of 63 VLBW/ELBW infants were enrolled, with 30 infants in the <29 weeks group and 33 in the ≥29 weeks group. A-rSO
CONCLUSIONS
In infants with VLBW/ELBW, A-rSO
Birth Weight
;
Gestational Age
;
Humans
;
Infant
;
Infant, Extremely Low Birth Weight
;
Infant, Newborn
;
Infant, Very Low Birth Weight
;
Oxygen
;
Prospective Studies
;
Spectroscopy, Near-Infrared
2.An interpretable machine learning method for heart beat classification
Jinbao ZHANG ; Peiyu HE ; Pian TIAN ; Jianmin CAI ; Fan PAN ; Yongjun QIAN ; Qijun ZHAO
Chinese Journal of Clinical Thoracic and Cardiovascular Surgery 2023;30(02):185-190
Objective To explore the application of Tsetlin Machine (TM) in heart beat classification. Methods TM was used to classify the normal beats, premature ventricular contraction (PVC) and supraventricular premature beats (SPB) in the 2020 data set of China Physiological Signal Challenge. This data set consisted of the single-lead electro-cardiogram data of 10 patients with arrhythmia. One patient with atrial fibrillation was excluded, and finally data of the other 9 patients were included in this study. The classification results were then analyzed. Results The classification results showed that the average recognition accuracy of TM was 84.3%, and the basis of classification could be shown by the bit pattern interpretation diagram. Conclusion TM can explain the classification results when classifying heart beats. The reasonable interpretation of classification results can increase the reliability of the model and facilitate people's review and understanding.
3.A heart sound segmentation method based on multi-feature fusion network
Pian TIAN ; Peiyu HE ; Jie CAI ; Qijun ZHAO ; Li LI ; Yongjun QIAN ; Fan PAN
Chinese Journal of Clinical Thoracic and Cardiovascular Surgery 2024;31(05):672-681
Objective To propose a heart sound segmentation method based on multi-feature fusion network. Methods Data were obtained from the CinC/PhysioNet 2016 Challenge dataset (a total of 3 153 recordings from 764 patients, about 91.93% of whom were male, with an average age of 30.36 years). Firstly the features were extracted in time domain and time-frequency domain respectively, and reduced redundant features by feature dimensionality reduction. Then, we selected optimal features separately from the two feature spaces that performed best through feature selection. Next, the multi-feature fusion was completed through multi-scale dilated convolution, cooperative fusion, and channel attention mechanism. Finally, the fused features were fed into a bidirectional gated recurrent unit (BiGRU) network to heart sound segmentation results. Results The proposed method achieved precision, recall and F1 score of 96.70%, 96.99%, and 96.84% respectively. Conclusion The multi-feature fusion network proposed in this study has better heart sound segmentation performance, which can provide high-accuracy heart sound segmentation technology support for the design of automatic analysis of heart diseases based on heart sounds.