Javascript must be enabled to continue!
Prediction of 131i Therapeutic Dose and Prognosis in Hyperthyroidism Patients Using Mechanical Learning Model
View through CrossRef
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.
Research Square Platform LLC
Title: Prediction of 131i Therapeutic Dose and Prognosis in Hyperthyroidism Patients Using Mechanical Learning Model
Description:
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.
Related Results
Diagnostic Use of Post-therapy 131I-Meta-Iodobenzylguanidine Scintigraphy in Consolidation Therapy for Children with High-Risk Neuroblastoma
Diagnostic Use of Post-therapy 131I-Meta-Iodobenzylguanidine Scintigraphy in Consolidation Therapy for Children with High-Risk Neuroblastoma
123I-meta-iodobenzylguanidine (123I-mIBG) scintigraphy is used for evaluating disease extent in children with neuroblastoma. 131I-mIBG therapy has been used for evaluation in child...
Nghiên cứu đặc điểm lâm sàng, cận lâm sàng của bệnh nhân ung thư tuyến giáp biệt hóa kháng 113I
Nghiên cứu đặc điểm lâm sàng, cận lâm sàng của bệnh nhân ung thư tuyến giáp biệt hóa kháng 113I
Mục tiêu: Đánh giá một số đặc điểm lâm sàng và cận lâm sàng trên các bệnh nhân ung thư tuyến giáp biệt hóa kháng 131I. Đối tượng và phương pháp: 123 bệnh nhân được chẩn đoán xác đị...
A comparative study of initial 131I therapy and reoperation for detection and treatment of residual lymph node metastasis in patients with papillary thyroid cancer
A comparative study of initial 131I therapy and reoperation for detection and treatment of residual lymph node metastasis in patients with papillary thyroid cancer
Abstract
Purpose This study assesses the diagnostic performance of 131I SPECT/CT and treatment efficacy of initial postoperative radioiodine (RAI) compared with reoperation...
Application of fluorocarbon nanoparticles of 131I-fulvestrant as a targeted radiation drug for endocrine therapy on human breast cancer
Application of fluorocarbon nanoparticles of 131I-fulvestrant as a targeted radiation drug for endocrine therapy on human breast cancer
Abstract
Background
Breast cancer is the most prevalent malignant tumor among women, with hormone receptor-positive cases constituting 70%. Fulvestr...
Outcomes Associated with Treatment of Hyperthyroidism with Radioiodine; A Single Center Retrospective Study
Outcomes Associated with Treatment of Hyperthyroidism with Radioiodine; A Single Center Retrospective Study
Background: Hypothyroidism and hyperthyroidism are prevalent conditions with potentially crippling health consequences that globally affect all populations. Hyperthyroidism is ove...
Autonomy on Trial
Autonomy on Trial
Photo by CHUTTERSNAP on Unsplash
Abstract
This paper critically examines how US bioethics and health law conceptualize patient autonomy, contrasting the rights-based, individualist...
Efetividade da radioiodoterapia com 131I-metaiodobenzilguanidina (131I-MIBG) para o tratamento do neuroblastoma
Efetividade da radioiodoterapia com 131I-metaiodobenzilguanidina (131I-MIBG) para o tratamento do neuroblastoma
Objetivo: Avaliar se a radioiodoterapia com 131I-metaiodobenzilguanidina (131I-mIBG) aumenta a sobrevida de pacientes com diagnóstico de neuroblastoma, mIBG-ávido, refratários ao t...
The Association of Thyroid Hormones With β-HCG in Patients With Hydatidiform Mole
The Association of Thyroid Hormones With β-HCG in Patients With Hydatidiform Mole
Background: A hydatidiform mole or molar pregnancy is the most prevalent gestational trophoblastic disease (GTD). About 55%-60% of women with trophoblastic diseases have overt hype...

