1.Automatic quantitative analysis of myopia-related ocular fundus morphological parameters based on artificial intelligence
Ting LI ; Panpan XIAO ; Yonghua GU ; Fangxia ZHANG ; Xizhen GUO ; Xiaolin CHEN ; Hui YANG ; Shuang ZHANG
International Eye Science 2026;26(5):888-895
AIM:To automatically identify and quantitatively assess myopia-related fundus structural changes by combining non-mydriatic color fundus photography with an artificial intelligence(AI)-powered quantitative fundus analysis system and to further analyze the correlations between these fundus parameters and spherical equivalent(SE), axial length(AL), and age, providing the objective basis for monitoring myopia progression and supporting the formulation of personalized myopia prevention and control strategies. METHODS:A cross-sectional study was conducted enrolling myopic patients aged 18-50 y who underwent myopia screening from March 2023 to December 2023. Patients were stratified into three groups based on SE: the -3.00 D
2.Clinical study of intracranial hypotension targeted body posture combined with pharmacotherapy in the treatment of chronic subdural hematoma
Jiayu CHEN ; Zhe WANG ; Di ZANG ; Ruizhe ZHENG ; Xiangru YE ; Zengxin QI ; Zeyu XU ; Zhiqiang LI ; Chengfeng SUN ; Liangjun SHEN ; Luoping SHENG ; Fulin XU ; Ruyong YE ; Kaiyu ZHOU ; Weijun TANG ; Yueqing HU ; Dapeng SHI ; Yuquan WANG ; Xizhen WU ; Ying WANG ; Qilin ZHANG ; Feili LIU ; Guo YU ; Yiping LU ; Yirui SUN ; Ning ZHANG ; Feng HUANG ; Xialong GU ; Han ZHANG ; Jian DING ; Yongyan BI ; Haolan DU ; Jing ZHANG ; Hailong JI ; Ding DING ; Wei ZHANG ; Xuehai WU
Chinese Journal of Surgery 2025;63(3):212-218
Objective:To compare the efficacy of body posture combined with pharmacotherapy and pharmacotherapy alone in the treatment of chronic subdural hematoma(CSDH).Methods:Firstly, retrospective case series study was conducted. Thirty cases of CSDH that had received body posture combined with pharmacotherapy at Department of Neurosurgery, Huashan Hospital Affiliated to Fudan University from December 2016 to October 2020 were studied retrospectively. Twenty-seven patients were male, and 3 patients were female. The age of patients ( M(IQR)) was 66(16) years (range:28 to 84). Nineteen patients had unilateral hematoma, and 11 patients had bilateral hematoma. All patients received pharmacotherapy and body posture therapy that was to raise their lower limbs 20 to 30 cm with leg lift pad and get abdominal compressed with customized abdominal belt in supine position. Patients were required to maintain the body posture as much as possible, with the maximum to 16 to 18 hours per day. Patients with unilateral hematoma should tilt the head to the affected side and avoid tilting it to the opposite side. For patients with bilateral hematoma, there was no need for head lateralization. Patient were treated with oral dexamethasone and atorvastatin simultaneously. The preliminary efficacy of body posture combined with pharmacotherapy was determined by hematoma improvement rate which was analyzed by Clopper-Pearson method. Then, the multi-center, prospective, randomized controlled trial had carried out in 9 medical centers from August 2020 to November 2021. The stratified block randomization method was adopted. Patients were randomized in a ratio of 1∶1 to either receive pharmacotherapy alone(the control group) or body posture combined with pharmacotherapy(the experiment group) for 3 months and followed up for 6 months. Effective treatment was defined as complete absorption of hematoma, or the hematoma volume decreased by more than 10 ml and Markwalder grading scale score had improved by more than 1 point compared to the baseline. The efficacy rate and surgery conversion rate at 3 months and recurrence at 6 months were observed. Comparison between groups was performed with paired sample t test, Mann-Whitney U test, χ2 test, corrected χ2 test, or Fisher exact probability method. Logistic regression was used to compare the effective rate and operation rate between the two groups. Results:In the respective study, 30 patients completed follow-up 13 to 353 days after treatment. At the last follow-up, the incidence of almost complete absorption or significantly absorption of hematoma (hematoma volume was significantly reduced accompanied by symptom improvement) was 93.3%. The 95% CI for the incidence that analyzed by the Clopper-Pearson method was 77.9% to 99.2%. One hundred and six patients were enrolled in the multicenter study. Fifty-five patients underwent body posture combined with pharmacotherapy. The age was 74(17) years (range:26 to 92). Thirty-nine patients were males and 16 were females. Fifty-one patients underwent pharmacotherapy alone. The age was 69(12) years (range:48 to 84). Thirty-seven patients were males and 14 were females. The length of body posture recorded in diary card was (15.7±2.3) hours(range:7.6 to 19.3 hours). The efficacy rate in the body posture combined with pharmacotherapy group and pharmacotherapy alone group were 83.6% (46/55) and 56.9% (29/51), respectively at 3 months. The result of the logistic regression analysis showed that the efficacy of body posture combined with pharmacotherapy group was better than that of pharmacotherapy alone group ( OR=3.88,95% CI:1.57 to 9.58, P=0.003). Surgery rate in the body posture combined with pharmacotherapy group and pharmacotherapy alone group were 5.5% (3/55) and 21.6% (11/51) respectively. The result of Logistic regression showed that the pharmacotherapy alone group was more likely to be converted to surgery ( OR=0.21,95% CI:0.05 to 0.80, P=0.023). At the 6 months, no recurrence of cases was found in the body posture combined with pharmacotherapy group. However, the recurrence rate of pharmacotherapy alone group was 6.3% (3/48), there was no significant difference between the two groups ( P>0.05). Conclusion:The effect of body posture combined with pharmacotherapy for chronic subdural hematoma is better than that of pharmacotherapy alone.
3.Advances in acupuncture interventions for depression caused by chronic pain
Fangyi HOU ; Xizhen ZHANG ; Zifa LI ; Hao ZHANG ; Minghui HU ; Lidan WU ; Xiwen GENG ; Xinyu WANG ; Sheng WEI
Acta Laboratorium Animalis Scientia Sinica 2025;33(7):1064-1072
Chronic pain causes physical suffering and can have major psychological impacts in patients.Chronic pain can induce depressive disorder,and clinical studies have consistently shown that chronic pain and depression frequently co-occur,suggesting the possibility of shared pathogenic mechanisms underlying these conditions.Acupuncture,as an alternative therapy,has been widely used for analgesia and to treat depression,with demonstrated clinical efficacy.The therapeutic mechanism of acupuncture is related to neural and endocrine regulation.This review considers the mechanism of chronic pain accompanied by depression,in relation to the brain regions and neural circuits affected by acupuncture treatment.This review provides a new approach for the treatment of depression caused by chronic pain.
4.Epilepsy prediction model based on 2D-CNN and Cox-Stuart early stopping mechanism
Xizhen ZHANG ; Xiaoli ZHANG ; Yang LÜ ; Fuming CHEN
Chinese Journal of Medical Physics 2025;42(1):82-94
An epilepsy prediction model based on two-dimensional convolutional neural network and Cox-Stuart test for non-independent patients is proposed to address the problem of how to effectively predict whether epilepsy patients are going to have an attack or not. After EEG data normalization and EEG signal noise removal using a notch filter and a high-pass filter,the filtered signals are inputted into the two-dimensional convolutional neural network model for feature extraction and classification,and Cox-Stuart test is used to determine whether an early stopping is needed or not,thereby reducing the computational and time complexities of the model. The model is tested under the conditions with pre-seizure periods of 10,30 and 60 min,respectively,and the results show that the model performs best when the pre-seizure period is 10 min. The model has an average accuracy,sensitivity and specificity of 97.70%,97.36%and 98.04%on the test set,demonstrating its superior performance.
5.Automatic sleep staging method based on CNN-BiGRU and multi-head self-attention mechanism
Xiaoli ZHANG ; Xizhen ZHANG ; Dongmei LIN ; Fuming CHEN
Chinese Journal of Medical Physics 2025;42(4):496-504
The study aims to address the issues of class imbalance in sleep EEG data and gradient vanishing or explosion phenomena that may occur when deep networks extract more features.An improved adaptive synthetic sampling technique is firstly employed to perform data augmentation on the minority classes of sleep EEG data.Subsequently,convolutional neural networks and residual networks are utilized to learn data features,while a 3-layer bidirectional gated recurrent network is applied to explore deep temporal information and establish correlations between different sleep stages,enabling automatic feature learning and sleep cycle extraction.Finally,a multi-head self-attention mechanism is adopted to enhance the model's focus on critical parts of the sequence,thereby completing the classification of various sleep stages.Experimental results show that according to the AASM sleep staging criteria,the automatic sleep staging model integrating CNN-BiGRU and multi-head self attention achieves an overall accuracy of 90.77%and a Kappa coefficient of 0.88 on the Sleep-EDF-20 dataset after data class balancing,with the precision of N1 stage reaching 87.1%.On the Sleep-EDFx dataset,the model attains an MF1 score of 0.84 while maintaining a precision of 77.2%for N1 stage classification.These metrics demonstrate significant improvements in performance as compared with CNN-BiGRU model tested on the original dataset.When benchmarked against other related studies,the proposed architecture exhibits superior sleep stage classification accuracy.These findings collectively validate the effectiveness and generalization capability of the proposed method.
6.Relationships between color Doppler ultrasound parameters and insulin sensitivity index and clinical efficacy in rats with polycystic ovary syndrome complicated with hyperinsulinemia
Xizhen SUN ; Linlin GENG ; Juan CHEN ; Wei ZHANG ; Deming SUN ; Nan LI
Chinese Journal of Comparative Medicine 2025;35(3):82-89
Objective To analyze the relationships between color Doppler ultrasound parameters and insulin sensitivity index(ISI)and clinical efficacy in rats with polycystic ovary syndrome(PCOS)combined with hyperinsulinemia(HI).Methods A total of 140 3-week-old female SD SPF-grade rats were divided randomly into a PCOS without HI model(control group,n=70)and a PCOS combined with HI model(study group,n=70).After successful modeling,we used color Doppler ultrasound to detect the physical indicators,hemodynamic indicators,and ultrasound features of rat ovaries,and draw venous blood to evaluate ISI.Rats in the study group were treated with metformin by intragastric administration.The color Doppler ultrasound parameters of the good-effect and the poor-effect group were compared and a receiver operating characteristic curve(ROC)was drawn to analyze the value of the color Doppler ultrasound parameters for evaluating the curative effect of metformin in rats with PCOS combined with HI.Results The total ovarian area(TA),ovarian volume(OV),ovarian interstitial area(SA),vascularization index(VI),blood flow index(FI),fasting insulin(FINS),and fasting blood glucose(BFG)of the research group were all greater than those of the control group,while the resistance index,pulsatility index and ISI were observed significantly lower compared with contrast,there were obvious difference(P<0.05).The color Doppler ultrasound parameters TA and SA were negatively correlated with ISI(r=-0.501,r=-0.492,respectively,P<0.05),and ovarian RI and PI were positively correlated with ISI(r=0.504,r=0.485,respectively,P<0.05).TA,OV,SA,VI,FI,VFI,PSV,PDV,low-density lipoprotein cholesterol,FPG,FINS,LH,and FSH were all significantly lower while RI and PI were significantly higher in the good-curative-effect group compared with the poor-curative-effect group(all P<0.05).According to ROC curve analysis,the sensitivity and specificity of color Doppler ultrasound parameters combined with clinical efficacy were 90.9%and 90.2%,respectively,and the area under the curve(AUC)was 0.901.Conclusions Color Doppler ultrasound parameters are closely related to ISI and therapeutic efficacy in rats with PCOS combined with HI,and may thus predict clinical efficacy in patients with these conditions.
7.Relationships between color Doppler ultrasound parameters and insulin sensitivity index and clinical efficacy in rats with polycystic ovary syndrome complicated with hyperinsulinemia
Xizhen SUN ; Linlin GENG ; Juan CHEN ; Wei ZHANG ; Deming SUN ; Nan LI
Chinese Journal of Comparative Medicine 2025;35(3):82-89
Objective To analyze the relationships between color Doppler ultrasound parameters and insulin sensitivity index(ISI)and clinical efficacy in rats with polycystic ovary syndrome(PCOS)combined with hyperinsulinemia(HI).Methods A total of 140 3-week-old female SD SPF-grade rats were divided randomly into a PCOS without HI model(control group,n=70)and a PCOS combined with HI model(study group,n=70).After successful modeling,we used color Doppler ultrasound to detect the physical indicators,hemodynamic indicators,and ultrasound features of rat ovaries,and draw venous blood to evaluate ISI.Rats in the study group were treated with metformin by intragastric administration.The color Doppler ultrasound parameters of the good-effect and the poor-effect group were compared and a receiver operating characteristic curve(ROC)was drawn to analyze the value of the color Doppler ultrasound parameters for evaluating the curative effect of metformin in rats with PCOS combined with HI.Results The total ovarian area(TA),ovarian volume(OV),ovarian interstitial area(SA),vascularization index(VI),blood flow index(FI),fasting insulin(FINS),and fasting blood glucose(BFG)of the research group were all greater than those of the control group,while the resistance index,pulsatility index and ISI were observed significantly lower compared with contrast,there were obvious difference(P<0.05).The color Doppler ultrasound parameters TA and SA were negatively correlated with ISI(r=-0.501,r=-0.492,respectively,P<0.05),and ovarian RI and PI were positively correlated with ISI(r=0.504,r=0.485,respectively,P<0.05).TA,OV,SA,VI,FI,VFI,PSV,PDV,low-density lipoprotein cholesterol,FPG,FINS,LH,and FSH were all significantly lower while RI and PI were significantly higher in the good-curative-effect group compared with the poor-curative-effect group(all P<0.05).According to ROC curve analysis,the sensitivity and specificity of color Doppler ultrasound parameters combined with clinical efficacy were 90.9%and 90.2%,respectively,and the area under the curve(AUC)was 0.901.Conclusions Color Doppler ultrasound parameters are closely related to ISI and therapeutic efficacy in rats with PCOS combined with HI,and may thus predict clinical efficacy in patients with these conditions.
8.Advances in acupuncture interventions for depression caused by chronic pain
Fangyi HOU ; Xizhen ZHANG ; Zifa LI ; Hao ZHANG ; Minghui HU ; Lidan WU ; Xiwen GENG ; Xinyu WANG ; Sheng WEI
Acta Laboratorium Animalis Scientia Sinica 2025;33(7):1064-1072
Chronic pain causes physical suffering and can have major psychological impacts in patients.Chronic pain can induce depressive disorder,and clinical studies have consistently shown that chronic pain and depression frequently co-occur,suggesting the possibility of shared pathogenic mechanisms underlying these conditions.Acupuncture,as an alternative therapy,has been widely used for analgesia and to treat depression,with demonstrated clinical efficacy.The therapeutic mechanism of acupuncture is related to neural and endocrine regulation.This review considers the mechanism of chronic pain accompanied by depression,in relation to the brain regions and neural circuits affected by acupuncture treatment.This review provides a new approach for the treatment of depression caused by chronic pain.
9.Epilepsy prediction model based on 2D-CNN and Cox-Stuart early stopping mechanism
Xizhen ZHANG ; Xiaoli ZHANG ; Yang LÜ ; Fuming CHEN
Chinese Journal of Medical Physics 2025;42(1):82-94
An epilepsy prediction model based on two-dimensional convolutional neural network and Cox-Stuart test for non-independent patients is proposed to address the problem of how to effectively predict whether epilepsy patients are going to have an attack or not. After EEG data normalization and EEG signal noise removal using a notch filter and a high-pass filter,the filtered signals are inputted into the two-dimensional convolutional neural network model for feature extraction and classification,and Cox-Stuart test is used to determine whether an early stopping is needed or not,thereby reducing the computational and time complexities of the model. The model is tested under the conditions with pre-seizure periods of 10,30 and 60 min,respectively,and the results show that the model performs best when the pre-seizure period is 10 min. The model has an average accuracy,sensitivity and specificity of 97.70%,97.36%and 98.04%on the test set,demonstrating its superior performance.
10.Automatic sleep staging method based on CNN-BiGRU and multi-head self-attention mechanism
Xiaoli ZHANG ; Xizhen ZHANG ; Dongmei LIN ; Fuming CHEN
Chinese Journal of Medical Physics 2025;42(4):496-504
The study aims to address the issues of class imbalance in sleep EEG data and gradient vanishing or explosion phenomena that may occur when deep networks extract more features.An improved adaptive synthetic sampling technique is firstly employed to perform data augmentation on the minority classes of sleep EEG data.Subsequently,convolutional neural networks and residual networks are utilized to learn data features,while a 3-layer bidirectional gated recurrent network is applied to explore deep temporal information and establish correlations between different sleep stages,enabling automatic feature learning and sleep cycle extraction.Finally,a multi-head self-attention mechanism is adopted to enhance the model's focus on critical parts of the sequence,thereby completing the classification of various sleep stages.Experimental results show that according to the AASM sleep staging criteria,the automatic sleep staging model integrating CNN-BiGRU and multi-head self attention achieves an overall accuracy of 90.77%and a Kappa coefficient of 0.88 on the Sleep-EDF-20 dataset after data class balancing,with the precision of N1 stage reaching 87.1%.On the Sleep-EDFx dataset,the model attains an MF1 score of 0.84 while maintaining a precision of 77.2%for N1 stage classification.These metrics demonstrate significant improvements in performance as compared with CNN-BiGRU model tested on the original dataset.When benchmarked against other related studies,the proposed architecture exhibits superior sleep stage classification accuracy.These findings collectively validate the effectiveness and generalization capability of the proposed method.

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