1.A review of deep learning methods for non-contact heart rate measurement based on facial videos.
Shuyue GUAN ; Yimou LYU ; Yongchun LI ; Chengzhi XIA ; Lin QI ; Lisheng XU
Journal of Biomedical Engineering 2025;42(1):197-204
Heart rate is a crucial indicator of human health with significant physiological importance. Traditional contact methods for measuring heart rate, such as electrocardiograph or wristbands, may not always meet the need for convenient health monitoring. Remote photoplethysmography (rPPG) provides a non-contact method for measuring heart rate and other physiological indicators by analyzing blood volume pulse signals. This approach is non-invasive, does not require direct contact, and allows for long-term healthcare monitoring. Deep learning has emerged as a powerful tool for processing complex image and video data, and has been increasingly employed to extract heart rate signals remotely. This article reviewed the latest research advancements in rPPG-based heart rate measurement using deep learning, summarized available public datasets, and explored future research directions and potential advancements in non-contact heart rate measurement.
Humans
;
Deep Learning
;
Heart Rate/physiology*
;
Photoplethysmography/methods*
;
Video Recording
;
Face
;
Monitoring, Physiologic/methods*
;
Signal Processing, Computer-Assisted
2.Research on type 2 diabetes prediction algorithm based on photoplethysmography.
Mingying HU ; Quanyu WU ; Yifan CAO ; Jin CAO ; Yifan ZHAO ; Lin ZHANG ; Xiaojie LIU
Journal of Biomedical Engineering 2025;42(5):1005-1011
To address the current issues of data imbalance and scarcity in photoplethysmography (PPG) data for type 2 diabetes mellitus (T2DM) prediction, this study proposes an improved conditional Wasserstein generative adversarial network with gradient penalty (CWGAN-GP). The algorithm integrated gated recurrent unit (GRU) networks and self-attention mechanisms to construct a generator, aiming to produce high-quality PPG signals. Various data augmentation methods, including the improved CWGAN-GP, were employed to expand the PPG dataset, and multiple classifiers were applied for T2DM prediction analysis. Experimental results showed that the model trained on data generated by the improved CWGAN-GP achieved the optimal prediction performance. The highest accuracy reached 0.895 0, and compared with other data enhancement methods, this approach exhibited significant advantages in terms of precision and F1-score. The generated data notably enhances the accuracy and generalization ability of T2DM prediction models, providing a more reliable technical basis for non-invasive early T2DM screening based on PPG signals.
Photoplethysmography/methods*
;
Diabetes Mellitus, Type 2/diagnosis*
;
Humans
;
Algorithms
;
Neural Networks, Computer
;
Signal Processing, Computer-Assisted
;
Prediction Algorithms
3.The advances in the application of peripheral perfusion index in patients with septic shock.
Jiapan AN ; Xinqi XU ; Tingyu YANG ; Bin LI ; Zhimin DOU
Chinese Critical Care Medicine 2025;37(8):780-784
Septic shock, a prevalent critical condition in intensive care units (ICU) and a major cause of patient mortality, is fundamentally attributed to microcirculatory dysfunction. Traditional macrocirculatory parameters are often insufficiently sensitive to reflect microcirculatory status. Consequently monitoring peripheral microcirculatory function holds crucial significance for assessing disease progression and evaluating therapeutic efficacy in septic shock. The peripheral perfusion index (PPI), obtained from a standard pulse oximeter, is based on photoplethysmography (PPG). It calculates the differential absorption of red and infrared light emitted by the sensor between pulsatile arterial blood and non-pulsatile tissue, enabling real-time reflection of peripheral perfusion and thus providing non-invasive, continuous monitoring of microcirculatory function. Although often overlooked compared to other ICU monitoring parameters, PPI has demonstrated notable clinical advances in septic shock management. Specifically, in early identification, PPI combined with sequential organ failure assessment (SOFA) predicts disease progression, with its dynamic changes further aiding prognosis assessment. During fluid resuscitation, it guides fluid responsiveness evaluation and serves as a therapeutic target to optimize strategies. In circulatory support, it assists in determining vasoactive drug initiation timing and dosage titration. Additionally, PPI aids mechanical ventilation weaning and organ dysfunction evaluation. This article reviews the principles, influencing factors, and clinical application advances of PPI in septic shock, aiming to provide clinicians with a basis for individualized intervention, improved patient outcomes, and the advancement of precision medicine in septic shock management.
Humans
;
Shock, Septic/therapy*
;
Microcirculation
;
Perfusion Index
;
Prognosis
;
Photoplethysmography
4.Application of photoplethysmography for atrial fibrillation in early warning, diagnosis and integrated management.
Meihui TAI ; Zhigeng JIN ; Hao WANG ; Yutao GUO
Journal of Biomedical Engineering 2023;40(6):1102-1107
Atrial fibrillation (AF) is the most common sustained cardiac arrhythmia. Early diagnosis and effective management are important to reduce atrial fibrillation-related adverse events. Photoplethysmography (PPG) is often used to assist wearables for continuous electrocardiograph monitoring, which shows its unique value. The development of PPG has provided an innovative solution to AF management. Serial studies of mobile health technology for improving screening and optimized integrated care in atrial fibrillation have explored the application of PPG in screening, diagnosing, early warning, and integrated management in patients with AF. This review summarizes the latest progress of PPG analysis based on artificial intelligence technology and mobile health in AF field in recent years, as well as the limitations of current research and the focus of future research.
Humans
;
Atrial Fibrillation/therapy*
;
Photoplethysmography
;
Artificial Intelligence
;
Electrocardiography
;
Biomedical Technology
5.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
;
Neural Networks, Computer
;
Heart Rate
;
Electrocardiography
;
Photoplethysmography/methods*
;
Anesthesia
6.A method for photoplethysmography signal quality assessment fusing multi-class features with multi-scale series information.
Yusheng QI ; Aihua ZHANG ; Yurun MA ; Huidong WANG ; Jiaqi LI ; Cheng CHEN
Journal of Biomedical Engineering 2023;40(3):536-543
Photoplethysmography (PPG) is often affected by interference, which could lead to incorrect judgment of physiological information. Therefore, performing a quality assessment before extracting physiological information is crucial. This paper proposed a new PPG signal quality assessment by fusing multi-class features with multi-scale series information to address the problems of traditional machine learning methods with low accuracy and deep learning methods requiring a large number of samples for training. The multi-class features were extracted to reduce the dependence on the number of samples, and the multi-scale series information was extracted by a multi-scale convolutional neural network and bidirectional long short-term memory to improve the accuracy. The proposed method obtained the highest accuracy of 94.21%. It showed the best performance in all sensitivity, specificity, precision, and F1-score metrics, compared with 6 quality assessment methods on 14 700 samples from 7 experiments. This paper provides a new method for quality assessment in small samples of PPG signals and quality information mining, which is expected to be used for accurate extraction and monitoring of clinical and daily PPG physiological information.
Photoplethysmography
;
Machine Learning
;
Neural Networks, Computer
7.Heart rate extraction algorithm based on adaptive heart rate search model.
Ronghao MENG ; Zhuoshi LI ; Helong YU ; Qichao NIU
Journal of Biomedical Engineering 2022;39(3):516-526
Photoplethysmography (PPG) is a non-invasive technique to measure heart rate at a lower cost, and it has been recently widely used in smart wearable devices. However, as PPG is easily affected by noises under high-intensity movement, the measured heart rate in sports has low precision. To tackle the problem, this paper proposed a heart rate extraction algorithm based on self-adaptive heart rate separation model. The algorithm firstly preprocessed acceleration and PPG signals, from which cadence and heart rate history were extracted respectively. A self-adaptive model was made based on the connection between the extracted information and current heart rate, and to output possible domain of the heart rate accordingly. The algorithm proposed in this article removed the interference from strong noises by narrowing the domain of real heart rate. From experimental results on the PPG dataset used in 2015 IEEE Signal Processing Cup, the average absolute error on 12 training sets was 1.12 beat per minute (bpm) (Pearson correlation coefficient: 0.996; consistency error: -0.184 bpm). The average absolute error on 10 testing sets was 3.19 bpm (Pearson correlation coefficient: 0.990; consistency error: 1.327 bpm). From experimental results, the algorithm proposed in this paper can effectively extract heart rate information under noises and has the potential to be put in usage in smart wearable devices.
Algorithms
;
Heart Rate/physiology*
;
Photoplethysmography/methods*
;
Signal Processing, Computer-Assisted
;
Wearable Electronic Devices
8.Development of Respiratory Signal Monitoring System Based on Photoplethysmography.
Chenqin LIU ; Sinian YUAN ; Gaozang LIN ; Shijie CAI ; Jilun YE ; Xu ZHANG ; Hao JIN
Chinese Journal of Medical Instrumentation 2022;46(4):368-372
Breathing is of great significance in the monitoring of patients with obstructive sleep apnea hypopnea syndrome, perioperative monitoring and intensive care. In this study, a respiratory monitoring and verification system based on optical capacitance product pulse wave (PPG) is designed, which can synchronously collect human PPG signals. Through algorithm processing, the characteristic parameters of PPG signal are calculated, and the respiratory signal and respiratory frequency can be extracted in real time. In order to verify the accuracy of extracting respiratory signal and respiratory rate by the algorithm, the system adds the nasal airflow respiratory signal acquisition module to synchronously collect the nasal airflow respiratory signal as the standard signal for comparison and verification. Finally, the root mean square error between the respiratory rate extracted by the algorithm from the pulse wave and the standard respiratory rate is only 1.05 times/min.
Algorithms
;
Electrocardiography
;
Heart Rate
;
Humans
;
Photoplethysmography
;
Respiration
;
Respiratory Rate
;
Signal Processing, Computer-Assisted
;
Sleep Apnea, Obstructive
9.Development of Respiratory Signal Extraction System Based on Photoplethysmography.
Jingjing ZHOU ; Jilun YE ; Xu ZHANG
Chinese Journal of Medical Instrumentation 2021;45(2):136-140
Oxygen saturation and respiratory signals are important physiological signals of human body, respiratory monitoring plays an important role in clinical and daily life. A system was established to extract respiratory signals from photoplethysmography in this study. Including the collection of pulse wave signal, the extraction of respiratory signal, and the calculation of respiratory rate and pulse rate transmitted from the slave computer to the host computer in real time.
Heart Rate
;
Humans
;
Monitoring, Physiologic
;
Photoplethysmography
;
Respiratory Rate
;
Signal Processing, Computer-Assisted
10.Emotion Recognition Based on Multiple Physiological Signals.
Shali CHEN ; Liuyi ZHANG ; Feng JIANG ; Wanlin CHEN ; Jiajun MIAO ; Hang CHEN
Chinese Journal of Medical Instrumentation 2020;44(4):283-287
Emotion is a series of reactions triggered by a specific object or situation that affects a person's physiological state and can, therefore, be identified by physiological signals. This paper proposes an emotion recognition model. Extracted the features of physiological signals such as photoplethysmography, galvanic skin response, respiration amplitude, and skin temperature. The SVM-RFE-CBR(Recursive Feature Elimination-Correlation Bias Reduction-Support Vector Machine) algorithm was performed to select features and support vector machines for classification. Finally, the model was implemented on the DEAP dataset for an emotion recognition experiment. In the rating scale of valence, arousal, and dominance, the accuracy rates of 73.5%, 81.3%, and 76.1% were obtained respectively. The result shows that emotional recognition can be effectively performed by combining a variety of physiological signals.
Arousal
;
Emotions
;
Galvanic Skin Response
;
Humans
;
Photoplethysmography
;
Support Vector Machine

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