Literature DB >> 28314191

Robust detection and segmentation of cell nuclei in biomedical images based on a computational topology framework.

Rodrigo Rojas-Moraleda1, Wei Xiong2, Niels Halama3, Katja Breitkopf-Heinlein4, Steven Dooley4, Luis Salinas5, Dieter W Heermann2, Nektarios A Valous6.   

Abstract

The segmentation of cell nuclei is an important step towards the automated analysis of histological images. The presence of a large number of nuclei in whole-slide images necessitates methods that are computationally tractable in addition to being effective. In this work, a method is developed for the robust segmentation of cell nuclei in histological images based on the principles of persistent homology. More specifically, an abstract simplicial homology approach for image segmentation is established. Essentially, the approach deals with the persistence of disconnected sets in the image, thus identifying salient regions that express patterns of persistence. By introducing an image representation based on topological features, the task of segmentation is less dependent on variations of color or texture. This results in a novel approach that generalizes well and provides stable performance. The method conceptualizes regions of interest (cell nuclei) pertinent to their topological features in a successful manner. The time cost of the proposed approach is lower-bounded by an almost linear behavior and upper-bounded by O(n2) in a worst-case scenario. Time complexity matches a quasilinear behavior which is O(n1+ɛ) for ε < 1. Images acquired from histological sections of liver tissue are used as a case study to demonstrate the effectiveness of the approach. The histological landscape consists of hepatocytes and non-parenchymal cells. The accuracy of the proposed methodology is verified against an automated workflow created by the output of a conventional filter bank (validated by experts) and the supervised training of a random forest classifier. The results are obtained on a per-object basis. The proposed workflow successfully detected both hepatocyte and non-parenchymal cell nuclei with an accuracy of 84.6%, and hepatocyte cell nuclei only with an accuracy of 86.2%. A public histological dataset with supplied ground-truth data is also used for evaluating the performance of the proposed approach (accuracy: 94.5%). Further validations are carried out with a publicly available dataset and ground-truth data from the Gland Segmentation in Colon Histology Images Challenge (GlaS) contest. The proposed method is useful for obtaining unsupervised robust initial segmentations that can be further integrated in image/data processing and management pipelines. The development of a fully automated system supporting a human expert provides tangible benefits in the context of clinical decision-making.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Cell nuclei; Computational topology; Image segmentation; Persistent homology

Mesh:

Year:  2017        PMID: 28314191     DOI: 10.1016/j.media.2017.02.009

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  3 in total

1.  Predicting survival from colorectal cancer histology slides using deep learning: A retrospective multicenter study.

Authors:  Jakob Nikolas Kather; Johannes Krisam; Pornpimol Charoentong; Tom Luedde; Esther Herpel; Cleo-Aron Weis; Timo Gaiser; Alexander Marx; Nektarios A Valous; Dyke Ferber; Lina Jansen; Constantino Carlos Reyes-Aldasoro; Inka Zörnig; Dirk Jäger; Hermann Brenner; Jenny Chang-Claude; Michael Hoffmeister; Niels Halama
Journal:  PLoS Med       Date:  2019-01-24       Impact factor: 11.069

2.  Computational Image Analysis Identifies Histopathological Image Features Associated With Somatic Mutations and Patient Survival in Gastric Adenocarcinoma.

Authors:  Jun Cheng; Yuting Liu; Wei Huang; Wenhui Hong; Lingling Wang; Xiaohui Zhan; Zhi Han; Dong Ni; Kun Huang; Jie Zhang
Journal:  Front Oncol       Date:  2021-03-31       Impact factor: 6.244

3.  Imaging-Based Machine Learning Analysis of Patient-Derived Tumor Organoid Drug Response.

Authors:  Erin R Spiller; Nolan Ung; Seungil Kim; Katherin Patsch; Roy Lau; Carly Strelez; Chirag Doshi; Sarah Choung; Brandon Choi; Edwin Francisco Juarez Rosales; Heinz-Josef Lenz; Naim Matasci; Shannon M Mumenthaler
Journal:  Front Oncol       Date:  2021-12-21       Impact factor: 6.244

  3 in total

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