1. Research progress in saliva collection, analysis and its relationship with oral diseases
Chenhao YU ; Ziying YOU ; Shengkai CHEN ; Qi HAN ; Yu CHEN
Chinese Journal of Stomatology 2019;54(5):344-349
As one of the major body fluid, saliva has various components that can shift according to the systemic health state. With the atraumatic way of collection, saliva can be a promising media to help the detection of oral diseases. With the development of salivaomics and the application of unbiased, highly sensitive, and high throughout separation techniques for salivary components, there′s now more possibilities for effective identification of biomarkers correlated with oral diseases. This review aimed to introduce the current state of saliva collection and detection techniques as well as their correlation with oral diseases, hoping to provide evidence for further research.
2.Hypertension risk stratification prediction model based on frequency-domain pulse wave Mel-scale frequency cepstral coefficient features
Chenhao QI ; Jingdong YANG ; Zehao QIU ; Minghui YAO ; Haixia YAN
Academic Journal of Naval Medical University 2024;45(10):1226-1240
Objective To propose a frequency-domain pulse wave prediction model based on fusion attention mechanism,improving the low classification accuracy and poor generalization performance of hypertension time-domain pulse wave classification based on artificial intelligence technology.Methods Firstly,the time-domain pulse wave was transformed into frequency-domain Mel-scale frequency cepstral coefficient features to enhance its discriminability.Then,temporal convolutional network and Transformer structures were employed to extract the deep features of pulse waves,and self-attention mechanism and selective kernel attention were combined for decision fusion to extract relevant features.Floodings regularization method was used to indirectly control the training loss and prevent overfitting.A 5-fold cross-verification experiment was conducted based on 527 clinical pulse diagnosis data provided by Longhua Hospital,Shanghai University of Traditional Chinese Medicine and Shanghai Traditional Chinese Medicine-Integrated Hospital.Additionally,the extreme gradient boosting algorithm was employed to calculate the contribution rate ranking of frequency-domain pulse wave features,and the key factors affecting the classification accuracy of the model were analyzed to provide reference for the clinical auxiliary diagnosis of traditional Chinese medicine.Results The evaluation metrics accuracy,F1 score,precision,recall rate and area under curve value of the model proposed in this study were 0.939 6,0.924 9,0.940 9,0.929 5,and 0.993 4,respectively.The static characteristics of the pulse wave,the contribution rate of the first-order difference and the second-order difference coefficients were relatively balanced,indicating that the degree of hypertension risk was not only related to the static characteristics of the pulse wave,but also to the dynamic characteristics of the pulse wave.Conclusion The proposed model has higher classification accuracy and generalization performance compared to typical pulse wave classification models.