Title :
Methods for Nuclei Detection, Segmentation, and Classification in Digital Histopathology: A Review—Current Status and Future Potential
Author :
Irshad, Humayun ; Veillard, Antoine ; Roux, Ludovic ; Racoceanu, Daniel
Abstract :
Digital pathology represents one of the major evolutions in modern medicine. Pathological examinations constitute the gold standard in many medical protocols, and also play a critical and legal role in the diagnosis process. In the conventional cancer diagnosis, pathologists analyze biopsies to make diagnostic and prognostic assessments, mainly based on the cell morphology and architecture distribution. Recently, computerized methods have been rapidly evolving in the area of digital pathology, with growing applications related to nuclei detection, segmentation, and classification. In cancer research, these approaches have played, and will continue to play a key (often bottleneck) role in minimizing human intervention, consolidating pertinent second opinions, and providing traceable clinical information. Pathological studies have been conducted for numerous cancer detection and grading applications, including brain, breast, cervix, lung, and prostate cancer grading. Our study presents, discusses, and extracts the major trends from an exhaustive overview of various nuclei detection, segmentation, feature computation, and classification techniques used in histopathology imagery, specifically in hematoxylin-eosin and immunohistochemical staining protocols. This study also enables us to measure the challenges that remain, in order to reach robust analysis of whole slide images, essential high content imaging with diagnostic biomarkers and prognosis support in digital pathology.
Keywords :
brain; cancer; cellular biophysics; feature extraction; image classification; image segmentation; lung; medical image processing; reviews; architecture distribution; biopsy; brain cancer grading; breast cancer grading; cancer detection; cancer diagnosis; cell morphology; cervix cancer grading; computerized method; diagnostic biomarkers; digital histopathology; feature computation; gold standard; hematoxylin-eosin staining protocols; histopathology imagery; human intervention; immunohistochemical staining protocols; lung cancer grading; medical protocols; nuclei classification; nuclei detection; nuclei segmentation; pertinent second opinions; prostate cancer grading; review; slide images; traceable clinical information; Biomedical image processing; Cancer; Classification; Digital systems; Image segmentation; Microscopy; Pathology; Digital pathology; histopathology; microscopic analysis; nuclei classification; nuclei detection; nuclei segmentation; nuclei separation;