Medical information systems such as Internet of Medical Things (IoMT) are gained special attention over recent years. X-ray and MRI images are important sources of information to be examined for a particular type of anomalies. Reports based on the images and laboratory examination results could be mined with machine learning techniques as well. Thyroid disease diagnosis is an important capability of medical information systems. The main objective of this study is to improve the diagnosis accuracy of thyroid diseases from semantic reports and examination results using artificial neural network (ANN) in IoMT systems. In order to improve generalization and avoid over-fitting of ANN during the training process, a set of multiple multilayer perc...
CBU International Conference on Innovations in Science and Education (CBUIC) -- MAR 23-25, 2016 -- P...
Clinical procedures, which require a large number of personnel and medical resources, receive the ma...
Objective To construct deep learning (DL) models to improve the accuracy and efficiency of thyroid d...
A challenging task for the modern research is to accurately diagnose the diseases prior to their tre...
Medical diagnosis can be viewed as a pattern classification problem: based a set of input features t...
Thyroid disease has now become the second largest disease in the endocrine field; SPECT imaging is p...
We investigate the potential of artificial neural networks in diagnosing thyroid diseases. The robus...
Thyroid disease presents a significant health risk, lowering the quality of life and increasing trea...
Early detection of malignant thyroid nodules leading to patient-specific treatments can reduce morbi...
AIM: To investigate the role of artificial neural networks in predicting the presence of thyroid dis...
Thyroid gland is one of the body’s most important glands because it regulates the metabolism of the ...
PubMedID: 18444358The thyroid is a gland that controls key functions of body. Diseases of the thyroi...
Background and Aim: Timely diagnosis and treatment of abnormal thyroid function can reduce the morta...
Abstract Background In this study, images of 2450 benign thyroid nodules and 2557 malignant thyroid ...
In this paper, attempt has been made to make use of Artificial Neural network in Disease Diagnosis w...
CBU International Conference on Innovations in Science and Education (CBUIC) -- MAR 23-25, 2016 -- P...
Clinical procedures, which require a large number of personnel and medical resources, receive the ma...
Objective To construct deep learning (DL) models to improve the accuracy and efficiency of thyroid d...
A challenging task for the modern research is to accurately diagnose the diseases prior to their tre...
Medical diagnosis can be viewed as a pattern classification problem: based a set of input features t...
Thyroid disease has now become the second largest disease in the endocrine field; SPECT imaging is p...
We investigate the potential of artificial neural networks in diagnosing thyroid diseases. The robus...
Thyroid disease presents a significant health risk, lowering the quality of life and increasing trea...
Early detection of malignant thyroid nodules leading to patient-specific treatments can reduce morbi...
AIM: To investigate the role of artificial neural networks in predicting the presence of thyroid dis...
Thyroid gland is one of the body’s most important glands because it regulates the metabolism of the ...
PubMedID: 18444358The thyroid is a gland that controls key functions of body. Diseases of the thyroi...
Background and Aim: Timely diagnosis and treatment of abnormal thyroid function can reduce the morta...
Abstract Background In this study, images of 2450 benign thyroid nodules and 2557 malignant thyroid ...
In this paper, attempt has been made to make use of Artificial Neural network in Disease Diagnosis w...
CBU International Conference on Innovations in Science and Education (CBUIC) -- MAR 23-25, 2016 -- P...
Clinical procedures, which require a large number of personnel and medical resources, receive the ma...
Objective To construct deep learning (DL) models to improve the accuracy and efficiency of thyroid d...