1.Prevention of postoperative cerebrospinal fluid leakage with absorbable hemostatic fluid gelatin.
Li-tai MA ; Hao LIU ; Quan GONG ; Li TAO ; Yu Ang BEI ; Gan-jun FENG
China Journal of Orthopaedics and Traumatology 2015;28(8):717-721
OBJECTIVETo explore the effectiveness of absorbable hemostatic fluid gelatin in preventing postoperative cerebrospinal fluid leakage.
METHODSThe clinical data of 17 patients with dura mater tear were retrospectively analyzed from March to September in 2003. There were 16 males and 1 female, aged from 16 to 67 years old with an average of (39.6 ± 15.4) years. The injury site was at cervical vertebrae in 1 case, thoracic vertebrae in 9 cases, thoracolumbar junction in 4 cases, lumbar vertebrae in 3 cases. There were burst fracture in 4 cases and fracture-dislocation in 13 cases. According to ASIA grade, 12 cases were grade A, 2 cases were grade B, 2 cases were grade D, 1 case were grade E. Two cases caused by traffic accident, 10 by high falling, 4 by heavy parts crash, 1 by stairs fell during the earthquake. Absorbable hemostatic fluid gelatins were used to plug the dura mater tear,in order to prevent postoperative cerebrospinal fluid leakage. Postoperative drainage were recorded every day.
RESULTSOf 17 patients, 15 cases did not develop with cerebrospinal fluid leakage. Two cases develop with cerebrospinal fluid leakage after operation and their drainage were removed at 6 to 7 days after operation. In all cases, no complications related with cerebrospinal fluid leakage occurred, such as headache, dizzy, fever,neck resistance, rash, incision disunion, incision infection, hematoma, neurologic symptoms aggravation. No abnormal phenomena was found on incision surrounding at follow-up of 9 months.
CONCLUSIONUsing absorbable hemostatic fluid gelatin to plug the dura mater tear during operation is an effective method in preventing postoperative cerebrospinal fluid leakage.
Adolescent ; Adult ; Aged ; Cerebrospinal Fluid Leak ; prevention & control ; Female ; Gelatin ; administration & dosage ; Hemostatics ; administration & dosage ; Humans ; Male ; Middle Aged ; Postoperative Complications ; prevention & control
2.Advantages and Application Prospects of Deep Learning in Image Recognition and Bone Age Assessment
Ting-Hong HU ; Lei WAN ; Tai-Ang LIU ; Mao-Wen WANG ; Teng CHEN ; Ya-Hui WANG
Journal of Forensic Medicine 2017;33(6):629-634,639
Deep learning and neural network models have been new research directions and hot issues in the fields of machine learning and artificial intelligence in recent years. Deep learning has made a breakthrough in the applications of image and speech recognitions, and also has been extensively used in the fields of face recognition and information retrieval because of its special superiority. Bone X-ray images express different variations in black-white-gray gradations, which have image features of black and white contrasts and level differences. Based on these advantages of deep learning in image recognition, we combine it with the research of bone age assessment to provide basic datum for constructing a forensic automatic system of bone age assessment. This paper reviews the basic concept and network architectures of deep learning, and describes its recent research progress on image recognition in different research fields at home and abroad, and explores its advantages and application prospects in bone age assessment.
3.Automated Assessment for Bone Age of Left Wrist Joint in Uyghur Teenagers by Deep Learning
Ting-Hong HU ; Zhong HUO ; Tai-Ang LIU ; Fei WANG ; Lei WAN ; Mao-Wen WANG ; Teng CHEN ; Ya-Hui WANG
Journal of Forensic Medicine 2018;34(1):27-32
Objective To realize the automated bone age assessment by applying deep learning to digital radiography(DR)image recognition of left wrist joint in Uyghur teenagers, and explore its practical ap-plication value in forensic medicine bone age assessment. Methods The X-ray films of left wrist joint after pretreatment, which were taken from 245 male and 227 female Uyghur nationality teenagers in Uygur Autonomous Region aged from 13.0 to 19.0 years old, were chosen as subjects. And AlexNet was as a regression model of image recognition. From the total samples above, 60% of male and fe-male DR images of left wrist joint were selected as net train set, and 10% of samples were selected as validation set. As test set, the rest 30%were used to obtain the image recognition accuracy with an error range in ±1.0 and ±0.7 age respectively, compared to the real age. Results The modelling results of deep learning algorithm showed that when the error range was in ±1.0 and ±0.7 age respectively, the accuracy of the net train set was 81.4% and 75.6% in male, and 80.5% and 74.8% in female, respectively. When the error range was in ±1.0 and ±0.7 age respectively, the accuracy of the test set was 79.5% and 71.2% in male, and 79.4% and 66.2% in female, respectively. Conclusion The combination of bone age research on teenagers' left wrist joint and deep learning, which has high accuracy and good feasi-bility, can be the research basis of bone age automatic assessment system for the rest joints of body.
4.Research Progress of Age Estimation in the Living by Knee Joint MRI.
Hong-Xia HAO ; Ya-Hui WANG ; Zhi-Lu ZHOU ; Tai-Ang LIU ; Jin CHEN ; Yu-Heng HE ; Lei WAN ; Wen-Tao XIA
Journal of Forensic Medicine 2023;39(1):66-71
Bone development shows certain regularity with age. The regularity can be used to infer age and serve many fields such as justice, medicine, archaeology, etc. As a non-invasive evaluation method of the epiphyseal development stage, MRI is widely used in living age estimation. In recent years, the rapid development of machine learning has significantly improved the effectiveness and reliability of living age estimation, which is one of the main development directions of current research. This paper summarizes the analysis methods of age estimation by knee joint MRI, introduces the current research trends, and future application trend.
Epiphyses/diagnostic imaging*
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Age Determination by Skeleton/methods*
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Reproducibility of Results
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Magnetic Resonance Imaging/methods*
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Knee Joint/diagnostic imaging*
5.Pelvic Injury Discriminative Model Based on Data Mining Algorithm.
Fei-Xiang WANG ; Rui JI ; Lu-Ming ZHANG ; Peng WANG ; Tai-Ang LIU ; Lu-Jie SONG ; Mao-Wen WANG ; Zhi-Lu ZHOU ; Hong-Xia HAO ; Wen-Tao XIA
Journal of Forensic Medicine 2022;38(3):350-354
OBJECTIVES:
To reduce the dimension of characteristic information extracted from pelvic CT images by using principal component analysis (PCA) and partial least squares (PLS) methods. To establish a support vector machine (SVM) classification and identification model to identify if there is pelvic injury by the reduced dimension data and evaluate the feasibility of its application.
METHODS:
Eighty percent of 146 normal and injured pelvic CT images were randomly selected as training set for model fitting, and the remaining 20% was used as testing set to verify the accuracy of the test, respectively. Through CT image input, preprocessing, feature extraction, feature information dimension reduction, feature selection, parameter selection, model establishment and model comparison, a discriminative model of pelvic injury was established.
RESULTS:
The PLS dimension reduction method was better than the PCA method and the SVM model was better than the naive Bayesian classifier (NBC) model. The accuracy of the modeling set, leave-one-out cross validation and testing set of the SVM classification model based on 12 PLS factors was 100%, 100% and 93.33%, respectively.
CONCLUSIONS
In the evaluation of pelvic injury, the pelvic injury data mining model based on CT images reaches high accuracy, which lays a foundation for automatic and rapid identification of pelvic injuries.
Algorithms
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Bayes Theorem
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Data Mining
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Least-Squares Analysis
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Support Vector Machine
6.Comparison of Three CNN Models Applied in Bone Age Assessment of Pelvic Radiographs of Adolescents.
Li Qin PENG ; Lei WAN ; Mao Wen WANG ; Zhuo LI ; Peng WANG ; Tai Ang LIU ; Ya Hui WANG ; Hu ZHAO
Journal of Forensic Medicine 2020;36(5):622-630
Objective To compare the performance of three deep-learning models (VGG19, Inception-V3 and Inception-ResNet-V2) in automatic bone age assessment based on pelvic X-ray radiographs. Methods A total of 962 pelvic X ray radiographs taken from adolescents (481 males, 481 females) aged from 11.0 to 21.0 years in five provinces and cities of China were collected, preprocessed and used as objects of study. Eighty percent of these X ray radiographs were divided into training set and validation set with random sampling method and used for model fitting and hyper-parameters adjustment. Twenty percent were used as test sets, to evaluate the ability of model generalization. The performances of the three models were assessed by comparing the root mean square error (RMSE), mean absolute error (MAE) and Bland-Altman plots between the model estimates and the chronological ages. Results The mean RMSE and MAE between bone age estimates of the VGG19 model and the chronological ages were 1.29 and 1.02 years, respectively. The mean RMSE and MAE between bone age estimates of the Inception-V3 model and the chronological ages were 1.17 and 0.82 years, respectively. The mean RMSE and MAE between bone age estimates of the Inception-ResNet-V2 model and the chronological ages were 1.11 and 0.84 years, respectively. The Bland-Altman plots showed that the mean value of differences between bone age estimates of Inception-ResNet-V2 model and the chronological ages was the lowest. Conclusion In the automatic bone age assessment of adolescent pelvis, the Inception-ResNet-V2 model performs the best while the Inception-V3 model achieves a similar accuracy as VGG19 model.
Adolescent
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Adult
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Age Determination by Skeleton
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Child
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China
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Female
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Humans
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Male
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Pelvis
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Radiography
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Young Adult