Title :
Stacked Autoencoders for Unsupervised Feature Learning and Multiple Organ Detection in a Pilot Study Using 4D Patient Data
Author :
Hoo-Chang Shin ; Orton, M.R. ; Collins, D.J. ; Doran, S.J. ; Leach, M.O.
Author_Institution :
Inst. of Cancer Res. & R. Marsden, NHS Found. Trust, Sutton, UK
Abstract :
Medical image analysis remains a challenging application area for artificial intelligence. When applying machine learning, obtaining ground-truth labels for supervised learning is more difficult than in many more common applications of machine learning. This is especially so for datasets with abnormalities, as tissue types and the shapes of the organs in these datasets differ widely. However, organ detection in such an abnormal dataset may have many promising potential real-world applications, such as automatic diagnosis, automated radiotherapy planning, and medical image retrieval, where new multimodal medical images provide more information about the imaged tissues for diagnosis. Here, we test the application of deep learning methods to organ identification in magnetic resonance medical images, with visual and temporal hierarchical features learned to categorize object classes from an unlabeled multimodal DCE-MRI dataset so that only a weakly supervised training is required for a classifier. A probabilistic patch-based method was employed for multiple organ detection, with the features learned from the deep learning model. This shows the potential of the deep learning model for application to medical images, despite the difficulty of obtaining libraries of correctly labeled training datasets and despite the intrinsic abnormalities present in patient datasets.
Keywords :
biological organs; biomedical MRI; feature extraction; image classification; medical image processing; object detection; probability; unsupervised learning; 4D patient data; abnormal dataset; deep-learning model; ground-truth labels; image classifiers; intrinsic abnormalities; magnetic resonance medical images; medical image analysis; multiple organ detection; object class categorization; organ shapes; patient datasets; probabilistic patch-based method; stacked autoencoders; supervised machine learning; temporal hierarchical features; tissue types; unlabeled multimodal DCE-MRI dataset; unsupervised feature learning; visual hierarchical features; weakly supervised training; Feature extraction; Liver; Machine learning; Medical diagnostic imaging; Training; Visualization; Edge and feature detection; biomedical image processing; machine learning; object recognition; pixel classification; Artificial Intelligence; Databases, Factual; Humans; Image Enhancement; Image Processing, Computer-Assisted; Magnetic Resonance Imaging; Pattern Recognition, Automated; Pilot Projects;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2012.277