Title :
Prostate Cancer Grading: Use of Graph Cut and Spatial Arrangement of Nuclei
Author :
Nguyen, Khanh ; Sarkar, Anirban ; Jain, Anubhav K.
Author_Institution :
Dept. of Comput. Sci. & Eng., Michigan State Univ., East Lansing, MI, USA
Abstract :
Tissue image grading is one of the most important steps in prostate cancer diagnosis, where the pathologist relies on the gland structure to assign a Gleason grade to the tissue image. In this grading scheme, the discrimination between grade 3 and grade 4 is the most difficult, and receives the most attention from researchers. In this study, we propose a novel method (called nuclei-based method) that 1) utilizes graph theory techniques to segment glands and 2) computes a gland-score (based on the spatial arrangement of nuclei) to estimate how similar a segmented region is to a gland. Next, we create a fusion method by combining this nuclei-based method with the lumen-based method presented in our previous work to improve the performance of grade 3 versus grade 4 classification problem (the accuracy is now improved to 87.3% compared to 81.1% of the lumen-based method alone). To segment glands, we build a graph of nuclei and lumina in the image, and use the normalized cut method to partition the graph into different components, each corresponding to a gland. Unlike most state-of-the-art lumen-based gland segmentation method, the nuclei-based method is able to segment glands without lumen or glands with multiple lumina. Moreover, another important contribution in this research is the development of a set of measures to exploit the difference in nuclei spatial arrangement between grade 3 images (where nuclei form closed chain structure on the gland boundary) and grade 4 image (where nuclei distribute more randomly in the gland). These measures are combined to generate a single gland-score value, which estimates how similar a segmented region (which is a set of nuclei and lumina) is to a gland.
Keywords :
biomedical optical imaging; cancer; graph theory; image classification; image segmentation; medical image processing; tumours; Gleason grade; fusion method; gland structure; grade 3 classification problem; grade 4 classification problem; graph cut; graph theory techniques; normalized cut method; nuclei form closed chain structure; nuclei spatial arrangement; nuclei-based method; pathologist; prostate cancer diagnosis; prostate cancer grading; segment glands; single gland-score value; spatial arrangement; state-of-the-art lumen-based gland segmentation method; tissue image grading; Accuracy; Cancer; Databases; Feature extraction; Glands; Image segmentation; Shape; Gland segmentation; Gleason grading; lumen; normalized cut; nuclei; prostate cancer; stroma;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2014.2336883