Title : 
Digital pathology: Multiple instance learning can detect Barrett´s cancer
         
        
            Author : 
Kandemir, Melih ; Feuchtinger, Annette ; Walch, Axel ; Hamprecht, Fred A.
         
        
            Author_Institution : 
HCI/IWR, Univ. of Heidelberg, Heidelberg, Germany
         
        
        
            fDate : 
April 29 2014-May 2 2014
         
        
        
        
            Abstract : 
We study diagnosis of Barrett´s cancer from hematoxylin & eosin (H & E) stained histopathological biopsy images using multiple instance learning (MIL). We partition tissue cores into rectangular patches, and construct a feature vector consisting of a large set of cell-level and patch-level features for each patch. In MIL terms, we treat each tissue core as a bag (group of instances with a single group-level ground-truth label) and each patch an instance. After a benchmarking study on several MIL approaches, we find that a graph-based MIL algorithm, mi-Graph [1], gives the best performance (87% accuracy, 0.93 AUC), due to its inherent suitability to bags with spatially-correlated instances. In patch-level diagnosis, we reach 82% accuracy and 0.89 AUC using Bayesian logistic regression. We also pursue a study on feature importance, which shows that patch-level color and texture features and cell-level features all have significant contribution to prediction.
         
        
            Keywords : 
Bayes methods; biomedical optical imaging; cancer; cellular biophysics; image colour analysis; image texture; learning (artificial intelligence); medical image processing; regression analysis; Barrett´s cancer diagnosis; Bayesian logistic regression; cell-level features; digital pathology; feature vector; graph-based MIL algorithm; hematoxylin & eosin stained histopathological biopsy images; mi-Graph; multiple instance learning; patch-level color; patch-level diagnosis; patch-level features; rectangular patches; single group-level ground-truth label; spatially-correlated instances; texture features; tissue cores; Accuracy; Cancer; Feature extraction; Image color analysis; Image segmentation; Kernel; Support vector machines; Cancer diagnosis; histopathological tissue imaging; multiple instance learning;
         
        
        
        
            Conference_Titel : 
Biomedical Imaging (ISBI), 2014 IEEE 11th International Symposium on
         
        
            Conference_Location : 
Beijing
         
        
        
            DOI : 
10.1109/ISBI.2014.6868127