1.Novel Pulmonary Nodule Position Detection Method Based on Multiscale Convolution.
Mengmeng WU ; Qiuchen DU ; Yi GUO
Chinese Journal of Medical Instrumentation 2023;47(4):402-405
OBJECTIVE:
In order to improve the accuracy of the current pulmonary nodule location detection method based on CT images, reduce the problem of missed detection or false detection, and effectively assist imaging doctors in the diagnosis of pulmonary nodules.
METHODS:
Propose a novel method for detecting the location of pulmonary nodules based on multiscale convolution. First, image preprocessing methods are used to eliminate the noise and artifacts in lung CT images. Second, multiple adjacent single-frame CT images are selected to be concatenate into multi-frame images, and the feature extraction is carried out through the artificial neural network model U-Net improved by multi-scale convolution to enhanced feature extraction capability for pulmonary nodules of different sizes and shapes, so as to improve the accuracy of feature extraction of pulmonary nodules. Finally, using point detection to improve the loss function of U-Net training process, the accuracy of pulmonary nodule location detection is improved.
RESULTS:
The accuracy of detecting pulmonary nodules equal or larger than 3 mm and smaller than 3 mm are 98.02% and 96.94% respectively.
CONCLUSIONS
This method can effectively improve the detection accuracy of pulmonary nodules on CT image sequence, and can better meet the diagnostic needs of pulmonary nodules.
Humans
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Lung Neoplasms/diagnostic imaging*
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Solitary Pulmonary Nodule/diagnostic imaging*
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Tomography, X-Ray Computed
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Neural Networks, Computer
2.Anesthesia Depth Monitoring Based on Anesthesia Monitor with the Help of Artificial Intelligence.
Yi GUO ; Qiuchen DU ; Mengmeng WU ; Guanhua LI
Chinese Journal of Medical Instrumentation 2023;47(1):43-46
OBJECTIVE:
To use the low-cost anesthesia monitor for realizing anesthesia depth monitoring, effectively assist anesthesiologists in diagnosis and reduce the cost of anesthesia operation.
METHODS:
Propose a monitoring method of anesthesia depth based on artificial intelligence. The monitoring method is designed based on convolutional neural network (CNN) and long and short-term memory (LSTM) network. The input data of the model include electrocardiogram (ECG) and pulse wave photoplethysmography (PPG) recorded in the anesthesia monitor, as well as heart rate variability (HRV) calculated from ECG, The output of the model is in three states of anesthesia induction, anesthesia maintenance and anesthesia awakening.
RESULTS:
The accuracy of anesthesia depth monitoring model under transfer learning is 94.1%, which is better than all comparison methods.
CONCLUSIONS
The accuracy of this study meets the needs of perioperative anesthesia depth monitoring and the study reduces the operation cost.
Artificial Intelligence
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Neural Networks, Computer
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Heart Rate
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Electrocardiography
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Photoplethysmography/methods*
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Anesthesia
3.Expert Consensus on Evaluation, Treatment and Rehabilitation of Traumatic Spinal Cord Injury
Jianjun LI ; Mingliang YANG ; Degang YANG ; Feng GAO ; Liangjie DU ; Limin LIAO ; Bohua CHEN ; Fang ZHOU ; Xuesong ZHANG ; Tiansheng SUN ; Baozhong ZHANG ; Xiaopei XIANG ; Lixia CHEN ; Hongjun ZHOU ; Songhuai LIU ; Zhihan SUN ; Ying LIU ; Xuan LIU ; Chunying HU ; Qiuchen HUANG ; Juan WU ; Fubiao HUANG ; Xiaoying ZHANG ; Jun LI ; Liang CHEN ; Hongwei LIU ; Huiming GONG
Chinese Journal of Rehabilitation Theory and Practice 2017;23(3):274-287
Spinal cord injury is a catastrophic injury causing lifelong severe disabilities, and poses a great burden to the individuals, families and society. In order to promote the standardization in treatment of traumatic spinal cord injury, the consensus on the evaluation, treatment and rehabilitation of traumatic spinal cord injury was suggested by experts, who came from authoritative multicenter in China. The expert consensus, which formed a standardization process from the first aid clinical treatment to rehabilitation of spinal cord injury, shall give a better practical guide for clinic and rehabilitation physicians.