Title :
Anatomy-specific classification of medical images using deep convolutional nets
Author :
Roth, Holger R. ; Lee, Christopher T. ; Hoo-Chang Shin ; Seff, Ari ; Kim, Lauren ; Jianhua Yao ; Le Lu ; Summers, Ronald M.
Author_Institution :
Radiol. & Imaging Sci. Dept., Nat. Inst. of Health Clinical Center, Bethesda, MD, USA
Abstract :
Automated classification of human anatomy is an important prerequisite for many computer-aided diagnosis systems. The spatial complexity and variability of anatomy throughout the human body makes classification difficult. “Deep learning” methods such as convolutional networks (ConvNets) outperform other state-of-the-art methods in image classification tasks. In this work, we present a method for organ- or body-part-specific anatomical classification of medical images acquired using computed tomography (CT) with ConvNets. We train a ConvNet, using 4,298 separate axial 2D key-images to learn 5 anatomical classes. Key-images were mined from a hospital PACS archive, using a set of 1,675 patients. We show that a data augmentation approach can help to enrich the data set and improve classification performance. Using ConvNets and data augmentation, we achieve anatomy-specific classification error of 5.9 % and area-under-the-curve (AUC) values of an average of 0.998 in testing. We demonstrate that deep learning can be used to train very reliable and accurate classifiers that could initialize further computer-aided diagnosis.
Keywords :
PACS; biological organs; computerised tomography; image classification; medical image processing; ConvNets; anatomy variability; anatomy-specific classification; anatomy-specific classification error; area-under-the-curve; automated classification; axial 2D key-images; body part-specific anatomical classification; computed tomography; computer-aided diagnosis systems; convolutional networks; data augmentation; data augmentation approach; deep convolutional nets; deep learning methods; hospital PACS archive; human anatomy; image classification; medical images; organ-specific anatomical classification; spatial complexity; Computed tomography; Convolution; Lungs; Medical diagnostic imaging; Neural networks; Training; Computed tomography (CT); Convolutional Networks; Deep Learning; Image Classification;
Conference_Titel :
Biomedical Imaging (ISBI), 2015 IEEE 12th International Symposium on
Conference_Location :
New York, NY
DOI :
10.1109/ISBI.2015.7163826