Title :
Interactive Segmentation Relabeling for Classification of Whole-Slide Histopathology Imagery
Author :
Haridas, Anoop ; Bunyak, Filiz ; Palaniappan, Kannappan
Author_Institution :
Comput. Imaging & VisAnalysis Lab., Univ. of Missouri, Columbia, MO, USA
Abstract :
Collecting ground-truth or gold standard annotations from expert pathologists for developing histopathology analytic algorithms and computer-aided diagnosis for cancer grading is an expensive and time consuming process. Efficient visualization and annotation tools are needed to enable ground-truthing large whole-slide imagery. KOLAM is our scalable, cross-platform framework for interactive visualization of 2D, 2D+t and 3D imagery of high spatial, temporal and spectral resolution. In the current work KOLAM has been extended to support rapid interactive labelling and correction of automatic image classifier-based region labels of the tissue microenvironment by pathologists. Besides annotating regions-of-interest (ROIs), KOLAM enables extraction of the corresponding large polygonal image subregions for input into automatic segmentation algorithms, single-click region label reassignment and maintaining hierarchical image subregions. Experience indicates that clinicians prefer simple-to-use interfaces that support rapid labelling of large image regions with minimal effort. The incorporation of easy-to-use tissue annotation features in KOLAM makes it an attractive candidate for integration within a multi-stage histopathology image analysis pipeline supporting assisted segmentation and labelling to improve whole-slide imagery (WSI) analytics.
Keywords :
biomedical optical imaging; cancer; data analysis; data visualisation; feature extraction; image classification; image resolution; image segmentation; interactive systems; medical image processing; user interfaces; 2D imagery visualization; 2D+t imagery visualization; 3D imagery visualization; KOLAM scalable cross-platform framework; ROI annotation; WSI analytics; annotation tool; assisted labelling; assisted segmentation; automatic image classifier-based region label correction; automatic segmentation algorithm input; cancer grading; computer-aided diagnosis; easy-to-use tissue annotation feature; gold standard annotation collection; ground-truth annotation collection; hierarchical image subregion; histopathology analytic algorithm; interactive segmentation relabeling; interactive visualization; large whole-slide imagery ground-truthing; multi-stage histopathology image analysis pipeline; polygonal image subregion extraction; rapid interactive labelling support; rapid large image region labelling; region-of-interest annotation; simple-to-use clinician interface; single-click region label reassignment; spatial resolution; spectral resolution; temporal resolution; tissue microenvironment; visualization tool; whole-slide histopathology imagery classification; Biomedical imaging; Data visualization; Image resolution; Image segmentation; Pathology; Testing; Training; histopathology; interactive segmentation; supervised classification; tissue microenvironment; visualization; whole-slide imagery;
Conference_Titel :
Computer-Based Medical Systems (CBMS), 2015 IEEE 28th International Symposium on
Conference_Location :
Sao Carlos
DOI :
10.1109/CBMS.2015.89