scholarly journals Prediction of 131i Therapeutic Dose and Prognosis in Hyperthyroidism Patients Using Mechanical Learning Model

Author(s):  
Han Gao ◽  
Weiye Yuan ◽  
Yunan Gao ◽  
Yidi Wang ◽  
Jie Yao ◽  
...  

Abstract ObjectiveMultiple mechanical learning models were used to predict the therapeutic dose of 131I radionuclide in patients with hyperthyroidism, and to compare the calculation results of each prediction model to obtain the optimal model for dose prediction. Meanwhile, the classification model was used to classify the prognosis of the existing clinical hyperthyroidism case data in order to evaluate the administration results and provide reference for the dose given by clinicians.MethodsAccording to the data of hyperthyroidism patients treated with 131I in nuclear medicine department of many hospitals, a prediction model was established based on MATLAB. Firstly, the prediction results of BP neural network, radial basis function (RBF) neural network and support vector machine (SVM) were compared with small sample data, and then the optimal model was selected to predict the drug dose. BP-AdaBoost, SVM and random forest were used to classify the patients after recovery and evaluate whether the dose was accurate.ResultsThe average errors of BP neural network, RBF neural network and SVM models trained with small samples were 6.58%, 17.25% and 14.09% respectively. After comparison, BP neural network was selected to establish the prediction model. The data of 30 cases were randomly selected to verify BP neural network, and average error of the prediction results was 11.99%. Using SVM, BP-AdaBoost and random forest models, 100 groups of case data were selected as the training set and 10 groups as the test set. The classification accuracy were 80%, 90% and 100% respectively. The random forest model with the highest accuracy was selected as the large sample prediction. When 318 groups of cases were trained and 35 groups of cases were used for the test, the classification accuracy was 97.14%.ConclusionThis study compared the prediction effects of various prediction models on 131I therapeutic dose in patients with hyperthyroidism and the accuracy of prognosis classification. BP neural network and random forest achieved the best results respectively. The two models provide reference for clinicians when giving the dose, which has clinical practical significance.

Geofluids ◽  
2021 ◽  
Vol 2021 ◽  
pp. 1-12
Author(s):  
Xuenan Zhang ◽  
Jinxin Zhang ◽  
Jinhua Zhang ◽  
YuChuan Zhang

As the energy consumption of residential building takes a large part in the building energy consumption, it is important to promote energy efficiency in residential building for green development. In order to evaluate the energy consumption of residential building more effectively, this paper proposes a combined prediction model based on random forest and BP neural network (RF-BPNN). To verify the prediction effect of the RF-BPNN combined model, experiments were performed by using the energy efficiency data set in the UCI database, and the model was evaluated with five indicators: mean absolute error, root mean square deviation, mean absolute percentage error, correlation coefficient, and coincidence index. Compared with the random forest, BP neural network model, and other existing models, respectively, it is proven by the experimental results that the RF-BPNN model possesses higher prediction accuracy and better stability.


2010 ◽  
Vol 121-122 ◽  
pp. 574-578
Author(s):  
Hui Yu Jiang ◽  
Min Dong ◽  
Wei Li

The octanol / water partition coefficient (Kow) is an important physical parameters to describe their behavior in the environment. However, because of some reasons, it is difficult to determine the octanol / water partition coefficient of each compound accurately. In this paper, we will introduce RBF neural network and molecular bond connectivity index to forecast the solubility of organic compounds in water. The result is better using the BP network to predict, the correlation coefficient has achieved 0.998, the prediction error in the permission scope.


2010 ◽  
Vol 97-101 ◽  
pp. 250-254 ◽  
Author(s):  
Xin Jian Zhou

On the basis of orthogonal test analysis of variance, BP neural network is used to forecast quantitatively the stamping spring-back of front panel of a car body, namely the engine hood, under the conditions of different stamping parameters. Firstly, BP neural network prediction model is established and sample training is done in Matlab. Then, the spring-back prediction using BP neural network and the result of spring-back simulation using Dynaform is compared to verify the precision and stability of the prediction model. Lastly, modification is made to the BP neural network according to practical stamping parameters and an efficient BP neural network model is established. Using this model, stamping spring-back prediction for the front panel of a car body is made. The spring-back prediction could then be used for spring-back compensation in the mould design of the front panel.


2010 ◽  
Vol 171-172 ◽  
pp. 274-277
Author(s):  
Yun Liang Tan ◽  
Ze Zhang

In order to quest an effective approach for predicate the rheologic deformation of sandstone based on some experimental data, an improved approaching model of RBF neural network was set up. The results show, the training time of improved RBF neural network is only about 10 percent of that of the BP neural network; the improved RBF neural network has a high predicating accuracy, the average relative predication error is only 7.9%. It has a reference value for the similar rock mechanics problem.


Sign in / Sign up

Export Citation Format

Share Document