REVISTA
AI

   
Inicio  /  AI  /  Vol: 3 Par: 3 (2022)  /  Artículo
ARTÍCULO
TITULO

Can Sequential Images from the Same Object Be Used for Training Machine Learning Models? A Case Study for Detecting Liver Disease by Ultrasound Radiomics

Laith R. Sultan    
Theodore W. Cary    
Maryam Al-Hasani    
Mrigendra B. Karmacharya    
Santosh S. Venkatesh    
Charles-Antoine Assenmacher    
Enrico Radaelli and Chandra M. Sehgal    

Resumen

Machine learning for medical imaging not only requires sufficient amounts of data for training and testing but also that the data be independent. It is common to see highly interdependent data whenever there are inherent correlations between observations. This is especially to be expected for sequential imaging data taken from time series. In this study, we evaluate the use of statistical measures to test the independence of sequential ultrasound image data taken from the same case. A total of 1180 B-mode liver ultrasound images with 5903 regions of interests were analyzed. The ultrasound images were taken from two liver disease groups, fibrosis and steatosis, as well as normal cases. Computer-extracted texture features were then used to train a machine learning (ML) model for computer-aided diagnosis. The experiment resulted in high two-category diagnosis using logistic regression, with AUC of 0.928 and high performance of multicategory classification, using random forest ML, with AUC of 0.917. To evaluate the image region independence for machine learning, Jenson?Shannon (JS) divergence was used. JS distributions showed that images of normal liver were independent from each other, while the images from the two disease pathologies were not independent. To guarantee the generalizability of machine learning models, and to prevent data leakage, multiple frames of image data acquired of the same object should be tested for independence before machine learning. Such tests can be applied to real-world medical image problems to determine if images from the same subject can be used for training.

 Artículos similares

       
 
David Hanny and Bernd Resch    
With the vast amount of social media posts available online, topic modeling and sentiment analysis have become central methods to better understand and analyze online behavior and opinion. However, semantic and sentiment analysis have rarely been combine... ver más
Revista: Information

 
Christie I. Ezeife and Hemni Karlapalepu    
E-commerce recommendation systems usually deal with massive customer sequential databases, such as historical purchase or click stream sequences. Recommendation systems? accuracy can be improved if complex sequential patterns of user purchase behavior ar... ver más
Revista: Algorithms

 
Yang Wang, Liang Zhou, Xiaoming Wan, Xiujuan Liu, Wanhu Wang and Jiaji Yi    
In recent years, coastal areas have been threatened by many potential hazards due to global warming, glacier melting and sea level rise. Understanding their evolutionary history and development trends can help predict disasters and further reduce the cor... ver más
Revista: Applied Sciences

 
Chia-Hung Tsai, Kuang-Teng Wang, Xuan Guo and Tsung-Meng Wu    
The shark-derived single-domain antibody VNAR (variable domain of new antigen receptor) has many advantageous features that make the VNAR suitable for improving current monoclonal antibody therapy deficiencies or disease diagnosis methods. In order to di... ver más
Revista: Applied Sciences

 
Enyu Yu, Yan Fu, Junlin Zhou, Hongliang Sun and Duanbing Chen    
Many real-world systems can be expressed in temporal networks with nodes playing different roles in structure and function, and edges representing the relationships between nodes. Identifying critical nodes can help us control the spread of public opinio... ver más
Revista: Applied Sciences